architecture-paradigm-pipeline
Design pipes-and-filters for sequential data transformations
Install via CLI (Recommended)
clawhub install openclaw/skills/skills/athola/nm-archetypes-architecture-paradigm-pipelineNight Market Skill — ported from claude-night-market/archetypes. For the full experience with agents, hooks, and commands, install the Claude Code plugin.
The Pipeline (Pipes and Filters) Paradigm
When to Employ This Paradigm
- When data must flow through a fixed sequence of discrete transformations, such as in ETL jobs, streaming analytics, or CI/CD pipelines.
- When reusing individual processing stages is needed, either independently or to scale bottleneck stages separately from others.
- When failure isolation between stages is a critical requirement.
Adoption Steps
- Define Filters: Design each stage (filter) to perform a single, well-defined transformation. Each filter must have a clear input and output data schema.
- Connect via Pipes: Connect the filters using "pipes," which can be implemented as streams, message queues, or in-memory channels. validate these pipes support back-pressure and buffering.
- Maintain Stateless Filters: Where possible, design filters to be stateless. Any required state should be persisted externally or managed at the boundaries of the pipeline.
- Instrument Each Stage: Implement monitoring for each filter to track key metrics such as latency, throughput, and error rates.
- Orchestrate Deployments: Design the deployment strategy to allow each stage to be scaled horizontally and upgraded independently.
Key Deliverables
- An Architecture Decision Record (ADR) documenting the filters, the chosen pipe technology, the error-handling strategy, and the tools for replaying data.
- A suite of contract tests for each filter, plus integration tests that cover representative end-to-end pipeline executions.
- Observability dashboards that visualize stage-level Key Performance Indicators (KPIs).
Risks & Mitigations
- Single-Stage Bottlenecks:
- Mitigation: Implement auto-scaling for individual filters. If a single filter remains a bottleneck, consider refactoring it into a more granular sub-pipeline.
- Schema Drift Between Stages:
- Mitigation: Centralize schema definitions in a shared repository and enforce compatibility tests as part of the CI/CD process to prevent breaking changes.
- Back-Pressure Failures:
- Mitigation: Conduct rigorous load testing to simulate high-volume scenarios. Validate that buffering, retry logic, and back-pressure mechanisms behave as expected under stress.
Troubleshooting
Common Issues
Command not found Ensure all dependencies are installed and in PATH
Permission errors Check file permissions and run with appropriate privileges
Unexpected behavior
Enable verbose logging with --verbose flag
Metadata
Not sure this is the right skill?
Describe what you want to build — we'll match you to the best skill from 16,000+ options.
Find the right skillPaste this into your clawhub.json to enable this plugin.
{
"plugins": {
"official-athola-nm-archetypes-architecture-paradigm-pipeline": {
"enabled": true,
"auto_update": true
}
}
}Related Skills
extract
Analyze a codebase and build a knowledge base of business logic, architecture, data flow, and engineering patterns. The foundation for gauntlet challenges and agent integration
discourse
>- Scan community discussion channels (HN, Lobsters, Reddit, tech blogs) for experience reports and opinions on a topic
synthesize
>- Merge, deduplicate, rank, and format research findings from multiple channels into a coherent report. Use after research agents return their results
workflow-monitor
Detect workflow failures and inefficient patterns, then create GitHub issues for improvement via /fix-workflow
architecture-paradigm-hexagonal
Hexagonal (Ports and Adapters) architecture isolating domain logic from infrastructure