Maddy Adams (@maddygadams) 's Twitter Profile
Maddy Adams

@maddygadams

engineer @LangChainAI

ID: 1593464552858865664

calendar_today18-11-2022 04:43:51

28 Tweet

27 Takipçi

42 Takip Edilen

Palash Shah (@thepalashshah) 's Twitter Profile Photo

life update: i’ve joined langchain to work on all things ai! we’re shipping insanely fast, are ripping through the roof, and are hiring for all roles. reach out!

Sonya Huang 🐥 (@sonyatweetybird) 's Twitter Profile Photo

Congrats to on raising a $125M Series B! 🦜☀️ 3 years ago (a month before ChatGPT launched!), Harrison Chase released LangChain as a popular "get started" booster pack. It was the first LLM agent package to really take off. As the agent space matured and changed

Congrats to <a href="/langchain/"></a> on raising a $125M Series B! 🦜☀️

3 years ago (a month before ChatGPT launched!), <a href="/hwchase17/">Harrison Chase</a> released LangChain as a popular "get started" booster pack. It was the first LLM agent package to really take off. As the agent space matured and changed
Jacob Lee (@hacubu) 's Twitter Profile Photo

🤯 I'll never forget the "holy shit" moment I had three years ago when I got a GPT-3 powered LangChain agent to search the web for Leo DiCaprio's current girlfriend and perform arithmetic on her age. I immediately knew LLMs would shake the foundations of software, and that

Ankush Gola (@ankush_gola11) 's Twitter Profile Photo

Thrilled to announce our Series B today which at a $1.25B valuation. Huge thank you to Tom Loverro and the team at IVP for leading this round, with participation from Alphabet’s CapitalG and Sapphire Ventures and continued support from Sequoia Capital, Benchmark and Amplify Partners

Hunter Lovell (@huntlovell) 's Twitter Profile Photo

Super pumped for whats in store LangChain! Have been working with an incredible OSS team to ship to ship the 1.0 versions of our flagship packages. If you haven't tried them out already, let us know what you think!

Jacob Lee (@hacubu) 's Twitter Profile Photo

We're finally adding our first agent to LangSmith: Insights! It's inspired by on architecture from Anthropic's CLIO paper: anthropic.com/research/clio Anika Somaia Bagatur Askaryan and Maddy Adams put a ton of great work here taking theory into practice. Links in the replies 👇

Ankush Gola (@ankush_gola11) 's Twitter Profile Photo

LangSmith processes nearly 1 billion events and 10s of TB of data every day! In order to help users sift through all of the data they're sending us, we launched Insights Agent! This agent automatically processes your traces in the background and gives you insights into how users

LangChain (@langchainai) 's Twitter Profile Photo

When iterating on an LLM app (e.g. changing the model or prompt), compare different experiments side-by-side to quickly understand what changed. Our redesigned experiment comparison view lets you surface regressions, improvements, and other key differences between experiments.

When iterating on an LLM app (e.g. changing the model or prompt), compare different experiments side-by-side to quickly understand what changed.

Our redesigned experiment comparison view lets you surface regressions, improvements, and other key differences between experiments.
LangChain (@langchainai) 's Twitter Profile Photo

🎉📅 Interrupt 2026 — the AI Agent Conference by LangChain — is back May 13-14 in SF 1,000+ practitioners. Production agents. Real world lessons. Why you should come: → Hear from teams scaling agents in production → Get hands-on in workshops with the LangChain team → See new

LangChain (@langchainai) 's Twitter Profile Photo

We just shipped Baseline Experiments 🚀 You can now pin any experiment as your baseline in LangSmith. This allows you track performance deltas, anchor your results, and quickly identify improvements or regressions in an experiment list. Docs: docs.langchain.com/langsmith/anal…

LangChain (@langchainai) 's Twitter Profile Photo

Introducing LangSmith Fleet: an enterprise workspace for creating, using, and managing your fleet of agents. Fleet agents have their own memory, access to a collection of tools and skills, and can be exposed through the communication channels your team uses every day. Fleet

LangChain (@langchainai) 's Twitter Profile Photo

The hardest part of debugging an AI agent isn't knowing it failed--it's knowing why. We rebuilt the detail view in LangSmith Experiments from the ground up to answer that question faster. Next time you click and inspect any experiment results, you will find: * Less clutter *