Unfortunately, most current chatbots are limited due to their reliance on static trainingdata.

Data outputted by these systems can be obsolete, limiting our ability to gain real-time information for our queries.

To overcome these issues, advanced techniques like Retrieval-Augmented Generation (RAG) have emerged.

The key technologies fuelling chatbot evolution

It’s free, every week, in your inbox.

However, as mentioned previously, these chatbots face several challenges.

Furthermore, without real-time data integration, chatbots may experience hallucinations and inaccuracies.

Article image

This approach significantly improves contextual understanding, accuracy, and relevance in AI models.

Some popular vector databases are Pinecone, Weaviate, Milvus, Neo4j, and Qdrant.

They can process high-dimensional data for RAG systems that require complex vector operations.