We are hosting a webinar with @dify_ai tomorrow!
We’ll show how to:
• Build with Dify’s LLM dev platform
• Monitor & evaluate with @weave_wb
• Ship reliable, production-ready agents
🕗 8AM PT
🎟️ Virtual & Free!
Register below.
Had really great time listening to @ParamBharat@xprilion and @ravithejads.
@wandb Thanks for the speakers.
Thanks ConvergeAi and Joinal for the talk.
Met @kurianbenoy2 ( Really Lucky to have a talk with him )
Learning about AI Agents?
Here's a 2 hour course from @OpenAI x @wandb to walk you from single agents to multi-agent systems while keeping in mind traceability, evaluations and safeguards!
And its FREE, like all knowledge should be!
👉 https://t.co/IXsRiYSYll
🤖 Just dropped our new AI Agents course and it's completely free!
If you've been curious about building AI systems that can actually *do* things autonomously - like handle complex workflows, work with teams of agents, or tackle real-world problems - this might be worth checking out.
We cover everything from single agents to multi-agent collaboration, plus the practical stuff like evaluation and safeguards (because nobody wants runaway agents 😅).
2 hours, free enrollment, and you'll work with actual reasoning models. Link in bio if you're interested!
#AIAgents #MachineLearning #OpenAI #FreeCourse
Over the past few months, my team at @weights_biases have been hard at work launching Weave Scorers and guardrails. We designed these non-LLM powered scorers to leverage state-of-the-art open source models – from the PleIAI/Celadon toxicity detector to the @vectara hallucination scorer – ensuring that our AI systems are evaluated across multiple dimensions.
As part of this initiative, we also created comprehensive evaluation datasets, drawing on invaluable contributions from the open-source community. Being a reproducibility-first company, we've made the full recipe public, including the scorers, model weights, and the training and evaluation datasets.
A personal highlight was working on the Fluency Scorer powered by @answerdotai ModernBERT-base; we hope to move all DeBerta-powered scorers to ModernBert in the next release so we can benefit from the longer context length and training speed!
I'm excited to see how the community uses these tools, and I'm looking forward to more innovations in safe and reproducible AI!
@drjayspeaks @latentspacepod beacuse of my @smol_ai work i actually went thru https://t.co/0IkwPJ4FHU and learned alot, there's something in there for everyone
thanks to @morgymcg@altryne
1st event in Bangalore on 18th January where @ParamBharat will talk about Simple to Agentic RAG.
- hands-on ✅
- quality content ✅
- relevant and required in today's age 💯
If you are interested consider registering. We have limited seats. :)
Last week, I gave a presentation at @NDSMLSummit Stockholm and showed some slides about how to get started with RAG, which the audience appreciated. I started by showing a simple implementation of RAG from scratch that lets you fix some ideas and understand the ins and outs of a RAG pipeline.
Implement a simple retriever in a single screen of code leveraging the Tfidf vectorizer from @scikit_learn .
Then we need to construct a reply using the LLM model. You take the query from the user and the retrieved context and create a response for the user.
If you put everything together, you have a simple RAG pipeline!
These snippets of code and more come from the excellent work put together by @ParamBharat and @ayushthakur0 RAG++ course:
https://t.co/YC2TS5POXd
I love that it dismistifies the complexity of RAG and get's you from zero to hero.
The full slide deck can be found here: https://t.co/z9uqwaXOhC
If you don't know what to do this weekend or it's rainy, why not look at our RAG++ course with @cohere and @weaviate_io?
It's a great resource for finally understanding RAG's ins and outs and how to move from a POC to an actual product.
You also get free API credits 😋
Our RAG++ course achieved a small milestone of 5K signup. 🎉
We are now planning to create a dedicated course on Evals (LLM based system evals to be specific).
We have the curriculum outline ready already after a 5 hr long discussion.
I wonder if this is exciting to you all.
A few weeks ago, we launched our RAG++ course. Learn from 21 months of production experience and boost your RAG metrics while reducing latency. In just 2 hours, gain valuable insights and earn a completion certificate. Join us: https://t.co/ljOGNMM9Mh
The new @wandb RAG++ course uses the v2 API and the new command-r models. In addition to learning about nuanced RAG techniques, you also get to work with the new API in the course colabs thanks to the credits from @cohere.
Register here: https://t.co/rKCIUnFHSN
We’ve released updated versions of our APIs! This upgrade aims to improve the developer experience, making it easier and faster for developers to build with Cohere.
https://t.co/Fr46lnNzrb