HC

Harrison Chase

0 位关注者102 条内容最近 7 天 24 条

简介

@LangChainAI, previously @robusthq @kensho MLOps ∪ Generative AI ∪ sports analytics

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𝕏Harrison Chase

内容历史

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Harrison Chase
𝕏xabout 7 hours ago

Deep agents Deep agents Deep agentsThomas Taylor: learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents Link: https://x.com/mrthomastaylor/status/1989128654127866224

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Harrison Chase
𝕏xabout 11 hours ago

RT LangChain Our very own @RLanceMartin outlined a new playbook for AI engineering on the High Signal Podcast. In this conversation, he touches on: 🔶 Why top products from Claude Code to Manus are constantly re-architecting to keep up with tomorrow's models 🔶 How to use context engineering to manage cost & reliability 🔶 Why evaluation for agents is critical (and why you should start simple) 🔶 The power of an "agent harness" to extend AI capabilities without adding complexity .... And more! Check out the episode in the comments to hear more from @dsgilchrist @hugobowne and @RLanceMartin

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Harrison Chase
𝕏xabout 12 hours ago

RT george salapa 🜁 i really like this mental model of what langgraph bc it clicked for me graph is a looping mechanism with predetermined routes (ex: interruption for human approval) state is a dict that travels through the loop node are basically tools

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Harrison Chase
𝕏xabout 12 hours ago

RT Jake Broekhuizen Great overview from prof. @RLanceMartin on context engineering and how principles like offload, reduce, and isolate show up in modern agent architectures - including our new Deep Agents package + CLI. https://www.youtube.com/watch?v=XFCkrYHHfpQ

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Harrison Chase
𝕏xabout 12 hours ago

RT Thomas Taylor learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents learn about deep agents

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Harrison Chase
𝕏xabout 17 hours ago

RT Christian Bromann ⚡️🚀Mason Daugherty: Hour zero support for GPT-5.1 in your @LangChainAI agents! Link: https://x.com/masondrxy/status/1989053478321439052

RT Christian Bromann: ⚡️🚀
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Harrison Chase
𝕏xabout 17 hours ago

RT Mason Daugherty Hour zero support for GPT-5.1 in your @LangChainAI agents!Sam Altman: GPT-5.1 is now available in the API. Pricing is the same as GPT-5. We are also releasing gpt-5.1-codex and gpt-5.1-codex-mini in the API, specialized for long-running coding tasks. Prompt caching now lasts up to 24 hours! Updated evals in our blog post. Link: https://x.com/sama/status/1989048466967032153

RT Mason Daugherty: Hour zero support for GPT-5.1 in your @LangChainAI agents!
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Harrison Chase
𝕏xabout 19 hours ago

RT LangChain ⭐️New LangChain Academy Course: LangSmith Essentials⭐️ Testing applications is essential to the development lifecycle, but LLM systems are non-deterministic – you can’t always predict how they will behave. Add multi-turn interactions and tool-calling agents, and testing agents becomes even more complex than traditional software testing. To address this challenge, LangSmith provides a comprehensive platform for agent engineering that helps teams use live production data for continuous testing and improvement. In our new quickstart course, LangSmith Essentials, you’ll learn how to observe, evaluate, and deploy your agent in less than 30 minutes. Enroll for free ➡️https://bit.ly/4hYBVq1

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Harrison Chase
𝕏xabout 20 hours ago

RT Sydney Runkle 🎬 Day 3 of our LangChain middleware series! ✅ Today: To-Do List Middleware Your @LangChainAI agents can now plan like Claude Code does, breaking down complex tasks and checking them off as they go. Add this in with just 2 lines of code! https://www.youtube.com/watch?v=yTWocbVKQxw

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Harrison Chase
𝕏xabout 20 hours ago

RT Christian Bromann Your AI agent keeps looping, forgetting steps, or losing context? There’s one simple trick to make it smarter: TodoListMiddleware 🧠 It gives your LangChain agent an actual plan — so it can think ahead, track progress, and finish what it starts. 🎥 Watch now → https://youtu.be/dwvhZ1z_Pas #LangChain #AI #Agents #LLM #TypeScript #Nextjs

RT Christian Bromann: Your AI agent keeps looping, forgetting steps, or losing context? There’s one simple trick to make it smarter: TodoListMiddlewa...
#LangChain#AI#Agents#LLM#TypeScript#Nextjs
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Harrison Chase
𝕏xabout 20 hours ago

RT Viv Re this was a ton of fun to work on, sandboxes are quickly becoming a default key part of agent infra. lots of use cases like safe code exec, reproducible work, and massively parallel jobs. hype to see what the community builds around this, reach out with any questions from the code, vid, or blog :)

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Harrison Chase
𝕏xabout 20 hours ago

RT LangChain 💻Sandboxes for DeepAgents We're excited to launch Sandboxes for DeepAgents, a new set of integrations that allow you to safely execute arbitrary DeepAgent code and bash commands in remote sandboxes. Supports @RunloopAI @daytonaio @modal Your DeepAgent runs locally (or wherever you want), but when it needs to execute code, create files, or run commands, those operations happen in the remote sandbox. Blog: http://blog.langchain.com/execute-code-with-sandboxes-for-deepagents/ Docs: https://github.com/langchain-ai/deepagents Video: https://youtu.be/CejntUP3muU

RT LangChain: 💻Sandboxes for DeepAgents We're excited to launch Sandboxes for DeepAgents, a new set of integrations that allow you to safely execut...
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Harrison Chase
𝕏xabout 21 hours ago

RT LangChain The AMA with @hwchase17 starts in 30 mins! 🎉 Ask about LangChain, LangGraph, or the future of agents, async on the forum (no cameras 👀). Drop your Qs now or join once we start 👇 🔗 https://forum.langchain.com/t/im-harrison-chase-ask-me-anything-on-nov-13-14th/2113 🕗 Nov 13–14 | 8AM–6PM PST

RT LangChain: The AMA with @hwchase17 starts in 30 mins! 🎉 Ask about LangChain, LangGraph, or the future of agents, async on the forum (no cameras ...
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Harrison Chase
𝕏x2 days ago

RT Christian Bromann Ever wish your AI agent would ask before acting? 🤔 I built a Human-in-the-Loop middleware for @LangChainAI that pauses execution until you approve the next step. 🎥 Watch the full demo → https://youtu.be/tdOeUVERukA 🧑‍💻 @nextjs demo app → https://github.com/christian-bromann/langchat #LangChain #AI #Agents #Nextjs #TypeScript

RT Christian Bromann: Ever wish your AI agent would ask before acting? 🤔 I built a Human-in-the-Loop middleware for @LangChainAI that pauses execut...
#LangChain#AI#Agents#Nextjs#TypeScript
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Harrison Chase
𝕏x2 days ago

RT LangChain Context Engineering in Practice A few common agent design principles have emerged -- offload/reduce/isolate agent context. Here, we cover examples of each across popular agents, including our own open source deepagents harness. 📹: https://youtu.be/XFCkrYHHfpQ

RT LangChain: Context Engineering in Practice A few common agent design principles have emerged -- offload/reduce/isolate agent context. Here, we cove...
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Harrison Chase
𝕏x3 days ago

RT LangChain Most agents fail at complex tasks because they lose context or can’t plan ahead. Deep agents are architected differently to handle long-running, multi-step workflows (like Claude Code). Deep agents have four characteristics that differentiate them from typical looping agents. While they still use the basic agent framework of an LLM calling tools in a loop, the capacity for deep work is enabled through: 🧠 A detailed system prompt 📋 A planning tool 🤝 Subagents 🗂️ A file system tool In this post we discuss each of these building blocks and how they enable agents to go deep: https://blog.langchain.com/deep-agents/

RT LangChain: Most agents fail at complex tasks because they lose context or can’t plan ahead. Deep agents are architected differently to handle long...RT LangChain: Most agents fail at complex tasks because they lose context or can’t plan ahead. Deep agents are architected differently to handle long...RT LangChain: Most agents fail at complex tasks because they lose context or can’t plan ahead. Deep agents are architected differently to handle long...RT LangChain: Most agents fail at complex tasks because they lose context or can’t plan ahead. Deep agents are architected differently to handle long...
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Harrison Chase
𝕏x3 days ago

RT LangChain 👩Lang-ladies NYC Breakfast☕️ Join us Nov 20 for breakfast + coffee with women in the LangChain community! Connect, collaborate, and talk agents and real-world AI. 📍USQ area ⏰8:15–9:45am ET 🎟️ Space is limited — RSVP here to confirm your spot: https://luma.com/zvou4qkv For women & gender minorities in tech 💪

RT LangChain: 👩Lang-ladies NYC Breakfast☕️ Join us Nov 20 for breakfast + coffee with women in the LangChain community! Connect, collaborate, and...
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Harrison Chase
𝕏x4 days ago

RT LangChain Excited to see FlowAgent by @TearlineAI live — it's built on LangChain and LangGraph, and helps folks orchestrate complex Web3 tasks.Tearline: @TearlineAI × @LangChainAI DeFi meets AI. Powered by LangChain, our flagship FlowAgent makes multi-agent workflows visual, modular, and maintainable, with built-in persistence and cost-efficient execution. We built a PDCA Agent that plans, checks, and delivers verified DeFi Link: https://x.com/TearlineAI/status/1987931427867111785

RT LangChain: Excited to see FlowAgent by @TearlineAI live — it's built on LangChain and LangGraph, and helps folks orchestrate complex Web3 tasks.
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Harrison Chase
𝕏x4 days ago

RT Hamel Husain This eval talk features some of my favorite people all in one go. It's discusses evals from many perspectives: - How to look at data - Human/Computer interface design - Metrics - Tools - etc @eugeneyan , @sh_reya , @BEBischof , @hwchase17 , etc 🔥 https://www.youtube.com/watch?si=P9EmuJXw0kzLsdIu&v=SnbGD677_u0

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Harrison Chase
𝕏x4 days ago

RT Warden Calling All Agent Builders 👾 The Warden Agent Hub opens this month: your gateway to 13M+ users and a $1M incentive pool for AI & DeFi agents. ⚡ Publish in minutes via Warden Studio 🌍 Join the first wave of onchain AI agents ✅ Early Onboarder Bonus (Top 10 agents published within the first month earning $10,000 each) 💸 Monetize instantly in USDC

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Harrison Chase
𝕏x5 days ago

RT Amada Echeverría 👩🗽Join us for an intimate breakfast with fellow women in the LangChain community! 🥐 https://luma.com/zvou4qkv

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Harrison Chase
𝕏x5 days ago

RT Edwin Estrada Langchain team overcoming all the objections and haters head on Lang* v1 is 🔥🔥🔥 Community thanks you 🙇 @hwchase17 @sydneyrunkle @mrthomastaylor breaking down the pain points solved ftw https://www.youtube.com/watch?v=SX_h7bUBBww

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Harrison Chase
𝕏x6 days ago

RT LangChain 📊🤖 Stock Research Agent V3 (Made by the LangChain Community) An AI platform transforming financial research, leveraging LangGraph and LangSmith for agent collaboration and real-time monitoring while delivering 73% cost savings. Check it out on GitHub! 🚀 https://github.com/sagar-n/deepagents/tree/v3.0.0/deep-research-agents-v3

RT LangChain: 📊🤖 Stock Research Agent V3 (Made by the LangChain Community) An AI platform transforming financial research, leveraging LangGraph ...
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Harrison Chase
𝕏x6 days ago

RT LangChain 📅🤖 Event Deep Research (Made by the LangChain Community) An AI-powered system that generates historical timelines using LangGraph's multi-agent architecture. Automatically researches and compiles comprehensive JSON timelines of significant life events. Explore this innovative tool! https://github.com/bernatsampera/event-deep-research

RT LangChain: 📅🤖 Event Deep Research (Made by the LangChain Community) An AI-powered system that generates historical timelines using LangGraph'...
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Harrison Chase
𝕏x7 days ago

RT freeCodeCamp.org If you're building AI apps, you might be struggling with how to structure the logic and connect prompts, memory, tools, and APIs. Well, this is where open-source tools like LangChain and LangGraph can help you out. In this guide, Manish explains what each tool does and when (and how) to use it in your AI projects. https://www.freecodecamp.org/news/how-to-use-langchain-and-langgraph-a-beginners-guide-to-ai-workflows/

RT freeCodeCamp.org: If you're building AI apps, you might be struggling with how to structure the logic and connect prompts, memory, tools, and APIs....
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Harrison Chase
𝕏x7 days ago

RT Daniel There's a lot in useStream. Gotta make good use of it!Harrison Chase: Deploying LangChain agents in NextJS! For folks looking to both build and deploy an agent in the NextJS ecosystem - this is a great resource to get started! Link: https://x.com/hwchase17/status/1986491837889323451

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Harrison Chase
𝕏x8 days ago

🚀Mini "TypeScript AI" release day! We released a bunch of things in the Lang* ecosystem to make building AI agents in TypeScript easier than ever: 🤖DeepAgents 1.0: https://docs.langchain.com/oss/javascript/deepagents/quickstart 🕸️Tutorial on building agents with NextJS: https://youtu.be/piK5WTXAEAQ 📃Tutorial on building a deep research agent with DeepAgents TypeScript: https://youtu.be/mUNeBCtJKk0

🚀Mini "TypeScript AI" release day! We released a bunch of things in the Lang* ecosystem to make building AI agents in TypeScript easier than ever: ...
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Harrison Chase
𝕏x8 days ago

RT Kevin Fischer Kids deserve better screentime So we built Spark: world-class puppeteers + AI performing a character who actually knows your family Real humans ensuring real connection. Think Sesame Street meets the future First 20 Portals shipping this month Interviewing the next 200 families now

RT Kevin Fischer: Kids deserve better screentime So we built Spark: world-class puppeteers + AI performing a character who actually knows your family ...
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Harrison Chase
𝕏x8 days ago

RT Sydney Runkle My colleague @bromann is cranking out fantastic educational content re: building agentic applications with @LangChainAI in typescript!Christian Bromann: New video: Build a streaming @LangChainAI agent in @nextjs using useStream + memory 🚀 You’ll learn: - stream AI replies into your UI with useStream - Minimal API route serving SSE - Add conversation memory via thread id + checkpointer 🎥 Watch now: https://www.youtube.com/watch?v=piK5WTXAEAQ Link: https://x.com/bromann/status/1986491398665929209

RT Sydney Runkle: My colleague @bromann is cranking out fantastic educational content re: building agentic applications with @LangChainAI in typescrip...
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Harrison Chase
𝕏x8 days ago

RT Pawan Built a VS Code extension on top of LangChain’s DeepAgents — shows AI code changes inline with human approvals + command execution. Next: adding green/red highlights diff and accept/reject buttons per line. What’s your biggest pain point with AI coding tools?

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Harrison Chase
𝕏x8 days ago

RT LangChain SUPER EXCITED to be working with @privy_io on wallets to enable agentic commerce! fun collab between @MaxSegall and @j_schottenstein -- crypto + ai agents in 1 household coming together for a partnership 🤝Privy: 1/ AI agents can now pay with stablecoins. We’ve teamed up with @LangChainAI, the leading agent framework, to seamlessly provision wallets for agents so they can transact onchain. Stablecoins are programmable money. Privy makes them safe for agents to use. Here's how 👇 Link: https://x.com/privy_io/status/1986503492547039502

RT LangChain: SUPER EXCITED to be working with @privy_io on wallets to enable agentic commerce! fun collab between @MaxSegall and @j_schottenstein -- ...
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Harrison Chase
𝕏x8 days ago

RT Julia Schottenstein A @privy_io @LangChainAI collab for the ages ♥️Privy: 1/ AI agents can now pay with stablecoins. We’ve teamed up with @LangChainAI, the leading agent framework, to seamlessly provision wallets for agents so they can transact onchain. Stablecoins are programmable money. Privy makes them safe for agents to use. Here's how 👇 Link: https://x.com/privy_io/status/1986503492547039502

RT Julia Schottenstein: A @privy_io @LangChainAI collab for the ages ♥️
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Harrison Chase
𝕏x8 days ago

Video walkthrough of building a deep research agent - in typescript!LangChain: 🧑‍🔬 Building a Typescript deep research agent In this video, we will walk through how to easily build a Typescript deep research agent This builds upon our new DeepAgents library All it involves is some detailed prompting, some search tools, and some specialized sub agents Link: https://x.com/LangChainAI/status/1986503307578474668

Video walkthrough of building a deep research agent - in typescript!
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Harrison Chase
𝕏x8 days ago

RT LangChain 🧑‍🔬 Building a Typescript deep research agent In this video, we will walk through how to easily build a Typescript deep research agent This builds upon our new DeepAgents library All it involves is some detailed prompting, some search tools, and some specialized sub agents Check out our video here: https://www.youtube.com/watch?v=mUNeBCtJKk0

RT LangChain: 🧑‍🔬 Building a Typescript deep research agent In this video, we will walk through how to easily build a Typescript deep research ...
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Harrison Chase
youtube8 days ago

Building a Typescript deep research agent

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Harrison Chase
𝕏x8 days ago

RT LangChain Excellent walkthrough of how to build a streaming agent in @nextjs using LangChain. Clear explanation of server-sent events, UI streaming, and memory via thread IDs. If you’re evaluating production agent architectures, this is a strong reference implementation. 👇 Watch the full video here: https://www.youtube.com/watch?v=piK5WTXAEAQ 🧑‍💻 Clone the repository and give it a go: https://github.com/christian-bromann/langchain-nextjsChristian Bromann: New video: Build a streaming @LangChainAI agent in @nextjs using useStream + memory 🚀 You’ll learn: - stream AI replies into your UI with useStream - Minimal API route serving SSE - Add conversation memory via thread id + checkpointer 🎥 Watch now: https://www.youtube.com/watch?v=piK5WTXAEAQ Link: https://x.com/bromann/status/1986491398665929209

RT LangChain: Excellent walkthrough of how to build a streaming agent in @nextjs using LangChain. Clear explanation of server-sent events, UI streamin...
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Harrison Chase
youtube8 days ago

Build a Streaming LangChain Agent in Next.js with useStream

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Harrison Chase
youtube10 days ago

Human in the Loop Middleware (Python)

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Harrison Chase
youtube10 days ago

Why We Built LangSmith for Improving Agent Quality

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Harrison Chase
youtube14 days ago

Deep Agent CLI: Coding Assistant with Memory

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Harrison Chase
youtube15 days ago

Inside LangSmith's No Code Agent Builder

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Harrison Chase
youtube16 days ago

Get Started with LangSmith Agent Builder

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Harrison Chase
youtube18 days ago

LangChain Academy New Course: LangGraph Essentials

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Harrison Chase
youtube18 days ago

LangChain Academy New Course: LangChain Essentials

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Harrison Chase
youtube22 days ago

Get Started with LangSmith Multi-turn Evaluations

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Harrison Chase
youtube23 days ago

Building LangChain and LangGraph 1.0

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Harrison Chase
youtube24 days ago

LangChain: Engineer reliable agents

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Harrison Chase
youtube25 days ago

Get Started with Insights Agent in LangSmith

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Harrison Chase
youtubeabout 1 month ago

Context Engineering for AI Agents with LangChain and Manus

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Harrison Chase
youtubeabout 1 month ago

How We Built it: Clay - Fireside Chat with CEO Kareem Amin

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Harrison Chase
youtubeabout 2 months ago

Getting Started with LangSmith (3/8): Debugging with Studio

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Harrison Chase
youtubeabout 2 months ago

Getting Started with LangSmith (2/8): Types of Runs

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Harrison Chase
youtubeabout 2 months ago

Rewriting Deep Agents on top of LangChain 1.0

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Harrison Chase
youtubeabout 2 months ago

LangChain Academy New Course: Deep Agents with LangGraph

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Harrison Chase
youtubeabout 2 months ago

Adding Human-in-the-Loop to DeepAgents

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Harrison Chase
youtubeabout 2 months ago

How PagerDuty Built AI Agents with LangGraph to Transform Incident Management

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Harrison Chase
youtube3 months ago

Using `deepagents` to Build Deep Research (Python)

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Harrison Chase
youtube3 months ago

Deep Agents JS

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Harrison Chase
youtube3 months ago

LangChain Academy New Course: Deep Research with LangGraph

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Harrison Chase
youtube3 months ago

Getting Started with LangChain Education

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Harrison Chase
youtube3 months ago

Deep Agents UI

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Harrison Chase
youtube3 months ago

Testing Driving GPT 5

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Harrison Chase
youtube3 months ago

Introducing Open SWE: An Open-Source Asynchronous Coding Agent

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Harrison Chase
youtube3 months ago

Tracing Claude Code to LangSmith

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Harrison Chase
youtube3 months ago

n8n Tracing to LangSmith

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Harrison Chase
youtube3 months ago

Implementing deepagents: a technical walkthrough

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Harrison Chase
youtube4 months ago

What are Deep Agents?

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Harrison Chase
youtube4 months ago

Introducing Align Evals: Streamlining LLM Application Evaluation 🚀

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Harrison Chase
youtube4 months ago

How to apply context engineering

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Harrison Chase
youtube4 months ago

Open Deep Research

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Harrison Chase
youtube4 months ago

Context Engineering for Agents

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Harrison Chase
youtube4 months ago

LangGraph Assistants: Building Configurable AI Agents

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Harrison Chase
youtube5 months ago

How Prosper Cut QA Costs by 90% for Financial Services with LangGraph Agents

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Harrison Chase
youtube5 months ago

Building a multi-modal researcher with Gemini 2.5

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Harrison Chase
youtube5 months ago

How to Build an Agent with Auth and Payments - LangGraph.js

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Harrison Chase
youtube5 months ago

How City of Hope saved clinicians 1000+ hours with HopeLLM

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Harrison Chase
youtube5 months ago

From Quora to Poe: Adam D'Angelo on Building Platforms for LLMs and Agents | LangChain Interrupt

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Harrison Chase
youtube5 months ago

LangChain Academy New Course: Building Ambient Agents with LangGraph

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Harrison Chase
youtube5 months ago

Getting Started with LangSmith (8/8): Dashboards

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Harrison Chase
youtube5 months ago

Getting Started with LangSmith (7/8): Automations & Online Evaluation

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Harrison Chase
youtube5 months ago

Getting Started with LangSmith (6/8): Annotation Queues

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Harrison Chase
youtube5 months ago

Getting Started with LangSmith (5/8): Datasets & Evaluations

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Harrison Chase
youtube5 months ago

Getting Started with LangSmith (4/8): Playground & Prompts

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Harrison Chase
youtube5 months ago

Getting Started with LangSmith (1/8): Tracing

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Harrison Chase
youtube5 months ago

How Unify Built AI Research Agents at Scale with LangGraph and LangSmith

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Harrison Chase
youtube9 months ago

How I use LLMs

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Harrison Chase
youtube9 months ago

Deep Dive into LLMs like ChatGPT

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Harrison Chase
youtubeover 1 year ago

Let's reproduce GPT-2 (124M)

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Harrison Chase
youtubeover 1 year ago

Let's build the GPT Tokenizer

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Harrison Chase
youtubealmost 2 years ago

[1hr Talk] Intro to Large Language Models

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Harrison Chase
youtubealmost 3 years ago

Let's build GPT: from scratch, in code, spelled out.

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Harrison Chase
youtubealmost 3 years ago

Building makemore Part 5: Building a WaveNet

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Harrison Chase
youtubeabout 3 years ago

Building makemore Part 4: Becoming a Backprop Ninja

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Harrison Chase
youtubeabout 3 years ago

Building makemore Part 3: Activations & Gradients, BatchNorm

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Harrison Chase
youtubeabout 3 years ago

Building makemore Part 2: MLP

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Harrison Chase
youtubeabout 3 years ago

The spelled-out intro to language modeling: building makemore

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Harrison Chase
youtubeabout 3 years ago

Stable diffusion dreams of psychedelic faces

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Harrison Chase
youtubeabout 3 years ago

Stable diffusion dreams of steampunk brains

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Harrison Chase
youtubeabout 3 years ago

Stable diffusion dreams of tattoos

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Harrison Chase
youtubeabout 3 years ago

The spelled-out intro to neural networks and backpropagation: building micrograd

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