from spotpython.data.diabetes import Diabetes
from spotpython.hyperdict.light_hyper_dict import LightHyperDict
from spotpython.fun.hyperlight import HyperLight
from spotpython.utils.init import (fun_control_init, surrogate_control_init, design_control_init)
from spotpython.utils.eda import print_exp_table
from spotpython.spot import Spot
from spotpython.utils.file import get_experiment_filename
from math import inf
from spotpython.hyperparameters.values import set_hyperparameter
PREFIX= "CondNet_01"
data_set = Diabetes()
input_dim = 10
output_dim = 1
cond_dim = 2
fun_control = fun_control_init(
PREFIX= PREFIX,
fun_evals= inf,
max_time= 1 ,
data_set = data_set,
core_model_name= "light.regression.NNCondNetRegressor" ,
hyperdict= LightHyperDict,
_L_in= input_dim - cond_dim,
_L_out= 1 ,
_L_cond= cond_dim,)
fun = HyperLight().fun
set_hyperparameter(fun_control, "optimizer" , [ "Adadelta" , "Adam" , "Adamax" ])
set_hyperparameter(fun_control, "l1" , [3 ,4 ])
set_hyperparameter(fun_control, "epochs" , [3 ,7 ])
set_hyperparameter(fun_control, "batch_size" , [4 ,5 ])
set_hyperparameter(fun_control, "dropout_prob" , [0.0 , 0.025 ])
set_hyperparameter(fun_control, "patience" , [2 ,3 ])
set_hyperparameter(fun_control, "lr_mult" , [0.1 , 20.0 ])
design_control = design_control_init(init_size= 10 )
print_exp_table(fun_control)
module_name: light
submodule_name: regression
model_name: NNCondNetRegressor
| name | type | default | lower | upper | transform |
|----------------|--------|-----------|---------|---------|-----------------------|
| l1 | int | 3 | 3 | 4 | transform_power_2_int |
| epochs | int | 4 | 3 | 7 | transform_power_2_int |
| batch_size | int | 4 | 4 | 5 | transform_power_2_int |
| act_fn | factor | ReLU | 0 | 5 | None |
| optimizer | factor | SGD | 0 | 2 | None |
| dropout_prob | float | 0.01 | 0 | 0.025 | None |
| lr_mult | float | 1.0 | 0.1 | 20 | None |
| patience | int | 2 | 2 | 3 | transform_power_2_int |
| batch_norm | factor | 0 | 0 | 1 | None |
| initialization | factor | Default | 0 | 4 | None |
spot_tuner = Spot(fun= fun,fun_control= fun_control, design_control= design_control)
res = spot_tuner.run()
train_model result: {'val_loss': 24159.23828125, 'hp_metric': 24159.23828125}
train_model result: {'val_loss': 23455.20703125, 'hp_metric': 23455.20703125}
train_model result: {'val_loss': 25569.056640625, 'hp_metric': 25569.056640625}
train_model result: {'val_loss': 24069.580078125, 'hp_metric': 24069.580078125}
train_model result: {'val_loss': 22380.91015625, 'hp_metric': 22380.91015625}
train_model result: {'val_loss': 23910.111328125, 'hp_metric': 23910.111328125}
train_model result: {'val_loss': 23796.3828125, 'hp_metric': 23796.3828125}
train_model result: {'val_loss': 5523.42138671875, 'hp_metric': 5523.42138671875}
train_model result: {'val_loss': 22435.35546875, 'hp_metric': 22435.35546875}
train_model result: {'val_loss': 22645.388671875, 'hp_metric': 22645.388671875}
train_model result: {'val_loss': 3096.057373046875, 'hp_metric': 3096.057373046875}
spotpython tuning: 3096.057373046875 [#---------] 5.50%
train_model result: {'val_loss': 4201.18310546875, 'hp_metric': 4201.18310546875}
spotpython tuning: 3096.057373046875 [#---------] 10.73%
train_model result: {'val_loss': 3649.884765625, 'hp_metric': 3649.884765625}
spotpython tuning: 3096.057373046875 [##--------] 19.09%
train_model result: {'val_loss': 5814.76220703125, 'hp_metric': 5814.76220703125}
spotpython tuning: 3096.057373046875 [##--------] 22.59%
train_model result: {'val_loss': 4117.13134765625, 'hp_metric': 4117.13134765625}
spotpython tuning: 3096.057373046875 [###-------] 30.63%
train_model result: {'val_loss': 4142.01416015625, 'hp_metric': 4142.01416015625}
spotpython tuning: 3096.057373046875 [####------] 35.44%
train_model result: {'val_loss': 5454.61279296875, 'hp_metric': 5454.61279296875}
spotpython tuning: 3096.057373046875 [####------] 40.62%
train_model result: {'val_loss': 3486.806640625, 'hp_metric': 3486.806640625}
spotpython tuning: 3096.057373046875 [#####-----] 46.13%
train_model result: {'val_loss': 4156.4521484375, 'hp_metric': 4156.4521484375}
spotpython tuning: 3096.057373046875 [#####-----] 50.70%
train_model result: {'val_loss': 16856.775390625, 'hp_metric': 16856.775390625}
spotpython tuning: 3096.057373046875 [########--] 81.70%
train_model result: {'val_loss': 4796.46337890625, 'hp_metric': 4796.46337890625}
spotpython tuning: 3096.057373046875 [#########-] 88.20%
train_model result: {'val_loss': 7036.24609375, 'hp_metric': 7036.24609375}
spotpython tuning: 3096.057373046875 [##########] 97.81%
train_model result: {'val_loss': 4731.35009765625, 'hp_metric': 4731.35009765625}
spotpython tuning: 3096.057373046875 [##########] 100.00% Done...
Experiment saved to CondNet_01_res.pkl