Stock Feedback Functions¶
Classification-based¶
π€ Huggingface¶
API Reference: Huggingface.
Out of the box feedback functions calling Huggingface APIs.
context_relevance
¶
Uses Huggingface's truera/context_relevance model, a model that uses computes the relevance of a given context to the prompt. The model can be found at https://huggingface.co/truera/context_relevance.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.hugs import Huggingface
huggingface_provider = Huggingface()
feedback = (
Feedback(huggingface_provider.context_relevance)
.on_input()
.on(context)
.aggregate(np.mean)
)
groundedness_measure_with_nli
¶
A measure to track if the source material supports each sentence in the statement using an NLI model.
First the response will be split into statements using a sentence tokenizer.The NLI model will process each statement using a natural language inference model, and will use the entire source.
Example
from trulens_eval.feedback import Feedback
from trulens_eval.feedback.provider.hugs = Huggingface
huggingface_provider = Huggingface()
f_groundedness = (
Feedback(huggingface_provider.groundedness_measure_with_nli)
.on(context)
.on_output()
hallucination_evaluator
¶
Evaluates the hallucination score for a combined input of two statements as a float 0<x<1 representing a true/false boolean. if the return is greater than 0.5 the statement is evaluated as true. if the return is less than 0.5 the statement is evaluated as a hallucination.
Example
from trulens_eval.feedback.provider.hugs import Huggingface
huggingface_provider = Huggingface()
score = huggingface_provider.hallucination_evaluator("The sky is blue. [SEP] Apples are red , the grass is green.")
language_match
¶
Uses Huggingface's papluca/xlm-roberta-base-language-detection model. A
function that uses language detection on text1
and text2
and
calculates the probit difference on the language detected on text1. The
function is: 1.0 - (|probit_language_text1(text1) -
probit_language_text1(text2))
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.hugs import Huggingface
huggingface_provider = Huggingface()
feedback = Feedback(huggingface_provider.language_match).on_input_output()
The on_input_output()
selector can be changed. See Feedback Function
Guide
pii_detection
¶
NER model to detect PII.
Example
hugs = Huggingface()
# Define a pii_detection feedback function using HuggingFace.
f_pii_detection = Feedback(hugs.pii_detection).on_input()
The on(...)
selector can be changed. See Feedback Function Guide:
Selectors
pii_detection_with_cot_reasons
¶
NER model to detect PII, with reasons.
Example
hugs = Huggingface()
# Define a pii_detection feedback function using HuggingFace.
f_pii_detection = Feedback(hugs.pii_detection).on_input()
The on(...)
selector can be changed. See Feedback Function Guide
:
Selectors
Args: text: A text prompt that may contain a name.
Returns: Tuple[float, str]: A tuple containing a the likelihood that a PII is contained in the input text and a string containing what PII is detected (if any).
positive_sentiment
¶
Uses Huggingface's cardiffnlp/twitter-roberta-base-sentiment model. A
function that uses a sentiment classifier on text
.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.hugs import Huggingface
huggingface_provider = Huggingface()
feedback = Feedback(huggingface_provider.positive_sentiment).on_output()
toxic
¶
Uses Huggingface's martin-ha/toxic-comment-model model. A function that
uses a toxic comment classifier on text
.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.hugs import Huggingface
huggingface_provider = Huggingface()
feedback = Feedback(huggingface_provider.toxic).on_output()
OpenAI¶
API Reference: OpenAI.
Out of the box feedback functions calling OpenAI APIs.
Create an OpenAI Provider with out of the box feedback functions.
Example
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
moderation_harassment
¶
Uses OpenAI's Moderation API. A function that checks if text is about graphic violence.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_harassment, higher_is_better=False
).on_output()
moderation_harassment_threatening
¶
Uses OpenAI's Moderation API. A function that checks if text is about graphic violence.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_harassment_threatening, higher_is_better=False
).on_output()
moderation_hate
¶
Uses OpenAI's Moderation API. A function that checks if text is hate speech.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_hate, higher_is_better=False
).on_output()
moderation_hatethreatening
¶
Uses OpenAI's Moderation API. A function that checks if text is threatening speech.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_hatethreatening, higher_is_better=False
).on_output()
moderation_selfharm
¶
Uses OpenAI's Moderation API. A function that checks if text is about self harm.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_selfharm, higher_is_better=False
).on_output()
moderation_sexual
¶
Uses OpenAI's Moderation API. A function that checks if text is sexual speech.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_sexual, higher_is_better=False
).on_output()
moderation_sexualminors
¶
Uses OpenAI's Moderation API. A function that checks if text is about sexual minors.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_sexualminors, higher_is_better=False
).on_output()
moderation_violence
¶
Uses OpenAI's Moderation API. A function that checks if text is about violence.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_violence, higher_is_better=False
).on_output()
moderation_violencegraphic
¶
Uses OpenAI's Moderation API. A function that checks if text is about graphic violence.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
openai_provider = OpenAI()
feedback = Feedback(
openai_provider.moderation_violencegraphic, higher_is_better=False
).on_output()
Generation-based: LLMProvider¶
API Reference: LLMProvider.
An LLM-based provider.
This is an abstract class and needs to be initialized as one of these:
-
OpenAI and subclass AzureOpenAI.
-
LiteLLM. LiteLLM provides an interface to a wide range of models.
coherence
¶
Uses chat completion model. A function that completes a template to check the coherence of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.coherence).on_output()
coherence_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the coherence of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.coherence_with_cot_reasons).on_output()
comprehensiveness_with_cot_reasons
¶
Uses chat completion model. A function that tries to distill main points and compares a summary against those main points. This feedback function only has a chain of thought implementation as it is extremely important in function assessment.
Example
feedback = Feedback(provider.comprehensiveness_with_cot_reasons).on_input_output()
conciseness
¶
Uses chat completion model. A function that completes a template to check the conciseness of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.conciseness).on_output()
conciseness_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the conciseness of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.conciseness).on_output()
Args: text: The text to evaluate the conciseness of.
context_relevance
¶
Uses chat completion model. A function that completes a template to check the relevance of the context to the question.
Example
from trulens_eval.app import App
context = App.select_context(rag_app)
feedback = (
Feedback(provider.context_relevance_with_cot_reasons)
.on_input()
.on(context)
.aggregate(np.mean)
)
context_relevance_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the relevance of the context to the question. Also uses chain of thought methodology and emits the reasons.
Example
from trulens_eval.app import App
context = App.select_context(rag_app)
feedback = (
Feedback(provider.context_relevance_with_cot_reasons)
.on_input()
.on(context)
.aggregate(np.mean)
)
controversiality
¶
Uses chat completion model. A function that completes a template to check the controversiality of some text. Prompt credit to Langchain Eval.
Example
feedback = Feedback(provider.controversiality).on_output()
controversiality_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the controversiality of some text. Prompt credit to Langchain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.controversiality_with_cot_reasons).on_output()
correctness
¶
Uses chat completion model. A function that completes a template to check the correctness of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.correctness).on_output()
correctness_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the correctness of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.correctness_with_cot_reasons).on_output()
criminality
¶
Uses chat completion model. A function that completes a template to check the criminality of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.criminality).on_output()
criminality_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the criminality of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.criminality_with_cot_reasons).on_output()
generate_score
¶
Base method to generate a score only, used for evaluation.
generate_score_and_reasons
¶
Base method to generate a score and reason, used for evaluation.
groundedness_measure_with_cot_reasons
¶
A measure to track if the source material supports each sentence in the statement using an LLM provider.
The LLM will process the entire statement at once, using chain of thought methodology to emit the reasons.
Example
from trulens_eval import Feedback
from trulens_eval.feedback.provider.openai import OpenAI
provider = OpenAI()
f_groundedness = (
Feedback(provider.groundedness_measure_with_cot_reasons)
.on(context.collect()
.on_output()
)
Args: source: The source that should support the statement. statement: The statement to check groundedness.
harmfulness
¶
Uses chat completion model. A function that completes a template to check the harmfulness of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.harmfulness).on_output()
harmfulness_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the harmfulness of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.harmfulness_with_cot_reasons).on_output()
helpfulness
¶
Uses chat completion model. A function that completes a template to check the helpfulness of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.helpfulness).on_output()
helpfulness_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the helpfulness of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.helpfulness_with_cot_reasons).on_output()
insensitivity
¶
Uses chat completion model. A function that completes a template to check the insensitivity of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.insensitivity).on_output()
insensitivity_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the insensitivity of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.insensitivity_with_cot_reasons).on_output()
maliciousness
¶
Uses chat completion model. A function that completes a template to check the maliciousness of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.maliciousness).on_output()
maliciousness_with_cot_reasons
¶
Uses chat compoletion model. A function that completes a template to check the maliciousness of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.maliciousness_with_cot_reasons).on_output()
misogyny
¶
Uses chat completion model. A function that completes a template to check the misogyny of some text. Prompt credit to LangChain Eval.
Example
feedback = Feedback(provider.misogyny).on_output()
misogyny_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the misogyny of some text. Prompt credit to LangChain Eval. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.misogyny_with_cot_reasons).on_output()
model_agreement
¶
Uses chat completion model. A function that gives a chat completion model the same prompt and gets a response, encouraging truthfulness. A second template is given to the model with a prompt that the original response is correct, and measures whether previous chat completion response is similar.
Example
feedback = Feedback(provider.model_agreement).on_input_output()
qs_relevance
¶
Question statement relevance is deprecated and will be removed in future versions. Please use context relevance in its place.
qs_relevance_with_cot_reasons
¶
Question statement relevance is deprecated and will be removed in future versions. Please use context relevance in its place.
relevance
¶
Uses chat completion model. A function that completes a template to check the relevance of the response to a prompt.
Example
feedback = Feedback(provider.relevance).on_input_output()
Usage on RAG Contexts
feedback = Feedback(provider.relevance).on_input().on(
TruLlama.select_source_nodes().node.text # See note below
).aggregate(np.mean)
relevance_with_cot_reasons
¶
Uses chat completion Model. A function that completes a template to check the relevance of the response to a prompt. Also uses chain of thought methodology and emits the reasons.
Example
feedback = (
Feedback(provider.relevance_with_cot_reasons)
.on_input()
.on_output()
sentiment
¶
Uses chat completion model. A function that completes a template to check the sentiment of some text.
Example
feedback = Feedback(provider.sentiment).on_output()
sentiment_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check the sentiment of some text. Also uses chain of thought methodology and emits the reasons.
Example
feedback = Feedback(provider.sentiment_with_cot_reasons).on_output()
stereotypes
¶
Uses chat completion model. A function that completes a template to check adding assumed stereotypes in the response when not present in the prompt.
Example
feedback = Feedback(provider.stereotypes).on_input_output()
stereotypes_with_cot_reasons
¶
Uses chat completion model. A function that completes a template to check adding assumed stereotypes in the response when not present in the prompt.
Example
feedback = Feedback(provider.stereotypes_with_cot_reasons).on_input_output()
summarization_with_cot_reasons
¶
Summarization is deprecated in place of comprehensiveness. Defaulting to comprehensiveness_with_cot_reasons.
Embedding-based¶
API Reference: Embeddings.
Embedding related feedback function implementations.
cosine_distance
¶
Runs cosine distance on the query and document embeddings
Example
Below is just one example. See supported embedders: https://gpt-index.readthedocs.io/en/latest/core_modules/model_modules/embeddings/root.html from langchain.embeddings.openai import OpenAIEmbeddings
model_name = 'text-embedding-ada-002'
embed_model = OpenAIEmbeddings(
model=model_name,
openai_api_key=OPENAI_API_KEY
)
# Create the feedback function
f_embed = feedback.Embeddings(embed_model=embed_model)
f_embed_dist = feedback.Feedback(f_embed.cosine_distance) .on_input() .on(Select.Record.app.combine_documents_chain._call.args.inputs.input_documents[:].page_content)
The on(...)
selector can be changed. See Feedback Function Guide
:
Selectors
euclidean_distance
¶
Runs L2 distance on the query and document embeddings
Example
Below is just one example. See supported embedders: https://gpt-index.readthedocs.io/en/latest/core_modules/model_modules/embeddings/root.html from langchain.embeddings.openai import OpenAIEmbeddings
model_name = 'text-embedding-ada-002'
embed_model = OpenAIEmbeddings(
model=model_name,
openai_api_key=OPENAI_API_KEY
)
# Create the feedback function
f_embed = feedback.Embeddings(embed_model=embed_model)
f_embed_dist = feedback.Feedback(f_embed.euclidean_distance) .on_input() .on(Select.Record.app.combine_documents_chain._call.args.inputs.input_documents[:].page_content)
The on(...)
selector can be changed. See Feedback Function Guide
:
Selectors
manhattan_distance
¶
Runs L1 distance on the query and document embeddings
Example
Below is just one example. See supported embedders: https://gpt-index.readthedocs.io/en/latest/core_modules/model_modules/embeddings/root.html from langchain.embeddings.openai import OpenAIEmbeddings
model_name = 'text-embedding-ada-002'
embed_model = OpenAIEmbeddings(
model=model_name,
openai_api_key=OPENAI_API_KEY
)
# Create the feedback function
f_embed = feedback.Embeddings(embed_model=embed_model)
f_embed_dist = feedback.Feedback(f_embed.manhattan_distance) .on_input() .on(Select.Record.app.combine_documents_chain._call.args.inputs.input_documents[:].page_content)
The on(...)
selector can be changed. See Feedback Function Guide
:
Selectors
Combinations¶
Ground Truth Agreement¶
API Reference: GroundTruthAgreement
Measures Agreement against a Ground Truth.
agreement_measure
¶
Uses OpenAI's Chat GPT Model. A function that that measures similarity to ground truth. A second template is given to Chat GPT with a prompt that the original response is correct, and measures whether previous Chat GPT's response is similar.
Example
from trulens_eval import Feedback
from trulens_eval.feedback import GroundTruthAgreement
golden_set = [
{"query": "who invented the lightbulb?", "response": "Thomas Edison"},
{"query": "ΒΏquien invento la bombilla?", "response": "Thomas Edison"}
]
ground_truth_collection = GroundTruthAgreement(golden_set)
feedback = Feedback(ground_truth_collection.agreement_measure).on_input_output()
on_input_output()
selector can be changed. See Feedback Function Guide
bert_score
¶
Uses BERT Score. A function that that measures similarity to ground truth using bert embeddings.
Example
from trulens_eval import Feedback
from trulens_eval.feedback import GroundTruthAgreement
golden_set = [
{"query": "who invented the lightbulb?", "response": "Thomas Edison"},
{"query": "ΒΏquien invento la bombilla?", "response": "Thomas Edison"}
]
ground_truth_collection = GroundTruthAgreement(golden_set)
feedback = Feedback(ground_truth_collection.bert_score).on_input_output()
on_input_output()
selector can be changed. See Feedback Function Guide
bleu
¶
Uses BLEU Score. A function that that measures similarity to ground truth using token overlap.
Example
from trulens_eval import Feedback
from trulens_eval.feedback import GroundTruthAgreement
golden_set = [
{"query": "who invented the lightbulb?", "response": "Thomas Edison"},
{"query": "ΒΏquien invento la bombilla?", "response": "Thomas Edison"}
]
ground_truth_collection = GroundTruthAgreement(golden_set)
feedback = Feedback(ground_truth_collection.bleu).on_input_output()
on_input_output()
selector can be changed. See Feedback Function Guide
mae
¶
Method to look up the numeric expected score from a golden set and take the differnce.
Primarily used for evaluation of model generated feedback against human feedback
Example
from trulens_eval import Feedback
from trulens_eval.feedback import GroundTruthAgreement
golden_set =
{"query": "How many stomachs does a cow have?", "response": "Cows' diet relies primarily on grazing.", "expected_score": 0.4},
{"query": "Name some top dental floss brands", "response": "I don't know", "expected_score": 0.8}
]
ground_truth_collection = GroundTruthAgreement(golden_set)
f_groundtruth = Feedback(ground_truth.mae).on(Select.Record.calls[0].args.args[0]).on(Select.Record.calls[0].args.args[1]).on_output()
rouge
¶
Uses BLEU Score. A function that that measures similarity to ground truth using token overlap.