Metadata-Version: 2.1
Name: sam-serve
Version: 1.1.0
Project-URL: Documentation, https://github.com/unknown/sam-serve#readme
Project-URL: Issues, https://github.com/unknown/sam-serve/issues
Project-URL: Source, https://github.com/unknown/sam-serve
Author-email: Ryan Avery <ryanbarryavery@gmail.com>
License-Expression: MIT
License-File: LICENSE
Classifier: Development Status :: 4 - Beta
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: Implementation :: CPython
Classifier: Programming Language :: Python :: Implementation :: PyPy
Requires-Python: <3.12,>=3.8
Description-Content-Type: text/markdown

# Segment Anything Encoder and Decoder as Services

![Oil slick captured by Sentinel-1 Segmented](slick_example.png)

![Burn Scar captured by Sentinel-2 Segmented](burn_scar_sam_example.png)


## Quickstart

### Building the container for creating the .mar archives

Both models will be downloaded using the vit_h weights.

```
docker build -t sam-builder -f Dockerfile-build .
```

### Copying the .mar archives to host for local testing

```
docker run -d --name sam-builder1 sam-builder
docker cp sam-builder1:/home/model-store ./
```

We copy these to model-store and use this locally by both the GPU and the CPU Torchserve containers.

you can delete the container once models are copied

```
docker rm -f sam-builder1
```

### Building the gpu torchserve container for image encoding
With the GPU, inference time should be about 1.8 seconds or less depending on the GPU. On an older 1080 Ti Pascal GPU, inference time is 1.67 seconds without compilation.

```
docker build -t sam-gpu -f Dockerfile-gpu .
bash start_serve_encode_gpu.sh
```

### Building the cpu torchserve container for image decoding

```
docker build -t sam-cpu -f Dockerfile-cpu .
bash start_serve_decode_cpu.sh
```

### Test the encode service on the CPU

The CPU service is served on 7080 by default. 8080 for the GPU service by default.

```
curl http://127.0.0.1:7080/predictions/sam_vit_h_encode -T ./data/sample-img-fox.jpg
```

### Testing

All tests in `tests/` cover the functionality of the decoder. Logic in `decode.py` is run in pytest fixtures within `conftest.py` when outputs need to be shared by different tests in `test_decode.py`.

To start running the tests, make sure you have the test models. You should have the same models used during inference, including

```
(test.py3.10) (base) rave@rave-desktop:~/segment-anything-services/tests/models$ tree
.
├── sam_vit_h_4b8939.pth
└── sam_vit_h_decode.onnx
```

You can get both by unzipping the .mar archives copied to `model-store` from the sam-builder container you started in the previous step. Then, move the .onnx and the .pth files to ./tests/models/

```
unzip model-store/sam_vit_h_decode.mar -d ./sam_decode_mar
unzip model-store/sam_vit_h_encode.mar -d ./sam_encode_mar
cp ./sam_decode_mar/sam_vit_h_decode.onnx ./tests/models/
cp ./sam_decode_mar/sam_vit_h_4b8939.pth ./tests/models/
```

Install the testing environment with [hatch](https://hatch.pypa.io/latest/install/): `pip install hatch`

Then, create the environment. I tested with Python 3.10, Python 3.11 does not work because of an onnxruntime version issue.

`hatch -e test.py3.10 shell`

Then, run tests with pytest

```
pytest tests
```

## Local Setup without Docker

### 1. Downloading model weights

If you have access, download from the devseed s3:

```
aws s3 sync s3://segment-anything/model-weights/ model-weights
```

otherwise, get checkpoints from the original repo: https://github.com/facebookresearch/segment-anything/tree/main#model-checkpoints


### 2a. Package the torch weights for GPU encoding

This step takes a long time presumably because the uncompiled weights are massive. Packaging the ONNX model is faster in the later steps.

```
mkdir -p model_store_encode
torch-model-archiver --model-name sam_vit_h_encode --version 1.0.0 --serialized-file model-weights/sam_vit_h_4b8939.pth --handler handler_encode.py
mv sam_vit_h_encode.mar model_store_encode/sam_vit_h_encode.mar
```

### 2b. Exporting the ONNX model for CPU decoding

```
mkdir -p models
python scripts/export_onnx_model.py --checkpoint model-weights/sam_vit_h_4b8939.pth --model-type vit_h --output models/sam_vit_h_decode.onnx
```

### 2c. Package the ONNX model for CPU decoding with the handler

We'll put this in the model_store_decode directory, to keep the onnx model files distinct from the torchserve .mar model archives. model_store/ is created automatically by Torchserve in the container, which is why we're make a local folder here called "model_store_decode".

```
mkdir -p model_store_decode
torch-model-archiver --model-name sam_vit_h_decode --version 1.0.0 --serialized-file models/sam_vit_h_decode.onnx --handler handler_decode.py
mv sam_vit_h_decode.mar model_store_decode/sam_vit_h_decode.mar
```

### Building jupyter server container

Use this container to test the model in a GPU enabled jupyter notebook server with geospatial and pytorch dependencies installed.

```
docker build -t sam-dev -f Dockerfile-dev .
```

### 5. Test the endpoints

You can run `test_endpoint.ipynb` to then use the two running services you started above. The dependencies are minimal for this notebook, install them on your own or you can run them in the jupyter server below.

### 6. Run jupyter server container

This is a GPU enabled container that is set up with SAM and some other dependencies we commonly use. You can use it to try out SAM model in a notebook environment. Remove the `--gpus` arg if you don't have a GPU.

```
docker run -it --rm \
    -v $HOME/.aws:/root/.aws \
    -v "$(pwd)":/segment-anything-services \
    -p 8888:8888 \
    -e AWS_PROFILE=devseed \
    --gpus all sam-dev
```

## Deployment

1. Install the dependencies to deploy from npm

```
npm install -g @openaddresses/deploy
```
2. Set up your credentials by navigating to the AWS SSO login page, and selecting "Command Line Access" to copy the temporary credentials. paste these to `~/.aws/credentials` and rename the AWS profile (ask Ryan for this.)
3. `touch ~/.deployrc.json` and fill it with
```
   {
    "profilename": {
        "region": "us-east-1"
    }
}
```
4. run deploy init to generate a `.deployrc.json` config for the repo. both the local and global config are needed to deploy. Fill in args when prompted based on the profile name
5. commit and make a PR with any changes. wait for all github actions to complete so that the model archives and docker images are built
6. `deploy update prod` to deploy changes to prod


### (Potentially) Frequently Asked Questions
Q: Why two services?

A: We're exploring cost effective ways to run image encoding in a separate, on-demand way from the CPU decoder. Eventually we'd like to remove the need for the CPU torserve on the backend and run the decoding in the browser.

Q: Can I contribute or ask questions?

A: This is currently more of a "working in the open" type repo that we'd like to share with others, rather than a maintained project. But feel free to open an issue if you have an idea. Please understand if we don't respond or are slow to respond.

## License

The model and code is licensed under the [Apache 2.0 license](LICENSE).

## References

Kirillov, A., Mintun, E., Ravi, N., Mao, H., Rolland, C., Gustafson, L., ... Girshick, R. (2023). Segment Anything. *arXiv:2304.02643*. https://github.com/facebookresearch/segment-anything

The scripts/export_onnx_model.ipynb and notebooks/sam_onnx_model_example_fox.ipynb are from the original repo.
