Skip to main content

A python module desgined for RL logging, monitoring and experiments managing.

Project description

UtilsRL

A util python module designed for reinforcement learning. Bug reports are welcomed.

Installation

You can install this package directly from pypi:

pip install UtilsRL

After installation, you may still need to configure some other dependencies based on your platform, such as PyTorch.

Features & Usage

1. Experiment Management

We provide a handful of functions for experiment management. All of them are placed under UtilsRL.exp, including:

1.1 Argument Parsing

The argument parsing utils in this package provides three features:

  1. Supporting for multiple types of config files. parse_args can parse json, yaml, or even a python config module which is imported ahead
    from UtilsRL.exp import parse_args
    json_config = "/path/to/json"
    yaml_config = "/path/to/yaml"
    import config_module
    
    json_args = parse_args(json_config)
    yaml_Args = parse_args(yaml_config)
    module_args = parse_args(config_module)
    also_module_args = parse_args("/path/to/module")
    
  2. Nested argument parsing. We do this by introducing the NameSpace class. To be specific, if you pass convert=True to parse_args, then all of the dicts in the config file (including the argument dict itself) will be converted to a subclass of NameSpace. The contents wrapped in NameSpace can be accessed both in dict manner and in attribute manner, and they will be formatted for better illustration when printing. For example, if we define a config module as follows:
    # in config module: config_module
    from UtilsRL.misc.namespace import NameSpace
    
    batch_size = 256
    num_epochs = 10
    class TrainerArgs(NameSpace):
        learning_rate = 1e-3
        weight_decay = 1e-5
        momentum = 0.9
        
    class ActorArgs(NameSpace):
        epsilon = 0.05
        class NetArgs(NameSpace):
            layer_num = 2
            layer_nodes = 256
    
    The we import and parse it in main.py:
    import config_module
    args = parse_args(config_module)
    print(args)
    print(">>>>>>>>>>>>>>>>>>>>>>")
    print(args.trainer.learning_rate)
    
    The outputs are
    <NameSpace: args>
    |ActorArgs:     <NameSpace: ActorArgs>
                    |epsilon: 0.05
                    |NetArgs:       <NameSpace: NetArgs>
                                    |layer_num: 2
                                    |layer_nodes: 256
    |TrainerArgs:   <NameSpace: TrainerArgs>
                    |learning_rate: 0.001
                    |weight_decay: 1e-05
                    |momentum: 0.9
    |batch_size: 256
    |num_epochs: 10
    >>>>>>>>>>>>>>>>>>>>>>
    0.001
    
  3. Argument updating. When calling UtilsRL.exp.parse_args, the command-line argument is parsed and used to overwrite the arguments defined in config file. If the specific argument is nested, then you can use dot . to separate each NameSpace, like python main.py --TrainerArgs.momentum 0.8.
    from UtilsRL.exp import parse_args
    
    # get arguments from file/config module
    # this will automatically parse arguments from command line and update them to args
    args = parse_args("/path/to/file")
    
    # manually update with command line arguments
    args = update_args(args, unknown)
    

1.2 Device and Seed Management

We provide a set of utils functions of selecting device and setting seed in UtilsRL.exp.device UtilsRL.exp.seed. Please take time and check these files.

A setup function is available in top-level UtilsRL.exp, which will setup the arguments with logger, device and seed which you provide.

from UtilsRL.exp import setup

setup(args, logger=None, device="cuda:0", seed=None)  # seed will be initialized randomly
setup(args, logger=None, device=None, seed="4234")  # a most free gpu will be selected as device

1.3 Snapshot

You can make a snapshot of the experiment code by passing --UtilsRL.snapshot <name> to the program. UtilsRL will commit all the changes to a new branch whose name is <name>, and then return to the original branch. After creating the branch, its name will be added to args. You can find its name by args.UtilsRL.snapshot_branch, and git diff that branch later to checkout the changes from which you made.

2. Monitor

Monitor listens at the main loop of the training process, and displays the process with tqdm meter.

from UtilsRL.monitor import Monitor

monitor = Monitor(desc="test_monitor")
for i in monitor.listen(range(5)):
    time.sleep(0.1)

You can register callback functions which will be triggered at certain stage of the training. For example, we can register a callback which will email us when training is done:

monitor = Monitor(desc="test_monitor")
monitor.register_callback(
    name= "email me at the end of training", 
    on = "exit", 
    callback = Monitor.email, 
    ...
)

You can also register context variables for training, which will be automatically managed by monitor. In the example below, the registered context variables (i.e. self.actor and local_var ) will be saved every 100 iters.

monitor = Monitor(desc="test_monitor", out_dir="./out")
def train():
    local_var = ...
    local_var = monitor.register_context("local_var", save_every=100)
    for i_epoch in monitor.listen(range(1000)):
        # do training
train()

As a more complex example, we can use the Monitor to resume training from a certain iteration, and restore the context variables from checkpoints:

class Trainer():
    def __init__(self):
        self.actor = ...
    
    def train(self):
        local_var = ...
        
        # load previous saved checkpoints specified by `load_path`
        self.actor, local_var = \
            monitor.register_context(["self.actor", "local_var"], load_path="/path/to/checkpoint/dir").values()
        # use `initial` to designate the start point
        for i_epoch in monitor.listen(range(1000), initial=100):
            # continue training

3. Logger

Logger provides a rather shallow capsulation for torch.utils.tensorboard.SummaryWriter.

from UtilsRL.logger import TensorboardLogger

# create a logger, with terminal output enabled and file logging disabled
logger = TensorboardLogger(log_dir="./logs", name="debug", terminal=True, txt=False) 

# log a sentence in color blue.
logger.log_str("This is a sentence", type="LOG")
# log sentence in color red. 
logger.log_str("Here occurs an error", type="ERROR") 

# log scalar and a dict of scalars repectively
logger.log_scala(tag="var_name", value=1.0, step=1)
logger.log_scalas(main_tag="group_name", tag_scalar_dict={
    "var1": 1.0, 
    "var2": 2.0
}, step=1)

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

UtilsRL-0.3.8.tar.gz (19.9 kB view details)

Uploaded Source

Built Distribution

UtilsRL-0.3.8-py3-none-any.whl (20.4 kB view details)

Uploaded Python 3

File details

Details for the file UtilsRL-0.3.8.tar.gz.

File metadata

  • Download URL: UtilsRL-0.3.8.tar.gz
  • Upload date:
  • Size: 19.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.0 CPython/3.9.12

File hashes

Hashes for UtilsRL-0.3.8.tar.gz
Algorithm Hash digest
SHA256 48dd36b27b23775b6e3448b12d18874c63982992694e7f1fc0aaac8bd2647ab8
MD5 45e4c23c1273de1511c7e4f537f27d22
BLAKE2b-256 05c39a4e29c67df0275fd238d8c2da0f7ab0c6f30254055197ff4d9845486cd3

See more details on using hashes here.

File details

Details for the file UtilsRL-0.3.8-py3-none-any.whl.

File metadata

  • Download URL: UtilsRL-0.3.8-py3-none-any.whl
  • Upload date:
  • Size: 20.4 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.0 CPython/3.9.12

File hashes

Hashes for UtilsRL-0.3.8-py3-none-any.whl
Algorithm Hash digest
SHA256 c8dfe208a34389d94a932803b2a802cd909f96c6cdf3e4c573e48fcafbc868ab
MD5 b7414e2373a181fe6b8a8f1a6d1faedb
BLAKE2b-256 c5d78d7617a4b694fda28458c33e6e8bb7483d2a57046bdff447a2b465dd2aba

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page