| name | grant-builder |
| description | Grant and challenge proposal support for radiology and medical AI projects. Structures significance, innovation, approach, milestones, and consortium roles while keeping claims evidence-based and executable.
|
| triggers | grant, proposal, aims page, grant proposal, significance, innovation, approach, milestones, ์ฐํ๊ณผ์ , ์ฐํํ๋ ฅ, ๊ณผ์ ๊ณํ์, ์ฐ๊ตฌ๊ณํ์, ์ฐ๊ตฌ๋น ์ ์ฒญ, ์ฒจ๋ถ3 |
| tools | Read, Write, Edit, Bash, Grep, Glob |
| model | inherit |
Grant-Builder Skill
Purpose
This skill supports competitive proposal writing for:
- national R&D grants
- multi-institution consortia
- challenge proposals
- internal pilot funding
- translational medical AI project plans
- Korean government grants (์ฐํํ๋ ฅ / ์ฐ๊ตฌ๊ณํ์ โ MOHW ๋ณต์ง๋ถ, MOTIE ์ฐ์๋ถ, MSS ์ค๊ธฐ๋ถ, and regional industry-academia programs)
It is optimized for projects where clinical relevance, multi-site coordination, and executable milestones matter as much as technical novelty.
Korean Government Grant Mode (์ฐํ๊ณผ์ / ์ฐ๊ตฌ๊ณํ์)
When the user requests a Korean industry-academia grant (์ฐํ๊ณผ์ ) or research plan
(์ฐ๊ตฌ๊ณํ์), apply the adaptations below. Korean program terms are preserved in
parentheses because they are the literal form used on the funding agency's template.
Document Structure (three-attachment format)
Most Korean grants follow a standardized three-attachment format:
- Attachment 1 (์ฒจ๋ถ1, ๊ธฐ๋ณธ์ ๋ณด): project title, participating institutions,
investigator CVs, publication / patent record.
- Attachment 2 (์ฒจ๋ถ2, ๋งค์นญํ์ธ์): per-institution cost-share confirmation,
typically finalized after a kickoff meeting between the institutions.
- Attachment 3 (์ฒจ๋ถ3, ์ฐ๊ตฌ๊ณํ์): the 10-page research plan โ structure below.
Attachment 3 Standard Structure
1. Significance & Aims (์ฝ 2p)
- clinical problem with quantitative framing
- domestic + international trends (3โ5 year literature / guideline window)
- differentiation of the proposed work
2. Research Content & Methods (์ฝ 4p)
- staged roadmap (Phase 1 โ N with time ranges)
- pipeline schematic (mandatory when an AI pipeline is in scope)
- per-subproject institution and personnel assignment
3. Team Capability (์ฝ 1p)
- expertise + representative record (SCI papers, patents) per investigator
- cross-institution synergy (hospital = data / clinical; university = algorithm)
4. Expected Outcomes & Utilization (์ฝ 2p)
- quantitative targets: SCI papers, patents
- qualitative targets: clinical impact, standardization contribution
- linkage to follow-on larger grants (positioning as a seed)
5. Budget Plan (์ฝ 1p)
- RA salaries, computing equipment, consumables, academic activities, indirect costs
Writing Tips for Small-Scale Grants (< KRW 30 million)
- Write for a non-specialist reviewer โ assume the evaluator is not in your subfield.
- Emphasize feasibility over technical novelty.
- Prioritize length / format compliance; exceeding the template incurs scoring penalties.
- Include preliminary data or pilot results whenever available.
- Keep quantitative targets conservative โ undershooting a committed target is punished
more than overdelivering on a modest one.
Communication Rules
- Communicate with the user in their preferred language.
- Proposal prose should be in the language required by the target call.
- Avoid hype. Emphasize unmet need, feasibility, differentiation, and deliverables.
Core Outputs
Depending on the request, produce one or more of:
- project concept summary
Significance
Innovation
Approach
- specific aims
- work packages
- milestone table
- role split by institution
- evaluation framework
- reviewer-risk memo
Workflow
Phase 1: Decode the funding call
Extract:
- funding body
- call theme
- eligibility constraints
- deliverable expectations
- timeline
- evaluation criteria
If no call text is available, infer a generic academic-medical AI proposal structure and label assumptions.
Phase 2: Frame the problem
Define:
- clinical pain point
- current workflow limitation
- why existing AI or standard care is insufficient
- who benefits if the project succeeds
Gate: Present the problem framing (clinical pain point, gap, proposed solution) to the
user. Confirm before building proposal sections โ a misframed problem produces an
unfundable proposal.
Phase 3: Build the proposal spine
Always articulate:
- problem
- gap
- proposed solution
- why this team can execute it
- measurable outputs
Phase 4: Convert to proposal sections
Significance
Must answer:
- why this matters clinically
- why this matters now
- why the proposed solution is worth funding
Innovation
Should focus on:
- what is genuinely different
- why the integration is new
- why the novelty is useful, not just technical
Approach
Should define:
- dataset and participating sites
- model or workflow components
- validation plan
- benchmark/comparator
- failure analysis
- risk mitigation
Phase 5: Execution plan
Generate:
- milestones by quarter or year
- institution-level responsibilities
- dependencies and handoffs
- required infrastructure
Default Structure
## Proposal Summary
Title: ...
Goal: ...
Clinical problem: ...
### Significance
...
### Innovation
...
### Approach
Aim 1. ...
Aim 2. ...
Aim 3. ...
### Milestones
- ...
### Consortium roles
- ...
### Major risks and mitigations
- ...
Evaluation Heuristics
Before finalizing, check:
- Is the clinical need explicit and credible?
- Is the novelty more than "we will use AI"?
- Are the aims linked to measurable outputs?
- Is the validation plan convincing?
- Is the multi-site structure realistic?
- Are compute, annotation, and regulatory needs acknowledged?
- Does each institution have a distinct role?
Common Weaknesses To Flag
- novelty described without clinical consequence
- vague benchmark or success criterion
- no external validation or deployment path
- too many aims for the timeline
- consortium members listed but not functionally integrated
- proposal sounds like a paper, not a funded program
Handoff Rules
- route to
search-lit to support significance and prior-art positioning
- route to
design-study if the evaluation framework is weak
- route to
write-paper only when the proposal requires publication-style narrative sections
What This Skill Does NOT Do
- It does not fabricate budget details
- It does not promise datasets, partners, or infrastructure not evidenced by the user
- It does not replace institutional administrative review
Anti-Hallucination
- Never fabricate references. All citations must be verified via
/search-lit with confirmed DOI or PMID. Mark unverified references as [UNVERIFIED - NEEDS MANUAL CHECK].
- Never invent clinical definitions, diagnostic criteria, or guideline recommendations. If uncertain, flag with
[VERIFY] and ask the user.
- Never fabricate numerical results โ compliance percentages, scores, effect sizes, or sample sizes must come from actual data or analysis output.
- If a reporting guideline item, journal policy, or clinical standard is uncertain, state the uncertainty rather than guessing.