Deep research skill for systematic exploration. Auto-triggered for research, analysis, investigation tasks. Ensures data accuracy and research depth.
Every research task MUST follow:
MUST use this skill when user message involves:
Before any actual research, MUST complete these steps:
Ask yourself:
Think systematically about these aspects:
| Dimension Type | Example Questions |
|---|---|
| Core Direct | What data is needed to directly answer the user's question? |
| Background Context | What's the history? What's the development timeline? |
| Related Factors | What are the influencing factors? What are the relationships? |
| Different Perspectives | How do different viewpoints see this issue? |
| Risks & Limitations | What are the risks? What are the limitations? |
| Unique Angles | What unusual points are worth exploring deeply? |
Important: The 6th "Unique Angles" dimension is key to creating differentiated value - don't skip it.
Categorize:
Auto-generate review_criteria for subsequent review, including:
Prioritize reliable data sources
Cross-verify important data
MUST cite data sources and timestamps
| Domain | Recommended Sources | Verification Method |
|---|---|---|
| Finance/Stocks | akshare-stocks + akshare-a-shares + web-research | Dual-source comparison, note trading day |
| Tech/Products | Official docs + tech blogs + community discussions | Version number verification, release date |
| News/Events | Multiple media + official statements | Timeline comparison, source tracing |
| Academic/Professional | Papers + authoritative institution reports | Cite original sources |
| Companies/Organizations | Official site + financial reports + news | Multi-dimensional cross-reference |
For each research dimension, execute this flow:
┌─────────────────────────────────────┐
│ 1. Basic Information Collection │
│ - Gather fundamental data/facts │
└─────────────┬───────────────────────┘
▼
┌─────────────────────────────────────┐
│ 2. Anomaly Identification (KEY) │
│ - What data looks unusual? │
│ - What trends deserve attention?│
│ - What's commonly overlooked? │
└─────────────┬───────────────────────┘
▼
┌─────────────────────────────────────┐
│ 3. Deep Investigation (anomalies) │
│ - Why is this happening? │
│ - What's the underlying cause? │
│ - What impacts/chain effects? │
└─────────────┬───────────────────────┘
▼
┌─────────────────────────────────────┐
│ 4. Form Insights │
│ - What does this mean? │
│ - What value for the user? │
│ - What actionable suggestions? │
└─────────────────────────────────────┘
Executive Summary
Key Findings
Deep Analysis
Data Appendix
Risk Alerts/Limitations
Conclusions & Recommendations
When reviewing research results, check these dimensions:
If deciding to reject, must give:
Example rejection feedback:
REJECT
Issue: Analysis stays at surface level, only lists data without analyzing reasons.
Missing dimensions:
- No comparison with industry averages
- No analysis of historical trend changes
- No exploration of reasons for anomalous data points
Improvement directions:
1. Compare with data from other companies in the same industry
2. Analyze trends over the past 3 years
3. Deeply explore why XXX metric is abnormally high
Specific suggestion: XXX data is significantly higher than industry average,
this is worth exploring from market positioning, cost structure,
and competitive advantage perspectives.
When using delegate_and_review, reference this quality criteria template:
Research report must satisfy:
1. Structural Completeness
- Contains summary, findings, analysis, data appendix, conclusions
- Each section has substantial content, not empty
2. Data Quality
- All data has cited sources
- Key data verified from at least 2 sources
- Data timeliness is clear
3. Analysis Depth
- Not just listing data, must have analysis
- Anomalies are explored in depth
- Has unique insights, not generic statements
4. Practical Value
- Conclusions are clear and actionable
- Recommendations are specific and implementable
- Risk alerts are explicit