Tuesday, April 5, 2022

 

Service Fabric Summary continued Part 3. 

Part 1 of Service Fabric Summary focuses on the principle and the purpose behind the design decisions in Service Fabric. Part 2 focuses on usage.  Part 3 in this article focuses on efficiency.

Service Fabric provides an infrastructure to build, deploy, and upgrade microservices efficiently with options for auto scaling, managing state, monitoring health, and restarting services in case of failure. It helps developers and administrators to focus on the implementation of workloads that are scalable, reliable, and manageable by avoiding the issues that are regularly caused by complex infrastructures. The major benefits it provides include deploying and evolving services at very low cost and high velocity, lowering costs to changing business requirements, exploiting the widespread skills of developers, and decoupling packaged applications from workflows and user interactions.   

 

Service Fabric follows an application model where an application is a collection of microservices. The application is described in an application manifest file that defines the different types of service contained in that application, and pointers to the independent service packages. The application package also usually contains parameters that serve as overrides for certain settings used by the services. Each service package has a manifest file that describes the physical files and folders that are necessary to run that service, including binaries, configuration files, and read-only data for that service. Services and applications are independently versioned and upgradable. 

 

A package can deploy more than one application but if one service fails to upgrade, the entire application is rolled back. For this reason, the microservices architecture is best served by multiple packages. If a set of services share the same resources and configuration or have the same lifecycle, then those services can be placed in the same application type. 

Service Fabric programming models can be chosen whether the services are stateful or stateless. 

 

A stateless service is chosen when it must scale, and the data or state can be stored externally.  There is also an option to run an existing service as a guest executable and it can be packaged in a container will all its dependencies. Service Fabric models are both container and executable as stateless services.  

 

Service Fabric is also useful for scenarios that require low-latency reads and writes, such as in online gaming or instant messaging. Applications can be built to be interactive and stateful without having to create a separate store or cache. Gaming and instant messaging are some examples of this scenario. 

Applications that must reliably process events or streams of data run well on Service Fabric with its optimized reads and writes. Service Fabric supports application processing pipelines, where results must be reliable and passed on to the next processing stage without any loss. These pipelines include transactional and financial systems, where data consistency and computation guarantees are essential. 

Stateful applications that perform intensive data computation and require the colocation of processing (computation) and data in applications benefit from Service Fabric as well. Stateful Service Fabric services eliminate that latency, enabling more optimized reads and writes. As an example, real-time recommendation selections for customers that require a round trip-time latency of less than hundred milliseconds are handled with ease. 

Service Fabric also supports highly available services and provides fast failover by creating multiple secondary service replicas. If a node, process, or individual service goes down due to hardware or other failure, one of the secondary replicas is promoted to a primary replica with minimal loss of service. 

Individual services can also be partitioned where services are hosted by different hosts. Individual services can also be created and removed on the fly. Services can be scaled from a few instances on a few nodes to thousands of instances on several nodes and dialed down as well. Service Fabric helps with the complete life cycles. 

 

 

Capacity and Scaling are two different considerations for Service Fabric and must be reviewed individually. Cluster capacity considerations include Key considerations include initial number and properties of cluster node types, durability level of each node type, which determines Service Fabric VM privileges within Azure infrastructure, and reliability level of the cluster, which determines the stability of Service Fabric system services and overall cluster function 

A cluster requires a node type. A node type defines the size, number, and properties for a set of nodes (virtual machines) in the cluster. Every node type that is defined in a Service Fabric cluster maps to a virtual machine scale set aka VMSS. A primary node type is reserved to run critical system services. Non-primary node types are used for backend and frontend services. 

Node type planning considerations depend on whether the application has multiple services or if they have different infrastructure needs such as greater RAM or higher CPU cycles or if any of the application services need to scale out beyond hundred nodes or if the cluster spans availability zones. 

The durability characteristics of the cluster are offered as durability tiers. A durability level designates the privileges that Service Fabric VMs have with the underlying Azure architecture which can allow override of infrastructure requests such as reboot, reimage or migration that impacts the quorum requirements. 

Scalability considerations depend on whether scaling is required for the number of nodes of each node type or if it is required for services. 

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