- Explore MCP Servers
- awesome-ai-llm-resources
Awesome Ai Llm Resources
What is Awesome Ai Llm Resources
awesome-ai-llm-resources is a comprehensive collection of free resources designed to help individuals learn about Artificial Intelligence (AI), Large Language Models (LLMs), and AI Agents from scratch.
Use cases
Use cases include learning AI concepts for academic purposes, developing machine learning models, exploring deep learning techniques, and understanding generative AI applications.
How to use
Users can access the resources through the provided links in various categories such as Mathematical Foundations, AI & ML Fundamentals, Machine Learning Frameworks, Deep Learning, and Generative AI. Each category contains curated content including courses, playlists, and tutorials.
Key features
Key features include a wide range of free educational materials, structured learning paths, and resources covering foundational mathematics, machine learning, deep learning, and generative AI frameworks.
Where to use
awesome-ai-llm-resources can be utilized in educational settings, self-study for aspiring AI practitioners, and as a reference for professionals looking to enhance their knowledge in AI and machine learning.
Clients Supporting MCP
The following are the main client software that supports the Model Context Protocol. Click the link to visit the official website for more information.
Overview
What is Awesome Ai Llm Resources
awesome-ai-llm-resources is a comprehensive collection of free resources designed to help individuals learn about Artificial Intelligence (AI), Large Language Models (LLMs), and AI Agents from scratch.
Use cases
Use cases include learning AI concepts for academic purposes, developing machine learning models, exploring deep learning techniques, and understanding generative AI applications.
How to use
Users can access the resources through the provided links in various categories such as Mathematical Foundations, AI & ML Fundamentals, Machine Learning Frameworks, Deep Learning, and Generative AI. Each category contains curated content including courses, playlists, and tutorials.
Key features
Key features include a wide range of free educational materials, structured learning paths, and resources covering foundational mathematics, machine learning, deep learning, and generative AI frameworks.
Where to use
awesome-ai-llm-resources can be utilized in educational settings, self-study for aspiring AI practitioners, and as a reference for professionals looking to enhance their knowledge in AI and machine learning.
Clients Supporting MCP
The following are the main client software that supports the Model Context Protocol. Click the link to visit the official website for more information.
Content
Learn AI Engineering
A comprehensive collection of free resources to learn everything about AI/ML, LLMs and Agents.
Mathematical Foundations
- Essence of Linear Algebra - 3Blue1Brown
- Probability & Statistics - Khan Academy
- Statistics Fundamentals - Josh Strarmer
- Mathematics for Machine Learning Specialization - Coursera (Andrew Ng)
Python
AI & ML Fundamentals
- Machine Learning Crash Course - Google
- AI for Beginners – Microsoft
- Elements of AI – University of Helsinki
- Machine Learning Playlist - Josh Strarmer
- Machine Learning Specialization - Coursera
Machine Learning Frameworks
Deep Learning
- Deep Learning Specialization - Coursera (Andrew Ng)
- Practical Deep Learning for Coders - Fast.ai
- Mathematics for Deep Learning
- Deep Learning Playlist - Josh Starmer
Deep Learning Frameworks
Deep Learning Specializations
Computer Vision
Natural Language Processing (NLP)
Reinforcement Learning
Generative AI
- The Building Blocks of Generative AI
- Generative AI for Beginners - Microsoft
- Generative AI for Everyone - Coursera
Large Language Models (LLMs)
- The Illustrated Transformer
- Large Language Models explained briefly
- Intro to LLMs
- Understanding Large Language Models
- A Visual Guide to Reasoning LLMs
- Understanding Reasoning LLMs
- Understanding Multimodal LLMs
- A Visual Guide to Mixture of Experts (MoE)
- Finetuning Large Language Models
- How Transformer LLMs Work
- Building GPT from scratch - Andrej Karpathy
- LLM Course - GitHub
- LLM Course - Hugging Face
- Awesome LLM Apps - GitHub
LLM Chatbots
Open Source LLMs
LLM APIs
LLM Tools & Frameworks
LLM Based IDEs
Prompt Engineering
- Google Prompting Essentials
- ChatGPT Prompt Engineering for Developers - Deeplearning.ai
- Advanced Prompting Techniques - Instructor
- Prompt Engineering Techniques - Github
- Getting Structured LLM Output - Deeplearning.ai
Retrieval-Augmented Generation (RAG)
AI Agents
- A Visual Guide to LLM Agents
- Agents - Chip Huyen
- AI Agents Course - Hugging Face
- Building AI Browser Agents - Deeplearning.ai
- GenAI Agents - Github
Model Context Protocol (MCP)
- MCP - Anthropic Guide
- Building AI Apps using MCP
- MCP Course - Hugging Face
- Awesome MCP Servers - Github
MLOps & Deployment
Tools
Guides
Books
- Hands-On Machine Learning
- Deep Learning - Ian Goodfellow
- Deep Learning with Python
- Why Machines Learn
- Designing Machine Learning Systems
- AI Engineering
- Build a LLM from Scratch
- Prompt Engineering for LLMs
- Natural Language Processing with Transformers
YouTube Channels
Other Resources
Must-Read AI Papers
- Attention Is All You Need
- Generative Adversarial Networks (GANs)
- GPT: Improving Language Understanding by Generative Pre-Training
- GPT-3: Language Models are Few-Shot Learners
- BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding
- Chain-of-Thought Prompting Elicits Reasoning in LLMs
DevTools Supporting MCP
The following are the main code editors that support the Model Context Protocol. Click the link to visit the official website for more information.