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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Forwarded from Machine Learning
๐Ÿ“Œ Your First 90 Days as a Data Scientist

๐Ÿ—‚ Category: DATA SCIENCE

๐Ÿ•’ Date: 2026-02-14 | โฑ๏ธ Read time: 8 min read

A practical onboarding checklist for building trust, business fluency, and data intuition

#DataScience #AI #Python
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Data scientists are in high demand right now: there's just too much data to analyze.

In this course, Tatev and Vae teach #Python for #DataScience.

You'll be doing projects and exploring EDA, A/B testing, BI, and more.

https://t.me/Python53 ๐ŸŒŸ
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Data Science Roadmap.pdf
15.5 MB
๐Ÿท Comprehensive Data Science Roadmap Notes

โœ… This roadmap is exactly the secret recipe you need to get out of confusion and know how to step-by-step prepare yourself for the job market.

๐Ÿ•ก From mastering Python and SQL to cleaning data and working with cloud tools, which are prerequisites for any project.

๐Ÿ•‘ How to extract real analysis reports and strategies from raw data using statistics and visualization tools.

๐Ÿ•— You will learn everything from machine learning and advanced algorithms to precise model evaluation.

๐Ÿ•™ Get familiar with neural networks, generative artificial intelligence, and language models to have a voice in today's modern world.

๐Ÿ•ง How to build real projects and portfolios that are exactly what hiring managers and big companies are looking for.

๐ŸŒ #DataScience #DataScience #pytorch #python #Roadmap

https://t.me/CodeProgrammer
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๐Ÿค– 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 โ€“ 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 โ€“ 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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๐Ÿ—‚ A fresh deep learning course from MIT is now publicly available

A full-fledged educational course has been published on the university's website: 24 lectures, practical assignments, homework, and a collection of materials for self-study.

The program includes modern neural network architectures, generative models, transformers, inference, and other key topics.

โžก๏ธ Link to the course

tags: #Python #DataScience #DeepLearning #AI
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The matrix cookbook.pdf
676.5 KB
๐Ÿ“š Notes and Important Formulas โฌ…๏ธ "Matrices, Linear Algebra, and Probability"

๐Ÿ‘จ๐Ÿปโ€๐Ÿ’ป This booklet serves as an essential resource for individuals initiating their studies in data science. It consolidates comprehensive information on matrices, linear algebra, and probability, thereby eliminating the necessity of consulting multiple sources.

โœ๏ธ The document encompasses nearly all pertinent formulas and key concepts. It addresses foundational topics such as determinants and matrix inverses, as well as advanced subjects including eigenvalues, eigenvectors, Singular Value Decomposition (SVD), and probability distributions.

๐ŸŒ #DataScience #Python #Math

https://t.me/CodeProgrammer ๐ŸŒŸ
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๐Ÿ”– 3 websites with tasks for improving ML skills

A good selection for those who want to improve their skills in practice, rather than just reading theory:

โ–ถ๏ธ Deep-ML โ€” a complete stack from matrices to neural networks;
โ–ถ๏ธ Tensorgym โ€” practical exercises in ML;
โ–ถ๏ธ NeetCode ML โ€” the ML section from the authors of a well-known platform for preparing for interviews.

tags: #ML #DataScience #DataAnalysis

โžก https://t.me/CodeProgrammer
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This Machine Learning Cheat Sheet Saved Me Hours of Revision โณ

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

Whether you're:
๐Ÿ”น Preparing for data science interviews
๐Ÿ”น Working on ML projects
๐Ÿ”น Or strengthening your fundamentals
this one-page guide is a must-save.

โ™ป๏ธ Repost and share with your ML circle.

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

https://t.me/CodeProgrammer ๐Ÿ
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๐Ÿ”– Interactive textbook on probability theory and statistics ๐Ÿ“Šโœจ

A super-intuitive site where you can visually study distributions, sampling, and statistical concepts. ๐Ÿ“ˆ๐ŸŽฒ

No tons of formulas and boring theory โ€” everything is demonstrated through interactive examples and simulations. ๐Ÿ’ป๐Ÿ”ฌ

โ›“๏ธ Download here ๐Ÿ‘‡
https://seeing-theory.brown.edu/

#Probability #Statistics #DataScience #Learning #Interactive #Math

https://t.me/CodeProgrammer
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Forwarded from Learn Python Coding
Cheat sheet on the basics of Python: ๐Ÿ๐Ÿ“š

basic syntax and language rules ๐Ÿ“
scalar types โ€” basic data types (int, float, bool, str, NoneType) ๐Ÿ”ข

datetime โ€” working with date and time ๐Ÿ“…โฐ

data structures โ€” Python data structures (list, tuple, dict, set) ๐Ÿ—„

list โ€” mutable lists for storing data collections ๐Ÿ“‹
tuple โ€” immutable sequences of values ๐Ÿ”’
dict (hash map) โ€” storing data in a key-value format ๐Ÿ—
set โ€” unique elements without order ๐Ÿ”˜

slicing โ€” obtaining parts of sequences through indices and step โœ‚๏ธ

module/library โ€” connecting modules and libraries ๐Ÿ”Œ

help functions โ€” using help() and dir() to explore the Python API ๐Ÿ› 

#Python #Coding #DataScience #Programming #Tech #DevCommunity
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Forwarded from Machine Learning
๐Ÿš€ Master Binary Classification with Neural Networks! ๐Ÿง โœจ

Ever wondered how to build a neural network from scratch in Python using NumPy? ๐Ÿ๐Ÿ“Š

Binary classification is at the heart of many machine learning applications. ๐ŸŽฏ๐Ÿค–

Our super-detailed guide walks you through the entire process step by step. ๐Ÿ“๐Ÿ“š

๐Ÿ’ก Dive in and start building your own neural network today! ๐Ÿ—๐Ÿ”ฅ
https://tinztwinshub.com/data-science/a-beginners-guide-to-developing-an-artificial-neural-network-from-zero/

#MachineLearning #NeuralNetworks #Python #DataScience #AI #Tech
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Forwarded from Machine Learning
๐Ÿ”ฅ Awesome open-source project to learn more about Transformer Models! ๐Ÿค–โœจ

We found this interactive website that shows you visually how transformer models work. ๐ŸŒ๐Ÿ“Š

Transformer Explainer:
https://poloclub.github.io/transformer-explainer/

#TransformerModels #OpenSource #AI #MachineLearning #DataScience #Tech
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Forwarded from Data Analytics
Pandas vs Polars vs DuckDB: Which Library Should You Choose? ๐Ÿค”๐Ÿ“Š

pandas remains the default choice for notebooks, exploratory analysis, visualization, and machine learning workflows ๐Ÿ“๐Ÿ“ˆ. Polars focus on fast, memory-efficient DataFrame processing โšก๐Ÿ’พ, while DuckDB brings a SQL-first approach for querying local files and embedded analytics ๐Ÿ—„๏ธ๐Ÿ”.

Each tool fits a different kind of local data workflow ๐Ÿ› ๏ธ. In this article, we compare pandas, Polars, and DuckDB across performance, architecture, interoperability, and real-world use cases ๐Ÿ†๐Ÿ”—.

More: https://www.analyticsvidhya.com/blog/2026/05/pandas-vs-polars-vs-duckdb/ ๐Ÿ”—

#DataScience #Pandas #Polars #DuckDB #Python #Analytics
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Found an easy way to learn math for ML: Mathematics for Machine Learning ๐ŸŽ“๐Ÿ“š

This is a curated collection on GitHub, including books, research papers, video lectures, and basic materials on math for studying and reviewing the mathematical foundations of machine learning. ๐Ÿ“–๐Ÿ“Š

It helps build a stronger knowledge base by bringing together trusted resources around topics that machine learning engineers constantly encounter: linear algebra, mathematical analysis, probability theory, statistics, information theory, matrix calculus, and deep learning mathematics. ๐Ÿงฎ๐Ÿค–

Free public repository on GitHub. ๐Ÿ’ปโœจ

https://github.com/dair-ai/Mathematics-for-ML

#MachineLearning #Mathematics #DataScience #Learning #GitHub #AI

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Stop discovering ML Python libraries one random tutorial at a time ๐Ÿ›‘

Best-of Machine Learning with Python is a curated GitHub index of open-source machine learning Python libraries for builders who need a faster way to compare the ecosystem ๐Ÿ“š.

It helps you shortlist tools by grouping projects into categories and ranking them with a project-quality score based on metrics collected from GitHub and package managers ๐Ÿ“Š.

Key features:

โ€ข 920-project index โ€“ a large scan-friendly map of open-source ML Python projects ๐Ÿ—บ๏ธ
โ€ข 34 categories โ€“ browse by area like ML frameworks, NLP, image data, AutoML, deployment, interpretability, and more ๐Ÿงฉ
โ€ข Quality-score ranking โ€“ projects are ordered using an automated score from repo and package-manager signals โš™๏ธ
โ€ข Rich project metadata โ€“ entries show signals like stars, forks, issues, contributors, activity, downloads, and dependencies ๐Ÿ“ˆ
โ€ข Weekly updates + contributions โ€“ the list is updated regularly and can be improved via issues, PRs, or projects.yaml edits ๐Ÿ”„

Itโ€™s open-source (CC BY-SA 4.0 license) ๐Ÿ“œ.

https://github.com/lukasmasuch/best-of-ml-python ๐Ÿ”—

#MachineLearning #Python #ML #OpenSource #DataScience #TechStack

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Forwarded from Machine Learning
Data leakage is one of the main reasons why ML demos look impressive... and then fail in production. ๐Ÿ“‰

The model didn't become smarter.
It just happened to see the correct answers in advance.

In 4 minutes, you'll understand where data leaks hide. ๐Ÿ”

Let's break it down below: ๐Ÿ‘‡

1. Data Leakage ๐Ÿ•ณ๏ธ

Data leakage occurs when information that won't be available at the time of actual prediction is used during the model training process.

Because of this, metrics on the validation stage can look much better than the actual quality of the model on new, previously unseen data.

2. Model Evaluation โš–๏ธ

The test set isn't just "additional data".
It's a simulation of the future.

Only train the model on the information that would have been available to you at the time of prediction.
Evaluate it on examples that the model couldn't have influenced during training.

3. Direct Leakage ๐Ÿšจ

This is the most obvious type of leakage.

Examples:
- a field with information from the future;
- an ID that encodes the target variable;
- a variable that appears only after an event has occurred;
- duplicate records in both the training and test sets.

If a feature doesn't exist at the time of inference (prediction), then it's likely a source of data leakage.

4. Indirect Leakage ๐Ÿ•ต๏ธ

This is the type of leakage that most often traps teams.

You perform normalization, imputation, feature selection, outlier removal, or dimensionality reduction before splitting the data into a training and test set.

The model didn't directly see the data from the test set.
But your preprocessing pipeline already saw it.

5. Train/Test Split โœ‚๏ธ

Wrong:
fit the scaler on all data โ†’ split the data โ†’ evaluate

Right:
split the data โ†’ fit the scaler only on the training set โ†’ apply it to both the training and test sets

The same idea applies to imputers, encoders, feature selection, PCA, and any preprocessing step that is trained on the data.

6. Cross-Validation ๐Ÿ”„

Each fold is a mini-experiment with a training and test set.
Therefore, preprocessing should be performed within each fold.

If you prepared the entire dataset once and then ran cross-validation, each fold would already have had access to its held-out data.

7. Pipelines ๐Ÿ› ๏ธ

A pipeline isn't just a way to make the code cleaner.
It's also a defense against data leakage.

Combine preprocessing, feature selection, and the model into a single pipeline, and then pass this pipeline to cross-validation or hyperparameter search (grid search).

8. AI Engineering Version ๐Ÿค–

Data leaks also occur in RAG systems and when evaluating LLMs.

Leakage occurs when you tune chunks, prompts, re-rankers, thresholds, or examples on the same evaluation dataset that you later present as "held-out".

As a result, your benchmark turns into training data.

9. Leakage Checklist โœ…

Before trusting the obtained metric, ask yourself:

- Could this feature exist at the time of prediction?
- Was any transformation (transform) step trained (fit) on the test data?
- Did cross-validation include the entire pipeline?
- Were we tuning parameters on the final evaluation dataset?

If the answer is "yes", then the metric likely doesn't reflect the actual quality of the model.

#MachineLearning #DataScience #MLOps #DataLeakage #ArtificialIntelligence #TechTips

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