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Gs Quant Pricing

作者 Tang Weigang · GitHub ↗ · v0.3.3 · MIT-0
cross-platform ⚠ suspicious
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当前安装
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在 OpenClaw 中安装
/install gs-quant-pricing
功能描述
提供年化波动率、指数加权移动平均(EMA)和指数加权标准差等量化金融指标的专业计算能力,支持维度枚举到字符串的灵活覆盖,适用于金融时间序列分析与资产定价建模。
使用说明 (SKILL.md)

GS Quant 风险定价 (gs-quant-pricing)

提供年化波动率、指数加权移动平均(EMA)和指数加权标准差等量化金融指标的专业计算能力,支持维度枚举到字符串的灵活覆盖,适用于金融时间序列分析与资产定价建模。

Pipeline

data_collection -> data_storage -> factor_computation -> target_selection -> trading_execution -> visualization

Top Use Cases (0 total)

Execute trigger: When user intent matches intent_router.uc_entries[].positive_terms AND user uses action verb (run/execute/跑/执行/backtest/fetch/collect)

What I'll Ask You

  • Target market: A-share (default), HK, or crypto? (US stocks in ZVT are half-baked — stockus_nasdaq_AAPL exists but coverage is thin)
  • Data source / provider: eastmoney (free, no account), joinquant (account+paid), baostock (free, good history), akshare, or qmt (broker)?
  • Strategy type: MACD golden-cross, MA crossover, volume breakout, fundamental screen, or custom factor?
  • Time range: start_timestamp and end_timestamp for backtest period
  • Target entity IDs: specific stocks (stock_sh_600000) or index components (SZ1000)?

Semantic Locks (Fatal)

ID Rule On Violation
SL-01 Execute sell orders before buy orders in every trading cycle halt
SL-02 Trading signals MUST use next-bar execution (no look-ahead) halt
SL-03 Entity IDs MUST follow format entity_type_exchange_code halt
SL-04 DataFrame index MUST be MultiIndex (entity_id, timestamp) halt
SL-05 TradingSignal MUST have EXACTLY ONE of: position_pct, order_money, order_amount halt
SL-06 filter_result column semantics: True=BUY, False=SELL, None/NaN=NO ACTION halt
SL-07 Transformer MUST run BEFORE Accumulator in factor pipeline halt
SL-08 MACD parameters locked: fast=12, slow=26, signal=9 halt

Full lock definitions: references/LOCKS.md

Evidence Quality Notice

[QUALITY NOTICE] This crystal was compiled from blueprint finance-bp-020. Evidence verify ratio = 57.7% and audit fail total = 4. Generated results may have uncaptured requirement gaps. Verify critical decisions against source files (LATEST.yaml / LATEST.jsonl).

Reference Files

File Contents When to Load
references/seed.yaml V6+ 全量权威 (source-of-truth) 有行为/决策争议时必读
references/ANTI_PATTERNS.md 0 条跨项目反模式 开始实现前
references/WISDOM.md 跨项目精华借鉴 架构决策时
references/CONSTRAINTS.md domain + fatal 约束 规则冲突时
references/USE_CASES.md 全量 KUC-* 业务场景 需要完整示例时
references/LOCKS.md SL-* + preconditions + hints 生成回测/交易代码前
references/COMPONENTS.md AST 组件地图(按 module 拆分) 查 API 时

Compiled by Doramagic crystal-compilation-v6.1 from finance-bp-020 blueprint at 2026-04-22T13:00:16.803564+00:00. See human_summary.md for non-technical overview.

安全使用建议
This skill is a coherent quant/backtest blueprint but has important gaps and assumptions. Before installing or running it: 1) Confirm your environment: the skill expects Python 3.12+, an 'uv' package manager, and the zvt library (it may suggest 'pip install zvt'); be prepared to run package installs. 2) Prepare credentials only for the data providers you plan to use (joinquant, Marquee/GS, eastmoney, qmt, etc.) — the skill does not declare these env vars but its workflow requires them. 3) Be aware it expects writable local data directories (default ~/.zvt) and will read embedded reference files (seed.yaml, LOCKS.md) that influence behavior; consider running in an isolated container/VM. 4) Review the proprietary license and the included seed.yaml/LOCKS.md for constraints (semantic locks are 'fatal' for some rules). 5) If you need to allow package installs or network access, restrict them to a sandbox and only provide credentials you expect to expose. The inconsistencies between declared requirements and runtime instructions justify caution; ask the maintainer to (a) declare required binaries/env vars, (b) provide a reproducible install recipe, and (c) document which external credentials are needed and why.
功能分析
Type: OpenClaw Skill Name: gs-quant-pricing Version: 0.3.3 The skill bundle provides a specialized framework for quantitative financial analysis and backtesting using the zvt library and Goldman Sachs Marquee APIs. It contains extensive domain-specific logic, including 12 semantic locks (SL-01 to SL-12) and over 200 financial constraints (finance-C-*) designed to prevent common quantitative errors like look-ahead bias and incorrect annualization. The installation recipes in seed.yaml are limited to standard libraries (numpy, pandas, zvt), and the output validation logic (OV-01 to OV-06) acts as a safety mechanism to ensure generated results are physically plausible. No evidence of malicious intent, data exfiltration, or harmful prompt injection was found.
能力标签
crypto
能力评估
Purpose & Capability
The name/description match a quant analytics/backtesting skill (ZVT/ZVT-like pipeline). However SKILL.md explicitly states it requires Python 3.12+ and an 'uv' package manager and references zvt, Marquee/Goldman APIs and other data providers. The registry metadata declares no required binaries, no env vars, and no install steps — a mismatch. Asking for access to market-data providers and local ZVT home directories is coherent with the stated purpose, but the skill should have declared Python and provider credentials up-front.
Instruction Scope
Runtime instructions require reading several embedded reference files (seed.yaml, LOCKS.md, etc.), reloading seed.yaml on each decision, running precondition checks that invoke python3 commands, and may instruct the user/agent to run 'pip install zvt' or data recorders that contact external providers. Those actions stay within a quant-workflow scope but the instructions also assume filesystem write access (~/.zvt), network access to external data providers, and possible package installation — none of which are declared. The SKILL.md mandates semantic locks and strict preconditions (fatal halts) that the agent must enforce, which increases the operational surface.
Install Mechanism
This is instruction-only with no formal install spec (lowest installer risk). Nevertheless SKILL.md and seed.yaml reference installing Python packages (e.g., pip install zvt) and expect the host to have Python 3.12+ and 'uv' package manager. Because installs are left to runtime commands (not a curated install recipe), there is moderate operational risk from pulling third-party packages at run time, but no direct download URLs or archive extraction are present in the skill bundle.
Credentials
Registry lists no required environment variables or credentials, yet SKILL.md/preconditions reference ZVT_HOME, and data-provider choices (joinquant, Marquee/GS APIs, qmt, etc.) will typically require API keys/accounts. The skill also expects read/write access to a local data directory (~/.zvt) and may prompt users to run recorders that use network credentials. The absence of declared env vars/credentials is disproportionate to the functionality described.
Persistence & Privilege
The skill does not request always:true and does not attempt to modify other skills or system-wide configurations. Autonomous invocation is allowed (default) but not exceptional here. The skill's expectations of re-reading seed.yaml and running preconditions are internal to the skill bundle and do not imply elevated platform privileges beyond typical agent operation.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install gs-quant-pricing
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /gs-quant-pricing 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v0.3.3
v0.3.3: bilingual metadata injected. H1 shows GS Quant 风险定价; tagline replaced with skill-specific Chinese hook; tags upgraded to Level 1-4.
v0.3.1
Remove install.sh — knowledge-only bundle. Host AI consumes directly from URL; no user-side installation needed. Fixes ClawHub suspicious flag.
v0.3.0
Doramagic crystal portfolio v0.3.0. Full 5-layer bp-009 standard. github.com/tangweigang-jpg/doramagic-skills
元数据
Slug gs-quant-pricing
版本 0.3.3
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 3
常见问题

Gs Quant Pricing 是什么?

提供年化波动率、指数加权移动平均(EMA)和指数加权标准差等量化金融指标的专业计算能力,支持维度枚举到字符串的灵活覆盖,适用于金融时间序列分析与资产定价建模。 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 110 次。

如何安装 Gs Quant Pricing?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install gs-quant-pricing」即可一键安装,无需额外配置。

Gs Quant Pricing 是免费的吗?

是的,Gs Quant Pricing 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Gs Quant Pricing 支持哪些平台?

Gs Quant Pricing 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Gs Quant Pricing?

由 Tang Weigang(@tangweigang-jpg)开发并维护,当前版本 v0.3.3。

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