This site is not available on Mobile. Please return on a desktop browser.
Visit our main site at guardrailsai.com
Developed by | Guardrails AI |
Date of development | Feb 15, 2024 |
Validator type | Chatbots, QA |
Blog | |
License | Apache 2 |
Input/Output | Output |
This validator removes redundant sentences from an LLM response, resulting in a response that is more concise.
$ guardrails hub install hub://guardrails/redundant_sentences
In this example, we apply the validator to a string output generated by an LLM.
# Import Guard and Validator
from guardrails.hub import RedundantSentences
from guardrails import Guard
# Use the Guard with the validator
guard = Guard().use(
RedundantSentences, on_fail="exception"
)
# Test passing response
guard.validate(
"""
Director Denis Villeneuve's Dune is a visually stunning and epic adaptation of the classic science fiction novel.
It is reminiscent of the original Star Wars trilogy, with its grand scale and epic storytelling.
"""
)
try:
# Test failing response
guard.validate(
"""
OpenAI just released their latest language model, GPT-3. It is the most powerful language model to date.
Also, it's the most powerful language model to date.
"""
)
except Exception as e:
print(e)
Output:
Validation failed for field with errors: The summary
Summary:
OpenAI just released their latest language model, GPT-3. It is the most powerful language model to date.
Also, it's the most powerful language model to date.
has sentences
Also, it's the most powerful language model to date.
that are similar to other sentences.
__init__(self, threshold=70, on_fail="noop")
Initializes a new instance of the Validator class.
Parameters
threshold
(int): The threshold used for matching redundancy. Defaults to 70.on_fail
(str, Callable): The policy to enact when a validator fails. If str
, must be one of reask
, fix
, filter
, refrain
, noop
, exception
or fix_reask
. Otherwise, must be a function that is called when the validator fails.__call__(self, value, metadata={}) -> ValidationResult
Validates the given value
using the rules defined in this validator, relying on the metadata
provided to customize the validation process. This method is automatically invoked by guard.parse(...)
, ensuring the validation logic is applied to the input data.
Note:
guard.parse(...)
where this method will be called internally for each associated Validator.guard.parse(...)
, ensure to pass the appropriate metadata
dictionary that includes keys and values required by this validator. If guard
is associated with multiple validators, combine all necessary metadata into a single dictionary.Parameters
value
(Any): The input value to validate.metadata
(dict): A dictionary containing metadata required for validation. No additional metadata keys are needed for this validator.The validator playground is available to authenticated users. Please log in to use it.