Mambaoutai 1.6B
Mambaoutai is the result of all the experiments and training runs described in the following blog post, where all details about the model series is shared. Mambaoutai is series of small mamba checkpoints released for the community to explore, trained on French, English and code. We run two different decay phases with the WSD-scheduler, and release model checkpoints pretrained both with and without instruction data.
Usage
You need to install transformers
from main
until transformers=4.39.0
is released.
pip install git+https://github.com/huggingface/transformers@main
We also recommend you to install both causal-conv1d
and mamba-ssm
using:
pip install causal-conv1d>=1.2.0
pip install mamba-ssm>=1.2.0
If any of these two is not installed, the "eager" implementation will be used(not recommended). Otherwise the more optimised CUDA
kernels will be used.
Generation
Use this snippet of code to generate text from the model:
from transformers import MambaConfig, MambaForCausalLM, AutoTokenizer
import torch
if model_has_instruct_data:
# use chat tokens
prompt = ”<start_user>Tell me something about Paris.<end_message><start_assistant>”
else:
# prompt the non-instructed tuned model gently
prompt = ”This is a text about Paris. Paris is”
tokenizer = AutoTokenizer.from_pretrained("lightonai/mambaoutai")
model = MambaForCausalLM.from_pretrained("lightonai/mambaoutai")
input_ids = tokenizer(prompt, return_tensors="pt")["input_ids"]
out = model.generate(input_ids, max_new_tokens=10)
print(tokenizer.batch_decode(out))
Training checkpoints
You can find some of the training checkpoints in the repo branch. On branch corresponding to the model at some point in time during training.
You can do inference with these training checkpoints by adding the revision
parameter to the from_pretrained
method.
For example, to load the model checkpoint after 30000 steps of pretraining, you can use the following code:
from transformers import MambaConfig, MambaForCausalLM, AutoTokenizer
import torch
tokenizer = AutoTokenizer.from_pretrained("lightonai/mambaoutai", revision="pre-30000")
model = MambaForCausalLM.from_pretrained("lightonai/mambaoutai", revision="pre-30000")
input_ids = tokenizer("What is a mamba?", return_tensors="pt")["input_ids"]
out = model.generate(input_ids, max_new_tokens=10)
print(tokenizer.batch_decode(out))
On-device Inference
Since Mambaoutai is only 1.6B parameters, it can be run on a CPU with reasonable speed.
Here is an example of how to run it on llama.cpp:
# Clone llama.cpp repository and compile it from source
git clone https://github.com/ggerganov/llama.cpp\
cd llama.cpp
make
# Create a venv and install dependencies
conda create -n mamba-cpp python=3.10
conda activate mamba-cpp
pip install -r requirements/requirements-convert-hf-to-gguf.txt
# Download the weights, tokenizer, config, tokenizer_config and special_tokens_map from this repo and
# put them in a directory 'Mambaoutai/'
mkdir Mambaoutai
# Convert the weights to GGUF format
python convert-hf-to-gguf.py Mambaoutai
# Run inference with a prompt
./main -m Mambaoutai/ggml-model-f16.gguf -p "Building a website can be done in 10 simple steps:\nStep 1:" -n 400 -e -ngl 1
Training Hardware
The model checkpoints with no instruction data have been fully trained on an NVIDIA DGX H100 provided by OVH Cloud, whereas the decay phases with instruction data have been carried out on an HPE Cray with 8xH100 on Orange Cloud Avenue. The ablation experiments were conducted on 16 nodes(4xA100-40GB) on MeluXina.
Model hyperparameters
More details about the model hyperparameters are given in the table below :
Parameter | Value |
---|---|
d_model | 2688 |
n_layer | 28 |
vocab_size | 65024 |
context_len | 4096 |
rms_norm | true |
residual_in_fp32 | true |
fused_add_norm | true |
conv_kernel | 4 |
d_inner | 5376 |
state_size | 16 |
dtype | bfloat16 |
tie_word_embeddings | false |
non embeddings params | 1.27B |
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