A curated list of resources for generative AI. This includes tutorials, examples, and tools to help you learn and build generative AI models.
Resource | Description |
---|---|
Kaggle Notebooks | π Kaggle: Access a vast collection of datasets, notebooks, and models. Compete in competitions and collaborate with a community of data scientists to enhance your skills. |
Hugging Face Spaces | π€ Hugging Face Spaces: Discover papers, models, and interactive spaces for natural language processing. Share and deploy your own models with the community. |
Streamlit Gallery | π Streamlit Gallery: Explore a variety of beautiful web apps built with Streamlit. Learn how to create interactive data applications with ease. |
LangChain Cookbooks | π LangChain Cookbook: Find recipes and examples to get started with LangChain. Learn how to build and deploy language models effectively. |
LangGraph Examples | π LangGraph Examples: Dive into examples that showcase the capabilities of LangGraph. Understand how to integrate graph-based learning with language models. |
LangChain How-to Guides | π οΈ LangChain How-to Guides: Detailed step-by-step guides for using LangChain in various applications. Perfect for beginners and advanced users alike. |
Pinecone Examples | π² Pinecone Examples: Practical examples demonstrating how to use Pinecone's vector database for building scalable and fast similarity search applications. |
Trending on GitHub | π₯ Trending on GitHub: Stay updated with the most popular repositories in Python and large language model (LLM) topics. Discover new projects and ideas. |
Future Tools | π Future Tools: A comprehensive directory of tools and resources that are shaping the future of AI and technology. Find the latest innovations and trends. |
There's an AI for That | π€ There's an AI for That: An extensive directory of AI tools categorized by their applications. Easily find AI solutions for various tasks. |
Awesome LLMOps | βοΈ Awesome LLMOps: A curated list of resources for managing and optimizing large language models. Learn best practices for deployment and maintenance. |
Best AI Knowledge Repositories | π§ Best AI Knowledge Repositories: A collection of the best repositories for AI knowledge and research. Ideal for students and professionals looking to deepen their understanding. |
Papers with Code | π Papers with Code: Access state-of-the-art AI research papers with code implementations. Perfect for researchers and practitioners looking to replicate and build upon cutting-edge work. |
Awesome LangChain | π Awesome LangChain: A curated list of resources, tools, and tutorials for LangChain. Stay up-to-date with the latest developments and community projects. |
Awesome Python Data Science | π Awesome Python Data Science: A curated list of Python libraries and resources for data science. Enhance your data analysis and machine learning skills. |
LLM Course | π LLM Course: Comprehensive course materials for learning about large language models. Includes lectures, assignments, and project ideas. |
LLMs from Scratch | π οΈ LLMs from Scratch: Learn how to build large language models from scratch. Understand the fundamentals and implementation details. |
ZenML Projects | π§ ZenML Projects: Example projects using ZenML to streamline your machine learning workflows. Learn how to integrate ZenML into your ML pipelines. |
Ashish Patel's Projects | π‘ Ashish Patel's Projects: Explore a wide range of AI and ML projects listed by Ashish Patel. Includes projects on machine learning, deep learning, computer vision, and NLP with code. |
LlamaIndex Examples | π¦ LlamaIndex Examples: Examples demonstrating how to use LlamaIndex for efficient information retrieval and indexing. |
CrewAI Examples | π₯ CrewAI Examples: Practical examples for using CrewAI to enhance team collaboration and productivity in AI projects. |
JY Chia's Blog | βοΈ JY Chia's Blog: Insightful blog posts about AI, machine learning, and data science. Gain practical tips and knowledge from an experienced professional. |
DataCamp Cheat Sheets | π DataCamp Cheat Sheets: Handy cheat sheets for data science and AI concepts. Perfect for quick reference and revision. |
Qdrant Documentation Examples | π Qdrant Documentation Examples: Examples for using Qdrant's vector search capabilities. Learn how to build and deploy vector search applications. |
MLflow Examples | π§ MLflow Examples: Practical examples for using MLflow to manage your machine learning experiments. |
Comet Examples | βοΈ Comet Examples: Examples for using Comet to track, compare, and optimize your machine learning experiments. |
W&B Examples | ποΈ Weights & Biases Examples: Examples for using Weights & Biases to enhance your ML experiments with tracking, visualization, and collaboration tools. |
Prefect Recipes | π₯ Prefect Recipes: Recipes and examples for using Prefect to orchestrate and manage your data workflows. |
Pachyderm Examples | π Pachyderm Examples: Examples for using Pachyderm to version and manage your data science pipelines. |
Amazon SageMaker Examples | βοΈ Amazon SageMaker Examples: Practical examples for using Amazon SageMaker to build, train, and deploy machine learning models at scale. |
Microsoft Autogen Notebooks | π Microsoft Autogen Notebooks: Notebooks for using Microsoft Autogen to automate the generation of synthetic data and models. |
Haystack Tutorials | π₯ Haystack Tutorials: Tutorials for using Haystack to build powerful search systems with state-of-the-art NLP. |
Generative AI for Beginners | πΆ Generative AI for Beginners: A beginner's guide to understanding and building generative AI models. |
Prompting Guide | π Prompting Guide: A comprehensive guide for crafting effective prompts to improve the performance of your AI models. |
NVIDIA NeMo Examples | π» NVIDIA NeMo Examples: Examples for using NVIDIA NeMo to build, train, and deploy conversational AI models. |
Outlines Examples | βοΈ Outlines Examples: Examples for using Outlines to create structured data extraction workflows. |
Google Cloud Generative AI | βοΈ Google Cloud Generative AI: Resources and examples for building generative AI models on Google Cloud. |
Hugging Face Transformers Examples | π Hugging Face Transformers Examples: Examples for using Hugging Face Transformers to implement state-of-the-art NLP models. |
e2b Cookbook | π e2b Cookbook: Examples and recipes from the e2b cookbook to help you get started with various AI and ML tasks. |
Google Colab Notebooks | π Google Colab Notebooks: Create and share Jupyter notebooks with free access to GPUs. Perfect for experimenting with AI models and collaborating with others. |
Thanks for reading. If you found this list useful, Follow Izam Mohammed for more β€οΈ.