HubServing service pack contains 3 files, the directory is as follows:
```
hubserving/clas/
└─ __init__.py Empty file, required
└─ config.json Configuration file, optional, passed in as a parameter when using configuration to start the service
└─ module.py Main module file, required, contains the complete logic of the service
└─ params.py Parameter file, required, including parameters such as model path, pre- and post-processing parameters
PaddleClas supports rapid service deployment through PaddleHub. Currently, the deployment of image classification is supported. Please look forward to the deployment of image recognition.
## Catalogue
-[1 Introduction](#1-introduction)
-[2. Prepare the environment](#2-prepare-the-environment)
-[3. Download the inference model](#3-download-the-inference-model)
-[4. Install the service module](#4-install-the-service-module)
-[5. Start service](#5-start-service)
-[5.1 Start with command line parameters](#51-start-with-command-line-parameters)
-[5.2 Start with configuration file](#52-start-with-configuration-file)
Before installing the service module, you need to prepare the inference model and put it in the correct path. The default model path is:
```
Model structure file: PaddleClas/inference/inference.pdmodel
Model parameters file: PaddleClas/inference/inference.pdiparams
```
* Classification inference model structure file: `PaddleClas/inference/inference.pdmodel`
* Classification inference model weight file: `PaddleClas/inference/inference.pdiparams`
**Notice**:
* Model file paths can be viewed and modified in `PaddleClas/deploy/hubserving/clas/params.py`:
```python
"inference_model_dir":"../inference/"
```
* Model files (including `.pdmodel` and `.pdiparams`) must be named `inference`.
* We provide a large number of pre-trained models based on the ImageNet-1k dataset. For the model list and download address, see [Model Library Overview](../../docs/en/algorithm_introduction/ImageNet_models_en.md), or you can use your own trained and converted models.
* The model file path can be viewed and modified in `PaddleClas/deploy/hubserving/clas/params.py`.
It should be noted that the prefix of model structure file and model parameters file must be `inference`.
<aname="4"></a>
## 4. Install the service module
* More models provided by PaddleClas can be obtained from the [model library](../../docs/en/models/models_intro_en.md). You can also use models trained by yourself.
* In the Linux environment, the installation example is as follows:
```shell
cd PaddleClas/deploy
# Install the service module:
hub install hubserving/clas/
```
### 3. Install Service Module
* In the Windows environment (the folder separator is `\`), the installation example is as follows:
* On Linux platform, the examples are as follows.
```shell
cd PaddleClas/deploy
hub install hubserving/clas/
```
```shell
cd PaddleClas\deploy
# Install the service module:
hub install hubserving\clas\
```
* On Windows platform, the examples are as follows.
```shell
cd PaddleClas\deploy
hub install hubserving\clas\
```
### 4. Start service
#### Way 1. Start with command line parameters (CPU only)
<a name="5"></a>
## 5. Start service
**start command:**
```shell
$ hub serving start --modulesModule1==Version1 \
--port XXXX \
--use_multiprocess\
--workers\
```
**parameters:**
|parameters|usage|
|-|-|
|--modules/-m|PaddleHub Serving pre-installed model, listed in the form of multiple Module==Version key-value pairs<br>*`When Version is not specified, the latest version is selected by default`*|
|--port/-p|Service port, default is 8866|
|--use_multiprocess|Enable concurrent mode, the default is single-process mode, this mode is recommended for multi-core CPU machines<br>*`Windows operating system only supports single-process mode`*|
|--workers|The number of concurrent tasks specified in concurrent mode, the default is `2*cpu_count-1`, where `cpu_count` is the number of CPU cores|
<a name="5.1"></a>
### 5.1 Start with command line parameters
This method only supports prediction using CPU. Start command:
For example, start the 2-stage series service:
```shell
hub serving start -m clas_system
hub serving start \
--modules clas_system
--port 8866
```
This completes the deployment of a serviced API, using the default port number 8866.
This completes the deployment of a service API, using the default port number 8866.
**Parameter Description**:
| parameters | uses |
| ------------------ | ------------------- |
| --modules/-m | [**required**] PaddleHub Serving pre-installed model, listed in the form of multiple Module==Version key-value pairs<br>*`When no Version is specified, the latest is selected by default version`* |
| --port/-p | [**OPTIONAL**] Service port, default is 8866 |
| --use_multiprocess | [**Optional**] Whether to enable the concurrent mode, the default is single-process mode, it is recommended to use this mode for multi-core CPU machines<br>*`Windows operating system only supports single-process mode`* |
| --workers | [**Optional**] The number of concurrent tasks specified in concurrent mode, the default is `2*cpu_count-1`, where `cpu_count` is the number of CPU cores |
For more deployment details, see [PaddleHub Serving Model One-Click Service Deployment](https://paddlehub.readthedocs.io/zh_CN/release-v2.1/tutorial/serving.html)
<a name="5.2"></a>
### 5.2 Start with configuration file
This method only supports prediction using CPU or GPU. Start command:
#### Way 2. Start with configuration file(CPU、GPU)
**start command:**
```shell
hub serving start --config/-c config.json
hub serving start -c config.json
```
Wherein, the format of `config.json` is as follows:
Among them, the format of `config.json` is as follows:
```json
{
"modules_info": {
...
...
@@ -96,104 +129,110 @@ Wherein, the format of `config.json` is as follows:
"workers": 2
}
```
- The configurable parameters in `init_args` are consistent with the `_initialize` function interface in `module.py`. Among them,
- when `use_gpu` is `true`, it means that the GPU is used to start the service.
- when `enable_mkldnn` is `true`, it means that use MKL-DNN to accelerate.
- The configurable parameters in `predict_args` are consistent with the `predict` function interface in `module.py`.
**Note:**
- When using the configuration file to start the service, other parameters will be ignored.
- If you use GPU prediction (that is, `use_gpu` is set to `true`), you need to set the environment variable CUDA_VISIBLE_DEVICES before starting the service, such as: ```export CUDA_VISIBLE_DEVICES=0```, otherwise you do not need to set it.
-**`use_gpu` and `use_multiprocess` cannot be `true` at the same time.**
-**When both `use_gpu` and `enable_mkldnn` are set to `true` at the same time, GPU is used to run and `enable_mkldnn` will be ignored.**
For example, use GPU card No. 3 to start the 2-stage series service:
**Parameter Description**:
* The configurable parameters in `init_args` are consistent with the `_initialize` function interface in `module.py`. in,
- When `use_gpu` is `true`, it means to use GPU to start the service.
- When `enable_mkldnn` is `true`, it means to use MKL-DNN acceleration.
* The configurable parameters in `predict_args` are consistent with the `predict` function interface in `module.py`.
**Notice**:
* When using the configuration file to start the service, the parameter settings in the configuration file will be used, and other command line parameters will be ignored;
* If you use GPU prediction (ie, `use_gpu` is set to `true`), you need to set the `CUDA_VISIBLE_DEVICES` environment variable to specify the GPU card number used before starting the service, such as: `export CUDA_VISIBLE_DEVICES=0`;
* **`use_gpu` cannot be `true`** at the same time as `use_multiprocess`;
* ** When both `use_gpu` and `enable_mkldnn` are `true`, `enable_mkldnn` will be ignored and GPU** will be used.
If you use GPU No. 3 card to start the service:
```shell
cd PaddleClas/deploy
export CUDA_VISIBLE_DEVICES=3
hub serving start -c hubserving/clas/config.json
```
## Send prediction requests
After the service starts, you can use the following command to send a prediction request to obtain the prediction result:
-**image_path**: Test image path, can be a single image path or an image directory path
-**batch_size**: [**Optional**] batch_size. Default by `1`.
-**resize_short**: [**Optional**] In preprocessing, resize according to short size. Default by `256`。
-**crop_size**: [**Optional**] In preprocessing, centor crop size. Default by `224`。
-**normalize**: [**Optional**] In preprocessing, whether to do `normalize`. Default by `True`。
-**to_chw**: [**Optional**] In preprocessing, whether to transpose to `CHW`. Default by `True`。
<a name="6"></a>
## 6. Send prediction requests
**Notice**:
If you want to use `Transformer series models`, such as `DeiT_***_384`, `ViT_***_384`, etc., please pay attention to the input size of model, and need to set `--resize_short=384`, `--crop_size=384`.
After configuring the server, you can use the following command to send a prediction request to get the prediction result:
The returned result is a list, including the `top_k`'s classification results, corresponding scores and the time cost of prediction, details as follows.
```
list: The returned results
└─ list: The result of first picture
└─ list: The top-k classification results, sorted in descending order of score
└─ list: The scores corresponding to the top-k classification results, sorted in descending order of score
└─ float: The time cost of predicting the picture, unit second
The average time of prediction cost: 2.970 s/image
The average time cost: 3.014 s/image
The average top-1 score: 0.110
```
**Script parameter description**:
* **server_url**: Service address, the format is `http://[ip_address]:[port]/predict/[module_name]`.
* **image_path**: The test image path, which can be a single image path or an image collection directory path.
* **batch_size**: [**OPTIONAL**] Make predictions in `batch_size` size, default is `1`.
* **resize_short**: [**optional**] When preprocessing, resize by short edge, default is `256`.
* **crop_size**: [**Optional**] The size of the center crop during preprocessing, the default is `224`.
* **normalize**: [**Optional**] Whether to perform `normalize` during preprocessing, the default is `True`.
* **to_chw**: [**Optional**] Whether to adjust to `CHW` order when preprocessing, the default is `True`.
**Note**: If you use `Transformer` series models, such as `DeiT_***_384`, `ViT_***_384`, etc., please pay attention to the input data size of the model, you need to specify `--resize_short=384 -- crop_size=384`.
**Return result format description**:
The returned result is a list (list), including the top-k classification results, the corresponding scores, and the time-consuming prediction of this image, as follows:
```shell
list: return result
└──list: first image result
├── list: the top k classification results, sorted in descending order of score
├── list: the scores corresponding to the first k classification results, sorted in descending order of score
└── float: The image classification time, in seconds
```
**Note:** If you need to add, delete or modify the returned fields, you can modify the corresponding module. For the details, refer to the user-defined modification service module in the next section.
## User defined service module modification
If you need to modify the service logic, the following steps are generally required:
1. Stop service
```shell
hub serving stop --port/-p XXXX
```
<a name="7"></a>
## 7. User defined service module modification
2. Modify the code in the corresponding files, like `module.py` and `params.py`, according to the actual needs. You need re-install(hub install hubserving/clas/) and re-deploy after modifing `module.py`.
After modifying and installing and before deploying, you can use `python hubserving/clas/module.py` to test the installed service module.
If you need to modify the service logic, you need to do the following:
For example, if you need to replace the model used by the deployed service, you need to modify model path parameters `cfg.model_file` and `cfg.params_file` in `params.py`. Of course, other related parameters may need to be modified at the same time. Please modify and debug according to the actual situation.
1. Stop the service
```shell
hub serving stop --port/-p XXXX
```
3. Uninstall old service module
```shell
hub uninstall clas_system
```
2. Go to the corresponding `module.py` and `params.py` and other files to modify the code according to actual needs. `module.py` needs to be reinstalled after modification (`hub install hubserving/clas/`) and deployed. Before deploying, you can use the `python3.7 hubserving/clas/module.py` command to quickly test the code ready for deployment.
4. Install modified service module
```shell
hub install hubserving/clas/
```
3. Uninstall the old service pack
```shell
hub uninstall clas_system
```
5. Restart service
```shell
hub serving start -m clas_system
```
4. Install the new modified service pack
```shell
hub install hubserving/clas/
```
**Note**:
5. Restart the service
```shell
hub serving start -m clas_system
```
Common parameters can be modified in params.py:
* Directory of model files(include model structure file and model parameters file):
**Notice**:
Common parameters can be modified in `PaddleClas/deploy/hubserving/clas/params.py`:
* To replace the model, you need to modify the model file path parameters:
```python
"inference_model_dir":
```
* The number of Top-k results returned during post-processing:
* Change the number of `top-k` results returned when postprocessing:
```python
'topk':
```
* Mapping file corresponding to label and class ID during post-processing:
* The mapping file corresponding to the lable and class id when changing the post-processing:
```python
'class_id_map_file':
```
In order to avoid unnecessary delay and be able to predict in batch, the preprocessing (include resize, crop and other) is completed in the client, so modify [test_hubserving.py](./test_hubserving.py#L35-L52) if necessary.
In order to avoid unnecessary delay and be able to predict with batch_size, data preprocessing logic (including `resize`, `crop` and other operations) is completed on the client side, so it needs to modify data preprocessing logic related code in [PaddleClas/deploy/hubserving/test_hubserving.py# L41-L47](./test_hubserving.py#L41-L47) and [PaddleClas/deploy/hubserving/test_hubserving.py#L51-L76](./test_hubserving.py#L51-L76).
English | [简体中文](../../zh_CN/inference_deployment/paddle_hub_serving_deploy.md)
# Service deployment based on PaddleHub Serving
PaddleClas supports rapid service deployment through PaddleHub. Currently, the deployment of image classification is supported. Please look forward to the deployment of image recognition.
@@ -236,4 +235,4 @@ Common parameters can be modified in `PaddleClas/deploy/hubserving/clas/params.p
'class_id_map_file':
```
In order to avoid unnecessary delay and be able to predict with batch_size, data preprocessing logic (including `resize`, `crop` and other operations) is completed on the client side, so it needs to be in [PaddleClas/deploy/hubserving/test_hubserving.py# Modify the code related to data preprocessing logic in L35-L52](../../../deploy/hubserving/test_hubserving.py).
In order to avoid unnecessary delay and be able to predict with batch_size, data preprocessing logic (including `resize`, `crop` and other operations) is completed on the client side, so it needs to be in [PaddleClas/deploy/hubserving/test_hubserving.py# L41-L47](../../../deploy/hubserving/test_hubserving.py#L41-L47) and [PaddleClas/deploy/hubserving/test_hubserving.py#L51-L76](../../../deploy/hubserving/test_hubserving.py#L51-L76) Modify the data preprocessing logic related code.