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Machine Learning

Machine Learning

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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

Ko'proq ko'rsatish

📈 Telegram kanali Machine Learning analitikasi

Machine Learning (@machinelearning9) Ingliz til segmentidagi kanali faol ishtirokchi. Hozirda hamjamiyat 40 072 obunachidan iborat bo'lib, Texnologiyalar & Aralashmalar toifasida 3 398-o'rinni va Suriya mintaqasida 232-o'rinni egallagan.

📊 Auditoriya ko‘rsatkichlari va dinamika

невідомо sanasidan buyon loyiha tez o‘sib, 40 072 obunachiga ega bo‘ldi.

23 Iyun, 2026 dagi oxirgi ma’lumotlarga ko‘ra kanal barqaror faollikka ega. Oxirgi 30 kunda obunachilar soni 379 ga, so‘nggi 24 soatda esa 30 ga o‘zgardi va umumiy qamrov yuqori darajada qolmoqda.

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  • Jalb etish (ER): Auditoriya o‘rtacha 1.92% darajada jalb etiladi. Nashrdan keyingi dastlabki 24 soatda kontent odatda umumiy obunachilar sonining 1.16% ini tashkil etuvchi reaksiyalarni to‘playdi.
  • Post qamrovi: Har bir post o‘rtacha 770 marta ko‘riladi; birinchi sutkada odatda 466 ta ko‘rish yig‘iladi.
  • Reaksiyalar va o‘zaro ta’sir: Auditoriya faol: har bir postga o‘rtacha 3 ta reaksiya keladi.
  • Tematik yo‘nalishlar: Kontent distance, insidead, gpu, learning, degree kabi asosiy mavzularga jamlangan.

📝 Tavsif va kontent siyosati

Muallif resursni shaxsiy fikrni ifoda etish maydoni sifatida ta’riflaydi:
Real Machine Learning — simple, practical, and built on experience. Learn step by step with clear explanations and working code. Admin: @HusseinSheikho || @Hussein_Sheikho

Yuqori yangilanish chastotasi (oxirgi ma’lumot 24 Iyun, 2026 da olingan) sababli kanal doimo dolzarb va katta qamrovli bo‘lib qoladi. Analitika auditoriya kontent bilan faol hamkorlik qilishini, uni Texnologiyalar & Aralashmalar toifasidagi muhim ta’sir nuqtasiga aylantirishini ko‘rsatadi.

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AWS GenAI Developer Pro AIP-C01 Exam 2026 Mastering Agentic Workflows: Build Intelligent Agents, RAG Pipelines, and Guardrail
AWS GenAI Developer Pro AIP-C01 Exam 2026 Mastering Agentic Workflows: Build Intelligent Agents, RAG Pipelines, and Guardrails to Pass the AWS GenAI Professional... 🏷 Category: it-and-software 🌍 Language: English (US) 👥 Students: 0 students ⭐️ Rating: 0.0/5.0 (0 reviews) 🏃‍♂️ Enrollments Left: 987 ⏳ Expires In: 4D:23H:48M 💰 Price: $32.39 => FREE 🆔 Coupon: 995BE6A003191B61AA6A ⚠️ Please note: A verification layer has been added to prevent bad actors and bots from claiming the courses, so it is important for genuine users to enroll manually to not lose this free opportunity. 💎 By: https://t.me/DataScienceC

📌 A beginner’s guide to Tmux: a multitasking superpower for your terminal 🗂 Category: DEVELOPER TOOLS 🕒 Date: 2026-02-15 |
📌 A beginner’s guide to Tmux: a multitasking superpower for your terminal 🗂 Category: DEVELOPER TOOLS 🕒 Date: 2026-02-15 | ⏱️ Read time: 11 min read One of the new things I’ve come across recently, while researching command-line-based coding assistants, is… #DataScience #AI #Python

📌 Your First 90 Days as a Data Scientist 🗂 Category: DATA SCIENCE 🕒 Date: 2026-02-14 | ⏱️ Read time: 8 min read A practica
📌 Your First 90 Days as a Data Scientist 🗂 Category: DATA SCIENCE 🕒 Date: 2026-02-14 | ⏱️ Read time: 8 min read A practical onboarding checklist for building trust, business fluency, and data intuition #DataScience #AI #Python

📌 AI in Multiple GPUs: Point-to-Point and Collective Operations 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-13 | ⏱
📌 AI in Multiple GPUs: Point-to-Point and Collective Operations 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-13 | ⏱️ Read time: 10 min read Learn PyTorch distributed operations for multi GPU AI workloads #DataScience #AI #Python

📌 The Evolving Role of the ML Engineer 🗂 Category: AUTHOR SPOTLIGHTS 🕒 Date: 2026-02-13 | ⏱️ Read time: 5 min read Stephan
📌 The Evolving Role of the ML Engineer 🗂 Category: AUTHOR SPOTLIGHTS 🕒 Date: 2026-02-13 | ⏱️ Read time: 5 min read Stephanie Kirmer on the $200 billion investment bubble, how AI companies can rebuild trust, and… #DataScience #AI #Python

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📌 How to Leverage Explainable AI for Better Business Decisions 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-12 | ⏱️
📌 How to Leverage Explainable AI for Better Business Decisions 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-12 | ⏱️ Read time: 10 min read Moving beyond the black box to turn complex model outputs into actionable organizational strategies. #DataScience #AI #Python

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📌 AI in Multiple GPUs: Understanding the Host and Device Paradigm 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-12 |
📌 AI in Multiple GPUs: Understanding the Host and Device Paradigm 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-12 | ⏱️ Read time: 7 min read Learn how CPU and GPUs interact in the host-device paradigm #DataScience #AI #Python

📌 Building an AI Agent to Detect and Handle Anomalies in Time-Series Data 🗂 Category: AGENTIC AI 🕒 Date: 2026-02-11 | ⏱️ R
📌 Building an AI Agent to Detect and Handle Anomalies in Time-Series Data 🗂 Category: AGENTIC AI 🕒 Date: 2026-02-11 | ⏱️ Read time: 13 min read Combining statistical detection with agentic decision-making #DataScience #AI #Python

📌 Not All RecSys Problems Are Created Equal 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-02-11 | ⏱️ Read time: 9 min read How
📌 Not All RecSys Problems Are Created Equal 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-02-11 | ⏱️ Read time: 9 min read How baseline strength, churn, and subjectivity determine complexity #DataScience #AI #Python

📌 How to Model The Expected Value of Marketing Campaigns 🗂 Category: DATA SCIENCE 🕒 Date: 2026-02-10 | ⏱️ Read time: 9 min
📌 How to Model The Expected Value of Marketing Campaigns 🗂 Category: DATA SCIENCE 🕒 Date: 2026-02-10 | ⏱️ Read time: 9 min read The approach that takes companies to the next level of data maturity #DataScience #AI #Python

🐱 5 of the Best GitHub Repos 🔃 for Data Scientists 👨🏻‍💻 When I was just starting out and trying to get into the "data" f
🐱 5 of the Best GitHub Repos 🔃 for Data Scientists 👨🏻‍💻 When I was just starting out and trying to get into the "data" field, I had no one to guide me, nor did I know what exactly I should study. To be honest, I was confused for months and felt lost. ▶️ But doing projects was like water on fire and helped me a lot to build my skills. 〰 Repo Awesome Data Analysis 🏷 A complete treasure trove of everything you need to start: SQL, Python, AI, data analysis, and more... In short, if you want to start from zero and strengthen your foundation, start here first.                    ➖ ➖ ➖ 〰 Repo Data Scientist Handbook 🏷 A concise handbook that tells you what you need to learn and what you can ignore for now.                    ➖ ➖ ➖ 〰 Repo Cookiecutter Data Science 🏷 A standard project template used by professionals. With this template, you can structure your data analysis and AI projects like a pro.                    ➖ ➖ ➖ 〰 Repo Data Science Cookie Cutter 🏷 This is also a very clean project template that teaches you how to build a data project that won’t fall apart tomorrow and can be easily updated. Meaning your projects will be useful in the real world from the start.                    ➖ ➖ ➖ 〰 Repo ML From Scratch 🏷 Here, the main AI algorithms are implemented from scratch in simple language. It’s great for understanding how models really work and for explaining them well in your interviews. 🌐 #Data_Science #DataScience

📌 How to Personalize Claude Code 🗂 Category: LLM APPLICATIONS 🕒 Date: 2026-02-10 | ⏱️ Read time: 8 min read Learn how to g
📌 How to Personalize Claude Code 🗂 Category: LLM APPLICATIONS 🕒 Date: 2026-02-10 | ⏱️ Read time: 8 min read Learn how to get more out of Claude code by giving it access to more… #DataScience #AI #Python

📌 Implementing the Snake Game in Python 🗂 Category: PROGRAMMING 🕒 Date: 2026-02-10 | ⏱️ Read time: 17 min read An easy ste
📌 Implementing the Snake Game in Python 🗂 Category: PROGRAMMING 🕒 Date: 2026-02-10 | ⏱️ Read time: 17 min read An easy step-by-step guide to building the snake game from scratch #DataScience #AI #Python

Effective Pandas 2: Opinionated Patterns for Data Manipulation This book is now available at a discounted price through our P
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

🚀 Loss Functions in Machine Learning Choosing the right loss function is not a minor detail. It directly shapes how a model
🚀 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. 👉 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. 👉 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.me/DataScienceM

📌 The Machine Learning Lessons I’ve Learned Last Month 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-02-09 | ⏱️ Read time: 5 m
📌 The Machine Learning Lessons I’ve Learned Last Month 🗂 Category: MACHINE LEARNING 🕒 Date: 2026-02-09 | ⏱️ Read time: 5 min read Delayed January: deadlines, downtimes, and flow times #DataScience #AI #Python

📌 The Death of the “Everything Prompt”: Google’s Move Toward Structured AI 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 202
📌 The Death of the “Everything Prompt”: Google’s Move Toward Structured AI 🗂 Category: ARTIFICIAL INTELLIGENCE 🕒 Date: 2026-02-09 | ⏱️ Read time: 16 min read How the new Interactions API enables deep-reasoning, stateful, agentic workflows. #DataScience #AI #Python

🚀 Machine Learning Workflow: Step-by-Step Breakdown Understanding the ML pipeline is essential to build scalable, production
🚀 Machine Learning Workflow: Step-by-Step Breakdown Understanding the ML pipeline is essential to build scalable, production-grade models. 👉 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. 👉 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. 👉 Input Variables Structured table with features like ID, Age, Income, Loan Status, etc. Ensure numeric encoding and feature engineering are complete before training. 👉 Processed Dataset Split the data into training (70%) and testing (30%) sets. Example: Stratified sampling ensures target distribution consistency. 👉 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. 👉 Hyperparameter Optimization Tune parameters using Grid Search or Random Search for better performance. Example: Optimize max_depth and n_estimators in Gradient Boosting. 👉 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. 👉 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. 👉 Model Evaluation Use task-specific metrics: - Classification – MCC, Sensitivity, Specificity, Accuracy - Regression – RMSE, R², MSE Example: For imbalanced classes, prefer MCC over simple accuracy. 💡 This workflow ensures models are robust, interpretable, and ready for deployment in real-world applications.