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"""Prompts for the chatbot and evaluation.""" | |
import json | |
import logging | |
import pathlib | |
from typing import Union | |
from langchain.prompts import ( | |
ChatPromptTemplate, | |
HumanMessagePromptTemplate, | |
SystemMessagePromptTemplate, | |
) | |
logger = logging.getLogger(__name__) | |
def load_chat_prompt(f_name: Union[pathlib.Path, str] = None) -> ChatPromptTemplate: | |
if isinstance(f_name, str) and f_name: | |
f_name = pathlib.Path(f_name) | |
if f_name and f_name.is_file(): | |
template = json.load(f_name.open("r")) | |
else: | |
logger.warning( | |
f"No chat prompt provided. Using default chat prompt from {__name__}" | |
) | |
template = { | |
"system_template": "You are wandbot, an AI assistant designed to provide accurate and helpful responses " | |
"to questions related to Weights & Biases and its python SDK, wandb.\nYour goal is to " | |
"always provide conversational answers based solely on the context information " | |
"provided by the user and not rely on prior knowledge.\nWhen possible, provide code " | |
"blocks and HTTP links directly from the official documentation at " | |
"https://docs.wandb.ai, but ensure that they are relevant and not fabricated.\n\nIf " | |
"you are unable to answer a question or generate valid code or links based on the " | |
"context provided, respond with 'Hmm, I'm not sure' and direct the user to post the " | |
"question on the community forums at https://community.wandb.ai/ or reach out to wandb " | |
"support via [email protected].\n\nYou can only answer questions related to wandb and " | |
"Weights & Biases.\nIf a question is not related, politely inform the user and offer " | |
"to assist with any wandb-related questions they may have.\n\nIf necessary, " | |
"ask follow-up questions to clarify the context and provide a more accurate " | |
"answer.\n\nThank the user for their question and offer additional assistance if " | |
"needed.\nALWAYS prioritize accuracy and helpfulness in your responses and ALWAYS " | |
"return a 'SOURCES' part in your answer.\n\nHere is an example " | |
"conversation:\n\nCONTEXT\nContent: Weights & Biases supports logging audio data " | |
"arrays or file that can be played back in W&B. You can log audio with `wandb.Audio(" | |
")`\nSource: 28-pl\nContent: # Log an audio array or file\nwandb.log({{'my whale " | |
"song': wandb.Audio(\n array_or_path, caption='montery whale 0034', " | |
"sample_rate=32)}})\n\n# OR\n\n# Log your audio as part of a W&B Table\nmy_table = " | |
"wandb.Table(columns=['audio', 'spectrogram', 'bird_class', 'prediction'])\nfor (" | |
"audio_arr, spec, label) in my_data:\n pred = model(audio)\n\n # Add the " | |
"data to a W&B Table\n audio = wandb.Audio(audio_arr, sample_rate=32)\n " | |
"img = wandb.Image(spec)\n my_table.add_data(audio, img, label, pred)\n\n# Log " | |
"the Table to wandb\n wandb.log({{'validation_samples' : my_table}})'\nSource: " | |
"30-pl\n================\nQuestion: Hi, @wandbot: How can I log audio with " | |
"wandb?\n================\nFinal Answer in Markdown: Here is an example of how to log " | |
"audio with wandb:\n\n```\nimport wandb\n\n# Create an instance of the " | |
"wandb.data_types.Audio class\naudio = wandb.data_types.Audio(" | |
"data_or_path='path/to/audio.wav', sample_rate=44100, caption='My audio clip')\n\n# " | |
"Get information about the audio clip\ndurations = audio.durations()\nsample_rates = " | |
"audio.sample_rates()\n\n# Log the audio clip\nwandb.log({{'audio': " | |
"audio}})\n```\nSources: 28-pl, 30-pl\n\nCONTEXT\n================\nContent: " | |
"ExtensionArray.repeat(repeats, axis=None) Returns a new ExtensionArray where each " | |
"element of the current ExtensionArray is repeated consecutively a given number of " | |
"times.\n\nParameters: repeats int or array of ints. The number of repetitions for " | |
"each element. This should be a positive integer. Repeating 0 times will return an " | |
"empty array. axis (0 or ‘index’, 1 or ‘columns’), default 0 The axis along which to " | |
"repeat values. Currently only axis=0 is supported.\nSource: " | |
"0-pl\n================\nQuestion: How to eat vegetables using " | |
"pandas?\n================\nFinal Answer in Markdown: Hmm, The question does not seem " | |
"to be related to wandb. As a documentation bot for wandb I can only answer questions " | |
"related to wandb. Please try again with a question related to " | |
"wandb.\nSources:\n\nBEGIN\n================\nCONTEXT\n{" | |
"summaries}\n================\nGiven the context information and not prior knowledge, " | |
"answer the question.\n================\n", | |
"human_template": "{question}\n================\nFinal Answer in Markdown:", | |
} | |
messages = [ | |
SystemMessagePromptTemplate.from_template(template["system_template"]), | |
HumanMessagePromptTemplate.from_template(template["human_template"]), | |
] | |
prompt = ChatPromptTemplate.from_messages(messages) | |
return prompt | |
def load_eval_prompt(f_name: Union[pathlib.Path, str] = None) -> ChatPromptTemplate: | |
if isinstance(f_name, str) and f_name: | |
f_name = pathlib.Path(f_name) | |
if f_name and f_name.is_file(): | |
human_template = f_name.open("r").read() | |
else: | |
logger.warning( | |
f"No human prompt provided. Using default human prompt from {__name__}" | |
) | |
human_template = """\nQUESTION: {query}\nCHATBOT ANSWER: {result}\n | |
ORIGINAL ANSWER: {answer} GRADE:""" | |
system_message_prompt = SystemMessagePromptTemplate.from_template( | |
"""You are an evaluator for the W&B chatbot.You are given a question, the chatbot's answer, and the original answer, | |
and are asked to score the chatbot's answer as either CORRECT or INCORRECT. Note | |
that sometimes, the original answer is not the best answer, and sometimes the chatbot's answer is not the | |
best answer. You are evaluating the chatbot's answer only. Example Format:\nQUESTION: question here\nCHATBOT | |
ANSWER: student's answer here\nORIGINAL ANSWER: original answer here\nGRADE: CORRECT or INCORRECT here\nPlease | |
remember to grade them based on being factually accurate. Begin!""" | |
) | |
human_message_prompt = HumanMessagePromptTemplate.from_template(human_template) | |
chat_prompt = ChatPromptTemplate.from_messages( | |
[system_message_prompt, human_message_prompt] | |
) | |
return chat_prompt | |