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AI-powered Research and Review Ecosystem [ICLR 2025]

GitHub stars Python 3.8+ arXiv OpenReview Homepage

AI Research Ecosystem

🔍 Overview

CycleResearcher is a comprehensive open-source ecosystem for AI-powered academic research and review. Our system features three integrated components:

  • CycleResearcher: Generates high-quality research papers
  • CycleReviewer: Provides detailed academic reviews
  • DeepReviewer: Delivers multi-perspective review simulations with self-verification

By creating a complete feedback loop between research generation and evaluation, we aim to:

  • 🤖 Automate academic research processes
  • 📝 Provide rigorous, multi-perspective research reviews
  • 🔄 Establish research-review feedback loops
  • 🚀 Accelerate scientific discovery

CycleResearcher Architecture

🚀 Getting Started

Installation

pip install ai_researcher

Using CycleResearcher

# Import necessary libraries
from ai_researcher import CycleResearcher
from ai_researcher.utils import print_paper_summary

# Initialize CycleResearcher with default 12B model
researcher = CycleResearcher(model_size="12B")

# Load references from BibTeX file
with open('cycleresearcher_references.bib', 'r') as f:
    references_content = f.read()

# Generate paper with specific references
generated_papers = researcher.generate_paper(
    topic="AI Researcher",
    references=references_content,
    n=1  # Generate a single paper
)

# Print summary of generated paper
print_paper_summary(generated_papers[0])

Using CycleReviewer

# Import necessary libraries
from ai_researcher import CycleReviewer

# Initialize CycleReviewer with default 8B model
reviewer = CycleReviewer(model_size="8B")

# Review a paper (assuming paper_text contains the paper content)
review_results = reviewer.evaluate(paper_text)

# Print review results
print(f"Average score: {review_results[0]['avg_rating']}")
print(f"Decision: {review_results[0]['paper_decision']}")

Using DeepReviewer

# Import necessary libraries
from ai_researcher import DeepReviewer

# Initialize DeepReviewer with 14B model
deep_reviewer = DeepReviewer(model_size="14B")

# Review a paper with multiple simulated reviewers in Standard Mode
review_results = deep_reviewer.evaluate(
    paper_text,
    mode="Standard Mode",  # Options: "Fast Mode", "Standard Mode", "Best Mode"
    reviewer_num=4         # Simulate 4 different reviewers
)

# Print review results
for i, review in enumerate(review_results[0]['reviews']):
    print(f"Reviewer {i+1} Rating: {review.get('rating', 'N/A')}")
    print(f"Reviewer {i+1} Summary: {review.get('summary', 'N/A')[:100]}...")

CycleResearcher Architecture

📊 Model Evaluation

CycleResearcher

CycleResearcher Evaluation

CycleResearcher-12B achieves an average score of 5.36, approaching the 5.69 average for conference-accepted papers and surpassing AI Scientist's score of 4.31.

CycleReviewer

CycleReviewer Evaluation

CycleReviewer outperforms both proprietary systems and human experts with a 48.77% reduction in Proxy MSE and a 26.89% reduction in Proxy MAE compared to human reviewers. With a decision accuracy of 74.24%, our model demonstrates a significant lead over other closed-source systems.

DeepReviewer

DeepReviewer Evaluation

DeepReviewer provides multi-perspective simulation with self-verification, enabling more comprehensive and balanced feedback. It offers three distinct review modes: Fast Mode, Standard Mode, and Best Mode to accommodate different use cases.

🧠 Models & Datasets

Models Overview

CycleResearcher Models
Model Name Pre-training Language Model HF Link
CycleResearcher-ML-12B Mistral-Nemo-Instruct-2407 🤗 link
CycleResearcher-ML-72B Qwen2.5-72B-Instruct 🤗 link
CycleResearcher-ML-123B Mistral-Large-2 🤗 link
CycleReviewer Models
Model Name Pre-training Language Model HF Link
CycleReviewer-ML-Llama3.1-8B Llama3.1-8B-Instruct 🤗 link
CycleReviewer-ML-Llama3.1-70B Llama3.1-70B-Instruct 🤗 link
CycleReviewer-ML-Pro-123B Mistral-Large-2 🤗 link
DeepReviewer Models
Model Name Parameters HF Link
DeepReviewer-7B 7B 🤗 link
DeepReviewer-14B 14B 🤗 link

Datasets

Datasets Overview
Dataset Name Train Data Test Data Description HF Link
Review-5K 4,189 781 Peer review dataset for CycleReviewer training 🤗 link
Research-14K 12,696 802 Research paper dataset for CycleResearcher training 🤗 link
DeepReview-13K 13,378 1,286 Multi-perspective review dataset for DeepReviewer training 🤗 link

💡 Features

DeepReviewer Review Modes

DeepReviewer offers three distinct review modes to accommodate different use cases:

🏃‍♂️ Fast Mode

Quick review generation for rapid feedback. Provides essential evaluation without multi-reviewer simulation.

🔄 Standard Mode

Default mode that simulates multiple reviewers and includes self-verification to ensure reliable assessments.

⭐ Best Mode

Most comprehensive mode with background knowledge search, multi-reviewer simulation, and self-verification for in-depth analysis.

AI Detection

Detect if content was generated by AI models:

from ai_researcher import AIDetector

# Initialize AI detector
detector = AIDetector(device='cpu')

# Analyze the generated paper
detection_result = detector.analyze_paper(paper)

print("Detection Results:")
print(f"Probability of AI generation: {detection_result['probability'] * 100:.2f}%")
print(f"Confidence Level: {detection_result['confidence_level']}")

📚 Tutorials and Demos

We have prepared comprehensive tutorials to help users understand and utilize our models:

📄 License

This code and the models' weights are provided under the CycleResearcher-License. See the LICENSE.md file for details.

📚 Citation

If CycleResearcher is helpful to your work, please cite our paper:

@inproceedings{
weng2025cycleresearcher,
title={CycleResearcher: Improving Automated Research via Automated Review},
author={Yixuan Weng and Minjun Zhu and Guangsheng Bao and Hongbo Zhang and Jindong Wang and Yue Zhang and Linyi Yang},
booktitle={The Thirteenth International Conference on Learning Representations},
year={2025},
url={https://openreview.net/forum?id=bjcsVLoHYs}
}

if DeepReviewer is helpful to your work, please cite our paper:

@misc{zhu2025deepreviewimprovingllmbasedpaper,
      title={DeepReview: Improving LLM-based Paper Review with Human-like Deep Thinking Process}, 
      author={Minjun Zhu and Yixuan Weng and Linyi Yang and Yue Zhang},
      year={2025},
      eprint={2503.08569},
      archivePrefix={arXiv},
      primaryClass={cs.CL},
      url={https://arxiv.org/abs/2503.08569}, 
}

📮 Contact