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athola

architecture-paradigm-event-driven

@athola/architecture-paradigm-event-driven
athola
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Updated 4/28/2026
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Apply event-driven async messaging to decouple producers and consumers. Use for real-time processing.

Installation

$npx agent-skills-cli install @athola/architecture-paradigm-event-driven
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Details

Pathplugins/archetypes/skills/architecture-paradigm-event-driven/SKILL.md
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Scoped Name@athola/architecture-paradigm-event-driven

Usage

After installing, this skill will be available to your AI coding assistant.

Verify installation:

npx agent-skills-cli list

Skill Instructions


name: architecture-paradigm-event-driven description: 'Apply event-driven async messaging to decouple producers and consumers. Use for real-time processing.' version: 1.9.0 alwaysApply: false category: architectural-pattern tags:

  • architecture
  • event-driven
  • asynchronous
  • decoupling
  • scalability
  • resilience dependencies: [] tools:
  • message-broker
  • event-stream-processor
  • distributed-tracing usage_patterns:
  • paradigm-implementation
  • real-time-processing
  • system-extensibility complexity: high model_hint: deep estimated_tokens: 800

The Event-Driven Architecture Paradigm

When To Use

  • Building async, loosely-coupled systems
  • Systems with complex event processing pipelines

When NOT To Use

  • Simple request-response applications without async needs
  • Systems requiring strong transactional consistency

When to Employ This Paradigm

  • For real-time or bursty workloads (e.g., IoT, financial trading, logistics) where loose coupling and asynchronous processing are beneficial.
  • When multiple, distinct subsystems must react to the same business or domain events.
  • When system extensibility is a high priority, allowing new components to be added without modifying existing services.

Adoption Steps

  1. Model the Events: Define canonical event schemas, establish a clear versioning strategy, and assign ownership for each event type.
  2. Select the Right Topology: For each data flow, make a deliberate choice between choreography (e.g., a simple pub/sub model) and orchestration (e.g., a central controller or saga orchestrator).
  3. Engineer the Event Platform: Choose the appropriate event brokers or message meshes. Configure critical parameters such as message ordering, topic partitions, and data retention policies.
  4. Plan for Failure Handling: Implement production-grade mechanisms for handling message failures, including Dead-Letter Queues (DLQs), automated retry logic, idempotent consumers, and tools for replaying events.
  5. Instrument for Observability: Implement detailed monitoring to track key metrics such as consumer lag, message throughput, schema validation failures, and the health of individual consumer applications.

Key Deliverables

  • An Architecture Decision Record (ADR) that documents the event taxonomy, the chosen broker technology, and the governance policies (e.g., for naming, versioning, and retention).
  • A centralized schema repository with automated CI validation and consumer-driven contract tests.
  • Operational dashboards for monitoring system-wide throughput, consumer lag, and DLQ depth.

Risks & Mitigations

  • Hidden Coupling through Events:
    • Mitigation: Consumers may implicitly depend on undocumented event semantics or data fields. Publish a formal event catalog or schema registry and use linting tools to enforce event structure.
  • Operational Complexity and "Noise":
    • Mitigation: Without strong observability, diagnosing failed or "stuck" consumers is extremely difficult. Enforce the use of distributed tracing and standardized alerting across all event-driven components.
  • "Event Storming" Analysis Paralysis:
    • Mitigation: While event storming workshops are valuable, they can become unproductive if not properly managed. Keep modeling sessions time-boxed and focused on high-value business contexts first.