Podcasts about Ankush

1986 film by N. Chandra

  • 78PODCASTS
  • 124EPISODES
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  • 1MONTHLY NEW EPISODE
  • Mar 14, 2025LATEST

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Best podcasts about Ankush

Latest podcast episodes about Ankush

Moment of Silence
REVEALING ALL INFLUENCER GOSSIP FT. ANKUSH BAHUGUNA

Moment of Silence

Play Episode Listen Later Mar 14, 2025 68:26


HELLO AND WELCOME BACK TO ANOTHER EPISODE OF MOMENT OF SILENCE!This week, we're winging it with Ankush Bahuguna! From feeling like a guest in Mumbai to navigating PTSD, he's still figuring it all out— including trying out hiring PR (so we don't have to!)Middle-class parent guilt? A shared struggle. There's also the anxiety of being in the public eye, stalkers in the DMs and the struggles of taking family trips. No to forget Sakshi's repetitive jokes that Ankush had to put up with!Follow MoS on Instagram: https://www.instagram.com/momentofsilencepod?igsh=bmYwMTRqNmVuZjFnCredits:Naina Bhan– Co-host and certified overthinkerhttps://www.instagram.com/nainabee?igsh=MXNqbmVha2t1ZzFoOQ==Sakshi Shivdasani – Co-host, balancing out Naina's overthinking with a healthy dose of not thinkinghttps://www.instagram.com/sakshishivdasani?igsh=MWExamVoMXV4MDNsNQ==Ankush Bahuguna - Our picture perfect guest https://www.instagram.com/ankushbahuguna/?hl=en Produced at The Palette – Supporting us, with just a hint of judgmenthttps://www.instagram.com/thepalettemumbai?igsh=MTFpMzZ2amJtYmFsag==Creative direction by Tinkre, Keeper of MoS' signature “Pookie” energy Natascha Mehrahttps://www.instagram.com/tinkre.in/ https://www.instagram.com/natascha.zip/ Creative Producer - Rhea Jacob – An Idea bank & Chaos Coordinatorhttps://www.instagram.com/nuclear_rheaction/ Reels edited by Riyan Dalvi – Our meme maestro and unofficial expert on the male psychehttps://www.instagram.com/desiryangaming/ Timecodes:0:00 intro1:22 coworkers in a diff life 2:34 if life was a movie3:59 our alter egos5:21 naina is a fan6:15 getting national attention 8:54 unvealing childhood trauma10:57 identity theft, stalkers and more13:04 realities of PTSD14:44 adulthood + anxiety16:16 the cards we are dealt18:32 the bollywood dream 19:36 playing with makeup21:02 winning an award22:47 perfecting pr24:06 cannes content backlash 26:50 not allowed to leave our phone screens29:02 traditional ideas of success30:29 family trips31:53 dont spoil your parents32:29 the toothbrush theory35:05 money is the root cause of problemms38:02 we dont need to live like this40:14 ankush feels invisible42:30 therapy is fun45:15 dont use therapy speak48:18 trauma = content49:47 favs & flops for clickbait52:03 stockholm syndrome53:59 ankush's worst brand deals55:51 gossip central58:02 the mens xp cliques1:00:03 men are trolls1:02:19 morals of middle class are flexible1:05:18 if the tide shifts...Reddit is boringGupshup corners

Your Ultimate Life with Kellan Fluckiger
The Ripple Effect: How Your Choices Shape the World with Ankush Jain

Your Ultimate Life with Kellan Fluckiger

Play Episode Listen Later Jan 21, 2025 41:04 Transcription Available


In this inspiring episode of Your Ultimate Life, Kellan Fluckiger sits down with Ankush Jain to explore personal transformation, the power of consciousness, and the ripple effects of our choices. Ankush shares his journey from a fixed mindset to becoming a leader in coaching, with a mission to raise the planet's consciousness and inspire meaningful change.Key Takeaways:The Ripple Effect: Every decision you make has the potential to create far-reaching positive or negative impacts, shaping not only your life but the world around you.The Power of Self-Image: True growth begins with transforming how you see yourself and embracing your inner guidance.Raising Consciousness: Personal development is not just for individual success—it's a gift that uplifts others and influences future generations.The Coaching Journey: Ankush emphasizes the importance of foundational work in coaching, sharing his vision for elevating the profession to create a broader global impact.Generational Impact: How we raise children and interact with others leaves lasting imprints on society.Call to Action:Ready to elevate your consciousness and make an impact? Tune in to hear Ankush Jain's insights on self-growth, coaching, and creating a ripple effect that transforms lives.This episode reminds us that personal transformation is deeply connected to the collective human experience. Listen now to unlock your potential and create the legacy you envision.

Creating Confidence with Heather Monahan
#487: BEST OF - Transform Your MINDSET, Transform Your LIFE with Steven Bartlett, Krista Mashore, Amjad Masad, Dileep Thazhmon, Martin Villig, Ankush Grove, Jerrod Blandino, & Colin O'Brady

Creating Confidence with Heather Monahan

Play Episode Listen Later Jan 1, 2025 46:56


In This Episode You Will Learn About:  How to replace “I'm not ___” with “I'm not ___ YET.” Why you should stop negative thoughts, snap out of them, and switch to positivity. Learn to delegate and ELEVATE so you can focus on your strengths. Why you should treat failure as FEEDBACK. Ways to ALIGN your actions with your ultimate goal. Resources: Go to ConstantContact.com and start your FREE trial today. Sign up for a one-dollar-per-month trial period at shopify.com/monahan. Oracle is offering to halve your cloud bill if you switch to OCI. See if you qualify at oracle.com/MONAHAN. Download the CFO's Guide to AI and Machine Learning at NetSuite.com/MONAHAN. Get 10% off your first Mitopure order at timeline.com/CONFIDENCE. Get 15% off your first order at jennikayne.com when you use code CONFIDENCE15 at checkout. Get 15% off your first order at oakessentials.com when you use code CONFIDENCE15 at checkout. Call my digital clone at 201-897-2553!  Visit heathermonahan.com Reach out to me on Instagram & LinkedIn Sign up for my mailing list: heathermonahan.com/mailing-list/  Overcome Your Villains is Available NOW! Order here: https://overcomeyourvillains.com  If you haven't yet, get my first book, Confidence Creator Show Notes:  What's stopping you from reaching your EVEREST? These conversations remind me that the only limitations we face are the ones we place on ourselves. Colin O'Brady's mantra, “I'm not ___ YET,” inspires us to step into POSSIBILITY, while Steven Bartlett shows that true success is built on EMPOWERING others. Krista Mashore's “Stop, Snap, and Switch” technique proves you can rewire your mind for FEARLESS action, and Jerrod Blandino is living proof that courage leads to BREAKTHROUGHS. The lesson? Success isn't about perfection—it's about EMBRACING failure, TRUSTING your instincts, and taking BOLD, messy action. So, what's stopping you? The possibilities are LIMITLESS—LET'S CLIMB! - 05:11 #416: From High School Dropout To Multi-millionaire: Transcend The Limits Of Failure to Find Success with Steven Bartlett, Top Podcaster, Entrepreneur, CEO, & Investor  - 12:26 #347: Rescue Your Mindset With The STOP SNAP SWITCH Method with Krista Mashore Top 1% Coach & Multi-Million Dollar CEO - 18:49 Episode 418: CREATE Your Billion-Dollar Mindset: The Shift That Is Standing Between You & A Billion Dollars with Amjad Masad, Dileep Thazhmon, Martin Villig, & Ankush Grove - 26:26 Episode 107: From Beauty Counter to Billionaire Founder, How Jerrod Blandino Went Against The Grain And Why YOU Should Too  - 32:40 Episode 239: Unlock The EMPOWERED Mindset With Colin O'Brady 10X World Record Holding Explorer If You Liked This Episode, You Might Also Like These Episodes: #476: The FASTEST Way To Build Your EMPIRE with Tracy Holland, Founder, Investor, Board Member, & Entrepreneur #465: The Key to Going Bigger with Heather! #447: Realize Your POTENTIAL with Heather!

The BAE HQ Podcast
How to Create Engaging Board Packs for Investors w/ Ankush Bhatia | Fractional CFO

The BAE HQ Podcast

Play Episode Listen Later Dec 3, 2024 19:21 Transcription Available


Episode 197: Anshika Arora , today's host from The BAE HQ  and the founder of Eternity welcomes Ankush Bhatia, a Commercial Focused Finance Leader.This podcast explores the essential components of an effective board pack, emphasising the importance of storytelling, tangible metrics, and strategic planning to maintain investor confidence and engagement. Featuring Ankush, a seasoned CFO, the discussion provides actionable advice for founders on presenting data, managing challenges, and building relationships with current and future investors.Message from our headline partners:From the first time founders to the funds that back them, innovation needs different. HSBC Innovation Banking is proud to accelerate growth for tech and life science businesses, creating meaningful connections and opening up a world of opportunity for entrepreneurs and investors alike. Discover more at https://www.hsbcinnovationbanking.com/________Show Notes: 00:00 - Intro01:12 – Purpose and impact of a board pack.02:00 – Board pack structure: summary, metrics, financials.03:28 – Storytelling to drive discussions.04:46 – Identifying and tracking key metrics.06:18 – Balancing metrics for current/future investors.07:45 – Building investor relationships early.08:26 – Managing bad news with communication.10:50 – Financial metrics and data storytelling.13:24 – Operational and non-financial metrics.14:42 – Common board pack mistakes.Ankush Bhatia:https://www.linkedin.com/in/ankush-bhatia-154559b/

Get Clarity with Jamie Smart
#072 - Ankush Jain - Raising the consciousness of the planet

Get Clarity with Jamie Smart

Play Episode Listen Later May 15, 2024 42:55


Hi. I'm Jamie Smart. Welcome to the podcast. In this episode, you're going to hear a conversation I had with my good friend and colleague, Ankush Jain. Ankush is a life and business coach, he's a consultant, a proud father, a published author, a podcast host and a public speaker. As you'll hear, he's on a mission to raise the consciousness of the planet through changing the coaching industry. And one of the vehicles he's using for this is his Coaching Career School which he launched in 2022, helping coaches grow impactful, ethical and sustainable practices.   Just before we get to that, I wanted to mention that the doors are now open for the September 2024 intake of our flagship Clarity Certification Training programme.    Clarity Certification is accredited by the International Coaching Federation (the ICF) as a provider of Continuous Coach Education, so if you're already an ICF-certified coach, you can use the programme to earn CCE units. Either way, you can take part in CCT with full confidence that the programme is fully accredited by the ICF as a Continuous Coaching Education provider. And there's a special earlybird price if you book your place by the end of May. Just go to www.JamieSmart.com/coach    So now to the episode. 

The Thriving Coaches Podcast
#115 - Ankush Jain - Raising the consciousness of the planet

The Thriving Coaches Podcast

Play Episode Listen Later May 15, 2024 42:56


Hi. I'm Jamie Smart. Welcome to the podcast. In this episode, you're going to hear a conversation I had with my good friend and colleague, Ankush Jain. Ankush is a life and business coach, he's a consultant, a proud father, a published author, a podcast host and a public speaker. As you'll hear, he's on a mission to raise the consciousness of the planet through changing the coaching industry. And one of the vehicles he's using for this is his Coaching Career School which he launched in 2022, helping coaches grow impactful, ethical and sustainable practices.   Just before we get to that, I wanted to mention that the doors are now open for the September 2024 intake of our flagship Clarity Certification Training programme.    Clarity Certification is accredited by the International Coaching Federation (the ICF) as a provider of Continuous Coach Education, so if you're already an ICF-certified coach, you can use the programme to earn CCE units. Either way, you can take part in CCT with full confidence that the programme is fully accredited by the ICF as a Continuous Coaching Education provider. And there's a special earlybird price if you book your place by the end of May. Just go to www.JamieSmart.com/coach    So now to the episode. 

Creating Confidence with Heather Monahan
#418: CREATE Your Billion-Dollar Mindset: The Shift That Is Standing Between You & A Billion Dollars with Amjad Masad, Dileep Thazhmon, Martin Villig, & Ankush Grover

Creating Confidence with Heather Monahan

Play Episode Listen Later Apr 16, 2024 36:18


The biggest stages in the world are waiting to welcome you. Are you ready to take the stage? Let me teach you how…. Join The Elite Mastermind with me! There are only 20 seats available. Link here: https://heathermonahan.com/the-elite-mastermind/ In This Episode You Will Learn About:  What these leaders did differently to build their startup to global success The culture you need to create if you want your business to last What it looks like to have a Unicorn Founder's mindset How you can embrace the real challenges & failures necessary to become a Unicorn yourself Resources: Website: https://amasad.me/  Website: https://www.tryjeeves.com/ Website: https://martinvillig.com/  Website: https://www.rebelfoods.com/  Visit heathermonahan.com Overcome Your Villains is Available NOW! Order here: https://overcomeyourvillains.com  Show Notes:  What makes a Unicorn Founder? They are the unbeatable entrepreneurs who have created a start-up valued at $1 billion dollars! How do they do it? To help us all reach our goals, I am sharing one of my favorite panels from the LEAP conference: “Decoding the Journey to Becoming a Billion-Dollar Startup”. Together with Amjad Masad, CEO of Replit, Dileep Thazhmon, Founder and CEO of Jeeves, Martin Villig, Co-founder of Bolt, and Ankush Grover, Co-founder of Rebel Foods, we will dive into what it really means to become a Unicorn. You do not want to miss these secrets on building the mindset, culture, and grit that will take you to the next level. You may just be a Unicorn in the making! If You Liked This Episode You Might Also Like These Episodes: #390: The #1 INSIGHTS From My Journey To Success: Introducing "Who Knew In The Moment Podcast" With Phil Friedrich #388: The Secret To Anti-Aging WITHOUT Surgery with Dr. Anthony Youn America's Holistic Plastic Surgeon #384: Secrets From My Masterclass: Securing Partnerships, Building Your Brand, & Achieving Your Goals with Heather! Learn more about your ad choices. Visit megaphone.fm/adchoices

The Industrial Talk Podcast with Scott MacKenzie
Ankush Malhotra with Fluke Reliability

The Industrial Talk Podcast with Scott MacKenzie

Play Episode Listen Later Apr 5, 2024 15:36 Transcription Available


Industrial Talk is onsite at Xcelerate 24 and talking to Ankush Malhotra, President of Fluke Reliability about "Connected Reliability - Complete insights into your operational assets".  Here are some of the key takeaways from our conversation: Industrial innovation and problem-solving at Xcelerate 2024. 0:04 Scott MacKenzie welcomes listeners to Industrial Talk Podcast at Xcelerate 2024 in Orlando, Florida. Collaboration and innovation in reliability work. 1:30 Ankush discuss the annual customer conference at a golf resort in Florida, highlighting its newness and technical issues. Customers lead several tracks at the event, sharing their experiences and innovations in reliability work. Leveraging technology to solve customer problems. 4:26 Xcelerate 2024: Addressing market changes through AI and automation. Azima acquired to help customers become more proactive in maintenance work. AI-powered predictive maintenance for industrial equipment. 7:55 Ankush explains that Azima's AI-powered solution collects and analyzes data from critical machinery to predict when faults will occur, providing early warning signals and suggesting corrective actions. Ankush highlights the importance of human expertise in complementing AI, with a team of 40 analysts globally reviewing and interpreting the data to provide value to customers. Ankush highlights the importance of AI in reducing false alarms in predictive maintenance, allowing techs to focus on critical issues. Ankush notes that Azima's solution is strengthened by its rich database, which informs algorithms and improves accuracy. Asset management and reliability with Fluke Reliability. 12:39 Ankush, Fluke Reliability: Passionate about asset management, maintenance, and reliability, with a focus on evolving algorithms and improving data collection. Ankush encourages listeners to reach out to him on LinkedIn or through Fluke Reliability for more information and collaboration. If interested in being on the Industrial Talk show, simply contact us and let's have a quick conversation. Finally, get your exclusive free access to the Industrial Academy and a series on “Marketing Process Course” for Greater Success in 2024. All links designed for keeping you current in this rapidly changing Industrial Market....

Action and Ambition
Unlocking Tomorrow's Wealth: Ankush Gera's Insights on Angel Investing!

Action and Ambition

Play Episode Listen Later Feb 16, 2024 36:47


Welcome to another episode of the Action and Ambition Podcast! Joining us today is Ankush Gera, a serial entrepreneur and angel investor extraordinaire. As the founder of Junglee Games, which was acquired by Flutter, and a co-founder of Kunai and Monsoon Company (snapped up by Capital One), Ankush has a knack for building successful ventures. He's not just about starting companies, though; Ankush is also deeply involved in the startup ecosystem as a limited partner in numerous funds like Metastable, Commerce Ventures, http://Fearless.vc , and many others. With a seat on the boards of Kunai and Junglee Games, plus an extensive portfolio of angel investments, including big names like Airbnb, Devoted Health, and Alt, Ankush is a force to be reckoned with in the world of entrepreneurship and investment. Tune in to learn more!

Desi Return Diaries
Story of an IT family who went to US for onsite, lived for 12 years and made a conscious decision to return back | Planning, Timing, Schooling, City selection and much more

Desi Return Diaries

Play Episode Listen Later Jan 18, 2024 38:51


Ankush went to US as part of internal company transfer and spent 12 years in US before moving back to India. Ankush had a good social life, good professional career and work life balance while living in the US. Ankush talks about what made their family move back to India, how they approached the timing when they want to move and plan the move as well as which city to settle.

100x Entrepreneur
Regional Content King - ShareChat Founder Explains Why India Loves Seeking Status! I Neon Show

100x Entrepreneur

Play Episode Listen Later Jan 12, 2024 77:38


This week's episode is about why India as a country loves seeking status, as we welcome Ankush Sachdeva, co-founder of ShareChat, to the Neon Show!How Have Indian Consumers Evolved In The Last 10 Years?India vs Bharat ArgumentAre Majority Of Indian Products Aimed At Tier-1 Cities?All these CAPTIVATING topics and more in this FREE-FLOWING conversation about how social media has played a part in the consumer behaviour of Indians. A deep dive into why Indians are so status-driven rather than wealth-driven… Tune in NOW!_____________________________________________________________________________________________________

We're Listening
Ep 127 Ankush Jain " I'm Winning"

We're Listening

Play Episode Listen Later Dec 1, 2023 29:03


Join Rob as he interviews Ankush on "Winning & Wisdom," The art and science of achieving success in various aspects of life. Take advantage of a conversation that can transform your mind to new heights. Support this podcast at — https://redcircle.com/we-re-listening/donationsAdvertising Inquiries: https://redcircle.com/brandsPrivacy & Opt-Out: https://redcircle.com/privacy

The Shape of Work
#502: Ankush Gupta on redefining HR from admin to strategy and transforming through technology

The Shape of Work

Play Episode Listen Later Oct 28, 2023 15:01 Transcription Available


"Balancing demand and supply is paramount in talent acquisition. Recent layoffs in major companies highlight the consequences of an imbalance. It's crucial for organizations to align their workforce needs with market realities to maintain stability."In this episode of The Shape Of Work podcast, join us on a captivating journey, as we unfold the transformation of HR roles with Ankush Gupta, Talent Consultant at EY. Angush, with his enriching expedition from a software developer to an HR professional, shares some profound insights about the evolution of HR roles. With over a decade of professional experience, he has contributed his expertise to renowned organizations including Tata Consultancy Services, KPMG, and Infosys. He holds an Engineer's Degree from Shri Mata Vaishno Devi University and furthered his education with an MBA and PhD from the esteemed National Institute of Technology Warangal.In this episode, Ankush unravels the impact of real-time analytics on HR decision-making. He emphasizes the significance of engagement surveys, data visualization, and statistical tools in HR analytics. Episode HighlightsThe evolution of HR over the yearsHow is HR analytics reshaping decision-making in real-time?The challenges of talent acquisition and retention and the need for organisations to invest in technologyImportance of developing learning agility in the digital landscapeFollow Ankush on LinkedinProduced by: Priya BhattPodcast Host: Riddhi AgarwalAbout Springworks:Springworks is a fully-distributed HR technology organisation building tools and products to simplify recruitment, onboarding, employee engagement, and retention. The product stack from Springworks includes:SpringVerify— B2B verification platformEngageWith— employee recognition and rewards platform that enriches company cultureTrivia — a suite of real-time, fun, and interactive games platforms for remote/hybrid team-buildingSpringRole — verified professional-profile platform backed by blockchain, andSpringRecruit — a forever-free applicant tracking system.Springworks prides itself on being an organisation focused on employee well-being and workplace culture, leading to a 4.8 rating on Glassdoor for the 200+ employee strength company.

Latent Space: The AI Engineer Podcast — CodeGen, Agents, Computer Vision, Data Science, AI UX and all things Software 3.0

As alluded to on the pod, LangChain has just launched LangChain Hub: “the go-to place for developers to discover new use cases and polished prompts.” It's available to everyone with a LangSmith account, no invite code necessary. Check it out!In 2023, LangChain has speedrun the race from 2:00 to 4:00 to 7:00 Silicon Valley Time. From the back to back $10m Benchmark seed and (rumored) $20-25m Sequoia Series A in April, to back to back critiques of “LangChain is Pointless” and “The Problem with LangChain” in July, to teaching with Andrew Ng and keynoting at basically every AI conference this fall (including ours), it has been an extreme rollercoaster for Harrison and his growing team creating one of the most popular (>60k stars at time of writing) building blocks for AI Engineers.LangChain's OriginsThe first commit to LangChain shows its humble origins as a light wrapper around Python's formatter.format for prompt templating. But as Harrison tells the story, even his first experience with text-davinci-002 in early 2022 was focused on chatting with data from their internal company Notion and Slack, what is now known as Retrieval Augmented Generation (RAG). As the Generative AI meetup scene came to life post Stable Diffusion, Harrison saw a need for common abstractions for what people were building with text LLMs at the time:* LLM Math, aka Riley Goodside's “You Can't Do Math” REPL-in-the-loop (PR #8)* Self-Ask With Search, Ofir Press' agent pattern (PR #9) (later ReAct, PR #24)* NatBot, Nat Friedman's browser controlling agent (PR #18)* Adapters for OpenAI, Cohere, and HuggingFaceHubAll this was built and launched in a few days from Oct 16-25, 2022. Turning research ideas/exciting usecases into software quickly and often has been in the LangChain DNA from Day 1 and likely a big driver of LangChain's success, to date amassing the largest community of AI Engineers and being the default launch framework for every big name from Nvidia to OpenAI:Dancing with GiantsBut AI Engineering is built atop of constantly moving tectonic shifts: * ChatGPT launched in November (“The Day the AGI Was Born”) and the API released in March. Before the ChatGPT API, OpenAI did not have a chat endpoint. In order to build a chatbot with history, you had to make sure to chain all messages and prompt for completion. LangChain made it easy to do that out of the box, which was a huge driver of usage. * Today, OpenAI has gone all-in on the chat API and is deprecating the old completions models, essentially baking in the chat pattern as the default way most engineers should interact with LLMs… and reducing (but not eliminating) the value of ConversationChains.* And there have been more updates since: Plugins released in API form as Functions in June (one of our top pods ever… reducing but not eliminating the value of OutputParsers) and Finetuning in August (arguably reducing some need for Retrieval and Prompt tooling). With each update, OpenAI and other frontier model labs realign the roadmaps of this nascent industry, and Harrison credits the modular design of LangChain in staying relevant. LangChain has not been merely responsive either: LangChain added Agents in November, well before they became the hottest topic of the AI Summer, and now Agents feature as one of LangChain's top two usecases. LangChain's problem for podcasters and newcomers alike is its sheer scope - it is the world's most complete AI framework, but it also has a sprawling surface area that is difficult to fully grasp or document in one sitting. This means it's time for the trademark Latent Space move (ChatGPT, GPT4, Auto-GPT, and Code Interpreter Advanced Data Analysis GPT4.5): the executive summary!What is LangChain?As Harrison explains, LangChain is an open source framework for building context-aware reasoning applications, available in Python and JS/TS.It launched in Oct 2022 with the central value proposition of “composability”, aka the idea that every AI engineer will want to switch LLMs, and combine LLMs with other things into “chains”, using a flexible interface that can be saved via a schema.Today, LangChain's principal offerings can be grouped as:* Components: isolated modules/abstractions* Model I/O* Models (for LLM/Chat/Embeddings, from OpenAI, Anthropic, Cohere, etc)* Prompts (Templates, ExampleSelectors, OutputParsers)* Retrieval (revised and reintroduced in March)* Document Loaders (eg from CSV, JSON, Markdown, PDF)* Text Splitters (15+ various strategies for chunking text to fit token limits)* Retrievers (generic interface for turning an unstructed query into a set of documents - for self-querying, contextual compression, ensembling)* Vector Stores (retrievers that search by similarity of embeddings)* Indexers (sync documents from any source into a vector store without duplication)* Memory (for long running chats, whether a simple Buffer, Knowledge Graph, Summary, or Vector Store)* Use-Cases: compositions of Components* Chains: combining a PromptTemplate, LLM Model and optional OutputParser* with Router, Sequential, and Transform Chains for advanced usecases* savable, sharable schemas that can be loaded from LangChainHub* Agents: a chain that has access to a suite of tools, of nondeterministic length because the LLM is used as a reasoning engine to determine which actions to take and in which order. Notable 100LOC explainer here.* Tools (interfaces that an agent can use to interact with the world - preset list here. Includes things like ChatGPT plugins, Google Search, WolframAlpha. Groups of tools are bundled up as toolkits)* AgentExecutor (the agent runtime, basically the while loop, with support for controls, timeouts, memory sharing, etc)* LangChain has also added a Callbacks system for instrumenting each stage of LLM, Chain, and Agent calls (which enables LangSmith, LangChain's first cloud product), and most recently an Expression Language, a declarative way to compose chains.LangChain the company incorporated in January 2023, announced their seed round in April, and launched LangSmith in July. At time of writing, the company has 93k followers, their Discord has 31k members and their weekly webinars are attended by thousands of people live.The full-featuredness of LangChain means it is often the first starting point for building any mainstream LLM use case, because they are most likely to have working guides for the new developer. Logan (our first guest!) from OpenAI has been a notable fan of both LangChain and LangSmith (they will be running the first LangChain + OpenAI workshop at AI Eng Summit). However, LangChain is not without its critics, with Aravind Srinivas, Jim Fan, Max Woolf, Mckay Wrigley and the general Reddit/HN community describing frustrations with the value of their abstractions, and many are attempting to write their own (the common experience of adding and then removing LangChain is something we covered in our Agents writeup). Harrison compares this with the timeless ORM debate on the value of abstractions.LangSmithLast month, Harrison launched LangSmith, their LLM observability tool and first cloud product. LangSmith makes it easy to monitor all the different primitives that LangChain offers (agents, chains, LLMs) as well as making it easy to share and evaluate them both through heuristics (i.e. manually written ones) and “LLM evaluating LLM” flows. The top HN comment in the “LangChain is Pointless” thread observed that orchestration is the smallest part of the work, and the bulk of it is prompt tuning and data serialization. When asked this directly our pod, Harrison agreed:“I agree that those are big pain points that get exacerbated when you have these complex chains and agents where you can't really see what's going on inside of them. And I think that's partially why we built Langsmith…” (48min mark)You can watch the full launch on the LangChain YouTube:It's clear that the target audience for LangChain is expanding to folks who are building complex, production applications rather than focusing on the simpler “Q&A your docs” use cases that made it popular in the first place. As the AI Engineer space matures, there will be more and more tools graduating from supporting “hobby” projects to more enterprise-y use cases. In this episode we run through some of the history of LangChain, how it's growing from an open source project to one of the highest valued AI startups out there, and its future. We hope you enjoy it!Show Notes* LangChain* LangChain's Berkshire Hathaway Homepage* Abstractions tweet* LangSmith* LangSmith Cookbooks repo* LangChain Retrieval blog* Evaluating CSV Question/Answering blog and YouTube* MultiOn Partner blog* Harvard Sports Analytics Collective* Evaluating RAG Webinar* awesome-langchain:* LLM Math Chain* Self-Ask* LangChain Hub UI* “LangChain is Pointless”* Harrison's links* sports - estimating player compatibility in the NBA* early interest in prompt injections* GitHub* TwitterTimestamps* [00:00:00] Introduction* [00:00:48] Harrison's background and how sports led him into ML* [00:04:54] The inspiration for creating LangChain - abstracting common patterns seen in other GPT-3 projects* [00:05:51] Overview of LangChain - a framework for building context-aware reasoning applications* [00:10:09] Components of LangChain - modules, chains, agents, etc.* [00:14:39] Underappreciated parts of LangChain - text splitters, retrieval algorithms like self-query* [00:18:46] Hiring at LangChain* [00:20:27] Designing the LangChain architecture - balancing flexibility and structure* [00:24:09] The difference between chains and agents in LangChain* [00:25:08] Prompt engineering and LangChain* [00:26:16] Announcing LangSmith* [00:30:50] Writing custom evaluators in LangSmith* [00:33:19] Reducing hallucinations - fixing retrieval vs generation issues* [00:38:17] The challenges of long context windows* [00:40:01] LangChain's multi-programming language strategy* [00:45:55] Most popular LangChain blog posts - deep dives into specific topics* [00:50:25] Responding to LangChain criticisms* [00:54:11] Harrison's advice to AI engineers* [00:55:43] Lightning RoundTranscriptAlessio: Hey everyone, welcome to the Latent Space Podcast. This is Alessio, partner and CTO at Residence at Decibel Partners, and I'm joined by my co-host Swyx, founder of Smol.ai. [00:00:19]Swyx: Welcome. Today we have Harrison Chase in the studio with us. Welcome Harrison. [00:00:23]Harrison: Thank you guys for having me. I'm excited to be here. [00:00:25]Swyx: It's been a long time coming. We've been asking you for a little bit and we're really glad that you got some time to join us in the studio. Yeah. [00:00:32]Harrison: I've been dodging you guys for a while. [00:00:34]Swyx: About seven months. You pulled me in here. [00:00:37]Alessio: About seven months. But it's all good. I totally understand. [00:00:38]Swyx: We like to introduce people through the official backgrounds and then ask you a little bit about your personal side. So you went to Harvard, class of 2017. You don't list what you did in Harvard. Was it CS? [00:00:48]Harrison: Stats and CS. [00:00:50]Swyx: That's awesome. I love me some good stats. [00:00:52]Harrison: I got into it through stats, through doing sports analytics. And then there was so much overlap between stats and CS that I found myself doing more and more of that. [00:00:59]Swyx: And it's interesting that a lot of the math that you learn in stats actually comes over into machine learning which you applied at Kensho as a machine learning engineer and Robust Intelligence, which seems to be the home of a lot of AI founders.Harrison: It does. Yeah. Swyx: And you started LangChain, I think around November 2022 and incorporated in January. Yeah. [00:01:19]Harrison: I was looking it up for the podcast and the first tweet was on, I think October 24th. So just before the end of November or end of October. [00:01:26]Swyx: Yeah. So that's your LinkedIn. What should people know about you on the personal side that's not obvious on LinkedIn? [00:01:33]Harrison: A lot of how I got into this is all through sports actually. Like I'm a big sports fan, played a lot of soccer growing up and then really big fan of the NBA and NFL. And so freshman year at college showed up and I knew I liked math. I knew I liked sports. One of the clubs that was there was the Sports Analytics Collective. And so I joined that freshman year, I was doing a lot of stuff in like Excel, just like basic stats, but then like wanted to do more advanced stuff. So learn to code, learn kind of like data science and machine learning through that way. Kind of like just kept on going down that path. I think sports is a great entryway to data science and machine learning. There's a lot of like numbers out there. People like really care. Like I remember, I think sophomore, junior year, I was in the Sports Collective and the main thing we had was a blog. And so we wrote a blog. It wasn't me. One of the other people in the club wrote a blog predicting the NFL season. I think they made some kind of like with stats and I think their stats showed that like the Dolphins would end up beating the Patriots and New England got like pissed about it, of course. So people like really care and they'll give you feedback about whether you're like models doing well or poorly. And so you get that. And then you also get like instantaneous kind of like, well, not instantaneous, but really quick feedback. Like if you predict a game, the game happens that night. Like you don't have to wait a year to see what happens. So I think sports is a great kind of like entryway for kind of like data science. [00:02:43]Alessio: There was actually my first article on the Twilio blog with a Python script to like predict pricing of like Daily Fantasy players based on my past week performance. Yeah, I don't know. It's a good getaway drug. [00:02:56]Swyx: And on my end, the way I got into finance was through sports betting. So maybe we all have some ties in there. Was like Moneyball a big inspiration? The movie? [00:03:06]Harrison: Honestly, not really. I don't really like baseball. That's like the big thing. [00:03:10]Swyx: Let's call it a lot of stats. Cool. Well, we can dive right into LangChain, which is what everyone is excited about. But feel free to make all the sports analogies you want. That really drives home a lot of points. What was your GPT aha moment? When did you start working on GPT itself? Maybe not LangChain, just anything to do with the GPT API? [00:03:29]Harrison: I think it probably started around the time we had a company hackathon. I think that was before I launched LangChain. I'm trying to remember the exact sequence of events, but I do remember that at the hackathon I worked with Will, who's now actually at LangChain as well, and then two other members of Robust. And we made basically a bot where you could ask questions of Notion and Slack. And so I think, yeah, RAG, basically. And I think I wanted to try that out because I'd heard that it was getting good. I'm trying to remember if I did anything before that to realize that it was good. So then I would focus on that on the hackathon. I can't remember or not, but that was one of the first times that I built something [00:04:06]Swyx: with GPT-3. There wasn't that much opportunity before because the API access wasn't that widespread. You had to get into some kind of program to get that. [00:04:16]Harrison: DaVinci-002 was not terrible, but they did an upgrade to get it to there, and they didn't really publicize that as much. And so I think I remember playing around with it when the first DaVinci model came out. I was like, this is cool, but it's not amazing. You'd have to do a lot of work to get it to do something. But then I think that February or something, I think of 2022, they upgraded it and it was it got better, but I think they made less of an announcement around it. And so I just, yeah, it kind of slipped under the radar for me, at least. [00:04:45]Alessio: And what was the step into LangChain? So you did the hackathon, and then as you were building the kind of RAG product, you felt like the developer experience wasn't that great? Or what was the inspiration? [00:04:54]Harrison: No, honestly, so around that time, I knew I was going to leave my previous job. I was trying to figure out what I was going to do next. I went to a bunch of meetups and other events. This was like the September, August, September of that year. So after Stable Diffusion, but before ChatGPT. So there was interest in generative AI as a space, but not a lot of people hacking on language models yet. But there were definitely some. And so I would go to these meetups and just chat with people and basically saw some common abstractions in terms of what they were building, and then thought it would be a cool side project to factor out some of those common abstractions. And that became kind of like LangChain. I looked up again before this, because I remember I did a tweet thread on Twitter to announce LangChain. And we can talk about what LangChain is. It's a series of components. And then there's some end-to-end modules. And there was three end-to-end modules that were in the initial release. One was NatBot. So this was the web agent by Nat Friedman. Another was LLM Math Chain. So it would construct- [00:05:51]Swyx: GPT-3 cannot do math. [00:05:53]Harrison: Yeah, exactly. And then the third was Self-Ask. So some type of RAG search, similar to React style agent. So those were some of the patterns in terms of what I was seeing. And those all came from open source or academic examples, because the people who were actually working on this were building startups. And they were doing things like question answering over your databases, question answering over SQL, things like that. But I couldn't use their code as kind of like inspiration to factor things out. [00:06:18]Swyx: I talked to you a little bit, actually, roundabout, right after you announced LangChain. I'm honored. I think I'm one of many. This is your first open source project. [00:06:26]Harrison: No, that's not actually true. I released, because I like sports stats. And so I remember I did release some really small, random Python package for scraping data from basketball reference or something. I'm pretty sure I released that. So first project to get a star on GitHub, let's say that. [00:06:45]Swyx: Did you reference anything? What was the inspirations, like other frameworks that you look to when open sourcing LangChain or announcing it or anything like that? [00:06:53]Harrison: I mean, the only main thing that I looked for... I remember reading a Hacker News post a little bit before about how a readme on the project goes a long way. [00:07:02]Swyx: Readme's help. [00:07:03]Harrison: Yeah. And so I looked at it and was like, put some status checks at the top and have the title and then one or two lines and then just right into installation. And so that's the main thing that I looked at in terms of how to structure it. Because yeah, I hadn't done open source before. I didn't really know how to communicate that aspect of the marketing or getting people to use it. I think I had some trouble finding it, but I finally found it and used that as a lot [00:07:25]Swyx: of the inspiration there. Yeah. It was one of the subjects of my write-up how it was surprising to me that significant open source experience actually didn't seem to matter in the new wave of AI tooling. Most like auto-GPTs, Torrents, that was his first open source project ever. And that became auto-GPT. Yeah. I don't know. To me, it's just interesting how open source experience is kind of fungible or not necessary. Or you can kind of learn it on the job. [00:07:49]Alessio: Overvalued. [00:07:50]Swyx: Overvalued. Okay. You said it, not me. [00:07:53]Alessio: What's your description of LangChain today? I think when I built the LangChain Hub UI in January, there were a few things. And I think you were one of the first people to talk about agents that were already in there before it got hot now. And it's obviously evolved into a much bigger framework today. Run people through what LangChain is today, how they should think about it, and all of that. [00:08:14]Harrison: The way that we describe it or think about it internally is that LangChain is basically... I started off saying LangChain's a framework for building LLM applications, but that's really vague and not really specific. And I think part of the issue is LangChain does do a lot, so it's hard to be somewhat specific. But I think the way that we think about it internally, in terms of prioritization, what to focus on, is basically LangChain's a framework for building context-aware reasoning applications. And so that's a bit of a mouthful, but I think that speaks to a lot of the core parts of what's in LangChain. And so what concretely that means in LangChain, there's really two things. One is a set of components and modules. And these would be the prompt template abstraction, the LLM abstraction, chat model abstraction, vector store abstraction, text splitters, document loaders. And so these are combinations of things that we build and we implement, or we just have integrations with. So we don't have any language models ourselves. We don't have any vector stores ourselves, but we integrate with a lot of them. And then the text splitters, we have our own logic for that. The document loaders, we have our own logic for that. And so those are the individual modules. But then I think another big part of LangChain, and probably the part that got people using it the most, is the end-to-end chains or applications. So we have a lot of chains for getting started with question answering over your documents, chat question answering, question answering over SQL databases, agent stuff that you can plug in off the box. And that basically combines these components in a series of specific ways to do this. So if you think about a question answering app, you need a lot of different components kind of stacked. And there's a bunch of different ways to do question answering apps. So this is a bit of an overgeneralization, but basically, you know, you have some component that looks up an embedding from a vector store, and then you put that into the prompt template with the question and the context, and maybe you have the chat history as well. And then that generates an answer, and then maybe you parse that out, or you do something with the answer there. And so there's just this sequence of things that you basically stack in a particular way. And so we just provide a bunch of those assembled chains off the shelf to make it really easy to get started in a few lines of code. [00:10:09]Alessio: And just to give people context, when you first released LangChain, OpenAI did not have a chat API. It was a completion-only API. So you had to do all the human assistant, like prompting and whatnot. So you abstracted a lot of that away. I think the most interesting thing to me is you're kind of the Switzerland of this developer land. There's a bunch of vector databases that are killing each other out there to get people to embed data in them, and you're like, I love you all. You all are great. How do you think about being an opinionated framework versus leaving a lot of choice to the user? I mean, in terms of spending time into this integration, it's like you only have 10 people on the team. Obviously that takes time. Yeah. What's that process like for you all? [00:10:50]Harrison: I think right off the bat, having different options for language models. I mean, language models is the main one that right off the bat we knew we wanted to support a bunch of different options for. There's a lot to discuss there. People want optionality between different language models. They want to try it out. They want to maybe change to ones that are cheaper as new ones kind of emerge. They don't want to get stuck into one particular one if a better one comes out. There's some challenges there as well. Prompts don't really transfer. And so there's a lot of nuance there. But from the bat, having this optionality between the language model providers was a big important part because I think that was just something we felt really strongly about. We believe there's not just going to be one model that rules them all. There's going to be a bunch of different models that are good for a bunch of different use cases. I did not anticipate the number of vector stores that would emerge. I don't know how many we supported in the initial release. It probably wasn't as big of a focus as language models was. But I think it kind of quickly became so, especially when Postgres and Elastic and Redis started building their vector store implementations. We saw that some people might not want to use a dedicated vector store. Maybe they want to use traditional databases. I think to your point around what we're opinionated about, I think the thing that we believe most strongly is it's super early in the space and super fast moving. And so there's a lot of uncertainty about how things will shake out in terms of what role will vector databases play? How many will there be? And so I think a lot of it has always kind of been this optionality and ability to switch and not getting locked in. [00:12:19]Swyx: There's other pieces of LangChain which maybe don't get as much attention sometimes. And the way that you explained LangChain is somewhat different from the docs. I don't know how to square this. So for example, you have at the top level in your docs, you have, we mentioned ModelIO, we mentioned Retrieval, we mentioned Chains. Then you have a concept called Agents, which I don't know if exactly matches what other people call Agents. And we also talked about Memory. And then finally there's Callbacks. Are there any of the less understood concepts in LangChain that you want to give some air to? [00:12:53]Harrison: I mean, I think buried in ModelIO is some stuff around like few-shot example selectors that I think is really powerful. That's a workhorse. [00:13:01]Swyx: Yeah. I think that's where I start with LangChain. [00:13:04]Harrison: It's one of those things that you probably don't, if you're building an application, you probably don't start with it. You probably start with like a zero-shot prompt. But I think that's a really powerful one that's probably just talked about less because you don't need it right off the bat. And for those of you who don't know, that basically selects from a bunch of examples the ones that are maybe most relevant to the input at hand. So you can do some nice kind of like in-context learning there. I think that's, we've had that for a while. I don't think enough people use that, basically. Output parsers also used to be kind of important, but then function calling. There's this interesting thing where like the space is just like progressing so rapidly that a lot of things that were really important have kind of diminished a bit, to be honest. Output parsers definitely used to be an understated and underappreciated part. And I think if you're working with non-OpenAI models, they still are, but a lot of people are working with OpenAI models. But even within there, there's different things you can do with kind of like the function calling ability. Sometimes you want to have the option of having the text or the application you're building, it could return either. Sometimes you know that it wants to return in a structured format, and so you just want to take that structured format. Other times you're extracting things that are maybe a key in that structured format, and so you want to like pluck that key. And so there's just like some like annoying kind of like parsing of that to do. Agents, memory, and retrieval, we haven't talked at all. Retrieval, there's like five different subcomponents. You could also probably talk about all of those in depth. You've got the document loaders, the text splitters, the embedding models, the vector stores. Embedding models and vector stores, we don't really have, or sorry, we don't build, we integrate with those. Text splitters, I think we have like 15 or so. Like I think there's an under kind of like appreciated amount of those. [00:14:39]Swyx: And then... Well, it's actually, honestly, it's overwhelming. Nobody knows what to choose. [00:14:43]Harrison: Yeah, there is a lot. [00:14:44]Swyx: Yeah. Do you have personal favorites that you want to shout out? [00:14:47]Harrison: The one that we have in the docs is the default is like the recursive text splitter. We added a playground for text splitters the other week because, yeah, we heard a lot that like, you know, and like these affect things like the chunk overlap and the chunks, they affect things in really subtle ways. And so like I think we added a playground where people could just like choose different options. We have like, and a lot of the ideas are really similar. You split on different characters, depending on kind of like the type of text that you have marked down, you might want to split on differently than HTML. And so we added a playground where you can kind of like choose between those. I don't know if those are like underappreciated though, because I think a lot of people talk about text splitting as being a hard part, and it is a really important part of creating these retrieval applications. But I think we have a lot of really cool retrieval algorithms as well. So like self query is maybe one of my favorite things in LangChain, which is basically this idea of when you have a user question, the typical kind of like thing to do is you embed that question and then find the document that's most similar to that question. But oftentimes questions have things that just, you don't really want to look up semantically, they have some other meaning. So like in the example that I use, the example in the docs is like movies about aliens in the year 1980. 1980, I guess there's some semantic meaning for that, but it's a very particular thing that you care about. And so what the self query retriever does is it splits out the metadata filter and most vector stores support like a metadata filter. So it splits out this metadata filter, and then it splits out the semantic bit. And that's actually like kind of tricky to do because there's a lot of different filters that you can have like greater than, less than, equal to, you can have and things if you have multiple filters. So we have like a pretty complicated like prompt that does all that. That might be one of my favorite things in LangChain, period. Like I think that's, yeah, I think that's really cool. [00:16:26]Alessio: How do you think about speed of development versus support of existing things? So we mentioned retrieval, like you got, or, you know, text splitting, you got like different options for all of them. As you get building LangChain, how do you decide which ones are not going to keep supporting, you know, which ones are going to leave behind? I think right now, as you said, the space moves so quickly that like you don't even know who's using what. What's that like for you? [00:16:50]Harrison: Yeah. I mean, we have, you know, we don't really have telemetry on what people are using in terms of what parts of LangChain, the telemetry we have is like, you know, anecdotal stuff when people ask or have issues with things. A lot of it also is like, I think we definitely prioritize kind of like keeping up with the stuff that comes out. I think we added function calling, like the day it came out or the day after it came out, we added chat model support, like the day after it came out or something like that. That's probably, I think I'm really proud of how the team has kind of like kept up with that because this space is like exhausting sometimes. And so that's probably, that's a big focus of ours. The support, I think we've like, to be honest, we've had to get kind of creative with how we do that. Cause we have like, I think, I don't know how many open issues we have, but we have like 3000, somewhere between 2000 and 3000, like open GitHub issues. We've experimented with a lot of startups that are doing kind of like question answering over your docs and stuff like that. And so we've got them on the website and in the discord and there's a really good one, dosu on the GitHub that's like answering issues and stuff like that. And that's actually something we want to start leaning into more heavily as a company as well as kind of like building out an AI dev rel because we're 10 people now, 10, 11 people now. And like two months ago we were like six or something like that. Right. So like, and to have like 2,500 open issues or something like that, and like 300 or 400 PRs as well. Cause like one of the amazing things is that like, and you kind of alluded to this earlier, everyone's building in the space. There's so many different like touch points. LangChain is lucky enough to kind of like be a lot of the glue that connects it. And so we get to work with a lot of awesome companies, but that's also a lot of like work to keep up with as well. And so I don't really have an amazing answer, but I think like the, I think prioritize kind of like new things that, that come out. And then we've gotten creative with some of kind of like the support functions and, and luckily there's, you know, there's a lot of awesome people working on all those support coding, question answering things that we've been able to work with. [00:18:46]Swyx: I think there is your daily rhythm, which I've seen you, you work like a, like a beast man, like mad impressive. And then there's sometimes where you step back and do a little bit of high level, like 50,000 foot stuff. So we mentioned, we mentioned retrieval. You did a refactor in March and there's, there's other abstractions that you've sort of changed your mind on. When do you do that? When do you do like the, the step back from the day to day and go, where are we going and change the direction of the ship? [00:19:11]Harrison: It's a good question so far. It's probably been, you know, we see three or four or five things pop up that are enough to make us think about it. And then kind of like when it reaches that level, you know, we don't have like a monthly meeting where we sit down and do like a monthly plan or something. [00:19:27]Swyx: Maybe we should. I've thought about this. Yeah. I'd love to host that meeting. [00:19:32]Harrison: It's really been a lot of, you know, one of the amazing things is we get to interact with so many different people. So it's been a lot of kind of like just pattern matching on what people are doing and trying to see those patterns before they punch us in the face or something like that. So for retrieval, it was the pattern of seeing like, Hey, yeah, like a lot of people are using vector sort of stuff. But there's also just like other methods and people are offering like hosted solutions and we want our abstractions to work with that as well. So we shouldn't bake in this paradigm of doing like semantic search too heavily, which sounds like basic now, but I think like, you know, to start a lot of it was people needed help doing these things. But then there was like managed things that did them, hybrid retrieval mechanisms, all of that. I think another example of this, I mean, Langsmith, which we can maybe talk about was like very kind of like, I think we worked on that for like three or four months before announcing it kind of like publicly, two months maybe before giving it to kind of like anyone in beta. But this was a lot of debugging these applications as a pain point. We hear that like just understanding what's going on is a pain point. [00:20:27]Alessio: I mean, you two did a webinar on this, which is called Agents vs. Chains. It was fun, baby. [00:20:32]Swyx: Thanks for having me on. [00:20:33]Harrison: No, thanks for coming. [00:20:34]Alessio: That was a good one. And on the website, you list like RAG, which is retrieval of bank debt generation and agents as two of the main goals of LangChain. The difference I think at the Databricks keynote, you said chains are like predetermined steps and agents is models reasoning to figure out what steps to take and what actions to take. How should people think about when to use the two and how do you transition from one to the other with LangChain? Like is it a path that you support or like do people usually re-implement from an agent to a chain or vice versa? [00:21:05]Swyx: Yeah. [00:21:06]Harrison: You know, I know agent is probably an overloaded term at this point, and so there's probably a lot of different definitions out there. But yeah, as you said, kind of like the way that I think about an agent is basically like in a chain, you have a sequence of steps. You do this and then you do this and then you do this and then you do this. And with an agent, there's some aspect of it where the LLM is kind of like deciding what to do and what steps to do in what order. And you know, there's probably some like gray area in the middle, but you know, don't fight me on this. And so if we think about those, like the benefits of the chains are that they're like, you can say do this and you just have like a more rigid kind of like order and the way that things are done. They have more control and they don't go off the rails and basically everything that's bad about agents in terms of being uncontrollable and expensive, you can control more finely. The benefit of agents is that I think they handle like the long tail of things that can happen really well. And so for an example of this, let's maybe think about like interacting with a SQL database. So you can have like a SQL chain and you know, the first kind of like naive approach at a SQL chain would be like, okay, you have the user question. And then you like write the SQL query, you do some rag, you pull in the relevant tables and schemas, you write a SQL query, you execute that against the SQL database. And then you like return that as the answer, or you like summarize that with an LLM and return that to the answer. And that's basically the SQL chain that we have in LangChain. But there's a lot of things that can go wrong in that process. Starting from the beginning, you may like not want to even query the SQL database at all. Maybe they're saying like, hi, or something, or they're misusing the application. Then like what happens if you have some step, like a big part of the application that people with LangChain is like the context aware part. So there's generally some part of bringing in context to the language model. So if you bring in the wrong context to the language model, so it doesn't know which tables to query, what do you do then? If you write a SQL query, it's like syntactically wrong and it can't run. And then if it can run, like what if it returns an unexpected result or something? And so basically what we do with the SQL agent is we give it access to all these different tools. So it has another tool, it can run the SQL query as another, and then it can respond to the user. But then if it kind of like, it can decide which order to do these. And so it gives it flexibility to handle all these edge cases. And there's like, obviously downsides to that as well. And so there's probably like some safeguards you want to put in place around agents in terms of like not letting them run forever, having some observability in there. But I do think there's this benefit of, you know, like, again, to the other part of what LangChain is like the reasoning part, like each of those steps individually involves some aspect of reasoning, for sure. Like you need to reason about what the SQL query is, you need to reason about what to return. But there's then there's also reasoning about the order of operations. And so I think to me, the key is kind of like giving it an appropriate amount to reason about while still keeping it within checks. And so to the point, like, I would probably recommend that most people get started with chains and then when they get to the point where they're hitting these edge cases, then they think about, okay, I'm hitting a bunch of edge cases where the SQL query is just not returning like the relevant things. Maybe I should add in some step there and let it maybe make multiple queries or something like that. Basically, like start with chain, figure out when you're hitting these edge cases, add in the reasoning step to that to handle those edge cases appropriately. That would be kind of like my recommendation, right? [00:24:09]Swyx: If I were to rephrase it, in my words, an agent would be a reasoning node in a chain, right? Like you start with a chain, then you just add a reasoning node, now it's an agent. [00:24:17]Harrison: Yeah, the architecture for your application doesn't have to be just a chain or just an agent. It can be an agent that calls chains, it can be a chain that has an agent in different parts of them. And this is another part as well. Like the chains in LangChain are largely intended as kind of like a way to get started and take you some amount of the way. But for your specific use case, in order to kind of like eke out the most performance, you're probably going to want to do some customization at the very basic level, like probably around the prompt or something like that. And so one of the things that we've focused on recently is like making it easier to customize these bits of existing architectures. But you probably also want to customize your architectures as well. [00:24:52]Swyx: You mentioned a bit of prompt engineering for self-ask and then for this stuff. There's a bunch of, I just talked to a prompt engineering company today, PromptOps or LLMOps. Do you have any advice or thoughts on that field in general? Like are you going to compete with them? Do you have internal tooling that you've built? [00:25:08]Harrison: A lot of what we do is like where we see kind of like a lot of the pain points being like we can talk about LangSmith and that was a big motivation for that. And like, I don't know, would you categorize LangSmith as PromptOps? [00:25:18]Swyx: I don't know. It's whatever you want it to be. Do you want to call it? [00:25:22]Harrison: I don't know either. Like I think like there's... [00:25:24]Swyx: I think about it as like a prompt registry and you store them and you A-B test them and you do that. LangSmith, I feel like doesn't quite go there yet. Yeah. It's obviously the next step. [00:25:34]Harrison: Yeah, we'll probably go. And yeah, we'll do more of that because I think that's definitely part of the application of a chain or agent is you start with a default one, then you improve it over time. And like, I think a lot of the main new thing that we're dealing with here is like language models. And the main new way to control language models is prompts. And so like a lot of the chains and agents are powered by this combination of like prompt language model and then some output parser or something doing something with the output. And so like, yeah, we want to make that core thing as good as possible. And so we'll do stuff all around that for sure. [00:26:05]Swyx: Awesome. We might as well go into LangSmith because we're bringing it up so much. So you announced LangSmith I think last month. What are your visions for it? Is this the future of LangChain and the company? [00:26:16]Harrison: It's definitely part of the future. So LangSmith is basically a control center for kind of like your LLM application. So the main features that it kind of has is like debugging, logging, monitoring, and then like testing and evaluation. And so debugging, logging, monitoring, basically you set three environment variables and it kind of like logs all the runs that are happening in your LangChain chains or agents. And it logs kind of like the inputs and outputs at each step. And so the main use case we see for this is in debugging. And that's probably the main reason that we started down this path of building it is I think like as you have these more complex things, debugging what's actually going on becomes really painful whether you're using LangChain or not. And so like adding this type of observability and debuggability was really important. Yeah. There's a debugging aspect. You can see the inputs, outputs at each step. You can then quickly enter into like a playground experience where you can fiddle around with it. The first version didn't have that playground and then we'd see people copy, go to open AI playground, paste in there. Okay. Well, that's a little annoying. And then there's kind of like the monitoring, logging experience. And we recently added some analytics on like, you know, how many requests are you getting per hour, minute, day? What's the feedback like over time? And then there's like a testing debugging, sorry, testing and evaluation component as well where basically you can create datasets and then test and evaluate these datasets. And I think importantly, all these things are tied to each other and then also into LangChain, the framework. So what I mean by that is like we've tried to make it as easy as possible to go from logs to adding a data point to a dataset. And because we think a really powerful flow is you don't really get started with a dataset. You can accumulate a dataset over time. And so being able to find points that have gotten like a thumbs up or a thumbs down from a user can be really powerful in terms of creating a good dataset. And so that's maybe like a connection between the two. And then the connection in the other way is like all the runs that you have when you test or evaluate something, they're logged in the same way. So you can debug what exactly is going on and you don't just have like a final score. You have like this nice trace and thing where you can jump in. And then we also want to do more things to hook this into a LangChain proper, the framework. So I think like some of like the managing the prompts will tie in here already. Like we talked about example selectors using datasets as a few short examples is a path that we support in a somewhat janky way right now, but we're going to like make better over time. And so there's this connection between everything. Yeah. [00:28:42]Alessio: And you mentioned the dataset in the announcement blog post, you touched on heuristic evaluation versus LLMs evaluating LLMs. I think there's a lot of talk and confusion about this online. How should people prioritize the two, especially when they might start with like not a good set of evals or like any data at all? [00:29:01]Harrison: I think it's really use case specific in the distinction that I draw between heuristic and LLM. LLMs, you're using an LLM to evaluate the output heuristics, you have some common heuristic that you can use. And so some of these can be like really simple. So we were doing some kind of like measuring of an extraction chain where we wanted it to output JSON. Okay. One evaluation can be, can you use JSON.loads to load it? And like, right. And that works perfectly. You don't need an LLM to do that. But then for like a lot of like the question answering, like, is this factually accurate? And you have some ground truth fact that you know it should be answering with. I think, you know, LLMs aren't perfect. And I think there's a lot of discussion around the pitfalls of using LLMs to evaluate themselves. And I'm not saying they're perfect by any means, but I do think they're, we've found them to be kind of like better than blue or any of those metrics. And the way that I also like to use those is also just like guide my eye about where to look. So like, you know, I might not trust the score of like 0.82, like exactly correct, but like I can look to see like which data points are like flagged as passing or failing. And sometimes the evaluators messing up, but it's like good to like, you know, I don't have to look at like a hundred data points. I can focus on like 10 or something like that. [00:30:10]Alessio: And then can you create a heuristic once in Langsmith? Like what's like your connection to that? [00:30:16]Harrison: Yeah. So right now, all the evaluation, we actually do client side. And part of this is basically due to the fact that a lot of the evaluation is really application specific. So we thought about having evaluators, you could just click off and run in a server side or something like that. But we still think it's really early on in evaluation. We still think there's, it's just really application specific. So we prioritized instead, making it easy for people to write custom evaluators and then run them client side and then upload the results so that they can manually inspect them because I think manual inspection is still a pretty big part of evaluation for better or worse. [00:30:50]Swyx: We have this sort of components of observability. We have cost, latency, accuracy, and then planning. Is that listed in there? [00:30:57]Alessio: Well, planning more in the terms of like, if you're an agent, how to pick the right tool and whether or not you are picking the right tool. [00:31:02]Swyx: So when you talk to customers, how would you stack rank those needs? Are they cost sensitive? Are they latency sensitive? I imagine accuracy is pretty high up there. [00:31:13]Harrison: I think accuracy is definitely the top that we're seeing right now. I think a lot of the applications, people are, especially the ones that we're working with, people are still struggling to get them to work at a level where they're reliable [00:31:24]Swyx: enough. [00:31:25]Harrison: So that's definitely the first. Then I think probably cost becomes the next one. I think a few places where we've started to see this be like one of the main things is the AI simulation that came out. [00:31:36]Swyx: Generative agents. Yeah, exactly. [00:31:38]Harrison: Which is really fun to run, but it costs a lot of money. And so one of our team members, Lance, did an awesome job hooking up like a local model to it. You know, it's not as perfect, but I think it helps with that. Another really big place for this, we believe, is in like extraction of structured data from unstructured data. And the reason that I think it's so important there is that usually you do extraction of some type of like pre-processing or indexing process over your documents. I mean, there's a bunch of different use cases, but one use case is for that. And generally that's over a lot of documents. And so that starts to rack up a bill kind of quickly. And I think extraction is also like a simpler task than like reasoning about which tools to call next in an agent. And so I think it's better suited for that. Yeah. [00:32:15]Swyx: On one of the heuristics I wanted to get your thoughts on, hallucination is one of the big problems there. Do you have any recommendations on how people should reduce hallucinations? [00:32:25]Harrison: To reduce hallucinations, we did a webinar on like evaluating RAG this past week. And I think there's this great project called RAGOS that evaluates four different things across two different spectrums. So the two different spectrums are like, is the retrieval part right? Or is the generation, or sorry, like, is it messing up in retrieval or is it messing up in generation? And so I think to fix hallucination, it probably depends on where it's messing up. If it's messing up in generation, then you're getting the right information, but it's still hallucinating. Or you're getting like partially right information and hallucinating some bits, a lot of that's prompt engineering. And so that's what we would recommend kind of like focusing on the prompt engineering part. And then if you're getting it wrong in the, if you're just not retrieving the right stuff, then there's a lot of different things that you can probably do, or you should look at on the retrieval bit. And honestly, that's where it starts to become a bit like application specific as well. Maybe there's some temporal stuff going on. Maybe you're not parsing things correctly. Yeah. [00:33:19]Swyx: Okay. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. [00:33:35]Harrison: Yeah. Yeah. [00:33:37]Swyx: Yeah. [00:33:38]Harrison: Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. [00:33:56]Swyx: Yeah. Yeah. [00:33:58]Harrison: Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. [00:34:04]Swyx: Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. Yeah. [00:34:17]Harrison: Yeah. Yeah. Yeah. Yeah. Yeah. Yeah, I mean, there's probably a larger discussion around that, but openAI definitely had a huge headstart, right? And that's... Clawds not even publicly available yet, I don't think. [00:34:28]Swyx: The API? Yeah. Oh, well, you can just basically ask any of the business reps and they'll give it to you. [00:34:33]Harrison: You can. But it's still a different signup process. I think there's... I'm bullish that other ones will catch up especially like Anthropic and Google. The local ones are really interesting. I think we're seeing a big... [00:34:46]Swyx: Lama Two? Yeah, we're doing the fine-tuning hackathon tomorrow. Thanks for promoting that. [00:34:50]Harrison: No, thanks for it. I'm really excited about that stuff. I mean, that's something that like we've been, you know, because like, as I said, like the only thing we know is that the space is moving so fast and changing so rapidly. And like, local models are, have always been one of those things that people have been bullish on. And it seems like it's getting closer and closer to kind of like being viable. So I'm excited to see what we can do with some fine-tuning. [00:35:10]Swyx: Yeah. I have to confess, I did not know that you cared. It's not like a judgment on Langchain. I was just like, you know, you write an adapter for it and you're done, right? Like how much further does it go for Langchain? In terms of like, for you, it's one of the, you know, the model IO modules and that's it. But like, you seem very personally, very passionate about it, but I don't know what the Langchain specific angle for this is, for fine-tuning local models, basically. Like you're just passionate about local models and privacy and all that, right? And open source. [00:35:41]Harrison: Well, I think there's a few different things. Like one, like, you know, if we think about what it takes to build a really reliable, like context-aware reasoning application, there's probably a bunch of different nodes that are doing a bunch of different things. And I think it is like a really complex system. And so if you're relying on open AI for every part of that, like, I think that starts to get really expensive. Also like, probably just like not good to have that much reliability on any one thing. And so I do think that like, I'm hoping that for like, you know, specific parts at the end, you can like fine-tune a model and kind of have a more specific thing for a specific task. Also, to be clear, like, I think like, I also, at the same time, I think open AI is by far the easiest way to get started. And if I was building anything, I would absolutely start with open AI. So. [00:36:27]Swyx: It's something I think a lot of people are wrestling with. But like, as a person building apps, why take five vendors when I can take one vendor, right? Like, as long as I trust Azure, I'm just entrusting all my data to Azure and that's it. So I'm still trying to figure out the real case for local models in production. And I don't know, but fine-tuning, I think, is a good one. That's why I guess open AI worked on fine-tuning. [00:36:49]Harrison: I think there's also like, you know, like if there is, if there's just more options available, like prices are going to go down. So I'm happy about that. So like very selfishly, there's that aspect as well. [00:37:01]Alessio: And in the Lancsmith announcement, I saw in the product screenshot, you have like chain, tool and LLM as like the three core atoms. Is that how people should think about observability in this space? Like first you go through the chain and then you start dig down between like the model itself and like the tool it's using? [00:37:19]Harrison: We've added more. We've added like a retriever logging so that you can see like what query is going in and what are the documents you're getting out. Those are like the three that we started with. I definitely think probably the main ones, like basically the LLM. So the reason I think the debugging in Lancsmith and debugging in general is so needed for these LLM apps is that if you're building, like, again, let's think about like what we want people to build in with LangChain. These like context aware reasoning applications. Context aware. There's a lot of stuff in the prompt. There's like the instructions. There's any previous messages. There's any input this time. There's any documents you retrieve. And so there's a lot of like data engineering that goes into like putting it into that prompt. This sounds silly, but just like making sure the data shows up in the right format is like really important. And then for the reasoning part of it, like that's obviously also all in the prompt. And so being able to like, and there's like, you know, the state of the world right now, like if you have the instructions at the beginning or at the end can actually make like a big difference in terms of whether it forgets it or not. And so being able to kind of like. [00:38:17]Swyx: Yeah. And it takes on that one, by the way, this is the U curve in context, right? Yeah. [00:38:21]Harrison: I think it's real. Basically I've found long context windows really good for when I want to extract like a single piece of information about something basically. But if I want to do reasoning over perhaps multiple pieces of information that are somewhere in like the retrieved documents, I found it not to be that great. [00:38:36]Swyx: Yeah. I have said that that piece of research is the best bull case for Lang chain and all the vector companies, because it means you should do chains. It means you should do retrieval instead of long context, right? People are trying to extend long context to like 100K, 1 million tokens, 5 million tokens. It doesn't matter. You're going to forget. You can't trust it. [00:38:54]Harrison: I expect that it will probably get better over time as everything in this field. But I do also think there'll always be a need for kind of like vector stores and retrieval in some fashions. [00:39:03]Alessio: How should people get started with Langsmith Cookbooks? Wanna talk maybe a bit about that? [00:39:08]Swyx: Yeah. [00:39:08]Harrison: Again, like I think the main thing that even I find valuable about Langsmith is just like the debugging aspect of it. And so for that, it's very simple. You can kind of like turn on three environment variables and it just logs everything. And you don't look at it 95% of the time, but that 5% you do when something goes wrong, it's quite handy to have there. And so that's probably the easiest way to get started. And we're still in a closed beta, but we're letting people off the wait list every day. And if you really need access, just DM me and we're happy to give you access there. And then yeah, there's a lot that you can do with Langsmith that we've been talking about. And so Will on our team has been leading the charge on a really great like Langsmith Cookbooks repo that covers everything from collecting feedback, whether it's thumbs up, thumbs down, or like multi-scale or comments as well, to doing evaluation, doing testing. You can also use Langsmith without Langchain. And so we've got some notebooks on that in there. But we have Python and JavaScript SDKs that aren't dependent on Langchain in any way. [00:40:01]Swyx: And so you can use those. [00:40:01]Harrison: And then we'll also be publishing a notebook on how to do that just with the REST APIs themselves. So yeah, definitely check out that repo. That's a great resource that Will's put together. [00:40:10]Swyx: Yeah, awesome. So we'll zoom out a little bit from Langsmith and talk about Langchain, the company. You're also a first-time founder. Yes. And you've just hired your 10th employee, Julia, who I know from my data engineering days. You mentioned Will Nuno, I think, who maintains Langchain.js. I'm very interested in like your multi-language strategy, by the way. Ankush, your co-founder, Lance, who did AutoEval. What are you staffing up for? And maybe who are you hiring? [00:40:34]Harrison: Yeah, so 10 employees, 12 total. We've got three more joining over the next three weeks. We've got Julia, who's awesome leading a lot of the product, go-to-market, customer success stuff. And then we've got Bri, who's also awesome leading a lot of the marketing and ops aspects. And then other than that, all engineers. We've staffed up a lot on kind of like full stack infra DevOps, kind of like as we've started going into the hosted platform. So internally, we're split about 50-50 between the open source and then the platform stuff. And yeah, we're looking to hire particularly on kind of like the things, we're actually looking to hire across most fronts, to be honest. But in particular, we probably need one or two more people on like open source, both Python and JavaScript and happy to dive into the multi-language kind of like strategy there. But again, like strong focus there on engineering, actually, as opposed to maybe like, we're not a research lab, we're not a research shop. [00:41:48]Swyx: And then on the platform side, [00:41:49]Harrison: like we definitely need some more people on the infra and DevOps side. So I'm using this as an opportunity to tell people that we're hiring and that you should reach out if that sounds like you. [00:41:58]Swyx: Something like that, jobs, whatever. I don't actually know if we have an official job. [00:42:02]Harrison: RIP, what happened to your landing page? [00:42:04]Swyx: It used to be so based. The Berkshire Hathaway one? Yeah, so what was the story, the quick story behind that? Yeah, the quick story behind that is we needed a website [00:42:12]Harrison: and I'm terrible at design. [00:42:14]Swyx: And I knew that we couldn't do a good job. [00:42:15]Harrison: So if you can't do a good job, might as well do the worst job possible. Yeah, and like lean into it. And have some fun with it, yeah. [00:42:21]Swyx: Do you admire Warren Buffett? Yeah, I admire Warren Buffett and admire his website. And actually you can still find a link to it [00:42:26]Harrison: from our current website if you look hard enough. So there's a little Easter egg. Before we dive into more of the open source community things, [00:42:33]Alessio: let's dive into the language thing. How do you think about parity between the Python and JavaScript? Obviously, they're very different ecosystems. So when you're working on a LangChain, is it we need to have the same abstraction in both language or are you to the needs? The core stuff, we want to have the same abstractions [00:42:50]Harrison: because we basically want to be able to do serialize prompts, chains, agents, all the core stuff as tightly as possible and then use that between languages. Like even, yeah, like even right now when we log things to LangChain, we have a playground experience where you can run things that runs in JavaScript because it's kind of like in the browser. But a lot of what's logged is like Python. And so we need that core equivalence for a lot of the core things. Then there's like the incredibly long tail of like integrations, more researchy things. So we want to be able to do that. Python's probably ahead on a lot of like the integrations front. There's more researchy things that we're able to include quickly because a lot of people release some of their code in Python and stuff like that. And so we can use that. And there's just more of an ecosystem around the Python project. But the core stuff will have kind of like the same abstractions and be translatable. That didn't go exactly where I was thinking. So like the LangChain of Ruby, the LangChain of C-sharp, [00:43:44]Swyx: you know, there's demand for that. I mean, I think that's a big part of it. But you are giving up some real estate by not doing it. Yeah, it comes down to kind of like, you know, ROI and focus. And I think like we do think [00:43:58]Harrison: there's a strong JavaScript community and we wanted to lean into that. And I think a lot of the people that we brought on early, like Nuno and Jacob have a lot of experience building JavaScript tooling in that community. And so I think that's a big part of it. And then there's also like, you know, building JavaScript tooling in that community. Will we do another language? Never say never, but like... [00:44:21]Swyx: Python JS for now. Yeah. Awesome. [00:44:23]Alessio: You got 83 articles, which I think might be a record for such a young company. What are like the hottest hits, the most popular ones? [00:44:32]Harrison: I think the most popular ones are generally the ones where we do a deep dive on something. So we did something a few weeks ago around evaluating CSV q

Lead Sell Grow - The Human Experience
Secrets Of A Top Coach With Ankush Jain

Lead Sell Grow - The Human Experience

Play Episode Listen Later Aug 22, 2023 66:16


In this episode of, we delve into the profound concept of adaptive coaching and explore the idea that being a coach means being who your clients need you to be. Our guest, Ankush Jain, founder of AJC Coaching School and Powerful Men's Immersion, is one of the world's most renowned coaches who has also been called the modern Gandhi.Join us as we navigate the dynamic landscape of coaching and discover how the power of adaptability can truly make a difference in the lives of both coaches and their clients. The episode begins with Ankush talking about his journey before he became a coach, he talks about having a corporate job and being the representative of a company to connect with other people and make deals. He talks about what coaching means to him, how coaching means helping someone have a different future than the default path you're on. He speaks about ending up with a better outcome than you would've gotten had you not hired a coach. Ankush discusses the difference between a coach and a mentor, about how a mentor guides you and suggests things that you can do. He talks about how he finds that some of the best coaches don't do pure coaching, it's about being whatever the client needs you to be at the moment. He shares how helping clients to him is more important than doing things the right way He speaks about how he became a coach who has people waiting for him all around the world, and how he took what Steve Hardison said to not look for high-value clients but instead be a high-value coach. If you want to hear more about what it means to be an adaptive coach, tune in for this episode. Connect with Ankush:https://www.ankushjain.co.uk/ Achieve your next level with Relentless Goal Achievers: https://relentlessgoalachievers.com/opt-inConnect with Eric: Be sure to connect with me in the Lead Sell Grow - The Human Experience Mastermind Facebook Group: https://www.facebook.com/groups/leadsellgrow/Learn more about our services: www.TheGoalGuide.comImprove your sales and stay connected – Free Gifts Here https://shor.by/TheGoalGuideCheck out cool swag and shirts here: Shopthegoalguide.com  Timestamps:0:00 - Intro1:40 - Before coaching2:40 - What does coaching mean?4:03 - Coaching vs Mentoring7:00 - Being a successful coach12:35 - How did you get full?15:00 - What can you do today?22:15 - The modern Gandhi30:00 - Acknowledgment of yourself37:15 - Loving yourself45:05 - Creating new evidence51:50 - The document54:40 - What's the work?59:40 - What are you working on now?1:05:30 - Conclusion 

The Dan Abrams Podcast
The Dan Abrams Podcast with Ankush Khardori

The Dan Abrams Podcast

Play Episode Listen Later Jul 28, 2023 47:12


In today's episode, Dan is joined by former federal prosecutor Ankush Khardori to discuss Judge Maryellen Noreika's decision to delay Hunter Biden's plea deal.

Maharani Talks
E53: Ankush Sabharwal - Are we ready for AI?

Maharani Talks

Play Episode Listen Later Jul 26, 2023 34:37


Artificial intelligence or AI is quite the buzzword these days. Many of us would not have missed the news pouring in about AI - sometimes it is promising and at times, it isn't reassuring. But Ankush Sabharwal, founder and CEO of CoRover, believes AI is more than a buzzword. It is here to stay - simply because an average human is already relying on AI in ways that they don't realise. CoRover is a platform for conversational AI. The kind of AI Chatbot-as-a-service (CaaS) that we encounter through customer support with organisations. The company is also the brainchild behind AskSarkar, an app that helps citizens better access and resolve issues about government services; behind Indian Railways' virtual assistant DISHA and also BharatGPT, our own version of ChatGPT that supports 12 Indian languages and over 120 foreign languages. A graduate of BITS Pilani and IIM Calcutta, Sabharwal has over 15+ years experience in the SaaS space and is a member of the invite-only Forbes Technology Council. He has appeared on many media outlets offering his opinion on the fast paced growth of AI. To learn more about CoRover, please visit: https://corover.ai/ You can reach me at maharanitalks@gmail.com or on Instagram https://www.instagram.com/maharanitalks/ MUSIC: Lights by Sappheiros https://soundcloud.com/sappheirosmusic If you enjoy this podcast, please consider rating the show. 

The Ultimate Coach Podcast
Being a Master of Acknowledgements - Ankush Jain

The Ultimate Coach Podcast

Play Episode Listen Later May 25, 2023 44:43 Transcription Available


How do you respond when someone acknowledges you for something you've done or said? And do you tell others about their positive qualities or actions? Our guest Ankush Jain shares with host Meredith Bell the powerful lessons he learned from his coach Steve Hardison. There are so many layers to the simple gestures of expressing and receiving acknowledgements. You're sure to discover new ways that you can strengthen this valuable life skill.Ankush describes the process he followed in creating his Document and all the ways he's brought it to life so it's truly his way of Being in the world. He's also learned the power of language to create the people in his world…and the positive impact on his relationship with his wife and coaching clients.About the Guest: Ankush Jain is a Transformative coach, business consultant, author, podcast host and public speaker based in the UK. He is the founder of The Powerful Men's Immersions, which is the best personal development program for men in the world. Clients fly from around the globe to work with him, and he is among the most successful coaches in Europe. He has a waiting list of people wanting to work with him.Ankush also coaches other coaches to grow impactful, ethical and sustainable practices. He founded the hugely successful AJC Coaching Career School, which quickly sold out after it launched. He is the author of the book: Sweet Sharing: Rediscovering The Real You and is currently penning his second book about his journey to becoming the coach he is today.Website: www.ankushjain.co.uk Facebook: https://www.facebook.com/ankushkjain IG: https://www.instagram.com/ankush_jain_coach/About the Host: Meredith Bell is the Co-founder and President of Grow Strong Leaders. Her company publishes software tools and books that help people build strong relationships at work and at home.Meredith is an expert in leader and team communications, the author of three books, and the host of the Grow Strong Leaders Podcast. She co-authored her latest books, Connect with Your Team: Mastering the Top 10 Communication Skills, and Peer Coaching Made Simple, with her business partner, Dr. Dennis Coates. In them, Meredith and Denny provide how-to guides for improving communication skills and serving as a peer coach to someone else. Meredith is also The Heart-centered Connector. One of her favorite ways of BEING in the world is to introduce people who can benefit from knowing each other. https://growstrongleaders.com/https://www.linkedin.com/in/meredithmbellThe Ultimate Coach Resourceshttps://theultimatecoachbook.comFacebook: https://www.facebook.com/groups/theultimatecoachInstagram: https://www.instagram.com/theultimatecoachbookLinkedIn: https://www.linkedin.com/groups/14048056YouTube:

Sandeep Maheshwari Complete
Meet Ankush Sachdeva ShareChat Founder | Episode 74

Sandeep Maheshwari Complete

Play Episode Listen Later May 15, 2023 19:34


To be a guest in the Sandeep Maheshwari Show, kindly email us at meet@sandeepmaheshwari.com and if you would like to attend the LIVE session, simply register yourself for free at www.sandeepmaheshwari.com Sandeep Maheshwari is a name among millions who struggled, failed and surged ahead in search of success, happiness and contentment. Just like any middle class guy, he too had a bunch of unclear dreams and a blurred vision of his goals in life. All he had was an undying learning attitude to hold on to. Rowing through ups and downs, it was time that taught him the true meaning of his life. To know more, log on to www.sandeepmaheshwari.com

Trumpcast
Hear Me Out: Don't Celebrate the Trump Indictment

Trumpcast

Play Episode Listen Later Apr 11, 2023 37:50


On today's episode of Hear Me Out… a former president got indicted, and all we got was this stupid t-shirt. Writer and former federal prosecutor Ankush Khardori joins Celeste to make the case that, while historic, this indictment is not a victory for anyone; it's far from a legal slam dunk, it's a symptom of a sluggish Justice Department, and it might actually worsen this nation's political divide (which, in case you haven't noticed, is already pretty bad).  Read the pieces Ankush mentions here and here.   Podcast production by Maura Currie You can skip all the ads in Hear Me Out by joining Slate Plus. Sign up now at slate.com/hearmeoutplus for just $15 a month for your first three months. Learn more about your ad choices. Visit megaphone.fm/adchoices

Slate Debates
Hear Me Out: Don't Celebrate the Trump Indictment

Slate Debates

Play Episode Listen Later Apr 11, 2023 37:50


On today's episode of Hear Me Out… a former president got indicted, and all we got was this stupid t-shirt. Writer and former federal prosecutor Ankush Khardori joins Celeste to make the case that, while historic, this indictment is not a victory for anyone; it's far from a legal slam dunk, it's a symptom of a sluggish Justice Department, and it might actually worsen this nation's political divide (which, in case you haven't noticed, is already pretty bad).  Read the pieces Ankush mentions here and here.   Podcast production by Maura Currie You can skip all the ads in Hear Me Out by joining Slate Plus. Sign up now at slate.com/hearmeoutplus for just $15 a month for your first three months. Learn more about your ad choices. Visit megaphone.fm/adchoices

Slate Daily Feed
Hear Me Out: Don't Celebrate the Trump Indictment

Slate Daily Feed

Play Episode Listen Later Apr 11, 2023 37:50


On today's episode of Hear Me Out… a former president got indicted, and all we got was this stupid t-shirt. Writer and former federal prosecutor Ankush Khardori joins Celeste to make the case that, while historic, this indictment is not a victory for anyone; it's far from a legal slam dunk, it's a symptom of a sluggish Justice Department, and it might actually worsen this nation's political divide (which, in case you haven't noticed, is already pretty bad).  Read the pieces Ankush mentions here and here.   Podcast production by Maura Currie You can skip all the ads in Hear Me Out by joining Slate Plus. Sign up now at slate.com/hearmeoutplus for just $15 a month for your first three months. Learn more about your ad choices. Visit megaphone.fm/adchoices

I Have to Ask
Hear Me Out: Don't Celebrate the Trump Indictment

I Have to Ask

Play Episode Listen Later Apr 11, 2023 37:50


On today's episode of Hear Me Out… a former president got indicted, and all we got was this stupid t-shirt. Writer and former federal prosecutor Ankush Khardori joins Celeste to make the case that, while historic, this indictment is not a victory for anyone; it's far from a legal slam dunk, it's a symptom of a sluggish Justice Department, and it might actually worsen this nation's political divide (which, in case you haven't noticed, is already pretty bad).  Read the pieces Ankush mentions here and here.   Podcast production by Maura Currie You can skip all the ads in Hear Me Out by joining Slate Plus. Sign up now at slate.com/hearmeoutplus for just $15 a month for your first three months. Learn more about your ad choices. Visit megaphone.fm/adchoices

Hear Me Out
Don't Celebrate the Trump Indictment

Hear Me Out

Play Episode Listen Later Apr 11, 2023 37:50


On today's episode of Hear Me Out… a former president got indicted, and all we got was this stupid t-shirt. Writer and former federal prosecutor Ankush Khardori joins Celeste to make the case that, while historic, this indictment is not a victory for anyone; it's far from a legal slam dunk, it's a symptom of a sluggish Justice Department, and it might actually worsen this nation's political divide (which, in case you haven't noticed, is already pretty bad).  Read the pieces Ankush mentions here and here.   Podcast production by Maura Currie You can skip all the ads in Hear Me Out by joining Slate Plus. Sign up now at slate.com/hearmeoutplus for just $15 a month for your first three months. Learn more about your ad choices. Visit megaphone.fm/adchoices

CEO Blindspots
DataToBiz (Top 1000), CEO Ankush Sharma: Use HireLake AI! (15 min)

CEO Blindspots

Play Episode Listen Later Mar 31, 2023 14:45


Discover how Ankush Sharma (CEO of DataToBiz) used HireLake AI to effectively recruit and hire the team who helped his company become a "Top 1000" fastest growing firm, what his approach is towards team members who make mistakes, and when he seeks feedback from his co-founder (15 minute podcast). CEO BLINDSPOTS® PODCAST GUEST: Ankush Sharma. He is the CEO and Co-Founder of DataToBiz, an AI and Big Data Analytics firm, which helps organizations in managing their data assets, and finding the best ways to surface insights from the data to enable them with data centric decisions. DataToBiz has been recognized as a "Top 1000" fastest growing firm, a "Top AI Company" company, a "Top BI and Big Data Company", and a "Top Cognitive Computing Company". In addition, DataToBiz has been seen on USA Today, Fox, Digital Journal, Bezinga, and Market Watch. Clients include McDonald's, AWS International, and NielsenIQ. For more information about Ankush Sharma and DataToBiz: https://www.datatobiz.com/ CEO Blindspots® podcast host: Birgit Kamps. Birgit was speaking five languages by the age of 10, and lived in five countries with her Dutch parents prior to becoming an American citizen. Birgit's professional experience includes starting and selling an “Inc. 500 Fastest Growing Private Company” and a “Best Company to Work for in Texas”, and serving as a Board Member with various companies. In addition, Birgit is the President of Hire Universe LLC, and the host of the CEO Blindspots® Podcast which was recognized by Spotify for having the “biggest listener growth” in the USA by 733%; https://www.ceoblindspots.com/ To ask questions about this or one of the 190+ other CEO Blindspots® Podcast episodes, send an email to⁠ birgit@ceoblindspots.com⁠

The Industrial Talk Podcast with Scott MacKenzie
Jason Waxman and Ankush Malhotra with Fluke

The Industrial Talk Podcast with Scott MacKenzie

Play Episode Listen Later Mar 24, 2023 18:41 Transcription Available


On this week's Industrial Talk we're onsite at Xcelerate 23 in Orlando, FL and talking to Jason Waxman, President, Fluke Corporation and Ankush Malhotra, President, Fluke Reliability about "The State of Reliability and Strategic Vision of Fluke Reliability". Get the answers to your "Reliability" questions along with Jason and Ankush's unique insight on the “How” on this Industrial Talk interview! Finally, get your exclusive free access to the Industrial Academy and a series on “Why You Need To Podcast” for Greater Success in 2023. All links designed for keeping you current in this rapidly changing Industrial Market. Learn! Grow! Enjoy! JASON WAXMAN'S CONTACT INFORMATION: Personal LinkedIn: https://www.linkedin.com/in/jpwaxman/ Company LinkedIn: https://www.linkedin.com/company/fluke-corporation/ Company Website: https://www.fluke.com/ ANKUSH MALHOTRA'S CONTACT INFORMATION: Personal LinkedIn: https://www.linkedin.com/in/malhotraankush/ Company LinkedIn: https://www.linkedin.com/company/fluke-reliability/ Company Website: https://www.accelix.com/ PODCAST VIDEO: https://youtu.be/EuDtPI6VmV4 THE STRATEGIC REASON "WHY YOU NEED TO PODCAST": OTHER GREAT INDUSTRIAL RESOURCES: NEOM: https://www.neom.com/en-us Hitachi Vantara: https://www.hitachivantara.com/en-us/home.html Industrial Marketing Solutions:  https://industrialtalk.com/industrial-marketing/ Industrial Academy: https://industrialtalk.com/industrial-academy/ Industrial Dojo: https://industrialtalk.com/industrial_dojo/ We the 15: https://www.wethe15.org/ YOUR INDUSTRIAL DIGITAL TOOLBOX: LifterLMS: Get One Month Free for $1 – https://lifterlms.com/ Active Campaign: Active Campaign Link Social Jukebox: https://www.socialjukebox.com/ Industrial Academy (One Month Free Access And One Free License For Future Industrial Leader):

Riverside Chats
138. The Magic of Live Music with the Omaha Symphony's Maestro Ankush Kumar Bahl and VP of Artistic Administration Dani Meier

Riverside Chats

Play Episode Listen Later Mar 3, 2023 53:53


Music is everywhere. It's hard to imagine that there was a point where you couldn't constantly listen to music, a time before recordings of music even existed. But there's something in our brains that can't resist rhythm and harmony and the way music makes us feel. Today director of the Omaha Symphony Maestro Ankush Kumar Bahl and VP of Artistic Administration Dani Meier are in conversation with Tom Knoblauch about the power of music and what you can expect this year at the Omaha Symphony, including a world premiere from Grammy nominated composer Andy Akiho on March 17 and 18th honoring Omaha's own world-renowned visual artist Jun Kaneko. Tickets are available here. --- Support this podcast: https://podcasters.spotify.com/pod/show/riversidechats/support

Gurmat Jeevan Jaach
6g.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into

Gurmat Jeevan Jaach

Play Episode Listen Later Feb 19, 2023 2:04


6g.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into Gurnoor Singh.

Gurmat Jeevan Jaach
6f.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into

Gurmat Jeevan Jaach

Play Episode Listen Later Feb 18, 2023 15:48


6f.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into Gurnoor Singh.

Gurmat Jeevan Jaach
6e.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into

Gurmat Jeevan Jaach

Play Episode Listen Later Feb 17, 2023 81:54


6e.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into Gurnoor Singh.

Gurmat Jeevan Jaach
6d.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into

Gurmat Jeevan Jaach

Play Episode Listen Later Feb 16, 2023 21:26


6d.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into Gurnoor Singh.

Gurmat Jeevan Jaach
6c.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into

Gurmat Jeevan Jaach

Play Episode Listen Later Feb 15, 2023 36:02


6c.ਕਿਵੇਂ ਅੰਕੁਸ਼ ਸ਼ਰਮਾ ਤੋਂ ਗੁਰਨੂਰ ਸਿੰਘ ਬਣਿਆ ਇਕ ਹਿੰਦੂ ਵੀਰ|How Ankush Sharma (Hindu Pandit) turned into Gurnoor Singh.

Golden Classics Great OTR Shows
Whitehall 1212 52-07-13 (33) The Case of the Mahout's Ankush

Golden Classics Great OTR Shows

Play Episode Listen Later Jan 22, 2023 29:47


Whitehall 1212, named after the then famous telephone number of Scotland Yard—the headquarters of the London Metropolitan Police Force—was written and directed by Wyllis Cooper and broadcast by NBC. It was hosted by Chief Superintendent John Davidson, curator of the Black Museum and it used many of the same picked cases by contemporary radio show The Black Museum, and nearly mirrored its broadcast run. The two shows were different in the respect that while Whitehall 1212 told the story of a case entirely from the point of view of the police starting from the crime scene, The Black Museum was more heavily dramatized and played out scenes of the actual murders and included scenes from the criminal's point of view. Listen to our radio station Old Time Radio https://link.radioking.com/otradio Listen to other Shows at My Classic Radio https://www.myclassicradio.net/ Remember that times have changed, and some shows might not reflect the standards of today's politically correct society. The shows do not necessarily reflect the views, standards, or beliefs of Entertainment Radio

Whitehall 1212
Whitehall 1212 52-07-13 (33) The Case of the Mahout's Ankush

Whitehall 1212

Play Episode Listen Later Jan 22, 2023 29:47


Whitehall 1212, named after the then famous telephone number of Scotland Yard—the headquarters of the London Metropolitan Police Force—was written and directed by Wyllis Cooper and broadcast by NBC. It was hosted by Chief Superintendent John Davidson, curator of the Black Museum and it used many of the same picked cases by contemporary radio show The Black Museum, and nearly mirrored its broadcast run. The two shows were different in the respect that while Whitehall 1212 told the story of a case entirely from the point of view of the police starting from the crime scene, The Black Museum was more heavily dramatized and played out scenes of the actual murders and included scenes from the criminal's point of view.Listen to our radio station Old Time Radio https://link.radioking.com/otradioListen to other Shows at My Classic Radio https://www.myclassicradio.net/Remember that times have changed, and some shows might not reflect the standards of today's politically correct society. The shows do not necessarily reflect the views, standards, or beliefs of Entertainment Radio

UpBeat from Everything Conducting
S4E9: Detroit Symphony CEO Erik Rönmark. Plus Ankush Bahl on the Perfect Conducting Video

UpBeat from Everything Conducting

Play Episode Listen Later Jan 16, 2023 76:22


Hosts John Devlin and Enrico Lopez-Yañez are joined by Ankush Bahl in the 4/4 to discuss crafting the perfect audition video. Then, UpBeat welcomes Erik Rönmark, President and CEO of the Detroit Symphony. The discussion centers around community-focused programming, how to stand out as a young conductor, and a discussion of the search process for the DSO's new Music Director, Jader Bignamini. 

Indian Silicon Valley with Jivraj Singh Sachar
2022 - Year Recap, Best Episodes & Gratitude

Indian Silicon Valley with Jivraj Singh Sachar

Play Episode Listen Later Dec 25, 2022 5:13


In this Episode, we take a look back at 2022, revisiting the year that it has been and some of the best episodes on the show. Wishing everyone listening, Merry Christmas and a great close to the year, 2022. It's been another year since the podcast has been running and I could not be more thankful to all of you for listening and supporting this journey. As we conclude the year, I figured it would be interesting to try a different format and summarise the year, instead of a new Episode! And so through the episode, I go ahead and share a brief recap of the year that it has been for the Podcast, along with some very interesting best episodes + learnings through the year. We published 51 Episodes through the year before this one, which included 3 masterclasses and 48 episodes as a part of the general series without missing a single week of publishing through the year. From covering Gaming to Logistics to FinTech to Real Estate, this year had some of the most mature conversations on the podcast! Looking back, I have so many favorites - highlighting some is very difficult, but let me try. We had some great Venture Episodes through the year, including the one with Vikram of Matrix, Hemant of General Catalyst, Deven of Insight, Mridul of Elevation, Vaibhav of Better. The common learnings through these episodes around business cycles, sustainably winning, building culture at VC Funds and pattern recognition are a gold mine of insights. If you're looking to understand the Venture World better, this is a great place to dive deeper. I hosted some of the best Founders in the ecosystem through the year. Some unforgettable episodes include the ones with Vasanth of smallcase, Rohit of Darwinbox, Sai of MPL, Ankush of ShareChat, Ankit of CureFoods, Shashank of The Whole Truth, Gaurav of Yubi, Awais of Pixxel, Pratham of Masters' Union and Ruchi of Oxyzo. All of these episodes and the others, highlight distinct founder traits and learnings from journeys' which exhibit great perseverance, grit and passion for building. I am so grateful to have started the podcast and I continue to cherish each & every new conversation on the show. I would like to thank you all for supporting us through another very interesting year for the Startup Ecosystem and hope I can add value to your lives via the podcast, with each new Episode. Thank you, Stay Tuned & Keep Building. Wishing you all a great close to 2022! --- Special thanks to our sponsor for these episodes, Stride Ventures. Here is a quick note on them: Stride Ventures, which is one of India's leading Venture Debt Funds, becoming synonymous with innovative startup financing in India. Stride provides comprehensive solutions, going beyond venture debt, to cater to distinctive challenges faced by high-growth and inherently strong businesses, backed by leading institutions. The fund has a portfolio of over 60+ diversified companies, having deployed more than Rupees 1500 Crore to date. In just over two years, Stride Ventures has emerged as the preferred venture debt lender in the Indian Ecosystem. To know more about this phenomenal fund, visit - https://strideventures.in/

One Word with Thomas Leamy
#22 PROSPERITY with Ankush Jain

One Word with Thomas Leamy

Play Episode Listen Later Jun 26, 2022 29:07


A conversation on prosperity with Ankush Jain and Thomas Leamy. Guest Bio: Anjush Jain is a published author and has been a Coach and Trainer for 10 years now. He runs sold-out mens immersion groups in the UK and works with clients from all over the world - helping them rediscover their true selves and create the future they desire. In recent years, his mission has included helping fellow coaches build impactful and sustainable coaching practices - and to that end – his online course with Dr. Mark Howard is a significant framework. Steve Chandler, known as the Godfather of Coaching, once said of Ankush: “Very few coaches can effectively teach the systems and secrets that lead to prosperity in this profession as well as Ankush Jain.” In September 2022, The Ankush Jain Coaching Career School will open its doors for the first time and will be supported by an influential faculty that includes Steve Chandler, Dr. Keith Blevans, and Cathy Casey. Connect with Ankush: www.AnkushJain.co.uk. Host Bio: Thomas Leamy is a global citizen – having traveled to more than 50 countries. His experience connecting with diverse groups of people helped him realize how similar we all are – regardless of nationality, race, culture, or wealth. Thomas spent 10+ years working with high-level executives and government officials in the nation branding industry. During this time, his passion for understanding the psychology of high-performing leaders emerged. After several coaching and training certifications, Thomas now helps individuals, teams, and SMEs understand how they too can perform at their best and reduce the burden of stress. He is originally from Ireland and currently lives in Portugal with his wife. Connect with Thomas: www.hpse.eu/stress https://www.facebook.com/groups/onewordpodcast/ Podcast original score by the talented Michael Imas. --- Send in a voice message: https://anchor.fm/thomas-leamy/message

Indian Silicon Valley with Jivraj Singh Sachar
E105 - Building India's Largest Consumer Social Company w/Sharechat's Ankush Sachdeva

Indian Silicon Valley with Jivraj Singh Sachar

Play Episode Listen Later Jun 26, 2022 61:56


In this Episode, I speak with Ankush Sachdeva, Co-Founder & CEO of Sharechat. Sharechat is India's leading social media platform, building for the next billion Internet users of India. Started in 2015 by a group of IIT Kanpur graduates, Sharechat is dominating the consumer social landscape of India, having a total of 300 Million Monthly Active Users across both Sharechat and Moj, their short form entertainment application. Valued at $5 Billion Dollars as of its last round, Sharechat is building a truly long term organization and is one of the first companies from India to recruit global talent. I sat with Ankush, its Co-Founder & CEO to decode how they have gotten here. Through our conversation we discuss the nuances of building a company at scale, the traits of rapid iteration, the culture at Sharechat and decode the future of content & content creators. (Time Stamps Coming Soon) About our sponsor: Stride Ventures, which is one of India's leading Venture Debt Funds, becoming synonymous with innovative startup financing in India. Stride provides comprehensive solutions, going beyond venture debt, to cater to distinctive challenges faced by high-growth and inherently strong businesses, backed by leading institutions. The fund has a portfolio of over 60+ diversified companies, having deployed more than Rupees 1500 Crore to date. In just over two years, Stride Ventures has emerged as the preferred venture debt lender in the Indian Ecosystem. To know more about this phenomenal fund, visit - https://strideventures.in/ Hope you liked the 105th Episode on the Indian Silicon Valley Podcast - Building India's Largest Consumer Social Company! That was it from this Episode, thanks again for tuning in! :) If you liked the episode, do share with your friends or drop us a quick review! Also, do follow us on social media to stay updated with all new episodes: Twitter: https://twitter.com/isv_podcast LinkedIn: https://www.linkedin.com/company/indian-silicon-valley-podcast/ Instagram: https://www.instagram.com/indiansiliconvalleypodcast/ Gallery of all Episodes: https://airtable.com/shrTOFf1z5UT0q9p8 You can also subscribe to the YouTube Channel of the Podcast : https://www.youtube.com/c/IndianSiliconValley/ "If you never try, you never know" Stay Tuned, Keep Building.

Human Change med Daniel Magnusson
85: Lose your excuse to procrastinate! with Ankush Jain

Human Change med Daniel Magnusson

Play Episode Listen Later Jun 24, 2022 46:17


In this episode, my guest is Ankush Jain, Author, Coach, and Mentor. Ankush talks about sales, relationships, and how understanding the 3 Principles make you lose the excuse to procrastinate. If you want to come in contact with Ankush you do it best via the website: https://www.ankushjain.co.uk/ and you can find his “Ankush Jain Coaching Career School” at the following link: https://www.ankushjain.co.uk/my-services/ajc-coaching-career-school/ The book “Sweet Sharing; Rediscovering the Real you” you can find on Amazon and other websites. Links Interested in coaching with me, Daniel Magnusson? Book a first exploratory coaching session for free on the link below: https://calendly.com/coachmagnusson/game-changer-session-pro-bono-75 Swedish: Kursen Nyckeln till Stressfrihet: https://stressfrihet.thinkific.com/courses/Nyckeln-till-Stressfrihet Record a voice message to me: https://anchor.fm/humanchange Webpage: https://www.humanchange.se Instagram: https://www.instagram.com/coachmagnusson/ LinkedIn: https://www.linkedin.com/in/coachmagnusson/ Music: https://www.purple-planet.com Intro: Joakim Rasmussen --- Send in a voice message: https://anchor.fm/humanchange/message

3Degrees Discussions
3Degrees Discussions #89 - Ankush Venkatesh - Glidewell Dental Labs

3Degrees Discussions

Play Episode Listen Later May 26, 2022 39:27


Ankush Venkatesh is the Intrapreneur for Additive Manufacturing at Glidewell Dental Laboratories. In addition to writing for Harvard Business Review and Forbes, Ankush has also been speaker at 3D printing events like Formnext and AM Strategies. Prior to his role at Glidewell, he was a Strategy Fellow at the Tuck School of Business at Dartmouth College. In that time, he specialized in digital strategy and Industry 4.0 technologies like additive manufacturing (3D printing), IIoT (Industrial Internet of Things), artificial intelligence/machine learning and digital twins. He has a Bachelor's Degree in Mechanical Engineering, and a Master's Degree in Engineering Management with a focus on product development and 3D printing. He is a former technology consultant, having spent two years with Capgemini Consulting serving billion-dollar clients in the FMCG (fast moving consumer goods) industry in the functions of data analytics, dynamic dashboards and SAP data migration. Before we get started head over to www.3degreescompany.com and subscribe to the podcast. Remember you can listen to the show anywhere you download your podcasts including Spotify, Apple, Amazon, or Stitcher

Your daily news from 3DPrint.com
3DPOD Episode 103: Dental 3D Printing with Ankush Venkatesh, Glidewell Intrapreneur

Your daily news from 3DPrint.com

Play Episode Listen Later May 2, 2022 43:12


Ankush Venkatesh passionately tells us about Glidewell Dental's holistic and very vertically integrated adoption of 3D printing. The firm has had to make its own software, deploys over 400 3D printers. and is looking to make its own post-processing solutions, as well. As a large dental lab, the company also uses machine learning to automatically propose 3D printing design files in its operations. What follows is a great look into how a firm can gain a true advantage through creating and deploying technology wisely.

Building Better Systems
Episode #20: Ankush Desai — P: The Modeling Language That Could

Building Better Systems

Play Episode Listen Later Apr 28, 2022 46:12


Joey and Shpat talk with Ankush Desai, a Senior Applied Scientist at AWS and one of the primary developers behind the P language. They dig into uses for P, bug finding, and what it takes for formal methods researchers to build useful tools for applied engineers. Watch all our episodes on the Building Better Systems youtube channel.Ankush Desai: https://www.linkedin.com/in/ankush-desai/ Joey Dodds: https://galois.com/team/joey-dodds/Shpat Morina: https://galois.com/team/shpat-morina/ Galois, Inc.: https://galois.com/ Contact us: podcast@galois.com   

Improve your Hindi
अंकुश-नियंत्रण ankush-niyantran

Improve your Hindi

Play Episode Listen Later Mar 17, 2022 2:24


#sangyatandon #rameshchandramehrotra #improve your hindi #knowledge #difference between two alike hindi words #libramediagroup #ankush-niyantran #संज्ञा टंडन #रमेश चंद्र महरोत्रा #इम्प्रूव योर हिन्दी #हिन्दी #हिन्दी ज्ञान #हिन्दी शिक्षा #एक जैसे लगने वाले शब्द-युग्मों में अंतर #लिब्रा मीडिया ग्रुप #अंकुश-नियात्रण

Summit Series by Elevation
Building India's first AI-powered content ecosystem

Summit Series by Elevation

Play Episode Listen Later Apr 16, 2021 47:58


In Episode 2 of Summit Series, Mayank Khanduja (Partner, Elevation Capital), speaks to Ankush Sachdeva (Co-Founder & CEO, Sharechat) about his incredible journey as CEO of India's first purely non-English social networking platform. He talks about the evolution of Sharechat over the last 6 years and the culture of rapid experimentation in the company. Ankush shares his vision for Mohalla Tech (which owns Sharechat and Moj) as going beyond being just a social media platform to being India's first AI-powered content ecosystem. He tells Mayank of the power of AI in bringing tailored content to the user, in preventing abuse, and in creating a much more engaging content ecosystem overall. He also speaks about what drives him to greater heights and how his vision for the company is limited only by his dreams and ambitions.

The Issue Spotter
The Issue Spotter Podcast, Episode 1: An Interview with Ankush Khardori

The Issue Spotter

Play Episode Listen Later Nov 2, 2020 38:32


Thank you to Ankush Khardori for participating in the very first episode of The Issue Spotter Podcast, and to Online Associate Trevor Thompson for his thoughtful interviewing. This episode's music is titled "Into It" by Kwon, and was provided by the YouTube Audio Library. Thank you to our listeners!

So Damn Productive
Bootstrapping to Hundreds of Millions in Skill Gaming w/ Ankush Gera (Founder of Junglee Games)

So Damn Productive

Play Episode Listen Later Aug 3, 2020 65:29


Can you build a business with hundreds of millions in revenue, with love and empathy as the core principles? Ankush Gera thinks so, and the proof is in the pudding. Ankush's story started with being a college grad who just wanted to be his own boss. After seeing his previous company Monsoon Company through an acquisition by Capital One, he realized that the Indian Gaming Market was behind the rest of the world. So he set out to fix that with Junglee Games. How did he do it? What did he learn from the journey? Listen to this podcast to find out! Make sure to subscribe for more interviews with India's Disruptors! Follow us on Instagram clips and updates: https://www.instagram.com/thenextmovepodcast/ Sign up for our mailing list: https://mailchi.mp/04427a7ae942/collect-email-ids ______________________________________ Check us out on YouTube: https://youtu.be/oYpIPAO8ywo

The Business Series Podcast
Business Podcast Series Ep.19 – How to Deal with Bullies in the Workplace and Not Become One Yourself

The Business Series Podcast

Play Episode Listen Later May 8, 2019 27:20


How to Deal with Bullies in the Workplace and Not Become One Yourself In this episode, Ankush speaks with social entrepreneur, business coach and consultant Jacquie Forde. Some of what they discuss include: – Learn how to see situations more impersonally – Looking at bullying from the perspective of both the employees and the managers ... Read more The post Business Podcast Series Ep.19 – How to Deal with Bullies in the Workplace and Not Become One Yourself appeared first on Ankush Jain Limited.

The Business Series Podcast
Business Series Podcast Ep.20 – The Invisible Factors Behind Effective Leadership with Dr. George Pransky

The Business Series Podcast

Play Episode Listen Later Apr 24, 2019 35:02


The Invisible Factors Behind Effective Leadership In this episode, Ankush speaks a pioneer of taking state of mind into business, Dr George Pransky. Some of what they discuss include: – Visible vs Invisible factors behind effective leadership – How does this apply across different industries – How to tap into this hidden factor as a ... Read more The post Business Series Podcast Ep.20 – The Invisible Factors Behind Effective Leadership with Dr. George Pransky appeared first on Ankush Jain Limited.

The Business Series Podcast
Business Series Podcast Ep.18 – How To Retain Your Talented Employees and Allow Them To Shine with Gabriela Maldonado-Montano

The Business Series Podcast

Play Episode Listen Later Feb 26, 2019 21:10


Ankush is joined by Gabriela Maldonado Montano, who is an international coach and trainer, who has a passion for helping people shine at work. They discuss how companies and leaders can retain talented employees and get the most from them. The post Business Series Podcast Ep.18 – How To Retain Your Talented Employees and Allow Them To Shine with Gabriela Maldonado-Montano appeared first on Ankush Jain Limited.

The Business Series Podcast
Business Series Podcast Ep.17 – How To Stay Relevant in Business with Rich Habets

The Business Series Podcast

Play Episode Listen Later Jan 8, 2019 24:12


How to Stay Relevant in Business In this episode, Ankush speaks with leadership consultant Rich Habets. Some of what they discuss include: – How do we stay relevant in such a fast-paced business world? – Slowing down internally to get more done – How can we slow down right now? – A case study of ... Read more The post Business Series Podcast Ep.17 – How To Stay Relevant in Business with Rich Habets appeared first on Ankush Jain Limited.