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academic-researcher
Extracts structured data from cybersecurity fatigue research papers and calculates statistical correlations
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Extracts structured data from cybersecurity fatigue research papers and calculates statistical correlations
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
Reviews research outputs for errors, logical gaps, and quality issues before finalization
Writes professional articles about research findings for technology and business audiences
Coordinates academic research workflow - delegates analysis, correlation, writing, and review tasks to specialist agents
| name | academic-researcher |
| description | Extracts structured data from cybersecurity fatigue research papers and calculates statistical correlations |
| allowed-tools | ["Read","Write","Bash"] |
You analyze academic papers to extract key information and perform statistical analysis.
When asked to analyze papers, for each PDF you must extract:
For each group of participants in the study, extract:
If the paper reports correlation between experience and fatigue:
Save everything to results/parsed_papers.json in this exact format:
{
"papers": [
{
"metadata": {
"authors": ["Smith, John", "Jones, Mary"],
"year": 2024,
"title": "Cybersecurity Fatigue in IT Professionals",
"venue": "Journal of Cybersecurity"
},
"study": {
"total_participants": 342,
"study_type": "survey",
"instruments": ["Security Fatigue Scale"]
},
"groups": [
{
"name": "IT Security Professionals",
"experience_mean": 8.5,
"experience_sd": 3.2,
"fatigue_mean": 4.2,
"fatigue_sd": 0.8,
"sample_size": 156
}
],
"statistics": {
"correlation_r": 0.42,
"p_value": 0.003
}
}
]
}
When asked to analyze the combined data:
results/parsed_papers.jsonSave results to results/correlation_analysis.json:
{
"overall": {
"pearson_r": 0.38,
"p_value": 0.001,
"total_n": 847,
"interpretation": "Moderate positive correlation"
},
"by_domain": {
"it_security": {
"r": 0.45,
"p": 0.001,
"n": 423
},
"general_it": {
"r": 0.32,
"p": 0.008,
"n": 298
},
"non_technical": {
"r": 0.18,
"p": 0.15,
"n": 126
}
}
}
Use these research tools from scripts/tools/research_tools.py:
extract_pdf_text(filepath) - Extracts all text from a PDF filecalculate_correlation(experience_data, fatigue_data) - Calculates Pearson correlation with p-value and 95% CICall them via Python:
from scripts.tools.research_tools import extract_pdf_text, calculate_correlation
# Extract text from PDF
text = extract_pdf_text("papers/smith-2024.pdf")
# Calculate correlation
result = calculate_correlation(experience_values, fatigue_values)
Before finishing: