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[Ansor][AutoTVM v2.0] Phase 1: The base class for cost models (apache…
…#6187) * add the base class for cost models * address comments * Update tests/python/unittest/test_auto_scheduler_cost_model.py Disable test if user doesn't have llvm Co-authored-by: Zhao Wu <[email protected]>
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/* | ||
* Licensed to the Apache Software Foundation (ASF) under one | ||
* or more contributor license agreements. See the NOTICE file | ||
* distributed with this work for additional information | ||
* regarding copyright ownership. The ASF licenses this file | ||
* to you under the Apache License, Version 2.0 (the | ||
* "License"); you may not use this file except in compliance | ||
* with the License. You may obtain a copy of the License at | ||
* | ||
* http://www.apache.org/licenses/LICENSE-2.0 | ||
* | ||
* Unless required by applicable law or agreed to in writing, | ||
* software distributed under the License is distributed on an | ||
* "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY | ||
* KIND, either express or implied. See the License for the | ||
* specific language governing permissions and limitations | ||
* under the License. | ||
*/ | ||
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/*! | ||
* \file tvm/auto_scheduler/cost_model.h | ||
* \brief Cost models that estimate the performance of programs | ||
*/ | ||
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#ifndef TVM_AUTO_SCHEDULER_COST_MODEL_H_ | ||
#define TVM_AUTO_SCHEDULER_COST_MODEL_H_ | ||
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#include <tvm/auto_scheduler/compute_dag.h> | ||
#include <tvm/auto_scheduler/measure.h> | ||
#include <tvm/node/node.h> | ||
#include <tvm/runtime/packed_func.h> | ||
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#include <vector> | ||
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namespace tvm { | ||
namespace auto_scheduler { | ||
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using runtime::PackedFunc; | ||
using runtime::TypedPackedFunc; | ||
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/*! \brief The base class for cost model */ | ||
class CostModelNode : public Object { | ||
public: | ||
/*! | ||
* \brief Update the cost model according to new measurement results (training data). | ||
* \param inputs The measure inputs | ||
* \param results The measure results | ||
*/ | ||
virtual void Update(const Array<MeasureInput>& inputs, const Array<MeasureResult>& results) = 0; | ||
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/*! | ||
* \brief Predict the scores of states | ||
* \param task The search task of states | ||
* \param states The input states | ||
* \param scores The predicted scores for all states | ||
*/ | ||
virtual void Predict(const SearchTask& task, const std::vector<State>& states, | ||
std::vector<float>* scores) = 0; | ||
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/*! | ||
* \brief Predict the scores of all stages in states. This is the breakdown version of `Predict` | ||
* \param task The search task | ||
* \param states The input states | ||
* \param state_scores The predicted scores for all states | ||
* \param stage_scores The predicted scores for all stages in all stages | ||
*/ | ||
virtual void PredictStages(const SearchTask& task, const std::vector<State>& states, | ||
std::vector<float>* state_scores, | ||
std::vector<std::vector<float>>* stage_scores) { | ||
LOG(FATAL) << "Not implemented"; | ||
} | ||
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static constexpr const char* _type_key = "auto_scheduler.CostModel"; | ||
TVM_DECLARE_BASE_OBJECT_INFO(CostModelNode, Object); | ||
}; | ||
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/*! | ||
* \brief Managed reference to CostModelNode. | ||
* \sa CostModelNode | ||
*/ | ||
class CostModel : public ObjectRef { | ||
public: | ||
TVM_DEFINE_MUTABLE_OBJECT_REF_METHODS(CostModel, ObjectRef, CostModelNode); | ||
}; | ||
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/*! \brief The cost model returning random value for all predictions */ | ||
class RandomModelNode : public CostModelNode { | ||
public: | ||
/*! \brief Pointer to a random number generator function */ | ||
const TypedPackedFunc<void(size_t, void*)>* random_number_func; | ||
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void Update(const Array<MeasureInput>& inputs, const Array<MeasureResult>& results) final; | ||
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void Predict(const SearchTask& task, const std::vector<State>& states, | ||
std::vector<float>* scores) final; | ||
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static constexpr const char* _type_key = "auto_scheduler.RandomModel"; | ||
TVM_DECLARE_FINAL_OBJECT_INFO(RandomModelNode, CostModelNode); | ||
}; | ||
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/*! | ||
* \brief Managed reference to RandomModelNode. | ||
* \sa RandomModelNode | ||
*/ | ||
class RandomModel : public CostModel { | ||
public: | ||
RandomModel(); | ||
explicit RandomModel(::tvm::runtime::ObjectPtr<::tvm::runtime::Object> n) : CostModel(n) {} | ||
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RandomModelNode* operator->() const { return static_cast<RandomModelNode*>(data_.get()); } | ||
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TVM_DEFINE_DEFAULT_COPY_MOVE_AND_ASSIGN(RandomModel); | ||
using ContainerType = RandomModelNode; | ||
}; | ||
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/*! \brief A wrapper for cost model defined by python code | ||
* This class will call functions defined in the python */ | ||
class PythonBasedModelNode : public CostModelNode { | ||
public: | ||
/*! \brief Pointer to the update funcion in python */ | ||
PackedFunc update_func; | ||
/*! \brief Pointer to the predict funcion in python */ | ||
PackedFunc predict_func; | ||
/*! \brief Pointer to the predict funcion in python */ | ||
PackedFunc predict_stage_func; | ||
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void Update(const Array<MeasureInput>& inputs, const Array<MeasureResult>& results) final; | ||
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void Predict(const SearchTask& task, const std::vector<State>& states, | ||
std::vector<float>* scores) final; | ||
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void PredictStages(const SearchTask& task, const std::vector<State>& states, | ||
std::vector<float>* state_scores, | ||
std::vector<std::vector<float>>* stage_scores) final; | ||
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static constexpr const char* _type_key = "auto_scheduler.PythonBasedModel"; | ||
TVM_DECLARE_FINAL_OBJECT_INFO(PythonBasedModelNode, CostModelNode); | ||
}; | ||
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/*! | ||
* \brief Managed reference to PythonBasedModelNode. | ||
* \sa PythonBasedModelNode | ||
*/ | ||
class PythonBasedModel : public CostModel { | ||
public: | ||
/*! | ||
* \brief The constructor. | ||
* \param update_func The pointer to the update function defined in python | ||
* \param predict_func The pointer to the prediction function defined in python | ||
* \param predict_stage_func The pointer to the prediction function defined in python | ||
*/ | ||
PythonBasedModel(PackedFunc update_func, PackedFunc predict_func, PackedFunc predict_stage_func); | ||
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TVM_DEFINE_MUTABLE_OBJECT_REF_METHODS(PythonBasedModel, CostModel, PythonBasedModelNode); | ||
}; | ||
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} // namespace auto_scheduler | ||
} // namespace tvm | ||
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#endif // TVM_AUTO_SCHEDULER_COST_MODEL_H_ |
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# Licensed to the Apache Software Foundation (ASF) under one | ||
# or more contributor license agreements. See the NOTICE file | ||
# distributed with this work for additional information | ||
# regarding copyright ownership. The ASF licenses this file | ||
# to you under the Apache License, Version 2.0 (the | ||
# "License"); you may not use this file except in compliance | ||
# with the License. You may obtain a copy of the License at | ||
# | ||
# http://www.apache.org/licenses/LICENSE-2.0 | ||
# | ||
# Unless required by applicable law or agreed to in writing, | ||
# software distributed under the License is distributed on an | ||
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY | ||
# KIND, either express or implied. See the License for the | ||
# specific language governing permissions and limitations | ||
# under the License. | ||
# pylint: disable=unused-import, redefined-builtin | ||
""" Cost model that estimates the performance of programs """ | ||
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from .cost_model import RandomModel |
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# Licensed to the Apache Software Foundation (ASF) under one | ||
# or more contributor license agreements. See the NOTICE file | ||
# distributed with this work for additional information | ||
# regarding copyright ownership. The ASF licenses this file | ||
# to you under the Apache License, Version 2.0 (the | ||
# "License"); you may not use this file except in compliance | ||
# with the License. You may obtain a copy of the License at | ||
# | ||
# http://www.apache.org/licenses/LICENSE-2.0 | ||
# | ||
# Unless required by applicable law or agreed to in writing, | ||
# software distributed under the License is distributed on an | ||
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY | ||
# KIND, either express or implied. See the License for the | ||
# specific language governing permissions and limitations | ||
# under the License. | ||
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""" Cost model that estimates the performance of programs """ | ||
import ctypes | ||
import numpy as np | ||
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import tvm._ffi | ||
from tvm.runtime import Object | ||
from .. import _ffi_api | ||
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@tvm._ffi.register_object("auto_scheduler.CostModel") | ||
class CostModel(Object): | ||
"""The base class for cost model""" | ||
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@tvm._ffi.register_object("auto_scheduler.RandomModel") | ||
class RandomModel(CostModel): | ||
"""A model returns random estimation for all inputs""" | ||
def __init__(self): | ||
self.__init_handle_by_constructor__(_ffi_api.RandomModel) | ||
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def update(self, inputs, results): | ||
"""Update the cost model according to new measurement results (training data). | ||
Parameters | ||
---------- | ||
inputs : List[MeasureInput] | ||
The measurement inputs | ||
results : List[MeasureResult] | ||
The measurement results | ||
""" | ||
_ffi_api.CostModelUpdate(self, inputs, results) | ||
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def predict(self, search_task, states): | ||
"""Predict the scores of states | ||
Parameters | ||
---------- | ||
search_task : SearchTask | ||
The search task of states | ||
statse : List[State] | ||
The input states | ||
Returns | ||
------- | ||
scores: List[float] | ||
The predicted scores for all states | ||
""" | ||
return [x.value for x in _ffi_api.CostModelPredict(self, search_task, states)] | ||
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@tvm._ffi.register_func("auto_scheduler.cost_model.random_fill_float") | ||
def random_fill_float(size, return_ptr): | ||
"""Fills a c++ float array with random numbers in [0, 1] | ||
Parameters | ||
---------- | ||
size: int | ||
The size of the array | ||
return_ptr: | ||
A pointer to a c++ float array | ||
""" | ||
if size == 0: | ||
return | ||
return_ptr = ctypes.cast(return_ptr, ctypes.POINTER(ctypes.c_float)) | ||
array_wrapper = np.ctypeslib.as_array(return_ptr, shape=(size,)) | ||
array_wrapper[:] = np.random.uniform(0, 1, (size,)) | ||
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@tvm._ffi.register_object("auto_scheduler.PythonBasedModel") | ||
class PythonBasedModel(CostModel): | ||
"""Base class for cost models implemented in python""" | ||
def __init__(self): | ||
def update_func(inputs, results): | ||
self.update(inputs, results) | ||
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def predict_func(task, states, return_ptr): | ||
return_ptr = ctypes.cast(return_ptr, ctypes.POINTER(ctypes.c_float)) | ||
array_wrapper = np.ctypeslib.as_array(return_ptr, shape=(len(states),)) | ||
array_wrapper[:] = self.predict(task, states) | ||
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def predict_stage_func(task, states, return_ptr): | ||
ret = self.predict_stages(task, states) | ||
return_ptr = ctypes.cast(return_ptr, ctypes.POINTER(ctypes.c_float)) | ||
array_wrapper = np.ctypeslib.as_array(return_ptr, shape=ret.shape) | ||
array_wrapper[:] = ret | ||
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self.__init_handle_by_constructor__(_ffi_api.PythonBasedModel, update_func, | ||
predict_func, predict_stage_func) | ||
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def update(self, inputs, results): | ||
"""Update the cost model according to new measurement results (training data). | ||
Parameters | ||
---------- | ||
inputs : List[MeasureInput] | ||
The measurement inputs | ||
results : List[MeasureResult] | ||
The measurement results | ||
""" | ||
raise NotImplementedError | ||
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def predict(self, task, states): | ||
"""Predict the scores of states | ||
Parameters | ||
---------- | ||
search_task : SearchTask | ||
The search task of states | ||
statse : List[State] | ||
The input states | ||
Returns | ||
------- | ||
scores: List[float] | ||
The predicted scores for all states | ||
""" | ||
raise NotImplementedError | ||
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def predict_stages(self, task, states): | ||
"""Predict the scores of all stages in states. This is the breakdown version of `predict`. | ||
Parameters | ||
---------- | ||
search_task : SearchTask | ||
The search task of states | ||
statse : List[State] | ||
The input states | ||
Returns | ||
------- | ||
scores: List[float] | ||
The predicted scores for all stages in all states in the packed format | ||
""" | ||
raise NotImplementedError |
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