Analytic Skills Guide
by zhenxiay
Guide for AI agent to use the tools offered by this library to perform analytic tasks.
Skill Details
Repository Files
2 files in this skill directory
name: analytic-skills-guide description: Guide for AI agent to use the tools offered by this library to perform analytic tasks.
Stock Analysis Skills Guide
Overview
This file is a guide for AI agent to use the tools offered by this library to perform analytic tasks.
When to use this skill
This skill is to be loaded when an AI agent is requested to get certain information (Price, technical indicators etc.) of a selected stock.
Availiable tools
Following tools from this library can be used by an AI agent for its analytic task:
Read Daily Data
Use the script from ./skills/scripts/fetch_stock_data.py to get daily data.
How to run the tools
Please use uv runto execute the tool mentioned above.
Further Reference
Refer to this documentaion: https://github.com/zhenxiay/stockintelligence/blob/main/README.md for further instructions.
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