talk-data.com talk-data.com

Topic

Data Streaming

realtime event_processing data_flow

8

tagged

Activity Trend

70 peak/qtr
2020-Q1 2026-Q1

Activities

Showing filtered results

Filtering by: Big Data LDN 2024 ×

Artificial Intelligence has transitioned from a niche concept to a widespread force shaping the business world's landscape. Streaming and AI integration have emerged as crucial drivers in this digital transformation era, focusing on the dynamic and real-time facets of data flow to generate contextually relevant predictions.

Businesses across diverse sectors increasingly adopt AI technology to optimise operations, stay competitive, and augment user experiences. However, AI's true potential only unfolds when applied to the right data sets, at the right moment, and within the appropriate context. In this session, Italo will discuss how AI and Streaming can work together to provide the latest and freshest data, be it about our customers, your business, or the market to your business.

In the era of AI-driven applications, personalization is paramount. This talk explores the concept of Full RAG (Retrieval-Augmented Generation) and its potential to revolutionize user experiences across industries. We examine four levels of context personalization, from basic recommendations to highly tailored, real-time interactions.

The presentation demonstrates how increasing levels of context - from batch data to streaming and real-time inputs - can dramatically improve AI model outputs. We discuss the challenges of implementing sophisticated context personalization, including data engineering complexities and the need for efficient, scalable solutions.

Introducing the concept of a Context Platform, we showcase how tools like Tecton can simplify the process of building, deploying, and managing personalized context at scale. Through practical examples in travel recommendations, we illustrate how developers can easily create and integrate batch, streaming, and real-time context using simple Python code, enabling more engaging and valuable AI-powered experiences.

Artificial Intelligence has transitioned from a niche concept to a widespread force shaping the business world's landscape. Streaming and AI integration have emerged as crucial drivers in this digital transformation era, focusing on the dynamic and real-time facets of data flow to generate contextually relevant predictions.

Businesses across diverse sectors increasingly adopt AI technology to optimise operations, stay competitive, and augment user experiences. However, AI's true potential only unfolds when applied to the right data sets, at the right moment, and within the appropriate context. In this session, Italo will discuss how AI and Streaming can work together to provide the latest and freshest data, be it about our customers, your business, or the market to your business.

Join us for an insightful fireside chat featuring Kroo Bank where as we dive into the world of data stack modernization within the fintech landscape. Kroo Bank is a rising star in the UK banking sector. They'll sit down with Aiven to share challenges and strategies when looking at their technology stack when facing the need to scale fast for their customers.

Key topics will include:

• Transitioning to a strongly asynchronous architecture to enhance performance and reliability.

• Optimizing data infrastructure for better performance and data observability.

• Exploring multi-cloud strategies and advanced streaming technologies.

• Evaluating Aiven's open source services for improved scalability, cost-efficiency, and disaster recovery.

Gain insights into how Kroo Bank plans to navigate the complexities of the digital age ensuring sustainable growth and innovation in a competitive market!

For decades, data modeling has been fragmented by use cases: applications, analytics, and machine learning/AI. This leads to data siloing and “throwing data over the wall.”

With the emergence of AI, streaming data, and “shifting left" are changing data modeling, these siloed approaches are insufficient for the diverse world of data use cases. Today's practitioners must possess an end-to-end understanding of the myriad techniques for modeling data throughout the data lifecycle. This presentation covers "mixed model arts," which advocates converging various data modeling methods and the innovations of new ones.