Dieter Flick
Building Real-Time AI/ML Agents with Distributed Data using Apache Cassandra and Astra DB
#1about 3 minutes
Introducing the DataStax real-time data cloud
The platform combines Apache Cassandra, Apache Pulsar, and Kaskada to provide a flexible database, streaming, and machine learning solution for developers.
#2about 3 minutes
Interacting with Astra DB using GraphQL and REST APIs
A live demonstration shows how to create a schema, ingest data, and query tables in Astra DB using both GraphQL and REST API endpoints.
#3about 1 minute
Understanding real-time AI and its applications
Real-time AI leverages the most recent data to power predictive analytics and automated actions, as seen in use cases from Uber and Netflix.
#4about 2 minutes
What is Retrieval Augmented Generation (RAG)?
RAG is a pattern that allows large language models to access and use your proprietary, up-to-date data to provide contextually relevant responses.
#5about 3 minutes
Key steps for building a generative AI agent
The process involves defining the agent's purpose, choosing an LLM, selecting context data, picking an embedding model, and performing prompt engineering.
#6about 3 minutes
Exploring the architecture of a RAG system
A RAG system uses a vector database to perform a similarity search on data embeddings, finding relevant context to enrich the prompt sent to the LLM.
#7about 3 minutes
Generating vector embeddings from text content
A Jupyter Notebook demonstrates splitting source text into chunks and using an embedding model to create vector representations for storage and search.
#8about 4 minutes
The end-to-end data flow of a RAG query
A user's question is converted into an embedding, used for a similarity search in the vector store, and the results are combined with other context to build a final prompt.
#9about 3 minutes
Executing a RAG prompt to get an LLM response
The demo shows how the context-enriched prompt is sent to an LLM to generate a relevant answer, including how to add memory for conversational history.
#10about 3 minutes
Getting started with the Astra DB vector database
Resources are provided for getting started with Astra DB, including quick starts, a free tier for developers, and information on multi-cloud region support.
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Code walkthrough for building a RAG-based chatbot
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22:14 MIN
Using professional embedding models and vector databases
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15:49 MIN
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20:54 MIN
Live code demo of various AI application patterns
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Leveraging private data with local and small AI models
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01:32 MIN
How RAG provides LLMs with up-to-date context
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