• Produktbild: Blockchain Data Analytics for Dummies
  • Produktbild: Blockchain Data Analytics for Dummies
- 11%

Blockchain Data Analytics for Dummies

11% sparen

28,99 € UVP 32,80 €

inkl. gesetzl. MwSt., zzgl. Versandkosten


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

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

06.10.2020

Verlag

John Wiley & Sons Inc

Seitenzahl

352

Maße (L/B/H)

23,1/18,5/2,3 cm

Gewicht

499 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-1-119-65177-2

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

06.10.2020

Verlag

John Wiley & Sons Inc

Seitenzahl

352

Maße (L/B/H)

23,1/18,5/2,3 cm

Gewicht

499 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-1-119-65177-2

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

Kundinnen und Kunden meinen

0 Bewertungen

Informationen zu Bewertungen

Zur Abgabe einer Bewertung ist eine Anmeldung im Konto notwendig. Die Authentizität der Bewertungen wird von uns nicht überprüft. Wir behalten uns vor, Bewertungstexte, die unseren Richtlinien widersprechen, entsprechend zu kürzen oder zu löschen.

Die Bewertungen sind nach Format, Anzahl Sterne und Datum sortiert.

Verfassen Sie die erste Bewertung zu diesem Artikel

Helfen Sie anderen Kund*innen durch Ihre Meinung

Kundinnen und Kunden meinen

0 Bewertungen filtern

Die Leseprobe wird geladen.
  • Produktbild: Blockchain Data Analytics for Dummies
  • Produktbild: Blockchain Data Analytics for Dummies
  • Introduction 1

    About This Book 1

    Foolish Assumptions 2

    Icons Used in This Book 2

    Beyond the Book 2

    Where to Go from Here 3

    Part 1: Intro to Analytics and Blockchain 5

    Chapter 1: Driving Business with Data and Analytics 7

    Deriving Value from Data 8

    Monetizing data 8

    Exchanging data 9

    Verifying data 10

    Understanding and Satisfying Regulatory Requirements 11

    Classifying individuals 11

    Identifying criminals 11

    Examining common privacy laws 12

    Predicting Future Outcomes with Data 13

    Classifying entities 13

    Predicting behavior 14

    Making decisions based on models 16

    Changing Business Practices to Create Desired Outcomes 16

    Defining the desired outcome 17

    Building models for simulation 17

    Aligning operations and assessing results 18

    Chapter 2: Digging into Blockchain Technology 19

    Exploring the Blockchain Landscape 20

    Managing ownership transfer 20

    Doing more with blockchain 21

    Understanding blockchain technology 21

    Reviewing blockchain's family tree 22

    Fitting blockchain into today's businesses 25

    Understanding Primary Blockchain Types 27

    Categorizing blockchain implementations 27

    Describing basic blockchain type features 29

    Contrasting popular enterprise blockchain implementations 30

    Aligning Blockchain Features with Business Requirements 31

    Reviewing blockchain core features 31

    Examining primary common business requirements 33

    Matching blockchain features to business requirements 34

    Examining Blockchain Use Cases 35

    Managing physical items in cyberspace 35

    Handling sensitive information 36

    Conducting financial transactions 37

    Chapter 3: Identifying Blockchain Data with Value 39

    Exploring Blockchain Data 40

    Understanding what's stored in blockchain blocks 40

    Recording transaction data 41

    Dissecting the parts of a block 43

    Decoding block data 47

    Categorizing Common Data in a Blockchain 49

    Serializing transaction data 49

    Logging events on the blockchain 50

    Storing value with smart contracts 52

    Examining Types of Blockchain Data for Value 52

    Exploring basic transaction data 53

    Associating real-world meaning to events 53

    Aligning Blockchain Data with Real-World Processes 54

    Understanding smart contract functions 55

    Assessing smart contract event logs 55

    Ranking transaction and event data by its effect 55

    Chapter 4: Implementing Blockchain Analytics in Business 57

    Aligning Analytics with Business Goals 58

    Leveraging newly accessible decentralized tools 58

    Monetizing data 59

    Exchanging and integrating data effectively 59

    Surveying Options for Your Analytics Lab 60

    Installing the Blockchain Client 61

    Installing the Test Blockchain 65

    Installing the Testing Environment 68

    Getting ready to install Truffle 69

    Downloading and installing Truffle 72

    Installing the IDE 74

    Chapter 5: Interacting with Blockchain Data 79

    Exploring the Blockchain Analytics Ecosystem 80

    Reviewing your blockchain lab 80

    Identifying analytics client options 81

    Choosing the best blockchain analytics client 83

    Adding Anaconda and Web3.js to Your Lab 84

    Verifying platform prerequisites 84

    Installing the Anaconda platform 86

    Installing the Web3.py library 89

    Setting up your blockchain analytics project 90

    Writing a Python Script to Access a Blockchain 92

    Interfacing with smart contracts 93

    Finding a smart contract's ABI 94

    Building a Local Blockchain to Analyze 100

    Connecting to your blockchain 101

    Invoking smart contract functions 101

    Fetching blockchain data 102

    Part 2: Fetching Blockchain Chain 105

    Chapter 6: Parsing Blockchain Data and Building the Analysis Dataset 107

    Comparing On-Chain and External Analysis Options 108

    Considering access speed 108

    Comparing one-off versus repeated analysis 109

    Assessing data completeness 110

    Integrating External Data 111

    Determining what data you need 112

    Extending identities to off-chain data 113

    Finding external data 114

    Identifying Features 115

    Describing how features affect outcomes 116

    Comparing filtering and wrapping methods 116

    Building an Analysis Dataset 117

    Connecting to multiple data sources 118

    Building a cross-referenced dataset 118

    Cleaning your data 118

    Chapter 7: Building Basic Blockchain Analysis Models 121

    Identifying Related Data 122

    Grouping data based on features (attributes) 123

    Determining group membership 126

    Discovering relationships among items 129

    Making Predictions of Future Outcomes 130

    Selecting features that affect outcome 131

    Beating the best guess 133

    Building confidence 134

    Analyzing Time-Series Data 135

    Exploring growth and maturity 137

    Identifying seasonal trends 138

    Describing cycles of results 138

    Chapter 8: Leveraging Advanced Blockchain Analysis Models 139

    Identifying Participation Incentive Mechanisms 140

    Complying with mandates 141

    Playing games with partners 141

    Rewarding and punishing participants 142

    Managing Deployment and Maintenance Costs 143

    Lowering the cost of admission 143

    Leveraging participation value 145

    Aligning ROI with analytics currency 146

    Collaborating to Create Better Models 147

    Collecting data from a cohort 148

    Building models collaboratively 148

    Assessing model quality as a team 149

    Part 3: Analyzing and Visualizing Blockchain Analysis Data 151

    Chapter 9: Identifying Clustered and Related Data 153

    Analyzing Data Clustering Using Popular Models 154

    Delivering valuable knowledge with cluster analysis 154

    Examining popular clustering techniques 155

    Understanding k-means analysis 155

    Evaluating model effectiveness with diagnostics 160

    Implementing Blockchain Data Clustering Algorithms in Python 160

    Discovering Association Rules in Data 163

    Delivering valuable knowledge with association rules analysis 163

    Describing the apriori association rules algorithm 164

    Evaluating model effectiveness with diagnostics 167

    Determining When to Use Clustering and Association Rules 168

    Chapter 10: Classifying Blockchain Data 171

    Analyzing Data Classification Using Popular Models 172

    Delivering valuable knowledge with classification analysis 172

    Examining popular classification techniques 173

    Understanding how the decision tree algorithm works 173

    Understanding how the naïve Bayes algorithm works 176

    Evaluating model effectiveness with diagnostics 178

    Implementing Blockchain Classification Algorithms in Python 179

    Defining model input data requirements 179

    Building your classification model dataset 181

    Developing your classification model code 184

    Determining When Classification Fits Your Analytics Needs 188

    Chapter 11: Predicting the Future with Regression 189

    Analyzing Predictions and Relationships Using Popular Models 190

    Delivering valuable knowledge with regression analysis 190

    Examining popular regression techniques 191

    Describing how linear regression works 195

    Describing how logistic regression works 198

    Evaluating model effectiveness with diagnostics 201

    Implementing Regression Algorithms in Python 203

    Defining model input data requirements 203

    Building your regression model dataset 203

    Developing your regression model code 204

    Determining When Regression Fits Your Analytics Needs 207

    Chapter 12: Analyzing Blockchain Data over Time 209

    Analyzing Time Series Data Using Popular Models 210

    Delivering valuable knowledge with time series analysis 211

    Examining popular time series techniques 211

    Visualizing time series results 214

    Implementing Time Series Algorithms in Python 216

    Defining model input data requirements 217

    Developing your time series model code 219

    Determining When Time Series Fits Your Analytics Needs 221

    Part 4: Implementing Blockchain Analysis Models 223

    Chapter 13: Writing Models from Scratch 225

    Interacting with Blockchains 226

    Connecting to a Blockchain 226

    Using an application programming interface to interact with a blockchain 228

    Reading from a blockchain 230

    Updating previously read blockchain data 234

    Examining Blockchain Client Languages and Approaches 236

    Introducing popular blockchain client programming languages 237

    Comparing popular language pros and cons 238

    Deciding on the right language 238

    Chapter 14: Calling on Existing Frameworks 239

    Benefitting from Standardization 240

    Easing the burden of compliance 240

    Avoiding inefficient code 242

    Raising the bar on quality 244

    Focusing on Analytics, Not Utilities 245

    Avoiding feature bloat 245

    Setting granular goals 246

    Managing post-operational models 247

    Leveraging the Efforts of Others 248

    Deciding between make or buy 248

    Scoping your testing efforts 249

    Aligning personnel expertise with tasks 250

    Chapter 15: Using Third-Party Toolsets and Frameworks 251

    Surveying Toolsets and Frameworks 252

    Describing TensorFlow 253

    Examining Keras 255

    Looking at PyTorch 256

    Supercharging PyTorch with fast.ai 258

    Presenting Apache MXNet 260

    Introducing Caffe 261

    Describing Deeplearning4j 262

    Comparing Toolsets and Frameworks 264

    Chapter 16: Putting It All Together 267

    Assessing Your Analytics Needs 268

    Describing the project's purpose 268

    Defining the process 270

    Taking inventory of resources 271

    Choosing the Best Fit 273

    Understanding personnel skills and affinity 273

    Leveraging infrastructure 275

    Integrating into organizational culture 276

    Embracing iteration 276

    Managing the Blockchain Project 277

    Part 5: The Part of Tens 279

    Chapter 17: Ten Tools for Developing Blockchain Analytics Models 281

    Developing Analytics Models with Anaconda 282

    Writing Code in Visual Studio Code 283

    Prototyping Analytics Models with Jupyter 284

    Developing Models in the R Language with RStudio 285

    Interacting with Blockchain Data with web3.py 287

    Extract Blockchain Data to a Database 288

    Extracting blockchain data with EthereumDB 288

    Storing blockchain data in a database using Ethereum-etl 288

    Accessing Ethereum Networks at Scale with Infura 289

    Analyzing Very Large Datasets in Python with Vaex 290

    Examining Blockchain Data 291

    Exploring Ethereum with Etherscan.io 291

    Perusing multiple blockchains with Blockchain.com 292

    Viewing cryptocurrency details with ColossusXT 293

    Preserving Privacy in Blockchain Analytics with MADANA 293

    Chapter 18: Ten Tips for Visualizing Data 295

    Checking the Landscape around You 296

    Leveraging the Community 297

    Making Friends with Network Visualizations 298

    Recognizing Subjectivity 299

    Using Scale, Text, and the Information You Need 300

    Considering Frequent Updates for Volatile Blockchain Data 301

    Getting Ready for Big Data 302

    Protecting Privacy 302

    Telling Your Story 303

    Challenging Yourself! 303

    Chapter 19: Ten Uses for Blockchain Analytics 305

    Accessing Public Financial Transaction Data 306

    Connecting with the Internet of Things (IoT) 307

    Ensuring Data and Document Authenticity 308

    Controlling Secure Document Integrity 308

    Tracking Supply Chain Items 310

    Empowering Predictive Analytics 310

    Analyzing Real-Time Data 311

    Supercharging Business Strategy 312

    Managing Data Sharing 312

    Standardizing Collaboration Forms 312

    Index 315