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An Introduction to Data Science With Python - Saltz, Jeffrey S. S.

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        Présentation An Introduction To Data Science With Python Format Broché

         - Livre Informatique

        Livre Informatique - Saltz, Jeffrey S. S. - 01/09/2024 - Broché - Langue : Anglais

        . .

      • Auteur(s) : Saltz, Jeffrey S. S. - Stanton, Jeffrey Morgan Morgan
      • Editeur : Sage Publications, Inc
      • Langue : Anglais
      • Parution : 01/09/2024
      • Format : Moyen, de 350g à 1kg
      • Nombre de pages : 308.0
      • ISBN : 1071850652



      • Résumé :
        An Introduction to Data Science with Python by Jeffrey S. Saltz and Jeffery M. Stanton provides readers who are new to Python and data science with a step-by-step walkthrough of the tools and techniques used to analyze data and generate predictive models. After introducing the basic concepts of data science, the book builds on these foundations to explain data science techniques using Python-based Jupyter Notebooks. The techniques include making tables and data frames, computing statistics, managing data, creating data visualizations, and building machine learning models. Each chapter breaks down the process into simple steps and components so students with no more than a high school algebra background will still find the concepts and code intelligible. Explanations are reinforced with linked practice questions throughout to check reader understanding. The book also covers advanced topics such as neural networks and deep learning, the basis of many recent and startling advances in machine learning and artificial intelligence. With their trademark humor and clear explanations, Saltz and Stanton provide a gentle introduction to this powerful data science tool. Included with this title: LMS Cartridge: Import this title's instructor resources into your school's learning management system (LMS) and save time. Don?t use an LMS? You can still access all of the same online resources for this title via the password-protected Instructor Resource Site....

        Sommaire:
        Introduction - Data Science, Many Skills
        What is Data Science?
        The Steps in Doing Data Science
        The Skills Needed to Do Data Science
        Identifying Data Problems Through Stories
        Case: Overall Context and Desired Actionable Insight
        Chapter 1 - Begin at the Beginning With Python
        Getting Ready to Use Python
        Using Python in a Jupyter Notebook
        Creating and Using Lists
        Slicing Lists
        The Virtual Machine
        Shared Python Code Libraries: The Package Index
        Chapter 2 - Rows and Columns
        Creating Pandas DataFrames
        Exploring DataFrames
        Accessing Columns in a DataFrame
        Accessing Specific Rows and Columns in a DataFrame
        Generating DataFrame Subsets With Conditional Evaluations
        A Quick Review
        Chapter 3 - Data Munging
        Reading Data From a CSV Text File
        Removing Rows and Columns
        Renaming Rows and Columns
        Cleaning Up the Elements
        Sorting and Grouping DataFrames
        Grouping Within DataFrames
        Chapter 4 - What's My Function?
        Why Create and Use Functions?
        Creating Functions in Python
        Defensive Coding
        Classes and Methods
        Chapter 5 - Beer, Farms, Peas, and Statistics
        Historical Perspective
        Sampling a Population
        Understanding Descriptive Statistics
        Using Descriptive Statistics
        Using Histograms to Understand a Distribution
        Normal Distributions
        Chapter 6 - Sample in a Jar
        Sampling in Python
        A Repetitious Sampling Adventure
        Law of Large Numbers and the Central Limit Theorem
        Making Decisions With a Sampling Distribution
        Evaluating a New Sample With Thresholds
        Chapter 7 - Storage Wars
        Accessing Excel Data
        Working With Data From External Databases
        Accessing a Database
        Accessing JSON Data
        Chapter 8 - Pictures vs. Numbers
        A Visualization Overview
        Basic Plots in Python
        Using Seaborn
        Scatterplot Visualizations
        Chapter 9 - Map Magic
        Map Visualizations Basics
        Creating Map Visualizations With Folium
        Showing Points on a Map
        Chapter 10 - Linear Models
        What is a Model?
        Supervised and Unsupervised Learning
        Linear Modeling
        An Example-Car Maintenance
        Partitioning Into Training and Cross Validation Datasets
        Using K-Fold Cross Validation
        Chapter 11 - Classic Classifiers
        More Supervised Learning
        A Classification Example
        Supervised Learning With Na?ve Bayes
        Na?ve Bayes in Python
        Supervised Learning Using Classification and Regression Trees
        Chapter 12 - Left Unsupervised
        Supervised Versus Unsupervised
        Data Mining Processes
        Association Rules Data
        Association Rules Mining
        How the Association Rules Algorithm Works
        Visualizing and Screening Association Rules
        Chapter 13 - Words of Wisdom: Doing Text Analysis
        Unstructured Data
        Reading in Text Files
        Creating the Word Cloud
        Sentiment Analysis
        Topic Modeling
        Other Uses of Text Mining
        Chapter 14 - In the Shallows of Deep Learning
        The Impact of Deep Learning
        How Does Deep Learning Work?
        Deep Learning in Python-a Basic Example
        Deep Learning Using the MNIST Data
        ...

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