Screen
技能 已验证 活跃Run quantitative or thematic stock screens to surface investment ideas. Supports AR (BYMA, CEDEARs) and US markets. Triggers on "screen", "stock screen", "find stocks", "investment ideas", "what looks interesting".
To help users discover potential investment opportunities by running quantitative stock screens tailored to specific markets and investment styles.
功能
- Perform quantitative stock screens
- Support AR (BYMA, CEDEARs) and US markets
- Categorize stocks by investment style (Value, Growth, Momentum, Income, Quality)
- Generate a structured results table
- Provide a quick thesis for top investment ideas
使用场景
- Use when looking for new stock investment ideas based on defined criteria.
- Use when wanting to explore specific market segments (AR or US) for potential investments.
- Use to quickly filter a large number of stocks based on quantitative metrics.
非目标
- Providing direct buy or sell recommendations.
- Performing in-depth fundamental analysis beyond the defined screening criteria.
- Tracking real-time market data without explicit instruction to use current data.
Documentation
- info:Configuration & parameter referenceThe SKILL.md outlines parameters for defining a screen, but does not explicitly list defaults or precedence order for any configurations.
Execution
- info:ValidationThe skill outlines desired input parameters for screening, but there is no explicit mention or evidence of a schema library for validation or sanitization.
Code Execution
- info:Error HandlingThe skill describes handling of various market conditions and data, but explicit error handling mechanisms with structured reporting for failure modes are not detailed.
Errors
- info:Actionable error messagesWhile the skill outlines failure modes and recovery steps in the SKILL.md, the exact structure and clarity of emitted error messages are not detailed.
Practical Utility
- info:Usage examplesWhile the SKILL.md details the process and output format, explicit end-to-end, ready-to-use examples showing input, invocation, and outcome are not provided.
- info:Edge casesThe SKILL.md mentions handling of different market conditions and AR-specific filters, but detailed documentation of failure modes, their symptoms, and recovery steps is not present.
安装
/plugin install trading@luiseiman-claude-kit质量评分
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