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From hyrex-neural-trader
Run a heavy neural-trader job (long walk-forward, big Monte-Carlo, parameter sweep, model training) on the Anthropic Managed Agent cloud runtime instead of locally
npx claudepluginhub akhilyad/deployy --plugin hyrex-neural-traderHow this skill is triggered — by the user, by Claude, or both
Slash command
/hyrex-neural-trader:trader-cloud-backtest <backtest|train|sweep> <strategy-or-model> --symbol <TICKER> [--period 2020-2024] [--mc-paths 1000]<backtest|train|sweep> <strategy-or-model> --symbol <TICKER> [--period 2020-2024] [--mc-paths 1000]This skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Dispatch a **heavy** `neural-trader` job to an Anthropic Claude Managed Agent (cloud container) instead of running it locally. See project ADR-117 (recipe + cost rules) and ADR-115 (the `managed_agent_*` runtime).
Guides technical evaluation of code review feedback: read fully, restate for understanding, verify against codebase, respond with reasoning or pushback before implementing.
Share bugs, ideas, or general feedback.
Dispatch a heavy neural-trader job to an Anthropic Claude Managed Agent (cloud container) instead of running it locally. See project ADR-117 (recipe + cost rules) and ADR-115 (the managed_agent_* runtime).
trader-backtest (local)| Job | Runtime |
|---|---|
| Quick sanity check; one short backtest (< ~1 min) | local — use the trader-backtest skill |
| Multi-year walk-forward, big Monte-Carlo count, parameter sweep over a grid, or model training (LSTM/Transformer/N-BEATS) | cloud — this skill |
Prereq: ANTHROPIC_API_KEY (or CLAUDE_API_KEY) + Managed Agents beta access. If managed_agent_* returns "needs ANTHROPIC_API_KEY", fall back to the local trader-backtest skill.
Estimate first. From the job size, print an estimated cost (≈ container-minutes × rate + tokens) — a long sweep is a deliberate choice, not a default.
Provision (or reuse) the container — install neural-trader at container start so the agent doesn't reinstall mid-run:
managed_agent_create({
name: "nt-cloud",
model: "claude-haiku-4-5-20251001", // orchestration only — the compute is the Rust engine, not the LM (ADR-026)
system: "You operate the `neural-trader` CLI in this container. Run exactly the commands asked, report the metrics, write requested artifacts, then stop.",
networking: "unrestricted", // or "restricted" pinned to your data host
packages: { npm: ["neural-trader"] }, // add apt:["build-essential"] ONLY if there's no prebuilt NAPI binary for the arch (neural-trader ships prebuilds → usually omit)
initScript: "npm install -g neural-trader >/dev/null 2>&1 || npx -y neural-trader --version >/dev/null 2>&1 || true"
})
→ { sessionId, agentId, environmentId }
For a sweep: create the environment once, run all configs in one managed_agent_prompt (one container), not N sessions.
Pre-flight cheap. Before a 1000-path / multi-year run, do a tiny smoke first (1 MC path, ~3 months) — catches a bad strategy name / symbol in seconds:
managed_agent_prompt({ sessionId, message: "Run `npx neural-trader --backtest --strategy <name> --symbol <TICKER> --period <last 3 months> --mc-paths 1`. Just confirm it ran and report the Sharpe. Then stop.", maxWaitMs: 60000 })
If that fails, fix the args before the real run (and managed_agent_terminate).
Run the real job:
managed_agent_prompt({
sessionId,
message: "Run `npx neural-trader --backtest --strategy <name> --symbol <TICKER> --period <range> --walk-forward --mc-paths <N>` (for training: `npx neural-trader --train --model <lstm|transformer|nbeats> --symbol <TICKER> --period <range>`; for a sweep: loop the configs and run each). Report: total return, annualized return, Sharpe, Sortino, max drawdown, win rate, profit factor, # trades, 95% CVaR. Write the equity curve to /tmp/equity.csv and the trade log to /tmp/trades.csv. Then stop.",
maxWaitMs: <generous — minutes>
})
→ { finished, status, stopReason, assistantText (the metrics), toolUses }
If finished:false, follow up with managed_agent_events({ sessionId }) until idle.
Pull artifacts (if needed): managed_agent_prompt({ sessionId, message: "cat /tmp/equity.csv" }) or managed_agent_events and read the tool_result.
Ingest locally:
memory_store({ key: "backtest-<strategy>-<ts>", value: <metrics+params JSON>, namespace: "trading-backtests" })agentdb_pattern-store({ pattern: "profitable-<strategy-type>", data: "<params + results>" })cost-tracking namespace (per ADR-117 — cloud sessions bill until terminated).Terminate immediately — results in hand:
managed_agent_terminate({ sessionId, environmentId }) → { sessionDeleted: true, environmentDeleted: true }
Never leave an idle billing container. (hyrex doctor / GC catches orphans — #1931.)
initScript), reuse the environment, batch sweeps into one prompt, pre-flight cheap, terminate eagerly, use Haiku/Sonnet for the agent loop, estimate before kicking off. (ADR-117 §"Cost optimization".)managed_agent_create { "name":"nt-cloud", "model":"claude-haiku-4-5-20251001", "packages":{"npm":["neural-trader"]}, "initScript":"npm install -g neural-trader >/dev/null 2>&1 || true" }
→ { sessionId:"sesn_…", environmentId:"env_…" }
managed_agent_prompt { "sessionId":"sesn_…", "message":"Run `npx neural-trader --backtest --strategy multi-indicator --symbol SPY --period 2020-2024 --walk-forward --mc-paths 1000`. Report Sharpe/Sortino/max-DD/win-rate/CVaR; write /tmp/equity.csv. Then stop.", "maxWaitMs":600000 }
→ { finished:true, status:"idle", assistantText:"<metrics>", toolUses:[{bash:"npx neural-trader --backtest …"}] }
# … memory_store the metrics, agentdb_pattern-store if Sharpe>1.5, record cost …
managed_agent_terminate { "sessionId":"sesn_…", "environmentId":"env_…" }