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Machine Learning Pro End to End

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Dr. F. A. K (Noble)

4:38:13

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  • 1 - Introduction to Machine Learning.mp4
    30:20
  • 2 - ML Unsupervised Learning.mp4
    28:01
  • 4 - Evaluation Metrics for Regression Model.mp4
    25:09
  • 5 - Supervised Learning Classification in Machine Learning.mp4
    33:45
  • 6 - Supervised Learning Decision Trees.mp4
    22:02
  • 7 - Unsupervised Learning Clustering.mp4
    38:45
  • 8 - Unsupervised Learning DBSCAN Clustering.mp4
    32:09
  • 9 - Unsupervised Learning Dimensionality Reduction.mp4
    24:24
  • 10 - Unsupervised Learning Dimensionality Reduction with tSNE.mp4
    17:12
  • 11 - Model Evaluation and Validation Techniques.mp4
    26:26
  • Description


    With Case Study This comprehensive course offers an in-depth journey into Machine Learning and Data Science

    What You'll Learn?


    • Introduction to Machine Learning:- Understand the basics and types of Machine Learning.
    • ML Unsupervised Learning:- Learn the concepts and techniques of Unsupervised Learning.
    • Supervised Learning - Regression:- Master regression models for predicting continuous outcomes.
    • Evaluation Metrics for Regression Model:- Evaluate regression models using metrics like MSE, RMSE, and R-squared.
    • Supervised Learning - Classification in Machine Learning:- Learn classification algorithms for categorical predictions.
    • Supervised Learning - Decision Trees:- Understand how Decision Trees work for classification and regression.
    • Unsupervised Learning - Clustering:- Explore clustering techniques to group data points.
    • Unsupervised Learning - DBSCAN Clustering: Apply the DBSCAN algorithm for density-based clustering.
    • Unsupervised Learning - Dimensionality Reduction:- Learn techniques to reduce data dimensions while retaining key information.
    • Unsupervised Learning - Dimensionality Reduction with t-SNE:- Use t-SNE for visualizing high-dimensional data in a reduced form.
    • Model Evaluation and Validation Techniques:- Understand model validation methods like cross-validation.
    • Model Evaluation - Bias-Variance Tradeoffs:- Learn to balance bias and variance for improved model performance.
    • Introduction to Python Libraries for Data Science:- Get familiar with key Python libraries such as NumPy, Pandas, and Scikit-learn.
    • Introduction to Python Libraries for Data Science:- Explore advanced Python libraries used in data analysis and machine learning.
    • Introduction to R Libraries for Data Science:- Learn essential R libraries for data manipulation and modeling.
    • Introduction to R Libraries for Data Science Statistical Modeling:- Apply statistical modeling using R's powerful libraries.

    Who is this for?


  • Anyone who wants to learn future skills and become Data Scientist, Ai Scientist, Ai Engineer, Ai Researcher & Ai Expert.
  • What You Need to Know?


  • Basic Understanding of Mathematics Familiarity with linear algebra, probability, and statistics is helpful.
  • Basic Analytical and Problem-Solving Skills Ability to think critically and solve complex problems.
  • Anyone can learn this class it is very simple.
  • More details


    Description

    This comprehensive course offers an in-depth journey into Machine Learning and Data Science, designed to equip students with the skills needed to build and evaluate models, interpret data, and solve real-world problems. The course covers both Supervised and Unsupervised Learning techniques, with a strong focus on practical applications using Python and R.

    Students will explore essential topics like Regression, Classification, Clustering, and Dimensionality Reduction, alongside key model evaluation techniques, including the Bias-Variance Tradeoff and cross-validation. The course also includes an introduction to powerful libraries such as NumPy, Pandas, Scikit-learn, and t-SNE, along with statistical modeling in R.

    Whether you're a beginner or looking to enhance your knowledge in Machine Learning, this course provides the foundation and advanced insights necessary to master data science tools and methods, making it suitable for aspiring data scientists, analysts, or AI enthusiasts.


    Introduction to Machine Learning:- Understand the basics and types of Machine Learning.

    ML Unsupervised Learning:- Learn the concepts and techniques of Unsupervised Learning.

    Supervised Learning - Regression:- Master regression models for predicting continuous outcomes.

    Evaluation Metrics for Regression Model:- Evaluate regression models using metrics like MSE, RMSE, and R-squared.

    Supervised Learning - Classification in Machine Learning:- Learn classification algorithms for categorical predictions.

    Supervised Learning - Decision Trees:- Understand how Decision Trees work for classification and regression.

    Unsupervised Learning - Clustering:- Explore clustering techniques to group data points.

    Unsupervised Learning - DBSCAN Clustering: Apply the DBSCAN algorithm for density-based clustering.

    Unsupervised Learning - Dimensionality Reduction:- Learn techniques to reduce data dimensions while retaining key information.

    Unsupervised Learning - Dimensionality Reduction with t-SNE:- Use t-SNE for visualizing high-dimensional data in a reduced form.

    Model Evaluation and Validation Techniques:- Understand model validation methods like cross-validation.

    Model Evaluation - Bias-Variance Tradeoffs:- Learn to balance bias and variance for improved model performance.

    Introduction to Python Libraries for Data Science:- Get familiar with key Python libraries such as NumPy, Pandas, and Scikit-learn.

    Introduction to Python Libraries for Data Science:- Explore advanced Python libraries used in data analysis and machine learning.

    Introduction to R Libraries for Data Science:- Learn essential R libraries for data manipulation and modeling.

    Introduction to R Libraries for Data Science Statistical Modeling:- Apply statistical modeling using R's powerful libraries.


    Courtesy,

    Dr. FAK Noble Ai Researcher, Scientists, Product Developer, Innovator & Pure Consciousness Expert

    Founder of Noble Transformation Hub TM

    Who this course is for:

    • Anyone who wants to learn future skills and become Data Scientist, Ai Scientist, Ai Engineer, Ai Researcher & Ai Expert.

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    Dr. F. A. K (Noble)
    Dr. F. A. K (Noble)
    Instructor's Courses
    Hello,Greetings,This is Noble let me share my journey as Global Future Skills, Computer Science, and Pure Consciousness Expert.Ex-Employee General Electric GE and Wipro Technologies.Our All Courses are TM Certificated Under Noble Transformation Hub Achievements and Awards.Served 55000+ Students and 500+ Teachers in 155 Countries Globally and other 5000+ Students with 4.7+ Ratings out of 5 Star Ratings.Hr. Doctorate in Artificial Intelligence, and Machine Learning, and I am a Pure Consciousness Expert with 7+ years of experience.I have done Global Future Skills Implementation and Research for the last 15 Years.Achieved 300+ Awards for the last 15 years:I am a Lifelong Lerner of Future Skills, Future Technologies, and Art Creativity and Value Innovation.I am Self Taught Computer – Artificial Intelligence Scientist, Super Pure Consciousness Expert, and Design Thinker.Worked with Multinational Companies like GE and Wipro Technologies other below Organisation.Entrepreneur:Started two Successful Startups from Family Business to National and International levels.Acquired skills:1. Real-Life Digital Skills.2. Real Future Skills.3. Real Pure Consciousness Skills.4. Real Technologies Skills.5. Soft Skills.6. Real Life Project Management Skills.7. Real Life Lean and Six Sigma.8. Real Life Entrepreneurship Skills and I have done 500+ global digital and future skills training.I have done 100+ Projects with these Skills for over 15 years:1. GE.2. Wipro Technologies.3. Himalayan Institute of Alternatives Ladakh.4. Teach for India.5. Harvard Medical School.6. Toastmasters International.Attention:Kindly follow me on Udemy and Youtube Channel to help me to reach 1000000 Students.Vision: I need to teach real-life and problem-solving skills and earning and economic skills to 5++ Billion people in the next 10 years globally online and offline and serve humanity with true values of consciousness.I am teaching globally new classes in 154 countries on Future Skills, Life Skills, Art, Crafts Social Media, Entrepreneurship, Sustainability, Artificial intelligence, Machine Learning, Design Thinking, Design Digital Classes, How to find Niches for different markets, Niche Research, 360 Mindfulness, Consciousness, Creativity, Business Strategies, Sales Strategies, Project Management, and other 500+ Skills which I have learned over the years all Courses are TM Certificated By Noble Transformation HubGratitude till infinity,Noble
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 10
    • duration 4:38:13
    • Release Date 2025/03/07