Bo Li*1
Yuanhan Zhang*,1
Liangyu Chen*,1
Jinghao Wang*,1
Fanyi Pu*,1
Jingkang Yang1 Chunyuan Li2 Ziwei Liu1
Jingkang Yang1 Chunyuan Li2 Ziwei Liu1
1S-Lab, Nanyang Technological University
2Microsoft Research, Redmond
This weight is for initilizing training for Otter. It's directly converted from Openflamingo.
You can load and try this model using
model = OtterForConditionalGeneration.from_pretrained("luodian/OTTER-MPT7B-Init", device_map="sequential")
model.text_tokenizer.padding_side = "left"
tokenizer = model.text_tokenizer
image_processor = transformers.CLIPImageProcessor()
model.eval()
You can also start training Otter via the commands
python -m accelerate.commands.launch --config_file=./pipeline/accelerate_configs/accelerate_config_fsdp.yaml \
pipeline/train/instruction_following.py \
--pretrained_model_name_or_path=luodian/OTTER-MPT7B-Init \
--mimicit_path=/data/azure_storage/otter/mimicit/xx/xx_instructions.json \
--images_path=/data/azure_storage/otter/mimicit/xx/xx.json \
--batch_size=4 --num_epochs=1 --report_to_wandb \
--wandb_entity=ntu-slab \
--external_save_dir=/data/bli/checkpoints \
--save_hf_model \
--run_name=OTTER-MPT1B \
--wandb_project=OTTER-MPT1B \
--workers=4 \
--lr_scheduler=cosine \
--learning_rate=1e-5 \
--warmup_steps_ratio=0.01
If you wish to init a video instruction tuning, you should add
"max_num_frames": 128
to config.json
inside the folder.
- Downloads last month
- 155
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social
visibility and check back later, or deploy to Inference Endpoints (dedicated)
instead.