Machine Learning with Python
68.1K subscribers
1.28K photos
94 videos
164 files
935 links
Learn Machine Learning with hands-on Python tutorials, real-world code examples, and clear explanations for researchers and developers.

Admin: @HusseinSheikho || @Hussein_Sheikho
Download Telegram
منشور علمي عن مكتبة #NumPy المفيدة في مجال #Data_Science وبعض الامثلة لتوابعها مع الشرح.

للمزيد قم بدعوة اصدقاءك للافادة والاستفادة: @CodeProgrammer
Title: Create #HTML profiling reports from #Pandas DataFrame objects using #Pandas_Profiling

#مكتبة_علمية مهمة ومفيدة للباحثين والمختصين بمجال #data_science و #الذكاء_الاصطناعي هذه المكتبة هي #pandas_profiling لإنشاء تقرير من البيانات مع امكانية حفظ التقرير بصيغة #HTML

كامل التفاصيل عن المكتبة تجدها هنا 👇
https://pypi.org/project/pandas-profiling/

🔴 انضم لقناة الباحثين البرمجية:
@DataScience_Books

🟢 انضم لمجتمع بايثون العربي:
@PythonArab

🟡 شارك القناة للآخرين:
@CodeProgrammer
Understanding Probability Distributions for Machine Learning with Python

In machine learning, probability distributions play a fundamental role for various reasons: modeling uncertainty of information and #data, applying optimization processes with stochastic settings, and performing inference processes, to name a few. Therefore, understanding the role and uses of probability distributions in machine learning is essential for designing robust machine learning models, choosing the right #algorithms, and interpreting outputs of a probabilistic nature, especially when building #models with #machinelearning-friendly programming languages like #Python.

This article unveils key #probability distributions relevant to machine learning, explores their applications in different machine learning tasks, and provides practical Python implementations to help practitioners apply these concepts effectively. A basic knowledge of the most common probability distributions is recommended to make the most of this reading.

Read Free: https://machinelearningmastery.com/understanding-probability-distributions-machine-learning-python/

https://t.iss.one/CodeProgrammer 🖥
Please open Telegram to view this post
VIEW IN TELEGRAM
👍10
Please open Telegram to view this post
VIEW IN TELEGRAM
18👍2
💠 The Best Tool for Extracting Data from PDF Files!

👩🏻‍💻 Usually, PDF files like financial reports, scientific articles, or data analyses are full of tables, formulas, and complex texts.

⬅️ Most tools only extract texts and destroy the data structure, causing important information to be lost.

But the tool Docling uses artificial intelligence to preserve all those structures (text, tables, formulas) exactly as they are in the file. Then it converts that data into a structured format. Meaning AI models can work on them.

The interesting point is that with just three lines of Python code, you can convert any PDF into searchable data!

🥵 Docling
🔎 Article
📄 Documentation
🐱 GitHub-Repos

🌐 #Data_Science #DataScience
Please open Telegram to view this post
VIEW IN TELEGRAM
5👍1
🔥 Trending Repository: best-of-ml-python

📝 Description: 🏆 A ranked list of awesome machine learning Python libraries. Updated weekly.

🔗 Repository URL: https://github.com/lukasmasuch/best-of-ml-python

🌐 Website: https://ml-python.best-of.org

📖 Readme: https://github.com/lukasmasuch/best-of-ml-python#readme

📊 Statistics:
🌟 Stars: 22.3K stars
👀 Watchers: 444
🍴 Forks: 3K forks

💻 Programming Languages: Not available

🏷️ Related Topics:
#python #nlp #data_science #machine_learning #deep_learning #tensorflow #scikit_learn #keras #ml #data_visualization #pytorch #transformer #data_analysis #gpt #automl #jax #data_visualizations #gpt_3 #chatgpt


==================================
🧠 By: https://t.iss.one/DataScienceM
7
Data Science Formulas Cheat Sheet.pdf
175.4 KB
🏷 Data Science Formulas Cheat Sheet
Application of Each Formula

👨🏻‍💻 This cheat sheet presents important data science concepts along with their formulas.

From key topics in statistics to machine learning and NLP.

And the main formulas that are always needed + real examples for each formula, showing you when and why to use each method.

🌐 #Data_Science #DataScience

https://t.iss.one/CodeProgrammer 🔰

More Likes Please 🖕
Please open Telegram to view this post
VIEW IN TELEGRAM
9👍4
Statistics for Data Science Notes.pdf
2.1 MB
🏷 "Statistics for Data Science" Notes


👨🏻‍💻 In these notes, everything is structured and neatly organized from the basics of statistics to advanced tips. Each concept is explained with examples, formulas, and charts to make learning easy

🛑 What is statistics and why is it important?
🛑 Basic concepts
🛑 Descriptive statistics
🛑 Inferential statistics
🛑 Discrete and continuous distributions
🛑 And many other topics

🌐 #Data_Science #DataScience

https://t.iss.one/CodeProgrammer

React ♥️ for more amazing content
Please open Telegram to view this post
VIEW IN TELEGRAM
16👍6👎2👏2🔥1🎉1
Forwarded from Data Analytics
A comprehensive summary of the Seaborn Library.pdf
3.3 MB
📊 A comprehensive summary of the «Seaborn Library»

👨🏻‍💻 One of the best choices for any data scientist to convert data into clear and beautiful charts, so that they can better understand what the data is saying and also be able to present the results correctly and clearly to others, is the Seaborn library.

A very user-friendly library for creating professional charts with minimal coding. It is built on top of Matplotlib but is simpler and easier to use than that.

✏️ With this summary, you will learn the syntax, see many examples and real applications of #Seaborn, and ultimately help you elevate your #datavisualization skills by several levels.

🌐 #Data_Science #DataScience

https://t.iss.one/DataAnalyticsX 🌟

React 💖 for more amazing content
Please open Telegram to view this post
VIEW IN TELEGRAM
2👍1💯1