财报分析代理
earnings-financials-agent
by assix
An autonomous agent for monitoring corporate earnings and analyzing financial statements using yfinance.
安装
claude skill add --url github.com/openclaw/skills/tree/main/skills/assix/earnings-financials-agent必需命令行工具
python3pip文档
EarningsFinancialsAgent
This agent provides deep-dive analysis into quarterly earnings and corporate financial health. It is designed to run locally and uses the yfinance library for reliable, real-time data retrieval.
Setup
Before using this skill, ensure the dependencies are installed in your environment:
pip install yfinance
User Instructions
The agent can handle a variety of financial inquiries. Use these as templates for your requests:
- Earnings Performance: "Summarize the latest earnings for NVDA and check if they beat revenue estimates."
- Direct Comparison: "Compare the net income of Google vs Meta for the last 4 quarters."
- Financial Ratios: "What is the debt-to-equity ratio and quick ratio for TSLA?"
- Cash Flow Analysis: "Give me a summary of Amazon's cash flow from the most recent report."
- Growth Trends: "Show me the revenue growth trend for Netflix over the last year."
- Calendar Checks: "Is Broadcom reporting earnings this week? If so, when?"
- Profitability: "Analyze the profit margins for AMD based on their latest financials."
- Dividend Health: "Check the dividend payout ratio for Coca-Cola to see if it's sustainable."
Tools
get_earnings
Fetches the most recent earnings results and compares them to analyst estimates.
- Inputs:
ticker(string) - Call:
python3 logic.py --tool get_earnings --ticker {{ticker}}
get_financials
Retrieves key balance sheet, income statement, and cash flow metrics.
- Inputs:
ticker(string) - Call:
python3 logic.py --tool get_financials --ticker {{ticker}}
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