ar
Feedback
Machine Learning & Artificial Intelligence | Data Science Free Courses

Machine Learning & Artificial Intelligence | Data Science Free Courses

الذهاب إلى القناة على Telegram

Perfect channel to learn Data Analytics, Data Sciene, Machine Learning & Artificial Intelligence Admin: @coderfun

إظهار المزيد

📈 نظرة تحليلية على قناة تيليجرام Machine Learning & Artificial Intelligence | Data Science Free Courses

تُعد قناة Machine Learning & Artificial Intelligence | Data Science Free Courses (@datasciencefree) في القطاع اللغوي الإنكليزية لاعباً نشطاً. يضم المجتمع حالياً 66 732 مشتركاً، محتلاً المرتبة 2 450 في فئة التعليم والمرتبة 436 في منطقة ماليزيا.

📊 مؤشرات الجمهور والحراك

منذ تأسيسه في невідомо، حقق المشروع نمواً سريعاً وجمع 66 732 مشتركاً.

بحسب آخر البيانات بتاريخ 24 يونيو, 2026، تحافظ القناة على نشاط مستقر. خلال آخر 30 يوماً تغيّر عدد الأعضاء بمقدار 534، وفي آخر 24 ساعة بمقدار 42، مع بقاء الوصول العام مرتفعاً.

  • حالة التحقق: غير موثّقة
  • معدل التفاعل (ER): يبلغ متوسط تفاعل الجمهور 0.75‎%. وخلال أول 24 ساعة من النشر يحصد المحتوى عادةً 0.79‎% من ردود الفعل نسبةً إلى إجمالي المشتركين.
  • وصول المنشورات: يحصل كل منشور على متوسط 502 مشاهدة. وخلال اليوم الأول يجمع عادةً 524 مشاهدة.
  • التفاعلات والاستجابة: يتفاعل الجمهور بانتظام؛ متوسط التفاعلات لكل منشور يبلغ 3.
  • الاهتمامات الموضوعية: يركز المحتوى على مواضيع رئيسية مثل sellerflash, waybienad, pricing, buybox, buyer.

📝 الوصف وسياسة المحتوى

يصف المؤلف القناة بأنها مساحة للتعبير عن الآراء الذاتية:
Perfect channel to learn Data Analytics, Data Sciene, Machine Learning & Artificial Intelligence Admin: @coderfun

بفضل وتيرة التحديث المرتفعة (أحدث البيانات بتاريخ 25 يونيو, 2026) تحافظ القناة على حداثتها ومستوى وصول مرتفع. وتُظهر التحليلات تفاعلاً نشطاً من الجمهور، ما يجعلها نقطة تأثير مهمة ضمن فئة التعليم.

66 732
المشتركون
+4224 ساعات
+687 أيام
+53430 أيام
أرشيف المشاركات
Every data scientist should know🙌🤩
+8
Every data scientist should know🙌🤩

Building the machine learning model
Building the machine learning model

Learning Python for data science can be a rewarding experience. Here are some steps you can follow to get started: 1. Learn the Basics of Python: Start by learning the basics of Python programming language such as syntax, data types, functions, loops, and conditional statements. There are many online resources available for free to learn Python. 2. Understand Data Structures and Libraries: Familiarize yourself with data structures like lists, dictionaries, tuples, and sets. Also, learn about popular Python libraries used in data science such as NumPy, Pandas, Matplotlib, and Scikit-learn. 3. Practice with Projects: Start working on small data science projects to apply your knowledge. You can find datasets online to practice your skills and build your portfolio. 4. Take Online Courses: Enroll in online courses specifically tailored for learning Python for data science. Websites like Coursera, Udemy, and DataCamp offer courses on Python programming for data science. 5. Join Data Science Communities: Join online communities and forums like Stack Overflow, Reddit, or Kaggle to connect with other data science enthusiasts and get help with any questions you may have. 6. Read Books: There are many great books available on Python for data science that can help you deepen your understanding of the subject. Some popular books include "Python for Data Analysis" by Wes McKinney and "Data Science from Scratch" by Joel Grus. 7. Practice Regularly: Practice is key to mastering any skill. Make sure to practice regularly and work on real-world data science problems to improve your skills. Remember that learning Python for data science is a continuous process, so be patient and persistent in your efforts. Good luck! Please react 👍❤️ if you guys want me to share more of this content...

10 Best Practices for Data Science The main bottleneck in data science are no longer compute power or sophisticated algorithm
10 Best Practices for Data Science The main bottleneck in data science are no longer compute power or sophisticated algorithms, but craftsmanship, communication, and process. And that the aim is to not only produce work that is accurate and correct, but also can be understood, work that others can collaborate on. Rule 1: Start Organized, Stay Organized Rule 2: Everything Comes from Somewhere, and the Raw Data is Immutable Rule 3: Version Control is Basic Professionalism Rule 4: Notebooks are for Exploration, Source Files are for Repetition Rule 5: Tests and Sanity Checks Prevent Catastrophes Rule 6: Fail Loudly, Fail Quickly Rule 7: Project Runs are Fully Automated from Raw Data to Final Outputs Rule 8: Important Parameters are Extracted and Centralized Rule 9: Project Runs are Verbose by Default and Result in Tangible Artifacts Rule 10: Start with the Simplest Possible End-to-End Pipeline Lessons

No one tells you to train Machine Learning models in Data Science interviews. Problems in Data Science interviews are focused on: 1. SQL for Querying Data 2. Python/R for Data Manipulation 3. Scenario Based Problems to test your way of approaching problems

You can use ChatGPT to make money online. 👇👇 https://t.me/aiindi/83

Tata 1mg is hiring Position: Data Scientist https://t.me/datasciencej/16

🔺 Free Machine learning Courses 1️⃣ Intro to ML course : an introductory and self-paced course to start machine learning. 2️⃣ ML for Everybody course : A simple approach to learning machine learning concepts. 3️⃣ ML in Python course : focus on machine learning with Python and Scikit-Learn. 4️⃣ ML Crash Course : A quick but comprehensive introduction to machine learning. 5️⃣ CS229 : ML : An advanced course for those who want to deepen their knowledge

TOP 10 SQL Concepts for Job Interview 1. Aggregate Functions (SUM/AVG) 2. Group By and Order By 3. JOINs (Inner/Left/Right) 4. Union and Union All 5. Date and Time processing 6. String processing 7. Window Functions (Partition by) 8. Subquery 9. View and Index 10. Common Table Expression (CTE) TOP 10 Statistics Concepts for Job Interview 1. Sampling 2. Experiments (A/B tests) 3. Descriptive Statistics 4. p-value 5. Probability Distributions 6. t-test 7. ANOVA 8. Correlation 9. Linear Regression 10. Logistics Regression TOP 10 Python Concepts for Job Interview 1. Reading data from file/table 2. Writing data to file/table 3. Data Types 4. Function 5. Data Preprocessing (numpy/pandas) 6. Data Visualisation (Matplotlib/seaborn/bokeh) 7. Machine Learning (sklearn) 8. Deep Learning (Tensorflow/Keras/PyTorch) 9. Distributed Processing (PySpark) 10. Functional and Object Oriented Programming #DataScienceWithDrAngshu #DataScience #Analytics #BigData #MachineLearning #ArtificialIntelligence #Python #SQL #Statistics #DataVisualisation #Experiments #Interview #Job

ML Engineer vs AI Engineer ML Engineer / MLOps -Focuses on the deployment of machine learning models. -Bridges the gap between data scientists and production environments. -Designing and implementing machine learning models into production. -Automating and orchestrating ML workflows and pipelines. -Ensuring reproducibility, scalability, and reliability of ML models. -Programming: Python, R, Java -Libraries: TensorFlow, PyTorch, Scikit-learn -MLOps: MLflow, Kubeflow, Docker, Kubernetes, Git, Jenkins, CI/CD tools AI Engineer / Developer - Applying AI techniques to solve specific problems. - Deep knowledge of AI algorithms and their applications. - Developing and implementing AI models and systems. - Building and integrating AI solutions into existing applications. - Collaborating with cross-functional teams to understand requirements and deliver AI-powered solutions. - Programming: Python, Java, C++ - Libraries: TensorFlow, PyTorch, Keras, OpenCV - Frameworks: ONNX, Hugging Face

Data Scientist Vs. Data Analyst Vs. Data Engineer What’s the difference between the data roles? The data role family is more than just one role that does it all. Here are the key differences. Data Scientist - Focuses on deriving insights and creating predictive models. - Strong background in math, statistics, and machine learning. - Analyzing complex datasets to identify patterns, trends, and insights. - Developing predictive models and machine learning algorithms. - Communicating findings to stakeholders through reports and visualizations. - Working with data engineers and analysts to implement data-driven solutions. - Uses tools like Python, R, SQL, Tableau, and others Data analyst - Focuses more on interpreting and visualizing data rather than creating predictive models. - Often works closely with business teams to provide actionable insights. - Collecting, processing, and performing statistical analyses on large data sets. - Creating data visualizations and dashboards to communicate insights. - Conducting ad-hoc analyses and generating reports for business decision-making. - Ensuring data quality and accuracy. - Uses tools like Excel, SQL, BI Tools, SAS Data Engineer - Focuses on the infrastructure and tools needed to store, process, and retrieve data. - Designing, building, and maintaining data pipelines and architectures. - Ensuring data is accessible, reliable, and efficient to process. - Integrating data from various sources and formats. - Optimizing database performance and data storage solutions. - Uses languages like Python, Java, Scala, as well as SQL and NOSQL, ETL tools, data warehouse tools and others

Complete Machine Learning Roadmap 👇👇 1. Introduction to Machine Learning - Definition - Purpose - Types of Machine Learning (Supervised, Unsupervised, Reinforcement) 2. Mathematics for Machine Learning - Linear Algebra - Calculus - Statistics and Probability 3. Programming Languages for ML - Python and Libraries (NumPy, Pandas, Matplotlib) - R 4. Data Preprocessing - Handling Missing Data - Feature Scaling - Data Transformation 5. Exploratory Data Analysis (EDA) - Data Visualization - Descriptive Statistics 6. Supervised Learning - Regression - Classification - Model Evaluation 7. Unsupervised Learning - Clustering (K-Means, Hierarchical) - Dimensionality Reduction (PCA) 8. Model Selection and Evaluation - Cross-Validation - Hyperparameter Tuning - Evaluation Metrics (Precision, Recall, F1 Score) 9. Ensemble Learning - Random Forest - Gradient Boosting 10. Neural Networks and Deep Learning - Introduction to Neural Networks - Building and Training Neural Networks - Convolutional Neural Networks (CNN) - Recurrent Neural Networks (RNN) 11. Natural Language Processing (NLP) - Text Preprocessing - Sentiment Analysis - Named Entity Recognition (NER) 12. Reinforcement Learning - Basics - Markov Decision Processes - Q-Learning 13. Machine Learning Frameworks - TensorFlow - PyTorch - Scikit-Learn 14. Deployment of ML Models - Flask for Web Deployment - Docker and Kubernetes 15. Ethical and Responsible AI - Bias and Fairness - Ethical Considerations 16. Machine Learning in Production - Model Monitoring - Continuous Integration/Continuous Deployment (CI/CD) 17. Real-world Projects and Case Studies 18. Machine Learning Resources - Online Courses - Books - Blogs and Journals 📚 Learning Resources for Machine Learning: - [Python for Machine Learning](https://t.me/udacityfreecourse/167) - [Fast.ai: Practical Deep Learning for Coders](https://course.fast.ai/) - [Intro to Machine Learning](https://learn.microsoft.com/en-us/training/paths/intro-to-ml-with-python/) 📚 Books: - Machine Learning Interviews - Machine Learning for Absolute Beginners 📚 Join @free4unow_backup for more free resources. ENJOY LEARNING! 👍👍

Crack your next Data Science Interview 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍 Hope thi
Crack your next Data Science Interview 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍 Hope this helps you 😊

There’s no single powerful machine learning algorithm that works well on any problem. Yes, algorithms like XGBoost can help you in Kaggle Competitions to build more accurate models. But the real world is different. Choose algorithms based on your data characteristics, the assumptions of algorithms, and the problem type.

Iterating over Pandas DataFrames can cost you much performance. Comparing iterrows() and itertuples() can help in some cases: 1. 𝗶𝘁𝗲𝗿𝗿𝗼𝘄𝘀(): Generates index and Series pairs for each row. 𝗣𝗿𝗼𝘀: Easy to use and intuitive. Suitable for small datasets. 𝗖𝗼𝗻𝘀: Slow for large datasets. Series conversion incurs additional overhead. 𝗨𝘀𝗲 𝗖𝗮𝘀𝗲: Quick data inspection and small-scale transformations. 2. 𝗶𝘁𝗲𝗿𝘁𝘂𝗽𝗹𝗲𝘀(): Returns namedtuples of the DataFrame rows. 𝗣𝗿𝗼𝘀: Much faster than iterrows(). More efficient for large datasets. 𝗖𝗼𝗻𝘀: Slightly less intuitive syntax. Avoid using when mutating DataFrames. 𝗨𝘀𝗲 𝗖𝗮𝘀𝗲: Large-scale data processing and read-only operations. For optimal performance, use vectorized operations whenever possible! Iteration methods should be your last resort! I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

Machine learning engineering is evolving into two distinct paths: - ML Engineers who focus on the research side: Advanced algorithms, GANs, CNNs, RL, learned optimizations, PyTorch, TensorFlow, and Keras. Developing novel architectures and publishing papers. - ML Engineers who focus on the engineering side: Model deployment, Python, business metrics, inference optimization, and applying research findings into production. Crack your next Data Science Interview 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍 Hope this helps you 😊

Entry-level AI/ML Jobs nowadays - 3+ years of deploying GPT models without touching the keyboard. - 5+ years of experience using TensorFlow, scikit-learn, etc. - 4+ years of Python/Java experience. - Graduate from a reputable university (TOP TIER UNIVERSITY) with a minimum GPA of 3.99/4.00. - Expertise in Database System Management, Frontend Development, and System Integration. - Proficiency in Python and one or more programming languages such as Java, Javascript, or GoLang is a plus - 4+ years with training, fine-tuning, and deploying LLMs (e.g., GPT, LLAMA, mistral) • Expertise in using Al development frameworks such as TensorFlow, PyTorch, LangChain, Hugging Face Transformers - Must be a certified Kubernetes administrator. - Ability to write production-ready code in less than 24 hours. - Proven track record of solving world hunger with AI. - Must have telepathic debugging skills. - Willing to work weekends, holidays, and during full moons. Oh, and the most important requirement: must be resilient in handling sudden revisions from the boss Crack your next Data Science Interview 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍 Hope this helps you 😊

Salary of a Data Scientist can go up to ₹98 Lakhs in India You can get this job easily Just say ‘Bell Curve’ instead of ‘Ghanta’ when talking to people 😂

Evolution in #data and #AI. Data analyst -> data scientist -> AI engineer -> ???
Evolution in #data and #AI. Data analyst -> data scientist -> AI engineer -> ???