| name | research-explorer |
| description | Use when the user has a vague research direction and wants to explore feasible specific topics. Outputs a structured analysis with candidate topics, innovation/feasibility scoring, and a pre-survey of 20–30 representative works. Single-stage, no Python runtime. |
Research Explorer
Overview
Research-topic exploration SKILL. Takes a broad direction, performs multi-dimensional web research with the agent's own WebSearch / WebFetch tools, and produces three structured Markdown deliverables. Single stage, full quality from the start. No Python runtime, no LLM SDK.
When to Use
- User says "I want to research X" without a specific topic.
- User wants to know "what are the hot topics in X".
- User needs help narrowing a broad field into 5–10 candidate topics.
- User asks for "research landscape overview".
When NOT to Use
- User already has a specific research question → use
literature-survey or paper-writer.
- User wants a quick fact-check → use WebSearch directly.
Workflow
Step 1 — Understand the direction
Confirm with the user:
- Direction — the broad area of interest (e.g., "federated learning", "NLP for healthcare").
- Constraints — theory vs. applied, specific methods, target venue, compute budget, time horizon.
- Language — default English in conversation; reports in English unless the user requests otherwise.
Step 2 — Set up the run directory
DIRECTION="<direction>"
SLUG=$(python3 -c "import re,hashlib,sys; t=sys.argv[1]; n=re.sub(r'[\\s_]+','-',re.sub(r'[^\\w\\s-]','',t.lower().strip())).strip('-')[:40].rstrip('-'); h=hashlib.sha1(t.encode()).hexdigest()[:8]; print(f'{n}-{h}')" "$DIRECTION")
TS=$(date +%Y-%m-%d_%H%M%S)
RUN=output/research-explorer/$SLUG/$TS
mkdir -p "$RUN"
ln -sfn "$TS" "output/research-explorer/$SLUG/latest"
In commands below $RUN = output/research-explorer/<slug>/latest.
Step 3 — Multi-dimensional exploration
Run WebSearch across the following dimensions (one query per dimension, more if returns are thin):
- Hot topics — " 2024 2025 hot topics" / "recent advances".
- Open problems — " open problems" / "challenges".
- Surveys — " survey 2024" / " review".
- Benchmarks — " benchmark" / " evaluation dataset".
- Applications — " applications" / " industry use cases".
- Cross-field — " + " (pick 1–2 adjacent fields).
- Recent breakthroughs — papers from the last 6–12 months at top venues.
For each kept candidate, WebFetch the abstract URL to extract canonical title / authors / year / venue. Persist intermediate notes to $RUN/search_notes.md after every dimension so the work resumes cleanly.
Step 4 — Produce the three deliverables
Write these in $RUN/:
4.1 research_exploration.md
Structured analysis containing:
- Direction recap & constraints.
- Landscape map — main subfields and the relationships between them.
- 5–10 candidate topics, each with:
- Title (specific enough to be a paper title).
- Motivation (why this matters now).
- Innovation angle (what would be new).
- Feasibility score (low / medium / high) with a brief justification (data availability, compute requirements, prior work density).
- Risk / open question.
- Recommendation — which 1–3 the user should pursue and why.
4.2 topic_matrix.md
A hierarchical Markdown outline of the topic space:
# <Direction>
## Subfield A
### Topic A.1
### Topic A.2
## Subfield B
### Topic B.1
This file is consumable by the mindmap-render skill to produce a visual mindmap.
4.3 literature_pre_survey.md
A pre-survey table of 20–30 representative works discovered above, with columns: title, authors, year, venue, URL, one-sentence relevance note. Every entry must have a URL the agent fetched in this session.
Step 5 — Optional handoff
If the user picks a topic, suggest the next skill:
- For a paper: the
paper-writer skill (using the chosen topic).
- For a survey: the
literature-survey skill.
- For an experiment package: the
experiment-suite skill.
- For a visual topic map: the
mindmap-render skill consuming topic_matrix.md.
Cross-skill data flow (path convention)
A downstream skill can locate this exploration via the slug:
output/research-explorer/<slug>/latest/topic_matrix.md
output/research-explorer/<slug>/latest/literature_pre_survey.md
If the user picks one topic from the matrix, downstream skills compute their own slug from the topic (not the original direction), so the slug paths diverge from this skill onward — which is correct.
Important rules
- No LLM SDK in this skill. Just a procedure + this
SKILL.md.
- Candidates are suggestions, not guaranteed novel — the user must verify originality before committing.
- Feasibility scores are heuristic — flag uncertainty explicitly when relevant.
- Every literature entry must have a URL fetched in this session; no memory-only entries.