CoCoA is a dialogue framework written in Python, providing tools for data collection through a text-based chat interface and model development in PyTorch (largely based on OpenNMT).
This repo contains code for the following tasks:
- MutualFriends: two agents, each with a private list of friends with multiple attributes (e.g. school, company), try to find their mutual friends through a conversation.
- CraigslistBargain: a buyer and a seller negotiate the price of an item for sale on Craigslist.
- DealOrNoDeal: two agents negotiate to split a group of items with different points among them. The items are books, hats and balls.
Papers:
- Learning Symmetric Collaborative Dialogue Agents with Dynamic Knowledge Graph Embeddings. He He, Anusha Balakrishnan, Mihail Eric and Percy Liang. Association for Computational Linguistics (ACL), 2017.
- Decoupling Strategy and Generation in Negotiation Dialogues. He He, Derek Chen, Anusha Balakrishnan and Percy Liang. Empirical Methods in Natural Language Processing (EMNLP), 2018.
Note:
We have not fully integrated the MutualFriends task with the cocoa
package.
For now please refer to the mutualfriends
branch for the ACL 2017 paper.
Dependencies: Python 2.7, PyTorch 0.4.1.
NOTE: MutualFriends still depends on Tensorflow 1.2 and uses different leanring modules. See details on the mutualfriends
branch.
pip install -r requirements.txt
python setup.py develop
A dialogue is grounded in a scenario. A schema defines the structure of scenarios. For example, a simple scenario that specifies the dialogue topic is
Topic |
---|
Artificial Intelligence |
and its schema (in JSON) is
{
"attributes": [
"value_type": "topic",
"name": "Topic"
]
}
A dialogue agent is instantiated in a session which receives and sends messages. A system is used to create multiple sessions (that may run in parallel) of a specific agent type. For example, system = NeuralSystem(model)
loads a trained model and system.new_session()
is called to create a new session whenever a human user is available to chat.
A dialogue controller takes two sessions and have them send/receive events until the task is finished or terminated. The most common event is message
, which sends some text data. There are also task-related events, such as select
in MutualFriends, which sends the selected item.
A dialogue is represented as an example which has a scenario, a series of events, and some metadata (e.g. example id). Examples can be read from / write to a JSON file in the following structure:
examples.json
|--[i]
| |--"uuid": "<uuid>"
| |--"scenario_uuid": "<uuid>"
| |--"scenario": "{scenario dict}"
| |--"agents": {0: "agent type", 1: "agent type"}
| |--"outcome": {"reward": R}
| |--"events"
| |--[j]
| |--"action": "action"
| |--"data": "event data"
| |--"agent": agent_id
| |--"time": "event sent time"
A dataset reads in training and testing examples from JSON files.
CoCoA is designed to be modular so that one can add their own task/modules easily.
All tasks depend on the cocoa
pacakge.
See documentation in the task folder for task-specific details.
We provide basic infrastructure (see cocoa.web
) to set up a website that pairs two users or a user and a bot to chat in a given scenario.
The first step is to create a .json
schema file and then (randomly) generate a set of scenarios that the dialogue will be situated in.
The website pairs a user with another user or a bot (if available). A dialogue scenario is displayed and the two agents can chat with each other. Users are then directed to a survey to rate their partners (optional). All dialogue events are logged in a SQL database.
Our server is built by Flask.
The backend (cocoa/web/main/backend.py
) contains code for pairing, logging, dialogue quality check.
The frontend code is in task/web/templates
.
To deploy the web server, run
cd <name-of-your-task>;
PYTHONPATH=. python web/chat_app.py --port <port> --config web/app_params.json --schema-path <path-to-schema> --scenarios-path <path-to-scenarios> --output <output-dir>
- Data and log will be saved in
<output-dir>
. Important: note that this will delete everything in<output-dir>
if it's not empty. --num-scenarios
: total number of scenarios to sample from. Each scenario will havenum_HITs / num_scenarios
chats. You can also specify ratios of number of chats for each system in the config file. Note that the final result will be an approximation of these numbers due to concurrent database calls.
To collect data from Amazon Mechanical Turk (AMT), workers should be directed to the link https://your-url:<port>/?mturk=1
.
?mturk=1
makes sure that workers will receive a Mturk code at the end of the task to submit the HIT.
Dump data from the SQL database to a JSON file (see Examples and datasets for the JSON structure).
cd <name-of-your-task>;
PYTHONPATH=. python ../scripts/web/dump_db.py --db <output-dir>/chat_state.db --output <output-dir>/transcripts/transcripts.json --surveys <output-dir>/transcripts/surveys.json --schema <path-to-schema> --scenarios-path <path-to-scenarios>
Render JSON transcript to HTML:
PYTHONPATH=. python ../scripts/visualize_transcripts.py --dialogue-transcripts <path-to-json-transcript> --html-output <path-to-output-html-file> --css-file ../chat_viewer/css/my.css
Other options for HTML visualization:
--survey-transcripts
: path tosurvey.json
if survey is enabled during data collection.--survey-only
: only visualize dialgoues with submitted surveys.--summary
: statistics of the dialogues.
To add an agent for a task, you need to implement a system <name-of-your-task>/systems/<agent-name>_system.py
and a session <name-of-your-task>/sessions/<agent-name>_session.py
.
See documentation in the under each task (e.g., ./craigslistbargain
).
To deploy bots to the web interface, add the "models"
field in the website config file,
e.g.
"models": {
"rulebased": {
"active": true,
"type": "rulebased",
}
}
See also set up the web server.