
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 our custom fork of 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
Refer to the official vLLM documentation for more details on building vLLM from source.
🤗 transformers
Refer to the snippet below to run H1 models using 🤗 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
vllm serve tiiuae/Falcon-H1-1B-Instruct --tensor-parallel-size 2 --data-parallel-size 1
llama.cpp
While we are working on integrating our architecture directly into llama.cpp
library, you can install our fork of the library and use it directly: https://github.com/tiiuae/llama.cpp-Falcon-H1
Use the same installing guidelines as llama.cpp
.
Evaluation
Falcon-H1 series perform very well on a variety of tasks, including reasoning tasks.
Tasks | Falcon-H1-3B | Qwen3-4B | Qwen2.5-3B | Gemma3-4B | Llama3.2-3B | Falcon3-3B |
---|---|---|---|---|---|---|
General | ||||||
BBH | 53.69 | 51.07 | 46.55 | 50.01 | 41.47 | 45.02 |
ARC-C | 49.57 | 37.71 | 43.77 | 44.88 | 44.88 | 48.21 |
TruthfulQA | 53.19 | 51.75 | 58.11 | 51.68 | 50.27 | 50.06 |
HellaSwag | 69.85 | 55.31 | 64.21 | 47.68 | 63.74 | 64.24 |
MMLU | 68.3 | 67.01 | 65.09 | 59.53 | 61.74 | 56.76 |
Math | ||||||
GSM8k | 84.76 | 80.44 | 57.54 | 77.41 | 77.26 | 74.68 |
MATH-500 | 74.2 | 85.0 | 64.2 | 76.4 | 41.2 | 54.2 |
AMC-23 | 55.63 | 66.88 | 39.84 | 48.12 | 22.66 | 29.69 |
AIME-24 | 11.88 | 22.29 | 6.25 | 6.67 | 11.67 | 3.96 |
AIME-25 | 13.33 | 18.96 | 3.96 | 13.33 | 0.21 | 2.29 |
Science | ||||||
GPQA | 33.89 | 28.02 | 28.69 | 29.19 | 28.94 | 28.69 |
GPQA_Diamond | 38.72 | 40.74 | 35.69 | 28.62 | 29.97 | 29.29 |
MMLU-Pro | 43.69 | 29.75 | 32.76 | 29.71 | 27.44 | 29.71 |
MMLU-stem | 69.93 | 67.46 | 59.78 | 52.17 | 51.92 | 56.11 |
Code | ||||||
HumanEval | 76.83 | 84.15 | 73.78 | 67.07 | 54.27 | 52.44 |
HumanEval+ | 70.73 | 76.83 | 68.29 | 61.59 | 50.0 | 45.73 |
MBPP | 79.63 | 68.78 | 72.75 | 77.78 | 62.17 | 61.9 |
MBPP+ | 67.46 | 59.79 | 60.85 | 66.93 | 50.53 | 55.29 |
LiveCodeBench | 26.81 | 39.92 | 11.74 | 21.14 | 2.74 | 3.13 |
CRUXEval | 56.25 | 69.63 | 43.26 | 52.13 | 17.75 | 44.38 |
Instruction Following | ||||||
IFEval | 85.05 | 84.01 | 64.26 | 77.01 | 74.0 | 69.1 |
Alpaca-Eval | 31.09 | 36.51 | 17.37 | 39.64 | 19.69 | 14.82 |
MTBench | 8.72 | 8.45 | 7.79 | 8.24 | 7.96 | 7.79 |
LiveBench | 36.86 | 51.34 | 27.32 | 36.7 | 26.37 | 26.01 |
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}
}
- Downloads last month
- 0
Model tree for tiiuae/Falcon-H1-3B-Instruct-GPTQ-Int4
Base model
tiiuae/Falcon-H1-3B-Base