Python for Data Science For Dummies

Höfundur John Paul Mueller; Luca Massaron

Útgefandi Wiley Professional Development (P&T)

Snið ePub

Print ISBN 9781394213146

Útgáfa 3

Útgáfuár 2023

2.690 kr.

Description

Efnisyfirlit

  • Cover
  • Title Page
  • Copyright
  • Introduction
  • About This Book
  • Foolish Assumptions
  • Icons Used in This Book
  • Beyond the Book
  • Where to Go from Here
  • Part 1: Getting Started with Data Science and Python
  • Chapter 1: Discovering the Match between Data Science and Python
  • Understanding Python as a Language
  • Defining Data Science
  • Creating the Data Science Pipeline
  • Understanding Python’s Role in Data Science
  • Learning to Use Python Fast
  • Chapter 2: Introducing Python’s Capabilities and Wonders
  • Working with Python
  • Performing Rapid Prototyping and Experimentation
  • Considering Speed of Execution
  • Visualizing Power
  • Using the Python Ecosystem for Data Science
  • Chapter 3: Setting Up Python for Data Science
  • Working with Anaconda
  • Installing Anaconda on Windows
  • Installing Anaconda on Linux
  • Installing Anaconda on Mac OS X
  • Downloading the Datasets and Example Code
  • Chapter 4: Working with Google Colab
  • Defining Google Colab
  • Working with Notebooks
  • Performing Common Tasks
  • Using Hardware Acceleration
  • Executing the Code
  • Viewing Your Notebook
  • Sharing Your Notebook
  • Getting Help
  • Part 2: Getting Your Hands Dirty with Data
  • Chapter 5: Working with Jupyter Notebook
  • Using Jupyter Notebook
  • Performing Multimedia and Graphic Integration
  • Chapter 6: Working with Real Data
  • Uploading, Streaming, and Sampling Data
  • Accessing Data in Structured Flat-File Form
  • Sending Data in Unstructured File Form
  • Managing Data from Relational Databases
  • Interacting with Data from NoSQL Databases
  • Accessing Data from the Web
  • Chapter 7: Processing Your Data
  • Juggling between NumPy and pandas
  • Validating Your Data
  • Manipulating Categorical Variables
  • Dealing with Dates in Your Data
  • Dealing with Missing Data
  • Slicing and Dicing: Filtering and Selecting Data
  • Concatenating and Transforming
  • Aggregating Data at Any Level
  • Chapter 8: Reshaping Data
  • Using the Bag of Words Model to Tokenize Data
  • Working with Graph Data
  • Chapter 9: Putting What You Know into Action
  • Contextualizing Problems and Data
  • Considering the Art of Feature Creation
  • Performing Operations on Arrays
  • Part 3: Visualizing Information
  • Chapter 10: Getting a Crash Course in Matplotlib
  • Starting with a Graph
  • Setting the Axis, Ticks, and Grids
  • Defining the Line Appearance
  • Using Labels, Annotations, and Legends
  • Chapter 11: Visualizing the Data
  • Choosing the Right Graph
  • Creating Advanced Scatterplots
  • Plotting Time Series
  • Plotting Geographical Data
  • Visualizing Graphs
  • Part 4: Wrangling Data
  • Chapter 12: Stretching Python’s Capabilities
  • Playing with Scikit-learn
  • Using Transformative Functions
  • Considering Timing and Performance
  • Running in Parallel on Multiple Cores
  • Chapter 13: Exploring Data Analysis
  • The EDA Approach
  • Defining Descriptive Statistics for Numeric Data
  • Counting for Categorical Data
  • Creating Applied Visualization for EDA
  • Understanding Correlation
  • Working with Cramér’s V
  • Modifying Data Distributions
  • Chapter 14: Reducing Dimensionality
  • Understanding SVD
  • Performing Factor Analysis and PCA
  • Understanding Some Applications
  • Chapter 15: Clustering
  • Clustering with K-means
  • Performing Hierarchical Clustering
  • Discovering New Groups with DBScan
  • Chapter 16: Detecting Outliers in Data
  • Considering Outlier Detection
  • Examining a Simple Univariate Method
  • Developing a Multivariate Approach
  • Part 5: Learning from Data
  • Chapter 17: Exploring Four Simple and Effective Algorithms
  • Guessing the Number: Linear Regression
  • Moving to Logistic Regression
  • Making Things as Simple as Naïve Bayes
  • Learning Lazily with Nearest Neighbors
  • Chapter 18: Performing Cross-Validation, Selection, and Optimization
  • Pondering the Problem of Fitting a Model
  • Cross-Validating
  • Selecting Variables Like a Pro
  • Pumping Up Your Hyperparameters
  • Chapter 19: Increasing Complexity with Linear and Nonlinear Tricks
  • Using Nonlinear Transformations
  • Regularizing Linear Models
  • Fighting with Big Data Chunk by Chunk
  • Understanding Support Vector Machines
  • Playing with Neural Networks
  • Chapter 20: Understanding the Power of the Many
  • Starting with a Plain Decision Tree
  • Getting Lost in a Random Forest
  • Boosting Predictions
  • Part 6: The Part of Tens
  • Chapter 21: Ten Essential Data Resources
  • Discovering the News with Reddit
  • Getting a Good Start with KDnuggets
  • Locating Free Learning Resources with Quora
  • Gaining Insights with Oracle’s AI & Data Science Blog
  • Accessing the Huge List of Resources on Data Science Central
  • Discovering New Beginner Data Science Methodologies at Data Science 101
  • Obtaining the Most Authoritative Sources at Udacity
  • Receiving Help with Advanced Topics at Conductrics
  • Obtaining the Facts of Open Source Data Science from Springboard
  • Zeroing In on Developer Resources with Jonathan Bower
  • Chapter 22: Ten Data Challenges You Should Take
  • Removing Personally Identifiable Information
  • Creating a Secure Data Environment
  • Working with a Multiple-Data-Source Problem
  • Honing Your Overfit Strategies
  • Trudging Through the MovieLens Dataset
  • Locating the Correct Data Source
  • Working with Handwritten Information
  • Working with Pictures
  • Indentifying Data Lineage
  • Interacting with a Huge Graph
  • Index
  • About the Authors
  • Connect with Dummies
  • End User License Agreement
Show More

Additional information

Veldu vöru

Rafbók til eignar

Reviews

There are no reviews yet.

Be the first to review “Python for Data Science For Dummies”

Netfang þitt verður ekki birt. Nauðsynlegir reitir eru merktir *

Aðrar vörur

1
    1
    Karfan þín
    Accounting For Dummies
    Accounting For Dummies
    Veldu vöru:

    Rafbók til eignar

    1 X 2.490 kr. = 2.490 kr.