# Imitation Learning It is often more intuitive to simply demonstrate the behavior we want an agent to perform, rather than attempting to have it learn via trial-and-error methods. Consider our [running example](ML-Agents-Overview.md#running-example-training-npc-behaviors) of training a medic NPC : instead of indirectly training a medic with the help of a reward function, we can give the medic real world examples of observations from the game and actions from a game controller to guide the medic's behavior. Imitation Learning uses pairs of observations and actions from from a demonstration to learn a policy. [Video Link](https://youtu.be/kpb8ZkMBFYs). ## Recording Demonstrations It is possible to record demonstrations of agent behavior from the Unity Editor, and save them as assets. These demonstrations contain information on the observations, actions, and rewards for a given agent during the recording session. They can be managed from the Editor, as well as used for training with Offline Behavioral Cloning (see below). In order to record demonstrations from an agent, add the `Demonstration Recorder` component to a GameObject in the scene which contains an `Agent` component. Once added, it is possible to name the demonstration that will be recorded from the agent.
When `Record` is checked, a demonstration will be created whenever the scene is played from the Editor. Depending on the complexity of the task, anywhere from a few minutes or a few hours of demonstration data may be necessary to be useful for imitation learning. When you have recorded enough data, end the Editor play session, and a `.demo` file will be created in the `Assets/Demonstrations` folder. This file contains the demonstrations. Clicking on the file will provide metadata about the demonstration in the inspector.
## Training with Behavioral Cloning There are a variety of possible imitation learning algorithms which can be used, the simplest one of them is Behavioral Cloning. It works by collecting demonstrations from a teacher, and then simply uses them to directly learn a policy, in the same way the supervised learning for image classification or other traditional Machine Learning tasks work. ### Offline Training With offline behavioral cloning, we can use demonstrations (`.demo` files) generated using the `Demonstration Recorder` as the dataset used to train a behavior. 1. Choose an agent you would like to learn to imitate some set of demonstrations. 2. Record a set of demonstration using the `Demonstration Recorder` (see above). For illustrative purposes we will refer to this file as `AgentRecording.demo`. 3. Build the scene, assigning the agent a Learning Brain, and set the Brain to Control in the Broadcast Hub. For more information on Brains, see [here](Learning-Environment-Design-Brains.md). 4. Open the `config/offline_bc_config.yaml` file. 5. Modify the `demo_path` parameter in the file to reference the path to the demonstration file recorded in step 2. In our case this is: `./UnitySDK/Assets/Demonstrations/AgentRecording.demo` 6. Launch `mlagent-learn`, and providing `./config/offline_bc_config.yaml` as the config parameter, and your environment as the `--env` parameter. 7. (Optional) Observe training performance using Tensorboard. This will use the demonstration file to train a nerual network driven agent to directly imitate the actions provided in the demonstration. The environment will launch and be used for evaluating the agent's performance during training. ### Online Training It is also possible to provide demonstrations in realtime during training, without pre-recording a demonstration file. The steps to do this are as follows: 1. First create two Brains, one which will be the "Teacher," and the other which will be the "Student." We will assume that the names of the Brain `Assets`s are "Teacher" and "Student" respectively. 2. The "Teacher" Brain must be a **Player Brain**. You must properly configure the inputs to map to the corresponding actions. 3. The "Student" Brain must be a **Learning Brain**. 4. The Brain Parameters of both the "Teacher" and "Student" brains must be compatible with the agent. 5. Drag both the "Teacher" and "Student" brain into the Academy's `Broadcast Hub` and check the `Control` checkbox on the "Student" brain. 4. Link the Brains to the desired Agents (one Agent as the teacher and at least one Agent as a student). 5. In `config/online_bc_config.yaml`, add an entry for the "Student" Brain. Set the `trainer` parameter of this entry to `imitation`, and the `brain_to_imitate` parameter to the name of the teacher Brain: "Teacher". Additionally, set `batches_per_epoch`, which controls how much training to do each moment. Increase the `max_steps` option if you'd like to keep training the Agents for a longer period of time. 6. Launch the training process with `mlagents-learn config/online_bc_config.yaml --train --slow`, and press the :arrow_forward: button in Unity when the message _"Start training by pressing the Play button in the Unity Editor"_ is displayed on the screen 7. From the Unity window, control the Agent with the Teacher Brain by providing "teacher demonstrations" of the behavior you would like to see. 8. Watch as the Agent(s) with the student Brain attached begin to behave similarly to the demonstrations. 9. Once the Student Agents are exhibiting the desired behavior, end the training process with `CTL+C` from the command line. 10. Move the resulting `*.tf` file into the `TFModels` subdirectory of the Assets folder (or a subdirectory within Assets of your choosing) , and use with `Learning` Brain. **BC Teacher Helper** We provide a convenience utility, `BC Teacher Helper` component that you can add to the Teacher Agent.
This utility enables you to use keyboard shortcuts to do the following: 1. To start and stop recording experiences. This is useful in case you'd like to interact with the game _but not have the agents learn from these interactions_. The default command to toggle this is to press `R` on the keyboard. 2. Reset the training buffer. This enables you to instruct the agents to forget their buffer of recent experiences. This is useful if you'd like to get them to quickly learn a new behavior. The default command to reset the buffer is to press `C` on the keyboard.