AutoML: 두 판 사이의 차이

IT위키
(새 문서: 분류:인공지능 Auto Machine Learning; 자동 기계학습; 자동 머신러닝 ;기계학습상의 HITL을 개선하여 완전한 자동화를 추구하는 인공지능...)
 
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Auto Machine Learning; 자동 기계학습; 자동 머신러닝
'''Auto Machine Learning; 자동 기계학습; 자동 머신러닝'''
;기계학습상의 [[HITL]]을 개선하여 완전한 자동화를 추구하는 인공지능 분야
;AutoML은 기계학습상의 [[HITL]]을 개선하여 완전한 자동화를 추구하는 인공지능 분야 및 그 기술을 아우르는 용어이다.
 
== AutoML의 의의 ==
* 현재 기계학습의 상당 부분은 인간의 수작업에 의존
* 현재 기계학습의 상당 부분은 인간의 수작업에 의존
** [[데이터 전처리]], [[하이퍼 파라미터]] 최적화 등
** [[데이터 전처리]], [[하이퍼 파라미터]] 최적화 등
* 이런 수작업을 줄이거나 자동화할 경우 기계학습 응용성 극대화 가능
* 이런 수작업을 줄이거나 자동화할 경우 기계학습 응용성 극대화 가능
== 관련 도구 및 라이브러리 ==
* [[Autogluon]]
== 예시 ==
autogluon을 이용하여 가작 적합한 모델을 찾는 과정<syntaxhighlight lang="abl">
AutoGluon will gauge predictive performance using evaluation metric: 'accuracy'
To change this, specify the eval_metric parameter of Predictor()
Automatically generating train/validation split with holdout_frac=0.2, Train Rows: 400, Val Rows: 100
Fitting 13 L1 models ...
Fitting model: KNeighborsUnif ...
0.73 = Validation score  (accuracy)
0.0s = Training  runtime
0.01s = Validation runtime
Fitting model: KNeighborsDist ...
0.65 = Validation score  (accuracy)
0.0s = Training  runtime
0.0s = Validation runtime
Fitting model: LightGBMXT ...
0.83 = Validation score  (accuracy)
1.01s = Training  runtime
0.01s = Validation runtime
Fitting model: LightGBM ...
0.85 = Validation score  (accuracy)
0.23s = Training  runtime
0.01s = Validation runtime
Fitting model: RandomForestGini ...
0.84 = Validation score  (accuracy)
0.58s = Training  runtime
0.06s = Validation runtime
Fitting model: RandomForestEntr ...
0.83 = Validation score  (accuracy)
0.47s = Training  runtime
0.06s = Validation runtime
Fitting model: CatBoost ...
0.85 = Validation score  (accuracy)
1.13s = Training  runtime
0.01s = Validation runtime
Fitting model: ExtraTreesGini ...
0.82 = Validation score  (accuracy)
0.47s = Training  runtime
0.06s = Validation runtime
Fitting model: ExtraTreesEntr ...
0.81 = Validation score  (accuracy)
0.47s = Training  runtime
0.06s = Validation runtime
Fitting model: NeuralNetFastAI ...
0.82 = Validation score  (accuracy)
3.2s = Training  runtime
0.02s = Validation runtime
Fitting model: XGBoost ...
0.87 = Validation score  (accuracy)
0.23s = Training  runtime
0.01s = Validation runtime
Fitting model: NeuralNetTorch ...
0.85 = Validation score  (accuracy)
2.08s = Training  runtime
0.01s = Validation runtime
Fitting model: LightGBMLarge ...
0.83 = Validation score  (accuracy)
0.35s = Training  runtime
0.01s = Validation runtime
Fitting model: WeightedEnsemble_L2 ...
0.87 = Validation score  (accuracy)
0.38s = Training  runtime
0.0s = Validation runtime
AutoGluon training complete, total runtime = 11.19s ... Best model: "WeightedEnsemble_L2"
TabularPredictor saved. To load, use: predictor = TabularPredictor.load("AutogluonModels/ag-20221125_121604/")
</syntaxhighlight>

2022년 12월 2일 (금) 04:44 기준 최신판

Auto Machine Learning; 자동 기계학습; 자동 머신러닝

AutoML은 기계학습상의 HITL을 개선하여 완전한 자동화를 추구하는 인공지능 분야 및 그 기술을 아우르는 용어이다.

AutoML의 의의[편집 | 원본 편집]

  • 현재 기계학습의 상당 부분은 인간의 수작업에 의존
  • 이런 수작업을 줄이거나 자동화할 경우 기계학습 응용성 극대화 가능

관련 도구 및 라이브러리[편집 | 원본 편집]

예시[편집 | 원본 편집]

autogluon을 이용하여 가작 적합한 모델을 찾는 과정

AutoGluon will gauge predictive performance using evaluation metric: 'accuracy'
	To change this, specify the eval_metric parameter of Predictor()
Automatically generating train/validation split with holdout_frac=0.2, Train Rows: 400, Val Rows: 100
Fitting 13 L1 models ...
Fitting model: KNeighborsUnif ...
	0.73	 = Validation score   (accuracy)
	0.0s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: KNeighborsDist ...
	0.65	 = Validation score   (accuracy)
	0.0s	 = Training   runtime
	0.0s	 = Validation runtime
Fitting model: LightGBMXT ...
	0.83	 = Validation score   (accuracy)
	1.01s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: LightGBM ...
	0.85	 = Validation score   (accuracy)
	0.23s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: RandomForestGini ...
	0.84	 = Validation score   (accuracy)
	0.58s	 = Training   runtime
	0.06s	 = Validation runtime
Fitting model: RandomForestEntr ...
	0.83	 = Validation score   (accuracy)
	0.47s	 = Training   runtime
	0.06s	 = Validation runtime
Fitting model: CatBoost ...
	0.85	 = Validation score   (accuracy)
	1.13s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: ExtraTreesGini ...
	0.82	 = Validation score   (accuracy)
	0.47s	 = Training   runtime
	0.06s	 = Validation runtime
Fitting model: ExtraTreesEntr ...
	0.81	 = Validation score   (accuracy)
	0.47s	 = Training   runtime
	0.06s	 = Validation runtime
Fitting model: NeuralNetFastAI ...
	0.82	 = Validation score   (accuracy)
	3.2s	 = Training   runtime
	0.02s	 = Validation runtime
Fitting model: XGBoost ...
	0.87	 = Validation score   (accuracy)
	0.23s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: NeuralNetTorch ...
	0.85	 = Validation score   (accuracy)
	2.08s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: LightGBMLarge ...
	0.83	 = Validation score   (accuracy)
	0.35s	 = Training   runtime
	0.01s	 = Validation runtime
Fitting model: WeightedEnsemble_L2 ...
	0.87	 = Validation score   (accuracy)
	0.38s	 = Training   runtime
	0.0s	 = Validation runtime
AutoGluon training complete, total runtime = 11.19s ... Best model: "WeightedEnsemble_L2"
TabularPredictor saved. To load, use: predictor = TabularPredictor.load("AutogluonModels/ag-20221125_121604/")