Install
openclaw skills install canslim-analysisExecutes a hybrid quantitative and qualitative CANSLIM analysis on US stocks using a fixed schema and a modular Python pipeline, returning a ranked shortlist.
openclaw skills install canslim-analysisAnalyze US stocks using a three-stage modular pipeline:
Use this skill when the user asks to:
Expected local files (located in Scripts/ directory):
Scripts/quantitative_analyzer.pyScripts/final_process.pyScripts/pdf_report_generator.pyScripts/requirements.txtExpected generated files (in Scripts/ directory):
Scripts/intermediate_canslim.jsonScripts/enriched_canslim.jsonScripts/final_canslim_report.jsonScripts/canslim_analysis.logScripts/out/canslim_report_{date}.pdf (PDF report with formatted analysis)The quantitative phase owns Quantitative_Metrics.
The AI phase must preserve every field already present in Quantitative_Metrics and must only fill AI_Qualitative_Checks.
{
"Metadata": {
"Schema_Version": "2.1",
"Date_Run": "2026-03-15",
"Market_Direction_M": "Confirmed Uptrend",
"Total_Universe_Scanned": 503,
"Successfully_Evaluated": 487,
"Failed_Fetches": 16,
"Skipped_For_Missing_Fundamentals": 39,
"Stocks_Passed_To_AI": 27
},
"Stocks": [
{
"Ticker": "XYZ",
"Company_Name": "XYZ Corp",
"Quantitative_Metrics": {
"C_Met": true,
"C_Details": "Q EPS Growth: 38.0%",
"Quarterly_EPS_Growth": 0.38,
"EPS_Accelerating": false,
"A_Met": true,
"A_Details": "Annual EPS CAGR: 31.0%",
"Annual_EPS_Growth": 0.31,
"L_Met": true,
"RS_Rating": 92.4,
"S_Quant_Met": true,
"S_Quant_Details": "Today volume >= 1.5x 50-day average, Up-day volume skew positive",
"S_Score": 2,
"Today_Volume_Strong": true,
"Volume_Skew_Positive": true,
"I_Quant_Flag": true,
"I_Quant_Details": "78.0% institutional ownership",
"N_Technical_Met": true,
"N_Technical_Details": "Within 4.0% of 52-week high",
"Near_52_Week_High": true,
"Recent_Breakout": false,
"Pct_From_High": 0.04,
"Current_Price": 145.2,
"Float_Shares": 42000000,
"Institutional_Ownership": 0.78
},
"AI_Qualitative_Checks_Pending": {
"N_New_Catalyst": null,
"N_Catalyst_Details": "",
"S_Float_Tightness": null,
"S_Float_Details": "",
"I_Institutional_Quality": null,
"I_Institutional_Details": ""
}
}
]
}
The enriched schema must be the same as the intermediate schema, plus AI_Qualitative_Checks.
{
"Stocks": [
{
"Ticker": "XYZ",
"Company_Name": "XYZ Corp",
"Quantitative_Metrics": { "...": "unchanged and preserved" },
"AI_Qualitative_Checks_Pending": {
"N_New_Catalyst": null,
"N_Catalyst_Details": "",
"S_Float_Tightness": null,
"S_Float_Details": "",
"I_Institutional_Quality": null,
"I_Institutional_Details": ""
},
"AI_Qualitative_Checks": {
"N_New_Catalyst": true,
"N_Catalyst_Details": "New product launch and raised guidance",
"S_Float_Tightness": true,
"S_Float_Details": "Tight float supported by low float and buyback activity",
"I_Institutional_Quality": true,
"I_Institutional_Details": "High-quality institutional sponsorship improving"
}
}
]
}
Follow this checklist exactly:
Verify files: Confirm Scripts/quantitative_analyzer.py, Scripts/final_process.py, Scripts/pdf_report_generator.py, and Scripts/requirements.txt exist.
Create environment:
python3 -m venv canslim_analysis
source canslim_analysis/bin/activate # Linux/Mac
canslim_analysis\Scripts\activate # Windows
pip install --no-cache-dir -r Scripts/requirements.txt
python Scripts/quantitative_analyzer.py
Verify intermediate output: Confirm Scripts/intermediate_canslim.json exists and contains Metadata, Stocks, Quantitative_Metrics, and AI_Qualitative_Checks_Pending.
Run OpenClaw AI enrichment:
Read Scripts/intermediate_canslim.json.
For each stock, preserve Ticker, Company_Name, and the entire Quantitative_Metrics object unchanged.
Add AI_Qualitative_Checks with values for:
Write enriched output: Scripts/enriched_canslim.json
Run final processing:
python Scripts/final_process.py
This will automatically generate both the JSON report and the PDF report.
Display results: Read Scripts/final_canslim_report.json and present the ranked list of stocks, CANSLIM scores, met criteria, missed criteria, price, RS rating, and catalyst note.
PDF Report: The PDF report is generated in Scripts/out/canslim_report_{date}.pdf with professional formatting including:
Delivery: Always attach the CANSLIM report PDF to the user-facing response when the analysis completes successfully.
Cleanup:
deactivate
Use this exact final scoring model:
C: Quantitative_Metrics.C_Met
A: Quantitative_Metrics.A_Met
L: Quantitative_Metrics.L_Met
M: Metadata.Market_Direction_M == "Confirmed Uptrend"
N: AI_Qualitative_Checks.N_New_Catalyst == true
S: Quantitative_Metrics.S_Quant_Met == true and AI_Qualitative_Checks.S_Float_Tightness == true
I: AI_Qualitative_Checks.I_Institutional_Quality == true
N_Technical_Met is supporting technical context, not the scored N letter by itself.
I_Quant_Flag is reference context, not the scored I letter by itself.
A stock can have strong technical N support and still miss final N if OpenClaw cannot verify a fresh catalyst.
A stock can have strong volume accumulation and still miss final S if OpenClaw cannot verify tight float or buyback support.
Return the final user-facing answer in this structure:
Market Environment: <1-2 sentence assessment of the M criterion>
Top CANSLIM Candidates:
| Rank | Ticker | Company | CANSLIM Score | Met Criteria | Missed Criteria | Price | RS Rating | AI Catalyst Note |
|---|---|---|---|---|---|---|---|---|
| 1 | XYZ | XYZ Corp | 6/7 | C, A, N, S, L, I | M | $145.20 | 92.4 | New product launch and raised guidance |
AI Catalyst Insights:
XYZ: Fresh catalyst confirmed; float tightness and institutional sponsorship also verified.
Notes & Caveats: Mention missing data, lack of catalyst confirmation, or market-trend caution when relevant.
Never install dependencies globally.
Always use the canslim_analysis virtual environment.
Use only files generated by the current skill run.
Do not fabricate catalysts, float conclusions, or institutional-quality claims.
If no catalyst is found, set N_New_Catalyst to false and explain briefly.
If the AI phase cannot verify S or I, set the corresponding value to false instead of leaving it ambiguous.
Do not claim results are guaranteed investment advice. Always include disclaimers about risks and the need for further research.
If execution fails:
State exactly which phase failed: Quantitative, AI Enrichment, or Final Processing.
Include the error message when available.
Recommend the smallest next step.
If the failure is a schema mismatch, state which required field is missing or was overwritten.