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rrwrite-draft-section
Drafts a specific manuscript section using repository data and citation indices. Enforces fact-checking via Python tools.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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Drafts a specific manuscript section using repository data and citation indices. Enforces fact-checking via Python tools.
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
| name | rrwrite-draft-section |
| description | Drafts a specific manuscript section using repository data and citation indices. Enforces fact-checking via Python tools. |
| arguments | [{"name":"target_dir","description":"Output directory for manuscript files (e.g., manuscript/repo_v1)","default":"manuscript"}] |
| allowed-tools | null |
| context | fork |
{target_dir}/outline.md.{target_dir}/outline.md to understand section requirements and evidence files.python scripts/rrwrite-config-manager.py --section {section_name}
This ensures the draft meets the target word count (±20% variance allowed).references.bib or {target_dir}/literature_citations.bib to find relevant citation keys.$x^2$).[smith2020]).CRITICAL: You must verify all numerical claims.
*.csv or *.log).python scripts/rrwrite-verify-stats.py --file <PATH> --col [NAME] --op [mean/max/min]Include figures when:
Priority System:
figures/from_repo/) - these are ACTUAL research outputsfigures/generated/) - these are supplementary visualizationsBefore drafting, check for figures from manifest:
from pathlib import Path
import json
import sys
sys.path.append(str(Path.cwd() / "scripts"))
from rrwrite_figure_generator import FigureSelector
# Check for figure manifest (created by extraction stage)
manifest_path = Path("{target_dir}") / "figures/figure_manifest.json"
if manifest_path.exists():
# Get figures recommended for this section (prioritizes repo figures)
section_figures = FigureSelector.get_figures_from_manifest(
section_name="{section_name}",
manifest_path=manifest_path,
prioritize_repo_figures=True # Priority 1 first
)
print(f"Available figures for {section_name}:")
for fig in section_figures:
priority_label = "REPO" if fig['priority'] == 1 else "GENERATED"
print(f" [{priority_label}] {fig['id']}: {fig['default_caption']}")
print(f" Path: {fig['path']}")
if 'generating_script' in fig and fig['generating_script']:
print(f" Script: {fig['generating_script']}")
else:
# Fallback: use old method (generated figures only)
from rrwrite_figure_generator import FigureSelector
figures_dir = Path("{target_dir}") / "figures"
available_figures = FigureSelector.get_figures_for_section(
section_name="{section_name}",
figures_dir=figures_dir
)
print(f"Found {len(available_figures)} figures for {section_name}")
Markdown format for figures:

**Figure 1**: Workflow diagram showing the complete analysis pipeline implemented in this repository. This figure illustrates the data flow from input processing through statistical analysis to final output generation.
Guidelines:
sections/ directory (e.g., ../figures/from_repo/)**Figure N**: DescriptionInclude tables when:
Before drafting, check for pre-generated TSV tables from repository analysis:
from pathlib import Path
import sys
sys.path.append(str(Path.cwd() / "scripts"))
from rrwrite_table_generator import TableSelector
# Check for available tables
data_tables_dir = Path("{target_dir}") / "data_tables"
if data_tables_dir.exists():
available_tables = TableSelector.get_tables_for_section(
section_name="{section_name}",
data_tables_dir=data_tables_dir
)
print(f"Found {len(available_tables)} relevant data tables for {section_name}:")
for table_info in available_tables:
if table_info['exists']:
print(f" - {table_info['name']}")
To include a table in your section:
import pandas as pd
from rrwrite_table_generator import TableGenerator
# Load TSV table
df = pd.read_csv("data_tables/repository_statistics.tsv", sep='\t', comment='#')
# Optional: Filter or transform data
df = df.head(10) # Limit to top 10 rows
# Format as markdown table
table_md = TableGenerator.format_markdown_table(
df,
caption="**Table 1: Repository composition by file type**",
alignment={'file_count': 'right', 'total_size_mb': 'right'}
)
# Include in section text
section_text = f"""
The repository structure is summarized in Table 1, showing the distribution
of files across categories.
{table_md}
As shown in Table 1, the repository contains...
"""
Tables generated during repository analysis:
| File | Content | Best for sections |
|---|---|---|
file_inventory.tsv | Complete file listing with metadata | Results (filtered) |
repository_statistics.tsv | Summary metrics by category | Methods, Results |
size_distribution.tsv | File size distribution quartiles | Results |
research_indicators.tsv | Detected research topics | Introduction, Methods |
When drafting Methods sections, cite ONLY specific tools, datasets, and methodologies that were actually used:
✅ Appropriate citations:
❌ Inappropriate citations:
Rationale: Methods describes what YOU did, not general principles. Abstract concepts belong in Introduction (motivation) or Discussion (broader context).
Example (correct):
Schema validation was performed using LinkML specifications [LinkML2024].
Example (incorrect):
All data followed FAIR principles [Wilkinson2016].
When drafting the Availability (or "Data and Code Availability") section:
Should include:
Should NOT include:
Format: Concise, factual statements. 50-150 words typical.
Example (correct):
# Data and Code Availability
Source code is available at https://github.com/user/project under the MIT license.
Installation requires Python 3.10+ and can be completed via `pip install project`.
Complete documentation is hosted at https://project.readthedocs.io.
All experimental data are deposited in Zenodo (DOI: 10.5281/zenodo.1234567).
Example (incorrect - has inappropriate citations):
... complete documentation following FAIR principles [Wilkinson2016].
When drafting Results sections, cite ONLY to report what was observed or measured, not to explain concepts or provide justification:
✅ Appropriate citations:
❌ Inappropriate citations:
Rationale: Results reports OBSERVATIONS and MEASUREMENTS from your work. Explanations, justifications, and contextual citations belong in Introduction (motivation/background) or Discussion (interpretation/implications).
Example (correct):
The literature search identified 29 papers spanning reproducible research [Wilkinson2016, Barker2022], computational notebooks [Pimentel2023], and AI-assisted writing [CHI2024, Ros2025].
(These are examples of papers found - actual results being reported)
Example (incorrect):
Literature evidence tracking established provenance chains between claims and sources [Himmelstein2019, CliVER2024].
(This explains what provenance chains are/do, not reporting a measurement)
Example (incorrect):
This evidence chain addresses concerns about hallucination in AI writing [CliVER2024].
(This justifies WHY we did something - belongs in Introduction or Discussion)
Write the section to {target_dir}/SECTIONNAME.md where SECTIONNAME is:
abstract.md for Abstractintroduction.md for Introductionmethods.md for Methodsresults.md for Resultsdiscussion.md for Discussionconclusion.md for Conclusionavailability.md for Data and Code AvailabilityAfter drafting, validate the section:
python scripts/rrwrite-validate-manuscript.py --file {target_dir}/SECTIONNAME.md --type section
After successful validation, update workflow state:
import sys
from pathlib import Path
sys.path.insert(0, str(Path('scripts').resolve()))
from rrwrite_state_manager import StateManager
manager = StateManager(output_dir="{target_dir}")
manager.add_section_completed("SECTIONNAME") # e.g., "methods", "results"
Display updated progress:
python scripts/rrwrite-status.py --output-dir {target_dir}
Report validation status and updated workflow progress. If validation fails, fix issues and re-validate.
Generate publication-quality plots from data files or DataFrames
Analyzes a GitHub repository or local directory to extract structure, files, and research context
Assembles all manuscript sections into a complete manuscript with validation and metadata generation
Analyzes manuscript outline for journal suitability, recommends optimal journal, and fetches author guidelines
Performs adversarial critique of manuscripts, outlines, literature reviews, or other academic content against journal requirements and quality standards.
Analyzes the repository structure and generates a detailed manuscript outline based on target journal guidelines (Nature, PLOS, Bioinformatics).