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 02:30:42
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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Data science ML AI Telegram | DID YOU KNOW?
Why Telegram? Telegram has no known backdoors and, even though it is come in for criticism for using proprietary encryption methods instead of open-source ones, those have yet to be compromised. While no messaging app can guarantee a 100% impermeable defense against determined attackers, Telegram is vulnerabilities are few and either theoretical or based on spoof files fooling users into actively enabling an attack.
Telegram has exploded as a hub for cybercriminals looking to buy, sell and share stolen data and hacking tools, new research shows, as the messaging app emerges as an alternative to the dark web.An investigation by cyber intelligence group Cyberint, together with the Financial Times, found a ballooning network of hackers sharing data leaks on the popular messaging platform, sometimes in channels with tens of thousands of subscribers, lured by its ease of use and light-touch moderation.Data science ML AI from in