Machine Learning
39.4K subscribers
3.9K photos
32 videos
44 files
1.32K links
Machine learning insights, practical tutorials, and clear explanations for beginners and aspiring data scientists. Follow the channel for models, algorithms, coding guides, and real-world ML applications.

Admin: @HusseinSheikho || @Hussein_Sheikho
Download Telegram
πŸ“Œ Machine Learning vs AI Engineer: What Are the Differences?

πŸ—‚ Category: CAREER ADVICE

πŸ•’ Date: 2025-12-29 | ⏱️ Read time: 7 min read

One of the most confusing questions in tech right now is: What is the difference…

#DataScience #AI #Python
❀1
πŸ“Œ Implementing Vibe Proving with Reinforcement Learning

πŸ—‚ Category: LARGE LANGUAGE MODELS

πŸ•’ Date: 2025-12-29 | ⏱️ Read time: 9 min read

How to make LLMs reason with verifiable, step-by-step logic (Part 2)

#DataScience #AI #Python
❀1
πŸ“Œ Overcoming Nonsmoothness and Control Chattering in Nonconvex Optimal Control Problems

πŸ—‚ Category: ROBOTICS

πŸ•’ Date: 2025-12-30 | ⏱️ Read time: 17 min read

With some hints for good numerics

#DataScience #AI #Python
πŸ“Œ The Machine Learning β€œAdvent Calendar” Bonus 1: AUC in Excel

πŸ—‚ Category: MACHINE LEARNING

πŸ•’ Date: 2025-12-30 | ⏱️ Read time: 8 min read

AUC measures how well a model ranks positives above negatives, independent of any chosen threshold.

#DataScience #AI #Python
πŸ“Œ Agents Under the Curve (AUC)

πŸ—‚ Category: AGENTIC AI

πŸ•’ Date: 2025-12-30 | ⏱️ Read time: 15 min read

Towards understanding if your agentic solution is actually better

#DataScience #AI #Python
❀2
πŸ“Œ Production-Ready LLMs Made Simple with the NeMo Agent Toolkit

πŸ—‚ Category: AGENTIC AI

πŸ•’ Date: 2025-12-31 | ⏱️ Read time: 23 min read

From simple chat to multi-agent reasoning and real-time REST APIs

#DataScience #AI #Python
πŸ“Œ What Advent of Code Has Taught Me About Data Science

πŸ—‚ Category: PROGRAMMING

πŸ•’ Date: 2025-12-31 | ⏱️ Read time: 10 min read

Five key learnings that I discovered during a programming challenge and how they apply to…

#DataScience #AI #Python
πŸ“Œ Chunk Size as an Experimental Variable in RAG Systems

πŸ—‚ Category: LARGE LANGUAGE MODELS

πŸ•’ Date: 2025-12-31 | ⏱️ Read time: 12 min read

Understanding retrieval in RAG systems by experimenting with different chunk sizes

#DataScience #AI #Python
πŸ“Œ The Machine Learning β€œAdvent Calendar” Bonus 2: Gradient Descent Variants in Excel

πŸ—‚ Category: MACHINE LEARNING

πŸ•’ Date: 2025-12-31 | ⏱️ Read time: 8 min read

Gradient Descent, Momentum, RMSProp, and Adam all aim for the same minimum. They do not…

#DataScience #AI #Python
amazing bot to get all resources about any things search it on telegram
❀1
πŸ“Œ EDA in Public (Part 3): RFM Analysis for Customer Segmentation in Pandas

πŸ—‚ Category: DATA SCIENCE

πŸ•’ Date: 2026-01-01 | ⏱️ Read time: 13 min read

How to build, score, and interpret RFM segments step by step

#DataScience #AI #Python
Harvard has made its textbook on ML systems publicly available. It's extremely practical: not just about how to train models, but how to build production systems around them - what really matters.

The topics there are really top-notch:

> Building autograd, optimizers, attention, and mini-PyTorch from scratch to understand how the framework is structured internally. (This is really awesome)
> Basic things about DL: batches, computational accuracy, model architectures, and training
> Optimizing ML performance, hardware acceleration, benchmarking, and efficiency

So this isn't just an introductory course on ML, but a complete cycle from start to practical application. You can already read the book and view the code for free. For 2025, this is one of the strongest textbooks to have been released, so it's best not to miss out.

The repository is here, with a link to the book inside πŸ‘

πŸ‘‰ @codeprogrammer
Please open Telegram to view this post
VIEW IN TELEGRAM
❀2
πŸ“Œ Deep Reinforcement Learning: The Actor-Critic Method

πŸ—‚ Category: REINFORCEMENT LEARNING

πŸ•’ Date: 2026-01-01 | ⏱️ Read time: 19 min read

Robot friends collaborate to learn to fly a drone

#DataScience #AI #Python
Cheat sheet for Python for Data Science: covers basic Python syntax (variables, data types, operations, strings), working with lists, NumPy arrays, indexing and slicing, main methods and functions, as well as importing libraries for data analysis

https://t.iss.one/DataScienceM
❀2