Description

Book Synopsis
A holistic and real-world approach to operationalizing artificial intelligence in your company InOperating AI, Director of Technology and Architecture at Ericsson AB, Ulrika Jägare, delivers an eye-opening new discussion of how to introduce your organization to artificial intelligence by balancing data engineering, model development, and AI operations. You'll learn the importance of embracing an AI operational mindset to successfully operate AI and lead AI initiatives through the entire lifecycle, including keyareas such as; data mesh, data fabric,aspects ofsecurity,data privacy,data rights and IPR related to data and AI models. In the book, you'll also discover: How to reduce the risk of entering bias in our artificial intelligence solutions and how to approach explainable AI (XAI)The importance of efficient and reproduceable data pipelines, including how to manage your company's dataAn operational perspective on the development of AI models using the MLOps (Machine Learning Operations) approach, including how to deploy, run and monitor models and ML pipelines in production using CI/CD/CT techniques, that generates value in the real worldKey competences and toolsets in AI development, deployment and operationsWhat to consider when operating different types of AI business models With a strong emphasis on deployment and operations of trustworthy and reliable AI solutions that operate well in the real worldand not just the labOperating AIis a must-read for business leaders looking for ways to operationalize an AI business model that actually makes money, from the concept phase to running in a live production environment.

Table of Contents

Foreword xii

Introduction xv

Chapter 1 Balancing the AI Investment 1

Defining AI and Related Concepts 3

Operational Readiness and Why It Matters 8

Applying an Operational Mind- set from the Start 12

The Operational Challenge 15

Strategy, People, and Technology Considerations 19

Strategic Success Factors in Operating AI 20

People and Mind- sets 23

The Technology Perspective 28

Chapter 2 Data Engineering Focused on AI 31

Know Your Data 32

Know the Data Structure 32

Know the Data Records 34

Know the Business Data Oddities 35

Know the Data Origin 36

Know the Data Collection Scope 37

The Data Pipeline 38

Types of Data Pipeline Solutions 41

Data Quality in Data Pipelines 44

The Data Quality Approach in AI/ML 45

Scaling Data for AI 49

Key Capabilities for Scaling Data 51

Introducing a Data Mesh 53

When You Have No Data 55

The Role of a Data Fabric 56

Why a Data Fabric Matters in AI/ML 58

Key Competences and Skillsets in Data Engineering 60

Chapter 3 Embracing MLOps 71

MLOps as a Concept 72

From ML Models to ML Pipelines 76

The ML Pipeline 78

Adopt a Continuous Learning Approach 84

The Maturity of Your AI/ML Capability 86

Level 0— Model Focus and No MLOps 88

Level 1— Pipelines Rather than Models 89

Level 2— Leveraging Continuous Learning 90

The Model Training Environment 91

Enabling ML Experimentation 92

Using a Simulator for Model Training 94

Environmental Impact of Training AI Models 96

Considering the AI/ML Functional Technology Stack 97

Key Competences and Toolsets in MLOps 103

Clarifying Similarities and Differences 106

MLOps Toolsets 107

Chapter 4 Deployment with AI Operations in Mind 115

Model Serving in Practice 117

Feature Stores 118

Deploying, Serving, and Inferencing Models at Scale 121

The ML Inference Pipeline 123

Model Serving Architecture Components 125

Considerations Regarding Toolsets for Model Serving 129

The Industrialization of AI 129

The Importance of a Cultural Shift 139

Chapter 5 Operating AI Is Different from Operating Software 143

Model Monitoring 144

Ensuring Efficient ML Model Monitoring 145

Model Scoring in Production 146

Retraining in Production Using Continuous Training 151

Data Aspects Related to Model Retraining 155

Understanding Different Retraining Techniques 156

Deployment after Retraining 159

Disadvantages of Retraining Models Frequently 159

Diagnosing and Managing Model Performance Issues in Operations 161

Issues with Data Processing 162

Issues with Data Schema Change 163

Data Loss at the Source 165

Models Are Broken Upstream 166

Monitoring Data Quality and Integrity 167

Monitoring the Model Calls 167

Monitoring the Data Schema 168

Detecting Any Missing Data 168

Validating the Feature Values 169

Monitor the Feature Processing 170

Model Monitoring for Stakeholders 171

Ensuring Stakeholder Collaboration for Model Success 173

Toolsets for Model Monitoring in Production 175

Chapter 6 AI Is All About Trust 181

Anonymizing Data 182

Data Anonymization Techniques 185

Pros and Cons of Data Anonymization 187

Explainable AI 189

Complex AI Models Are Harder to Understand 190

What Is Interpretability? 191

The Need for Interpretability in Different Phases 192

Reducing Bias in Practice 194

Rights to the Data and AI Models 199

Data Ownership 200

Who Owns What in a Trained AI Model? 202

Balancing the IP Approach for AI Models 205

The Role of AI Model Training 206

Addressing IP Ownership in AI Results 207

Legal Aspects of AI Techniques 208

Operational Governance of Data and AI 210

Chapter 7 Achieving Business Value from AI 215

The Challenge of Leveraging Value from AI 216

Productivity 216

Reliability 217

Risk 218

People 219

Top Management and AI Business Realization 219

Measuring AI Business Value 223

Measuring AI Value in Nonrevenue Terms 227

Operating Different AI Business Models 229

Operating Artificial Intelligence as a Service 230

Operating Embedded AI Solutions 236

Operating a Hybrid AI Business Model 239

Index 241

Operating AI

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    A Paperback / softback by Ulrika Jagare

    15 in stock

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      Publisher: John Wiley & Sons Inc
      Publication Date: 14/06/2022
      ISBN13: 9781119833192, 978-1119833192
      ISBN10: 1119833191
      Also in:
      Data mining

      Description

      Book Synopsis
      A holistic and real-world approach to operationalizing artificial intelligence in your company InOperating AI, Director of Technology and Architecture at Ericsson AB, Ulrika Jägare, delivers an eye-opening new discussion of how to introduce your organization to artificial intelligence by balancing data engineering, model development, and AI operations. You'll learn the importance of embracing an AI operational mindset to successfully operate AI and lead AI initiatives through the entire lifecycle, including keyareas such as; data mesh, data fabric,aspects ofsecurity,data privacy,data rights and IPR related to data and AI models. In the book, you'll also discover: How to reduce the risk of entering bias in our artificial intelligence solutions and how to approach explainable AI (XAI)The importance of efficient and reproduceable data pipelines, including how to manage your company's dataAn operational perspective on the development of AI models using the MLOps (Machine Learning Operations) approach, including how to deploy, run and monitor models and ML pipelines in production using CI/CD/CT techniques, that generates value in the real worldKey competences and toolsets in AI development, deployment and operationsWhat to consider when operating different types of AI business models With a strong emphasis on deployment and operations of trustworthy and reliable AI solutions that operate well in the real worldand not just the labOperating AIis a must-read for business leaders looking for ways to operationalize an AI business model that actually makes money, from the concept phase to running in a live production environment.

      Table of Contents

      Foreword xii

      Introduction xv

      Chapter 1 Balancing the AI Investment 1

      Defining AI and Related Concepts 3

      Operational Readiness and Why It Matters 8

      Applying an Operational Mind- set from the Start 12

      The Operational Challenge 15

      Strategy, People, and Technology Considerations 19

      Strategic Success Factors in Operating AI 20

      People and Mind- sets 23

      The Technology Perspective 28

      Chapter 2 Data Engineering Focused on AI 31

      Know Your Data 32

      Know the Data Structure 32

      Know the Data Records 34

      Know the Business Data Oddities 35

      Know the Data Origin 36

      Know the Data Collection Scope 37

      The Data Pipeline 38

      Types of Data Pipeline Solutions 41

      Data Quality in Data Pipelines 44

      The Data Quality Approach in AI/ML 45

      Scaling Data for AI 49

      Key Capabilities for Scaling Data 51

      Introducing a Data Mesh 53

      When You Have No Data 55

      The Role of a Data Fabric 56

      Why a Data Fabric Matters in AI/ML 58

      Key Competences and Skillsets in Data Engineering 60

      Chapter 3 Embracing MLOps 71

      MLOps as a Concept 72

      From ML Models to ML Pipelines 76

      The ML Pipeline 78

      Adopt a Continuous Learning Approach 84

      The Maturity of Your AI/ML Capability 86

      Level 0— Model Focus and No MLOps 88

      Level 1— Pipelines Rather than Models 89

      Level 2— Leveraging Continuous Learning 90

      The Model Training Environment 91

      Enabling ML Experimentation 92

      Using a Simulator for Model Training 94

      Environmental Impact of Training AI Models 96

      Considering the AI/ML Functional Technology Stack 97

      Key Competences and Toolsets in MLOps 103

      Clarifying Similarities and Differences 106

      MLOps Toolsets 107

      Chapter 4 Deployment with AI Operations in Mind 115

      Model Serving in Practice 117

      Feature Stores 118

      Deploying, Serving, and Inferencing Models at Scale 121

      The ML Inference Pipeline 123

      Model Serving Architecture Components 125

      Considerations Regarding Toolsets for Model Serving 129

      The Industrialization of AI 129

      The Importance of a Cultural Shift 139

      Chapter 5 Operating AI Is Different from Operating Software 143

      Model Monitoring 144

      Ensuring Efficient ML Model Monitoring 145

      Model Scoring in Production 146

      Retraining in Production Using Continuous Training 151

      Data Aspects Related to Model Retraining 155

      Understanding Different Retraining Techniques 156

      Deployment after Retraining 159

      Disadvantages of Retraining Models Frequently 159

      Diagnosing and Managing Model Performance Issues in Operations 161

      Issues with Data Processing 162

      Issues with Data Schema Change 163

      Data Loss at the Source 165

      Models Are Broken Upstream 166

      Monitoring Data Quality and Integrity 167

      Monitoring the Model Calls 167

      Monitoring the Data Schema 168

      Detecting Any Missing Data 168

      Validating the Feature Values 169

      Monitor the Feature Processing 170

      Model Monitoring for Stakeholders 171

      Ensuring Stakeholder Collaboration for Model Success 173

      Toolsets for Model Monitoring in Production 175

      Chapter 6 AI Is All About Trust 181

      Anonymizing Data 182

      Data Anonymization Techniques 185

      Pros and Cons of Data Anonymization 187

      Explainable AI 189

      Complex AI Models Are Harder to Understand 190

      What Is Interpretability? 191

      The Need for Interpretability in Different Phases 192

      Reducing Bias in Practice 194

      Rights to the Data and AI Models 199

      Data Ownership 200

      Who Owns What in a Trained AI Model? 202

      Balancing the IP Approach for AI Models 205

      The Role of AI Model Training 206

      Addressing IP Ownership in AI Results 207

      Legal Aspects of AI Techniques 208

      Operational Governance of Data and AI 210

      Chapter 7 Achieving Business Value from AI 215

      The Challenge of Leveraging Value from AI 216

      Productivity 216

      Reliability 217

      Risk 218

      People 219

      Top Management and AI Business Realization 219

      Measuring AI Business Value 223

      Measuring AI Value in Nonrevenue Terms 227

      Operating Different AI Business Models 229

      Operating Artificial Intelligence as a Service 230

      Operating Embedded AI Solutions 236

      Operating a Hybrid AI Business Model 239

      Index 241

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