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. --- 1. Prerequisites✔ Basic Arithmetic (Addition, Multiplication, etc.)✔ Order of Operations (BODMAS/PEMDAS)✔ Basic Algebra (Equations, Inequalities)✔ Logical Reasoning (AND, OR, XOR, etc.) --- 2. Linear Algebra (For ML & Deep Learning)🔹 Vectors & Matrices (Dot Product, Transpose, Inverse)🔹 Linear Transformations (Eigenvalues, Eigenvectors, Determinants)🔹 Applications: PCA, SVD, Neural Networks📌 Resources: "Linear Algebra Done Right" – Axler, 3Blue1Brown Videos --- 3. Probability & Statistics (For Data Analysis & ML)🔹 Probability: Bayes’ Theorem, Distributions (Normal, Poisson)🔹 Statistics: Mean, Variance, Hypothesis Testing, Regression🔹 Applications: A/B Testing, Feature Selection📌 Resources: "Think Stats" – Allen Downey, MIT OCW --- 4. Calculus (For Optimization & Deep Learning)🔹 Differentiation: Chain Rule, Partial Derivatives🔹 Integration: Definite & Indefinite Integrals🔹 Vector Calculus: Gradients, Jacobian, Hessian🔹 Applications: Gradient Descent, Backpropagation📌 Resources: "Calculus" – James Stewart, Stanford ML Course --- 5. Discrete Mathematics (For Algorithms & Graphs)🔹 Combinatorics: Permutations, Combinations🔹 Graph Theory: Adjacency Matrices, Dijkstra’s Algorithm🔹 Set Theory & Logic: Boolean Algebra, Induction📌 Resources: "Discrete Mathematics and Its Applications" – Rosen --- 6. Optimization (For Model Training & Tuning)🔹 Gradient Descent & Variants (SGD, Adam, RMSProp)🔹 Convex Optimization🔹 Lagrange Multipliers📌 Resources: "Convex Optimization" – Stephen Boyd --- 7. Information Theory (For Feature Engineering & Model Compression)🔹 Entropy & Information Gain (Decision Trees)🔹 Kullback-Leibler Divergence (Distribution Comparison)🔹 Shannon’s Theorem (Data Compression)📌 Resources: "Elements of Information Theory" – Cover & Thomas --- 8. Advanced Topics (For AI & Reinforcement Learning)🔹 Fourier Transforms (Signal Processing, NLP)🔹 Markov Decision Processes (MDPs) (Reinforcement Learning)🔹 Bayesian Statistics & Probabilistic Graphical Models📌 Resources: "Pattern Recognition and Machine Learning" – Bishop --- Learning Path🔰 Beginner:✅ Focus on Probability, Statistics, and Linear Algebra✅ Learn NumPy, Pandas, Matplotlib⚡ Intermediate:✅ Study Calculus & Optimization✅ Apply concepts in ML (Scikit-learn, TensorFlow, PyTorch)🚀 Advanced:✅ Explore Discrete Math, Information Theory, and AI models✅ Work on Deep Learning & Reinforcement Learning projects💡 Tip: Solve problems on Kaggle, Leetcode, Project Euler and watch 3Blue1Brown, MIT OCW videos.
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2025-04-05 Last Update: 2025-06-01 02:40:38
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. --- 1. Prerequisites✔ Basic Arithmetic (Addition, Multiplication, etc.)✔ Order of Operations (BODMAS/PEMDAS)✔ Basic Algebra (Equations, Inequalities)✔ Logical Reasoning (AND, OR, XOR, etc.) --- 2. Linear Algebra (For ML & Deep Learning)🔹 Vectors & Matrices (Dot Product, Transpose, Inverse)🔹 Linear Transformations (Eigenvalues, Eigenvectors, Determinants)🔹 Applications: PCA, SVD, Neural Networks📌 Resources: "Linear Algebra Done Right" – Axler, 3Blue1Brown Videos --- 3. Probability & Statistics (For Data Analysis & ML)🔹 Probability: Bayes’ Theorem, Distributions (Normal, Poisson)🔹 Statistics: Mean, Variance, Hypothesis Testing, Regression🔹 Applications: A/B Testing, Feature Selection📌 Resources: "Think Stats" – Allen Downey, MIT OCW --- 4. Calculus (For Optimization & Deep Learning)🔹 Differentiation: Chain Rule, Partial Derivatives🔹 Integration: Definite & Indefinite Integrals🔹 Vector Calculus: Gradients, Jacobian, Hessian🔹 Applications: Gradient Descent, Backpropagation📌 Resources: "Calculus" – James Stewart, Stanford ML Course --- 5. Discrete Mathematics (For Algorithms & Graphs)🔹 Combinatorics: Permutations, Combinations🔹 Graph Theory: Adjacency Matrices, Dijkstra’s Algorithm🔹 Set Theory & Logic: Boolean Algebra, Induction📌 Resources: "Discrete Mathematics and Its Applications" – Rosen --- 6. Optimization (For Model Training & Tuning)🔹 Gradient Descent & Variants (SGD, Adam, RMSProp)🔹 Convex Optimization🔹 Lagrange Multipliers📌 Resources: "Convex Optimization" – Stephen Boyd --- 7. Information Theory (For Feature Engineering & Model Compression)🔹 Entropy & Information Gain (Decision Trees)🔹 Kullback-Leibler Divergence (Distribution Comparison)🔹 Shannon’s Theorem (Data Compression)📌 Resources: "Elements of Information Theory" – Cover & Thomas --- 8. Advanced Topics (For AI & Reinforcement Learning)🔹 Fourier Transforms (Signal Processing, NLP)🔹 Markov Decision Processes (MDPs) (Reinforcement Learning)🔹 Bayesian Statistics & Probabilistic Graphical Models📌 Resources: "Pattern Recognition and Machine Learning" – Bishop --- Learning Path🔰 Beginner:✅ Focus on Probability, Statistics, and Linear Algebra✅ Learn NumPy, Pandas, Matplotlib⚡ Intermediate:✅ Study Calculus & Optimization✅ Apply concepts in ML (Scikit-learn, TensorFlow, PyTorch)🚀 Advanced:✅ Explore Discrete Math, Information Theory, and AI models✅ Work on Deep Learning & Reinforcement Learning projects💡 Tip: Solve problems on Kaggle, Leetcode, Project Euler and watch 3Blue1Brown, MIT OCW videos.
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