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Event

gartner-data-analytics-us-2026

Gartner

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4

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Use These 7 Techniques to Improve Advanced RAG Systems and Deliver Business Value

2026-03-11
talk
Kjell Carlsson (Gartner)
RAG

Organizations now have more options to build effective RAG systems, and those options come with confusion. Many organizations are looking to capitalize on new innovations such as long context windows, knowledge graphs, reasoning models, multi agent systems, and beyond. Attend this session to learn about seven challenges with RAG systems, their associated architectural choices, and best practices to improve their performance.

Ask the Expert: How to Design and Optimize RAG (Repeat)

2026-03-10
qa
Sumit Agarwal (Gartner)

RAG has emerged as a powerful approach for building advanced AI systems that combine the strengths of large language models with external knowledge sources. However, RAG solutions struggle with reliability and require a lot of experimentation. This session will address key questions to help determine the best design pattern and optimization for RAG implementations.

Crossroads Debate: GenAI Build vs. Buy

2026-03-09
talk
Sumit Agarwal (Gartner) , Kjell Carlsson (Gartner)

GenAI solutions include several choices and trade-offs. A critical decision is: should you build custom AI solutions in-house or buy off-the-shelf products? This session brings together a debate on the trade-offs, risk and rewards of each approach. The session will be based on scenarios and use-cases to highlight key considerations such as cost, reliability , flexibility and speed for different decisions such as LLMs vs. SLMs, RAG vs. AI agents, packaged platform capability vs. bespoke custom solution, packaged vs. open-source.

Ask the Expert: How to Design and Optimize RAG

2026-03-09
qa
Sumit Agarwal (Gartner)

RAG has emerged as a powerful approach for building advanced AI systems that combine the strengths of large language models with external knowledge sources. However, RAG solutions struggle with reliability and require a lot of experimentation. This session will address key questions to help determine the best design pattern and optimization for RAG implementations.