Gutscheinbedingungen

**Gültig bis 06.07.2026 auf fremdsprachige Bücher online auf thalia.at, in der Thalia App ab einem Mindestbestellwert von 30€ und in allen Thalia Buchhandlungen in Österreich. In den Buchhandlungen nur gültig auf lagernde Ware. Einzelne Artikel können ausgeschlossen sein. Ausgenommen sind preisgebundene Artikel & eBooks. Pro Einkauf einmal einlösbar. Nur gültig gegen Vorlage oder im Onlineshop hinterlegter Bonuscard. Infos zur Einlösung in der Buchhandlung sind auf der Bonuscard-Vorteilspreisseite zu finden. Click & Collect nur bei Onlinevorabzahlung möglich. Keine Einlösung bei Scan & Go-Bezahlung. Keine Barauszahlung. Nicht kombinierbar mit anderen Aktionen und Gutscheinen. Gutschein wird auf max. 500€ Bestellwert angerechnet. Nicht gültig für Versandkosten und Services.

Produktbild: Data Science Essentials For Dummies

Data Science Essentials For Dummies

16,99 €

inkl. gesetzl. MwSt., zzgl. Versandkosten


  • Kostenlose Lieferung ab 30 € Einkaufswert
  • Versandkostenfrei für Bonuscard-Kund*innen

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

19.12.2024

Verlag

Wiley

Seitenzahl

192

Maße (L/B/H)

21/13,6/1,4 cm

Gewicht

181 g

Sprache

Englisch

ISBN

978-1-394-29700-9

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

19.12.2024

Verlag

Wiley

Seitenzahl

192

Maße (L/B/H)

21/13,6/1,4 cm

Gewicht

181 g

Sprache

Englisch

ISBN

978-1-394-29700-9

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

Noch keine Bewertungen vorhanden

Verfassen Sie die erste Bewertung zu diesem Artikel

Helfen Sie anderen Kundinnen und Kunden durch Ihre Meinung.

Kundinnen und Kunden meinen

Bewertungen (0)

Die Leseprobe wird geladen.
  • Produktbild: Data Science Essentials For Dummies
  • Introduction 1

    About This Book 2

    Foolish Assumptions 3

    Icons Used in This Book 3

    Where to Go from Here 4

    Chapter 1: Wrapping Your Head Around Data Science 5

    Seeing Who Can Make Use of Data Science 6

    Inspecting the Pieces of the Data Science Puzzle 8

    Collecting, querying, and consuming data 9

    Applying mathematical modeling to data science tasks 11

    Deriving insights from statistical methods 11

    Coding, coding, coding - it's just part of the game 12

    Applying data science to a subject area 12

    Communicating data insights 14

    Chapter 2: Tapping into Critical Aspects of Data Engineering 15

    Defining the Three Vs 15

    Grappling with data volume 16

    Handling data velocity 16

    Dealing with data variety 17

    Identifying Important Data Sources 18

    Grasping the Differences among Data Approaches 18

    Defining data science 19

    Defining machine learning engineering 20

    Defining data engineering 20

    Comparing machine learning engineers, data scientists, and data engineers 21

    Storing and Processing Data for Data Science 22

    Storing data and doing data science directly in the cloud 22

    Processing data in real-time 27

    Recognizing the Impact of Generative AI 27

    The reshaping of data engineering 28

    Tools and frameworks for supporting AI workloads 28

    Chapter 3: Using a Machine to Learn from Data 29

    Defining Machine Learning and Its Processes 29

    Walking through the steps of the machine learning process 30

    Becoming familiar with machine learning terms 30

    Considering Learning Styles 31

    Learning with supervised algorithms 31

    Learning with unsupervised algorithms 32

    Learning with reinforcement 32

    Seeing What You Can Do 32

    Selecting algorithms based on function 33

    Generating real-time analytics with Spark 36

    Chapter 4: Math, Probability, and Statistical Modeling 39

    Exploring Probability and Inferential Statistics 40

    Probability distributions 42

    Conditional probability with Naïve Bayes 44

    Quantifying Correlation 45

    Calculating correlation with Pearson's r 45

    Ranking variable pairs using Spearman's rank correlation 47

    Reducing Data Dimensionality with Linear Algebra 48

    Decomposing data to reduce dimensionality 48

    Reducing dimensionality with factor analysis 52

    Decreasing dimensionality and removing outliers with PCA 53

    Modeling Decisions with Multiple Criteria Decision-Making 54

    Turning to traditional MCDM 55

    Focusing on fuzzy MCDM 57

    Introducing Regression Methods 57

    Linear regression 57

    Logistic regression 59

    Ordinary least squares regression methods 60

    Detecting Outliers 60

    Analyzing extreme values 60

    Detecting outliers with univariate analysis 61

    Detecting outliers with multivariate analysis 62

    Introducing Time Series Analysis 64

    Identifying patterns in time series 64

    Modeling univariate time series data 65

    Chapter 5: Grouping Your Way into Accurate Predictions 67

    Starting with Clustering Basics 68

    Getting to know clustering algorithms 69

    Examining clustering similarity metrics 71

    Identifying Clusters in Your Data 72

    Clustering with the k-means algorithm 72

    Estimating clusters with kernel density estimation 74

    Clustering with hierarchical algorithms 75

    Dabbling in the DBScan neighborhood 77

    Categorizing Data with Decision Tree and Random Forest Algorithms 79

    Drawing a Line between Clustering and Classification 80

    Introducing instance-based learning classifiers 81

    Getting to know classification algorithms 81

    Making Sense of Data with Nearest Neighbor Analysis 84

    Classifying Data with Average Nearest Neighbor Algorithms 86

    Classifying with K-Nearest Neighbor Algorithms 89

    Understanding how the k-nearest neighbor algorithm works 90

    Knowing when to use the k-nearest neighbor algorithm 91

    Exploring common applications of k-nearest neighbor algorithms 92

    Solving Real-World Problems with Nearest Neighbor Algorithms 92

    Seeing k-nearest neighbor algorithms in action 92

    Seeing average nearest neighbor algorithms in action 93

    Chapter 6: Coding Up Data Insights and Decision Engines 95

    Seeing Where Python Fits into Your Data Science Strategy 95

    Using Python for Data Science 96

    Sorting out the various Python data types 98

    Putting loops to good use in Python 101

    Having fun with functions 103

    Keeping cool with classes 104

    Checking out some useful Python libraries 107

    Chapter 7: Generating Insights with Software Applications 115

    Choosing the Best Tools for Your Data Science Strategy 116

    Getting a Handle on SQL and Relational Databases 118

    Investing Some Effort into Database Design 123

    Defining data types 123

    Designing constraints properly 124

    Normalizing your database 124

    Narrowing the Focus with SQL Functions 127

    Making Life Easier with Excel 131

    Using Excel to quickly get to know your data 132

    Reformatting and summarizing with PivotTables 137

    Automating Excel tasks with macros 139

    Chapter 8: Telling Powerful Stories with Data 143

    Data Visualizations: The Big Three 144

    Data storytelling for decision-makers 145

    Data showcasing for analysts 145

    Designing data art for activists 146

    Designing to Meet the Needs of Your Target Audience 146

    Step 1: Brainstorm (All about Eve) 147

    Step 2: Define the purpose 148

    Step 3: Choose the most functional visualization type for your purpose 149

    Picking the Most Appropriate Design Style 150

    Inducing a calculating, exacting response 150

    Eliciting a strong emotional response 151

    Selecting the Appropriate Data Graphic Type 152

    Standard chart graphics 154

    Comparative graphics 157

    Statistical plots 161

    Topology structures 162

    Spatial plots and maps 164

    Testing Data Graphics 167

    Adding Context 168

    Creating context with data 169

    Creating context with annotations 169

    Creating context with graphical elements 169

    Chapter 9: Ten Free or Low-Cost Data Science Libraries and Platforms 171

    Scraping the Web with Beautiful Soup 171

    Wrangling Data with pandas 172

    Visualizing Data with Looker Studio 172

    Machine Learning with scikit-learn 172

    Creating Interactive Dashboards with Streamlit 173

    Doing Geospatial Data Visualization with Kepler.gl 173

    Making Charts with Tableau Public 173

    Doing Web-Based Data Visualization with RAWGraphs 174

    Making Cool Infographics with Infogram 174

    Making Cool Infographics with Canva 174

    Index 175