[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"project-9564":3},{"id":4,"name":5,"fullName":6,"owner":7,"repo":5,"description":8,"homepage":9,"htmlUrl":10,"language":10,"languages":10,"totalLinesOfCode":10,"stars":11,"forks":12,"watchers":13,"openIssues":14,"contributorsCount":15,"subscribersCount":15,"size":15,"stars1d":16,"stars7d":17,"stars30d":18,"stars90d":15,"forks30d":15,"starsTrendScore":19,"compositeScore":20,"rankGlobal":10,"rankLanguage":10,"license":21,"archived":22,"fork":22,"defaultBranch":23,"hasWiki":24,"hasPages":24,"topics":25,"createdAt":10,"pushedAt":10,"updatedAt":36,"readmeContent":37,"aiSummary":38,"trendingCount":15,"starSnapshotCount":15,"syncStatus":39,"lastSyncTime":40,"discoverSource":41},9564,"awesome-datascience","academic\u002Fawesome-datascience","academic",":memo: An awesome Data Science repository to learn and apply for real world problems.","",null,29383,6554,1374,1,0,5,47,233,32,45,"MIT License",false,"live",true,[26,27,28,29,30,31,32,33,34,35],"analytics","awesome-list","data-mining","data-science","data-scientists","data-visualization","deep-learning","hacktoberfest","machine-learning","science","2026-06-12 02:02:09","\u003Cdiv align=\"center\" markdown=\"1\">\n   \u003Csup>Special thanks to Sponsors:\u003C\u002Fsup>\n   \u003Cbr \u002F>\n   \u003Cbr \u002F>\n   \u003Ca href=\"https:\u002F\u002Frequestly.com\u002Fawesomedatascience\">\n      \u003Cimg alt=\"Requestly sponsorship\" width=\"400\" src=\"https:\u002F\u002Fgithub.com\u002Fuser-attachments\u002Fassets\u002F24670320-997d-4d62-9bca-955c59fe883d\">\n   \u003C\u002Fa>\n   \u003Cbr>\n   \n   ### [Requestly - Free & Open-Source alternative to Postman](https:\u002F\u002Frequestly.com\u002Fawesomedatascience)\n   [All-in-one platform to Test, Mock and Intercept APIs](https:\u002F\u002Frequestly.com\u002Fawesomedatascience)\n   \u003Cbr>\n\u003C\u002Fdiv>\n\n\u003Chr>\n\n\u003Cdiv align=\"center\">\u003Cimg src=\".\u002Fassets\u002Fhead.jpg\">\u003C\u002Fdiv>\n\n# AWESOME DATA SCIENCE\n\n[![Awesome](https:\u002F\u002Fcdn.jsdelivr.net\u002Fgh\u002Fsindresorhus\u002Fawesome@d7305f38d29fed78fa85652e3a63e154dd8e8829\u002Fmedia\u002Fbadge.svg)](https:\u002F\u002Fgithub.com\u002Fsindresorhus\u002Fawesome) \n\nContributions are welcome - see [`CONTRIBUTING.md`](CONTRIBUTING.md).\n\n**An open-source Data Science repository to learn and apply concepts toward solving real- world problems.**\n\nThis is a shortcut path to start studying **Data Science**. Just follow the steps to answer the questions, \"What is Data Science, and what should I study to learn Data Science?\"\n\n\n\u003Cbr>\n\n\n## Sponsors\n\n| Sponsor | Pitch |\n| --- | --- |\n| --- | Be the first to sponsor! `github@academic.io` |\n\n\n\n## Table of Contents\n\n- [What is Data Science?](#what-is-data-science)\n- [Where do I Start?](#where-do-i-start)\n- [Agents](#agents)\n- [Training Resources](#training-resources)\n  - [Tutorials](#tutorials)\n  - [Free Courses](#free-courses)\n  - [Massively Open Online Courses](#moocs)\n  - [Intensive Programs](#intensive-programs)\n  - [Colleges](#colleges)\n- [The Data Science Toolbox](#the-data-science-toolbox)\n\n  - [Algorithms](#algorithms)\n    - [Supervised Learning](#supervised-learning)\n    - [Unsupervised Learning](#unsupervised-learning)\n    - [Semi-Supervised Learning](#semi-supervised-learning)\n    - [Reinforcement Learning](#reinforcement-learning)\n    - [Data Mining Algorithms](#data-mining-algorithms)\n    - [Deep Learning Architectures](#deep-learning-architectures)\n  - [General Machine Learning Packages](#general-machine-learning-packages)\n  - [Model Evaluation & Monitoring](#model-evaluation--monitoring)\n    - [Evidently AI](#evidently-ai)\n  - [Deep Learning Packages](#deep-learning-packages)\n    - [PyTorch Ecosystem](#pytorch-ecosystem)\n    - [TensorFlow Ecosystem](#tensorflow-ecosystem)\n    - [Keras Ecosystem](#keras-ecosystem)\n  - [Visualization Tools](#visualization-tools)\n  - [Miscellaneous Tools](#miscellaneous-tools)\n- [Literature and Media](#literature-and-media)\n  - [Books](#books)\n    - [Book Deals (Affiliated)](#book-deals-affiliated)\n  - [Journals, Publications, and Magazines](#journals-publications-and-magazines)\n  - [Newsletters](#newsletters)\n  - [Bloggers](#bloggers)\n  - [Presentations](#presentations)\n  - [Podcasts](#podcasts)\n  - [YouTube Videos & Channels](#youtube-videos--channels)\n- [Socialize](#socialize)\n  - [Facebook Accounts](#facebook-accounts)\n  - [Twitter Accounts](#twitter-accounts)\n  - [Telegram Channels](#telegram-channels)\n  - [Slack Communities](#slack-communities)\n  - [GitHub Groups](#github-groups)\n  - [Data Science Competitions](#data-science-competitions)\n- [Fun](#fun)\n  - [Infographics](#infographics)\n  - [Datasets](#datasets)\n  - [Comics](#comics)\n- [Other Awesome Lists](#other-awesome-lists)\n  - [Hobby](#hobby)\n\n## What is Data Science?\n**[`^        back to top        ^`](#awesome-data-science)**\n\nData Science is one of the hottest topics on the Computer and Internet farmland nowadays. People have gathered data from applications and systems until today and now is the time to analyze them. The next steps are producing suggestions from the data and creating predictions about the future. [Here](https:\u002F\u002Fwww.quora.com\u002FData-Science\u002FWhat-is-data-science) you can find the biggest question for **Data Science** and hundreds of answers from experts.\n\n\n| Link | Preview |\n| --- | --- |\n| [Data Science For Beginners](https:\u002F\u002Fgithub.com\u002Fmicrosoft\u002FData-Science-For-Beginners) | Microsoft are pleased to offer a 10-week, 20-lesson curriculum all about Data Science. |\n| [What is Data Science @ O'reilly](https:\u002F\u002Fwww.oreilly.com\u002Fideas\u002Fwhat-is-data-science) | _Data scientists combine entrepreneurship with patience, the willingness to build data products incrementally, the ability to explore, and the ability to iterate over a solution. They are inherently interdisciplinary. They can tackle all aspects of a problem, from initial data collection and data conditioning to drawing conclusions. They can think outside the box to come up with new ways to view the problem, or to work with very broadly defined problems: “here’s a lot of data, what can you make from it?”_ |\n| [What is Data Science @ Quora](https:\u002F\u002Fwww.quora.com\u002FData-Science\u002FWhat-is-data-science) | Data Science is a combination of a number of aspects of Data such as Technology, Algorithm development, and data interference to study the data, analyse it, and find innovative solutions to difficult problems. Basically Data Science is all about Analysing data and driving for business growth by finding creative ways. |\n| [The sexiest job of 21st century](https:\u002F\u002Fhbr.org\u002F2012\u002F10\u002Fdata-scientist-the-sexiest-job-of-the-21st-century) | _Data scientists today are akin to Wall Street “quants” of the 1980s and 1990s. In those days people with backgrounds in physics and math streamed to investment banks and hedge funds, where they could devise entirely new algorithms and data strategies. Then a variety of universities developed master’s programs in financial engineering, which churned out a second generation of talent that was more accessible to mainstream firms. The pattern was repeated later in the 1990s with search engineers, whose rarefied skills soon came to be taught in computer science programs._ |\n| [Wikipedia](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FData_science) | _Data science is an interdisciplinary field that uses scientific methods, processes, algorithms and systems to extract knowledge and insights from many structural and unstructured data. Data science is related to data mining, machine learning and big data._ |\n| [How to Become a Data Scientist](https:\u002F\u002Fwww.mastersindatascience.org\u002Fcareers\u002Fdata-scientist\u002F) | _Data scientists are big data wranglers, gathering and analyzing large sets of structured and unstructured data. A data scientist’s role combines computer science, statistics, and mathematics. They analyze, process, and model data then interpret the results to create actionable plans for companies and other organizations._ |\n| [a very short history of #datascience](https:\u002F\u002Fwww.forbes.com\u002Fsites\u002Fgilpress\u002F2013\u002F05\u002F28\u002Fa-very-short-history-of-data-science\u002F) | _The story of how data scientists became sexy is mostly the story of the coupling of the mature discipline of statistics with a very young one--computer science.  The term “Data Science” has emerged only recently to specifically designate a new profession that is expected to make sense of the vast stores of big data. But making sense of data has a long history and has been discussed by scientists, statisticians, librarians, computer scientists and others for years. The following timeline traces the evolution of the term “Data Science” and its use, attempts to define it, and related terms._ |\n|[Software Development Resources for Data Scientists](https:\u002F\u002Fwww.rstudio.com\u002Fblog\u002Fsoftware-development-resources-for-data-scientists\u002F)|_Data scientists concentrate on making sense of data through exploratory analysis, statistics, and models. Software developers apply a separate set of knowledge with different tools. Although their focus may seem unrelated, data science teams can benefit from adopting software development best practices. Version control, automated testing, and other dev skills help create reproducible, production-ready code and tools._|\n|[Data Scientist Roadmap](https:\u002F\u002Fwww.scaler.com\u002Fblog\u002Fhow-to-become-a-data-scientist\u002F)|_Data science is an excellent career choice in today’s data-driven world where approx 328.77 million terabytes of data are generated daily. And this number is only increasing day by day, which in turn increases the demand for skilled data scientists who can utilize this data to drive business growth._|\n|[Navigating Your Path to Becoming a Data Scientist](https:\u002F\u002Fwww.appliedaicourse.com\u002Fblog\u002Fhow-to-become-a-data-scientist\u002F)|_Data science is one of the most in-demand careers today. With businesses increasingly relying on data to make decisions, the need for skilled data scientists has grown rapidly. Whether it’s tech companies, healthcare organizations, or even government institutions, data scientists play a crucial role in turning raw data into valuable insights. But how do you become a data scientist, especially if you’re just starting out? _|\n\n## Where do I Start?\n**[`^        back to top        ^`](#awesome-data-science)**\n\nWhile not strictly necessary, having a programming language is a crucial skill to be effective as a data scientist. Currently, the most popular language is _Python_, closely followed by _R_. Python is a general-purpose scripting language that sees applications in a wide variety of fields. R is a domain-specific language for statistics, which contains a lot of common statistics tools out of the box.\n\n[Python](https:\u002F\u002Fpython.org\u002F) is by far the most popular language in science, due in no small part to the ease at which it can be used and the vibrant ecosystem of user-generated packages. To install packages, there are two main methods: Pip (invoked as `pip install`), the package manager that comes bundled with Python, and [Anaconda](https:\u002F\u002Fwww.anaconda.com) (invoked as `conda install`), a powerful package manager that can install packages for Python, R, and can download executables like Git. \n\nUnlike R, Python was not built from the ground up with data science in mind, but there are plenty of third party libraries to make up for this. A much more exhaustive list of packages can be found later in this document, but these four packages are a good set of choices to start your data science journey with: [Scikit-Learn](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Findex.html) is a general-purpose data science package which implements the most popular algorithms - it also includes rich documentation, tutorials, and examples of the models it implements. Even if you prefer to write your own implementations, Scikit-Learn is a valuable reference to the nuts-and-bolts behind many of the common algorithms you'll find. With [Pandas](https:\u002F\u002Fpandas.pydata.org\u002F), one can collect and analyze their data into a convenient table format. [Numpy](https:\u002F\u002Fnumpy.org\u002F) provides very fast tooling for mathematical operations, with a focus on vectors and matrices. [Seaborn](https:\u002F\u002Fseaborn.pydata.org\u002F), itself based on the [Matplotlib](https:\u002F\u002Fmatplotlib.org\u002F) package, is a quick way to generate beautiful visualizations of your data, with many good defaults available out of the box, as well as a gallery showing how to produce many common visualizations of your data.\n\nWhen embarking on your journey to becoming a data scientist, the choice of language isn't particularly important, and both Python and R have their pros and cons. Pick a language you like, and check out one of the [Free courses](#free-courses) we've listed below!\n\n### Beginner Roadmap\nIf you're just starting out, here's a simple recommended path:\n\n1. **Learn Python** – Start with basics: variables, loops, functions\n2. **Learn core libraries** – Pandas, NumPy, Matplotlib, Scikit-Learn\n3. **Practice with beginner projects** – Try Titanic survival or house price prediction on Kaggle\n4. **Learn Math basics** – Statistics, Linear Algebra, Probability\n5. **Move into ML** – Supervised learning → Unsupervised → Deep Learning\n\n## Agents\n\nThis section contains agent frameworks and tools that are useful for data science workflows.\n\n### Frameworks\n- [ADK-Rust](https:\u002F\u002Fgithub.com\u002Fzavora-ai\u002Fadk-rust) - Production-ready AI agent development kit for Rust with model-agnostic design (Gemini, OpenAI, Anthropic), multiple agent types (LLM, Graph, Workflow), MCP support, and built-in telemetry.\n\n### Tools\n- [Frostbyte MCP](https:\u002F\u002Fgithub.com\u002FOzorOwn\u002Ffrostbyte-mcp) - MCP server providing 13 data tools for AI agents: real-time crypto prices, IP geolocation, DNS lookups, web scraping to markdown, code execution, and screenshots. One API key for 40+ services.\n- [Arch Tools](https:\u002F\u002Farchtools.dev) - 61 production-ready AI API tools for data science workflows: code analysis, web scraping, NLP, image generation, crypto data, and search. REST API and MCP protocol support. [GitHub](https:\u002F\u002Fgithub.com\u002FDeesmo\u002FArch-AI-Tools)\n- [Not Human Search](https:\u002F\u002Fnothumansearch.ai) - Search engine for AI agents that indexes 9,000+ AI tools and APIs, scoring each on agentic readiness (llms.txt, OpenAPI, MCP, ai-plugin.json). REST API and MCP server for programmatic tool discovery. [GitHub](https:\u002F\u002Fgithub.com\u002Funitedideas\u002Fnothumansearch)\n- [DeepAlpha](https:\u002F\u002Fgithub.com\u002Fstefanoviana\u002Fdeepalpha) - AI crypto trading framework using LightGBM + XGBoost ensemble with 72 ML features. 70.9% walk-forward validated accuracy on out-of-sample data. Supports Bybit and Binance. MIT licensed, available on [PyPI](https:\u002F\u002Fpypi.org\u002Fproject\u002Fdeepalpha-bot\u002F).\n\n### Research & Knowledge Retrieval\n- [BGPT MCP](https:\u002F\u002Fbgpt.pro\u002Fmcp) - MCP server that gives AI agents access to a database of scientific papers built from raw experimental data extracted from full-text studies. Returns 25+ structured fields per paper including methods, results, sample sizes, and quality scores. [GitHub](https:\u002F\u002Fgithub.com\u002Fconnerlambden\u002Fbgpt-mcp)\n\n### Workflow\n**[`^        back to top        ^`](#awesome-data-science)**\n- [sim](https:\u002F\u002Fsim.ai) - Sim Studio's interface is a lightweight, intuitive way to quickly build and deploy LLMs that connect with your favorite tools.\n\n\n## Training Resources\n**[`^        back to top        ^`](#awesome-data-science)**\n\nHow do you learn data science? By doing data science, of course! Okay, okay - that might not be particularly helpful when you're first starting out. In this section, we've listed some learning resources, in rough order from least to greatest commitment - [Tutorials](#tutorials), [Massively Open Online Courses (MOOCs)](#moocs), [Intensive Programs](#intensive-programs), and [Colleges](#colleges).\n\n\n### Tutorials\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [1000 Data Science Projects](https:\u002F\u002Fcloud.blobcity.com\u002F#\u002Fps\u002Fexplore) you can run on the browser with IPython.\n- [#tidytuesday](https:\u002F\u002Fgithub.com\u002Frfordatascience\u002Ftidytuesday) - A weekly data project aimed at the R ecosystem.\n- [Data science your way](https:\u002F\u002Fgithub.com\u002Fjadianes\u002Fdata-science-your-way)\n- [DataCamp Cheatsheets](https:\u002F\u002Fwww.datacamp.com\u002Fcheat-sheet) Cheatsheets for data science.\n- [PySpark Cheatsheet](https:\u002F\u002Fgithub.com\u002Fkevinschaich\u002Fpyspark-cheatsheet)\n- [Machine Learning, Data Science and Deep Learning with Python ](https:\u002F\u002Fwww.manning.com\u002Flivevideo\u002Fmachine-learning-data-science-and-deep-learning-with-python)\n- [Your Guide to Latent Dirichlet Allocation](https:\u002F\u002Fmedium.com\u002F@lettier\u002Fhow-does-lda-work-ill-explain-using-emoji-108abf40fa7d)\n- [Tutorials of source code from the book Genetic Algorithms with Python by Clinton Sheppard](https:\u002F\u002Fgithub.com\u002Fhandcraftsman\u002FGeneticAlgorithmsWithPython)\n- [Tutorials to get started on signal processing for machine learning](https:\u002F\u002Fgithub.com\u002Fjinglescode\u002Fpython-signal-processing)\n- [Realtime deployment](https:\u002F\u002Fwww.microprediction.com\u002Fpython-1) Tutorial on Python time-series model deployment.\n- [Python for Data Science: A Beginner’s Guide](https:\u002F\u002Flearntocodewith.me\u002Fposts\u002Fpython-for-data-science\u002F)\n- [Minimum Viable Study Plan for Machine Learning Interviews](https:\u002F\u002Fgithub.com\u002Fkhangich\u002Fmachine-learning-interview)\n- [Understand and Know Machine Learning Engineering by Building Solid Projects](http:\u002F\u002Fmlzoomcamp.com\u002F)\n- [12 free Data Science projects to practice Python and Pandas](https:\u002F\u002Fwww.datawars.io\u002Farticles\u002F12-free-data-science-projects-to-practice-python-and-pandas)\n- [Best CV\u002FResume for Data Science Freshers](https:\u002F\u002Fenhancv.com\u002Fresume-examples\u002Fdata-scientist\u002F)\n- [Understand Data Science Course in Java](https:\u002F\u002Fwww.alter-solutions.com\u002Farticles\u002Fjava-data-science)\n- [Data Analytics Interview Questions (Beginner to Advanced)](https:\u002F\u002Fwww.appliedaicourse.com\u002Fblog\u002Fdata-analytics-interview-questions\u002F)\n- [Top 100+ Data Science Interview Questions and Answers](https:\u002F\u002Fwww.appliedaicourse.com\u002Fblog\u002Fdata-science-interview-questions\u002F)\n- [DataDriven - SQL, Python, and Data Modeling Interview Questions](https:\u002F\u002Fwww.datadriven.io\u002F)\n\n### Free Courses\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [Data Scientist with R](https:\u002F\u002Fwww.datacamp.com\u002Ftracks\u002Fdata-scientist-with-r)\n- [Data Scientist with Python](https:\u002F\u002Fwww.datacamp.com\u002Ftracks\u002Fdata-scientist-with-python)\n- [Genetic Algorithms OCW Course](https:\u002F\u002Focw.mit.edu\u002Fcourses\u002Felectrical-engineering-and-computer-science\u002F6-034-artificial-intelligence-fall-2010\u002Flecture-videos\u002Flecture-1-introduction-and-scope\u002F)\n- [AI Expert Roadmap](https:\u002F\u002Fgithub.com\u002FAMAI-GmbH\u002FAI-Expert-Roadmap) - Roadmap to becoming an Artificial Intelligence Expert\n- [Convex Optimization](https:\u002F\u002Fwww.edx.org\u002Fcourse\u002Fconvex-optimization) - Convex Optimization (basics of convex analysis; least-squares, linear and quadratic programs, semidefinite programming, minimax, extremal volume, and other problems; optimality conditions, duality theory...)\n- [Learning from Data](https:\u002F\u002Fhome.work.caltech.edu\u002Ftelecourse.html) - Introduction to machine learning covering basic theory, algorithms and applications\n- [Kaggle](https:\u002F\u002Fwww.kaggle.com\u002Flearn) - Learn about Data Science, Machine Learning, Python etc\n- [ML Observability Fundamentals](https:\u002F\u002Farize.com\u002Fml-observability-fundamentals\u002F) - Learn how to monitor and root-cause production ML issues.\n- [Weights & Biases Effective MLOps: Model Development](https:\u002F\u002Fwww.wandb.courses\u002Fcourses\u002Feffective-mlops-model-development) - Free Course and Certification for building an end-to-end machine using W&B\n- [Python for Data Science by Scaler](https:\u002F\u002Fwww.scaler.com\u002Ftopics\u002Fcourse\u002Fpython-for-data-science\u002F) - This course is designed to empower beginners with the essential skills to excel in today's data-driven world. The comprehensive curriculum will give you a solid foundation in statistics, programming, data visualization, and machine learning.\n- [MLSys-NYU-2022](https:\u002F\u002Fgithub.com\u002Fjacopotagliabue\u002FMLSys-NYU-2022\u002Ftree\u002Fmain) - Slides, scripts and materials for the Machine Learning in Finance course at NYU Tandon, 2022.\n- [Hands-on Train and Deploy ML](https:\u002F\u002Fgithub.com\u002FPaulescu\u002Fhands-on-train-and-deploy-ml) - A hands-on course to train and deploy a serverless API that predicts crypto prices.\n- [LLMOps: Building Real-World Applications With Large Language Models](https:\u002F\u002Fwww.comet.com\u002Fsite\u002Fllm-course\u002F) - Learn to build modern software with LLMs using the newest tools and techniques in the field.\n- [Prompt Engineering for Vision Models](https:\u002F\u002Fwww.deeplearning.ai\u002Fshort-courses\u002Fprompt-engineering-for-vision-models\u002F) - Learn to prompt cutting-edge computer vision models with natural language, coordinate points, bounding boxes, segmentation masks, and even other images in this free course from DeepLearning.AI.\n- [Data Science Course By IBM](https:\u002F\u002Fskillsbuild.org\u002Fstudents\u002Fcourse-catalog\u002Fdata-science) - Free resources and learn what data science is and how it’s used in different industries.\n\n\n  \n### MOOC's\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [Coursera Introduction to Data Science](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fdata-science)\n- [Data Science - 9 Steps Courses, A Specialization on Coursera](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fjhu-data-science)\n- [Data Mining - 5 Steps Courses, A Specialization on Coursera](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fdata-mining)\n- [Machine Learning – 5 Steps Courses, A Specialization on Coursera](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fmachine-learning)\n- [CS 109 Data Science](https:\u002F\u002Fcs109.github.io\u002F2015\u002F)\n- [OpenIntro](https:\u002F\u002Fwww.openintro.org\u002F)\n- [CS 171 Visualization](https:\u002F\u002Fwww.cs171.org\u002F#!index.md)\n- [Process Mining: Data science in Action](https:\u002F\u002Fwww.coursera.org\u002Flearn\u002Fprocess-mining)\n- [Oxford Deep Learning](https:\u002F\u002Fwww.cs.ox.ac.uk\u002Fprojects\u002FDeepLearn\u002F)\n- [Oxford Deep Learning - video](https:\u002F\u002Fwww.youtube.com\u002Fplaylist?list=PLE6Wd9FR--EfW8dtjAuPoTuPcqmOV53Fu)\n- [Oxford Machine Learning](https:\u002F\u002Fwww.cs.ox.ac.uk\u002Fresearch\u002Fai_ml\u002Findex.html)\n- [UBC Machine Learning - video](https:\u002F\u002Fwww.cs.ubc.ca\u002F~nando\u002F540-2013\u002Flectures.html)\n- [Data Science Specialization](https:\u002F\u002Fgithub.com\u002FDataScienceSpecialization\u002Fcourses)\n- [Coursera Big Data Specialization](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fbig-data)\n- [Statistical Thinking for Data Science and Analytics by Edx](https:\u002F\u002Fwww.edx.org\u002Fcourse\u002Fstatistical-thinking-for-data-science-and-analytic)\n- [Cognitive Class AI by IBM](https:\u002F\u002Fcognitiveclass.ai\u002F)\n- [Udacity - Deep Learning](https:\u002F\u002Fwww.udacity.com\u002Fcourse\u002Fintro-to-tensorflow-for-deep-learning--ud187)\n- [Keras in Motion](https:\u002F\u002Fwww.manning.com\u002Flivevideo\u002Fkeras-in-motion)\n- [Microsoft Professional Program for Data Science](https:\u002F\u002Facademy.microsoft.com\u002Fen-us\u002Fprofessional-program\u002Ftracks\u002Fdata-science\u002F)\n- [COMP3222\u002FCOMP6246 - Machine Learning Technologies](https:\u002F\u002Ftdgunes.com\u002FCOMP6246-2019Fall\u002F)\n- [CS 231 - Convolutional Neural Networks for Visual Recognition](https:\u002F\u002Fcs231n.github.io\u002F)\n- [Coursera Tensorflow in practice](https:\u002F\u002Fwww.coursera.org\u002Fprofessional-certificates\u002Ftensorflow-in-practice)\n- [Coursera Deep Learning Specialization](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fdeep-learning)\n- [365 Data Science Course](https:\u002F\u002F365datascience.com\u002F)\n- [Coursera Natural Language Processing Specialization](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fnatural-language-processing)\n- [Coursera GAN Specialization](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fgenerative-adversarial-networks-gans)\n- [Codecademy's Data Science](https:\u002F\u002Fwww.codecademy.com\u002Flearn\u002Fpaths\u002Fdata-science)\n- [Linear Algebra](https:\u002F\u002Focw.mit.edu\u002Fcourses\u002F18-06sc-linear-algebra-fall-2011\u002F) - Linear Algebra course by Gilbert Strang\n- [A 2020 Vision of Linear Algebra (G. Strang)](https:\u002F\u002Focw.mit.edu\u002Fresources\u002Fres-18-010-a-2020-vision-of-linear-algebra-spring-2020\u002F)\n- [Python for Data Science Foundation Course](https:\u002F\u002Fintellipaat.com\u002Facademy\u002Fcourse\u002Fpython-for-data-science-free-training\u002F)\n- [Data Science: Statistics & Machine Learning](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fdata-science-statistics-machine-learning)\n- [Machine Learning Engineering for Production (MLOps)](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Fmachine-learning-engineering-for-production-mlops)\n- [Recommender Systems Specialization from University of Minnesota](https:\u002F\u002Fwww.coursera.org\u002Fspecializations\u002Frecommender-systems) is an intermediate\u002Fadvanced level specialization focused on Recommender System on the Coursera platform.\n- [Stanford Artificial Intelligence Professional Program](https:\u002F\u002Fonline.stanford.edu\u002Fprograms\u002Fartificial-intelligence-professional-program)\n- [Data Scientist with Python](https:\u002F\u002Fapp.datacamp.com\u002Flearn\u002Fcareer-tracks\u002Fdata-scientist-with-python)\n- [Programming with Julia](https:\u002F\u002Fwww.udemy.com\u002Fcourse\u002Fprogramming-with-julia\u002F)\n- [Scaler Data Science & Machine Learning Program](https:\u002F\u002Fwww.scaler.com\u002Fdata-science-course\u002F)\n- [Data Science Skill Tree](https:\u002F\u002Flabex.io\u002Fskilltrees\u002Fdata-science)\n- [Data Science for Beginners - Learn with AI tutor](https:\u002F\u002Fcodekidz.ai\u002Flesson-intro\u002Fdata-science-368dbf)\n- [Machine Learning for Beginners - Learn with AI tutor](https:\u002F\u002Fcodekidz.ai\u002Flesson-intro\u002Fmachine-lear-36abfb)\n- [Introduction to Data Science](https:\u002F\u002Fwww.mygreatlearning.com\u002Facademy\u002Flearn-for-free\u002Fcourses\u002Fintroduction-to-data-science)\n-[Getting Started with Python for Data Science](https:\u002F\u002Fwww.codecademy.com\u002Flearn\u002Fgetting-started-with-python-for-data-science) \n- [Google Advanced Data Analytics Certificate](https:\u002F\u002Fgrow.google\u002Fdata-analytics\u002F) – Professional courses in data analysis, statistics, and machine learning fundamentals.\n- [Maschinelle Sprachgebrauchsanalyse - Grundlagen der Korpuslinguistik](https:\u002F\u002Fwww.twillo.de\u002Fedu-sharing\u002Fcomponents\u002Fcollections?id=e6ce03ae-4660-49b0-be10-dcc92e71e796) - course material on text-mining \u002F corpus-linguistics *in German* funded by the federal state of North Rhine-Westphalia\n- [Programmieren für Germanist*innen](https:\u002F\u002Fwww.twillo.de\u002Fedu-sharing\u002Fcomponents\u002Fcollections?id=16bac749-f10e-483f-9020-5d6365b4e092) - course material: programming in python *in German* for digital humanities - funded by the federal state of North Rhine-Westphalia\n\n### Intensive Programs\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [S2DS](https:\u002F\u002Fwww.s2ds.org\u002F)\n- [WorldQuant University Applied Data Science Lab](https:\u002F\u002Fwww.wqu.edu\u002Fadsl)\n\n\n### Colleges\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [A list of colleges and universities offering degrees in data science.](https:\u002F\u002Fgithub.com\u002Fryanswanstrom\u002Fawesome-datascience-colleges)\n- [Data Science Degree @ Berkeley](https:\u002F\u002Fischoolonline.berkeley.edu\u002Fdata-science\u002F)\n- [Data Science Degree @ UVA](https:\u002F\u002Fdatascience.virginia.edu\u002F)\n- [Data Science Degree @ Wisconsin](https:\u002F\u002Fdatasciencedegree.wisconsin.edu\u002F)\n- [BS in Data Science & Applications](https:\u002F\u002Fstudy.iitm.ac.in\u002Fds\u002F)\n- [MS in Computer Information Systems @ Boston University](https:\u002F\u002Fwww.bu.edu\u002Fonline\u002Fprograms\u002Fgraduate-programs\u002Fcomputer-information-systems-masters-degree\u002F)\n- [MS in Business Analytics @ ASU Online](https:\u002F\u002Fasuonline.asu.edu\u002Fonline-degree-programs\u002Fgraduate\u002Fmaster-science-business-analytics\u002F)\n- [MS in Applied Data Science @ Syracuse](https:\u002F\u002Fischool.syr.edu\u002Facademics\u002Fapplied-data-science-masters-degree\u002F)\n- [M.S. Management & Data Science @ Leuphana](https:\u002F\u002Fwww.leuphana.de\u002Fen\u002Fgraduate-school\u002Fmasters-programmes\u002Fmanagement-data-science.html)\n- [Master of Data Science @ Melbourne University](https:\u002F\u002Fstudy.unimelb.edu.au\u002Ffind\u002Fcourses\u002Fgraduate\u002Fmaster-of-data-science\u002F#overview)\n- [Msc in Data Science @ The University of Edinburgh](https:\u002F\u002Fwww.ed.ac.uk\u002Fstudying\u002Fpostgraduate\u002Fdegrees\u002Findex.php?r=site\u002Fview&id=902)\n- [Master of Management Analytics @ Queen's University](https:\u002F\u002Fsmith.queensu.ca\u002Fgrad_studies\u002Fmma\u002Findex.php)\n- [Master of Data Science @ Illinois Institute of Technology](https:\u002F\u002Fwww.iit.edu\u002Facademics\u002Fprograms\u002Fdata-science-mas)\n- [Master of Applied Data Science @ The University of Michigan](https:\u002F\u002Fwww.si.umich.edu\u002Fprograms\u002Fmaster-applied-data-science)\n- [Master Data Science and Artificial Intelligence @ Eindhoven University of Technology](https:\u002F\u002Fwww.tue.nl\u002Fen\u002Feducation\u002Fgraduate-school\u002Fmaster-data-science-and-artificial-intelligence\u002F)\n- [Master's Degree in Data Science and Computer Engineering @ University of Granada](https:\u002F\u002Fmasteres.ugr.es\u002Fdatcom\u002F)\n\n## The Data Science Toolbox\n**[`^        back to top        ^`](#awesome-data-science)**\n\nThis section is a collection of packages, tools, algorithms, and other useful items in the data science world.\n\n### Algorithms\n**[`^        back to top        ^`](#awesome-data-science)**\n\nThese are some Machine Learning and Data Mining algorithms and models help you to understand your data and derive meaning from it.\n\n#### Three kinds of Machine Learning Systems\n\n- Based on training with human supervision\n- Based on learning incrementally on fly\n- Based on data points comparison and pattern detection\n\n### Comparison\n- [datacompy](https:\u002F\u002Fgithub.com\u002Fcapitalone\u002Fdatacompy) - DataComPy is a package to compare two Pandas DataFrames.\n\n#### Supervised Learning\n\n- [Regression](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FRegression)\n- [Linear Regression](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FLinear_regression)\n- [Ordinary Least Squares](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FOrdinary_least_squares)\n- [Logistic Regression](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FLogistic_regression)\n- [Stepwise Regression](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FStepwise_regression)\n- [Multivariate Adaptive Regression Splines](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FMultivariate_adaptive_regression_spline)\n- [Softmax Regression](https:\u002F\u002Fd2l.ai\u002Fchapter_linear-classification\u002Fsoftmax-regression.html)\n- [Locally Estimated Scatterplot Smoothing](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FLocal_regression)\n- Classification\n  - [k-nearest neighbor](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FK-nearest_neighbors_algorithm)\n  - [Support Vector Machines](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FSupport_vector_machine)\n  - [Decision Trees](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FDecision_tree)\n  - [ID3 algorithm](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FID3_algorithm)\n  - [C4.5 algorithm](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FC4.5_algorithm)\n- [Ensemble Learning](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fensemble.html)\n  - [Boosting](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FBoosting_(machine_learning))\n  - [Stacking](https:\u002F\u002Fmachinelearningmastery.com\u002Fstacking-ensemble-machine-learning-with-python)\n  - [Bagging](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FBootstrap_aggregating)\n  - [Random Forest](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FRandom_forest)\n  - [AdaBoost](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FAdaBoost)\n\n#### Unsupervised Learning\n- [Clustering](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fclustering.html#clustering)\n  - [Hierchical clustering](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fclustering.html#hierarchical-clustering)\n  - [k-means](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fclustering.html#k-means)\n  - [Density-based clustering](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fclustering.html#dbscan)\n  - [Fuzzy clustering](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FFuzzy_clustering)\n  - [Mixture models](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FMixture_model)\n- [Dimension Reduction](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FDimensionality_reduction)\n  - [Principal Component Analysis (PCA)](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fdecomposition.html#principal-component-analysis-pca)\n  - [t-SNE; t-distributed Stochastic Neighbor Embedding](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fmanifold.html#t-distributed-stochastic-neighbor-embedding-tsne)\n  - [Factor Analysis](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fdecomposition.html#factor-analysis)\n  - [Latent Dirichlet Allocation (LDA)](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002Fmodules\u002Fdecomposition.html#latent-dirichlet-allocation-lda)\n- [Neural Networks](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FNeural_network)\n- [Self-organizing map](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FSelf-organizing_map)\n- [Adaptive resonance theory](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FAdaptive_resonance_theory)\n- [Hidden Markov Models (HMM)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FHidden_Markov_model)\n\n#### Semi-Supervised Learning\n\n- S3VM\n- [Clustering](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FWeak_supervision#Cluster_assumption)\n- [Generative models](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FWeak_supervision#Generative_models)\n- [Low-density separation](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FWeak_supervision#Low-density_separation)\n- [Laplacian regularization](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FWeak_supervision#Laplacian_regularization)\n- [Heuristic approaches](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FWeak_supervision#Heuristic_approaches)\n\n#### Reinforcement Learning\n\n- [Q Learning](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FQ-learning)\n- [SARSA (State-Action-Reward-State-Action) algorithm](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FState%E2%80%93action%E2%80%93reward%E2%80%93state%E2%80%93action)\n- [Temporal difference learning](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FTemporal_difference_learning#:~:text=Temporal%20difference%20(TD)%20learning%20refers,estimate%20of%20the%20value%20function.)\n\n#### Data Mining Algorithms\n\n- [C4.5](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FC4.5_algorithm)\n- [k-Means](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FK-means_clustering)\n- [SVM (Support Vector Machine)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FSupport_vector_machine)\n- [Apriori](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FApriori_algorithm)\n- [EM (Expectation-Maximization)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FExpectation%E2%80%93maximization_algorithm)\n- [PageRank](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FPageRank)\n- [AdaBoost](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FAdaBoost)\n- [KNN (K-Nearest Neighbors)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FK-nearest_neighbors_algorithm)\n- [Naive Bayes](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FNaive_Bayes_classifier)\n- [CART (Classification and Regression Trees)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FDecision_tree_learning)\n#### Modern Data Mining Algorithms\n\n- [XGBoost (Extreme Gradient Boosting)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FXGBoost)\n- [LightGBM (Light Gradient Boosting Machine)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FLightGBM)\n- [CatBoost](https:\u002F\u002Fcatboost.ai\u002F)\n- [HDBSCAN (Hierarchical Density-Based Spatial Clustering of Applications with Noise)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FDBSCAN#HDBSCAN)\n- [FP-Growth (Frequent Pattern Growth Algorithm)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FAssociation_rule_learning#FP-growth_algorithm)\n- [Isolation Forest](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FIsolation_forest)\n- [Deep Embedded Clustering (DEC)](https:\u002F\u002Farxiv.org\u002Fabs\u002F1511.06335)\n- [TPU (Top-k Periodic and High-Utility Patterns)](https:\u002F\u002Farxiv.org\u002Fabs\u002F2509.15732)\n- [Context-Aware Rule Mining (Transformer-Based Framework)](https:\u002F\u002Farxiv.org\u002Fabs\u002F2503.11125)\n\n\n#### Deep Learning architectures\n\n- [Multilayer Perceptron](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FMultilayer_perceptron)\n- [Convolutional Neural Network (CNN)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FConvolutional_neural_network)\n- [Recurrent Neural Network (RNN)](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FRecurrent_neural_network)\n- [Boltzmann Machines](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FBoltzmann_machine)\n- [Autoencoder](https:\u002F\u002Fwww.tensorflow.org\u002Ftutorials\u002Fgenerative\u002Fautoencoder)\n- [Generative Adversarial Network (GAN)](https:\u002F\u002Fdevelopers.google.com\u002Fmachine-learning\u002Fgan\u002Fgan_structure)\n- [Self-Organized Maps](https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FSelf-organizing_map)\n- [Transformer](https:\u002F\u002Fwww.tensorflow.org\u002Ftext\u002Ftutorials\u002Ftransformer)\n- [Conditional Random Field (CRF)](https:\u002F\u002Ftowardsdatascience.com\u002Fconditional-random-fields-explained-e5b8256da776)\n- [ML System Designs)](https:\u002F\u002Fwww.evidentlyai.com\u002Fml-system-design)\n\n### General Machine Learning Packages\n**[`^        back to top        ^`](#awesome-data-science)**\n\n* [scikit-learn](https:\u002F\u002Fscikit-learn.org\u002F)\n* [scikit-multilearn](https:\u002F\u002Fgithub.com\u002Fscikit-multilearn\u002Fscikit-multilearn)\n* [sklearn-expertsys](https:\u002F\u002Fgithub.com\u002Ftmadl\u002Fsklearn-expertsys)\n* [scikit-feature](https:\u002F\u002Fgithub.com\u002Fjundongl\u002Fscikit-feature)\n* [scikit-rebate](https:\u002F\u002Fgithub.com\u002FEpistasisLab\u002Fscikit-rebate)\n* [seqlearn](https:\u002F\u002Fgithub.com\u002Flarsmans\u002Fseqlearn)\n* [sklearn-bayes](https:\u002F\u002Fgithub.com\u002FAmazaspShumik\u002Fsklearn-bayes)\n* [sklearn-crfsuite](https:\u002F\u002Fgithub.com\u002FTeamHG-Memex\u002Fsklearn-crfsuite)\n* [sklearn-deap](https:\u002F\u002Fgithub.com\u002Frsteca\u002Fsklearn-deap)\n* [sigopt_sklearn](https:\u002F\u002Fgithub.com\u002Fsigopt\u002Fsigopt-sklearn)\n* [sklearn-evaluation](https:\u002F\u002Fgithub.com\u002Fedublancas\u002Fsklearn-evaluation)\n* [scikit-image](https:\u002F\u002Fgithub.com\u002Fscikit-image\u002Fscikit-image)\n* [scikit-opt](https:\u002F\u002Fgithub.com\u002Fguofei9987\u002Fscikit-opt)\n* [scikit-posthocs](https:\u002F\u002Fgithub.com\u002Fmaximtrp\u002Fscikit-posthocs)\n* [feature-engine](https:\u002F\u002Ffeature-engine.trainindata.com\u002F)\n* [pystruct](https:\u002F\u002Fgithub.com\u002Fpystruct\u002Fpystruct)\n* [Shogun](https:\u002F\u002Fwww.shogun-toolbox.org\u002F)\n* [xLearn](https:\u002F\u002Fgithub.com\u002Faksnzhy\u002Fxlearn)\n* [cuML](https:\u002F\u002Fgithub.com\u002Frapidsai\u002Fcuml)\n* [causalml](https:\u002F\u002Fgithub.com\u002Fuber\u002Fcausalml)\n* [mlpack](https:\u002F\u002Fgithub.com\u002Fmlpack\u002Fmlpack)\n* [MLxtend](https:\u002F\u002Fgithub.com\u002Frasbt\u002Fmlxtend)\n* [modAL](https:\u002F\u002Fgithub.com\u002FmodAL-python\u002FmodAL)\n* [Sparkit-learn](https:\u002F\u002Fgithub.com\u002Flensacom\u002Fsparkit-learn)\n* [hyperlearn](https:\u002F\u002Fgithub.com\u002Fdanielhanchen\u002Fhyperlearn)\n* [dlib](https:\u002F\u002Fgithub.com\u002Fdavisking\u002Fdlib)\n* [imodels](https:\u002F\u002Fgithub.com\u002Fcsinva\u002Fimodels)\n* [jSciPy](https:\u002F\u002Fgithub.com\u002Fhissain\u002Fjscipy) - A Java port of SciPy's signal processing module, offering filters, transformations, and other scientific computing utilities.\n* [RuleFit](https:\u002F\u002Fgithub.com\u002FchristophM\u002Frulefit)\n* [pyGAM](https:\u002F\u002Fgithub.com\u002Fdswah\u002FpyGAM)\n* [Deepchecks](https:\u002F\u002Fgithub.com\u002Fdeepchecks\u002Fdeepchecks)\n* [scikit-survival](https:\u002F\u002Fscikit-survival.readthedocs.io\u002Fen\u002Fstable)\n* [interpretable](https:\u002F\u002Fpypi.org\u002Fproject\u002Finterpretable)\n* [XGBoost](https:\u002F\u002Fgithub.com\u002Fdmlc\u002Fxgboost)\n* [LightGBM](https:\u002F\u002Fgithub.com\u002Fmicrosoft\u002FLightGBM)\n* [CatBoost](https:\u002F\u002Fgithub.com\u002Fcatboost\u002Fcatboost)\n* [PerpetualBooster](https:\u002F\u002Fgithub.com\u002Fperpetual-ml\u002Fperpetual)\n* [JAX](https:\u002F\u002Fgithub.com\u002Fgoogle\u002Fjax)\n\n\n\n### Deep Learning Packages\n\n#### PyTorch Ecosystem\n* [PyTorch](https:\u002F\u002Fgithub.com\u002Fpytorch\u002Fpytorch)\n* [torchvision](https:\u002F\u002Fgithub.com\u002Fpytorch\u002Fvision)\n* [torchtext](https:\u002F\u002Fgithub.com\u002Fpytorch\u002Ftext)\n* [torchaudio](https:\u002F\u002Fgithub.com\u002Fpytorch\u002Faudio)\n* [ignite](https:\u002F\u002Fgithub.com\u002Fpytorch\u002Fignite)\n* [PyTorchNet](https:\u002F\u002Fgithub.com\u002Fpytorch\u002Ftnt)\n* [PyToune](https:\u002F\u002Fgithub.com\u002FGRAAL-Research\u002Fpoutyne)\n* [skorch](https:\u002F\u002Fgithub.com\u002Fskorch-dev\u002Fskorch)\n* [PyVarInf](https:\u002F\u002Fgithub.com\u002Fctallec\u002Fpyvarinf)\n* [pytorch_geometric](https:\u002F\u002Fgithub.com\u002Fpyg-team\u002Fpytorch_geometric)\n* [GPyTorch](https:\u002F\u002Fgithub.com\u002Fcornellius-gp\u002Fgpytorch)\n* [pyro](https:\u002F\u002Fgithub.com\u002Fpyro-ppl\u002Fpyro)\n* [Catalyst](https:\u002F\u002Fgithub.com\u002Fcatalyst-team\u002Fcatalyst)\n* [pytorch_tabular](https:\u002F\u002Fgithub.com\u002Fmanujosephv\u002Fpytorch_tabular)\n* [Yolov3](https:\u002F\u002Fgithub.com\u002Fultralytics\u002Fyolov3)\n* [Yolov5](https:\u002F\u002Fgithub.com\u002Fultralytics\u002Fyolov5)\n* [Yolov8](https:\u002F\u002Fgithub.com\u002Fultralytics\u002Fultralytics)\n\n#### TensorFlow Ecosystem\n* [TensorFlow](https:\u002F\u002Fgithub.com\u002Ftensorflow\u002Ftensorflow)\n* [TensorLayer](https:\u002F\u002Fgithub.com\u002Ftensorlayer\u002FTensorLayer)\n* [TFLearn](https:\u002F\u002Fgithub.com\u002Ftflearn\u002Ftflearn)\n* [Sonnet](https:\u002F\u002Fgithub.com\u002Fdeepmind\u002Fsonnet)\n* [tensorpack](https:\u002F\u002Fgithub.com\u002Ftensorpack\u002Ftensorpack)\n* [TRFL](https:\u002F\u002Fgithub.com\u002Fdeepmind\u002Ftrfl)\n* [Polyaxon](https:\u002F\u002Fgithub.com\u002Fpolyaxon\u002Fpolyaxon)\n* [NeuPy](https:\u002F\u002Fgithub.com\u002Fitdxer\u002Fneupy)\n* [tfdeploy](https:\u002F\u002Fgithub.com\u002Friga\u002Ftfdeploy)\n* [tensorflow-upstream](https:\u002F\u002Fgithub.com\u002FROCmSoftwarePlatform\u002Ftensorflow-upstream)\n* [TensorFlow Fold](https:\u002F\u002Fgithub.com\u002Ftensorflow\u002Ffold)\n* [tensorlm](https:\u002F\u002Fgithub.com\u002Fbatzner\u002Ftensorlm)\n* [TensorLight](https:\u002F\u002Fgithub.com\u002Fbsautermeister\u002Ftensorlight)\n* [Mesh TensorFlow](https:\u002F\u002Fgithub.com\u002Ftensorflow\u002Fmesh)\n* [Ludwig](https:\u002F\u002Fgithub.com\u002Fludwig-ai\u002Fludwig)\n* [TF-Agents](https:\u002F\u002Fgithub.com\u002Ftensorflow\u002Fagents)\n* [TensorForce](https:\u002F\u002Fgithub.com\u002Ftensorforce\u002Ftensorforce)\n\n#### Keras Ecosystem\n\n* [Keras](https:\u002F\u002Fkeras.io)\n* [keras-contrib](https:\u002F\u002Fgithub.com\u002Fkeras-team\u002Fkeras-contrib)\n* [Hyperas](https:\u002F\u002Fgithub.com\u002Fmaxpumperla\u002Fhyperas)\n* [Elephas](https:\u002F\u002Fgithub.com\u002Fmaxpumperla\u002Felephas)\n* [Hera](https:\u002F\u002Fgithub.com\u002Fkeplr-io\u002Fhera)\n* [Spektral](https:\u002F\u002Fgithub.com\u002Fdanielegrattarola\u002Fspektral)\n* [qkeras](https:\u002F\u002Fgithub.com\u002Fgoogle\u002Fqkeras)\n* [keras-rl](https:\u002F\u002Fgithub.com\u002Fkeras-rl\u002Fkeras-rl)\n* [Talos](https:\u002F\u002Fgithub.com\u002Fautonomio\u002Ftalos)\n\n#### Visualization Tools\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [altair](https:\u002F\u002Faltair-viz.github.io\u002F)\n- [amcharts](https:\u002F\u002Fwww.amcharts.com\u002F)\n- [anychart](https:\u002F\u002Fwww.anychart.com\u002F)\n- [bokeh](https:\u002F\u002Fbokeh.org\u002F)\n- [Comet](https:\u002F\u002Fwww.comet.com\u002Fsite\u002Fproducts\u002Fml-experiment-tracking\u002F?utm_source=awesome-datascience)\n- [slemma](https:\u002F\u002Fslemma.com\u002F)\n- [cartodb](https:\u002F\u002Fcartodb.github.io\u002Fodyssey.js\u002F)\n- [Cube](https:\u002F\u002Fsquare.github.io\u002Fcube\u002F)\n- [d3plus](https:\u002F\u002Fd3plus.org\u002F)\n- [Data-Driven Documents(D3js)](https:\u002F\u002Fd3js.org\u002F)\n- [dygraphs](https:\u002F\u002Fdygraphs.com\u002F)\n- [exhibit](https:\u002F\u002Fwww.simile-widgets.org\u002Fexhibit\u002F)\n- [gephi](https:\u002F\u002Fgephi.org\u002F)\n- [ggplot2](https:\u002F\u002Fggplot2.tidyverse.org\u002F)\n- [Glue](http:\u002F\u002Fdocs.glueviz.org\u002Fen\u002Flatest\u002Findex.html)\n- [Google Chart Gallery](https:\u002F\u002Fdevelopers.google.com\u002Fchart\u002Finteractive\u002Fdocs\u002Fgallery)\n- [Highcharts](https:\u002F\u002Fwww.highcharts.com\u002F)\n- [import.io](https:\u002F\u002Fwww.import.io\u002F)\n- [Matplotlib](https:\u002F\u002Fmatplotlib.org\u002F)\n- [nvd3](https:\u002F\u002Fnvd3.org\u002F)\n- [Netron](https:\u002F\u002Fgithub.com\u002Flutzroeder\u002Fnetron)\n- [Openrefine](https:\u002F\u002Fopenrefine.org\u002F)\n- [plot.ly](https:\u002F\u002Fplot.ly\u002F)\n- [raw](https:\u002F\u002Frawgraphs.io)\n- [Resseract Lite](https:\u002F\u002Fgithub.com\u002Fabistarun\u002Fresseract-lite)\n- [Seaborn](https:\u002F\u002Fseaborn.pydata.org\u002F)\n- [techanjs](https:\u002F\u002Ftechanjs.org\u002F)\n- [Timeline](https:\u002F\u002Ftimeline.knightlab.com\u002F)\n- [variancecharts](https:\u002F\u002Fvariancecharts.com\u002Findex.html)\n- [vida](https:\u002F\u002Fvida.io\u002F)\n- [vizzu](https:\u002F\u002Fgithub.com\u002Fvizzuhq\u002Fvizzu-lib)\n- [Wrangler](http:\u002F\u002Fvis.stanford.edu\u002Fwrangler\u002F)\n- [r2d3](http:\u002F\u002Fwww.r2d3.us\u002Fvisual-intro-to-machine-learning-part-1\u002F)\n- [NetworkX](https:\u002F\u002Fnetworkx.org\u002F)\n- [Redash](https:\u002F\u002Fredash.io\u002F)\n- [Metabase](https:\u002F\u002Fwww.metabase.com\u002F)\n- [C3](https:\u002F\u002Fc3js.org\u002F)\n- [TensorWatch](https:\u002F\u002Fgithub.com\u002Fmicrosoft\u002Ftensorwatch)\n- [geomap](https:\u002F\u002Fpypi.org\u002Fproject\u002Fgeomap\u002F)\n- [Dash](https:\u002F\u002Fplotly.com\u002Fdash\u002F)\n- [MetaReview](https:\u002F\u002Fmetareview-8c1.pages.dev\u002F) - Free online meta-analysis platform with 11 interactive D3.js statistical charts (forest plot, funnel plot, Galbraith, L'Abbé, Baujat, etc.), 5 effect size measures, AI literature screening, and publication-ready report export. [github.com](https:\u002F\u002Fgithub.com\u002FTerryFYL\u002Fmetareview)\n\n### Miscellaneous Tools\n**[`^        back to top        ^`](#awesome-data-science)**\n\n| Link | Description |\n| --- | --- |\n| [The Data Science Lifecycle Process](https:\u002F\u002Fgithub.com\u002Fdslp\u002Fdslp) | The Data Science Lifecycle Process is a process for taking data science teams from Idea to Value repeatedly and sustainably. The process is documented in this repo  |\n| [Data Science Lifecycle Template Repo](https:\u002F\u002Fgithub.com\u002Fdslp\u002Fdslp-repo-template) | Template repository for data science lifecycle project  |\n| [TabGAN](https:\u002F\u002Fgithub.com\u002FDiyago\u002FTabular-data-generation) | Synthetic tabular data generation using GANs, Diffusion Models, and LLMs with adversarial filtering and privacy metrics. |\n| [RexMex](https:\u002F\u002Fgithub.com\u002FAstraZeneca\u002Frexmex) | A general purpose recommender metrics library for fair evaluation.  |\n| [ChemicalX](https:\u002F\u002Fgithub.com\u002FAstraZeneca\u002Fchemicalx) | A PyTorch based deep learning library for drug pair scoring.  |\n| [FileShot.io](https:\u002F\u002Fgithub.com\u002FFileShot\u002FFileShotZKE) | Secure zero-knowledge encrypted file sharing (AES-256-GCM in-browser). No account required, MIT licensed, self-hostable, optional link expiry. |\n| [CorpusExplorer](http:\u002F\u002Fcorpusexplorer.de\u002F) | Software for corpus linguists and text\u002Fdata mining enthusiasts. Build your own corpora in over 60 languages. Use over 50 tools\u002Fvisualizations.  |\n| [PyTorch Geometric Temporal](https:\u002F\u002Fgithub.com\u002Fbenedekrozemberczki\u002Fpytorch_geometric_temporal) | Representation learning on dynamic graphs.  |\n| [Little Ball of Fur](https:\u002F\u002Fgithub.com\u002Fbenedekrozemberczki\u002Flittleballoffur) | A graph sampling library for NetworkX with a Scikit-Learn like API.  |\n| [Karate Club](https:\u002F\u002Fgithub.com\u002Fbenedekrozemberczki\u002Fkarateclub) | An unsupervised machine learning extension library for NetworkX with a Scikit-Learn like API. |\n| [ML Workspace](https:\u002F\u002Fgithub.com\u002Fml-tooling\u002Fml-workspace) | All-in-one web-based IDE for machine learning and data science. The workspace is deployed as a Docker container and is preloaded with a variety of popular data science libraries (e.g., Tensorflow, PyTorch) and dev tools (e.g., Jupyter, VS Code) |\n| [xonsh shell](https:\u002F\u002Fgithub.com\u002Fxonsh\u002Fxonsh) | A Python-powered shell that enables integration, management and orchestration of data science libraries mostly written in Python, allowing you to build pipelines, code and command-based workflows. It can also be used as a kernel for Jupyter Notebook.  |\n| [Neptune.ai](https:\u002F\u002Fneptune.ai) | Community-friendly platform supporting data scientists in creating and sharing machine learning models. Neptune facilitates teamwork, infrastructure management, models comparison and reproducibility. |\n| [steppy](https:\u002F\u002Fgithub.com\u002Fminerva-ml\u002Fsteppy) | Lightweight, Python library for fast and reproducible machine learning experimentation. Introduces very simple interface that enables clean machine learning pipeline design. |\n| [steppy-toolkit](https:\u002F\u002Fgithub.com\u002Fminerva-ml\u002Fsteppy-toolkit) | Curated collection of the neural networks, transformers and models that make your machine learning work faster and more effective. |\n| [Datalab from Google](https:\u002F\u002Fcloud.google.com\u002Fdatalab\u002Fdocs\u002F) | easily explore, visualize, analyze, and transform data using familiar languages, such as Python and SQL, interactively. |\n| [Hortonworks Sandbox](https:\u002F\u002Fwww.cloudera.com\u002Fdownloads\u002Fhortonworks-sandbox.html) | is a personal, portable Hadoop environment that comes with a dozen interactive Hadoop tutorials. |\n| [R](https:\u002F\u002Fwww.r-project.org\u002F) | is a free software environment for statistical computing and graphics. |\n| [Tidyverse](https:\u002F\u002Fwww.tidyverse.org\u002F) | is an opinionated collection of R packages designed for data science. All packages share an underlying design philosophy, grammar, and data structures. |\n| [RStudio](https:\u002F\u002Fwww.rstudio.com) | IDE – powerful user interface for R. It’s free and open source, and works on Windows, Mac, and Linux. |\n| [Python - Pandas - Anaconda](https:\u002F\u002Fwww.anaconda.com) | Completely free enterprise-ready Python distribution for large-scale data processing, predictive analytics, and scientific computing |\n| [Pandas GUI](https:\u002F\u002Fgithub.com\u002Fadrotog\u002FPandasGUI) | Pandas GUI |\n| [Polars](https:\u002F\u002Fgithub.com\u002Fpola-rs\u002Fpolars) | Fast DataFrame library for Rust and Python, designed as a faster alternative to Pandas |\n| [CiteMe](https:\u002F\u002Fciteme.app) | AI-powered academic citation generator. Searches 11+ scholarly databases (OpenAlex, PubMed, Semantic Scholar, CrossRef, SciELO) and formats references in 40+ citation styles. Available as web app, browser extension, Google Docs add-on, and public API. |\n| [Scikit-Learn](https:\u002F\u002Fscikit-learn.org\u002Fstable\u002F) | Machine Learning in Python |\n| [NumPy](https:\u002F\u002Fnumpy.org\u002F) | NumPy is fundamental for scientific computing with Python. It supports large, multi-dimensional arrays and matrices and includes an assortment of high-level mathematical functions to operate on these arrays. |\n| [Vaex](https:\u002F\u002Fvaex.io\u002F) | Vaex is a Python library that allows you to visualize large datasets and calculate statistics at high speeds. |\n| [SciPy](https:\u002F\u002Fscipy.org\u002F) | SciPy works with NumPy arrays and provides efficient routines for numerical integration and optimization. |\n| [Data Science Toolbox](https:\u002F\u002Fwww.coursera.org\u002Flearn\u002Fdata-scientists-tools) | Coursera Course |\n| [Data Science Toolbox](https:\u002F\u002Fdatasciencetoolbox.org\u002F) | Blog |\n| [Wolfram Data Science Platform](https:\u002F\u002Fwww.wolfram.com\u002Fdata-science-platform\u002F) | Take numerical, textual, image, GIS or other data and give it the Wolfram treatment, carrying out a full spectrum of data science analysis and visualization and automatically generate rich interactive reports—all powered by the revolutionary knowledge-based Wolfram Language. |\n| [Datadog](https:\u002F\u002Fwww.datadoghq.com\u002F) | Solutions, code, and devops for high-scale data science. |\n| [Variance](https:\u002F\u002Fvariancecharts.com\u002F) | Build powerful data visualizations for the web without writing JavaScript |\n| [Kite Development Kit](http:\u002F\u002Fkitesdk.org\u002Fdocs\u002Fcurrent\u002Findex.html) | The Kite Software Development Kit (Apache License, Version 2.0), or Kite for short, is a set of libraries, tools, examples, and documentation focused on making it easier to build systems on top of the Hadoop ecosystem. |\n| [Domino Data Labs](https:\u002F\u002Fwww.dominodatalab.com) | Run, scale, share, and deploy your models — without any infrastructure or setup. |\n| [Apache Flink](https:\u002F\u002Fflink.apache.org\u002F) | A platform for efficient, distributed, general-purpose data processing. |\n| [Apache Hama](https:\u002F\u002Fhama.apache.org\u002F) | Apache Hama is an Apache Top-Level open source project, allowing you to do advanced analytics beyond MapReduce. |\n| [Weka](https:\u002F\u002Fml.cms.waikato.ac.nz\u002Fweka\u002Findex.html) | Weka is a collection of machine learning algorithms for data mining tasks. |\n| [Octave](https:\u002F\u002Fwww.gnu.org\u002Fsoftware\u002Foctave\u002F) | GNU Octave is a high-level interpreted language, primarily intended for numerical computations.(Free Matlab) |\n| [Apache Spark](https:\u002F\u002Fspark.apache.org\u002F) | Lightning-fast cluster computing |\n| [Hydrosphere Mist](https:\u002F\u002Fgithub.com\u002FHydrospheredata\u002Fmist) | a service for exposing Apache Spark analytics jobs and machine learning models as realtime, batch or reactive web services. |\n| [Data Mechanics](https:\u002F\u002Fwww.datamechanics.co) | A data science and engineering platform making Apache Spark more developer-friendly and cost-effective. |\n| [Caffe](https:\u002F\u002Fcaffe.berkeleyvision.org\u002F) | Deep Learning Framework |\n| [Torch](http:\u002F\u002Ftorch.ch\u002F) | A SCIENTIFIC COMPUTING FRAMEWORK FOR LUAJIT |\n| [Nervana's python based Deep Learning Framework](https:\u002F\u002Fgithub.com\u002FNervanaSystems\u002Fneon) | Intel® Nervana™ reference deep learning framework committed to best performance on all hardware. |\n| [Skale](https:\u002F\u002Fgithub.com\u002Fskale-me\u002Fskale) | High performance distributed data processing in NodeJS |\n| [Aerosolve](https:\u002F\u002Fairbnb.io\u002Faerosolve\u002F) | A machine learning package built for humans. |\n| [Intel framework](https:\u002F\u002Fgithub.com\u002Fintel\u002Fidlf) | Intel® Deep Learning Framework |\n| [Datawrapper](https:\u002F\u002Fwww.datawrapper.de\u002F) | An open source data visualization platform helping everyone to create simple, correct and embeddable charts. Also at [github.com](https:\u002F\u002Fgithub.com\u002Fdatawrapper\u002Fdatawrapper) |\n| [Tensor Flow](https:\u002F\u002Fwww.tensorflow.org\u002F) | TensorFlow is an Open Source Software Library for Machine Intelligence |\n| [Natural Language Toolkit](https:\u002F\u002Fwww.nltk.org\u002F) | An introductory yet powerful toolkit for natural language processing and classification |\n| [Annotation Lab](https:\u002F\u002Fwww.johnsnowlabs.com\u002Fannotation-lab\u002F) | Free End-to-End No-Code platform for text annotation and DL model training\u002Ftuning. Out-of-the-box support for Named Entity Recognition, Classification, Relation extraction and Assertion Status Spark NLP models. Unlimited support for users, teams, projects, documents. |\n| [nlp-toolkit for node.js](https:\u002F\u002Fwww.npmjs.com\u002Fpackage\u002Fnlp-toolkit) | This module covers some basic nlp principles and implementations. The main focus is performance. When we deal with sample or training data in nlp, we quickly run out of memory. Therefore every implementation in this module is written as stream to only hold that data in memory that is currently processed at any step. |\n| [Julia](https:\u002F\u002Fjulialang.org) | high-level, high-performance dynamic programming language for technical computing |\n| [IJulia](https:\u002F\u002Fgithub.com\u002FJuliaLang\u002FIJulia.jl) | a Julia-language backend combined with the Jupyter interactive environment |\n| [Apache Zeppelin](https:\u002F\u002Fzeppelin.apache.org\u002F) | Web-based notebook that enables data-driven, interactive data analytics and collaborative documents with SQL, Scala and more  |\n| [Featuretools](https:\u002F\u002Fgithub.com\u002Falteryx\u002Ffeaturetools) | An open source framework for automated feature engineering written in python |\n| [Optimus](https:\u002F\u002Fgithub.com\u002Fhi-primus\u002Foptimus) | Cleansing, pre-processing, feature engineering, exploratory data analysis and easy ML with PySpark backend.  |\n| [Albumentations](https:\u002F\u002Fgithub.com\u002Falbumentations-team\u002Falbumentations) | А fast and framework agnostic image augmentation library that implements a diverse set of augmentation techniques. Supports classification, segmentation, and detection out of the box. Was used to win a number of Deep Learning competitions at Kaggle, Topcoder and those that were a part of the CVPR workshops. |\n| [DVC](https:\u002F\u002Fgithub.com\u002Fiterative\u002Fdvc) | An open-source data science version control system. It helps track, organize and make data science projects reproducible. In its very basic scenario it helps version control and share large data and model files. |\n| [Lambdo](https:\u002F\u002Fgithub.com\u002Fasavinov\u002Flambdo) | is a workflow engine that significantly simplifies data analysis by combining in one analysis pipeline (i) feature engineering and machine learning (ii) model training and prediction (iii) table population and column evaluation. |\n| [Feast](https:\u002F\u002Fgithub.com\u002Ffeast-dev\u002Ffeast) | A feature store for the management, discovery, and access of machine learning features. Feast provides a consistent view of feature data for both model training and model serving. |\n| [Polyaxon](https:\u002F\u002Fgithub.com\u002Fpolyaxon\u002Fpolyaxon) | A platform for reproducible and scalable machine learning and deep learning. |\n| [UBIAI](https:\u002F\u002Fubiai.tools) | Easy-to-use text annotation tool for teams with most comprehensive auto-annotation features. Supports NER, relations and document classification as well as OCR annotation for invoice labeling |\n| [Trains](https:\u002F\u002Fgithub.com\u002Fallegroai\u002Fclearml) | Auto-Magical Experiment Manager, Version Control & DevOps for AI |\n| [Hopsworks](https:\u002F\u002Fgithub.com\u002Flogicalclocks\u002Fhopsworks) | Open-source data-intensive machine learning platform with a feature store. Ingest and manage features for both online (MySQL Cluster)  and offline (Apache Hive) access, train and serve models at scale. |\n| [MindsDB](https:\u002F\u002Fgithub.com\u002Fmindsdb\u002Fmindsdb) | MindsDB is an Explainable AutoML framework for developers. With MindsDB you can build, train and use state of the art ML models in as simple as one line of code. |\n| [Lightwood](https:\u002F\u002Fgithub.com\u002Fmindsdb\u002Flightwood) | A Pytorch based framework that breaks down machine learning problems into smaller blocks that can be glued together seamlessly with an objective to build predictive models with one line of code. |\n| [AWS Data Wrangler](https:\u002F\u002Fgithub.com\u002Fawslabs\u002Faws-data-wrangler) | An open-source Python package that extends the power of Pandas library to AWS connecting DataFrames and AWS data related services (Amazon Redshift, AWS Glue, Amazon Athena, Amazon EMR, etc). |\n| [Amazon Rekognition](https:\u002F\u002Faws.amazon.com\u002Frekognition\u002F) | AWS Rekognition is a service that lets developers working with Amazon Web Services add image analysis to their applications. Catalog assets, automate workflows, and extract meaning from your media and applications.|\n| [Amazon Textract](https:\u002F\u002Faws.amazon.com\u002Ftextract\u002F) | Automatically extract printed text, handwriting, and data from any document. |\n| [Amazon Lookout for Vision](https:\u002F\u002Faws.amazon.com\u002Flookout-for-vision\u002F) | Spot product defects using computer vision to automate quality inspection. Identify missing product components, vehicle and structure damage, and irregularities for comprehensive quality control.|\n| [Amazon CodeGuru](https:\u002F\u002Faws.amazon.com\u002Fcodeguru\u002F) | Automate code reviews and optimize application performance with ML-powered recommendations.|\n| [CML](https:\u002F\u002Fgithub.com\u002Fiterative\u002Fcml) | An open source toolkit for using continuous integration in data science projects. Automatically train and test models in production-like environments with GitHub Actions & GitLab CI, and autogenerate visual reports on pull\u002Fmerge requests. |\n| [Dask](https:\u002F\u002Fdask.org\u002F) | An open source Python library to painlessly transition your analytics code to distributed computing systems (Big Data) |\n| [DuckDB](https:\u002F\u002Fgithub.com\u002Fduckdb\u002Fduckdb) | An in-process SQL OLAP database management system |\n| [Statsmodels](https:\u002F\u002Fwww.statsmodels.org\u002Fstable\u002Findex.html) | A Python-based inferential statistics, hypothesis testing and regression framework |\n| [Gensim](https:\u002F\u002Fradimrehurek.com\u002Fgensim\u002F) | An open-source library for topic modeling of natural language text |\n| [spaCy](https:\u002F\u002Fspacy.io\u002F) | A performant natural language processing toolkit |\n| [Grid Studio](https:\u002F\u002Fgithub.com\u002Fricklamers\u002Fgridstudio) | Grid studio is a web-based spreadsheet application with full integration of the Python programming language. |\n|[Python Data Science Handbook](https:\u002F\u002Fgithub.com\u002Fjakevdp\u002FPythonDataScienceHandbook)|Python Data Science Handbook: full text in Jupyter Notebooks|\n| [Shapley](https:\u002F\u002Fgithub.com\u002Fbenedekrozemberczki\u002Fshapley) | A data-driven framework to quantify the value of classifiers in a machine learning ensemble.  |\n| [DAGsHub](https:\u002F\u002Fdagshub.com) | A platform built on open source tools for data, model and pipeline management.  |\n| [Deepnote](https:\u002F\u002Fdeepnote.com) | A new kind of data science notebook. Jupyter-compatible, with real-time collaboration and running in the cloud. |\n| [Valohai](https:\u002F\u002Fvalohai.com) | An MLOps platform that handles machine orchestration, automatic reproducibility and deployment. |\n| [PyMC3](https:\u002F\u002Fdocs.pymc.io\u002F) | A Python Library for Probabalistic Programming (Bayesian Inference and Machine Learning) |\n| [PyStan](https:\u002F\u002Fpypi.org\u002Fproject\u002Fpystan\u002F) | Python interface to Stan (Bayesian inference and modeling) |\n| [hmmlearn](https:\u002F\u002Fpypi.org\u002Fproject\u002Fhmmlearn\u002F) | Unsupervised learning and inference of Hidden Markov Models |\n| [Chaos Genius](https:\u002F\u002Fgithub.com\u002Fchaos-genius\u002Fchaos_genius\u002F) | ML powered analytics engine for outlier\u002Fanomaly detection and root cause analysis |\n| [Nimblebox](https:\u002F\u002Fnimblebox.ai\u002F) | A full-stack MLOps platform designed to help data scientists and machine learning practitioners around the world discover, create, and launch multi-cloud apps from their web browser. |\n| [Towhee](https:\u002F\u002Fgithub.com\u002Ftowhee-io\u002Ftowhee) | A Python library that helps you encode your unstructured data into embeddings. |\n| [LineaPy](https:\u002F\u002Fgithub.com\u002FLineaLabs\u002Flineapy) | Ever been frustrated with cleaning up long, messy Jupyter notebooks? With LineaPy, an open source Python library, it takes as little as two lines of code to transform messy development code into production pipelines. |\n| [envd](https:\u002F\u002Fgithub.com\u002Ftensorchord\u002Fenvd) | 🏕️ machine learning development environment for data science and AI\u002FML engineering teams |\n| [Explore Data Science Libraries](https:\u002F\u002Fkandi.openweaver.com\u002Fexplore\u002Fdata-science) | A search engine 🔎 tool to discover & find a curated list of popular & new libraries, top authors, trending project kits, discussions, tutorials & learning resources |\n| [MLEM](https:\u002F\u002Fgithub.com\u002Fiterative\u002Fmlem) | 🐶 Version and deploy your ML models following GitOps principles |\n| [MLflow](https:\u002F\u002Fmlflow.org\u002F) | MLOps framework for managing ML models across their full lifecycle |\n| [cleanlab](https:\u002F\u002Fgithub.com\u002Fcleanlab\u002Fcleanlab) | Python library for data-centric AI and automatically detecting various issues in ML datasets |\n| [AutoGluon](https:\u002F\u002Fgithub.com\u002Fawslabs\u002Fautogluon) | AutoML to easily produce accurate predictions for image, text, tabular, time-series, and multi-modal data |\n| [Arize AI](https:\u002F\u002Farize.com\u002F) | Arize AI community tier observability tool for monitoring machine learning models in production and root-causing issues such as data quality and performance drift. |\n| [Aureo.io](https:\u002F\u002Faureo.io) | Aureo.io is a low-code platform that focuses on building artificial intelligence. It provides users with the capability to create pipelines, automations and integrate them with artificial intelligence models – all with their basic data. |\n| [ERD Lab](https:\u002F\u002Fwww.erdlab.io\u002F) | Free cloud based entity relationship diagram (ERD) tool made for developers.\n| [Arize-Phoenix](https:\u002F\u002Fdocs.arize.com\u002Fphoenix) | MLOps in a notebook - uncover insights, surface problems, monitor, and fine tune your models. |\n| [Comet](https:\u002F\u002Fgithub.com\u002Fcomet-ml\u002Fcomet-examples) | An MLOps platform with experiment tracking, model production management, a model registry, and full data lineage to support your ML workflow from training straight through to production. |\n| [Opik](https:\u002F\u002Fgithub.com\u002Fcomet-ml\u002Fopik) | Evaluate, test, and ship LLM applications across your dev and production lifecycles. |\n| [Synthical](https:\u002F\u002Fsynthical.com) | AI-powered collaborative environment for research. Find relevant papers, create collections to manage bibliography, and summarize content — all in one place |\n| [teeplot](https:\u002F\u002Fgithub.com\u002Fmmore500\u002Fteeplot) | Workflow tool to automatically organize data visualization output |\n| [Streamlit](https:\u002F\u002Fgithub.com\u002Fstreamlit\u002Fstreamlit) | App framework for Machine Learning and Data Science projects |\n| [Gradio](https:\u002F\u002Fgithub.com\u002Fgradio-app\u002Fgradio) | Create customizable UI components around machine learning models |\n| [Weights & Biases](https:\u002F\u002Fgithub.com\u002Fwandb\u002Fwandb) | Experiment tracking, dataset versioning, and model management |\n| [DVC](https:\u002F\u002Fgithub.com\u002Fiterative\u002Fdvc) | Open-source version control system for machine learning projects |\n| [Optuna](https:\u002F\u002Fgithub.com\u002Foptuna\u002Foptuna) | Automatic hyperparameter optimization software framework |\n| [Ray Tune](https:\u002F\u002Fgithub.com\u002Fray-project\u002Fray) | Scalable hyperparameter tuning library |\n| [Apache Airflow](https:\u002F\u002Fgithub.com\u002Fapache\u002Fairflow) | Platform to programmatically author, schedule, and monitor workflows |\n| [Prefect](https:\u002F\u002Fgithub.com\u002FPrefectHQ\u002Fprefect) | Workflow management system for modern data stacks |\n| [Kedro](https:\u002F\u002Fgithub.com\u002Fkedro-org\u002Fkedro) | Open-source Python framework for creating reproducible, maintainable data science code |\n| [Hamilton](https:\u002F\u002Fgithub.com\u002Fdagworks-inc\u002Fhamilton) | Lightweight library to author and manage reliable data transformations |\n| [SHAP](https:\u002F\u002Fgithub.com\u002Fslundberg\u002Fshap) | Game theoretic approach to explain the output of any machine learning model |\n| [InterpretML](https:\u002F\u002Fgithub.com\u002Finterpretml\u002Finterpret) | InterpretML implements the Explainable Boosting Machine (EBM), a modern, fully interpretable machine learning model based on Generalized Additive Models (GAMs). This open-source package also provides visualization tools for EBMs, other glass-box models, and black-box explanations |\n| [LIME](https:\u002F\u002Fgithub.com\u002Fmarcotcr\u002Flime) | Explaining the predictions of any machine learning classifier |\n| [flyte](https:\u002F\u002Fgithub.com\u002Fflyteorg\u002Fflyte) | Workflow automation platform for machine learning |\n| [dbt](https:\u002F\u002Fgithub.com\u002Fdbt-labs\u002Fdbt-core) | Data build tool |\n| [zasper](https:\u002F\u002Fgithub.com\u002Fzasper-io\u002Fzasper) | Supercharged IDE for Data Science |\n| [skrub](https:\u002F\u002Fgithub.com\u002Fskrub-data\u002Fskrub\u002F) | A Python library to ease preprocessing and feature engineering for tabular machine learning |\n| [Codeflash](https:\u002F\u002Fwww.codeflash.ai\u002F) | Ship Blazing-Fast Python Code — Every Time |\n| [Hugging Face](https:\u002F\u002Fhuggingface.co\u002F) | Popular open platform for sharing ML models, datasets, and collaborating on NLP and generative AI projects. |\n| [Chinese-Elite](https:\u002F\u002Fgithub.com\u002Fanonym-g\u002FChinese-Elite) | An open-source project that automatically maps relationship networks by parsing public data using LLMs and visualizes it as an interactive graph. |\n| [Desbordante](https:\u002F\u002Fgithub.com\u002Fdesbordante\u002Fdesbordante-core\u002F) | An open-source data profiler specifically focused on discovery and validation of complex patterns, such as [numerical association rules](https:\u002F\u002Fcolab.research.google.com\u002Fgithub\u002FDesbordante\u002Fdesbordante-core\u002Fblob\u002Fmain\u002Fexamples\u002Fnotebooks\u002FNumerical_Association_Rules.ipynb), [differential dependencies](https:\u002F\u002Fcolab.research.google.com\u002Fgithub\u002FDesbordante\u002Fdesbordante-core\u002Fblob\u002Fmain\u002Fexamples\u002Fnotebooks\u002FDifferential_Dependencies.ipynb), [denial constraints](https:\u002F\u002Fcolab.research.google.com\u002Fgithub\u002FDesbordante\u002Fdesbordante-core\u002Fblob\u002Fmain\u002Fexamples\u002Fnotebooks\u002FDenial_Constraints.ipynb), and more. |\n| [dna-claude-analysis](https:\u002F\u002Fgithub.com\u002Fshmlkv\u002Fdna-claude-analysis) | Personal genome analysis toolkit with Python scripts analyzing raw DNA data across 17 categories (health risks, ancestry, pharmacogenomics, nutrition, psychology, and more) and generating a terminal-style single-page HTML visualization. |\n| [RunMat](https:\u002F\u002Fgithub.com\u002Frunmat-org\u002Frunmat) | Fast MATLAB-syntax runtime with automatic CPU\u002FGPU execution and fused array kernels. |\n| [Turbostream](https:\u002F\u002Fgithub.com\u002Fturboline-ai\u002Fturbostream) | A terminal UI for experimenting with custom rule engines and selective LLM analysis on real-time data streams, without worrying about streaming infra or backpressure. |\n| [WFGY ProblemMap](https:\u002F\u002Fgithub.com\u002Fonestardao\u002FWFGY\u002Fblob\u002Fmain\u002FProblemMap\u002FREADME.md) | Open source “failure atlas” of 16 recurring issues in LLM and RAG pipelines, with observable symptoms and suggested fixes for data science teams. |\n| [Deploybase](https:\u002F\u002Fdeploybase.ai\u002F) | Track real-time GPU and LLM pricing across all cloud and inference providers. |\n| [DeepAnalyze](https:\u002F\u002Fgithub.com\u002Fruc-datalab\u002FDeepAnalyze) | An agentic LLM for autonomous data science, which can autonomously complete a wide range of data science tasks without human intervention. |\n| [Disco](https:\u002F\u002Fgithub.com\u002Fleap-laboratories\u002Fdiscovery-engine) | Superhuman exploratory data analysis. Finds the feature interactions and subgroup effects in tabular data that LLMs and manual exploration miss — with p-values, effect sizes, and literature citations. Free for public data. |\n| [AI for Database](https:\u002F\u002Faifordatabase.com) | Chat with your database in natural language — no SQL needed. Get instant insights, build self-refreshing dashboards, and trigger automated workflows based on database changes. |\n| [Crypto Pump Scanner](https:\u002F\u002Fgithub.com\u002Fstefanoviana\u002Fdeepalpha) | AI-powered cryptocurrency trading bot with LSTM neural network (84.6% accuracy). Real-time pump detection, walk-forward validated models, multi-exchange support (Bybit, Binance, OKX, Gate.io). Open source. |\n\n\n\n## Literature and Media\n**[`^        back to top        ^`](#awesome-data-science)**\n\nThis section includes some additional reading material, channels to watch, and talks to listen to.\n\n### Books\n**[`^        back to top        ^`](#awesome-data-science)**\n\n- [Data Science From Scratch: First Principles with Python](https:\u002F\u002Fwww.amazon.com\u002FData-Science-Scratch-Principles-Python-dp-1492041130\u002Fdp\u002F1492041130\u002Fref=dp_ob_title_bk)\n- [Artificial Intelligence with Python - Tutorialspoint](https:\u002F\u002Fwww.tutorialspoint.com\u002Fartificial_intelligence_with_python\u002Fartificial_intelligence_with_python_tutorial.pdf)\n- [Machine Learning from Scratch](https:\u002F\u002Fdafriedman97.github.io\u002Fmlbook\u002Fcontent\u002Fintroduction.html)\n- [Probabilistic Machine Learning: An Introduction](https:\u002F\u002Fprobml.github.io","awesome-datascience 是一个开源的数据科学资源库，旨在帮助学习者掌握并应用数据科学概念解决实际问题。该项目汇集了丰富的学习资料，包括教程、免费课程、在线课程、强化学习项目等，并涵盖了从基础算法到深度学习框架的广泛技术内容。此外，它还提供了数据可视化工具和模型评估工具等实用资源。无论是初学者还是有一定经验的数据科学家，都可以在这个项目中找到适合自己的学习路径和技术支持，适用于教育、研究及实际工作场景中的技能提升。",2,"2026-06-11 03:23:25","top_topic"]