14 August 2024

The reality of building a text-to-SQL solution in-house

Rob Ven Den Bergh

A mockup of the whitepaper 'The reality of building a text-to-sql solution in-house
A mockup of the whitepaper 'The reality of building a text-to-sql solution in-house
A mockup of the whitepaper 'The reality of building a text-to-sql solution in-house

How Hard Can It Be?: The reality of building a text-to-SQL solution in-house

AI’s impact on enterprises is undeniable. Generative AI adoption rates are spiking in 2024, especially in data management through large language models (LLMs) and SQL generation. 

Enterprises have vast amounts of data and can unlock significant value using BI tools and AI to turn complex data warehouses into self-serve insight engines. However, many companies struggle to access effective solutions despite heavy investment in business intelligence. In-house builds are common but often bring unexpected challenges and regularly fail to launch. 

This whitepaper will explore current rates of AI adoption, the difficulties of building AI solutions in-house, and emerging alternatives that better serve enterprise ambitions for self-serve data insight.

Find out more about: 

  • The current landscape of AI adoption among enterprises 

  • The rates and reasons for failure of in-house corporate IT projects

  • A rough roadmap on how to build an enterprise-level text-to-SQL solution

  • The alternative routes to solution adoption.


Work with Fluent

Put data back into the conversation. Book a demo to see how Fluent can work for you.

Stay up to date with the Fluent Newsflash

Everything you need to know from the world of AI, BI and Fluent. Hand-delivered (digitally) twice a month.

© 2024 Artickl Ltd. All rights reserved.

© 2024 Artickl Ltd. All rights reserved.

© 2024 Artickl Ltd. All rights reserved.