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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

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


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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


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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


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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


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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


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6. Optimization (For Model Training & Tuning)

🔹 Gradient Descent & Variants (SGD, Adam, RMSProp)
🔹 Convex Optimization
🔹 Lagrange Multipliers

📌 Resources: "Convex Optimization" – Stephen Boyd


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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


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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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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.

BY Data science/ML/AI


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Should You Buy Bitcoin?

In general, many financial experts support their clients’ desire to buy cryptocurrency, but they don’t recommend it unless clients express interest. “The biggest concern for us is if someone wants to invest in crypto and the investment they choose doesn’t do well, and then all of a sudden they can’t send their kids to college,” says Ian Harvey, a certified financial planner (CFP) in New York City. “Then it wasn’t worth the risk.” The speculative nature of cryptocurrency leads some planners to recommend it for clients’ “side” investments. “Some call it a Vegas account,” says Scott Hammel, a CFP in Dallas. “Let’s keep this away from our real long-term perspective, make sure it doesn’t become too large a portion of your portfolio.” In a very real sense, Bitcoin is like a single stock, and advisors wouldn’t recommend putting a sizable part of your portfolio into any one company. At most, planners suggest putting no more than 1% to 10% into Bitcoin if you’re passionate about it. “If it was one stock, you would never allocate any significant portion of your portfolio to it,” Hammel says.

The global forecast for the Asian markets is murky following recent volatility, with crude oil prices providing support in what has been an otherwise tough month. The European markets were down and the U.S. bourses were mixed and flat and the Asian markets figure to split the difference.The TSE finished modestly lower on Friday following losses from the financial shares and property stocks.For the day, the index sank 15.09 points or 0.49 percent to finish at 3,061.35 after trading between 3,057.84 and 3,089.78. Volume was 1.39 billion shares worth 1.30 billion Singapore dollars. There were 285 decliners and 184 gainers.

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