import tensorflow as tf
from delay_loss_scale import DenseLossScaleOptimizer, SparseLossScaleOptimizer
from mx_rec.util.initialize import ConfigInitializer
from rec_sdk_common.log import logger
def get_dense_and_sparse_optimizer_adam(cfg):
from mx_rec.optimizers.lazy_adam import create_hash_optimizer
from mx_rec.optimizers.lazy_adam_by_addr import create_hash_optimizer_by_address
dense_optimizer = tf.compat.v1.train.AdamOptimizer(learning_rate=cfg.learning_rate[0])
use_dynamic_expansion = ConfigInitializer.get_instance().use_dynamic_expansion
if use_dynamic_expansion:
sparse_optimizer = create_hash_optimizer_by_address(learning_rate=cfg.learning_rate[1])
logger.info("optimizer lazy_adam_by_addr")
else:
sparse_optimizer = create_hash_optimizer(learning_rate=cfg.learning_rate[1])
logger.info("optimizer lazy_adam")
sparse_optimizer = SparseLossScaleOptimizer(sparse_optimizer, cfg.loss_scale)
dense_optimizer = DenseLossScaleOptimizer(dense_optimizer, cfg.loss_scale)
return dense_optimizer, sparse_optimizer
def get_dense_and_sparse_optimizer_adagrad(cfg):
from mx_rec.optimizers.adagrad import create_hash_optimizer
from mx_rec.optimizers.adagrad_by_addr import create_hash_optimizer_by_address
dense_optimizer = tf.compat.v1.train.AdagradOptimizer(learning_rate=cfg.learning_rate[0],
initial_addumulator_value=0.0)
use_dynamic_expansion = ConfigInitializer.get_instance().use_dynamic_expansion
if use_dynamic_expansion:
sparse_optimizer = create_hash_optimizer_by_address(learning_rate=cfg.learning_rate[1])
logger.info("optimizer adagrad_by_addr")
else:
sparse_optimizer = create_hash_optimizer(learning_rate=cfg.learning_rate[1], initial_addumulator_value=0.0)
logger.info("optimizer adagrad")
sparse_optimizer = SparseLossScaleOptimizer(sparse_optimizer)
dense_optimizer = DenseLossScaleOptimizer(dense_optimizer)
return dense_optimizer, sparse_optimizer
def get_dense_and_sparse_optimizer(cfg):
if cfg.optimizer == 'adagrad':
return get_dense_and_sparse_optimizer_adagrad(cfg)
elif cfg.optimizer == 'adam':
return get_dense_and_sparse_optimizer_adam(cfg)
else:
raise "Not support optimize, please choose adam or adagrad"