Labsco
github logo

cloud-design-patterns

✓ Official36,200

by github · part of github/awesome-copilot

Cloud design patterns for distributed systems architecture covering 42 industry-standard patterns across reliability, performance, messaging, security, and…

🔥🔥🔥🔥✓ VerifiedFreeQuick setup
🧩 One of 7 skills in the github/awesome-copilot package — works on its own, and pairs well with its siblings.

Cloud design patterns for distributed systems architecture covering 42 industry-standard patterns across reliability, performance, messaging, security, and…

Inspect the full instructions your agent will receiveExpand

This is the exact playbook injected into your agent when the skill activates — shown here so you can audit it before installing. You don't need to read it to use the skill.

by github

Cloud design patterns for distributed systems architecture covering 42 industry-standard patterns across reliability, performance, messaging, security, and… npx skills add https://github.com/github/awesome-copilot --skill cloud-design-patterns Download ZIPGitHub36.2k

Cloud Design Patterns

Architects design workloads by integrating platform services, functionality, and code to meet both functional and nonfunctional requirements. To design effective workloads, you must understand these requirements and select topologies and methodologies that address the challenges of your workload's constraints. Cloud design patterns provide solutions to many common challenges.

System design heavily relies on established design patterns. You can design infrastructure, code, and distributed systems by using a combination of these patterns. These patterns are crucial for building reliable, highly secure, cost-optimized, operationally efficient, and high-performing applications in the cloud.

The following cloud design patterns are technology-agnostic, which makes them suitable for any distributed system. You can apply these patterns across Azure, other cloud platforms, on-premises setups, and hybrid environments.

How Cloud Design Patterns Enhance the Design Process

Cloud workloads are vulnerable to the fallacies of distributed computing, which are common but incorrect assumptions about how distributed systems operate. Examples of these fallacies include:

  • The network is reliable.

  • Latency is zero.

  • Bandwidth is infinite.

  • The network is secure.

  • Topology doesn't change.

  • There's one administrator.

  • Component versioning is simple.

  • Observability implementation can be delayed.

These misconceptions can result in flawed workload designs. Design patterns don't eliminate these misconceptions but help raise awareness, provide compensation strategies, and provide mitigations. Each cloud design pattern has trade-offs. Focus on why you should choose a specific pattern instead of how to implement it.

References

Reference When to load Reliability & Resilience Patterns Ambassador, Bulkhead, Circuit Breaker, Compensating Transaction, Retry, Health Endpoint Monitoring, Leader Election, Saga, Sequential Convoy Performance Patterns Async Request-Reply, Cache-Aside, CQRS, Index Table, Materialized View, Priority Queue, Queue-Based Load Leveling, Rate Limiting, Sharding, Throttling Messaging & Integration Patterns Choreography, Claim Check, Competing Consumers, Messaging Bridge, Pipes and Filters, Publisher-Subscriber, Scheduler Agent Supervisor Architecture & Design Patterns Anti-Corruption Layer, Backends for Frontends, Gateway Aggregation/Offloading/Routing, Sidecar, Strangler Fig Deployment & Operational Patterns Compute Resource Consolidation, Deployment Stamps, External Configuration Store, Geode, Static Content Hosting Security Patterns Federated Identity, Quarantine, Valet Key Event-Driven Architecture Patterns Event Sourcing Best Practices & Pattern Selection Selecting appropriate patterns, Well-Architected Framework alignment, documentation, monitoring Azure Service Mappings Common Azure services for each pattern category

Pattern Categories at a Glance

Category Patterns Focus Reliability & Resilience 9 patterns Fault tolerance, self-healing, graceful degradation Performance 10 patterns Caching, scaling, load management, data optimization Messaging & Integration 7 patterns Decoupling, event-driven communication, workflow coordination Architecture & Design 7 patterns System boundaries, API gateways, migration strategies Deployment & Operational 5 patterns Infrastructure management, geo-distribution, configuration Security 3 patterns Identity, access control, content validation Event-Driven Architecture 1 pattern Event sourcing and audit trails

External Links