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Questions tagged [optuna]

Optuna is Hyper-parameter Optimization Framework for Python (versions 2.7 and 3.*) that helps to find the best parameters for Machine Learning models via checking various combinations of parameters' values. Site: https://optuna.org

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Unable to produce optuna results keras

I have created a model and tuned with optuna def mymodel(hp): clear_session() imageModel = Sequential() imageModel.add(Conv2D(hp.suggest_categorical("kernel1", [32,64,128]), ...
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Optuna gives "RuntimeError: CUDA error: device-side assert triggered" with PyTorch

I am aware there is already a lot of documentation of this type of error, but I couldn't find any solution regarding Optuna or any that suits me. I have a RNN build in a pretty common way: import ...
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Important parameters formula in optuna hyperparameter optimization

I use the optuna package to optimize my hyperparameters. I have a question about how to score important parameters. What formula is used to get the imporancy score of each hyperparameter? A score that ...
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why is optuna not training my model and has a score of 0.5 auc_roc?

I'm trying to create a pipeline to autotune my tree models but even when i give the answer as part of my training data the model's best training value is 0.5. Essentially it doesnt learn anything. ...
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keras MLP halts mid-training without killing the run

I am using optuna v.2.10.0 on a keras v.2.8.0 MLP using Python v.3.9.12 for macOS (tensorflow-metal v.0.4.0), using GPU and at a random point during training of a trial the progress just stops, the ...
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alueError: could not convert string to float: 'Technology' while optuna.create_study

I have this code for making optimization with Optuna: n_trials = 25 def objective(trial): params = { "n_estimators": trial.suggest_int("n_estimators", 100, 900), &...
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42 views

Can the F1 score be used as a cross-validation hyperparameter optimization target?

I am using Optuna to optimize the hyper parameters of a TensorFlow model. I am using a cross-validation hyper parameter search, that is: split the dataset into n (5 in my case) folds calculate the ...
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Optuna score vs Cross_val_score?

A accuracy score from optuna and a score in cross_val_score were different. Why does it occuer and which score should I choose? I used the hyperparameters that I got in optuna in cross_val_score. def ...
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Can I overwrite the hyperparameters of an Optuna trial object after it has already suggested values?

Occasionally Optuna will suggest a sample that I don't really want to evaluate - usually either because it is the same as, or too close to, a previously evaluated solution. In this case I would like ...
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How to repeat a trial?

I would like to know if Optuna offers an option to repeat each trial five times or more to get the average performance of the network over different initial weights.
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159 views

Optuna LightGBM LightGBMPruningCallback

I am getting an error on my modeling of lightgbm searching for optimal auc. Any help would be appreciated. import optuna from sklearn.model_selection import StratifiedKFold from optuna.integration ...
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Stack trace error with XGBoost and Optuna

I really hope you guys can help me isolate what's going wrong and why. I'm trying to run an XGBoostClassifier model that utilizes Optuna for hyper parameter optimisation. As a part of Optuna, I am ...
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1 vote
2 answers
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Tunning (Optuna) RandomForest Model but Give "Returned Nan" Result When Using class_weight Parameter

I want to tune my RF model using Optuna. The dataset is imbalanced. So, I used class_weight parameter to solve this. This is my RF Model code: model = RandomForestClassifier( n_estimators =...
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132 views

can i take best parameters and best model of optuna function and apply this model directly in my notebook?

i esttablished a function of optuna to find out best model of gbm and xgboost for my data but i was wondering if i can take the best model and apply it directly into my notebook(extracting best model ...
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1 vote
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102 views

Optuna pruning for validation loss

I introduced the following lines in my deep learning project in order to early stop when the validation loss has not improved for 10 epochs: if best_valid_loss is None or valid_loss < ...
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bringing lgb model accuracy closer to xgb's

I set up the following parameters for tuning a xgboost model dtrain = xgb.DMatrix(X_train, y_train_cost) dvalid = xgb.DMatrix(X_valid, y_valid_cost) prm = { "objective": "reg:...
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Expected 4-dimensional input for 4-dimensional weight [6, 1, 5, 5], but got 2-dimensional input of size [32, 784] instead

I'm actually trying to modify my already built NN (I used pytorch even there) to solve fashion-MNIST problem with a CNN. I set up everything, I thought it could work, but actually I had this issue ...
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Keras sequential model results not reproducible with wildly inconsistent results on same dataset and parameters optimized using Optuna

I am running a Keras sequential model as a regressor with tensorflow backend. I am using Optuna to optimize it's hyper-paramters and reducing the rmse in the Optuna optimizer. However, when I re-...
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When using the optuna plugin for hydra, can I import the search space from another config file?

I want to hyper-parameter optimize multiple time series forecasting models on the same data. I'm using the Optuna Sweeper plugin for Hydra. The different models have different hyper-parameters and ...
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The pytorch training model cannot be created successfully

I would like to do a neural network for regression analysis using optuna based on this site. I would like to create a model with two 1D data as input and one 1D data as output in batch learning. x is ...
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Saving optuna study.pkl in Google Colab

I'm tuning my ML model on Google Colab but I don't know how to save that model to pkl. import time import optuna study_name = "/gdrive/MyDrive/Colab Notebooks/test/params_{}".format(time....
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Meaning of optimization result

I ran Optuna and got that the best number of layers is 5. Below is the model generation code. My question is, does 5 layers mean that rather than having two layers (which is inside the loop), it would ...
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Trial 1 failed, because the value None could not be cast to float

I am trying to tune an extra tree classifier with Optuna. I am getting this message to all my trials: [W 2022-02-10 12:13:12,501] Trial 2 failed, because the value None could not be cast to float. ...
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Optuna Optimization gets extremly slow after a while or when resumign study

When Trying to optimize my model with optuna I run into following problem. After the first Trials finish it gets very slow. I am trying to do 100 Trials on n_jobs=-1. I also noticed that when I try to ...
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Optuna training a LightGBM- num of trials exceeded the passed one

I am trying to tune an LightGBM model with optuna. My code is written bellow. n_trials is 20, but in the messages i get bellow it says "Trial 26 finished with value: 0.020511123098087614 and ...
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custom scoring function got an error: "scoring must return a number, got tf.Tensor..."

I want to create a custom pinball loss function for a simple multiple layer perceptron Keras regressor. To tune the hyperparameters of the regressor, I use OptunaSearchCV (which works like scikit-...
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Multiple trainings / multiple NN initialisations per Hyperparamter validation with Optuna and pruning

I am just doing my first ML-with-optuna project. My question is how can I probe one set of hyperparamters for multiple NN initialization, where each run within one trial is still subject to pruning? I ...
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1 vote
1 answer
201 views

How to manually terminate an Optuna trial due to an invalid parameter subspace?

When tuning parameters in Optuna, I have an invalid subspace in my space of possible parameters. In my particular case, two of the parameters that I'm tuning can cause extremely long trials (that I ...
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optimization of wind farm in optuna

in the following code, I want to optimize the objective function using optuna. """ Additional modules pip install optuna pip install scikit-optimize """ import ...
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Hyper paramater tune number of layers of nn.Module class with PyTorch and Optuna API

I have created the following class of a machine learning model using PyTorch API and Optuna. class MultiClassClassifer_Optuna_beta(nn.Module): def __init__(self, trial, vocab_size, input_dim, ...
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Results reproducibility using Pytorch and Optuna for DNN

I have found the optimal results for 7 hyperparameter namely: Number of layers, Node size, Activation functions, learning rate, momentum, batch size, optimizer Using Optuna multiobjective ...
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Error while saving Optuna study to Google Drive from Colab

I can save a random file to my drive colab as: with open ("gdrive/My Drive/chapter_classification/output/hello.txt",'w')as f: f.write('hello') works fine but when I use the Official ...
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More economic ways to tune hyperparameters using Optuna

I am relatively new to machine learning. I am currently working on an imbalanced binary classification problem, and I need to test different models and how they perform with different types of ...
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1 vote
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68 views

Optuna, ValueError: Return value must be float-castable. Got 'None'

I am using Optuna for hyperparameter search with Hydra framework, but it throws me this error: values = [float(ret.return_value)] ValueError: Return value must be float-castable. Got 'None'. What ...
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Suppress LightGBM warnings in Optuna

I am getting below warnings while I am using Optuna to tune my model. Please tell me how to suppress these warnings? [LightGBM] [Warning] feature_fraction is set=0.2, colsample_bytree=1.0 will be ...
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2 votes
1 answer
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Supressing optunas cv_agg's binary_logloss output

if I tune a model with the LightGBMTunerCV I always get this massive result of the cv_agg's binary_logloss. If I do this with a bigger dataset, this (unnecessary) io slows down the performance of the ...
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How do we optimize XGBoost hyperparameters using optuna without using the booster object?

I am currently working on using XGBoost for prediction. I wish to know which group of hyperparameters would provide the best results. I have used optuna for the same but the prediction results seem to ...
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3 votes
2 answers
234 views

Function to generate optuna grids provided an sklearn pipeline

I am using sklearn along with optuna for HPO. I would like to create a custom function that would take an sklearn pipeline as input and return optuna-specifc grids. Returning sklearn specific param ...
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Understanding Intermediate Values and Pruning in Optuna

I am just curious for more information on what an intermediate step actually is and how to use pruning if you're using a different ml library that isn't in the tutorial section eg) XGB, Pytorch etc. ...
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1 vote
1 answer
285 views

Why optuna stuck at trial 2(trial_id=3) after it has calculated all hyperparameters?

I am using optuna to tune xgboost model's hyperparameters. I find it stuck at trial 2 (trial_id=3) for a long time(244 minutes). But When I look at the SQLite database which records the trial data, I ...
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140 views

How to search a set of normally distributed parameters using optuna?

I'm trying to optimize a custom model (no fancy ML whatsoever) that has 13 parameters, 12 of which I know to be normally distributed. I've gotten decent results using the hyperopt library: space = { ...
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3 votes
1 answer
463 views

How to set hidden_layer_sizes in sklearn MLPRegressor using optuna trial

I would like to use [OPTUNA][1] with sklearn [MLPRegressor][1] model. For almost all hyperparameters it is quite straightforward how to set OPTUNA for them. For example, to set the learning rate: ...
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Optuna pdf uses dtrain = lgb.Dataset(train_x, label=train_y) - but what is the equivalent for xgb

I really got a lot out of the Optuna documentation pdf https://buildmedia.readthedocs.org/media/pdf/optuna/stable/optuna.pdf and followed it closely for the lightgbm training on the breast cancer data ...
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HyperOpt multi metric evalution

Does anyone know if it is possible to somehow calculate metrics other than accuracy in HyperOpt? I would also like it to display me F1, precision, recall. Is there any option to do it? If so could ...
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133 views

Optuna - are the previous tuning results stored if I interrupt the kernel run?

I have been using Optuna to tune my hyperparameters for Catboostregressor. However I have set it to 100 iterations, due to having a large dataset it's taking a very long time to tune. My code can be ...
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420 views

Optuna for Catboost outputs "trials" in random order?

I'm working on hyperparameter tuning using Optuna for CatboostRegressor, however I realised that the trials I'm getting are in random order (mine started with Trial 7 and then Trial 5 then Trial 8. ...
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183 views

Optuna returns the last value, not the best one for one trial

I'm using Optuna. Imagine these are the value for "1 trial" with "5 epochs or steps": Epoch 0: 18 - Epoch 1: 32 - Epoch 2: 14 - Epoch 3: 28 - Epoch 4: 25 I expect Optuna to return ...
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147 views

A question about the "n_trials" in optuna

I'm trying to use optuna to tune hyperparameters of xgboost, but because of memory restriction, I can't set the attribute n_trials too high otherwise it would report MemoryError, so I'm wondering that ...
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1 answer
566 views

ValueError: y should be a 1d array, got an array of shape (191584, 2) instead

I'm trying to use optuna to tune the hyperparameters of LGBM, but it reports an error as title mentioned. It is strange that my y is a pandas series. The error looks like this: [1158] valid_0's auc: ...
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463 views

Optuna suggest float log=True

How can I have optuna suggest float numeric values from this list: [1e-6, 1e-5, 1e-4, 1e-3, 1e-2, 1e-1, 1.0] I'm using this Python code snippet: trial.suggest_float("lambda", 1e-6, 1.0, log=...
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