| | import time |
| | import pandas as pd |
| | from tqdm import tqdm |
| | from scipy.sparse import csr_matrix |
| | from typing import Mapping, List, Tuple, Union, Callable |
| | from bertopic.representation._base import BaseRepresentation |
| | from bertopic.representation._utils import truncate_document |
| |
|
| |
|
| | DEFAULT_PROMPT = """ |
| | This is a list of texts where each collection of texts describe a topic. After each collection of texts, the name of the topic they represent is mentioned as a short-highly-descriptive title |
| | --- |
| | Topic: |
| | Sample texts from this topic: |
| | - Traditional diets in most cultures were primarily plant-based with a little meat on top, but with the rise of industrial style meat production and factory farming, meat has become a staple food. |
| | - Meat, but especially beef, is the word food in terms of emissions. |
| | - Eating meat doesn't make you a bad person, not eating meat doesn't make you a good one. |
| | |
| | Keywords: meat beef eat eating emissions steak food health processed chicken |
| | Topic name: Environmental impacts of eating meat |
| | --- |
| | Topic: |
| | Sample texts from this topic: |
| | - I have ordered the product weeks ago but it still has not arrived! |
| | - The website mentions that it only takes a couple of days to deliver but I still have not received mine. |
| | - I got a message stating that I received the monitor but that is not true! |
| | - It took a month longer to deliver than was advised... |
| | |
| | Keywords: deliver weeks product shipping long delivery received arrived arrive week |
| | Topic name: Shipping and delivery issues |
| | --- |
| | Topic: |
| | Sample texts from this topic: |
| | [DOCUMENTS] |
| | Keywords: [KEYWORDS] |
| | Topic name:""" |
| |
|
| |
|
| | class Cohere(BaseRepresentation): |
| | """ Use the Cohere API to generate topic labels based on their |
| | generative model. |
| | |
| | Find more about their models here: |
| | https://docs.cohere.ai/docs |
| | |
| | Arguments: |
| | client: A `cohere.Client` |
| | model: Model to use within Cohere, defaults to `"xlarge"`. |
| | prompt: The prompt to be used in the model. If no prompt is given, |
| | `self.default_prompt_` is used instead. |
| | NOTE: Use `"[KEYWORDS]"` and `"[DOCUMENTS]"` in the prompt |
| | to decide where the keywords and documents need to be |
| | inserted. |
| | delay_in_seconds: The delay in seconds between consecutive prompts |
| | in order to prevent RateLimitErrors. |
| | nr_docs: The number of documents to pass to OpenAI if a prompt |
| | with the `["DOCUMENTS"]` tag is used. |
| | diversity: The diversity of documents to pass to OpenAI. |
| | Accepts values between 0 and 1. A higher |
| | values results in passing more diverse documents |
| | whereas lower values passes more similar documents. |
| | doc_length: The maximum length of each document. If a document is longer, |
| | it will be truncated. If None, the entire document is passed. |
| | tokenizer: The tokenizer used to calculate to split the document into segments |
| | used to count the length of a document. |
| | * If tokenizer is 'char', then the document is split up |
| | into characters which are counted to adhere to `doc_length` |
| | * If tokenizer is 'whitespace', the document is split up |
| | into words separated by whitespaces. These words are counted |
| | and truncated depending on `doc_length` |
| | * If tokenizer is 'vectorizer', then the internal CountVectorizer |
| | is used to tokenize the document. These tokens are counted |
| | and trunctated depending on `doc_length` |
| | * If tokenizer is a callable, then that callable is used to tokenize |
| | the document. These tokens are counted and truncated depending |
| | on `doc_length` |
| | |
| | Usage: |
| | |
| | To use this, you will need to install cohere first: |
| | |
| | `pip install cohere` |
| | |
| | Then, get yourself an API key and use Cohere's API as follows: |
| | |
| | ```python |
| | import cohere |
| | from bertopic.representation import Cohere |
| | from bertopic import BERTopic |
| | |
| | # Create your representation model |
| | co = cohere.Client(my_api_key) |
| | representation_model = Cohere(co) |
| | |
| | # Use the representation model in BERTopic on top of the default pipeline |
| | topic_model = BERTopic(representation_model=representation_model) |
| | ``` |
| | |
| | You can also use a custom prompt: |
| | |
| | ```python |
| | prompt = "I have the following documents: [DOCUMENTS]. What topic do they contain?" |
| | representation_model = Cohere(co, prompt=prompt) |
| | ``` |
| | """ |
| | def __init__(self, |
| | client, |
| | model: str = "xlarge", |
| | prompt: str = None, |
| | delay_in_seconds: float = None, |
| | nr_docs: int = 4, |
| | diversity: float = None, |
| | doc_length: int = None, |
| | tokenizer: Union[str, Callable] = None |
| | ): |
| | self.client = client |
| | self.model = model |
| | self.prompt = prompt if prompt is not None else DEFAULT_PROMPT |
| | self.default_prompt_ = DEFAULT_PROMPT |
| | self.delay_in_seconds = delay_in_seconds |
| | self.nr_docs = nr_docs |
| | self.diversity = diversity |
| | self.doc_length = doc_length |
| | self.tokenizer = tokenizer |
| | self.prompts_ = [] |
| |
|
| | def extract_topics(self, |
| | topic_model, |
| | documents: pd.DataFrame, |
| | c_tf_idf: csr_matrix, |
| | topics: Mapping[str, List[Tuple[str, float]]] |
| | ) -> Mapping[str, List[Tuple[str, float]]]: |
| | """ Extract topics |
| | |
| | Arguments: |
| | topic_model: Not used |
| | documents: Not used |
| | c_tf_idf: Not used |
| | topics: The candidate topics as calculated with c-TF-IDF |
| | |
| | Returns: |
| | updated_topics: Updated topic representations |
| | """ |
| | |
| | repr_docs_mappings, _, _, _ = topic_model._extract_representative_docs(c_tf_idf, documents, topics, 500, self.nr_docs, self.diversity) |
| |
|
| | |
| | updated_topics = {} |
| | for topic, docs in tqdm(repr_docs_mappings.items(), disable=not topic_model.verbose): |
| | truncated_docs = [truncate_document(topic_model, self.doc_length, self.tokenizer, doc) for doc in docs] |
| | prompt = self._create_prompt(truncated_docs, topic, topics) |
| | self.prompts_.append(prompt) |
| |
|
| | |
| | if self.delay_in_seconds: |
| | time.sleep(self.delay_in_seconds) |
| |
|
| | request = self.client.generate(model=self.model, |
| | prompt=prompt, |
| | max_tokens=50, |
| | num_generations=1, |
| | stop_sequences=["\n"]) |
| | label = request.generations[0].text.strip() |
| | updated_topics[topic] = [(label, 1)] + [("", 0) for _ in range(9)] |
| |
|
| | return updated_topics |
| |
|
| | def _create_prompt(self, docs, topic, topics): |
| | keywords = list(zip(*topics[topic]))[0] |
| |
|
| | |
| | if self.prompt == DEFAULT_PROMPT: |
| | prompt = self.prompt.replace("[KEYWORDS]", ", ".join(keywords)) |
| | prompt = self._replace_documents(prompt, docs) |
| |
|
| | |
| | |
| | else: |
| | prompt = self.prompt |
| | if "[KEYWORDS]" in prompt: |
| | prompt = prompt.replace("[KEYWORDS]", ", ".join(keywords)) |
| | if "[DOCUMENTS]" in prompt: |
| | prompt = self._replace_documents(prompt, docs) |
| |
|
| | return prompt |
| |
|
| | @staticmethod |
| | def _replace_documents(prompt, docs): |
| | to_replace = "" |
| | for doc in docs: |
| | to_replace += f"- {doc}\n" |
| | prompt = prompt.replace("[DOCUMENTS]", to_replace) |
| | return prompt |
| |
|