SorboBot / sorbobotapp /keyword_extraction.py
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!feat: Import new sorbobot version
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from typing import Any
from langchain.chat_models import ChatOpenAI
from langchain.output_parsers import NumberedListOutputParser
from langchain.prompts import ChatPromptTemplate
from utils import str_to_list
query_template = """
You are a bi-lingual (french and english) linguistic teacher working at a top-tier university.
We are conducting a research project that requires the extraction of keywords from chatbot queries.
Below, you will find a query. Please identify and rank the three most important keywords or phrases (n-grams) based on their relevance to the main topic of the query.
For each keyword or phrase, assign it to one of the following categories: ["University / Company", "Research domain", "Country", "Name", "Other"].
An 'n-gram' refers to a contiguous sequence of words, where 'n' can be 1 for a single word, 2 for a pair of words, and so on, up to two words in length.
Please ensure not to list more than three n-grams in total.
Your expertise in linguistic analysis is crucial for the success of this project. Thank you for your contribution.
Please attach your ranked list in the following format:
1. Keyword/Phrase - Category
2. Keyword/Phrase - Category
3. Keyword/Phrase - Category
You must be concise and don't need to justify your choices.
```
{query}
```
"""
output_parser = NumberedListOutputParser()
format_instructions = output_parser.get_format_instructions()
class KeywordExtractor:
def __init__(self):
super().__init__()
self.model = ChatOpenAI()
self.prompt = ChatPromptTemplate.from_template(
template=query_template,
)
self.chain = self.prompt | self.model # | output_parser
def __call__(
self, inputs: str, filter_categories: list[str] = ["Research domain"]
) -> Any:
output = self.chain.invoke({"query": inputs})
keywords = output_parser.parse(output.content)
filtered_keywords = []
for keyword in keywords:
if " - " not in keyword:
continue
keyword, category = keyword.split(" - ", maxsplit=2)
if category in filter_categories:
filtered_keywords.append(keyword)
return filtered_keywords