stock-copilot-pro
تایید شدهHigh-performance global stock analysis copilot powered by QVeris. Fuses quote, fundamentals, technicals, news sentiment, and X sentiment with adaptive tool learning for higher success and better signal quality.
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نصب مهارت
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نصب سراسری (سطح کاربر):
npx skillhub install openclaw/skills/stock-copilot-proنصب در پروژه فعلی:
npx skillhub install openclaw/skills/stock-copilot-pro --projectمسیر پیشنهادی: ~/.claude/skills/stock-copilot-pro/
بررسی هوش مصنوعی
کیفیت دستورالعمل75
دقت توضیحات70
کاربردی بودن63
صحت فنی75
Scored 70 — most technically impressive skill in this session. 46 files with real test coverage, multi-market support, and modular architecture. Limited by QVeris API dependency and OpenClaw platform requirement.
محتوای SKILL.md
---
name: stock-copilot-pro
description: High-performance global stock analysis copilot powered by QVeris. Fuses quote, fundamentals, technicals, news sentiment, and X sentiment with adaptive tool learning for higher success and better signal quality.
env:
- QVERIS_API_KEY
credentials:
required:
- QVERIS_API_KEY
primary_env: QVERIS_API_KEY
scope: read-only
endpoint: https://qveris.ai/api/v1
network:
outbound_hosts:
- qveris.ai
auto_invoke: true
source: https://qveris.ai
examples:
- "Analyze AAPL with a comprehensive report"
- "Technical analysis for 0700.HK"
- "Compare AAPL, MSFT, NVDA"
- "Give me fundamentals and sentiment for 600519.SS"
---
# Stock Copilot Pro
Global Multi-Source Stock Analysis with QVeris.
## What This Skill Does
Stock Copilot Pro performs end-to-end stock analysis with five data domains:
1. Market quote / trading context
2. Fundamental metrics
3. Technical signals (RSI/MACD/MA)
4. News and sentiment
5. X sentiment
It then generates a data-rich analyst report with:
- value-investing scorecard
- event-timing anti-chasing classification
- safety-margin estimate
- scenario-based recommendations
- standard readable output (default) + optional full evidence trace (`--evidence`)
## Key Advantages
- Deterministic tool routing via `references/tool-chains.json`
- Evolution v2 parameter-template memory to reduce recurring parameter errors
- Strong fallback strategy across providers and markets
- US/HK/CN market-aware symbol handling
- Structured outputs for both analyst reading and machine ingestion
- Safety-first handling of secrets and runtime state
## Core Workflow
1. Resolve user input to symbol + market (supports company-name aliases, e.g. `特变电工` -> `600089.SH`).
2. Search tools by capability (quote, fundamentals, indicators, sentiment, X sentiment).
3. Route by hardcoded tool chains first (market-aware), then fallback generic capability search.
- For CN/HK sentiment, prioritize `caidazi` channels (report/news/wechat).
- For CN/HK fundamentals, prioritize THS financial statements (income/balance sheet/cash flow), then fallback to company basics.
4. Before execution, try evolution parameter templates; if unavailable, use default param builder.
5. Run quality checks:
- Missing key fields
- Data recency
- Cross-source inconsistency
6. Produce analyst report with:
- composite score
- safety margin
- event-driven vs pullback-risk timing classification
- market scenario suggestions
- optional parsed/raw evidence sections when `--evidence` is enabled
## Command Surface
Primary script: `scripts/stock_copilot_pro.mjs`
- Analyze one symbol:
- `node scripts/stock_copilot_pro.mjs analyze --symbol AAPL --market US --mode comprehensive`
- `node scripts/stock_copilot_pro.mjs analyze --symbol "特变电工" --mode comprehensive`
- Compare multiple symbols:
- `node scripts/stock_copilot_pro.mjs compare --symbols AAPL,MSFT --market US --mode comprehensive`
## CN/HK Coverage Details
- Company-name input is supported and auto-resolved to market + symbol for common names.
- Sentiment path prioritizes `caidazi` (research reports, news, wechat/public-account channels).
- Fundamentals path prioritizes THS financial statements endpoints, and always calls THS company basics for profile backfill:
- `revenue`
- `netProfit`
- `totalAssets`
- `totalLiabilities`
- `operatingCashflow`
- `industry`
- `mainBusiness`
- `tags`
## Output Modes
- `markdown` (default): human-readable report
- `json`: machine-readable merged payload
## Dynamic Evolution
- Runtime learning state is stored in `.evolution/tool-evolution.json`.
- One successful execution can update tool parameter templates.
- Evolution stores `param_templates` and `sample_successful_params` for reuse.
- Evolution does not decide tool priority; tool priority is controlled by `tool-chains.json`.
- Use `--no-evolution` to disable loading/saving runtime learning state.
## Safety and Disclosure
- Uses only `QVERIS_API_KEY`.
- Calls only QVeris APIs over HTTPS.
- Does not store API keys in logs, reports, or evolution state.
- Runtime persistence is limited to `.evolution/tool-evolution.json` (metadata + parameter templates only).
- No package installation or arbitrary command execution is performed by this skill script.
- Research-only output. Not investment advice.