mirror of
https://github.com/clearml/clearml-serving
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133 lines
5.9 KiB
Python
133 lines
5.9 KiB
Python
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from typing import Any, Callable, Optional
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import joblib
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import numpy as np
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# Notice Preprocess class Must be named "Preprocess"
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class Preprocess(object):
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"""
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Notice the execution flows is synchronous as follows:
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1. RestAPI(...) -> body: dict
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2. preprocess(body: dict, ...) -> data: Any
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3. process(data: Any, ...) -> data: Any
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4. postprocess(data: Any, ...) -> result: dict
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5. RestAPI(result: dict) -> returned request
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"""
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def __init__(self):
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"""
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Set any initial property on the Task (usually model object)
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Notice these properties will be accessed from multiple threads.
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If you need a stateful (per request) data, use the `state` dict argument passed to pre/post/process functions
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"""
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# set internal state, this will be called only once. (i.e. not per request)
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self._model = None
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def load(self, local_file_name: str) -> Optional[Any]: # noqa
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"""
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Optional: provide loading method for the model
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useful if we need to load a model in a specific way for the prediction engine to work
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:param local_file_name: file name / path to read load the model from
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:return: Object that will be called with .predict() method for inference
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"""
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# Example now lets load the actual model
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self._model = joblib.load(local_file_name)
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def preprocess(self, body: dict, state: dict, collect_custom_statistics_fn=None) -> Any:
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"""
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Optional: do something with the request data, return any type of object.
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The returned object will be passed as is to the inference engine
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:param body: dictionary as recieved from the RestAPI
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:param state: Use state dict to store data passed to the post-processing function call.
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This is a per-request state dict (meaning a new empty dict will be passed per request)
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Usage example:
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>>> def preprocess(..., state):
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state['preprocess_aux_data'] = [1,2,3]
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>>> def postprocess(..., state):
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print(state['preprocess_aux_data'])
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:param collect_custom_statistics_fn: Optional, if provided allows to send a custom set of key/values
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to the statictics collector servicd.
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None is passed if statiscs collector is not configured, or if the current request should not be
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collected
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Usage example:
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>>> print(body)
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{"x0": 1, "x1": 2}
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>>> if collect_custom_statistics_fn:
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>>> collect_custom_statistics_fn({"x0": 1, "x1": 2})
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:return: Object to be passed directly to the model inference
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"""
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# we expect to get a feature vector on the `feature` entry if the dict
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return np.array(body.get("features", []), dtype=np.float)
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def process(
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self,
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data: Any,
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state: dict,
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collect_custom_statistics_fn: Optional[Callable[[dict], None]],
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) -> Any: # noqa
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"""
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Optional: do something with the actual data, return any type of object.
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The returned object will be passed as is to the postprocess function engine
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:param data: object as recieved from the preprocessing function
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:param state: Use state dict to store data passed to the post-processing function call.
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This is a per-request state dict (meaning a dict instance per request)
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Usage example:
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>>> def preprocess(..., state):
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state['preprocess_aux_data'] = [1,2,3]
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>>> def postprocess(..., state):
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print(state['preprocess_aux_data'])
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:param collect_custom_statistics_fn: Optional, if provided allows to send a custom set of key/values
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to the statictics collector servicd.
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None is passed if statiscs collector is not configured, or if the current request should not be collected
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Usage example:
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>>> if collect_custom_statistics_fn:
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>>> collect_custom_statistics_fn({"type": "classification"})
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:return: Object to be passed tp the post-processing function
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"""
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# this is where we do the heavy lifting, i.e. run our model.
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# notice we know data is a numpy array of type float, because this is what we prepared in preprocessing function
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data = self._model.predict(np.atleast_2d(data))
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# data is also a numpy array, as returned from our fit function
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return data
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def postprocess(self, data: Any, state: dict, collect_custom_statistics_fn=None) -> dict:
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"""
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Optional: post process the data returned from the model inference engine
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returned dict will be passed back as the request result as is.
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:param data: object as recieved from the inference model function
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:param state: Use state dict to store data passed to the post-processing function call.
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This is a per-request state dict (meaning a dict instance per request)
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Usage example:
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>>> def preprocess(..., state):
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state['preprocess_aux_data'] = [1,2,3]
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>>> def postprocess(..., state):
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print(state['preprocess_aux_data'])
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:param collect_custom_statistics_fn: Optional, if provided allows to send a custom set of key/values
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to the statictics collector servicd.
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None is passed if statiscs collector is not configured, or if the current request should not be
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collected
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Usage example:
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>>> if collect_custom_statistics_fn:
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>>> collect_custom_statistics_fn({"y": 1})
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:return: Dictionary passed directly as the returned result of the RestAPI
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"""
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# Now we take the result numpy (predicted) and create a list of values to
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# send back as the restapi return value
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# data is the return value from model.predict we will put is inside a return value as Y
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return dict(predict=data.tolist())
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