Description

Book Synopsis

This latest textbook from bestselling author, Douglas E. Comer, is a class-tested book providing a comprehensive introduction to cloud computing. Focusing on concepts and principles, rather than commercial offerings by cloud providers and vendors, The Cloud Computing Book: The Future of Computing Explained gives readers a complete picture of the advantages and growth of cloud computing, cloud infrastructure, virtualization, automation and orchestration, and cloud-native software design.

The book explains real and virtual data center facilities, including computation (e.g., servers, hypervisors, Virtual Machines, and containers), networks (e.g., leaf-spine architecture, VLANs, and VxLAN), and storage mechanisms (e.g., SAN, NAS, and object storage). Chapters on automation and orchestration cover the conceptual organization of systems that automate software deployment and scaling. Chapters on cloud-native software cover parallelism, microservices, MapReduce, control

Table of Contents

Preface

PART I The Era Of Cloud Computing

The Motivations For Cloud
1.1 Cloud Computing Everywhere
1.2 A Facility For Flexible Computing
1.3 The Start Of Cloud: The Power Wall And Multiple Cores
1.4 From Multiple Cores To Multiple Machines
1.5 From Clusters To Web Sites And Load Balancing
1.6 Racks Of Server Computers
1.7 The Economic Motivation For A Centralized Data Center
1.8 Origin Of The Term “In The Cloud”
1.9 Centralization Once Again

Elastic Computing And Its Advantages
2.1 Introduction
2.2 Multi-Tenant Clouds
2.3 The Concept Of Elastic Computing
2.4 Using Virtualized Servers For Rapid Change
2.5 How Virtualized Servers Aid Providers
2.6 How Virtualized Servers Help A Customer
2.7 Business Models For Cloud Providers
2.8 Intrastructure as a Service (IaaS)
2.9 Platform as a Service (PaaS)
2.10 Software as a Service (SaaS)
2.11 A Special Case: Desktop as a Service (DaaS)
2.12 Summary

Type Of Clouds And Cloud Providers
3.1 Introduction
3.2 Private And Public Clouds
3.3 Private Cloud
3.4 Public Cloud
3.5 The Advantages Of Public Cloud
3.6 Provider Lock-In
3.7 The Advantages Of Private Cloud
3.8 Hybrid Cloud
3.9 Multi-Cloud
3.10 Hyperscalers
3.11 Summary

PART II Cloud Infrastructure And Virtualization

Data Center Infrastructure And Equipment
4.1 Introduction
4.2 Racks, Aisles, And Pods
4.3 Pod Size
4.4 Power And Cooling For A Pod
4.5 Raised Floor Pathways And Air Cooling
4.6 Thermal Containment And Hot/Cold Aisles
4.7 Exhaust Ducts (Chimneys)
4.8 Lights-Out Data Centers
4.9 A Possible Future Of Liquid Cooling
4.10 Network Equipment And Multi-Port Server Interfaces
4.11 Smart Network Interfaces And Offload
4.12 North-South And East-West Network Traffic
4.13 Network Hierarchies, Capacity, And Fat Tree Designs
4.14 High Capacity And Link Aggregation
4.15 A Leaf-Spine Network Design For East-West Traffic
4.16 Scaling A Leaf-Spine Architecture With A Super Spine
4.17 External Internet Connections
4.18 Storage In A Data Center
4.19 Unified Data Center Networks
4.20 Summary

Virtual Machines
5.1 Introduction
5.2 Approaches To Virtualization
5.3 Properties Of Full Virtualization
5.4 Conceptual Organization Of VM Systems
5.5 Efficient Execution And Processor Privilege Levels
5.6 Extending Privilege To A Hypervisor
5.7 Levels Of Trust
5.8 Levels Of Trust And I/O Devices
5.9 Virtual I/O Devices
5.10 Virtual Device Details
5.11 An Example Virtual Device
5.12 A VM As A Digital Object
5.13 VM Migration
5.14 Live Migration Using Three Phase
5.15 Running Virtual Machines In An Application
5.16 Facilities That Make A Hosted Hypervisor Possible
5.17 How A User Benefits From A Hosted Hypervisor
5.18 Summary

Containers
6.1 Introduction
6.2 The Advantages And Disadvantages Of VMs
6.3 Traditional Apps And Elasticity On Demand
6.4 Isolation Facilities In An Operating System
6.5 Linux Namespaces Used For Isolation
6.6 The Container Approach For Isolated Apps
6.7 Docker Containers
6.8 Docker Terminology And Development Tools
6.9 Docker Software Components
6.10 Base Operating System And Files
6.11 Items In A Dockerfile
6.12 An Example Dockerfile
6.13 Summary

Virtual Networks
7.1 Introduction
7.2 Conflicting Goals For A Data Center Network
7.3 Virtual Networks, Overlays, And Underlays
7.4 Virtual Local Area Networks (VLANs)
7.5 Scaling VLANs To A Data Center With VXLAN
7.6 A Virtual Network Switch Within A Server
7.7 Network Address Translation (NAT)
7.8 Managing Virtualization And Mobility
7.9 Automated Network Configuration And Operation
7.10 Software Defined Networking
7.11 The OpenFlow Protocol
7.12 Programmable Networks
7.13 Summary

Virtual Storage
8.1 Introduction
8.2 Persistent Storage: Disks And Files
8.3 The Disk Interface Abstraction
8.4 The File Interface Abstraction
8.5 Local And Remote Storage 1
8.6 Two Types Of Remote Storage Systems
8.7 Network Attached Storage (NAS) Technology
8.8 Storage Area Network (SAN) Technology
8.9 Mapping Virtual Disks To Physical Disks
8.10 Hyper-Converged Infrastructure
8.11 A Comparison Of NAS and SAN Technology
8.12 Object Storage
8.13 Summary

PART III Automation And Orchestration

Automation
9.1 Introduction
9.2 Groups That Use Automation
9.3 The Need For Automation In A Data Center
9.4 An Example Deployment
9.5 What Can Be Automated?
9.6 Levels Of Automation
9.7 AIops: Using Machine Learning And Artificial Intelligence
9.8 A Plethora Of Automation Tools
9.9 Automation Of Manual Data Center Practices
9.10 Zero Touch Provisioning And Infrastructure As Code
9.11 Declarative, Imperative, And Intent-Based Specifications
9.12 The Evolution Of Automation Tools
9.13 Summary

Orchestration: Automated Replication And Parallelism
10.1 Introduction
10.2 The Legacy Of Automating Manual Procedures
10.3 Orchestration: Automation With A Larger Scope
10.4 Kubernetes: An Example Container Orchestration System
10.5 Limits On Kubernetes Scope
10.6 The Kubernetes Cluster Model
10.7 Kubernetes Pods
10.8 Pod Creation, Templates, And Binding Times
10.9 Init Containers
10.10 Kubernetes Terminology: Nodes And Control Plane
10.11 Control Plane Software Components
10.12 Communication Among Control Plane Components
10.13 Worker Node Software Components
10.14 Kubernetes Features 1
10.15 Summary

PART IV Cloud Programming Paradigms

The MapReduce Paradigm
11.1 Introduction
11.2 Software In A Cloud Environment
11.3 Cloud-Native Vs. Conventional Software
11.4 Using Data Center Servers For Parallel Processing
11.5 Tradeoffs And Limitations Of The Parallel Approach
11.6 The MapReduce Programming Paradigm
11.7 Mathematical Description Of MapReduce
11.8 Splitting Input
11.9 Parallelism And Data Size
11.10 Data Access and Data Transmission
11.11 Apache Hadoop
11.12 The Two Major Parts Of Hadoop
11.13 Hadoop Hardware Cluster Model
11.14 HDFS Components: DataNodes And A NameNode
11.15 Block Replication And Fault Tolerance
11.16 HDFS And MapReduce
11.17 Using Hadoop With Other File Systems
11.18 Using Hadoop For MapReduce Computations
11.19 Hadoop’s Support For Programming Languages
11.20 Summary

Microservices
12.1 Introduction
12.2 Traditional Monolithic Applications
12.3 Monolithic Applications In A Data Center
12.4 The Microservices Approach
12.5 The Advantages Of Microservices
12.6 The Potential Disadvantages of Microservices
12.7 Microservices Granularity
12.8 Communication Protocols Used For Microservices
12.9 Communication Among Microservices
12.10 Using A Service Mesh Proxy
12.11 The Potential For Deadlock
12.12 Microservices Technologies
12.13 Summary

Controller-Based Management Software
13.1 Introduction
13.2 Traditional Distributed Application Management
13.3 Periodic Monitoring
13.4 Managing Cloud-Native Applications
13.5 Control Loop Concept
13.6 Control Loop Delay, Hysteresis, And Instability
13.7 The Kubernetes Controller Paradigm And Control Loop
13.8 An Event-Driven Implementation Of A Control Loop
13.9 Components Of A Kubernetes Controller
13.10 Custom Resources And Custom Controllers
13.11 Kubernetes Custom Resource Definition (CRD)
13.12 Service Mesh Management Tools
13.13 Reactive Or Dynamic Planning
13.14 A Goal: The Operator Pattern
13.15 Summary

Serverless Computing And Event Processing
14.1 Introduction
14.2 Traditional Client-Server Architecture 1
14.3 Scaling A Traditional Server To Handle Multiple Clients
14.4 Scaling A Server In A Cloud Environment
14.5 The Economics Of Servers In The Cloud
14.6 The Serverless Computing Approach
14.7 Stateless Servers And Containers
14.8 The Architecture Of A Serverless Infrastructure
14.9 An Example Of Serverless Processing
14.10 Potential Disadvantages Of Serverless Computing
14.11 Summary

DevOps
15.1 Introduction
15.2 Software Creation And Deployment
15.3 The Realistic Software Development Cycle
15.4 Large Software Projects And Teams
15.5 Disadvantages Of Using Multiple Teams
15.6 The DevOps Approach
15.7 Continuous Integration (CI): A Short Change Cycle
15.8 Continuous Delivery (CD): Deploying Versions Rapidly
15.9 Cautious Deployment: Sandbox, Canary, And Blue/Green
15.10 Difficult Aspects Of The DevOps Approach
15.11 Summary

PART V Other Aspects Of Cloud

Edge Computing And IIoT
16.1 Introduction
16.2 The Latency Disadvantage Of Cloud
16.3 Situations Where Latency Matters
16.4 Industries That Need Low Latency
16.5 Moving Computing To The Edge
16.6 Extending Edge Computing To A Fog Hierarchy
16.7 Caching At Multiple Levels Of A Hierarchy
16.8 An Automotive Example
16.9 Edge Computing And IIoT
16.10 Communication For IIoT
16.11 Decentralization Once Again
16.12 Summary

Cloud Security And Privacy
17.1 Introduction
17.2 Cloud-Specific Security Problems
17.3 Security In A Traditional Infrastructure
17.4 Why Traditional Methods Do Not Suffice For The Cloud
17.5 The Zero Trust Security Model
17.6 Identity Management
17.7 Privileged Access Management (PAM)
17.8 AI Technologies And Their Effect On Security

17.9 Protecting Remote Access
17.10 Privacy In A Cloud Environment
17.11 Back Doors, Side Channels, And Other Concerns
17.12 Cloud Providers As Partners For Security And Privacy
17.13 Summary

Controlling The Complexity Of Cloud-Native Systems
18.1 Introduction
18.2 Sources Of Complexity In Cloud Systems
18.3 Inherent Complexity In Large Distributed Systems
18.4 Designing A Flawless Distributed System
18.5 System Modeling
18.6 Mathematical Models
18.7 An Example Graph Model To Help Avoid Deadlock
18.8 A Graph Model For A Startup Sequence
18.9 Modeling Using Mathematics
18.10 An Example TLA+ Specification
18.11 System State And State Changes
18.12 The Form Of A TLA+ Specification
18.13 Symbols In A TLA+ Specification
18.14 State Transitions For The Example
18.15 Conclusions About Temporal Logic Models
18.16 Summary

Index

The Cloud Computing Book

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    A Hardback by Douglas Comer

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      View other formats and editions of The Cloud Computing Book by Douglas Comer

      Publisher: Taylor & Francis Ltd
      Publication Date: 7/1/2021 12:00:00 AM
      ISBN13: 9780367706807, 978-0367706807
      ISBN10: 0367706806

      Description

      Book Synopsis

      This latest textbook from bestselling author, Douglas E. Comer, is a class-tested book providing a comprehensive introduction to cloud computing. Focusing on concepts and principles, rather than commercial offerings by cloud providers and vendors, The Cloud Computing Book: The Future of Computing Explained gives readers a complete picture of the advantages and growth of cloud computing, cloud infrastructure, virtualization, automation and orchestration, and cloud-native software design.

      The book explains real and virtual data center facilities, including computation (e.g., servers, hypervisors, Virtual Machines, and containers), networks (e.g., leaf-spine architecture, VLANs, and VxLAN), and storage mechanisms (e.g., SAN, NAS, and object storage). Chapters on automation and orchestration cover the conceptual organization of systems that automate software deployment and scaling. Chapters on cloud-native software cover parallelism, microservices, MapReduce, control

      Table of Contents

      Preface

      PART I The Era Of Cloud Computing

      The Motivations For Cloud
      1.1 Cloud Computing Everywhere
      1.2 A Facility For Flexible Computing
      1.3 The Start Of Cloud: The Power Wall And Multiple Cores
      1.4 From Multiple Cores To Multiple Machines
      1.5 From Clusters To Web Sites And Load Balancing
      1.6 Racks Of Server Computers
      1.7 The Economic Motivation For A Centralized Data Center
      1.8 Origin Of The Term “In The Cloud”
      1.9 Centralization Once Again

      Elastic Computing And Its Advantages
      2.1 Introduction
      2.2 Multi-Tenant Clouds
      2.3 The Concept Of Elastic Computing
      2.4 Using Virtualized Servers For Rapid Change
      2.5 How Virtualized Servers Aid Providers
      2.6 How Virtualized Servers Help A Customer
      2.7 Business Models For Cloud Providers
      2.8 Intrastructure as a Service (IaaS)
      2.9 Platform as a Service (PaaS)
      2.10 Software as a Service (SaaS)
      2.11 A Special Case: Desktop as a Service (DaaS)
      2.12 Summary

      Type Of Clouds And Cloud Providers
      3.1 Introduction
      3.2 Private And Public Clouds
      3.3 Private Cloud
      3.4 Public Cloud
      3.5 The Advantages Of Public Cloud
      3.6 Provider Lock-In
      3.7 The Advantages Of Private Cloud
      3.8 Hybrid Cloud
      3.9 Multi-Cloud
      3.10 Hyperscalers
      3.11 Summary

      PART II Cloud Infrastructure And Virtualization

      Data Center Infrastructure And Equipment
      4.1 Introduction
      4.2 Racks, Aisles, And Pods
      4.3 Pod Size
      4.4 Power And Cooling For A Pod
      4.5 Raised Floor Pathways And Air Cooling
      4.6 Thermal Containment And Hot/Cold Aisles
      4.7 Exhaust Ducts (Chimneys)
      4.8 Lights-Out Data Centers
      4.9 A Possible Future Of Liquid Cooling
      4.10 Network Equipment And Multi-Port Server Interfaces
      4.11 Smart Network Interfaces And Offload
      4.12 North-South And East-West Network Traffic
      4.13 Network Hierarchies, Capacity, And Fat Tree Designs
      4.14 High Capacity And Link Aggregation
      4.15 A Leaf-Spine Network Design For East-West Traffic
      4.16 Scaling A Leaf-Spine Architecture With A Super Spine
      4.17 External Internet Connections
      4.18 Storage In A Data Center
      4.19 Unified Data Center Networks
      4.20 Summary

      Virtual Machines
      5.1 Introduction
      5.2 Approaches To Virtualization
      5.3 Properties Of Full Virtualization
      5.4 Conceptual Organization Of VM Systems
      5.5 Efficient Execution And Processor Privilege Levels
      5.6 Extending Privilege To A Hypervisor
      5.7 Levels Of Trust
      5.8 Levels Of Trust And I/O Devices
      5.9 Virtual I/O Devices
      5.10 Virtual Device Details
      5.11 An Example Virtual Device
      5.12 A VM As A Digital Object
      5.13 VM Migration
      5.14 Live Migration Using Three Phase
      5.15 Running Virtual Machines In An Application
      5.16 Facilities That Make A Hosted Hypervisor Possible
      5.17 How A User Benefits From A Hosted Hypervisor
      5.18 Summary

      Containers
      6.1 Introduction
      6.2 The Advantages And Disadvantages Of VMs
      6.3 Traditional Apps And Elasticity On Demand
      6.4 Isolation Facilities In An Operating System
      6.5 Linux Namespaces Used For Isolation
      6.6 The Container Approach For Isolated Apps
      6.7 Docker Containers
      6.8 Docker Terminology And Development Tools
      6.9 Docker Software Components
      6.10 Base Operating System And Files
      6.11 Items In A Dockerfile
      6.12 An Example Dockerfile
      6.13 Summary

      Virtual Networks
      7.1 Introduction
      7.2 Conflicting Goals For A Data Center Network
      7.3 Virtual Networks, Overlays, And Underlays
      7.4 Virtual Local Area Networks (VLANs)
      7.5 Scaling VLANs To A Data Center With VXLAN
      7.6 A Virtual Network Switch Within A Server
      7.7 Network Address Translation (NAT)
      7.8 Managing Virtualization And Mobility
      7.9 Automated Network Configuration And Operation
      7.10 Software Defined Networking
      7.11 The OpenFlow Protocol
      7.12 Programmable Networks
      7.13 Summary

      Virtual Storage
      8.1 Introduction
      8.2 Persistent Storage: Disks And Files
      8.3 The Disk Interface Abstraction
      8.4 The File Interface Abstraction
      8.5 Local And Remote Storage 1
      8.6 Two Types Of Remote Storage Systems
      8.7 Network Attached Storage (NAS) Technology
      8.8 Storage Area Network (SAN) Technology
      8.9 Mapping Virtual Disks To Physical Disks
      8.10 Hyper-Converged Infrastructure
      8.11 A Comparison Of NAS and SAN Technology
      8.12 Object Storage
      8.13 Summary

      PART III Automation And Orchestration

      Automation
      9.1 Introduction
      9.2 Groups That Use Automation
      9.3 The Need For Automation In A Data Center
      9.4 An Example Deployment
      9.5 What Can Be Automated?
      9.6 Levels Of Automation
      9.7 AIops: Using Machine Learning And Artificial Intelligence
      9.8 A Plethora Of Automation Tools
      9.9 Automation Of Manual Data Center Practices
      9.10 Zero Touch Provisioning And Infrastructure As Code
      9.11 Declarative, Imperative, And Intent-Based Specifications
      9.12 The Evolution Of Automation Tools
      9.13 Summary

      Orchestration: Automated Replication And Parallelism
      10.1 Introduction
      10.2 The Legacy Of Automating Manual Procedures
      10.3 Orchestration: Automation With A Larger Scope
      10.4 Kubernetes: An Example Container Orchestration System
      10.5 Limits On Kubernetes Scope
      10.6 The Kubernetes Cluster Model
      10.7 Kubernetes Pods
      10.8 Pod Creation, Templates, And Binding Times
      10.9 Init Containers
      10.10 Kubernetes Terminology: Nodes And Control Plane
      10.11 Control Plane Software Components
      10.12 Communication Among Control Plane Components
      10.13 Worker Node Software Components
      10.14 Kubernetes Features 1
      10.15 Summary

      PART IV Cloud Programming Paradigms

      The MapReduce Paradigm
      11.1 Introduction
      11.2 Software In A Cloud Environment
      11.3 Cloud-Native Vs. Conventional Software
      11.4 Using Data Center Servers For Parallel Processing
      11.5 Tradeoffs And Limitations Of The Parallel Approach
      11.6 The MapReduce Programming Paradigm
      11.7 Mathematical Description Of MapReduce
      11.8 Splitting Input
      11.9 Parallelism And Data Size
      11.10 Data Access and Data Transmission
      11.11 Apache Hadoop
      11.12 The Two Major Parts Of Hadoop
      11.13 Hadoop Hardware Cluster Model
      11.14 HDFS Components: DataNodes And A NameNode
      11.15 Block Replication And Fault Tolerance
      11.16 HDFS And MapReduce
      11.17 Using Hadoop With Other File Systems
      11.18 Using Hadoop For MapReduce Computations
      11.19 Hadoop’s Support For Programming Languages
      11.20 Summary

      Microservices
      12.1 Introduction
      12.2 Traditional Monolithic Applications
      12.3 Monolithic Applications In A Data Center
      12.4 The Microservices Approach
      12.5 The Advantages Of Microservices
      12.6 The Potential Disadvantages of Microservices
      12.7 Microservices Granularity
      12.8 Communication Protocols Used For Microservices
      12.9 Communication Among Microservices
      12.10 Using A Service Mesh Proxy
      12.11 The Potential For Deadlock
      12.12 Microservices Technologies
      12.13 Summary

      Controller-Based Management Software
      13.1 Introduction
      13.2 Traditional Distributed Application Management
      13.3 Periodic Monitoring
      13.4 Managing Cloud-Native Applications
      13.5 Control Loop Concept
      13.6 Control Loop Delay, Hysteresis, And Instability
      13.7 The Kubernetes Controller Paradigm And Control Loop
      13.8 An Event-Driven Implementation Of A Control Loop
      13.9 Components Of A Kubernetes Controller
      13.10 Custom Resources And Custom Controllers
      13.11 Kubernetes Custom Resource Definition (CRD)
      13.12 Service Mesh Management Tools
      13.13 Reactive Or Dynamic Planning
      13.14 A Goal: The Operator Pattern
      13.15 Summary

      Serverless Computing And Event Processing
      14.1 Introduction
      14.2 Traditional Client-Server Architecture 1
      14.3 Scaling A Traditional Server To Handle Multiple Clients
      14.4 Scaling A Server In A Cloud Environment
      14.5 The Economics Of Servers In The Cloud
      14.6 The Serverless Computing Approach
      14.7 Stateless Servers And Containers
      14.8 The Architecture Of A Serverless Infrastructure
      14.9 An Example Of Serverless Processing
      14.10 Potential Disadvantages Of Serverless Computing
      14.11 Summary

      DevOps
      15.1 Introduction
      15.2 Software Creation And Deployment
      15.3 The Realistic Software Development Cycle
      15.4 Large Software Projects And Teams
      15.5 Disadvantages Of Using Multiple Teams
      15.6 The DevOps Approach
      15.7 Continuous Integration (CI): A Short Change Cycle
      15.8 Continuous Delivery (CD): Deploying Versions Rapidly
      15.9 Cautious Deployment: Sandbox, Canary, And Blue/Green
      15.10 Difficult Aspects Of The DevOps Approach
      15.11 Summary

      PART V Other Aspects Of Cloud

      Edge Computing And IIoT
      16.1 Introduction
      16.2 The Latency Disadvantage Of Cloud
      16.3 Situations Where Latency Matters
      16.4 Industries That Need Low Latency
      16.5 Moving Computing To The Edge
      16.6 Extending Edge Computing To A Fog Hierarchy
      16.7 Caching At Multiple Levels Of A Hierarchy
      16.8 An Automotive Example
      16.9 Edge Computing And IIoT
      16.10 Communication For IIoT
      16.11 Decentralization Once Again
      16.12 Summary

      Cloud Security And Privacy
      17.1 Introduction
      17.2 Cloud-Specific Security Problems
      17.3 Security In A Traditional Infrastructure
      17.4 Why Traditional Methods Do Not Suffice For The Cloud
      17.5 The Zero Trust Security Model
      17.6 Identity Management
      17.7 Privileged Access Management (PAM)
      17.8 AI Technologies And Their Effect On Security

      17.9 Protecting Remote Access
      17.10 Privacy In A Cloud Environment
      17.11 Back Doors, Side Channels, And Other Concerns
      17.12 Cloud Providers As Partners For Security And Privacy
      17.13 Summary

      Controlling The Complexity Of Cloud-Native Systems
      18.1 Introduction
      18.2 Sources Of Complexity In Cloud Systems
      18.3 Inherent Complexity In Large Distributed Systems
      18.4 Designing A Flawless Distributed System
      18.5 System Modeling
      18.6 Mathematical Models
      18.7 An Example Graph Model To Help Avoid Deadlock
      18.8 A Graph Model For A Startup Sequence
      18.9 Modeling Using Mathematics
      18.10 An Example TLA+ Specification
      18.11 System State And State Changes
      18.12 The Form Of A TLA+ Specification
      18.13 Symbols In A TLA+ Specification
      18.14 State Transitions For The Example
      18.15 Conclusions About Temporal Logic Models
      18.16 Summary

      Index

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