BERORINPO db7f2a6fd5 fix(skills): move top-level origin frontmatter key under metadata
The official Agent Skills spec (agentskills.io/specification) whitelists exactly
6 top-level frontmatter keys (name/description/license/compatibility/metadata/
allowed-tools). A top-level `origin` key fails the official validator
(anthropics/skills quick_validate.py ALLOWED_PROPERTIES; skills-ref validate).

This moves `origin: X` -> `metadata.origin: X` across the canonical skills/
tree, preserving each value verbatim. Frontmatter-only, minimal diff.

- 251 SKILL.md updated (242 new metadata block, 9 appended to existing metadata)
- origin values preserved verbatim (verified 251/251)
- YAML validated on all changed files
- scoped to canonical skills/ only (docs/<lang> translations + tool mirrors
  .cursor/.kiro/.agents left untouched; presumably regenerated from canonical)

Addresses #2233
2026-06-11 21:12:21 +09:00

2.3 KiB

name, description, metadata, tools
name description metadata tools
latency-critical-systems Use for latency-sensitive systems such as realtime dashboards, market data, streaming agents, execution gateways, queues, caches, or HFT-like infrastructure where freshness and p95 latency matter.
origin
ECC
Read, Write, Edit, Bash, Grep, Glob

Latency Critical Systems

Use this skill when the user cares about realtime behavior, hot paths, streaming freshness, or execution speed. This includes HFT-like infrastructure, but the skill is engineering-focused. It does not authorize live trading or financial advice.

Split The Metrics

Do not collapse everything into "fast." Track:

  • p50, p95, and p99 latency;
  • throughput;
  • freshness age;
  • queue depth;
  • cache hit rate;
  • provider/API response time;
  • browser render time;
  • correctness under load;
  • failure and retry behavior.

Map The Hot Path

Write the path from user/event to final visible state:

source event -> provider API -> ingest worker -> queue -> cache -> edge route
-> client stream -> browser render -> user-visible state

Then measure each segment separately.

Optimization Order

  1. Remove unnecessary round trips.
  2. Cache stable reads with freshness metadata.
  3. Batch small calls and writes.
  4. Move compute closer to the data or the user.
  5. Split hot and cold paths.
  6. Apply backpressure before queues grow unbounded.
  7. Use streaming only when it improves freshness or user experience.
  8. Add canaries for stale data, degraded providers, and bad cache state.

Verification

Use live readbacks when a deployed surface exists:

  • HTTP timing and response headers;
  • provider freshness timestamp;
  • queue or job state;
  • edge/cache state;
  • browser verification for actual UI freshness;
  • logs around retries and degraded mode.

For market-data or execution-adjacent paths, also verify orderbook age, VWAP assumptions, provider status, and kill-switch behavior before calling the path ready.

Guardrails

  • Do not optimize latency by dropping required validation.
  • Do not hide stale data behind fast cache hits.
  • Do not claim millisecond behavior from client labels without measurement.
  • Do not run live orders, destructive migrations, or customer-impacting deploys without an explicit approval gate.
  • Keep secrets and private payloads out of logs and benchmark artifacts.