afshinea / stanford-cme-295-transformers-large-language-modelsLinks
VIP cheatsheet for Stanford's CME 295 Transformers and Large Language Models
☆3,521Updated 3 months ago
Alternatives and similar repositories for stanford-cme-295-transformers-large-language-models
Users that are interested in stanford-cme-295-transformers-large-language-models are comparing it to the libraries listed below
Sorting:
- This repository contains a curated collection of 300+ case studies from over 80 companies, detailing practical applications and insights …☆4,395Updated 3 months ago
- Introduction to PyTorch, covering tensor initialization, operations, indexing, and reshaping.☆752Updated last month
- All Stanford Cheatsheets: Artificial Intelligence, Transformers, LLMs, Deep Learning, Machine Learning, Probabilities, Statistics, Algebr…☆729Updated last month
- ☆1,543Updated 3 weeks ago
- A curated list of 100+ libraries and frameworks for AI engineers building with LLMs☆2,206Updated this week
- The LLM's practical guide: From the fundamentals to deploying advanced LLM and RAG apps to AWS using LLMOps best practices☆4,375Updated 8 months ago
- Learn to build your Second Brain AI assistant with LLMs, agents, RAG, fine-tuning, LLMOps and AI systems techniques.☆1,507Updated 6 months ago
- A comprehensive, curated collection of resources for learning Machine Learning, Deep Learning, and AI☆101Updated 8 months ago
- This series will take you on a journey from the fundamentals of NLP and Computer Vision to the cutting edge of Vision-Language Models.☆1,149Updated 9 months ago
- This repository contains LLM (Large language model) interview question asked in top companies like Google, Nvidia , Meta , Microsoft & fo…☆1,539Updated 9 months ago
- A curated list of Large Language Model resources, covering model training, serving, fine-tuning, and building LLM applications.☆4,363Updated 3 months ago
- A comprehensive collection of PyTorch tutorials covering essential concepts and applications☆357Updated 5 months ago
- Minimal and annotated implementations of key ideas from modern deep learning research.☆1,204Updated last month
- 100+ Fine-tuning Tutorial Notebooks on Google Colab, Kaggle and more.☆3,827Updated last week
- Implement a reasoning LLM in PyTorch from scratch, step by step☆2,032Updated this week
- When Philosophy meets AI☆1,385Updated last month
- ☆828Updated last month
- Official code repo for the O'Reilly Book - "Hands-On Large Language Models"☆17,840Updated 3 months ago
- A production-ready template to kickstart your Generative AI projects with structure and scalability in mind.☆684Updated 5 months ago
- MCP Python Tutorial☆987Updated last month
- Materials for the LLM Engineering Essentials course☆773Updated last month
- Comprehensive guide to learn RAG from basics to advanced.☆1,163Updated 7 months ago
- Just enough Kubernetes for you to fly☆478Updated 7 months ago
- Awesome LLM Books: Curated list of books on Large Language Models☆1,088Updated 3 weeks ago
- ☆552Updated last month
- Summaries and resources for Designing Machine Learning Systems book (Chip Huyen, O'Reilly 2022)☆3,750Updated 2 weeks ago
- This repository contains Data & AI concepts covered on my Threads page.☆166Updated 7 months ago
- ML from scratch☆2,425Updated 3 months ago
- It is said that, Ilya Sutskever gave John Carmack this reading list of ~ 30 research papers on deep learning.☆932Updated last year
- A database of 650 Machine Learning (ML) system design case studies from 100+ companies.☆1,115Updated 2 months ago