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: 2025-06-28 10:50:28
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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NEWS But the Ukraine Crisis Media Center's Tsekhanovska points out that communications are often down in zones most affected by the war, making this sort of cross-referencing a luxury many cannot afford. Telegram was founded in 2013 by two Russian brothers, Nikolai and Pavel Durov. Pavel Durov, Telegram's CEO, is known as "the Russian Mark Zuckerberg," for co-founding VKontakte, which is Russian for "in touch," a Facebook imitator that became the country's most popular social networking site. Telegram has become more interventionist over time, and has steadily increased its efforts to shut down these accounts. But this has also meant that the company has also engaged with lawmakers more generally, although it maintains that it doesn’t do so willingly. For instance, in September 2021, Telegram reportedly blocked a chat bot in support of (Putin critic) Alexei Navalny during Russia’s most recent parliamentary elections. Pavel Durov was quoted at the time saying that the company was obliged to follow a “legitimate” law of the land. He added that as Apple and Google both follow the law, to violate it would give both platforms a reason to boot the messenger from its stores.
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