A

Acemath RL Nemotron 7B GGUF

Developed by Mungert
AceMath-RL-Nemotron-7B is a mathematical reasoning model trained entirely through reinforcement learning. It is trained based on Deepseek-R1-Distilled-Qwen-7B and performs excellently in mathematical reasoning tasks. It also has certain generalization ability in coding tasks.
Downloads 633
Release Time : 5/10/2025

Model Overview

This model is a reinforcement learning-trained model focused on mathematical reasoning, offering multiple quantization formats to meet different hardware and memory requirements.

Model Features

Reinforcement learning training
Trained entirely through reinforcement learning, it performs excellently in mathematical reasoning tasks.
Strong generalization ability
While training for mathematical reasoning, it improves the model's accuracy in coding tasks.
Multiple quantization formats
It offers multiple quantization formats to meet different hardware and memory requirements.
Precision adaptive quantization
The ultra-low-bit model introduces precision adaptive quantization, retaining accuracy while maintaining memory efficiency.

Model Capabilities

Mathematical reasoning
Coding tasks
Text generation

Use Cases

Mathematical problem-solving
Probability calculation
Solve complex probability problems, such as calculating the probability of winning the lottery.
It performs excellently in math competitions such as AIME 2024 and 2025.
Coding tasks
Code generation
Generate code snippets or solve programming problems.
It performs well on LiveCodeBench.
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase