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# What do people think about the Barbie (2023) movie? | |
This chatbot can help you identify what people think about the Barbie (2023) movie. You can also ask it information about the movie. | |
### How it is built: | |
The application uses Haystack's WebRetriever class to scrape reviews from the internet. It uses a simple NLP query: "IMDB movie reviews for the Barbie movie (2023)" and 100 top k results were fetched. The results were then stored into a FAISS document store. | |
To retrieve answers I used the DensePassageRetriever class from Haystack using the following models: | |
query_embedding_model="facebook/dpr-question_encoder-single-nq-base", | |
passage_embedding_model="facebook/dpr-ctx_encoder-single-nq-base", | |
The embeddings were applied onto the documents in the document store. | |
I then initialized a Haystack pipeline whose nodes include a prompt node that uses OpenAI's GPT-4 and the DensePassageRetriever node. Its user interface was built using Chainlit. | |
### How does it work? | |
1. The WebRetriever will scrape the internet for reviews of the Barbie movie (2023) based on the natural language query using the SERP API. | |
2. The WebRetriever transforms the results into Document objects which can then be saved into a FAISS document store. | |
3. The DensePassageRetriever node will apply embeddings to the documents in the document store and then it will use the embeddings to retrieve the top k results for a given query. | |
4. When a user asks a question, the PromptNode will use the top k results to generate an answer using OpenAI's GPT-4. | |