Learn AI

559 bookmarks
Custom sorting
Ultimate ChatGPT Pack (20k Prompts)
Ultimate ChatGPT Pack (20k Prompts)
👇🏻Access Your 1000+ ChatGPT Marketing Prompts Handbook here 👇🏻
·scalepromptgpt.notion.site·
Ultimate ChatGPT Pack (20k Prompts)
Building a Multi-User Chatbot with Langchain and Pinecone in Next.JS
Building a Multi-User Chatbot with Langchain and Pinecone in Next.JS
In this example, we’ll imagine that our chatbot needs to answer questions about the content of a website. To do that, we’ll need a way to store and access that information when the chatbot generates its response.
·pinecone.io·
Building a Multi-User Chatbot with Langchain and Pinecone in Next.JS
Eugene Yan
Eugene Yan
I design, build, and operate machine learning systems that serve customers at scale. I also write about data/ML systems and career.
·eugeneyan.com·
Eugene Yan
What is a large language model (LLM)? | Cloudflare
What is a large language model (LLM)? | Cloudflare
Large language models (LLMs) are machine learning models that can comprehend and generate human language text. Learn how LLMs work and their security risks.
·cloudflare.com·
What is a large language model (LLM)? | Cloudflare
What is Machine Learning? Definition, Types, Tools & More
What is Machine Learning? Definition, Types, Tools & More
Learn what machine learning is, how it differs from AI and deep learning, and why it is one of the most exciting fields in data science.
Machine Learning, often abbreviated as ML, is a subset of artificial intelligence (AI) that focuses on the development of computer algorithms that improve automatically through experience and by the use of data. In simpler terms, machine learning enables computers to learn from data and make decisions or predictions without being explicitly programmed to do so.
·datacamp.com·
What is Machine Learning? Definition, Types, Tools & More
Learn Python, Data Viz, Pandas & More | Tutorials | Kaggle
Learn Python, Data Viz, Pandas & More | Tutorials | Kaggle
Practical data skills you can apply immediately: that's what you'll learn in these no-cost courses. They're the fastest (and most fun) way to become a data scientist or improve your current skills.
·kaggle.com·
Learn Python, Data Viz, Pandas & More | Tutorials | Kaggle
Intro
Intro
null
·deeplearningbook.org·
Intro
RAG But Better: Rerankers with Cohere AI
RAG But Better: Rerankers with Cohere AI
Rerankers have been a common component of retrieval pipelines for many years. They allow us to add a final "reranking" step to our retrieval pipelines — like...
·youtube.com·
RAG But Better: Rerankers with Cohere AI
Building Production-Ready RAG Applications: Jerry Liu
Building Production-Ready RAG Applications: Jerry Liu
Large Language Models (LLM's) are starting to revolutionize how users can search for, interact with, and generate new content. Some recent stacks and toolkit...
·youtube.com·
Building Production-Ready RAG Applications: Jerry Liu
Evaluating ragas: A framework for RAG pipelines
Evaluating ragas: A framework for RAG pipelines
TL;DR ragas is a framework designed to assess the performance of Retrieval Augmented Generation (RAG) pipelines, a type of LLM application that uses external data to enhance its context. While there are tools to build RAG pipelines, evaluating their performance can be challenging. ragas offers tools rooted in recent research to evaluate LLM-generated text, providing insights into RAG pipeline performance. It can also be incorporated into CI/CD for ongoing performance checks.
tiktoken
·blog.takanabe.tokyo·
Evaluating ragas: A framework for RAG pipelines
A Complete Guide for Ragas, the RAG Pipeline for LLM Evaluation – AI StartUps Product Information, Reviews, Latest Updates
A Complete Guide for Ragas, the RAG Pipeline for LLM Evaluation – AI StartUps Product Information, Reviews, Latest Updates
Dive into the world of Ragas, the go-to Retrieval-Augmented Generation (RAG) pipeline evaluator. This comprehensive guide will walk you through its features, metrics, and integrations, making you an expert in evaluating Language Models (LLMs).
·cheatsheet.md·
A Complete Guide for Ragas, the RAG Pipeline for LLM Evaluation – AI StartUps Product Information, Reviews, Latest Updates
facebookresearch/faiss
facebookresearch/faiss
A library for efficient similarity search and clustering of dense vectors.
·github.com·
facebookresearch/faiss
Greg Kamradt on Twitter / X
Greg Kamradt on Twitter / X
visualizing text splitting & chunking strategiesChunkViz .com I thought I remembered a tool to visualize text chunking, but I couldn't find it, so I built oneI didn't realize it would be so visually pleasing to tinker with4 different @LangChainAI splitters featured https://t.co/4VywxHdqAa pic.twitter.com/vN2kdIBgxd— Greg Kamradt (@GregKamradt) December 8, 2023
·x.com·
Greg Kamradt on Twitter / X
Optimizing vector search performance with pgvector - Neon
Optimizing vector search performance with pgvector - Neon
According to the StackOverflow Survey 2023, nearly half of professional developers use Postgres. It’s natural then that the Postgres extension for vector similarity search, pgvector, is one of the most popular options for prototyping  AI-powered applications. But how to properly use pgvector? Is it the right tool for your dataset? Do you need an exact […]
·neon.tech·
Optimizing vector search performance with pgvector - Neon
The architecture of today's LLM applications
The architecture of today's LLM applications
Here’s everything you need to know to build your first LLM app and problem spaces you can start exploring today.
·github.blog·
The architecture of today's LLM applications
Andrej Karpathy on X: "# On the "hallucination problem" I always struggle a bit with I'm asked about the "hallucination problem" in LLMs. Because, in some sense, hallucination is all LLMs do. They are dream machines. We direct their dreams with prompts. The prompts start the dream, and based on the…" / X
Andrej Karpathy on X: "# On the "hallucination problem" I always struggle a bit with I'm asked about the "hallucination problem" in LLMs. Because, in some sense, hallucination is all LLMs do. They are dream machines. We direct their dreams with prompts. The prompts start the dream, and based on the…" / X
·twitter.com·
Andrej Karpathy on X: "# On the "hallucination problem" I always struggle a bit with I'm asked about the "hallucination problem" in LLMs. Because, in some sense, hallucination is all LLMs do. They are dream machines. We direct their dreams with prompts. The prompts start the dream, and based on the…" / X