Includes our chat template fixes!
Forllama.cpp, use--jinja
Unsloth Dynamic 2.0 achieves superior accuracy & outperforms other leading quants.
 
Table of Contents
TL;DR
Model Details
Model Description
- Developed by: https://www.tii.ae
- Model type: Causal decoder-only
- Architecture: Hybrid Transformers + Mamba architecture
- Language(s) (NLP): English, Multilingual
- License: Falcon-LLM License
Training details
For more details about the training protocol of this model, please refer to the Falcon-H1 technical blogpost.
Usage
Currently to use this model you can either rely on Hugging Face transformers, vLLM or llama.cpp library.
Inference
Make sure to install the latest version of transformers or vllm, eventually install these packages from source:
pip install git+https://github.com/huggingface/transformers.git
For vLLM, make sure to install vllm>=0.9.0:
pip install "vllm>=0.9.0"
π€ transformers
Refer to the snippet below to run H1 models using π€ transformers:
import torch
from transformers import AutoModelForCausalLM, AutoTokenizer
model_id = "tiiuae/Falcon-H1-1B-Base"
model = AutoModelForCausalLM.from_pretrained(
  model_id,
  torch_dtype=torch.bfloat16,
  device_map="auto"
)
# Perform text generation
vLLM
For vLLM, simply start a server by executing the command below:
# pip install vllm>=0.9.0
vllm serve tiiuae/Falcon-H1-1B-Instruct --tensor-parallel-size 2 --data-parallel-size 1
	
		
	
	
		llama.cpp
	
You can find all GGUF files compatible with llama.cpp under our official collection
Evaluation
Falcon-H1 series perform very well on a variety of tasks, including reasoning tasks.
| Tasks | Falcon-H1-1.5B-deep | Qwen3-1.7B | Qwen2.5-1.5B | Gemma3-1B | Llama3.2-1B | Falcon3-1B | 
|---|---|---|---|---|---|---|
| General | ||||||
| BBH | 54.43 | 35.18 | 42.41 | 35.86 | 33.21 | 34.47 | 
| ARC-C | 43.86 | 34.81 | 40.53 | 34.13 | 34.64 | 43.09 | 
| TruthfulQA | 50.48 | 49.39 | 47.05 | 42.17 | 42.08 | 42.31 | 
| HellaSwag | 65.54 | 49.27 | 62.23 | 42.24 | 55.3 | 58.53 | 
| MMLU | 66.11 | 57.04 | 59.76 | 40.87 | 45.93 | 46.1 | 
| Math | ||||||
| GSM8k | 82.34 | 69.83 | 57.47 | 42.38 | 44.28 | 44.05 | 
| MATH-500 | 77.8 | 73.0 | 48.4 | 45.4 | 13.2 | 19.8 | 
| AMC-23 | 56.56 | 46.09 | 24.06 | 19.22 | 7.19 | 6.87 | 
| AIME-24 | 14.37 | 12.5 | 2.29 | 0.42 | 1.46 | 0.41 | 
| AIME-25 | 11.04 | 8.12 | 1.25 | 1.25 | 0.0 | 0.21 | 
| Science | ||||||
| GPQA | 33.22 | 27.68 | 26.26 | 28.19 | 26.59 | 26.76 | 
| GPQA_Diamond | 40.57 | 33.33 | 25.59 | 21.55 | 25.08 | 31.31 | 
| MMLU-Pro | 41.89 | 23.54 | 28.35 | 14.46 | 16.2 | 18.49 | 
| MMLU-stem | 67.3 | 54.3 | 54.04 | 35.39 | 39.16 | 39.64 | 
| Code | ||||||
| HumanEval | 73.78 | 67.68 | 56.1 | 40.85 | 34.15 | 22.56 | 
| HumanEval+ | 68.9 | 60.96 | 50.61 | 37.2 | 29.88 | 20.73 | 
| MBPP | 68.25 | 58.73 | 64.81 | 57.67 | 33.6 | 20.63 | 
| MBPP+ | 56.61 | 49.74 | 56.08 | 50.0 | 29.37 | 17.2 | 
| LiveCodeBench | 23.87 | 14.87 | 12.52 | 5.09 | 2.35 | 0.78 | 
| CRUXEval | 52.32 | 18.88 | 34.76 | 12.7 | 0.06 | 15.58 | 
| Instruction Following | ||||||
| IFEval | 83.5 | 70.77 | 45.33 | 61.48 | 55.34 | 54.26 | 
| Alpaca-Eval | 27.12 | 21.89 | 9.54 | 17.87 | 9.38 | 6.98 | 
| MTBench | 8.53 | 7.61 | 7.1 | 7.03 | 6.37 | 6.03 | 
| LiveBench | 36.83 | 40.73 | 21.65 | 18.79 | 14.97 | 14.1 | 
You can check more in detail on our our release blogpost, detailed benchmarks.
Useful links
- View our release blogpost.
- Feel free to join our discord server if you have any questions or to interact with our researchers and developers.
Citation
If the Falcon-H1 family of models were helpful to your work, feel free to give us a cite.
@misc{tiifalconh1,
    title = {Falcon-H1: A Family of Hybrid-Head Language Models Redefining Efficiency and Performance},
    url = {https://falcon-lm.github.io/blog/falcon-h1},
    author = {Falcon-LLM Team},
    month = {May},
    year = {2025}
}
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Model tree for unsloth/Falcon-H1-1.5B-Deep-Instruct-GGUF
Base model
tiiuae/Falcon-H1-1.5B-Deep-Base
 
     
    