library_name: transformers
pipeline_tag: text-generation
base_model:
- google/gemma-3-27b-it
language:
- en
- zh
- vi
- id
- th
- fil
- ta
- ms
- km
- lo
- my
- jv
- su
license: gemma
base_model_relation: finetune
Model Card for Gemma-SEA-LION-v4-27B-IT-FP8-Dynamic
Last updated: 2025-08-25
SEA-LION is a collection of Large Language Models (LLMs) which have been pretrained and instruct-tuned for the Southeast Asia (SEA) region.
As of 25 Aug 2025, Gemma-SEA-LION-v4-27B-IT excels at Southeast Asian (SEA) tasks when compared to other open models with fewer than 200 billion parameters and demonstrates performance comparable to that of larger and top closed models. Gemma-SEA-LION-v4-27B-IT was quantized to create Gemma-SEA-LION-v4-27B-IT-FP8. Gemma-SEA-LION-v4-27B-IT-FP8 has little degradation (<x%) in performance compared to Gemma-SEA-LION-v4-27B-IT (for detailed rankings, please refer to the leaderboard), and this version can run on a laptop with Ollama with 16B of memory.
Gemma-SEA-LION-v4-27B-IT-FP8 inherits Gemma 3’s:
Large 128K context length
Image and text understanding capabilities, including document comprehension, visual Q&A, and image-grounded reasoning
Advanced function calling and structured outputs to allow for seamless integration into larger systems
Model Description
SEA-LION stands for Southeast Asian Languages In One Network.
Quantization was performed on Gemma-SEA-LION-v4-27B-IT to produce optimized variants that reduce memory requirements while maintaining model quality. These quantized models support inference on a range of consumer-grade GPUs and are compatible with various inference engines.
For tokenization, the model employs the default tokenizer used in Gemma 3 27B Instruct.
- Developed by: Products Pillar, AI Singapore
- Funded by: Singapore NRF
- Model type: Decoder
- Context length: 128k tokens
- Language(s) (NLP): Bahasa Indonesia, Burmese, Chinese, English, Khmer, Lao, Malay, Tagalog, Tamil, Thai and Vietnamese
- License: Gemma Terms of Use
- Quantized from model: Gemma-SEA-LION-v4-27B-IT
This repo contains GPTQ format models files for aisingapore/Gemma-SEA-LION-v4-27B-IT
Model Weights included in this repository:
Evaluation
Performance Test Results
| Quantized Variant | Model Size (GB) | Memory Footprint (GB) | VRAM Required (GB) | Time to First Token (s) | Tokens per Second |
|---|---|---|---|---|---|
| Gemma-SEA-LION-v4-27B-IT | 0.142 | 70.2 | |||
| Q8_0 | 28.7 | 3 | 47 | 3.179 | 37 |
| Q4_K_M | 16.5 | 2.7 | 35.5 | 2.645 | 59.9 |
| NVFP4 | 20.9 | 0.034 | 81.9 | ||
| FP8 Dynamic | 29.3 | 0.489 | 66.1 |
Additional Remarks:
TTFT and Toks per Sec : measured with vllm on localhost and concurrency = 1.
GGUF served using llama.cpp with the following settings:
Offload all layers to GPU, Context Length 128K
Reported results are the median (p50) values, calculated across 10 requests.
Out-of-Scope Use
The model has not been aligned for safety. Developers and users should perform their own safety fine-tuning and related security measures. In no event shall the authors be held liable for any claims, damages, or other liabilities arising from the use of the released weights and codes.
Bias, Risks, and Limitations
The model was not tested for robustness against adversarial prompting. It is important for users to be aware that our model exhibits certain limitations that warrant consideration. Like many LLMs, the model can hallucinate and occasionally generates irrelevant content, introducing fictional elements that are not grounded in the provided context. Users should also exercise caution in interpreting and validating the model's responses due to the potential inconsistencies.
Limitations
In terms of vision capability, Gemma-SEA-LION-v4-27B-IT has been trained and fine-tuned exclusively on the text back-end. As a result, its vision capabilities are expected to be comparable to those of Gemma 3 IT 27B, and may not exhibit significant improvements or differences in this area. 🤗 google/gemma-3-27b-it
More Information
This is the repository for the commercial instruction-tuned model. The model has not been aligned for safety. Developers and users should perform their own safety fine-tuning and related security measures. In no event shall the authors be held liable for any claims, damages, or other liabilities arising from the use of the released weights and codes.
AI Singapore is a national programme supported by the National Research Foundation, Singapore and hosted by the National University of Singapore. Any opinions, findings and conclusions or recommendations expressed in this material are those of the author(s) and do not reflect the views of the National Research Foundation or the National University of Singapore.
For more info, please contact us at sealion@aisingapore.org
Team
Antonyrex Sajeban, Chan Hok Teng Adwin, Cheng Zi Yi Nicholas, Choa Hsueh Mei Esther, Heng Jonathan, Huang Yuli, Hulagadri Adithya Venkatadri, Jann Railey Estrada Montalan, Kang Siow Wei Bryan, Lau Wayne, Lee Chwan Ren, Leong Wai Yi, Leong Wei Qi, Limkonchotiwat Peerat, Muhammad Ridzuan Bin Mokhtar, Nagarajan Karthik, Ng Boon Cheong Raymond, Ngee Chia Tai, Ngui Jian Gang, Nguyen Thanh Ngan, Ong Jin Jie Brandon, Ong Tat-Wee David, Ong Zhi Hao, Pereira Mark, Rengarajan Hamsawardhini, Susanto Yosephine, Sutaveephamochanon Anocha, Tan Choon Meng, Tan Chor Phin Evelyn, Tan Siao Wei Jessica, Teng Kok Wai Walter, Teo Eng Sipp Leslie, Tjhi William, Yeo Yeow Tong, Yong Xianbin, Liew Rachel, Liu Bing Jie Darius, Teo Wei Yi, Lin Zhou (NCS), Roshan Gopalakrishnan (NCS), Cuahtemoc Anda (NCS), Sri Devi Wijaya (NCS), Partha Nandi (NCS)