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Phi 4 Mini Reasoning GGUF

Developed by unsloth
Phi-4-mini-reasoning is a lightweight open model based on synthetic data, focusing on high-quality, dense reasoning data, and further fine-tuned to enhance mathematical reasoning capabilities.
Downloads 21.71k
Release Time : 5/1/2025

Model Overview

This model belongs to the Phi-4 model family, supports a 128K token context length, and is specifically designed for multi-step, logic-intensive mathematical problem-solving tasks in memory/computation-constrained environments and latency-sensitive scenarios.

Model Features

Lightweight Mathematical Reasoning
Optimized for mathematical reasoning, providing high-quality, step-by-step problem solutions in computation or latency-constrained environments.
Long Context Support
Supports a 128K token context length, suitable for handling complex multi-step reasoning tasks.
Efficient Inference
The compact 3.8B parameter model balances reasoning capability and efficiency, making it suitable for edge or mobile system deployment.
Synthetic Data Training
Fine-tuned using synthetic mathematical data from more powerful models, improving reasoning performance.

Model Capabilities

Mathematical problem-solving
Formal proof generation
Symbolic computation
Advanced word problem solving
Multi-step logical reasoning

Use Cases

Education
Math Tutoring
Serves as an embedded tutoring system to help students solve complex mathematical problems.
Provides step-by-step problem solutions
Edge Computing
Mobile Math Applications
Deploys lightweight mathematical reasoning assistants on mobile devices.
Low-latency mathematical problem-solving
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