Know what
reviewers will say
before they say it.
PaperMate runs your manuscript through an agentic reviewer — surfacing weaknesses, identifying unsupported claims, and scoring across all 7 ACL ARR metrics before submission day.
From PDF to peer review
in three steps
Upload once, get the kind of structured feedback that usually takes weeks to receive from a conference.
Upload your manuscript
Sign in, drop your PDF, and confirm your submission meets ACL ARR requirements. Your secret key is generated instantly.
AI reviews your paper
Our agentic reviewer analyzes your paper against the ACL ARR rubric, cross-references the latest literature, and generates a structured evaluation — all in minutes.
Read your review
Enter your secret key to access a full structured review: all 7 ACL ARR metrics, concrete strengths and weaknesses with citations, and actionable suggestions before you submit.
A review that reads
like it's from a senior reviewer
PaperMate applies the ACL Rolling Review rubric — the same framework top-tier NLP conferences use — to give you feedback that's specific, calibrated, and actionable.
- Paper summary in the reviewer's own words
- 3–5 strengths & weaknesses with evidence
- Comments, suggestions & ethics assessment
- 7 ARR metrics: Soundness, Excitement, Reproducibility, Datasets, Software, Confidence + Overall Assessment
See PaperMate in action
Watch how PaperMate reviews a real NLP paper — from PDF upload to a full ACL ARR-style evaluation.
Every score explained
PaperMate follows the ACL Rolling Review rubric precisely — the same criteria top NLP conferences use to evaluate submissions.
Soundness
Scientific and technical rigor. Are the methodology and experimental design valid? Do claims have sufficient empirical support?
Excitement
Impact and novelty. Is this a breakthrough, a solid contribution, or incremental work? Will it influence future research directions?
Reproducibility
Can the community replicate the results? Code release, hyperparameter reporting, and implementation detail all factor in.
Datasets
How much value does any released dataset add to the community — from enabling entirely new research directions to no release at all.
Software
How much value does any released code or tooling add — from enabling others' research to no release at all.
Confidence
Reviewer's self-assessed domain expertise. Calibrates how much weight meta-reviewers should place on this evaluation.
Overall Assessment
The bottom-line recommendation — whether the paper should be rejected, accepted to Findings, accepted to the main conference, or considered for an award. Mirrors the ACL ARR scale exactly.
Ready to know what
reviewers will say?
Sign in, upload your PDF, and get a structured peer review
in under 10 minutes.