@djangoproject · Post #594 · 04/15/2018, 07:20 AM
https://www.kaggle.com/ The Home of #Data_Science & #Machine_Learning Kaggle helps you learn, work, and play
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Source channel @olddriverGDstudy · Post #39 · Mar 17
#技巧#知识 《新手司机 BY 指南》
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@djangoproject · Post #594 · 04/15/2018, 07:20 AM
https://www.kaggle.com/ The Home of #Data_Science & #Machine_Learning Kaggle helps you learn, work, and play
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@djangoproject · Post #472 · 10/16/2017, 09:07 AM
https://www.udemy.com/machinelearning/learn/v4/content #machine_learning A-Z™: Hands-On #Python & R In #Data_Science
@djangoproject · Post #470 · 10/16/2017, 08:38 AM
http://www.kdnuggets.com/2017/09/essential-data-science-machine-learning-deep-learning-cheat-sheets.html#.WdGzWthHcEo.linkedin 30 Essential #Data_Science , #machine_learning & #Deep_Learning Cheat Sheets
@djangoproject · Post #249 · 02/02/2017, 12:32 PM
https://www.analyticsvidhya.com/learning-paths-data-science-business-analytics-business-intelligence-big-data/learning-path-data-science-python/ Comprehensive learning path – #Data_Science in Python Journey from a Python noob to a Kaggler on Python So, you want to become a data scientist or may be you are already one and want to expand your tool repository. You have landed at the right place. The aim of this page is to provide a comprehensive learning path to people new to python for data analysis. This path provides a comprehensive overview of steps you need to learn to use Python for #data_analysis. If you already have some background, or don’t need all the components, feel free to adapt your own paths and let us know how you made changes in the path. You can also check the mini version of this learning path #Deep_Learning
@djangoproject · Post #464 · 10/16/2017, 08:07 AM
http://www.csestack.org/python-libraries-for-data-science/ As per the DIKW Pyramid Model, #Data_Science job revolves around finding the information, knowledge from Raw Data. And it can be bundled into the stack of 4 entities: source of #data manage and store data analyze the data display analyzed output (#visualization, statistics)
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@djangoproject · Post #468 · 10/16/2017, 08:30 AM
https://s3.amazonaws.com/assets.datacamp.com/blog_assets/Python_Bokeh_Cheat_Sheet.pdf Python For #Data_Science Cheat Sheet The Python interactive visualization library #Bokeh enables high-performance visual presentation of large datasets in modern #web browsers.
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@djangoproject · Post #465 · 10/16/2017, 08:17 AM
https://goo.gl/ucbkhT #Data_Science for #Big_Data with #Anaconda Enterprise Getting Python and R’s most popular data science libraries to work on a computational cluster can be a major challenge. And in a Big Data world, surmounting this challenge is key to leveraging data science within your organization to make smart, data-driven decisions.
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@djangoproject · Post #526 · 12/19/2017, 08:13 PM
https://goo.gl/XT2vGj Anaconda Enterprise 5 new capabilities include: Integrated #data_science experience for the entire organization Collaboration and reproducibility with JupyterLab and #Anaconda Project One-click data science #deployment Scalable architecture for on-premises and cloud deployments
@githubtrending · Post #14865 · 06/25/2025, 12:00 PM
#python#data_mining#data_science#deep_learning#deep_reinforcement_learning#genetic_algorithm#machine_learning#machine_learning_from_scratch This project offers Python code for many basic machine learning models and algorithms built from scratch, focusing on clear, understandable implementations rather than speed or optimization. You can learn how these algorithms work inside by running examples like polynomial regression, convolutional neural networks, clustering, and genetic algorithms. This hands-on approach helps you deeply understand machine learning concepts and build your own custom models. Using Python makes it easier because of its simple, readable code and flexibility, letting you quickly test and modify algorithms. This can improve your skills and confidence in machine learning development. https://github.com/eriklindernoren/ML-From-Scratch
@djangoproject · Post #462 · 10/10/2017, 01:59 PM
http://www.kdnuggets.com/2017/09/essential-data-science-machine-learning-deep-learning-cheat-sheets.html #Cheat_Sheet, #Data_Science, #Deep_Learning, #Machine_Learning, #Neural_Networks, #Probability, #Python, R, #SQL, #Statistics This collection of data science cheat sheets is not a cheat sheet dump, but a curated list of reference materials spanning a number of disciplines and tools
@githubtrending · Post #15438 · 01/26/2026, 11:30 AM
#python#agents#ai#ai_engineer#ai_engineering#copilot#data_science#data_scientist#generative_ai#gpt#machine_learning#ml_engineer#ml_engineering#openai AI Data Science Team is a free Python library with AI agents that speed up your data work 10X by handling loading, cleaning, visualization, EDA, feature engineering, modeling, and SQL tasks. Its flagship AI Pipeline Studio app creates visual, reproducible pipelines you can run with Streamlit after easy install (Python 3.10+, OpenAI or Ollama). This saves you hours on repetitive jobs, boosts accuracy, and lets you focus on insights and business results. https://github.com/business-science/ai-data-science-team
@githubtrending · Post #14869 · 06/26/2025, 12:30 PM
#html#data_science#education#machine_learning#machine_learning_algorithms#machinelearning#machinelearning_python#microsoft_for_beginners#ml#python#r#scikit_learn#scikit_learn_python Microsoft’s "Machine Learning for Beginners" is a free, 12-week course with 26 lessons designed to teach classic machine learning using Python and Scikit-learn. It includes quizzes, projects, and assignments to help you learn by doing, with lessons themed around global cultures to keep it engaging. You can access solutions, videos, and even R language versions. The course is beginner-friendly, flexible, and helps build practical skills step-by-step, making it easier to understand and apply machine learning concepts in real-world scenarios. This structured approach boosts your learning retention and prepares you for further study or career growth in ML[1][5]. https://github.com/microsoft/ML-For-Beginners