Qwen2-Math
Q
Qwen2 Math
Overview :
Qwen2-Math is a series of specialized language models built on the Qwen2 LLM designed for mathematical problem solving. It surpasses existing open-source and closed-source models in mathematics-related tasks, providing significant support to the scientific community for resolving sophisticated mathematical problems that require complex multi-step reasoning.
Target Users :
The primary audience for Qwen2-Math includes researchers, educators, students, and anyone who needs to solve complex mathematical problems. This product enhances their efficiency in tackling mathematical tasks by providing advanced problem-solving capabilities.
Total Visits: 4.3M
Top Region: CN(27.25%)
Website Views : 70.7K
Use Cases
Researchers use Qwen2-Math to solve advanced mathematical problems involving multi-step logical reasoning.
Teachers utilize Qwen2-Math to provide their students with problem-solving ideas and steps.
Students employ Qwen2-Math to aid their studies and improve their ability to tackle math competition questions.
Features
Outperforms existing models across multiple mathematical benchmarks, including GSM8K, MATH, and others.
Evaluated on various mathematical benchmarks using Few-shot Chain of Thought (CoT) methodology.
Enhances mathematical solving abilities through instruction fine-tuning.
Capable of solving simple competitive problems, including those from the International Mathematical Olympiad (IMO).
Provides detailed solution steps and case analysis to assist users in understanding the problem-solving process.
Plans to introduce bilingual models that support both English and Chinese, as well as models for multiple languages in the future.
How to Use
Visit the Qwen2-Math product page to learn about the product overview.
Select the appropriate model version based on the mathematical problem to be solved.
Input specific mathematical problems or formulas and submit them to the model for analysis.
Review the solution steps and results provided by the model to understand the problem-solving process.
Engage in further discussions or validations based on the model's output.
Adjust the problem statement or choose different model parameters for re-solving based on feedback.
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