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Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho

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📈 Análisis del canal de Telegram Machine Learning

El canal Machine Learning (@machinelearning9) en el segmento lingüístico de Inglés es un actor destacado. Actualmente la comunidad reúne a 40 123 suscriptores, ocupando la posición 3 380 en la categoría Tecnologías y Aplicaciones y el puesto 231 en la región Siria.

📊 Métricas de audiencia y dinámica

Desde su creación el невідомо, el proyecto ha mostrado un crecimiento acelerado, reuniendo a 40 123 suscriptores.

Según los últimos datos del 25 junio, 2026, el canal mantiene una actividad estable. En los últimos 30 días la variación de miembros fue de 395, y en las últimas 24 horas de 12, conservando un alto alcance.

  • Estado de verificación: No verificado
  • Tasa de interacción (ER): El promedio de interacción de la audiencia es 1.89%. Durante las primeras 24 horas tras publicar, el contenido suele obtener 1.31% de reacciones respecto al total de suscriptores.
  • Alcance de las publicaciones: Cada publicación recibe en promedio 758 visualizaciones. En el primer día suele acumular 525 visualizaciones.
  • Reacciones e interacción: La audiencia responde de forma activa: el promedio de reacciones por publicación es 2.
  • Intereses temáticos: El contenido se centra en temas clave como distance, insidead, gpu, learning, degree.

📝 Descripción y política de contenido

El autor describe el recurso como un espacio para expresar opiniones subjetivas:
Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho

Gracias a la alta frecuencia de actualizaciones (últimos datos recibidos el 26 junio, 2026), el canal mantiene la vigencia y un amplio alcance. La analítica demuestra que la audiencia interactúa activamente con el contenido, lo que lo convierte en un punto de referencia dentro de la categoría Tecnologías y Aplicaciones.

40 123
Suscriptores
+1224 horas
+697 días
+39530 días
Archivo de publicaciones
Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order m
Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order monitoring and AI-powered BuyBox hunting, SellerFlash makes selling effortless in Amazon. 💫Say goodbye to manual chaos. With SellerFlash, you will manage listings, inventory, buyer messages and feedback campaigns all from one smart cloud platform designed for Amazon sellers. 👉🏽https://www.sellerflash.com/en/ Sponsored By WaybienAds

📌 The Machine Learning “Advent Calendar” Day 19: Bagging in Excel 🗂 Category: MACHINE LEARNING 🕒 Date: 2025-12-19 | ⏱️ Rea
📌 The Machine Learning “Advent Calendar” Day 19: Bagging in Excel 🗂 Category: MACHINE LEARNING 🕒 Date: 2025-12-19 | ⏱️ Read time: 11 min read Understanding ensemble learning from first principles in Excel #DataScience #AI #Python

Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order m
Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order monitoring and AI-powered BuyBox hunting, SellerFlash makes selling effortless in Amazon. 💫Say goodbye to manual chaos. With SellerFlash, you will manage listings, inventory, buyer messages and feedback campaigns all from one smart cloud platform designed for Amazon sellers. 👉🏽https://www.sellerflash.com/en/ Sponsored By WaybienAds

Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order m
Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order monitoring and AI-powered BuyBox hunting, SellerFlash makes selling effortless in Amazon. 💫Say goodbye to manual chaos. With SellerFlash, you will manage listings, inventory, buyer messages and feedback campaigns all from one smart cloud platform designed for Amazon sellers. 👉🏽https://www.sellerflash.com/en/ Sponsored By WaybienAds

📌 The Machine Learning “Advent Calendar” Day 18: Neural Network Classifier in Excel 🗂 Category: MACHINE LEARNING 🕒 Date: 2
📌 The Machine Learning “Advent Calendar” Day 18: Neural Network Classifier in Excel 🗂 Category: MACHINE LEARNING 🕒 Date: 2025-12-18 | ⏱️ Read time: 12 min read Understanding forward propagation and backpropagation through explicit formulas #DataScience #AI #Python

📌 Generating Artwork in Python Inspired by Hirst’s Million-Dollar Spots Painting 🗂 Category: PROGRAMMING 🕒 Date: 2025-12-1
📌 Generating Artwork in Python Inspired by Hirst’s Million-Dollar Spots Painting 🗂 Category: PROGRAMMING 🕒 Date: 2025-12-18 | ⏱️ Read time: 6 min read Using Python to generate art #DataScience #AI #Python

📌 The Subset Sum Problem Solved in Linear Time for Dense Enough Inputs 🗂 Category: ALGORITHMS 🕒 Date: 2025-12-18 | ⏱️ Read
📌 The Subset Sum Problem Solved in Linear Time for Dense Enough Inputs 🗂 Category: ALGORITHMS 🕒 Date: 2025-12-18 | ⏱️ Read time: 31 min read An optimal solution to the well-known NP-complete problem, when the input values are close enough… #DataScience #AI #Python

Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order m
Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order monitoring and AI-powered BuyBox hunting, SellerFlash makes selling effortless in Amazon. 💫Say goodbye to manual chaos. With SellerFlash, you will manage listings, inventory, buyer messages and feedback campaigns all from one smart cloud platform designed for Amazon sellers. 👉🏽https://www.sellerflash.com/en/ Sponsored By WaybienAds

📌 4 Ways to Supercharge Your Data Science Workflow with Google AI Studio 🗂 Category: LLM APPLICATIONS 🕒 Date: 2025-12-18 |
📌 4 Ways to Supercharge Your Data Science Workflow with Google AI Studio 🗂 Category: LLM APPLICATIONS 🕒 Date: 2025-12-18 | ⏱️ Read time: 11 min read With concrete examples of using AI Studio Build mode to learn faster, prototype smarter, communicate… #DataScience #AI #Python

Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order m
Take Control of Selling in Amazon! 💫Too many tools, too little time? With dynamic pricing, real-time stock tracking, order monitoring and AI-powered BuyBox hunting, SellerFlash makes selling effortless in Amazon. 💫Say goodbye to manual chaos. With SellerFlash, you will manage listings, inventory, buyer messages and feedback campaigns all from one smart cloud platform designed for Amazon sellers. 👉🏽https://www.sellerflash.com/en/ Sponsored By WaybienAds

“I thought I knew every trick in degen trading—until I lost everything overnight.” What if the game isn’t what you think? I d
“I thought I knew every trick in degen trading—until I lost everything overnight.” What if the game isn’t what you think? I discovered 3 hidden signals nobody talks about that changed everything. If you want to see beyond the noise and avoid fatal mistakes, this is where it starts. Join SAM PLAYS 💎 and trade smarter, not harder. #ad InsideAds

🚀 Top 9 Predictive Models Every Data Scientist Should Know in 2025 In the world of Machine Learning, selecting the right pre
🚀 Top 9 Predictive Models Every Data Scientist Should Know in 2025 In the world of Machine Learning, selecting the right predictive model is crucial for solving real-world problems effectively. Here’s a deep dive into the top 9 models and when to use them :- 1️⃣ Regularized Linear/Logistic Regression • Best for: Tabular data with mostly linear effects • Why: Fast, interpretable, strong baseline • Watch out: Multicollinearity, feature scaling • Key knobs: L1/L2/Elastic Net strength 2️⃣ Decision Trees • Best for: Simple rules and quick interpretability • Why: Captures nonlinearity and feature interactions • Watch out: Overfitting • Key knobs: max_depth, min_samples_leaf 3️⃣ Random Forest • Best for: Mixed-type tabular data • Why: Robust, handles missingness, low tuning effort • Watch out: Slower inference for large models • Key knobs: n_estimators, max_features 4️⃣ Gradient Boosting Trees • Best for: Structured data requiring top performance • Why: Handles complex patterns and interactions • Watch out: Overfitting if not tuned carefully • Key knobs: learning_rate, n_estimators, max_depth, regularization 5️⃣ Support Vector Machines (linear/RBF) • Best for: Medium-sized datasets with clear margins • Why: Strong performance after scaling • Watch out: Kernel choice and cost at scale • Key knobs: C, kernel, gamma 6️⃣ k-Nearest Neighbors (k-NN) • Best for: Small datasets with local structure • Why: Simple, non-parametric • Watch out: Poor scaling, sensitive to feature scaling • Key knobs: k, distance metric, weighting 7️⃣ Naive Bayes • Best for: High-dimensional sparse features (like text) • Why: Very fast, competitive for many applications • Watch out: Independence assumption • Key knobs: smoothing (alpha) 8️⃣ Multilayer Perceptrons (Feedforward Neural Networks) • Best for: Nonlinear relationships with sufficient data & compute • Why: Flexible universal approximators • Watch out: Tuning, overfitting without regularization • Key knobs: layers/neurons, dropout, learning rate 9️⃣ Classical Time-Series Models • Best for: Univariate or small-multivariate forecasting with seasonality • Why: Transparent baselines, good for limited data • Watch out: Stationarity, careful feature engineering • Key knobs: (p, d, q), seasonal terms, exogenous variables 💡 Pro Tip: Each model has its strengths and trade-offs. Understanding when to use which model and how to tune its hyperparameters is key to building robust and interpretable predictive systems. https://t.me/DataScienceM

100+ LLM Interview Questions and Answers (GitHub Repo) Anyone preparing for #AI/#ML Interviews, it is mandatory to have good
100+ LLM Interview Questions and Answers (GitHub Repo) Anyone preparing for #AI/#ML Interviews, it is mandatory to have good knowledge related to #LLM topics. This# repo includes 100+ LLM interview questions (with answers) spanning over LLM topics like LLM Inference LLM Fine-Tuning LLM Architectures LLM Pretraining Prompt Engineering etc. ➡️ Github Repo - https://github.com/KalyanKS-NLP/LLM-Interview-Questions-and-Answers-Hub

19. Why is cross-entropy preferred over accuracy as a training objective? A. Accuracy is non-differentiable B. Accuracy requires larger datasets C. Cross-entropy reduces model size D. Cross-entropy prevents overfitting Correct answer: A. 20. What is the core assumption behind convolutional neural networks? A. Features are independent B. Data is linearly separable C. Local patterns are spatially correlated D. Labels are mutually exclusive Correct answer: C. https://t.me/DataScienceM

1. What is the main numerical reason batch normalization accelerates training? A. It increases model capacity B. It reduces internal covariate shift C. It removes the need for regularization D. It replaces activation functions Correct answer: B. 2. Why are sigmoid activations problematic in deep networks? A. They are non-differentiable B. They produce sparse activations C. They saturate and cause vanishing gradients D. They require large learning rates Correct answer: C. 3. What happens when the learning rate is set too high? A. Training converges slowly B. The model overfits C. The loss oscillates or diverges D. Gradients vanish Correct answer: C. 4. In convolutional layers, what determines the receptive field size? A. Number of filters B. Kernel size and depth C. Activation function D. Optimizer type Correct answer: B. 5. Why is weight sharing important in CNNs? A. It increases model depth B. It reduces computational cost and parameters C. It improves gradient descent accuracy D. It prevents exploding gradients Correct answer: B. 6. What is the primary function of padding in convolutional networks? A. Increase number of channels B. Reduce overfitting C. Preserve spatial dimensions D. Normalize input values Correct answer: C. 7. Which condition most strongly indicates data leakage? A. High training accuracy B. Low training loss C. Validation performance better than training D. Slow convergence Correct answer: C. 8. Why are recurrent neural networks difficult to train on long sequences? A. High memory usage B. Nonlinear activations C. Vanishing and exploding gradients D. Large batch sizes Correct answer: C. 9. What architectural feature allows LSTMs to mitigate vanishing gradients? A. Residual connections B. Gated cell state C. Dropout layers D. Weight decay Correct answer: B. 10. In sequence modeling, what does teacher forcing refer to? A. Using larger batch sizes B. Feeding ground-truth outputs during training C. Freezing embedding layers D. Shuffling time steps Correct answer: B. 11. Why is softmax unsuitable for multi-label classification? A. It is not differentiable B. It enforces mutually exclusive class probabilities C. It cannot handle sparse targets D. It causes gradient explosion Correct answer: B. 12. What does L2 regularization mathematically penalize? A. Absolute values of weights B. Squared magnitude of weights C. Number of parameters D. Gradient variance Correct answer: B. 13. Why does mean squared error perform poorly for classification? A. It is computationally expensive B. It ignores class imbalance C. It provides weak gradients for confident wrong predictions D. It cannot be minimized Correct answer: C. 14. What is the main advantage of global average pooling? A. Increases spatial resolution B. Adds trainable parameters C. Reduces overfitting by eliminating dense layers D. Improves gradient flow Correct answer: C. 15. Why are pretrained embeddings useful in NLP tasks? A. They reduce input sequence length B. They encode semantic relationships learned from large corpora C. They eliminate the need for tokenization D. They prevent overfitting entirely Correct answer: B. 16. What does gradient clipping primarily prevent? A. Overfitting B. Vanishing gradients C. Exploding gradients D. Data leakage Correct answer: C. 17. Why is shuffling training data between epochs important? A. To increase batch size B. To improve memory usage C. To reduce bias in gradient updates D. To stabilize validation loss Correct answer: C. 18. What is the main risk of excessive model capacity? A. Slow inference B. Underfitting C. Overfitting D. Numerical instability Correct answer: C.

1. What is the primary purpose of a loss function in a neural network? A. To initialize model weights B. To measure the model’s prediction error C. To update training data D. To visualize model performance Correct answer: B. 2. Which component is responsible for updating model weights during training? A. Loss function B. Activation function C. Optimizer D. Metric Correct answer: C. 3. What does an epoch represent during model training? A. A single weight update B. One forward pass only C. One complete pass over the training dataset D. One mini-batch Correct answer: C. 4. Which activation function is commonly used in hidden layers to mitigate vanishing gradients? A. Sigmoid B. Tanh C. ReLU D. Softmax Correct answer: C. 5. What is the main role of the validation dataset? A. To update model weights B. To test final model performance C. To tune hyperparameters and monitor overfitting D. To normalize input data Correct answer: C. 6. Which technique randomly disables neurons during training to reduce overfitting? A. Batch normalization B. Dropout C. Data augmentation D. Early stopping Correct answer: B. 7. What problem does regularization primarily address? A. Underfitting B. Exploding gradients C. Overfitting D. Data leakage Correct answer: C. 8. Which type of neural network is best suited for image data? A. Recurrent Neural Network B. Fully Connected Network C. Convolutional Neural Network D. Autoencoder Correct answer: C. 9. What is the purpose of convolutional filters in CNNs? A. To reduce dataset size B. To detect local patterns in data C. To normalize pixel values D. To perform classification directly Correct answer: B. 10. What does pooling primarily achieve in convolutional neural networks? A. Increases spatial resolution B. Reduces overfitting by adding noise C. Reduces spatial dimensions and computation D. Converts images to vectors Correct answer: C. 11. Which loss function is most appropriate for multi-class classification? A. Mean Squared Error B. Binary Crossentropy C. Categorical Crossentropy D. Hinge Loss Correct answer: C. 12. What is a common symptom of overfitting? A. High training loss and high validation loss B. Low training loss and high validation loss C. High training accuracy and low training loss D. Low training accuracy and low validation accuracy Correct answer: B. 13. What does backpropagation compute? A. Model predictions B. Loss values only C. Gradients of the loss with respect to weights D. Input feature scaling Correct answer: C. 14. Which Keras method is used to define the training configuration of a model? A. fit() B. compile() C. evaluate() D. predict() Correct answer: B. 15. What is transfer learning primarily based on? A. Training from scratch on small datasets B. Reusing pre-trained models or layers C. Random weight initialization D. Increasing model depth Correct answer: B. 16. Which type of layer is used to flatten multidimensional input into a vector? A. Dense B. Conv2D C. Flatten D. Dropout Correct answer: C. 17. What is the main advantage of mini-batch gradient descent? A. Exact gradient computation B. No memory usage C. Faster convergence with stable updates D. Eliminates need for an optimizer Correct answer: C. 18. Which metric is commonly used to evaluate classification models? A. Mean Absolute Error B. R-squared C. Accuracy D. Perplexity Correct answer: C. 19. What is the primary goal of early stopping? A. Speed up data loading B. Prevent overfitting by stopping training at the right time C. Increase model capacity D. Improve gradient flow Correct answer: B. 20. Which framework is primarily used in the book to implement deep learning models? A. PyTorch B. Scikit-learn C. Keras with TensorFlow backend D. MXNet Correct answer: C. https://t.me/DataScienceM

1. What is the primary goal of a neural network? A. Store data efficiently B. Learn representations from data C. Replace traditional programming languages D. Perform symbolic reasoning Correct answer: B. 2. Which component of a neural network applies a non-linear transformation? A. Optimizer B. Loss function C. Activation function D. Dataset Correct answer: C. 3. What does a loss function measure? A. Model complexity B. Training speed C. Prediction error D. Number of parameters Correct answer: C. 4. Which algorithm is used to update neural network weights? A. Forward propagation B. Gradient descent C. Feature scaling D. Data normalization Correct answer: B. 5. What is backpropagation used for? A. Initializing weights B. Computing gradients C. Shuffling data D. Reducing overfitting Correct answer: B. 6. Which library is the high-level API emphasized in the book? A. PyTorch B. Scikit-learn C. Keras D. NumPy Correct answer: C. 7. What type of layer is commonly used for image data? A. Dense B. Recurrent C. Convolutional D. Embedding Correct answer: C. 8. What problem does overfitting describe? A. Model fails to learn patterns B. Model learns noise instead of signal C. Model trains too slowly D. Model has too few parameters Correct answer: B. 9. Which technique helps reduce overfitting? A. Increasing epochs B. Dropout C. Larger batch size D. Higher learning rate Correct answer: B. 10. What is the purpose of a validation set? A. Update model weights B. Test final performance only C. Tune hyperparameters D. Store unused data Correct answer: C. 11. Which activation function is commonly used in binary classification output layers? A. ReLU B. Tanh C. Softmax D. Sigmoid Correct answer: D. 12. What does an epoch represent? A. One layer in a network B. One forward pass C. One full pass over the training data D. One batch update Correct answer: C. 13. Which optimizer adapts learning rates during training? A. SGD B. RMSprop C. Perceptron D. K-means Correct answer: B. 14. What type of network is designed for sequence data? A. CNN B. DNN C. RNN D. GAN Correct answer: C. 15. What framework does Keras commonly run on top of? A. Theano B. Caffe C. TensorFlow D. MXNet Correct answer: C.

📌 3 Techniques to Effectively Utilize AI Agents for Coding 🗂 Category: LLM APPLICATIONS 🕒 Date: 2025-12-17 | ⏱️ Read time:
📌 3 Techniques to Effectively Utilize AI Agents for Coding 🗂 Category: LLM APPLICATIONS 🕒 Date: 2025-12-17 | ⏱️ Read time: 8 min read Learn how to be an effective engineer with coding agents #DataScience #AI #Python

This channels is for Programmers, Coders, Software Engineers. 0️⃣ Python 1️⃣ Data Science 2️⃣ Machine Learning 3️⃣ Data Visua
This channels is for Programmers, Coders, Software Engineers. 0️⃣ Python 1️⃣ Data Science 2️⃣ Machine Learning 3️⃣ Data Visualization 4️⃣ Artificial Intelligence 5️⃣ Data Analysis 6️⃣ Statistics 7️⃣ Deep Learning 8️⃣ programming Languages ✅ https://t.me/addlist/8_rRW2scgfRhOTc0https://t.me/Codeprogrammer

📌 Production-Grade Observability for AI Agents: A Minimal-Code, Configuration-First Approach 🗂 Category: AGENTIC AI 🕒 Date
📌 Production-Grade Observability for AI Agents: A Minimal-Code, Configuration-First Approach 🗂 Category: AGENTIC AI 🕒 Date: 2025-12-17 | ⏱️ Read time: 12 min read LLM-as-a-Judge, regression testing, and end-to-end traceability of multi-agent LLM systems #DataScience #AI #Python