Essential Math for Data Science Take Control of Your Data with Fundamental Calculus Linear Algebra Probability and Statistics 1st Edition by Hadrien Jean – Ebook PDF Instant Download/Delivery: 9781098115562 ,1098115562
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Product details:
ISBN 10: 1098115562
ISBN 13: 9781098115562
Author: Hadrien Jean
Essential Math for Data Science Take Control of Your Data with Fundamental Calculus Linear Algebra Probability and Statistics 1st Edition Table of contents:
1. Basic Math and Calculus Review
Number Theory
Order of Operations
Variables
Functions
Summations
Exponents
Logarithms
Euler’s Number and Natural Logarithms
Euler’s Number
Natural Logarithms
Limits
Derivatives
Partial Derivatives
The Chain Rule
Integrals
Conclusion
Exercises
2. Probability
Understanding Probability
Probability Versus Statistics
Probability Math
Joint Probabilities
Union Probabilities
Conditional Probability and Bayes’ Theorem
Joint and Union Conditional Probabilities
Binomial Distribution
Beta Distribution
Conclusion
Exercises
3. Descriptive and Inferential Statistics
What Is Data?
Descriptive Versus Inferential Statistics
Populations, Samples, and Bias
Descriptive Statistics
Mean and Weighted Mean
Median
Mode
Variance and Standard Deviation
The Normal Distribution
The Inverse CDF
Z-Scores
Inferential Statistics
The Central Limit Theorem
Confidence Intervals
Understanding P-Values
Hypothesis Testing
The T-Distribution: Dealing with Small Samples
Big Data Considerations and the Texas Sharpshooter Fallacy
Conclusion
Exercises
4. Linear Algebra
What Is a Vector?
Adding and Combining Vectors
Scaling Vectors
Span and Linear Dependence
Linear Transformations
Basis Vectors
Matrix Vector Multiplication
Matrix Multiplication
Determinants
Special Types of Matrices
Square Matrix
Identity Matrix
Inverse Matrix
Diagonal Matrix
Triangular Matrix
Sparse Matrix
Systems of Equations and Inverse Matrices
Eigenvectors and Eigenvalues
Conclusion
Exercises
5. Linear Regression
A Basic Linear Regression
Residuals and Squared Errors
Finding the Best Fit Line
Closed Form Equation
Inverse Matrix Techniques
Matrix Decomposition
Gradient Descent
Overfitting and Variance
Stochastic Gradient Descent
The Correlation Coefficient
Statistical Significance
Coefficient of Determination
Standard Error of the Estimate
Prediction Intervals
Train/Test Splits
Multiple Linear Regression
Conclusion
Exercises
6. Logistic Regression and Classification
Understanding Logistic Regression
Performing a Logistic Regression
Logistic Function
Fitting the Logistic Curve
Multivariable Logistic Regression
Understanding the Log-Odds
R-Squared
P-Values
Train/Test Splits
Confusion Matrices
Bayes’ Theorem and Classification
Receiver Operator Characteristics/Area Under Curve
Class Imbalance
Conclusion
Exercises
7. Neural Networks
When to Use Neural Networks and Deep Learning
A Simple Neural Network
Activation Functions
Forward Propagation
Backpropagation
Calculating the Weight and Bias Derivatives
Stochastic Gradient Descent
Using scikit-learn
Limitations of Neural Networks and Deep Learning
Conclusion
Exercise
8. Career Advice and the Path Forward
Redefining Data Science
A Brief History of Data Science
Finding Your Edge
SQL Proficiency
Programming Proficiency
Data Visualization
Knowing Your Industry
Productive Learning
Practitioner Versus Advisor
What to Watch Out For in Data Science Jobs
Role Definition
Organizational Focus and Buy-In
Adequate Resources
Reasonable Objectives
Competing with Existing Systems
A Role Is Not What You Expected
Does Your Dream Job Not Exist?
Where Do I Go Now?
Conclusion
A. Supplemental Topics
Using LaTeX Rendering with SymPy
Binomial Distribution from Scratch
Beta Distribution from Scratch
Deriving Bayes’ Theorem
CDF and Inverse CDF from Scratch
Use e to Predict Event Probability Over Time
Hill Climbing and Linear Regression
Hill Climbing and Logistic Regression
A Brief Intro to Linear Programming
MNIST Classifier Using scikit-learn
B. Exercise Answers
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