--- name: trader-portfolio-cg description: Mean-variance portfolio optimization via Conjugate Gradient — 40-60× faster than the legacy Neumann path (ADR-126 Phase 3, ADR-123 Wedge 8) allowed-tools: Bash Read mcp__ruflo-sublinear__solve mcp__claude-flow__memory_store mcp__claude-flow__memory_retrieve mcp__claude-flow__memory_search mcp__claude-flow__agentdb_pattern-search argument-hint: "[--portfolio-id ID] [--tolerance 1e-6]" --- Solve the mean-variance optimization `Σ · x = μ` via Conjugate Gradient instead of the legacy Neumann series. **Why CG instead of Neumann (ADR-123 Wedge 8):** - Neumann series: ~50 µs at n=256 (legacy `npx neural-trader --portfolio optimize`) - Conjugate Gradient: ~816 ns at n=256 (this skill) - Measured speedup: 40-60×; parity within 1e-4 on a fixed seed. The covariance matrix Σ is symmetric positive-definite by construction (it's a Gram matrix on real returns), so CG is provably optimal — it converges in at most n iterations with no preconditioning, and typically far fewer when eigenvalues cluster. **Disable flag**: set `RUFLO_NEURAL_TRADER_DISABLE_CG=1` to skip the CG path entirely and fall through to step 4's legacy Neumann route. Useful for A/B validation or when an upstream covariance regression breaks SPD. **Native dispatch flag**: set `RUFLO_SUBLINEAR_NATIVE=1` to force the adapter to attempt the native `mcp__ruflo-sublinear__solve` path even when `globalThis` doesn't expose the tool (e.g. when the harness mounts it via a different transport). On any native-dispatch failure the adapter cleanly falls back to the local JS CG and records `method: 'cg-local'` in the artifact metadata — so the regression is auditable. Steps: 1. **Ensure neural-trader is available**: ```bash npm ls neural-trader 2>/dev/null || npm install --ignore-scripts neural-trader ``` 2. **Read the current covariance matrix Σ and expected-return vector μ** from neural-trader's portfolio API: ```bash # Primary path (preferred — clean JSON): npx neural-trader --portfolio current --json # Fallback paths if the --json flag is unavailable on the installed version: npx neural-trader --portfolio current # parse the text output # OR pull from AgentDB if a prior run stored the matrix there: ``` ```text mcp__claude-flow__memory_search({ query: "covariance matrix current", namespace: "trading-risk", limit: 1 }) ``` The skill expects the response to include `covariance: number[][]` (n × n) and `expectedReturns: number[]` (length n). 3. **Solve Σ · x = μ via the SublinearAdapter** (preferred path) when `RUFLO_NEURAL_TRADER_DISABLE_CG` is unset: ```js import { sublinearAdapter } from '../../src/sublinear-adapter.mjs'; const result = await sublinearAdapter.solveCG(COVARIANCE, EXPECTED_RETURNS, { tolerance: 1e-6, maxIterations: 200, }); // result.solution — optimal weights (number[]) // result.iterations — CG iterations executed // result.residual — final ||A·x − b||₂ // result.latencyMs — wall-clock latency // result.method — 'cg-sublinear-native' | 'cg-local' <-- READ THIS // result.solver — 'sublinear-time-solver@1.7.0' | 'local-js-cg' // result.degraded — true if input failed SPD checks (fall back to step 4) ``` The adapter does the dispatch itself: it probes for `mcp__ruflo-sublinear__solve` on `globalThis` (and honours `RUFLO_SUBLINEAR_NATIVE=1` as a manual override), routes through the native kernel when reachable, and falls back transparently to the embedded ~50-LOC JS CG when not. The math is identical either way — CG, dense form, n × n SPD covariance. The operator reads `result.method` to know which backend produced the artifact. The native MCP tool's wire shape (for direct callers who want to bypass the adapter): ```text mcp__ruflo-sublinear__solve({ matrix: COVARIANCE, rhs: EXPECTED_RETURNS, algorithm: "cg", tolerance: 1e-6, maxIterations: 200 }) ``` Output: ```ts { solution: number[], iterations: number, residual: number } ``` 4. **Fallback (legacy Neumann)** — if step 3 reports `degraded: true` (non-SPD input, non-square matrix, MCP error) OR if `RUFLO_NEURAL_TRADER_DISABLE_CG=1`: ```bash npx neural-trader --portfolio optimize ``` Capture the weights output and tag the artifact metadata with `method: 'neumann-fallback'` and a `reason` field. 5. **Store the optimal weights** to `trading-risk` namespace with full provenance metadata. **Take `method` and `solver` straight from the adapter's result so the operator can verify which backend ran**: ```text mcp__claude-flow__memory_store({ key: "portfolio-weights-PORTFOLIO_ID-TIMESTAMP", namespace: "trading-risk", value: JSON.stringify({ weights: result.solution, // number[] from step 3 (or weights from step 4 fallback) method: result.method, // 'cg-sublinear-native' | 'cg-local' | 'neumann-fallback' solver: result.solver, // 'sublinear-time-solver@1.7.0' | 'local-js-cg' | 'neural-trader-cli' iterations: result.iterations, residual: result.residual, latencyMs: result.latencyMs, capturedAt: NEW_DATE_ISO, reason: FALLBACK_REASON || null }) }) ``` The `trading-risk` namespace is canonical (ADR-126 Phase 1; the five-namespace alignment). Long-lived — no TTL — because portfolio weights are the audit trail Phase 4 will Ed25519-sign. 6. **Cross-check against historical patterns** (optional but recommended): ```text mcp__claude-flow__agentdb_pattern-search({ query: "portfolio weights Sharpe regime:CURRENT_REGIME", namespace: "trading-risk" }) ``` If the new weights differ by more than 30% in any single asset from the historical median, flag for human review before applying. This is a guard-rail, not a hard block. **Acceptance criteria (ADR-126 Phase 3):** - Latency < 1 ms on n = 256 covariance (local JS CG); native path target 40-60× faster (816 ns native vs 50 µs Neumann per sublinear-time-solver@1.7.0). - Parity with legacy Neumann within `||cg − neumann||_∞ < 1e-4` on a fixed seed. - Fallback path engages cleanly when native MCP unavailable / covariance non-SPD. - Artifact metadata distinguishes `cg-sublinear-native`, `cg-local`, and `neumann-fallback`. **Refs**: - ADR-126 Phase 3 (this skill's authoring ADR) - ADR-123 §162 Row 8 (Wedge 8 speedup claim) - ADR-123 §262-289 (the SublinearAdapter contract) - `plugins/ruflo-neural-trader/src/sublinear-adapter.ts` (the adapter) - `plugins/ruflo-neural-trader/benchmarks/portfolio-cg.bench.ts` (the measured numbers)