This is your work, valued
applied-ml. π Papers & tech blogs by companies sharing their work on data science & machine learning in production.
30kopen-llms. π A list of open LLMs available for commercial use.
13kml-surveys. π Survey papers summarizing advances in deep learning, NLP, CV, graphs, reinforcement learning, recommendations, graphs, etc.
2.9kml-design-docs. π Design doc template & examples for machine learning systems (requirements, methodology, implementation, etc.)
706obsidian-copilot. π€ A prototype assistant for writing and thinking
5631-on-1s. π± 1-on-1 questions and resources from my time as a manager.
386news-agents. π° Building News Agents to Summarize News with MCP, Q, and tmux
319testing-ml. π Minimal examples of machine learning tests for implementation, behaviour, and performance.
271llm-paper-notes. Notes from the Latent Space paper club. Follow along or start your own!
250applyingml. π Papers, guides, and mentor interviews on applying machine learning for ApplyingML.comβthe ghost knowledge of machine learning.
211papermill-mlflow. π§ͺ Simple data science experimentation & tracking with jupyter, papermill, and mlflow.
191python-collab-template. π Python project template with unit tests, code coverage, linting, type checking, Makefile wrapper, and GitHub Actions.
153recsys-nlp-graph. π Simple recommender with matrix factorization, graph, and NLP. Beating the regular collaborative filtering baseline.
148semantic-ids-llm. Semantic IDs: How to train an LLM-Recommender Hybrid with steerability and reasoning on recommendations.
127align-app. TypeScript
98visualizing-finetunes. Jupyter Notebook
78fastapi-html. Sample repository demonstrating how to use FastAPI to serve HTML web apps.
76eugeneyan. Python
58framework-comparison. TypeScript
40discord-llm. Experimenting with LLMs to Research, Reflect, and Plan (LLM assistants, retrieval, and Discord integration)
33raspberry-llm. Calling LLM APIs on a Raspberry Pi for lulz
24poc-docker-template. Simple template showing how to set up docker for reproducible data science with Jupyter notebooks.
23text-to-image. Jupyter Notebook
20my-cs-degree. A CS degree I designed for myself, 2020
19learning-typescript. JavaScript
16awesome-mlops. A curated list of references for MLOps
14nocode-ml. π End-to-end machine learning; "no code" required!
13awesome-fastapi. A curated list of awesome things related to FastAPI
11design-patterns. Java
8deep-rl. Repository for deep reinforcement learning with OpenAI
8testing-pipelines. Python
7Computational-Thinking-and-Data-Science. edX: Introduction to Computational Thinking and Data Science (Oct 2014)
6kaggle_springleaf. Code for Kaggle Springleaf Email Prediction Challenge
6DeepLearningBook. MIT Deep Learning Book in PDF format
5Mining-Massive-Datasets. Coursera: Mining Massive Datasets (Sep 2014)
5ama. Ask Me Anything
5search_fundamentals_course. Python
4kaggle_titanic. Code for Kaggle Titanic Challenge (and other learning)
4Computer-Science-and-Programming-In-Python. edX: Introduction to Computer Science and Programming in Python (July 2014)
4search_engineering. Search Engineering course materials
4openai-cookbook. Examples and guides for using the OpenAI API
4datagene. Jupyter Notebook
4Statistical-Inference. This repository contains the lab assignments for the facilitation of John Hopkins University' Coursera MOOC on Statistical Inference.
4workshop. AI and Machine Learning with Kubeflow, Amazon EKS, and SageMaker
4Data-Analysis-and-Statistical-Inference-Project. Coursera: Data Analysis & Statistical Inference Project (Feb 2014)
4Statistical-Learning. Stanford OpenX: Introduction to Statistical Learning
4search_with_machine_learning_course. Jupyter Notebook
3Time-Series-Analysis. Simple forecasting with Regression Model
3neural_networks_and_deep_learning.
3Getting-and-Cleaning-Data. Coursera: Getting and Cleaning Data (May 2014)
3Twitter-SMA. Twitter Streaming and Analysis with Python and R
2evals. Evals is a framework for evaluating OpenAI models and an open-source registry of benchmarks.
2Machine-Learning. Coursera: Machine Learning (Aug 2014)
2json-to-utterances. Jupyter Notebook
1xgboost. Large-scale and Distributed Gradient Boosting (GBDT, GBRT or GBM) Library, on single node, hadoop yarn and more.
1awesome-self-supervised-learning. A curated list of awesome self-supervised methods
1tensorflow-mnist. Tensorflow MNIST example using Dataset API
1Visualizations. Random Visualizations
1