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AEPsych is a tool for adaptive experimentation in psychophysics and perception research, built on top of gpytorch and botorch.

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AEPsych

AEPsych is a framework and library for adaptive experimetation in psychophysics and related domains.

Installation

AEPsych only supports python 3.10+. We recommend installing AEPsych under a virtual environment like Anaconda. Once you've created a virtual environment for AEPsych and activated it, you can install AEPsych using pip:

pip install aepsych

If you're a developer or want to use the latest features, you can install from GitHub using:

git clone https://github.com/facebookresearch/aepsych.git
cd aepsych
pip install -e .[dev]

Usage

See the code examples here.

The canonical way of using AEPsych is to launch it in server mode (you can run aepsych_server --help to see additional arguments):

aepsych_server --port 5555 --ip 0.0.0.0 --db mydatabase.db

The server accepts messages over a unix socket, and all messages are formatted using JSON. All messages have the following format:

{
     "type":<TYPE>,
     "message":<MESSAGE>,
}

There are five message types: setup, resume, ask, tell and exit (see aepsych/server/message_handlers for the full set of messages).

Setup

The setup message prepares the server for making suggestions and accepting data. The setup message can be formatted as either INI or a python dict (similar to JSON) format, and an example for psychometric threshold estimation is given in configs/single_lse_example.ini. It looks like this:

{
    "type":"setup",
    "message":{"config_str":<PASTED CONFIG STRING>}
}

After receiving a setup message, the server responds with a strategy index that can be used to resume this setup (for example, for interleaving multiple experiments).

Resume

The resume message tells the server to resume a strategy from earlier in the same run. It looks like this:

{
    "type":"resume",
    "message":{"strat_id":"0"}
}

After receiving a resume message, the server responds with the strategy index resumed.

Ask

The ask message queries the server for the next trial configuration. It looks like this:

{
    "type":"ask",
    "message":""
}

After receiving an ask message, the server responds with a configuration in JSON format, for example {"frequency":100, "intensity":0.8}

Tell

The tell message updates the server with the outcome for a trial configuration. Note that the tell does not need to match with a previously ask'd trial. For example, if you are interleaving AEPsych runs with a classical staircase, you can still feed AEPsych with the staircase data. A message looks like this:

{
    "type":"tell",
    "message":{
        "config":{
                "frequency":100,
                "intensity":0.8
            },
        "outcome":"1",
    }
}

Exit

The exit message tells the server to close the socket connection, write strats into the database and terminate current session. The message is:

{
    "type":"exit",
}

The server closes the connection.

Data export and visualization

The data is logged to a SQLite database on disk (by default, databases/default.db). The database has one table containing all experiment sessions that were run. Then, for each experiment there is a table containing all messages sent and received by the server, capable of supporting a full replay of the experiment from the server's perspective. This table can be summarized into a data frame output (docs forthcoming) and used to visualize data (docs forthcoming).

Contributing

See the CONTRIBUTING file for how to help out.

License

AEPsych licensed CC-BY-NC 4.0, as found in the LICENSE file.

Citing

The AEPsych paper is currently under review. In the meanwhile, you can cite our preprint:

Owen, L., Browder, J., Letham, B., Stocek, G., Tymms, C., & Shvartsman, M. (2021). Adaptive Nonparametric Psychophysics. http://arxiv.org/abs/2104.09549

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AEPsych is a tool for adaptive experimentation in psychophysics and perception research, built on top of gpytorch and botorch.

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