بنقرة واحدة
literature-research
Deep literature research — raw full text reading and targeted PDF queries for rigorous analysis
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Deep literature research — raw full text reading and targeted PDF queries for rigorous analysis
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
| name | Literature Research |
| description | Deep literature research — raw full text reading and targeted PDF queries for rigorous analysis |
| type | sop |
| layer | sop |
| agents | ["alphaxiv","semantic-scholar"] |
| tools | {"alphaxiv":["discover_papers","get_paper_content","answer_pdf_queries"],"semantic-scholar":["relevanceSearch","paper","paperBatch","citations","references"]} |
| input | query (string), focus (experiment-design | methodology | comparison | replication) |
| output | DeepAnalysis[] with metadata + raw full text + targeted query results |
Deep reading. Raw full text, targeted PDF queries. For rigorous analysis, experiment design, and paper writing. This is the highest-depth skill — you read the actual paper content, not summaries.
Use this when you need to:
This skill reads RAW FULL TEXT. AI summaries are not acceptable at this depth.
| Tool | Purpose | Returns |
|---|---|---|
alphaxiv.discover_papers | Primary search — arXiv semantic search | Ranked paper list with metadata |
ss.relevanceSearch | Supplementary search — non-arXiv papers | Title, abstract, authors, citationCount |
ss.paper / ss.paperBatch | Metadata enrichment | Citation count, DOI, S2 ID |
ss.citations | Papers that cite this paper | Citing paper list with context |
ss.references | Papers this paper cites | Referenced paper list |
alphaxiv.get_paper_content | Raw full text (fullText: true) | Complete paper text as markdown |
alphaxiv.answer_pdf_queries | Targeted PDF questions | Relevant page content as XML |
AI summaries (fullText: false) are NOT acceptable for this skill.
PROHIBITED:
REQUIRED:
get_paper_content(fullText: true) for every key paper (minimum 3)answer_pdf_queries for targeted extraction of specific detailsPrimary (arXiv):
alphaxiv.discover_papers(
keywords: ["keyword1", "keyword2", "keyword3"],
question: "Detailed description of papers needed for deep analysis",
difficulty: 7
)
Supplementary (non-arXiv):
ss.relevanceSearch(
query: "search terms",
limit: 20,
year: "2022-2024"
)
Use higher difficulty (7-10) for research-depth searches — you need comprehensive coverage.
ss.paperBatch(
paper_ids: ["ARXIV:2301.xxxxx", "ARXIV:2302.xxxxx", ...]
)
Choose 3-10 papers for deep reading based on:
Fewer papers, read deeply > many papers, read shallowly.
For each selected paper:
alphaxiv.get_paper_content(
url: "https://arxiv.org/abs/XXXX.XXXXX",
fullText: true
)
fullText: true returns the raw extracted text — complete paper content including:
For specific details that need precise extraction:
alphaxiv.answer_pdf_queries(
url: "https://arxiv.org/pdf/XXXX.XXXXX",
queries: [
"What is the exact model architecture?",
"What hyperparameters were used for training?",
"What datasets were used for evaluation?",
"What are the ablation study results?"
]
)
Notes:
Find important related work:
ss.citations(paper_id: "ARXIV:XXXX.XXXXX", limit: 50)
ss.references(paper_id: "ARXIV:XXXX.XXXXX", limit: 50)
For promising papers from the graph, repeat Steps 3-5.
<page num="N"> tags showing relevant content# Step 1: Search
alphaxiv.discover_papers(
keywords: ["LoRA", "parameter-efficient", "fine-tuning", "PEFT"],
question: "Papers proposing variants or improvements to LoRA for LLM fine-tuning",
difficulty: 7
)
# Step 2: Enrich
ss.paperBatch(paper_ids: ["ARXIV:2106.09685", "ARXIV:2305.14314", ...])
# Step 3: Select top 5 most relevant
# Step 4: Read full text
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2106.09685", fullText: true) # Original LoRA
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2305.14314", fullText: true) # QLoRA
# ... repeat for all 5
# Step 5: Extract specific details
alphaxiv.answer_pdf_queries(
url: "https://arxiv.org/pdf/2106.09685",
queries: [
"What is the rank r used in experiments?",
"What is the training compute compared to full fine-tuning?",
"Which layers have LoRA applied?"
]
)
# Step 1: Search
alphaxiv.discover_papers(
keywords: ["diffusion", "sampling", "DDPM", "DDIM", "DPM-Solver"],
question: "Papers proposing fast sampling methods for diffusion models",
difficulty: 8
)
# Step 4: Read full text of key papers
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2010.02502", fullText: true) # DDPM
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2010.02502", fullText: true) # DDIM
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2211.01095", fullText: true) # DPM-Solver++
# Step 5: Compare specific details
alphaxiv.answer_pdf_queries(
url: "https://arxiv.org/pdf/2211.01095",
queries: [
"What is the FID score with 10 sampling steps?",
"How does it compare to DDIM at the same step count?",
"What is the computational overhead of the solver?"
]
)
# Step 6: Find newer work
ss.citations(paper_id: "ARXIV:2211.01095", limit: 30)