Machine Learning & Artificial Intelligence | Data Science Free Courses
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Essential statistics topics for data science

1. Descriptive statistics: Measures of central tendency, measures of dispersion, and graphical representations of data.

2. Inferential statistics: Hypothesis testing, confidence intervals, and regression analysis.

3. Probability theory: Concepts of probability, random variables, and probability distributions.

4. Sampling techniques: Simple random sampling, stratified sampling, and cluster sampling.

5. Statistical modeling: Linear regression, logistic regression, and time series analysis.

6. Machine learning algorithms: Supervised learning, unsupervised learning, and reinforcement learning.

7. Bayesian statistics: Bayesian inference, Bayesian networks, and Markov chain Monte Carlo methods.

8. Data visualization: Techniques for visualizing data and communicating insights effectively.

9. Experimental design: Designing experiments, analyzing experimental data, and interpreting results.

10. Big data analytics: Handling large volumes of data using tools like Hadoop, Spark, and SQL.

Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624

Credits: https://t.iss.one/datasciencefun

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Mathematics for Data Science Roadmap

Mathematics is the backbone of data science, machine learning, and AI. This roadmap covers essential topics in a structured way.


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1. Prerequisites

βœ” Basic Arithmetic (Addition, Multiplication, etc.)
βœ” Order of Operations (BODMAS/PEMDAS)
βœ” Basic Algebra (Equations, Inequalities)
βœ” Logical Reasoning (AND, OR, XOR, etc.)


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2. Linear Algebra (For ML & Deep Learning)

πŸ”Ή Vectors & Matrices (Dot Product, Transpose, Inverse)
πŸ”Ή Linear Transformations (Eigenvalues, Eigenvectors, Determinants)
πŸ”Ή Applications: PCA, SVD, Neural Networks

πŸ“Œ Resources: "Linear Algebra Done Right" – Axler, 3Blue1Brown Videos


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3. Probability & Statistics (For Data Analysis & ML)

πŸ”Ή Probability: Bayes’ Theorem, Distributions (Normal, Poisson)
πŸ”Ή Statistics: Mean, Variance, Hypothesis Testing, Regression
πŸ”Ή Applications: A/B Testing, Feature Selection

πŸ“Œ Resources: "Think Stats" – Allen Downey, MIT OCW


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4. Calculus (For Optimization & Deep Learning)

πŸ”Ή Differentiation: Chain Rule, Partial Derivatives
πŸ”Ή Integration: Definite & Indefinite Integrals
πŸ”Ή Vector Calculus: Gradients, Jacobian, Hessian
πŸ”Ή Applications: Gradient Descent, Backpropagation

πŸ“Œ Resources: "Calculus" – James Stewart, Stanford ML Course


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5. Discrete Mathematics (For Algorithms & Graphs)

πŸ”Ή Combinatorics: Permutations, Combinations
πŸ”Ή Graph Theory: Adjacency Matrices, Dijkstra’s Algorithm
πŸ”Ή Set Theory & Logic: Boolean Algebra, Induction

πŸ“Œ Resources: "Discrete Mathematics and Its Applications" – Rosen


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6. Optimization (For Model Training & Tuning)

πŸ”Ή Gradient Descent & Variants (SGD, Adam, RMSProp)
πŸ”Ή Convex Optimization
πŸ”Ή Lagrange Multipliers

πŸ“Œ Resources: "Convex Optimization" – Stephen Boyd


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7. Information Theory (For Feature Engineering & Model Compression)

πŸ”Ή Entropy & Information Gain (Decision Trees)
πŸ”Ή Kullback-Leibler Divergence (Distribution Comparison)
πŸ”Ή Shannon’s Theorem (Data Compression)

πŸ“Œ Resources: "Elements of Information Theory" – Cover & Thomas


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8. Advanced Topics (For AI & Reinforcement Learning)

πŸ”Ή Fourier Transforms (Signal Processing, NLP)
πŸ”Ή Markov Decision Processes (MDPs) (Reinforcement Learning)
πŸ”Ή Bayesian Statistics & Probabilistic Graphical Models

πŸ“Œ Resources: "Pattern Recognition and Machine Learning" – Bishop


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Learning Path

πŸ”° Beginner:

βœ… Focus on Probability, Statistics, and Linear Algebra
βœ… Learn NumPy, Pandas, Matplotlib

⚑ Intermediate:

βœ… Study Calculus & Optimization
βœ… Apply concepts in ML (Scikit-learn, TensorFlow, PyTorch)

πŸš€ Advanced:

βœ… Explore Discrete Math, Information Theory, and AI models
βœ… Work on Deep Learning & Reinforcement Learning projects

πŸ’‘ Tip: Solve problems on Kaggle, Leetcode, Project Euler and watch 3Blue1Brown, MIT OCW videos.
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Machine learning is a subset of artificial intelligence that involves developing algorithms and models that enable computers to learn from and make predictions or decisions based on data. In machine learning, computers are trained on large datasets to identify patterns, relationships, and trends without being explicitly programmed to do so.

There are three main types of machine learning: supervised learning, unsupervised learning, and reinforcement learning. In supervised learning, the algorithm is trained on labeled data, where the correct output is provided along with the input data. Unsupervised learning involves training the algorithm on unlabeled data, allowing it to identify patterns and relationships on its own. Reinforcement learning involves training an algorithm to make decisions by rewarding or punishing it based on its actions.

Machine learning algorithms can be used for a wide range of applications, including image and speech recognition, natural language processing, recommendation systems, predictive analytics, and more. These algorithms can be trained using various techniques such as neural networks, decision trees, support vector machines, and clustering algorithms.

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10 AI Interview Questions You Should Be Ready For (2025)

βœ… What is the difference between AI, ML, and Deep Learning?
βœ… Explain overfitting and how to prevent it.
βœ… How do transformers work?
βœ… What is the role of attention mechanism in NLP?
βœ… What are embeddings and why are they important in AI models?
βœ… Describe a real-world use case of LLMs in production.
βœ… How would you evaluate the performance of a classification model?
βœ… What are some limitations of generative AI models like GPT?
βœ… What is fine-tuning vs. prompt engineering?
βœ… What are ethical concerns surrounding AI deployment in sensitive areas?

React if you're preparing for AI/ML interviews!

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Probability for Data Science
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