# agents **Repository Path**: deeplearningrepos/agents ## Basic Information - **Project Name**: agents - **Description**: TF-Agents: A reliable, scalable and easy to use TensorFlow library for Contextual Bandits and Reinforcement Learning. - **Primary Language**: Unknown - **License**: Apache-2.0 - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2021-03-30 - **Last Updated**: 2021-08-31 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # TF-Agents: A reliable, scalable and easy to use TensorFlow library for Contextual Bandits and Reinforcement Learning. [![PyPI tf-agents](https://badge.fury.io/py/tf-agents.svg)](https://badge.fury.io/py/tf-agents) [TF-Agents](https://github.com/tensorflow/agents) makes implementing, deploying, and testing new Bandits and RL algorithms easier. It provides well tested and modular components that can be modified and extended. It enables fast code iteration, with good test integration and benchmarking. To get started, we recommend checking out one of our Colab tutorials. If you need an intro to RL (or a quick recap), [start here](docs/tutorials/0_intro_rl.ipynb). Otherwise, check out our [DQN tutorial](docs/tutorials/1_dqn_tutorial.ipynb) to get an agent up and running in the Cartpole environment. API documentation for the current stable release is on [tensorflow.org](https://www.tensorflow.org/agents/api_docs/python/tf_agents). TF-Agents is under active development and interfaces may change at any time. Feedback and comments are welcome. ## Table of contents Agents
Tutorials
Multi-Armed Bandits
Examples
Installation
Contributing
Releases
Principles
Citation
Disclaimer
## Agents In TF-Agents, the core elements of RL algorithms are implemented as `Agents`. An agent encompasses two main responsibilities: defining a Policy to interact with the Environment, and how to learn/train that Policy from collected experience. Currently the following algorithms are available under TF-Agents: * [DQN: __Human level control through deep reinforcement learning__ Mnih et al., 2015](https://deepmind.com/research/dqn/) * [DDQN: __Deep Reinforcement Learning with Double Q-learning__ Hasselt et al., 2015](https://arxiv.org/abs/1509.06461) * [DDPG: __Continuous control with deep reinforcement learning__ Lillicrap et al., 2015](https://arxiv.org/abs/1509.02971) * [TD3: __Addressing Function Approximation Error in Actor-Critic Methods__ Fujimoto et al., 2018](https://arxiv.org/abs/1802.09477) * [REINFORCE: __Simple Statistical Gradient-Following Algorithms for Connectionist Reinforcement Learning__ Williams, 1992](https://www-anw.cs.umass.edu/~barto/courses/cs687/williams92simple.pdf) * [PPO: __Proximal Policy Optimization Algorithms__ Schulman et al., 2017](https://arxiv.org/abs/1707.06347) * [SAC: __Soft Actor Critic__ Haarnoja et al., 2018](https://arxiv.org/abs/1812.05905) ## Tutorials See [`docs/tutorials/`](docs/tutorials) for tutorials on the major components provided. ## Multi-Armed Bandits The TF-Agents library contains a comprehensive Multi-Armed Bandits suite, including Bandits environments and agents. RL agents can also be used on Bandit environments. There is a tutorial in [`bandits_tutorial.ipynb`](https://github.com/tensorflow/agents/tree/master/docs/tutorials/bandits_tutorial.ipynb). and ready-to-run examples in [`tf_agents/bandits/agents/examples/v2`](https://github.com/tensorflow/agents/tree/master/tf_agents/bandits/agents/examples/v2). ## Examples End-to-end examples training agents can be found under each agent directory. e.g.: * DQN: [`tf_agents/agents/dqn/examples/v2/train_eval.py`](https://github.com/tensorflow/agents/tree/master/tf_agents/agents/dqn/examples/v2/train_eval.py) ## Installation TF-Agents publishes nightly and stable builds. For a list of releases read the Releases section. The commands below cover installing TF-Agents stable and nightly from [pypi.org](https://pypi.org) as well as from a GitHub clone. ### Stable Run the commands below to install the most recent stable release. API documentation for the release is on [tensorflow.org](https://www.tensorflow.org/agents/api_docs/python/tf_agents). ```shell $ pip install --user tf-agents[reverb] # Use this tag get the matching examples and colabs. $ git clone https://github.com/tensorflow/agents.git $ cd agents $ git checkout v0.6.0 ``` If you want to install TF-Agents with versions of Tensorflow or [Reverb](https://github.com/deepmind/reverb) that are flagged as not compatible by the pip dependency check, use the following pattern below at your own risk. ```shell $ pip install --user tensorflow $ pip install --user dm-reverb $ pip install --user tf-agents ``` If you want to use TF-Agents with TensorFlow 1.15 or 2.0, install version 0.3.0: ```shell # Newer versions of tensorflow-probability require newer versions of TensorFlow. $ pip install tensorflow-probability==0.8.0 $ pip install tf-agents==0.3.0 ``` ### Nightly Nightly builds include newer features, but may be less stable than the versioned releases. The nightly build is pushed as `tf-agents-nightly`. We suggest installing nightly versions of TensorFlow (`tf-nightly`) and TensorFlow Probability (`tfp-nightly`) as those are the versions TF-Agents nightly are tested against. To install the nightly build version, run the following: ```shell # `--force-reinstall helps guarantee the right versions. $ pip install --user --force-reinstall tf-nightly $ pip install --user --force-reinstall tfp-nightly $ pip install --user --force-reinstall dm-reverb-nightly # Installing with the `--upgrade` flag ensures you'll get the latest version. $ pip install --user --upgrade tf-agents-nightly ``` ### From GitHub After cloning the repository, the dependencies can be installed by running `pip install -e .[tests]`. TensorFlow needs to be installed independently: `pip install --user tf-nightly`. ## Contributing We're eager to collaborate with you! See [`CONTRIBUTING.md`](CONTRIBUTING.md) for a guide on how to contribute. This project adheres to TensorFlow's [code of conduct](CODE_OF_CONDUCT.md). By participating, you are expected to uphold this code. ## Releases TF Agents has stable and nightly releases. The nightly releases are often fine but can have issues due to upstream libraries being in flux. The table below lists the version(s) of TensorFlow tested with each TF Agents' release to help users that may be locked into a specific version of TensorFlow. 0.3.0 was the last release compatible with Python 2. Release | Branch / Tag | TensorFlow Version ------- | ---------------------------------------------------------- | ------------------ Nightly | [master](https://github.com/tensorflow/agents) | tf-nightly 0.7.1 | [v0.7.1](https://github.com/tensorflow/agents/tree/v0.7.1) | 2.4.0 0.6.0 | [v0.6.0](https://github.com/tensorflow/agents/tree/v0.6.0) | 2.3.0 0.5.0 | [v0.5.0](https://github.com/tensorflow/agents/tree/v0.5.0) | 2.2.0 0.4.0 | [v0.4.0](https://github.com/tensorflow/agents/tree/v0.4.0) | 2.1.0 0.3.0 | [v0.3.0](https://github.com/tensorflow/agents/tree/v0.3.0) | 1.15.0 and 2.0.0 ## Principles This project adheres to [Google's AI principles](PRINCIPLES.md). By participating, using or contributing to this project you are expected to adhere to these principles. ## Citation If you use this code, please cite it as: ``` @misc{TFAgents, title = {{TF-Agents}: A library for Reinforcement Learning in TensorFlow}, author = {Sergio Guadarrama and Anoop Korattikara and Oscar Ramirez and Pablo Castro and Ethan Holly and Sam Fishman and Ke Wang and Ekaterina Gonina and Neal Wu and Efi Kokiopoulou and Luciano Sbaiz and Jamie Smith and Gábor Bartók and Jesse Berent and Chris Harris and Vincent Vanhoucke and Eugene Brevdo}, howpublished = {\url{https://github.com/tensorflow/agents}}, url = "https://github.com/tensorflow/agents", year = 2018, note = "[Online; accessed 25-June-2019]" } ``` ## Disclaimer This is not an official Google product.