What do Ramp, Perplexity, Superhuman, and Replit have in common? They've built breakout agentic apps that are live in production and pushing the boundaries of what AI agents can do 🤩🚀✨ In our new "Breakout Agents" series, we've teamed up with Ramp, Perplexity, Superhuman, and Replit to take you behind-the-scenes of how they built their AI agents. 🎬 Explore how their engineering teams: • Designed UXs for human-agent interactions • Built unique cognitive architectures • Leveraged prompt engineering • Evaluated app performance to stay ahead ➡️ Read their stories and get inspired: https://lnkd.in/g246xsH8
About us
We're on a mission to make it easy to build the LLM apps of tomorrow, today. We build products that enable developers to go from an idea to working code in an afternoon and in the hands of users in days or weeks. We’re humbled to support over 50k companies who choose to build with LangChain. And we built LangSmith to support all stages of the AI engineering lifecycle, to get applications into production faster.
- Website
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langchain.com
External link for LangChain
- Industry
- Technology, Information and Internet
- Company size
- 11-50 employees
- Type
- Privately Held
Employees at LangChain
Updates
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✨SCIPE✨ - Systematic Chain Improvement and Problem Evaluation TLDR: It helps you find underperforming nodes in LLM chains New research out of Berkeley (Shreya Shankar and Ankush Garg) that integrates seamlessly with LangGraph "In this post, we introduce SCIPE, a lightweight, yet powerful tool that conducts error analysis on LLM chains. This tool can benefit anyone creating applications that rely on LLMs for making decisions and carrying out tasks. SCIPE works by analyzing inputs and outputs for each node in the LLM chain and identifying the most important node to fix–the node that, if accuracy is improved, will most improve the final or downstream output accuracy." Blog: https://lnkd.in/g_e6_2Z4 Collab Notebook: https://lnkd.in/gaTPnjUv
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New to LangSmith? Check out our 7-part video series that walks through the basics of LangSmith for LLM testing & observability. Learn how to: 🔍 Set up tracing for visibility into your LLM app 🛝 Build & refine prompts in the Playground 🛠️ Curate datasets & run robust evaluations ✅ Use annotation queues for human feedback 📊 Run online evaluations to score performance in real-time 📈 Monitor LLM app health with customizable dashboards Watch now: https://lnkd.in/dcy4PBPz
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🧑⚖️How Chaos Labs built a multi-agent system for resolution in prediction markets Prediction markets rely on an "oracle" to determine outcomes and resolve bets. Read how Chaos Labs built a multi-agent research system to do this in an automated way https://lnkd.in/gYGuAVVx
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Join LangChain at ElasticON NYC on November 13th for talks on how AI-powered search is driving real impact. 🔍 🎙 Catch Vadym Barda in a panel discussion on how search AI is transforming app development and how we're using Elastic to redefine customer experiences. 🎓 Join Nick Huang as he dives into building production-ready RAG apps by combining vector DB capabilities with traditional search approaches and secure data retrieval. Register now: https://lnkd.in/grzDTzev
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🤖Using remote graphs in a multi-agent setup Connect to any deployed graph with our new RemoteGraph SDK. Makes it possible to use a remotely running graph as part of a multi-agent architecture Docs: https://lnkd.in/gwWqdBEk Video: https://lnkd.in/g4KQv6VG
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🕑From 12 weeks to 10 minutes: How Novo Nordisk Accelerates Time To Value with GenAI Great case study on how NovoScribe, a RAG solution, was built with LangChain and MongoDB With LangChain "the team can switch between models quickly and easily" https://lnkd.in/gTh-QTpC
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💚Building RAG Agents with LLMs Agents powered by LLMs have shown great retrieval capability for using tools, looking at documents, and plan their approaches. This course by Nvidia will show you how to deploy an agent system in practice https://lnkd.in/gNmt32AX
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📄 VoiceBot - Chat with Your Documents This application allows users to upload a PDF document and ask questions about the document using voice input in Urdu. Uses LangChain for handling document processing, text embeddings, and vector storage https://lnkd.in/gXkz_V4P
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🏄SurfSense Personal AI Assistant for Internet Surfers and Researchers. Research & Never forget anything you see on the Internet Fully open source! Check out the code here https://lnkd.in/gPHt2t7X