Phi-4-reasoning

reasoning

Phi-4-Reasoning is a 14-billion-parameter model trained on top of the base Phi-4 through supervised fine-tuning, using over 1.4 million carefully curated prompts and high-quality responses generated by the o3-mini1 model. The model specializes in tasks requiring complex, multi-step reasoning and demonstrates the ability to generate detailed reasoning chains while efficiently utilizing computational resources during inference.

The model’s performance metrics are impressive: it outperforms significantly larger open models such as DeepSeek-R1-Distill-Llama-70B and approaches the performance level of the full DeepSeek-R1 model across various benchmarks. On the AIME 2025 math problems, Phi-4-Reasoning shows an improvement of more than 50 percentage points compared to the base Phi-4, and on LiveCodeBench programming tasks, it improves by over 25 percentage points. A notable feature of Phi-4-Reasoning is its ability to generalize and transfer knowledge to tasks not explicitly included in the training data, with improvements also observed on general tasks, including instruction following and toxic content detection.

Phi-4-Reasoning is ideally suited for applications that demand reliable logical reasoning under limited computational resources—such as educational platforms for solving mathematical problems, automated programming systems, scientific research tools, and any applications where a balance between high-quality reasoning and resource efficiency is essential.


Announce Date: 30.04.2025
Parameters: 14.7B
Context: 32K
Attention Type: Full Attention
VRAM requirements: 13.1 GB using 4 bits quantization
Developer: Microsoft
Transformers Version: 4.51.1
License: MIT

Public endpoint

Use our pre-built public endpoints to test inference and explore Phi-4-reasoning capabilities.
Model Name Context Type GPU TPS Status Link
There are no public endpoints for this model yet.

Private server

Rent your own physically dedicated instance with hourly or long-term monthly billing.

We recommend deploying private instances in the following scenarios:

  • maximize endpoint performance,
  • enable full context for long sequences,
  • ensure top-tier security for data processing in an isolated, dedicated environment,
  • use custom weights, such as fine-tuned models or LoRA adapters.

Recommended configurations for hosting Phi-4-reasoning

Prices:
Name vCPU RAM, MB Disk, GB GPU Price, hour
teslat4-1.16.16.160 16 16384 160 1 $0.46 Launch
teslaa10-1.16.32.160 16 32768 160 1 $0.53 Launch
teslaa2-2.16.32.160 16 32768 160 2 $0.57 Launch
rtx2080ti-2.12.64.160 12 65536 160 2 $0.69 Launch
rtx3090-1.16.24.160 16 24576 160 1 $0.88 Launch
rtx3080-2.16.32.160 16 32762 160 2 $0.97 Launch
rtx4090-1.16.32.160 16 32768 160 1 $1.15 Launch
teslav100-1.12.64.160 12 65536 160 1 $1.20 Launch
rtx5090-1.16.64.160 16 65536 160 1 $1.59 Launch
teslaa100-1.16.64.160 16 65536 160 1 $2.58 Launch
teslah100-1.16.64.160 16 65536 160 1 $5.11 Launch
Prices:
Name vCPU RAM, MB Disk, GB GPU Price, hour
teslaa10-1.16.32.160 16 32768 160 1 $0.53 Launch
teslaa2-2.16.32.160 16 32768 160 2 $0.57 Launch
rtx2080ti-2.12.64.160 12 65536 160 2 $0.69 Launch
teslat4-2.16.32.160 16 32768 160 2 $0.80 Launch
rtx3090-1.16.24.160 16 24576 160 1 $0.88 Launch
rtx4090-1.16.32.160 16 32768 160 1 $1.15 Launch
teslav100-1.12.64.160 12 65536 160 1 $1.20 Launch
rtx3080-3.16.64.160 16 65536 160 3 $1.43 Launch
rtx5090-1.16.64.160 16 65536 160 1 $1.59 Launch
teslaa100-1.16.64.160 16 65536 160 1 $2.58 Launch
teslah100-1.16.64.160 16 65536 160 1 $5.11 Launch
Prices:
Name vCPU RAM, MB Disk, GB GPU Price, hour
teslaa10-2.16.64.160 16 65536 160 2 $0.93 Launch
rtx2080ti-4.16.64.160 16 65536 160 4 $1.18 Launch
teslat4-4.16.64.160 16 65536 160 4 $1.48 Launch
rtx3090-2.16.64.160 16 65536 160 2 $1.67 Launch
rtx3080-4.16.64.160 16 65536 160 4 $1.82 Launch
rtx4090-2.16.64.160 16 65536 160 2 $2.19 Launch
teslav100-2.16.64.240 16 65535 240 2 $2.22 Launch
teslaa100-1.16.64.160 16 65536 160 1 $2.58 Launch
rtx5090-2.16.64.160 16 65536 160 2 $2.93 Launch
teslah100-1.16.64.160 16 65536 160 1 $5.11 Launch

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