Machine Learning Explained

$27

PDF eBook

83

Pages

1-click download

  • ML Fundamentals in-depth
  • Key Concepts, Algorithms, Data Processing
  • Applications Across Industries
Description

About Machine Learning Explained

Introducing our comprehensive guide to Machine Learning for beginners. With this ebook, you will gain a deep understanding of the key concepts and techniques used in modern machine learning.

From supervised and unsupervised learning to deep learning and neural networks, this book covers all the fundamental principles of machine learning. You will also learn about the various algorithms and techniques used in machine learning, and how to evaluate and improve the performance of machine learning models.

Table of contents

  1. Introduction to machine learning
  2. What is machine learning and how does it differ from other forms of AI?
    1. Other forms of AI
    2. Key differences between machine learning and AI
  3. Common applications of machine learning
  4. The basics of machine learning algorithms
  5. Types of data in machine learning
  6. Preparing and preprocessing data for machine learning
  7. Supervised learning algorithms
  8. Unsupervised learning algorithms
  9. Evaluating and improving the performance of machine learning models
  10. Challenges and limitations of machine learning
    1. Data quality and quantity
    2. Overfitting and underfitting
    3. Choosing the right algorithm and hyperparameters
    4. Human bias
    5. Explainability and interpretability
    6. Computational resources
    7. Ethical considerations
    8. Robustness and generalization
    9. Security and privacy
    10. Human oversight
    11. Ethical considerations
  11. Neural networks and deep learning
  12. Artificial intelligence vs. Machine learning vs. Deep learning
  13. Natural language processing with machine learning
    1. Several approaches to NLP with machine learning
  14. Computer vision and image recognition with machine learning
  15. Predictive analytics with machine learning
  16. An introduction to reinforcement learning
  17. Real-world applications of machine learning in various industries
    1. Healthcare
    2. Finance
    3. Retail
    4. Manufacturing
    5. Transportation
    6. Energy
    7. Education
    8. Cybersecurity
    9. Advertising
    10. Social media
    11. Supply chain management
    12. Customer service
    13. HR
    14. Telecommunications
  18. The Role of Machine Learning in Transforming Industries and Professions
  19. The ethics and social implications of machine learning
    1. Bias in data
    2. Transparency
    3. Privacy
    4. Autonomy
    5. Social and economic impacts
    6. Responsibility and accountability
  20. Machine learning and big data
  21. The role of data visualization in machine learning
  22. Ensemble methods in machine learning
  23. Transfer learning in machine learning
  24. Role of machine learning in shaping society
  25. Integration of machine learning with other technologies
  26. Ethical implications of advanced machine learning systems
    1. Bias in machine learning algorithms
    2. Uninterpretability of machine learning algorithm
    3. Privacy concerns
    4. Potential for misuse or abuse of machine learning
    5. Need for regulation
  27. Future of machine learning, where we’re heading?
  28. Conclusion

82 Products Included

All Products Special

Order our bestselling business bundle now and save a whopping $2,738 compared to buying each product separately.

Get access now for $247

Risk-free Purchase: Full refund within 14 days

Safe Checkout Powered by

This is a limited-time offer!