Explores the diff-based approach (TypeBox Value.Diff → graphology mutation mapping) as an alternative to rebuild-on-change. Key findings: - The diff must happen at the graph level, not the source level, because TaskInput.dependsOn doesn't directly map to edge mutations - graphology's import(merge=true) handles merges but not deletions - The real win is reactivity (fine-grained event notifications), not performance - For <200 node graphs, rebuild is always sub-millisecond - A hybrid approach (diff for attribute-only changes, rebuild for structural changes) is possible but adds significant complexity Decision: defer to v2. ADR-002 (rebuild) stands. The exploration is preserved for future reference.
28 lines
1.7 KiB
Markdown
28 lines
1.7 KiB
Markdown
# ADR-002: Rebuild graph on change, not incremental updates
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**Status**: Accepted
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## Context
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When task data changes (file edits, DB updates), the in-memory graph needs to reflect the new state. Two approaches: incremental updates (add/remove individual nodes/edges) or full rebuild from source data.
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## Decision
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**Rebuild.** For our graph sizes (10–200 nodes), `graph.import()` from a serialized blob is sub-millisecond. Both consumers (alkhub builds from DB query results; OpenCode plugin rebuilds from directory on file change) are well-served by rebuild.
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## Consequences
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### Positive
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- No change-detection layer needed — no tracking ID renames, dependency removals, edge reconciliation
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- Simpler codebase — no diff algorithm, no incremental update logic
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- Always consistent — rebuild guarantees the graph matches the source data exactly
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### Negative
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- Technically wasteful for small changes (rebuilding entire graph when one task changed)
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- Not suitable for very large graphs or extremely frequent updates
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### Mitigation
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If a future use case requires incremental updates, add it as an optimization then. The API surface (construction methods) supports both patterns — incremental construction exists via `addTask`/`addDependency`.
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An incremental update architecture has been explored in [incremental-update-exploration.md](../incremental-update-exploration.md). The key finding is that **the win is reactivity (fine-grained event notifications), not performance**. For <200 node graphs, rebuild is always sub-millisecond. If a consumer needs reactive updates, they can use graphology's event system directly via `graph.raw` and implement change detection at the consumer layer, without the library taking on the complexity of diff-based updates. |