The embedding process converts text to an N-dimensional vector
- Search : where results are ranked by relevance to a query string
- Clustering : where text strings are grouped by similarity
- Recommendations : Where items with related text strings are recommended
- Anomaly Detection : where outliers with little relatedness are identified
- Diversity Measurement: where similarity distributions are analysed
- Classification : where text strings are classified by their most similar label
Developed a sophisticated approach to enhance question answering by utilizing text embedding techniques. The project focuses on converting textual information related to start-ups into vectors, subsequently integrating these vectors to add contextual understanding to queries. The central objective was to improve the performance of a query completion model by providing relevant context.
Employed advanced text embedding methodologies to transform start-up information into numerical vectors. Integrated these vectors to enrich queries with context, enhancing the query completion model's response accuracy. Implemented document similarity using cosine similarity to identify the most relevant context for a given query. Achieved enhanced performance in question answering through the injected contextual understanding.
- Text Embedding
- Natural Language Processing (NLP)
- Document Similarity
- OpenAi API
- Prompt Engineering