Machine Learning
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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
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๐Ÿš€ Master Data Science & Programming!

Unlock your potential with this curated list of Telegram channels. Whether you need books, datasets, interview prep, or project ideas, we have the perfect resource for you. Join the community today!


๐Ÿ”ฐ Machine Learning with Python
Learn Machine Learning with hands-on Python tutorials, real-world code examples, and clear explanations for researchers and developers.
https://t.iss.one/CodeProgrammer

๐Ÿ”– Machine Learning
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.
https://t.iss.one/DataScienceM

๐Ÿง  Code With Python
This channel delivers clear, practical content for developers, covering Python, Django, Data Structures, Algorithms, and DSA โ€“ perfect for learning, coding, and mastering key programming skills.
https://t.iss.one/DataScience4

๐ŸŽฏ PyData Careers | Quiz
Python Data Science jobs, interview tips, and career insights for aspiring professionals.
https://t.iss.one/DataScienceQ

๐Ÿ’พ Kaggle Data Hub
Your go-to hub for Kaggle datasets โ€“ explore, analyze, and leverage data for Machine Learning and Data Science projects.
https://t.iss.one/datasets1

๐Ÿง‘โ€๐ŸŽ“ Udemy Coupons | Courses
The first channel in Telegram that offers free Udemy coupons
https://t.iss.one/DataScienceC

๐Ÿ˜€ ML Research Hub
Advancing research in Machine Learning โ€“ practical insights, tools, and techniques for researchers.
https://t.iss.one/DataScienceT

๐Ÿ’ฌ Data Science Chat
An active community group for discussing data challenges and networking with peers.
https://t.iss.one/DataScience9

๐Ÿ Python Arab| ุจุงูŠุซูˆู† ุนุฑุจูŠ
The largest Arabic-speaking group for Python developers to share knowledge and help.
https://t.iss.one/PythonArab

๐Ÿ–Š Data Science Jupyter Notebooks
Explore the world of Data Science through Jupyter Notebooksโ€”insights, tutorials, and tools to boost your data journey. Code, analyze, and visualize smarter with every post.
https://t.iss.one/DataScienceN

๐Ÿ“บ Free Online Courses | Videos
Free online courses covering data science, machine learning, analytics, programming, and essential skills for learners.
https://t.iss.one/DataScienceV

๐Ÿ“ˆ Data Analytics
Dive into the world of Data Analytics โ€“ uncover insights, explore trends, and master data-driven decision making.
https://t.iss.one/DataAnalyticsX

๐ŸŽง Learn Python Hub
Master Python with step-by-step courses โ€“ from basics to advanced projects and practical applications.
https://t.iss.one/Python53

โญ๏ธ Research Papers
Professional Academic Writing & Simulation Services
https://t.iss.one/DataScienceY

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Admin: @HusseinSheikho
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๐Ÿ“Œ How to Build Your Own Custom LLM Memory Layer from Scratch

๐Ÿ—‚ Category: LARGE LANGUAGE MODELS

๐Ÿ•’ Date: 2026-02-04 | โฑ๏ธ Read time: 16 min read

Step-by-step guide to building autonomous memory retrieval systems

#DataScience #AI #Python
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๐Ÿ“Œ Planโ€“Codeโ€“Execute: Designing Agents That Create Their Own Tools

๐Ÿ—‚ Category: AGENTIC AI

๐Ÿ•’ Date: 2026-02-04 | โฑ๏ธ Read time: 24 min read

The case against pre-built tools in Agentic Architectures

#DataScience #AI #Python
โค2
๐Ÿ“Œ AWS vs. Azure: A Deep Dive into Model Training โ€“ Part 2

๐Ÿ—‚ Category: DATA SCIENCE

๐Ÿ•’ Date: 2026-02-04 | โฑ๏ธ Read time: 12 min read

This article covers how Azure MLโ€™s persistent, workspace-centric compute resources differ from AWS SageMakerโ€™s on-demand,โ€ฆ

#DataScience #AI #Python
โค3
๐Ÿ“Œ Mechanistic Interpretability: Peeking Inside an LLM

๐Ÿ—‚ Category: LARGE LANGUAGE MODELS

๐Ÿ•’ Date: 2026-02-05 | โฑ๏ธ Read time: 19 min read

Are the human-like cognitive abilities of LLMs real or fake? How does information travel throughโ€ฆ

#DataScience #AI #Python
โค3
๐Ÿ“Œ Why Is My Code So Slow? A Guide to Py-Spy Python Profiling

๐Ÿ—‚ Category: PROGRAMMING

๐Ÿ•’ Date: 2026-02-05 | โฑ๏ธ Read time: 10 min read

Stop guessing and start diagnosing performance issues using Py-Spy

#DataScience #AI #Python
โค3
๐Ÿ“Œ The Rule Everyone Misses: How to Stop Confusing loc and iloc in Pandas

๐Ÿ—‚ Category: DATA SCIENCE

๐Ÿ•’ Date: 2026-02-05 | โฑ๏ธ Read time: 9 min read

A simple mental model to remember when each one works (with examples that finally click).

#DataScience #AI #Python
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๐Ÿ“Œ Pydantic Performance: 4 Tips on How to Validate Large Amounts of Data Efficiently

๐Ÿ—‚ Category: DATA ENGINEERING

๐Ÿ•’ Date: 2026-02-06 | โฑ๏ธ Read time: 8 min read

The real value lies in writing clearer code and using your tools right

#DataScience #AI #Python
โค3๐Ÿ‘2
๐Ÿ“Œ Prompt Fidelity: Measuring How Much of Your Intent an AI Agent Actually Executes

๐Ÿ—‚ Category: AGENTIC AI

๐Ÿ•’ Date: 2026-02-06 | โฑ๏ธ Read time: 32 min read

How much of your AI agentโ€™s output is real data versus confident guesswork?

#DataScience #AI #Python
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๐Ÿ“Œ What I Am Doing to Stay Relevant as a Senior Analytics Consultant in 2026

๐Ÿ—‚ Category: DATA ANALYSIS

๐Ÿ•’ Date: 2026-02-07 | โฑ๏ธ Read time: 7 min read

Learn how to work with AI, while strengthening your unique human skills that technology cannotโ€ฆ

#DataScience #AI #Python
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๐Ÿš€ Machine Learning Workflow: Step-by-Step Breakdown
Understanding the ML pipeline is essential to build scalable, production-grade models.

๐Ÿ‘‰ Initial Dataset
Start with raw data. Apply cleaning, curation, and drop irrelevant or redundant features.
Example: Drop constant features or remove columns with 90% missing values.

๐Ÿ‘‰ Exploratory Data Analysis (EDA)
Use mean, median, standard deviation, correlation, and missing value checks.
Techniques like PCA and LDA help with dimensionality reduction.
Example: Use PCA to reduce 50 features down to 10 while retaining 95% variance.

๐Ÿ‘‰ Input Variables
Structured table with features like ID, Age, Income, Loan Status, etc.
Ensure numeric encoding and feature engineering are complete before training.

๐Ÿ‘‰ Processed Dataset
Split the data into training (70%) and testing (30%) sets.
Example: Stratified sampling ensures target distribution consistency.

๐Ÿ‘‰ Learning Algorithms
Apply algorithms like SVM, Logistic Regression, KNN, Decision Trees, or Ensemble models like Random Forest and Gradient Boosting.
Example: Use Random Forest to capture non-linear interactions in tabular data.

๐Ÿ‘‰ Hyperparameter Optimization
Tune parameters using Grid Search or Random Search for better performance.
Example: Optimize max_depth and n_estimators in Gradient Boosting.

๐Ÿ‘‰ Feature Selection
Use model-based importance ranking (e.g., from Random Forest) to remove noisy or irrelevant features.
Example: Drop features with zero importance to reduce overfitting.

๐Ÿ‘‰ Model Training and Validation
Use cross-validation to evaluate generalization. Train final model on full training set.
Example: 5-fold cross-validation for reliable performance metrics.

๐Ÿ‘‰ Model Evaluation
Use task-specific metrics:
- Classification โ€“ MCC, Sensitivity, Specificity, Accuracy
- Regression โ€“ RMSE, Rยฒ, MSE
Example: For imbalanced classes, prefer MCC over simple accuracy.

๐Ÿ’ก This workflow ensures models are robust, interpretable, and ready for deployment in real-world applications.

https://t.iss.one/DataScienceM
โค4
๐Ÿ“Œ The Death of the โ€œEverything Promptโ€: Googleโ€™s Move Toward Structured AI

๐Ÿ—‚ Category: ARTIFICIAL INTELLIGENCE

๐Ÿ•’ Date: 2026-02-09 | โฑ๏ธ Read time: 16 min read

How the new Interactions API enables deep-reasoning, stateful, agentic workflows.

#DataScience #AI #Python
๐Ÿ“Œ The Machine Learning Lessons Iโ€™ve Learned Last Month

๐Ÿ—‚ Category: MACHINE LEARNING

๐Ÿ•’ Date: 2026-02-09 | โฑ๏ธ Read time: 5 min read

Delayed January: deadlines, downtimes, and flow times

#DataScience #AI #Python
๐Ÿš€ Loss Functions in Machine Learning
Choosing the right loss function is not a minor detail. It directly shapes how a model learns, converges, and performs in production.

Regression and classification problems require very different optimization signals.

๐Ÿ‘‰ Regression intuition
- MSE and RMSE strongly penalize large errors, which helps when large deviations are costly, such as demand forecasting.
- MAE and Huber Loss handle noise better, which works well for sensor data or real world measurements with outliers.
- Log-Cosh offers smooth gradients and stable training when optimization becomes sensitive.

๐Ÿ‘‰ Classification intuition
- Binary Cross-Entropy is the default for yes or no problems like fraud detection.
- Categorical Cross-Entropy fits multi-class problems such as image or document classification.
- Sparse variants reduce memory usage when labels are integers.
- Hinge Loss focuses on decision margins and is common in SVMs.
- Focal Loss shines in imbalanced datasets like rare disease detection by focusing on hard examples.

Example:
For a credit card fraud model with extreme class imbalance, Binary Cross-Entropy often underperforms. Focal Loss shifts learning toward rare fraud cases and improves recall without sacrificing stability.

Loss functions are not interchangeable. They encode assumptions about data, noise, and business cost.

Choosing the correct one is a modeling decision, not a framework default.

https://t.iss.one/DataScienceM
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Effective Pandas 2: Opinionated Patterns for Data Manipulation

This book is now available at a discounted price through our Patreon grant:

Original Price: $53

Discounted Price: $12

Limited to 15 copies

Buy: https://www.patreon.com/posts/effective-pandas-150394542