Spaces:
Runtime error
Runtime error
# + tags=["hide_inp"] | |
desc = """ | |
### Question Answering with Retrieval | |
Chain that answers questions with embeedding based retrieval. [[Code](https://github.com/srush/MiniChain/blob/main/examples/qa.py)] | |
(Adapted from [OpenAI Notebook](https://github.com/openai/openai-cookbook/blob/main/examples/Question_answering_using_embeddings.ipynb).) | |
""" | |
# - | |
# $ | |
import datasets | |
import numpy as np | |
from minichain import prompt, show, OpenAIEmbed, OpenAI | |
from manifest import Manifest | |
# We use Hugging Face Datasets as the database by assigning | |
# a FAISS index. | |
olympics = datasets.load_from_disk("olympics.data") | |
olympics.add_faiss_index("embeddings") | |
# Fast KNN retieval prompt | |
def get_neighbors(model, inp, k): | |
embedding = model(inp) | |
res = olympics.get_nearest_examples("embeddings", np.array(embedding), k) | |
return res.examples["content"] | |
def get_result(model, query, neighbors): | |
return model(dict(question=query, docs=neighbors)) | |
def qa(query): | |
n = get_neighbors(query, 3) | |
return get_result(query, n) | |
# $ | |
questions = ["Who won the 2020 Summer Olympics men's high jump?", | |
"Why was the 2020 Summer Olympics originally postponed?", | |
"In the 2020 Summer Olympics, how many gold medals did the country which won the most medals win?", | |
"What is the total number of medals won by France?", | |
"What is the tallest mountain in the world?"] | |
gradio = show(qa, | |
examples=questions, | |
subprompts=[get_neighbors, get_result], | |
description=desc, | |
code=open("qa.py", "r").read().split("$")[1].strip().strip("#").strip(), | |
) | |
if __name__ == "__main__": | |
gradio.launch() | |
# # + tags=["hide_inp"] | |
# QAPrompt().show( | |
# {"question": "Who won the race?", "docs": ["doc1", "doc2", "doc3"]}, "Joe Bob" | |
# ) | |
# # - | |
# show_log("qa.log") | |