- Delete .mcp.json + .claude/rules/repo-mem.md; drop .repo-mem from .gitignore - Remove repo-mem / substrate_score / repo_search references from all .md - Move 15 EVOLV skills from .agents/skills/ to .claude/skills/ so they are auto-discovered by the Claude Code harness and invokable via the Skill tool - Retire .agents/skills/evolv-orchestrator (duplicate of the subagent at .claude/agents/evolv-orchestrator.md); orchestrator lives as a subagent only - Drop OpenAI-format agent yaml metadata from each skill (not needed for CC) - Update CLAUDE.md, CONTRACTS.md, AGENTS.md to point at the new locations and disambiguate skills (.claude/skills/) vs subagents (.claude/agents/) - Fix CLAUDE.md tick-loop wording (opt-in per-node, not a fixed 1000ms) - Widen .claude/rules/ paths frontmatter so node-architecture and telemetry rules trigger on more relevant files; add frontmatter to flow-layout rule - Bump CONTRACTS.md review date to 2026-05-19; add step 7 to the contract- change workflow (review example flows when topic usage changes) - Bump nodes/generalFunctions pin (Home.md substrate_score reference removed) Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
59 lines
2.2 KiB
Markdown
59 lines
2.2 KiB
Markdown
---
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name: evolv-database-influx-architecture
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description: Design and review EVOLV data modeling and storage architecture for telemetry and dashboard consumption. Use when deciding InfluxDB measurement/tag/field schemas, retention/downsampling strategy, write/read payload structures, and Grafana query compatibility for Node-RED outputs.
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---
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# EVOLV Database Influx Architecture
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## Mission
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Shape telemetry data so it is queryable, performant, and maintainable for operations dashboards and analytics.
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## Harness Execution Contract
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- Start from current measurement/tag/field usage and dashboard queries.
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- Define invariants before edits:
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- query compatibility for existing Grafana/consumer flows
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- bounded tag cardinality
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- explicit units and timestamp policy
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- Provide validation evidence using representative payloads and queries.
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## Scope
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- Output payload structure from EVOLV nodes
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- InfluxDB write model: measurement, tags, fields, timestamp policy
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- Retention/downsampling implications for Grafana visualization
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## Workflow
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1. Classify data by usage:
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- real-time control
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- operator dashboarding
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- long-term analytics
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2. Define stable schema conventions:
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- measurement naming
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- tag cardinality controls
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- numeric fields and units
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3. Validate that node outputs map cleanly to write model.
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4. Check query ergonomics for expected Grafana panels.
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5. Specify retention/downsampling and backfill behavior.
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## Design Rules
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- Avoid high-cardinality tags for volatile identifiers.
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- Keep units explicit and consistent over time.
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- Prefer additive schema evolution; document breaking changes.
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- Include timestamps that are consistent across nodes.
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## Test/Validation Expectations
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- Verify sample payloads produce intended point shape.
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- Check representative queries for latency and result correctness.
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- Include migration strategy when schema changes are unavoidable.
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## Deliverables
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Return:
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- proposed schema (measurement/tags/fields)
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- rationale tied to dashboard and analytics use
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- changed files/tests
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- migration and retention plan
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Decision interview triggers:
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- schema changes that break existing queries/panels
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- retention/downsampling policies with data-loss tradeoffs
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- backfill rules that alter historical comparability
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