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Data science and machine learning hub Python, SQL, stats, ML, deep learning, projects, PDFs, roadmaps and AI resources. For beginners, data scientists and ML engineers 👉 https://rebrand.ly/bigdatachannels DMCA: @disclosure_bds Contact: @mldatascientist

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📈 Аналитический обзор Telegram-канала Data science/ML/AI

Канал Data science/ML/AI (@datascience_bds) языкового сегмента Английский является активным участником. Сейчас сообщество объединяет 13 667 подписчиков, занимая 9 391 место в категории Технологии и приложения и 31 743 место в регионе Индия.

📊 Показатели аудитории и динамика

С момента создания невідомо проект демонстрирует стремительный рост, собрав аудиторию из 13 667 подписчиков.

Согласно последним данным от 08 июня, 2026, канал показывает стабильную активность. За последние 30 дней изменение числа участников составило 150, а за последние 24 часа — 4, при этом общий охват остаётся высоким.

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  • Охват публикаций: В среднем каждый пост получает 1 089 просмотров. В течение первых суток публикация набирает 310 просмотров.
  • Реакции и взаимодействия: Аудитория активно поддерживает контент: среднее количество реакций на один пост — 5.
  • Тематические интересы: Контент сосредоточен на ключевых темах, таких как panda, learning, row, api, ethic.

📝 Описание и контентная политика

Автор описывает ресурс как площадку для выражения субъективного мнения:
Data science and machine learning hub Python, SQL, stats, ML, deep learning, projects, PDFs, roadmaps and AI resources. For beginners, data scientists and ML engineers 👉 https://rebrand.ly/bigdatachannels DMCA: @disclosure_bds Contact: @mldatasci...

Благодаря высокой частоте обновлений (последние данные получены 09 июня, 2026) канал поддерживает актуальность и высокий уровень охвата публикаций. Аналитика показывает, что аудитория активно взаимодействует с контентом, что делает его важной точкой влияния в категории Технологии и приложения.

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lerobot This is an end-to-end library for robot learning. It handles the entire pipeline from loading and processing robotics datasets to training policies and deploying them in simulation or on real hardware. Creator:   huggingface Stars ⭐️:  19,000 Forked by: 3,000 Github Repo: https://github.com/huggingface/lerobot #robotics #AI ➖➖➖➖➖➖➖➖➖➖➖➖➖➖     Join @github_repositories_bds for more cool repositories. This channel belongs to @bigdataspecialist group

Top Data Science Tools By Function
Top Data Science Tools By Function

📚 Data Science Riddle A business team wants interpretable insights, not just predictions. What's the best model to start with?
Anonymous voting

Notes on SQL for data management and analysis, including queries and integration with R, from University of South Carolina.

Top 6 Types of AI Models
Top 6 Types of AI Models

📚 Data Science Riddle Why might your SQL join explode the number of rows unexpectedly?
Anonymous voting

Skills Needed To Become Data Analyst
Skills Needed To Become Data Analyst

This is our latest post from Instagram page, saved as PDF. If you want a very comprehensive breakdown on what's LLMs are and how they actually work, you might want to check it out. Here's our Instagram post: Explaining LLMs

Regularization: The Art of Keeping Models Humble Overfitting is the “ego problem” of models. They memorize training data and
Regularization: The Art of Keeping Models Humble Overfitting is the “ego problem” of models. They memorize training data and forget how to generalize. Regularization is how we humble them. ➡️ L1 (Lasso): Shrinks some weights to zero → performs feature selection. ➡️ L2 (Ridge): Reduces all weights slightly → smooths learning. ➡️ Dropout: Randomly removes neurons during training → prevents co-dependence. It’s not about punishment but it’s about discipline. Regularization teaches models to focus on patterns, not exceptions. 💭 Remember: The best models don’t just fit data. They respect uncertainty.

📚 Data Science Riddle You discover your regression model performs poorly on recent data. The relationships between variables have shifted. What's this called?
Anonymous voting

List of AI Project Ideas 👨🏻‍💻 Beginner Projects 🔹 Sentiment Analyzer 🔹 Image Classifier 🔹 Spam Detection System 🔹 Face Detection 🔹 Chatbot (Rule-based) 🔹 Movie Recommendation System 🔹 Handwritten Digit Recognition 🔹 Speech-to-Text Converter 🔹 AI-Powered Calculator 🔹 AI Hangman Game Intermediate Projects 🔸 AI Virtual Assistant 🔸 Fake News Detector 🔸 Music Genre Classification 🔸 AI Resume Screener 🔸 Style Transfer App 🔸 Real-Time Object Detection 🔸 Chatbot with Memory 🔸 Autocorrect Tool 🔸 Face Recognition Attendance System 🔸 AI Sudoku Solver Advanced Projects 🔺 AI Stock Predictor 🔺 AI Writer (GPT-based) 🔺 AI-powered Resume Builder 🔺 Deepfake Generator 🔺 AI Lawyer Assistant 🔺 AI-Powered Medical Diagnosis 🔺 AI-based Game Bot 🔺 Custom Voice Cloning 🔺 Multi-modal AI App 🔺 AI Research Paper Summarizer

🚨 When & How Jupyter Notebooks Fail (And What To Use Instead) Hey Data Folks! 👩‍💻👨‍💻 Let’s talk about Jupyter Notebooks — powerful for exploration, but risky in production. Here’s why: ❌ Problems with Notebooks: 1. Out-of-order execution → hidden bugs. 2. Code changes after execution → inconsistent results. 3. Data leakage → sensitive info in outputs. 4. Security risks → tokens/keys exposed. 5. Hard to apply engineering practices → no modular code, testing, CI/CD. 6. Collaboration pain → merge conflicts, JSON issues. 7. Reproducibility issues → missing dependencies, versions. ✅ When They’re Useful: - Quick data exploration & prototyping. - Knowledge sharing (clean, runnable from top to bottom). - Teaching / hands-on tutorials (with solution notebooks). 🔧 What to Use Instead: - For production code → .py files + IDEs. - For workflows → template repos & reproducible setups. - For deployment → MLOps tools, pipelines, automation. 💡 Key Takeaways: - Use notebooks for exploration & teaching. - Use structured code + pipelines for production & deployment. - Always document dependencies, keep notebooks clean, never commit secrets!

📚 Data Science Riddle Your batch ETL job runs slower each week despite no code change. What's your first suspect?
Anonymous voting

Pandas Cheatsheet For Data Analysis
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Pandas Cheatsheet For Data Analysis

Hey everyone 👋 Some time ago, I asked if I should start a Data Science educational series and since 96% of you said yes, I b
Hey everyone 👋 Some time ago, I asked if I should start a Data Science educational series and since 96% of you said yes, I began creating it. But many of you also asked for real, hands-on experience with projects, not just lessons. So I decided to shift gears. It’s now becoming a full practical coding course! 💻 My goal is to help you build skills that get you job-ready, not just teach theory. It’s taking a bit longer, but I promise it’ll be worth it. Thank you all for your support and patience ❤️ I’ll let you know as soon as we’re ready to start!

📚 Data Science Riddle During EDA(Explanatory Data Analysis), what's the main reason we use box plots?
Anonymous voting

Discusses Modeling ETL workflows for data warehousing, including data sources and transformations, from Drexel University.

📚 Data Science Riddle Why is data validation before model training critical in production ML systems?
Anonymous voting

AI Engineer Roadmap
AI Engineer Roadmap

Latest post from our Instagram page, saved as PDF ☝️ You can also find it here: https://www.instagram.com/p/DQJrbCaDBpy/