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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Improving the performance of an autoencoder network [closed]

For a couple of days, I am working to improve the performance of my autoencoder network, from changing the network architecture to manually tuning some parameters and lately using optuna to optimize ...
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30 views

Create a list from dictionary items of optimal hyperparameters

I'm using the optuna framework to select the best parameters for my intended CNN network, including number of layers, filters in a layer, optimizer etc. I can confirm my best parameters is a ...
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blackbox optimization - problem with pytorch and optuna

I want to find the "as near as possible to global" optimum in a set of blackbox functions all depending on the same independent variable x. X has certain constraints. These blackbox ...
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1answer
34 views

Tensorflow / keras issue when optimizing with optuna

I'm pretty new to machine learning, I've been trying to teach myself neural networks from following sentdex tutorials. I followed his tutorial on using recurrent neural networks for predicting the ...
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18 views

Limit max number of parallel processes in Optuna

How to limit the max number of parallel processes when running hyper-parameter search in Optuna?
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64 views

Optuna catboost pruning

is there a way to have pruning with CatBoost and Optuna (in LightGBM it's easy but in Catboost I can't find any hint). My code is like this def objective(trial): param = { 'iterations':...
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28 views

Turning off Warning in Optuna Training

I fully realized that I will likely be embarassed for missing something obvious, but this has me stumped. I am tuning a LGBM model using Optuna, and my notebook gets flooded with warning messages, ...
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30 views

Optuna lightgbm integration giving categorical features error

Im creating a model using optuna lightgbm integration, My training set has some categorical features and i pass those features to the model using the lgb.Dataset class, here is the code im using ( ...
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1answer
49 views

How to set a minimum number of epoch in Optuna SuccessiveHalvingPruner()?

I'm using Optuna 2.5 to optimize a couple of hyperparameters on a tf.keras CNN model. I want to use pruning so that the optimization skips the less promising corners of the hyperparameters space. I'm ...
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27 views

Why aren't search variables and domains defined before?

This is more a conceptual question: Consider the minimal example below that optimizes for the minimal value of an absolute-value function. Here I used trial.suggest_float within the objective function ...
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11 views

rounding a trial float param

One of the parameters I am optimizing over is the learning rate for an optimizer in a DNN. I would like to limit the number of digits which can be set for that. Currently I am using lr = trial....
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24 views

How can I choose the right number of epochs per trial in Optuna?

Is there a rule of thumb for how to choose the number of epochs per trial in Optuna?
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61 views

As far as I can tell, there is no way to parameterize character strings in an AllenNLP config file — only ints or floats

So the issue is that, for using autotuning (like optuna) with AllenNLP, the suggested practice is to use, in jsonnet scripts, references to environment variables, and then to set up a study to modify ...
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254 views

Best parameters of an Optuna multi-objective optimization

When performing a single-objective optimization with Optuna, the best parameters of the study are accessible using: import optuna def objective(trial): x = trial.suggest_uniform('x', -10, 10) ...
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77 views

How to make optuna suggest (different) values few times in a row and use only the last suggested value?

Here is the basic code example: import optuna def objective(trial): i=0 while i < 5: x = trial.suggest_uniform('x', -10, 10) c = trial.suggest_categorical('c',['dave','...
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1answer
45 views

Is there any equivalent of hyperopts lognormal in Optuna?

I am trying to use Optuna for hyperparameter tuning of my model. I am stuck in a place where I want to define a search space having lognormal/normal distribution. It is possible in hyperopt using hp....
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1answer
86 views

How to suggest multivariate of ratio (with bound) in Optuna?

I want suggest ratio in Optuna. The ratio is X_1, X_2, ..., X_k bounded to ∑X_i = 1 and 0 <= X_i <= 1 for all i. Optuna doesn't offer Dirichlet distribution. I tried this but it doesn't work. ...
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44 views

What happens when I add/remove parameters dynamically during an Optuna study?

Optuna's FAQ has a clear answer when it comes to dynamically adjusting the range of parameter during a study: it poses no problem since each sampler is defined individually. But what about adding and/...
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111 views

Optuna hyper-parameter optimization: define hyper-parameter space outside the objective function

Does anybody know how to define the hyper-parameter space outside the objective function using Optuna API? class Objective (object): def __init__(self, metric, ...
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CNN forward function , AutoTuning the number of layers

class ConvolutionalNetwork(nn.Module): def __init__(self, in_features, trial): # we optimize the number of layers, hidden units and dropout ratio in each layer. n_layers = self....
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Averaging an optuna objective function over the nearby parameter volume

In the optuna framework a Trial returns the objective function for a particular parameter choice. There are cases where the global minimum is not a stable set of parameters and the user may want to ...
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1answer
36 views

Optuna on Pytorch CNN

class ConvolutionalNetwork(nn.Module): def __init__(self, in_features, trial): super().__init__() self.in_features = in_features self.trial = trial # this computes ...
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38 views

Optuna Autotuning

anyone tried Optuna autotuning before? #Setup optuna platform for autotuning, with TPESampler to minimize loss study = optuna.create_study(sampler=optuna.samplers.TPESampler(), direction="...
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68 views

Optimizing filter sizes of CNN with Optuna

I have created a CNN for classification of three classes based on input images of size 39 x 39. I'm optimizing the parameters of the network using Optuna. For Optuna I'm defining the following ...
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2answers
322 views

Optuna Suggests the Same Parameter Values in a lot of Trials (Duplicate Trials that Waste Time and Budget)

Optuna TPESampler and RandomSampler try the same suggested integer values (possible floats and loguniforms as well) for any parameter more than once for some reason. I couldn't find a way to stop it ...
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35 views

Additional parameters in def__init__ for Optuna Trial

class ConvolutionalNetwork(nn.Module): def __init__(self, in_features): super().__init__() self.in_features = in_features # this computes num features outputted from the ...
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283 views

Optuna Pytorch: returned value from the objective function cannot be cast to float

def autotune(trial): cfg= { 'device' : "cuda" if torch.cuda.is_available() else "cpu", # 'train_batch_size' : 64, # 'test_batch_size' : 1000, #...
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84 views

Specify fixed parameters and parameters to be search in optuna (lightgbm)

I just found Optuna and it seems they are integrated with lightGBM, but I struggle to see where I can fix parameters, e.g scoring="auc" and where I can define a gridspace to search, e.g ...
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69 views

Optuna - Memory Issues

I am trying to free memory in between Optuna optimization runs. I am using python 3.8 and the latest version of Optuna. What happens is I run the commands: optuna.create_study(), then I call optuna....
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532 views

Hyperparameter optimization in pytorch (currently with sklearn GridSearchCV)

I use this(link) pytorch tutorial and wish to add the grid search functionality in it ,sklearn.model_selection.GridSearchCV (link), in order to optimize the hyper parameters. I struggle in ...
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66 views

Jointly optimizing autoencoder and fully connected network for classification

I have a large set of unlabeled data and a smaller set of labeled data. Thus, I would like to first train a variational autoencoder on the unlabeled data and then use the encoder for classification of ...
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449 views

Using optuna LightGBMTunerCV as starting point for further search with optuna

I'm trying to use LightGBM for a regression problem (mean absolute error/L1 - or similar like Huber or pseud-Huber - loss) and I primarily want to tune my hyperparameters. LightGBMTunerCV in optuna ...
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43 views

CoNLL files in hyperparameter tuning using Optuna

I've been trying to work out how to optimize the hyperparameters in a Bi-LSTM model for PoS and dependency parsing (https://github.com/datquocnguyen/jPTDP). The model takes CoNLL-U files as input and ...
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76 views

'monotone_constraints ' shows warning of not being used in PythonAPI of XGB

On trying monotone_constraint parameter for xgb , some of the trials shows warning for below code snippet def objective(trial): param = {"objective": "reg:squarederror", ...
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1answer
115 views

Does TPE (from Optuna) takes account of the number of trials?

I am using TPE sampler from optuna to optimize hyperparameters for Deep Learning vision models. I was wondering if optuna adapt search depending of the number of trials. If I train for 1000 trials and ...
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1answer
790 views

How can I cross-validate by Pytorch and Optuna

I want to use cross-validation against the official Optuna and pytorch-based sample code (https://github.com/optuna/optuna/blob/master/examples/pytorch_simple.py). I thought about splitting the data ...
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117 views

Getting a TypeError when trying to save Optuna.Study in an optimize callback

I'm running some Optuna study, and when I try to save it with joblib.dump, I'm getting the following: TypeError: cannot pickle '_io.TextIOWrapper' object I also try to pickle.dump(study, open('name....
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1answer
78 views

Getting SIGKILL when running study optimization with Optuna on PyCharm

I am trying to run a study, using the optimize function with the default sampler and Median pruner. every run crashes, sometimes after 1 succefull trial sometimes without completing any. The crash ...
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1answer
395 views

OptKeras (Keras Optuna Wrapper) - use optkeras inside my own class, AttributeError: type object 'FrozenTrial' has no attribute '_field_types'

I wrote a simple Keras code, in which I use CNN for fashion mnist dataset. Everything works great. I implemented my own class and classification is OK. However, I wanted to use Optuna, as OptKeras (...
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1answer
143 views

strange behavior of roc_auc_score, 'roc_auc', 'auc'

While optimizing parameters for xgboost I encountered a problem with the roc_auc_score metric. I get significantly different results during cross-validation compared to the results on the training ...
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3answers
2k views

Python: How to retrive the best model from Optuna LightGBM study?

I would like to get the best model to use later in the notebook to predict using a different test batch. reproducible example (taken from Optuna Github) : import lightgbm as lgb import numpy as np ...
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2answers
77 views

Force one specific set of parameters into the sampled batch

I am trying to test different set of parameters in a ML algorithm using Optuna. The automatic sampling of Optuna is very useful, but is there any way to force one specific set of parameters into the ...
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2answers
845 views

Is there a way to pass arguments to multiple jobs in optuna?

I am trying to use optuna for searching hyper parameter spaces. In one particular scenario I train a model on a machine with a few GPUs. The model and batch size allows me to run 1 training per 1 GPU....
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192 views

Effectively using a hyperparameter optimization framework without overfitting - regularization problems

I've been using XGBOOST with RandomGridSearchCV and GridSearchCV with decent success. My training data consists of about 100k rows, 58 columns, half of which are categorical, tabular data, and i ...
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1answer
184 views

Is it a flaw that Optuna examples return the evaluation metric of the test set?

I am using Optuna for parameter optimization for some models. In almost all the examples the objective function returns a evaluation metric on the TEST set, and tries to minimize/maximize this. I ...
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2answers
973 views

How to sample parameters without duplicates in optuna?

I am using optuna for parameter optimisation of my custom models. Is there any way to sample parameters until current params set was not tested before? I mean, do try sample another params if there ...
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1answer
219 views

Can I optimize distributively multiple models at the same time?

I understand that I can do distributed optimization with Optuna. However, I don't know if I can do it with multiple models at the same time? For example: optuna create-study --study-name "...
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1answer
383 views

How to fix error “'_BaseUniformDistribution' object has no attribute 'to_internal_repr'” - strange behaviour in optuna

I am trying to use optuna lib in Python to optimise parameters for recommender systems' models. Those models are custom and look like standard fit-predict sklearn models (with methods get/set params). ...
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1answer
124 views

how to fit learning rate with pruning?

The background for the question is optimizing hyper params of neural network training by running study.optimize() with default pruning enabled and learning rate as parameter to optimize (this question ...
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356 views

How to tune conditional objective function using optuna or hyperopt

I tried to use optuna to tune hyperparameters. But my objective function is conditional which creates issues in getting optimal parameters. i want to get cwc only if the condtion is met otherwise ...