Machine Learning with Python
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Learn Machine Learning with hands-on Python tutorials, real-world code examples, and clear explanations for researchers and developers.

Admin: @HusseinSheikho || @Hussein_Sheikho
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Do you want to teach AI on real projects?

In this #repository, there are 29 projects with Generative #AI,#MachineLearning, and #Deep +Learning.

With full #code for each one. This is pure gold: https://github.com/KalyanM45/AI-Project-Gallery

πŸ‘‰ https://t.me/CodeProgrammer
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Collection of books on machine learning and artificial intelligence in PDF format

Repo: https://github.com/Ramakm/AI-ML-Book-References

#MACHINELEARNING #PYTHON #DATASCIENCE #DATAANALYSIS #DeepLearning

πŸ‘‰ @codeprogrammer
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πŸ’› Top 10 Best Websites to Learn Machine Learning ⭐️
by [@codeprogrammer]

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🧠 Google’s ML Course
πŸ”— https://developers.google.com/machine-learning/crash-course

πŸ“ˆ Kaggle Courses
πŸ”— https://kaggle.com/learn

πŸ§‘β€πŸŽ“ Coursera – Andrew Ng’s ML Course
πŸ”— https://coursera.org/learn/machine-learning

⚑️ Fast.ai
πŸ”— https://fast.ai

πŸ”§ Scikit-Learn Documentation
πŸ”— https://scikit-learn.org

πŸ“Ή TensorFlow Tutorials
πŸ”— https://tensorflow.org/tutorials

πŸ”₯ PyTorch Tutorials
πŸ”— https://docs.pytorch.org/tutorials/

πŸ›οΈ MIT OpenCourseWare – Machine Learning
πŸ”— https://ocw.mit.edu/courses/6-867-machine-learning-fall-2006/

✍️ Towards Data Science (Blog)
πŸ”— https://towardsdatascience.com

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πŸ’‘ Which one are you starting with? Drop a comment below! πŸ‘‡
#MachineLearning #LearnML #DataScience #AI

https://t.me/CodeProgrammer 🌟
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πŸ€– Best GitHub repositories to learn AI from scratch in 2026

If you want to understand AI not through "vacuum" courses, but through real open-source projects - here's a top list of repos that really lead you from the basics to practice:

1) Karpathy – Neural Networks: Zero to Hero 
The most understandable introduction to neural networks and backprop "in layman's terms"
https://github.com/karpathy/nn-zero-to-hero

2) Hugging Face Transformers 
The main library of modern NLP/LLM: models, tokenizers, fine-tuning 
https://github.com/huggingface/transformers

3) FastAI – Fastbook 
Practical DL training through projects and experiments 
https://github.com/fastai/fastbook

4) Made With ML 
ML as an engineering system: pipelines, production, deployment, monitoring 
https://github.com/GokuMohandas/Made-With-ML

5) Machine Learning System Design (Chip Huyen) 
How to build ML systems in real business: data, metrics, infrastructure 
https://github.com/chiphuyen/machine-learning-systems-design

6) Awesome Generative AI Guide 
A collection of materials on GenAI: from basics to practice 
https://github.com/aishwaryanr/awesome-generative-ai-guide

7) Dive into Deep Learning (D2L) 
One of the best books on DL + code + assignments 
https://github.com/d2l-ai/d2l-en

Save it for yourself - this is a base on which you can really grow into an ML/LLM engineer.

#Python #datascience #DataAnalysis #MachineLearning #AI #DeepLearning #LLMS

https://t.me/CodeProgrammer
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Machine Learning in python.pdf
1 MB
Machine Learning in Python (Course Notes)

I just went through an amazing resource on #MachineLearning in #Python by 365 Data Science, and I had to share the key takeaways with you!

Here’s what you’ll learn:

πŸ”˜ Linear Regression - The foundation of predictive modeling

πŸ”˜ Logistic Regression - Predicting probabilities and classifications

πŸ”˜ Clustering (K-Means, Hierarchical) - Making sense of unstructured data

πŸ”˜ Overfitting vs. Underfitting - The balancing act every ML engineer must master

πŸ”˜ OLS, R-squared, F-test - Key metrics to evaluate your models

https://t.me/CodeProgrammer || Share 🌐 and Like πŸ‘
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πŸš€ Thrilled to announce a major milestone in our collective upskilling journey! 🌟

I am incredibly excited to share a curated ecosystem of high-impact resources focused on Machine Learning and Artificial Intelligence. By consolidating a comprehensive library of PDFsβ€”from foundational onboarding to advanced strategic insightsβ€”into a single, unified repository, we are effectively eliminating search friction and accelerating our learning velocity. πŸ“šβœ¨

This initiative represents a powerful opportunity to align our technical growth with future-ready priorities, ensuring we are always ahead of the curve. πŸ’‘πŸ”—

⛓️ Unlock your potential here:
https://github.com/Ramakm/AI-ML-Book-References

#MachineLearning #AI #ContinuousLearning #GrowthMindset #TechCommunity #OpenSource
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Stop asking "CNN or VLM?" β€” the answer is both. πŸ€”

Everyone's talking about Vision Language Models replacing traditional computer vision. πŸ“’
Here's the reality: they're not replacing anything. They're expanding what's possible. πŸš€
CNNs are excellent at precise perception β€” detecting, localizing, classifying fixed objects at high speed and low cost. 🎯
Vision Language Models are better at interpretation β€” answering open-ended questions about a scene that you can't define as fixed labels in advance. 🧠
The smartest production systems combine both:
β†’ A lightweight CNN runs first (fast, cheap) ⚑️
β†’ A VLM handles the complex reasoning (flexible, expensive) πŸ’Ž
This is the difference between giving machines eyes πŸ‘ vs giving them the ability to talk about what they see. πŸ—£
Dr. Satya Mallick breaks it down in under 2 minutes. πŸ‘‡
#ComputerVision #AI #MachineLearning #VisionLanguageModel #DeepLearning #OpenCV #AIEngineering

https://t.me/CodeProgrammer βœ…
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This Machine Learning Cheat Sheet Saved Me Hours of Revision ⏳

It includes:
βœ… Supervised & Unsupervised algorithms
βœ… Regression, Classification & Clustering techniques
βœ… PCA & Dimensionality Reduction
βœ… Neural Networks, CNN, RNN & Transformers
βœ… Assumptions, Pros/Cons & Real-world use cases

Whether you're:
πŸ”Ή Preparing for data science interviews
πŸ”Ή Working on ML projects
πŸ”Ή Or strengthening your fundamentals
this one-page guide is a must-save.

♻️ Repost and share with your ML circle.

#MachineLearning #DataScience #AI #MLAlgorithms #InterviewPrep #LearnML

https://t.me/CodeProgrammer 🐍
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