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""" | |
YouTube Video Analysis and Interaction Module | |
This module provides a comprehensive set of tools for analyzing YouTube videos, | |
extracting information, and answering questions based on video content. It leverages | |
the LangChain library for natural language processing tasks and the YouTube Transcript | |
API for fetching video transcripts. | |
Classes: | |
YouTubeTranscriptPointsExtractor: | |
Extracts and formats comments with clickable timestamps from a YouTube video transcript. | |
QuestionAnswerExtractor: | |
Processes user questions and extracts answers from video transcripts. | |
YouTubeAgent: | |
Manages the overall agent setup for interacting with YouTube videos and processing user queries. | |
Key Features: | |
- Main points formatted as youtube comment with clickable timestamps | |
- Question answering based on video content | |
- Flexible AI agent for handling various YouTube video-related tasks | |
""" | |
import os | |
import openai | |
import json | |
from typing import List, Dict, Any, Union, Type | |
from youtube_transcript_api import YouTubeTranscriptApi | |
from langchain_core.pydantic_v1 import BaseModel, Field | |
from langchain.prompts import ChatPromptTemplate, MessagesPlaceholder | |
from langchain_openai import ChatOpenAI | |
from langchain.schema.runnable import RunnableLambda, RunnablePassthrough | |
from langchain.agents import tool, AgentExecutor | |
from langchain.output_parsers.openai_functions import JsonKeyOutputFunctionsParser, JsonOutputFunctionsParser | |
from langchain.text_splitter import RecursiveCharacterTextSplitter | |
from langchain_core.utils.function_calling import convert_to_openai_function | |
from langchain.agents.output_parsers import OpenAIFunctionsAgentOutputParser | |
from langchain.agents.format_scratchpad import format_to_openai_functions | |
from langchain.memory import ConversationBufferWindowMemory | |
# _ = load_dotenv(find_dotenv()) # read local .env file | |
openai.api_key = os.getenv('OPENAI_API_KEY') #os.environ['OPENAI_API_KEY'] | |
def get_temperature(): | |
return 0 #Default value | |
def set_temperature(new_temperature): | |
global get_temperature | |
def new_get_temperature(): | |
return new_temperature | |
get_temperature = new_get_temperature | |
# print(f"Temperature set to: {get_temperature()}") | |
class TimestampedPoint_1(BaseModel): | |
"""Pydantic model for representing extracted points from Youtube-Transcript""" | |
timestamp: float = Field(description="The timestamp (in floating-point number) of when main points are discussed in the video.") | |
main_point: str = Field(description="A title for Main point.") | |
summary: str = Field(description="A summary of main points discussed at that timestamp.") | |
emoji: str = Field(description="An emoji that matches the summary.") | |
class TimestampedPoint_2(BaseModel): | |
"""Pydantic model for representing extracted points.""" | |
main_point: str = Field(description="The main topic, theme, or subject extracted from the subtitle.") | |
timestamp: float = Field(description="The timestamp (in floating-point number) from the video where the main point is mentioned.") | |
summary: str = Field(description="The context or brief explanation of the main point.") | |
emoji: str = Field(description="An emoji that represents or summarizes the main point.") | |
class YouTubeTranscriptPointsExtractor: | |
""" | |
A tool for extracting and formatting main points with clickable timestamps from YouTube video transcripts. | |
This class provides methods to process transcripts, identify key points, | |
and format them for use in YouTube comments with clickable timestamps. | |
""" | |
class PointsCollection_1(BaseModel): | |
"""Pydantic model for representing a collection of timestamped points.""" | |
points: List[TimestampedPoint_1] | |
class PointsCollection_2(BaseModel): | |
"""Pydantic model for representing a collection of timestamped points.""" | |
points: List[TimestampedPoint_2] | |
def extract_clickable_points(youtube_video_id: str) -> str: | |
""" | |
Extracts and formats comments with clickable timestamps from a YouTube video transcript. | |
Args: | |
youtube_video_id (str): The ID of the YouTube video. | |
Returns: | |
str: Formatted string of main points with clickable timestamps, ready for use in YouTube comments. | |
""" | |
try: | |
transcript = YouTubeTranscriptPointsExtractor._fetch_transcript(youtube_video_id) | |
extracted_points_1 = YouTubeTranscriptPointsExtractor._process_transcript(transcript, YouTubeTranscriptPointsExtractor.PointsCollection_1) | |
formatted_output_1 = YouTubeTranscriptPointsExtractor._format_for_youtube_comment(extracted_points_1, True) | |
formatted_output_1a = YouTubeTranscriptPointsExtractor._format_for_youtube_comment(extracted_points_1, False) | |
extracted_points_2 = YouTubeTranscriptPointsExtractor._process_transcript(transcript, YouTubeTranscriptPointsExtractor.PointsCollection_2) | |
formatted_output_2 = YouTubeTranscriptPointsExtractor._format_for_youtube_comment(extracted_points_2, True) | |
formatted_output_2a = YouTubeTranscriptPointsExtractor._format_for_youtube_comment(extracted_points_2, False) | |
return f"""Main points extracted from YouTube video (ID: {youtube_video_id})\nOutput_style_1:\n```\n{formatted_output_1}\n```\nOutput_Style_1a:\n```\n{formatted_output_1a}\n```\nOutput_Style_2a:\n```\n{formatted_output_2}\n```\nOutput_Style_2a:\n```\n{formatted_output_2a}\n```\nChoose the style that best suits your needs for presenting the main points of the video.""" | |
except Exception as e: | |
raise | |
def _fetch_transcript(youtube_video_id: str) -> str: | |
""" | |
Fetches the transcript for a YouTube video. | |
Args: | |
youtube_video_id (str): The ID of the YouTube video. | |
Returns: | |
str: The full transcript of the video. | |
Raises: | |
Exception: If there's an error fetching the transcript. | |
""" | |
try: | |
transcript_json = YouTubeTranscriptApi.get_transcript(youtube_video_id) | |
transcript_data = [f"{entry['start']:.2f}: {entry['text']} " for entry in transcript_json] | |
return "".join(transcript_data) | |
except Exception as e: | |
raise | |
def _process_transcript(transcript: str, info_model: Union[Type[PointsCollection_1], Type[PointsCollection_2]]) -> List[Dict[str, Any]]: | |
""" | |
Extracts main points from the transcript using NLP techniques. | |
This method maintains a conversation history to provide context for subsequent calls. | |
Args: | |
transcript (str): The full transcript of the video. | |
Returns: | |
List[Dict[str, Any]]: A list of dictionaries containing extracted main points. | |
""" | |
main_points_extraction_function = [convert_to_openai_function(info_model)] | |
model = ChatOpenAI(temperature=get_temperature()) | |
extraction_model = model.bind(functions=main_points_extraction_function, function_call={"name": info_model.__name__}) | |
system_message = f""" | |
You are an AI assistant that extracts essential info from video transcripts. | |
You have the authority to make improvements as you see fit. | |
Rules To Follow: | |
- Refining the summaries for clarity and conciseness. | |
- Adjusting emoji choices to better represent the content. | |
- Removing redundant information. | |
- Grouping two points into a single point if the timestamps are close enough. | |
Your goal is to produce a refined and accurate representation of the main points from the video transcript. Use your judgment to balance adherence to the specific rules with overall improvement of the extracted information. | |
""" | |
prompt = ChatPromptTemplate.from_messages([ | |
("system", system_message), | |
("human", "{input}") | |
]) | |
extraction_chain = prompt | extraction_model | JsonKeyOutputFunctionsParser(key_name="points") | |
text_splitter = RecursiveCharacterTextSplitter(chunk_overlap=0, chunk_size=16000, separators=[f" {char}" for char in "123456789"]) | |
prep = RunnableLambda(lambda x: [{"input": doc} for doc in text_splitter.split_text(x)]) | |
chain = prep | extraction_chain.map() | YouTubeTranscriptPointsExtractor._flatten | |
result_1 = chain.invoke(transcript) | |
return result_1 | |
def _flatten(matrix): | |
"""Flattens a 2D list into a 1D list.""" | |
return [item for row in matrix for item in row] | |
def _format_for_youtube_comment(points: List[Dict[str, Any]], detailed: bool = True) -> str: | |
""" | |
Formats extracted main points into a YouTube-style comment with clickable timestamps. | |
Args: | |
points (List[Dict[str, Any]]): List of dictionaries containing main points with timestamps. | |
detailed (bool): If True, returns a detailed format with emojis and summaries. | |
If False, returns a simpler format with just timestamps and main points. | |
Returns: | |
str: Formatted string representing the main points as a YouTube comment with clickable timestamps. | |
""" | |
def _format_timestamp(seconds): | |
hours = int(seconds // 3600) | |
minutes = int((seconds % 3600) // 60) | |
seconds = int(seconds % 60) | |
return f"{hours:02}:{minutes:02}:{seconds:02}" | |
formatted_comment = "" | |
for point in points: | |
timestamp = _format_timestamp(point['timestamp']) | |
main_point = point['main_point'].rstrip('.') | |
if detailed: | |
emoji = point['emoji'] | |
summary = point['summary'] | |
formatted_comment += f"{timestamp} {emoji} {main_point}: {summary}\n" | |
else: | |
formatted_comment += f"{timestamp} {main_point}\n" | |
return formatted_comment.strip() | |
class Answer(BaseModel): | |
"""Pydantic model for representing an answer to a question.""" | |
answer: str = Field(description="The answer to the user's question based on the video transcript.") | |
confidence: float = Field(description="A confidence score between 0 and 1 indicating how certain the model is about the answer.") | |
class QuestionAnswerExtractor: | |
""" | |
A tool for answering questions about YouTube videos based on their transcripts. | |
This class provides methods to process transcripts and generate answers to user questions | |
using natural language processing techniques. | |
""" | |
class Info(BaseModel): | |
"""Pydantic model for representing a collection of answers.""" | |
answers: List[Answer] | |
def get_answer(youtube_video_id: str, question: str) -> str: | |
""" | |
Answers a question about a YouTube video based on its transcript. | |
Args: | |
youtube_video_id (str): The ID of the YouTube video. | |
question (str): The user's question about the video. | |
Returns: | |
str: Formatted string containing the answer to the user's question. | |
""" | |
try: | |
transcript = QuestionAnswerExtractor._get_youtube_video_transcript(youtube_video_id) | |
answer = QuestionAnswerExtractor._extract_answer(transcript, question) | |
return answer | |
except Exception as e: | |
return f"Error answering question: {str(e)}" | |
def _get_youtube_video_transcript(youtube_video_id: str) -> str: | |
""" | |
Fetches the transcript for a YouTube video. | |
Args: | |
youtube_video_id (str): The ID of the YouTube video. | |
Returns: | |
str: The full transcript of the video. | |
Raises: | |
Exception: If there's an error fetching the transcript. | |
""" | |
try: | |
transcript_json = YouTubeTranscriptApi.get_transcript(youtube_video_id) | |
transcript_data = [entry['text'] for entry in transcript_json] | |
return " ".join(transcript_data) | |
except Exception as e: | |
raise | |
def _extract_answer(transcript: str, question: str) -> List[Answer]: | |
""" | |
Extracts an answer to the user's question from the YouTube video transcript. | |
Args: | |
transcript (str): The full transcript of the video. | |
question (str): The user's question about the video. | |
Returns: | |
List[Answer]: A list containing a single Answer object with the consolidated answer. | |
""" | |
answer_extraction_function = [convert_to_openai_function(QuestionAnswerExtractor.Info)] | |
model = ChatOpenAI(temperature=get_temperature()) | |
extraction_model = model.bind(functions=answer_extraction_function, function_call={"name": "Info"}) | |
prompt = ChatPromptTemplate.from_messages([ | |
("system", "You are an AI assistant tasked with answering questions about a video based on its transcript."), | |
("human", "Transcript: {transcript}\n\nQuestion: {question}\n\nProvide an answer to the question based on the transcript, along with a confidence score.") | |
]) | |
extraction_chain = prompt | extraction_model | JsonKeyOutputFunctionsParser(key_name="answers") | |
text_splitter = RecursiveCharacterTextSplitter(chunk_overlap=192, chunk_size=8000, separators=[f" {char}" for char in "ABCDEFGHIJKLMNOPQRSTUVWXYZ"]) | |
def prepare_input(x): | |
chunks = text_splitter.split_text(x['transcript']) | |
return [{"transcript": chunk, "question": x['question']} for chunk in chunks] | |
prep = RunnableLambda(prepare_input) | |
chain = prep | extraction_chain.map() | QuestionAnswerExtractor._flatten | |
# Get partial answers | |
partial_answers = chain.invoke({"transcript": transcript, "question": question}) | |
# Filter out low-confidence answers | |
filtered_answers = [answer for answer in partial_answers if answer['confidence'] > 0.4] | |
# If all answers were filtered out, return a low-confidence "no answer" response | |
if not filtered_answers: | |
return "I couldn't find a reliable answer to your question based on the video transcript." | |
# Consolidate filtered partial answers | |
consolidation_prompt = ChatPromptTemplate.from_messages([ | |
("system", "You are an AI assistant tasked with consolidating multiple partial answers into a comprehensive final answer."), | |
("human", "Question: {question}\n\nPartial Answers: {partial_answers}\n\nPlease provide a consolidated, comprehensive answer to the question based on these partial answers. Ignore any information from answers with low confidence (0.5 or below).") | |
]) | |
consolidation_model = ChatOpenAI(temperature=get_temperature()) | |
consolidation_chain = consolidation_prompt | consolidation_model | |
final_answer = consolidation_chain.invoke({ | |
"question": question, | |
"partial_answers": json.dumps(filtered_answers, indent=2) | |
}) | |
return final_answer.content | |
def _flatten(matrix): | |
"""Flattens a 2D list into a 1D list.""" | |
return [item for row in matrix for item in row] | |
class YouTubeAgent: | |
""" | |
An agent for interacting with YouTube videos and processing user queries. | |
This class sets up the necessary components for an AI agent that can understand | |
and respond to user queries about YouTube videos. | |
""" | |
def __init__(self): | |
"""Initializes the YouTubeAgent with necessary tools and components.""" | |
self.tools = [ | |
QuestionAnswerExtractor.get_answer, | |
YouTubeTranscriptPointsExtractor.extract_clickable_points, | |
] | |
self.sys_message = """You are a helpful assistant. | |
Important instructions: | |
1. Only use the 'extract_clickable_points' tool when the user explicitly asks for clickable points or timestamps from a video. | |
2. For all other queries, including general questions about video content, use the 'get_answer' tool. | |
3. If the user's query is unclear, ask for clarification before using any tools. | |
4. Always provide concise and relevant responses based on the tool outputs. | |
Remember to interpret the user's intent carefully and use the appropriate tools.""" | |
self.functions = [convert_to_openai_function(f) for f in self.tools] | |
self.model = ChatOpenAI(temperature=get_temperature()).bind(functions=self.functions) | |
self.prompt = ChatPromptTemplate.from_messages([ | |
("system", self.sys_message), | |
MessagesPlaceholder(variable_name="history"), | |
("user", "{input}"), | |
MessagesPlaceholder(variable_name="agent_scratchpad") | |
]) | |
self.agent_chain = RunnablePassthrough.assign( | |
agent_scratchpad= lambda x: format_to_openai_functions(x["intermediate_steps"]) | |
) | self.prompt | self.model | OpenAIFunctionsAgentOutputParser() | |
self.memory = ConversationBufferWindowMemory(k=3, return_messages=True, memory_key="history") | |
self.agent_executor = AgentExecutor(agent=self.agent_chain, tools=self.tools, memory=self.memory) | |
def invoke(self, input_text: str) -> str: | |
""" | |
Processes a user input and returns the agent's response. | |
Args: | |
input_text (str): The user's input query. | |
Returns: | |
str: The agent's response to the user's query. | |
""" | |
try: | |
result = self.agent_executor.invoke({"input": input_text}) | |
return result['output'] | |
except Exception as e: | |
return f"An error occurred: {str(e)}" | |
# youtube_agent = YouTubeAgent() | |
# video_link = "https://www.youtube.com/watch?v=-OSxeoIAs2w" | |
# main_points = youtube_agent.invoke(f"The race involves which challenges in the following video {video_link}") |