acon96's picture
Update dataset with new entity types + formats
61ba73a verified
|
raw
history blame
3.74 kB
metadata
license: mit
task_categories:
  - question-answering
  - text-generation
tags:
  - automation
  - home
  - assistant
language:
  - en
pretty_name: Home Assistant Requests
size_categories:
  - 10K<n<100k

Home Assistant Requests Dataset

This dataset contains a list of requests and responses for a user interacting with a personal assistant that controls an instance of Home Assistant.

The dataset is generated from the different CSV "piles". The "piles" contain different chunks of requests that are assembled into a final context that is presented to the LLM. For example, piles/pile_of_device_names.csv contains only names of various devices to be used as part of context as well as inserted into piles/pile_of_templated_actions.csv and piles/pile_of_status_requests.csv. The logic for assembling the final dataset from the piles is contained in generate_home_assistant_data.py.

Generating the dataset from piles

python3 generate_home_assistant_data.py --train --test --large --sharegpt

Supported dataset splits are --test, --train, & --sample Arguments to set the train dataset size are --small, --medium, --large, & --xl. Supported formats are --raw_corpus (chatml formatted) & --sharegpt

Merging with other instruct-datasets for training

python3 generate_home_assistant_data.py --merge <dataset>

Supported datasets right now are:

  • alpaca
  • wizardlm70k

Please note that the supported datasets all have different licenses. Be aware that the license of the resulting data mixture might be different that the license of this dataset alone.

Adding a new personality

In order to add a new personality, you need to define a new system prompt and new set of responses for the assistant. The system prompt is the description of the assistant's behavior that occurs at the start of the context. The responses are what is said back to the user when performing a task. The model should stil respond with the correct service call no matter what the assistant's response is. The list of system prompts are stored in pile_of_system_prompts.csv, and the list of responses are stored in pile_of_responses.csv

There are 2 columns in pile_of_system_prompts.csv:

  • persona: the name of the persona
  • prompt: the system prompt to use for that persona. Recommended to put this in quotes in case the prompt also has commas in it

The response pile is a CSV with the following headers: service,response,language,persona,short

  • service: the service name that we are responding to. Make sure you cover enough different services so that the model can learn how to respond in all situations.
  • resposne: the text of the repsonse. Recommended to put this in quotes in case the response also has commas in it
  • language: the language code of the response (currently only en is supported)
  • persona: the name of the persona the response belongs to. Use the name of your persona here
  • short: either 0 or 1. If it is 1 then the response is considered "short', and can be combined together with other "short" repsonses using "and". These are used for examples where there are multiple service calls

Generating the full dataset using the python script will print out a warning for any responses that are missing for a persona

Adding new Home Assistant functionality

TODO