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.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
02:42 MIN
Powering real-time AI with retrieval augmented generation
Scrape, Train, Predict: The Lifecycle of Data for AI Applications
09:46 MIN
Code walkthrough for building a RAG-based chatbot
Creating Industry ready solutions with LLM Models
03:08 MIN
Leveraging Astra DB for high-relevance vector search
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
02:05 MIN
Simplifying retrieval-augmented generation (RAG) pipelines
One AI API to Power Them All
05:56 MIN
Demo of a RAG application with Podman AI Lab
Containers and Kubernetes made easy: Deep dive into Podman Desktop and new AI capabilities
03:15 MIN
The new AI engineer role and the RAG pipeline
Chatbots are going to destroy infrastructures and your cloud bills
00:56 MIN
Strategies for integrating local LLMs with your data
Self-Hosted LLMs: From Zero to Inference
04:50 MIN
Implementing retrieval augmented generation with a vector store
Building AI-Driven Spring Applications With Spring AI
Featured Partners
Related Videos
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
Dieter Flick & Michel de Ru
Build RAG from Scratch
Phil Nash
Carl Lapierre - Exploring Advanced Patterns in Retrieval-Augmented Generation
Carl Lapierre
Building Blocks of RAG: From Understanding to Implementation
Ashish Sharma
Langchain4J - An Introduction for Impatient Developers
Juarez Junior
Building AI Applications with LangChain and Node.js
Julián Duque
Make it simple, using generative AI to accelerate learning
Duan Lightfoot
Large Language Models ❤️ Knowledge Graphs
Michael Hunger
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.





Commerz Direktservice GmbH
Duisburg, Germany
Intermediate
Senior

webLyzard
Vienna, Austria
DevOps
Docker
PostgreSQL
Kubernetes
Elasticsearch
+2


Amdocs
Kontich, Belgium
Senior
Terraform
Kubernetes
Machine Learning
Continuous Integration

Crossover
Linz, Austria
Remote
€100K
Senior
Node.js