research-lookup by K-Dense-AI
Look up current research information using the Parallel Chat API (primary) or Perplexity sonar-pro-search (academic paper searches). Automatically routes queries to the best backend. Use for finding papers, gathering research data, and verifying scientific information.
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3 Scripts
Updated Feb 20, 2026, 09:17 PM
Why Use This
This skill provides specialized capabilities for K-Dense-AI's codebase.
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- Developing new features in the K-Dense-AI repository
- Refactoring existing code to follow K-Dense-AI standards
- Understanding and working with K-Dense-AI's codebase structure
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Repository claude-scientific-writer
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Updated At Feb 20, 2026, 09:17 PM
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License MIT
---
name: research-lookup
description: "Look up current research information using the Parallel Chat API (primary) or Perplexity sonar-pro-search (academic paper searches). Automatically routes queries to the best backend. Use for finding papers, gathering research data, and verifying scientific information."
allowed-tools: [Read, Write, Edit, Bash]
---
# Research Information Lookup
## Overview
This skill provides real-time research information lookup with **intelligent backend routing**:
- **Parallel Chat API** (`core` model): Default backend for all general research queries. Provides comprehensive, multi-source research reports with inline citations via the OpenAI-compatible Chat API at `https://api.parallel.ai`.
- **Perplexity sonar-pro-search** (via OpenRouter): Used only for academic-specific paper searches where scholarly database access is critical.
The skill automatically detects query type and routes to the optimal backend.
## When to Use This Skill
Use this skill when you need:
- **Current Research Information**: Latest studies, papers, and findings
- **Literature Verification**: Check facts, statistics, or claims against current research
- **Background Research**: Gather context and supporting evidence for scientific writing
- **Citation Sources**: Find relevant papers and studies to cite
- **Technical Documentation**: Look up specifications, protocols, or methodologies
- **Market/Industry Data**: Current statistics, trends, competitive intelligence
- **Recent Developments**: Emerging trends, breakthroughs, announcements
## Visual Enhancement with Scientific Schematics
**When creating documents with this skill, always consider adding scientific diagrams and schematics to enhance visual communication.**
If your document does not already contain schematics or diagrams:
- Use the **scientific-schematics** skill to generate AI-powered publication-quality diagrams
- Simply describe your desired diagram in natural language
```bash
python scripts/generate_schematic.py "your diagram description" -o figures/output.png
```
---
## Automatic Backend Selection
The skill automatically routes queries to the best backend based on content:
### Routing Logic
```
Query arrives
|
+-- Contains academic keywords? (papers, DOI, journal, peer-reviewed, etc.)
| YES --> Perplexity sonar-pro-search (academic search mode)
|
+-- Everything else (general research, market data, technical info, analysis)
--> Parallel Chat API (core model)
```
### Academic Keywords (Routes to Perplexity)
Queries containing these terms are routed to Perplexity for academic-focused search:
- Paper finding: `find papers`, `find articles`, `research papers on`, `published studies`
- Citations: `cite`, `citation`, `doi`, `pubmed`, `pmid`
- Academic sources: `peer-reviewed`, `journal article`, `scholarly`, `arxiv`, `preprint`
- Review types: `systematic review`, `meta-analysis`, `literature search`
- Paper quality: `foundational papers`, `seminal papers`, `landmark papers`, `highly cited`
### Everything Else (Routes to Parallel)
All other queries go to the Parallel Chat API (core model), including:
- General research questions
- Market and industry analysis
- Technical information and documentation
- Current events and recent developments
- Comparative analysis
- Statistical data retrieval
- Complex analytical queries
### Manual Override
You can force a specific backend:
```bash
# Force Parallel Deep Research
python research_lookup.py "your query" --force-backend parallel
# Force Perplexity academic search
python research_lookup.py "your query" --force-backend perplexity
```
---
## Core Capabilities
### 1. General Research Queries (Parallel Chat API)
**Default backend.** Provides comprehensive, multi-source research with citations via the Chat API (`core` model).
```
Query Examples:
- "Recent advances in CRISPR gene editing 2025"
- "Compare mRNA vaccines vs traditional vaccines for cancer treatment"
- "AI adoption in healthcare industry statistics"
- "Global renewable energy market trends and projections"
- "Explain the mechanism underlying gut microbiome and depression"
```
**Response includes:**
- Comprehensive research report in markdown
- Inline citations from authoritative web sources
- Structured sections with key findings
- Multiple perspectives and data points
- Source URLs for verification
### 2. Academic Paper Search (Perplexity sonar-pro-search)
**Used for academic-specific queries.** Prioritizes scholarly databases and peer-reviewed sources.
```
Query Examples:
- "Find papers on transformer attention mechanisms in NeurIPS 2024"
- "Foundational papers on quantum error correction"
- "Systematic review of immunotherapy in non-small cell lung cancer"
- "Cite the original BERT paper and its most influential follow-ups"
- "Published studies on CRISPR off-target effects in clinical trials"
```
**Response includes:**
- Summary of key findings from academic literature
- 5-8 high-quality citations with authors, titles, journals, years, DOIs
- Citation counts and venue tier indicators
- Key statistics and methodology highlights
- Research gaps and future directions
### 3. Technical and Methodological Information
```
Query Examples:
- "Western blot protocol for protein detection"
- "Statistical power analysis for clinical trials"
- "Machine learning model evaluation metrics comparison"
```
### 4. Statistical and Market Data
```
Query Examples:
- "Prevalence of diabetes in US population 2025"
- "Global AI market size and growth projections"
- "COVID-19 vaccination rates by country"
```
---
## Paper Quality and Popularity Prioritization
**CRITICAL**: When searching for papers, ALWAYS prioritize high-quality, influential papers.
### Citation-Based Ranking
| Paper Age | Citation Threshold | Classification |
|-----------|-------------------|----------------|
| 0-3 years | 20+ citations | Noteworthy |
| 0-3 years | 100+ citations | Highly Influential |
| 3-7 years | 100+ citations | Significant |
| 3-7 years | 500+ citations | Landmark Paper |
| 7+ years | 500+ citations | Seminal Work |
| 7+ years | 1000+ citations | Foundational |
### Venue Quality Tiers
**Tier 1 - Premier Venues** (Always prefer):
- **General Science**: Nature, Science, Cell, PNAS
- **Medicine**: NEJM, Lancet, JAMA, BMJ
- **Field-Specific**: Nature Medicine, Nature Biotechnology, Nature Methods
- **Top CS/AI**: NeurIPS, ICML, ICLR, ACL, CVPR
**Tier 2 - High-Impact Specialized** (Strong preference):
- Journals with Impact Factor > 10
- Top conferences in subfields (EMNLP, NAACL, ECCV, MICCAI)
**Tier 3 - Respected Specialized** (Include when relevant):
- Journals with Impact Factor 5-10
---
## Technical Integration
### Environment Variables
```bash
# Primary backend (Parallel Chat API) - REQUIRED
export PARALLEL_API_KEY="your_parallel_api_key"
# Academic search backend (Perplexity) - REQUIRED for academic queries
export OPENROUTER_API_KEY="your_openrouter_api_key"
```
### API Specifications
**Parallel Chat API:**
- Endpoint: `https://api.parallel.ai` (OpenAI SDK compatible)
- Model: `core` (60s-5min latency, complex multi-source synthesis)
- Output: Markdown text with inline citations
- Citations: Research basis with URLs, reasoning, and confidence levels
- Rate limits: 300 req/min
- Python package: `openai`
**Perplexity sonar-pro-search:**
- Model: `perplexity/sonar-pro-search` (via OpenRouter)
- Search mode: Academic (prioritizes peer-reviewed sources)
- Search context: High (comprehensive research)
- Response time: 5-15 seconds
### Command-Line Usage
```bash
# Auto-routed research (recommended) — ALWAYS save to sources/
python research_lookup.py "your query" -o sources/research_YYYYMMDD_HHMMSS_<topic>.md
# Force specific backend — ALWAYS save to sources/
python research_lookup.py "your query" --force-backend parallel -o sources/research_<topic>.md
python research_lookup.py "your query" --force-backend perplexity -o sources/papers_<topic>.md
# JSON output — ALWAYS save to sources/
python research_lookup.py "your query" --json -o sources/research_<topic>.json
# Batch queries — ALWAYS save to sources/
python research_lookup.py --batch "query 1" "query 2" "query 3" -o sources/batch_research_<topic>.md
```
---
## MANDATORY: Save All Results to Sources Folder
**Every research-lookup result MUST be saved to the project's `sources/` folder.**
This is non-negotiable. Research results are expensive to obtain and critical for reproducibility.
### Saving Rules
| Backend | `-o` Flag Target | Filename Pattern |
|---------|-----------------|------------------|
| Parallel Deep Research | `sources/research_<topic>.md` | `research_YYYYMMDD_HHMMSS_<brief_topic>.md` |
| Perplexity (academic) | `sources/papers_<topic>.md` | `papers_YYYYMMDD_HHMMSS_<brief_topic>.md` |
| Batch queries | `sources/batch_<topic>.md` | `batch_research_YYYYMMDD_HHMMSS_<brief_topic>.md` |
### How to Save
**CRITICAL: Every call to `research_lookup.py` MUST include the `-o` flag pointing to the `sources/` folder.**
**CRITICAL: Saved files MUST preserve all citations, source URLs, and DOIs.** The default text output automatically includes a `Sources` section (with title, date, URL for each source) and an `Additional References` section (with DOIs and academic URLs extracted from the response text). For maximum citation metadata, use `--json`.
```bash
# General research — save to sources/ (includes Sources + Additional References sections)
python research_lookup.py "Recent advances in CRISPR gene editing 2025" \
-o sources/research_20250217_143000_crispr_advances.md
# Academic paper search — save to sources/ (includes paper citations with DOIs)
python research_lookup.py "Find papers on transformer attention mechanisms in NeurIPS 2024" \
-o sources/papers_20250217_143500_transformer_attention.md
# JSON format for maximum citation metadata (full citation objects with URLs, DOIs, snippets)
python research_lookup.py "CRISPR clinical trials" --json \
-o sources/research_20250217_143000_crispr_trials.json
# Forced backend — save to sources/
python research_lookup.py "AI regulation landscape" --force-backend parallel \
-o sources/research_20250217_144000_ai_regulation.md
# Batch queries — save to sources/
python research_lookup.py --batch "mRNA vaccines efficacy" "mRNA vaccines safety" \
-o sources/batch_research_20250217_144500_mrna_vaccines.md
```
### Citation Preservation in Saved Files
Each output format preserves citations differently:
| Format | Citations Included | When to Use |
|--------|-------------------|-------------|
| Text (default) | `Sources (N):` section with `[title] (date) + URL` + `Additional References (N):` with DOIs and academic URLs | Standard use — human-readable with all citations |
| JSON (`--json`) | Full citation objects: `url`, `title`, `date`, `snippet`, `doi`, `type` | When you need maximum citation metadata |
**For Parallel backend**, saved files include: research report + Sources list (title, URL) + Additional References (DOIs, academic URLs).
**For Perplexity backend**, saved files include: academic summary + Sources list (title, date, URL, snippet) + Additional References (DOIs, academic URLs).
**Use `--json` when you need to:**
- Parse citation metadata programmatically
- Preserve full DOI and URL data for BibTeX generation
- Maintain the structured citation objects for cross-referencing
### Why Save Everything
1. **Reproducibility**: Every citation and claim can be traced back to its raw research source
2. **Context Window Recovery**: If context is compacted, saved results can be re-read without re-querying
3. **Audit Trail**: The `sources/` folder documents exactly how all research information was gathered
4. **Reuse Across Sections**: Multiple sections can reference the same saved research without duplicate queries
5. **Cost Efficiency**: Check `sources/` for existing results before making new API calls
6. **Peer Review Support**: Reviewers can verify the research backing every citation
### Before Making a New Query, Check Sources First
Before calling `research_lookup.py`, check if a relevant result already exists:
```bash
ls sources/ # Check existing saved results
```
If a prior lookup covers the same topic, re-read the saved file instead of making a new API call.
### Logging
When saving research results, always log:
```
[HH:MM:SS] SAVED: Research lookup to sources/research_20250217_143000_crispr_advances.md (3,800 words, 8 citations)
[HH:MM:SS] SAVED: Paper search to sources/papers_20250217_143500_transformer_attention.md (6 papers found)
```
---
## Integration with Scientific Writing
This skill enhances scientific writing by providing:
1. **Literature Review Support**: Gather current research for introduction and discussion — **save to `sources/`**
2. **Methods Validation**: Verify protocols against current standards — **save to `sources/`**
3. **Results Contextualization**: Compare findings with recent similar studies — **save to `sources/`**
4. **Discussion Enhancement**: Support arguments with latest evidence — **save to `sources/`**
5. **Citation Management**: Provide properly formatted citations — **save to `sources/`**
## Complementary Tools
| Task | Tool |
|------|------|
| General web search | `parallel-web` skill (`parallel_web.py search`) |
| Citation verification | `parallel-web` skill (`parallel_web.py extract`) |
| Deep research (any topic) | `research-lookup` or `parallel-web` skill |
| Academic paper search | `research-lookup` (auto-routes to Perplexity) |
| Google Scholar search | `citation-management` skill |
| PubMed search | `citation-management` skill |
| DOI to BibTeX | `citation-management` skill |
| Metadata verification | `parallel-web` skill (`parallel_web.py search` or `extract`) |
---
## Error Handling and Limitations
**Known Limitations:**
- Parallel Chat API (core model): Complex queries may take up to 5 minutes
- Perplexity: Information cutoff, may not access full text behind paywalls
- Both: Cannot access proprietary or restricted databases
**Fallback Behavior:**
- If the selected backend's API key is missing, tries the other backend
- If both backends fail, returns structured error response
- Rephrase queries for better results if initial response is insufficient
---
## Usage Examples
### Example 1: General Research (Routes to Parallel)
**Query**: "Recent advances in transformer attention mechanisms 2025"
**Backend**: Parallel Chat API (core model)
**Response**: Comprehensive markdown report with citations from authoritative sources, covering recent papers, key innovations, and performance benchmarks.
### Example 2: Academic Paper Search (Routes to Perplexity)
**Query**: "Find papers on CRISPR off-target effects in clinical trials"
**Backend**: Perplexity sonar-pro-search (academic mode)
**Response**: Curated list of 5-8 high-impact papers with full citations, DOIs, citation counts, and venue tier indicators.
### Example 3: Comparative Analysis (Routes to Parallel)
**Query**: "Compare and contrast mRNA vaccines vs traditional vaccines for cancer treatment"
**Backend**: Parallel Chat API (core model)
**Response**: Detailed comparative report with data from multiple sources, structured analysis, and cited evidence.
### Example 4: Market Data (Routes to Parallel)
**Query**: "Global AI adoption in healthcare statistics 2025"
**Backend**: Parallel Chat API (core model)
**Response**: Current market data, adoption rates, growth projections, and regional analysis with source citations.
---
## Summary
This skill serves as the primary research interface with intelligent dual-backend routing:
- **Parallel Chat API** (default, `core` model): Comprehensive, multi-source research for any topic
- **Perplexity sonar-pro-search**: Academic-specific paper searches only
- **Automatic routing**: Detects academic queries and routes appropriately
- **Manual override**: Force any backend when needed
- **Complementary**: Works alongside `parallel-web` skill for web search and URL extraction