NextCoder-14B-FP8
High-quality FP8 quantization of Microsoft's NextCoder-14B, optimized for production inference
This is an FP8 (E4M3) quantized version of microsoft/NextCoder-14B using compressed_tensors format. Quantized by TevunahAi on enterprise-grade hardware with 2048 calibration samples.
π― Recommended Usage: vLLM
For optimal performance with full FP8 benefits (2x memory savings + faster inference), use vLLM or TensorRT-LLM:
Quick Start with vLLM
pip install vllm
Python API:
from vllm import LLM, SamplingParams
from transformers import AutoTokenizer
# vLLM auto-detects FP8 from model config
llm = LLM(model="TevunahAi/NextCoder-14B-FP8", dtype="auto")
# Prepare prompt with chat template
tokenizer = AutoTokenizer.from_pretrained("TevunahAi/NextCoder-14B-FP8")
messages = [{"role": "user", "content": "Write a Python function to calculate fibonacci numbers"}]
prompt = tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
# Generate
outputs = llm.generate(prompt, SamplingParams(temperature=0.7, max_tokens=512))
print(outputs[0].outputs[0].text)
OpenAI-Compatible API Server:
vllm serve TevunahAi/NextCoder-14B-FP8 \
--dtype auto \
--max-model-len 4096
Then use with OpenAI client:
from openai import OpenAI
client = OpenAI(
base_url="http://localhost:8000/v1",
api_key="token-abc123", # dummy key
)
response = client.chat.completions.create(
model="TevunahAi/NextCoder-14B-FP8",
messages=[
{"role": "user", "content": "Write a Python function to calculate fibonacci numbers"}
],
temperature=0.7,
max_tokens=512,
)
print(response.choices[0].message.content)
vLLM Benefits
- β Weights, activations, and KV cache in FP8
- β ~14GB VRAM (50% reduction vs BF16)
- β Native FP8 tensor core acceleration on Ada/Hopper GPUs
- β Faster inference with optimized CUDA kernels
- β Single GPU deployment on RTX 5000 Ada, RTX 4090, or H100
βοΈ Alternative: Transformers (Not Recommended)
This model can be loaded with transformers, but will decompress FP8 β BF16 during inference, requiring ~28GB+ VRAM. For 14B models, vLLM is strongly recommended for practical single-GPU deployment.
Transformers Example (Click to expand)
from transformers import AutoModelForCausalLM, AutoTokenizer
import torch
# Loads FP8 weights but decompresses to BF16 during compute
model = AutoModelForCausalLM.from_pretrained(
"TevunahAi/NextCoder-14B-FP8",
device_map="auto",
torch_dtype="auto",
low_cpu_mem_usage=True,
)
tokenizer = AutoTokenizer.from_pretrained("TevunahAi/NextCoder-14B-FP8")
# Generate code
messages = [{"role": "user", "content": "Write a Python function to calculate fibonacci numbers"}]
text = tokenizer.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
inputs = tokenizer([text], return_tensors="pt").to(model.device)
outputs = model.generate(
**inputs,
max_new_tokens=512,
temperature=0.7,
do_sample=True
)
print(tokenizer.decode(outputs[0], skip_special_tokens=True))
Requirements:
pip install torch>=2.1.0 transformers>=4.40.0 accelerate compressed-tensors
System Requirements:
- ~28GB+ VRAM (decompressed to BF16) - requires multi-GPU or high-end single GPU
- CUDA 11.8 or newer
- PyTorch 2.1+ with CUDA support
β οΈ Warning: Most consumer GPUs will struggle with transformers inference at this size. Use vLLM for practical deployment.
π Quantization Details
| Property | Value |
|---|---|
| Base Model | microsoft/NextCoder-14B |
| Quantization Method | FP8 E4M3 weight-only |
| Framework | llm-compressor + compressed_tensors |
| Storage Size | ~14GB (sharded safetensors) |
| VRAM (vLLM) | ~14GB |
| VRAM (Transformers) | ~28GB+ (decompressed to BF16) |
| Target Hardware | NVIDIA Ada (RTX 4000/5000) or Hopper (H100/GH200) |
| Quantization Date | November 22, 2025 |
Quantization Infrastructure
Professional hardware ensures consistent, high-quality quantization:
- CPUs: Dual Intel Xeon Max 9480 (112 cores / 224 threads, 128GB HBM2e)
- GPU: NVIDIA RTX 5000 Ada Generation (32GB VRAM, native FP8 support)
- Memory: 256GB DDR5 + 128GB HBM2e = 384GB total system memory
- Software Stack: Ubuntu 25.10 | Python 3.12 | PyTorch 2.8 | CUDA 13.0 | llm-compressor
π§ Why FP8?
With vLLM/TensorRT-LLM:
- β 50% memory reduction vs BF16 (weights + activations + KV cache)
- β Faster inference via native FP8 tensor cores
- β Single GPU deployment on 24GB+ cards
- β Better throughput with optimized kernels
- β Minimal quality loss (sub-1% perplexity increase)
With Transformers:
- β Smaller download size (~14GB vs ~28GB BF16)
- β Compatible with standard transformers workflow
- β οΈ Decompresses to BF16 during inference (no runtime memory benefit)
- β Requires 28GB+ VRAM - impractical for most setups
For 14B models, vLLM is essential for practical deployment.
πΎ Model Files
This model is sharded into multiple safetensors files (all required for inference). The compressed format enables efficient storage and faster downloads.
π Performance vs 7B
The 14B model offers significant improvements over 7B:
- β Superior code quality and more accurate completions
- β Enhanced understanding of complex programming concepts
- β Better reasoning for difficult coding tasks
- β Improved context handling for larger codebases
- β οΈ Trade-off: 2x VRAM requirement (14GB vs 7GB with vLLM)
With vLLM, the 14B model fits comfortably on a single RTX 4090 (24GB) or RTX 5000 Ada (32GB).
π Original Model
This quantization is based on microsoft/NextCoder-14B by Microsoft.
For comprehensive information about:
- Model architecture and training methodology
- Capabilities, use cases, and limitations
- Evaluation benchmarks and results
- Ethical considerations and responsible AI guidelines
Please refer to the original model card.
π§ Hardware Requirements
Minimum (vLLM):
- GPU: NVIDIA RTX 4090 (24GB) or RTX 5000 Ada (32GB)
- VRAM: 16GB minimum, 24GB+ recommended
- CUDA: 11.8 or newer
Recommended (vLLM):
- GPU: NVIDIA RTX 5000 Ada (32GB) / H100 (80GB)
- VRAM: 24GB+
- CUDA: 12.0+
Transformers:
- GPU: Multi-GPU setup or A100 (40GB+)
- VRAM: 28GB+ (single GPU) or distributed across multiple GPUs
- Not recommended for practical deployment
π Additional Resources
- vLLM Documentation: docs.vllm.ai
- TensorRT-LLM: github.com/NVIDIA/TensorRT-LLM
- TevunahAi Models: huggingface.co/TevunahAi
- llm-compressor: github.com/vllm-project/llm-compressor
π License
This model inherits the MIT License from the original NextCoder-14B model.
π Acknowledgments
- Original Model: Microsoft NextCoder team
- Quantization Framework: Neural Magic's llm-compressor
- Quantized by: TevunahAi
π Citation
If you use this model, please cite the original NextCoder work:
@misc{nextcoder2024,
title={NextCoder: Next-Generation Code LLM},
author={Microsoft},
year={2024},
url={https://huggingface.co/microsoft/NextCoder-14B}
}
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