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πŸ“š Think Stats, 3rd Edition: Master Probability & Statistics with Python! 🐍

#Python #DataScience #Statistics #MachineLearning #DataAnalysis #JupyterNotebooks #OpenSource #LearnToCode #DataVisualization #FreeBook

❀️ Why Grab This Book?
- Hands-On Learning: Transform raw data into insights using Python. Perfect for coders who want to dive into stats without drowning in formulas!
- Real-World Case Studies: Analyze datasets from the National Institutes of Health and more. Learn by doing, not just theorizing!
- Jupyter Notebooks Included: Every chapter comes with interactive notebooksβ€”run code, tweak examples, and solve exercises seamlessly. Ideal for Colab or local setups!
- Cutting-Edge Topics: Explore regression, time series analysis, survival analysis, and Bayesian methods. Level up your data science toolkit!
- Free & Open Source: Licensed under Creative Commons (CC BY-NC-SA). Download the PDF, fork the GitHub repo, and start learning today!

πŸ’‘ Perfect For:
- Python devs eager to add stats/data skills.
- Data enthusiasts craving practical, code-driven analysis.
- Educators seeking a modern, interactive stats resource.

πŸš€ Get It Now:
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πŸ“‚ GitHub Repo: https://github.com/AllenDowney/ThinkStats2

#DataDriven #CodeFirst #StatsInPython #FreeLearning β€” Turn data into wisdom, one line of Python at a time! β­οΈπŸ“Š

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πŸ“• Think Python, 3rd Edition: Master Python Programming with Jupyter Notebooks! 🐍⭐️

#Python #LearnPython #Coding #JupyterNotebooks #OpenSource #FreeLearning #DataScience #Programming #TechEducation #AllenDowney #ThinkPython

β˜„οΈ Why This Book?
- Learn by Doing: Perfect for beginners and coders upgrading to Python 3! Hands-on examples, exercises, and projects.
- Jupyter Notebook Edition: Entire book redesigned as interactive notebooks! Run code, visualize results, and experiment live.
- Free & Open Source: Licensed under CC BY-NC-SAβ€”download, share, and contribute!
- From a Pro: Authored by Allen Downey, computer science professor and creator of the legendary *Think Series* (*Think Stats*, *Think Bayes*).
- Clear & Engaging: Simplifies complex concepts with humor and real-world analogies.

πŸ“ˆ New in the 3rd Edition:
- Updated for modern Python 3 practices.
- Fully integrated Jupyter notebooks for interactive learning.
- Expanded exercises and case studies.

πŸ‘©β€πŸ’» Perfect For:
- New programmers starting with Python.
- Educators teaching coding or data science.
- Data enthusiasts who want to code smarter.

πŸ”— Get It Now:
πŸ‘‰ Web Version: https://allendowney.github.io/ThinkPython/

πŸ§‘β€πŸ’» GitHub Repo: https://github.com/AllenDowney/ThinkPython3

#Python3 #CodeForFree #InteractiveLearning β€” Unlock Python’s power, one notebook at a time! β­οΈπŸ‘©β€πŸ’»

https://t.me/CodeProgrammer ⭐️

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Applied Machine Learning in Python: a Hands-on Guide with Code 🧠

πŸš€ Exciting news! free, online e-book has been updated with fresh theory πŸ“•, detailed illustrations 🎨, well-documented demos πŸ“, links to YouTube lectures πŸŽ₯, and interactive dashboards πŸ“Š!

Each chapter is downloadable πŸ“₯, making it easy for you to dive in, learn, and complete your #DataScience projects efficiently! πŸ§‘β€πŸ’»

Explore it now: https://geostatsguy.github.io/MachineLearningDemos_Book/intro.html

#DeepLearning #Python #MachineLearning #AI #DataAnalytics #TechEducation #FreeLearning #Ebook #DataVisualization #Coding #STEM #TechCommunity #LearnToCode

https://t.me/CodeProgrammer
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