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

Machine Learning & Artificial Intelligence | Data Science Free Courses

Open in Telegram

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

Show more

📈 Analytical overview of Telegram channel Machine Learning & Artificial Intelligence | Data Science Free Courses

Channel Machine Learning & Artificial Intelligence | Data Science Free Courses (@datasciencefree) in the English language segment is an active participant. Currently, the community unites 67 155 subscribers, ranking 2 431 in the Education category and 432 in the Malaysia region.

📊 Audience metrics and dynamics

Since its creation on невідомо, the project has demonstrated rapid growth, gathering an audience of 67 155 subscribers.

According to the latest data from 12 July, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by 613 over the last 30 days and by 20 over the last 24 hours, overall reach remains high.

  • Verification status: Not verified
  • Engagement rate (ER): The average audience engagement rate is 0.78%. Within the first 24 hours after publication, content typically collects 1.32% reactions from the total number of subscribers.
  • Post reach: On average, each post receives 527 views. Within the first day, a publication typically gains 887 views.
  • Reactions and interaction: The audience actively supports content: the average number of reactions per post is 4.
  • Thematic interests: Content is focused on key topics such as sellerflash, waybienad, pricing, buybox, buyer.

📝 Description and content policy

The author describes the resource as a platform for expressing subjective opinions:
Perfect channel to learn Data Analytics, Data Sciene, Machine Learning & Artificial Intelligence Admin: @coderfun

Thanks to the high frequency of updates (latest data received on 13 July, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Education category.

67 155
Subscribers
+2024 hours
+1477 days
+61330 days
Posts Archive
Essential Python Libraries to build your career in Data Science 📊👇 1. NumPy: - Efficient numerical operations and array manipulation. 2. Pandas: - Data manipulation and analysis with powerful data structures (DataFrame, Series). 3. Matplotlib: - 2D plotting library for creating visualizations. 4. Seaborn: - Statistical data visualization built on top of Matplotlib. 5. Scikit-learn: - Machine learning toolkit for classification, regression, clustering, etc. 6. TensorFlow: - Open-source machine learning framework for building and deploying ML models. 7. PyTorch: - Deep learning library, particularly popular for neural network research. 8. SciPy: - Library for scientific and technical computing. 9. Statsmodels: - Statistical modeling and econometrics in Python. 10. NLTK (Natural Language Toolkit): - Tools for working with human language data (text). 11. Gensim: - Topic modeling and document similarity analysis. 12. Keras: - High-level neural networks API, running on top of TensorFlow. 13. Plotly: - Interactive graphing library for making interactive plots. 14. Beautiful Soup: - Web scraping library for pulling data out of HTML and XML files. 15. OpenCV: - Library for computer vision tasks. As a beginner, you can start with Pandas and NumPy for data manipulation and analysis. For data visualization, Matplotlib and Seaborn are great starting points. As you progress, you can explore machine learning with Scikit-learn, TensorFlow, and PyTorch. Free Notes & Books to learn Data Science: https://t.me/datasciencefree Python Project Ideas: https://t.me/dsabooks/85 Best Resources to learn Python & Data Science 👇👇 Python Tutorial Data Science Course by Kaggle Machine Learning Course by Google Best Data Science & Machine Learning Resources Interview Process for Data Science Role at Amazon Python Interview Resources Join @free4unow_backup for more free courses Like for more ❤️ ENJOY LEARNING👍👍

Data Science Job Expectation VS Reality! Today, let's talk about real experiences working in data science. Sometimes, what we expect from a data science job may not match the reality of the day-to-day work. Let's explore this contrast between expectation and reality. 🎯Expectation: "I'll spend most of my time building fancy machine learning models and solving difficult problems." 📊Reality: While building and improving models is important, a big part of a data scientist's job is preparing and cleaning data. This involves organizing data, dealing with missing information, and making sure it's accurate. It requires attention to detail and careful work. 🎯 Expectation: "I'll work on groundbreaking projects that have a big impact." 📊 Reality: Data science projects often involve making small improvements and working step by step. You'll spend time analyzing data, finding patterns, and using data to make informed recommendations. Remember, many small wins can lead to significant positive outcomes. 🎯 Expectation: "I'll use the latest and coolest tools and technologies." 📊 Reality: While data scientists get to work with different tools and technologies, not every project needs the newest and trendiest ones. Depending on the project requirements, you may use well-established tools and focus more on solving problems rather than always exploring new technologies. 🎯 Expectation: "I'll work mostly with data." 📊Reality: Data science is a collaborative field. You'll work with people from different backgrounds, like experts in specific fields, engineers, and decision-makers. You'll need to understand business needs, share findings, and explain complex ideas to non-technical people. Communication and teamwork skills are important. 🎯Expectation: "I'll always be learning and keeping up with the latest research." 📊Reality: Learning is important, but it's also essential to balance staying updated with using existing knowledge effectively. The field changes quickly, so focusing on core concepts, gaining practical experience, and applying existing techniques to new problems are valuable skills. I have curated the best resources to learn Data Science & Machine Learning 👇👇 https://topmate.io/coding/914624 All the best 👍👍

10 great Python packages for Data Science not known to many: 1️⃣ CleanLab Cleanlab helps you clean data and labels by automatically detecting issues in a ML dataset. 2️⃣ LazyPredict A Python library that enables you to train, test, and evaluate multiple ML models at once using just a few lines of code. 3️⃣ Lux A Python library for quickly visualizing and analyzing data, providing an easy and efficient way to explore data. 4️⃣ PyForest A time-saving tool that helps in importing all the necessary data science libraries and functions with a single line of code. 5️⃣ PivotTableJS PivotTableJS lets you interactively analyse your data in Jupyter Notebooks without any code 🔥 6️⃣ Drawdata Drawdata is a python library that allows you to draw a 2-D dataset of any shape in a Jupyter Notebook. 7️⃣ black The Uncompromising Code Formatter 8️⃣ PyCaret An open-source, low-code machine learning library in Python that automates the machine learning workflow. 9️⃣ PyTorch-Lightning by LightningAI Streamlines your model training, automates boilerplate code, and lets you focus on what matters: research & innovation. 🔟 Streamlit A framework for creating web applications for data science and machine learning projects, allowing for easy and interactive data viz & model deployment. I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

【EU_Exchange】AI-GPT company recruits HR managers Only one phone is needed, work from home Age 25 and above Monthly salary 180
【EU_Exchange】AI-GPT company recruits HR managers Only one phone is needed, work from home Age 25 and above Monthly salary 1800 to 5000 USD Main responsibilities: 1. Assist the company in recruiting personnel 2. Promote the company's AI smart products 3. Successful employment will receive  30+20 USD reward 4. Online customer service:https://chatlink.wchatlink.com/widget/standalone.html?eid=f55ff528d770d699c2cc389645f3577a&language=en

https://topmate.io/analyst/1024129 If you're a job seeker, these well structured document resources will help you to know and learn all the real time Data Science & Machine Learning Interview questions with their exact answer. folks who are having 0-4+ years of experience have cracked the interview using this guide! Please use the above link to avail them!👆 NOTE: -Most data aspirants hoard resources without actually opening them even once! The reason for keeping a small price for these resources is to ensure that you value the content available inside this and encourage you to make the best out of it. Hope this helps in your job search journey... All the best!👍✌️

Fastest way to excel at Data Interviews: Take as many Interviews as possible. Don't be too picky with the roles you apply for as a beginner. Cast a wide net and apply for every data-related position you can find. What's the worst that could happen? You might get rejected. So what? Remember: ☑ Each interview is a learning opportunity ☑ You'll refine your coding skills with every technical round ☑ Your data visualization explanations will get clearer each time ☑ You'll get more comfortable discussing your projects and impact. There are 2 types of data enthusiasts out there: Those who ace data analyst interviews and those who don't apply enough. 💡 Pro Tip: Keep an "interview journal" to note what worked, what didn't, and areas for improvement. Your future self will thank you! I have curated the best resources to learn Data Science & Machine Learning 👇👇 https://topmate.io/coding/914624 All the best 👍👍

How to enter into Data Science 👉Start with the basics: Learn programming languages like Python and R to master data analysis and machine learning techniques. Familiarize yourself with tools such as TensorFlow, sci-kit-learn, and Tableau to build a strong foundation. 👉Choose your target field: From healthcare to finance, marketing, and more, data scientists play a pivotal role in extracting valuable insights from data. You should choose which field you want to become a data scientist in and start learning more about it. 👉Build a portfolio: Start building small projects and add them to your portfolio. This will help you build credibility and showcase your skills. Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624 Credits: https://t.me/datasciencefun Like if you need similar content 😄👍 Hope this helps you 😊

Let's see the step-by-step process of Machine Learning! Step 1: Define the Problem Start by identifying the problem you wish to solve. Set clear goals and establish criteria for measuring success. Understanding the problem thoroughly is pivotal for the project's success. Step 2: Acquire and Explore Data Collect relevant data pertinent to the identified problem. Delve into the data to comprehend its characteristics, quality, and interrelationships. This preliminary analysis lays the groundwork for subsequent model development. Step 3: Prepare the Data Cleanse the data, address missing values, and engineer new features as necessary. This preprocessing phase ensures that the data is primed for training machine learning models. Step 4: Select and Train Models Choose suitable machine learning algorithms and train multiple models. Evaluate their performance using diverse techniques to identify the most effective approach. Step 5: Evaluate Models and Enhance Performance Assess the performance of trained models using various evaluation metrics. Fine-tune model parameters to optimize performance and iteratively enhance results. Step 6: Deployment Prepare the trained model for deployment into production. Collaborate closely with relevant teams to ensure seamless integration and performance monitoring. Step 7: Monitoring and Maintenance Continuously monitor the deployed model's performance in real-world scenarios. Regularly update and retrain the model with new data to maintain accuracy and relevance. Step 8: Documentation and Reporting Document the entire project, including methodologies, findings, and insights. Comprehensive documentation ensures transparency and facilitates the reproducibility of the project. I have curated the best resources to learn Data Science & Machine Learning 👇👇 https://topmate.io/coding/914624 All the best 👍👍

7 things you should know before becoming a Data Scientist: 7/ Higher complexity solutions =/= higher impact solutions. 6/ The best Data Scientists do much more than Data Science. They lead product teams, they talk to customers, they build pipelines etc. 5/ You won’t get along with every business partner. But you have to learn how to work with them. 4/ A lot of Data Science work is tedious and boring and repetitive. 3/ You will spend so much more time on communication than you expect. 2/ Data quality is often more important than fancy algorithms. 1/ You’ll make mistakes, a lot of it. What matters more is how you recover and grow from them. I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

How to get started with data science Many people who get interested in learning data science don't really know what it's all about. They start coding just for the sake of it and on first challenge or problem they can't solve, they quit. Just like other disciplines in tech, data science is challenging and requires a level of critical thinking and problem solving attitude. If you're among people who want to get started with data science but don't know how - I have something amazing for you! I created Best Data Science & Machine Learning Resources that will help you organize your career in data, from first learning day to a job in tech. Share this channel link with someone who wants to get into data science and AI but is confused. 👇👇 https://t.me/datasciencefun Happy learning 😄😄

Hi Guys, Here are some of the telegram channels which may help you in data analytics journey 👇👇 SQL: https://t.me/sqlanalyst Power BI & Tableau: https://t.me/PowerBI_analyst Excel: https://t.me/excel_analyst Python: https://t.me/dsabooks Jobs: https://t.me/jobs_SQL Data Science: https://t.me/datasciencefree Artificial intelligence: https://t.me/machinelearning_deeplearning Data Engineering: https://t.me/sql_engineer Data Analysts: https://t.me/sqlspecialist Hope it helps :)

Data Science Roadmap | |-- Fundamentals |   |-- Mathematics |   |   |-- Linear Algebra |   |   |-- Calculus |   |   |-- Probability and Statistics |   | |   |-- Programming |   |   |-- Python |   |   |-- R |   |   |-- SQL | |-- Data Collection and Cleaning |   |-- Data Sources |   |   |-- APIs |   |   |-- Web Scraping |   |   |-- Databases |   | |   |-- Data Cleaning |   |   |-- Missing Values |   |   |-- Data Transformation |   |   |-- Data Normalization | |-- Data Analysis |   |-- Exploratory Data Analysis (EDA) |   |   |-- Descriptive Statistics |   |   |-- Data Visualization |   |   |-- Hypothesis Testing |   | |   |-- Data Wrangling |   |   |-- Pandas |   |   |-- NumPy |   |   |-- dplyr (R) | |-- Machine Learning |   |-- Supervised Learning |   |   |-- Regression |   |   |-- Classification |   | |   |-- Unsupervised Learning |   |   |-- Clustering |   |   |-- Dimensionality Reduction |   | |   |-- Reinforcement Learning |   |   |-- Q-Learning |   |   |-- Policy Gradient Methods |   | |   |-- Model Evaluation |   |   |-- Cross-Validation |   |   |-- Performance Metrics |   |   |-- Hyperparameter Tuning | |-- Deep Learning |   |-- Neural Networks |   |   |-- Feedforward Networks |   |   |-- Backpropagation |   | |   |-- Advanced Architectures |   |   |-- Convolutional Neural Networks (CNN) |   |   |-- Recurrent Neural Networks (RNN) |   |   |-- Transformers |   | |   |-- Tools and Frameworks |   |   |-- TensorFlow |   |   |-- PyTorch | |-- Natural Language Processing (NLP) |   |-- Text Preprocessing |   |   |-- Tokenization |   |   |-- Stop Words Removal |   |   |-- Stemming and Lemmatization |   | |   |-- NLP Techniques |   |   |-- Word Embeddings |   |   |-- Sentiment Analysis |   |   |-- Named Entity Recognition (NER) | |-- Data Visualization |   |-- Basic Plotting |   |   |-- Matplotlib |   |   |-- Seaborn |   |   |-- ggplot2 (R) |   | |   |-- Interactive Visualization |   |   |-- Plotly |   |   |-- Bokeh |   |   |-- Dash | |-- Big Data |   |-- Tools and Frameworks |   |   |-- Hadoop |   |   |-- Spark |   | |   |-- NoSQL Databases |       |-- MongoDB |       |-- Cassandra | |-- Cloud Computing |   |-- Cloud Platforms |   |   |-- AWS |   |   |-- Google Cloud |   |   |-- Azure |   | |   |-- Data Services |       |-- Data Storage (S3, Google Cloud Storage) |       |-- Data Pipelines (Dataflow, AWS Data Pipeline) | |-- Model Deployment |   |-- Serving Models |   |   |-- Flask/Django |   |   |-- FastAPI |   | |   |-- Model Monitoring |       |-- Performance Tracking |       |-- A/B Testing | |-- Domain Knowledge |   |-- Industry-Specific Applications |   |   |-- Finance |   |   |-- Healthcare |   |   |-- Retail | |-- Ethical and Responsible AI |   |-- Bias and Fairness |   |-- Privacy and Security |   |-- Interpretability and Explainability | |-- Communication and Storytelling |   |-- Reporting |   |-- Dashboarding |   |-- Presentation Skills | |-- Advanced Topics |   |-- Time Series Analysis |   |-- Anomaly Detection |   |-- Graph Analytics └-- Comments     |-- # Single-line comment (Python)     └-- /* Multi-line comment (Python/R) */ I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

Most Important Mathematical Equations in Data Science! 1️⃣ Gradient Descent: Optimization algorithm minimizing the cost function. 2️⃣ Normal Distribution: Distribution characterized by mean μ\muμ and variance σ2\sigma^2σ2. 3️⃣ Sigmoid Function: Activation function mapping real values to 0-1 range. 4️⃣ Linear Regression: Predictive model of linear input-output relationships. 5️⃣ Cosine Similarity: Metric for vector similarity based on angle cosine. 6️⃣ Naive Bayes: Classifier using Bayes’ Theorem and feature independence. 7️⃣ K-Means: Clustering minimizing distances to cluster centroids. 8️⃣ Log Loss: Performance measure for probability output models. 9️⃣ Mean Squared Error (MSE): Average of squared prediction errors. 🔟 MSE (Bias-Variance Decomposition): Explains MSE through bias and variance. 1️⃣1️⃣ MSE + L2 Regularization: Adds penalty to prevent overfitting. 1️⃣2️⃣ Entropy: Uncertainty measure used in decision trees. 1️⃣3️⃣ Softmax: Converts logits to probabilities for classification. 1️⃣4️⃣ Ordinary Least Squares (OLS): Estimates regression parameters by minimizing residuals. 1️⃣5️⃣ Correlation: Measures linear relationships between variables. 1️⃣6️⃣ Z-score: Standardizes value based on standard deviations from mean. 1️⃣7️⃣ Maximum Likelihood Estimation (MLE): Estimates parameters maximizing data likelihood. 1️⃣8️⃣ Eigenvectors and Eigenvalues: Characterize linear transformations in matrices. 1️⃣9️⃣ R-squared (R²): Proportion of variance explained by regression. 2️⃣0️⃣ F1 Score: Harmonic mean of precision and recall. 2️⃣1️⃣ Expected Value: Weighted average of all possible values. I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍

Subscribe in Premium Data Science Channel 📚 💎 The paid channel includes only important books, road maps for learning data science fields, programming languages + courses 💸 Credit Payment: https://t.me/+dIoLRm3bnKMyZDQ5

Use this checklist to see if you’re truly JOB-READY. The more items you complete, the closer you are to landing your dream data science job! 😎 Check Your Skills with This Checklist! Python:- Master Python fundamentals Understand Pandas for data manipulation Learn data visualization with Matplotlib and Seaborn Practice error handling and debugging Statistics:- Grasp probability theory Know descriptive and inferential statistics Learn statistical machine learning concepts Exploratory Data Analysis (EDA):- Perform data summarization Work on data cleaning and transformation Visualize data effectively SQL:- Understand the BIG 6 SQL statements Practice joins and common table expressions (CTEs) Use window functions Learn to write stored procedures Machine Learning:- Master feature engineering Understand regression and classification techniques Learn clustering methods Model Evaluation:- Work with confusion matrices Understand precision, recall, and F1-score Practice cross-validation Learn about overfitting and underfitting Deep Learning:- Get familiar with Convolutional Neural Networks (CNNs) Understand transformers Learn PyTorch or TensorFlow basics Practice model training and optimization Resume:- Ensure your resume is ATS-friendly Customize for the job description Use the STAR method to highlight achievements Include a link to your portfolio AI-Enabled Mindset:- Develop Googling skills Use AI tools like ChatGPT or Bard for learning Commit to continuous learning Hone problem-solving abilities Communication:- Practice presenting insights clearly Write professional emails Manage stakeholder communication Utilize project management tools LinkedIn:- Have a good profile picture and banner Get 10+ endorsed skills Collect at least 3 recommendations Link your portfolio in your profile Portfolio:- Include 4+ business-related projects Showcase one project per tool you know Create an insights desk Prepare a video presentation I have curated the best interview resources to crack Data Science Interviews 👇👇 https://topmate.io/analyst/1024129 Like if you need similar content 😄👍