×
Written by
Published on
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Google Cloud introduces new Vertex AI capabilities to enhance the accuracy and reliability of enterprise AI applications, addressing concerns about misleading or inaccurate outputs from generative AI models.

Key features for enterprise-ready AI: Google Cloud is rolling out new features for its Vertex AI platform to help organizations build more accurate and trustworthy AI services:

  • Grounding with third-party datasets: Customers can now leverage specialized datasets from providers like Moody’s, MSCI, Thomson Reuters, and ZoomInfo to improve the accuracy of their AI models’ outputs, with this feature becoming available in Q3 2024.
  • High-fidelity mode: Organizations can use their own corporate datasets as the primary information source for generated outputs, powered by a specialized version of Google’s Gemini 1.5 Flash model, currently available in preview through Vertex AI’s Experiments tool.
  • Hybrid search for Vector Search: The Vector Search feature, which enables image searches based on similar graphics, now supports combining vector-based searches with text-based keyword searches for improved accuracy, available in public preview.

Addressing concerns about AI accuracy: These updates aim to tackle the issue of AI models providing misleading or inaccurate information, which has been a concern with Google’s AI-based search features:

  • Google’s AI Overviews feature faced criticism for making bizarre recommendations based on outdated Reddit posts, such as suggesting adding Elmer’s glue to pizza, after the company secured a deal to access Reddit’s data for AI training in February 2024.
  • The new features provide organizations with greater control over the information sources used by Google’s AI models, helping to reduce the occurrence of inaccurate or misleading outputs.

Empowering organizations with enterprise-ready AI: By introducing these new capabilities, Google Cloud aims to encourage more organizations to adopt its generative AI experiences for enterprise applications:

  • The ability to leverage trusted third-party datasets and companies’ own corporate data ensures that AI models generate more accurate and reliable outputs tailored to each organization’s specific needs and context.
  • Features like high-fidelity mode and hybrid search for Vector Search give organizations greater flexibility and control over how their AI services process and retrieve information, enabling them to build AI applications that align with their unique requirements and use cases.

Looking ahead: As Google continues to refine its Vertex AI platform and introduce new features, the company is positioning itself as a leader in enterprise-ready generative AI solutions:

  • The upcoming “dynamic retrieval” feature for Grounding with Google Search will automatically determine whether information should be sourced from Google’s Gemini datasets or Google Search based on the nature of the prompts, further enhancing the adaptability and accuracy of AI-generated outputs.
  • By addressing concerns about AI accuracy and providing organizations with powerful tools to customize and control their AI models, Google Cloud is setting the stage for widespread adoption of generative AI in enterprise applications across various industries.
Google touts “enterprise-ready” AI with more facts and less make-believe

Recent News

How to Use Pixel Studio to Generate AI Images on the Google Pixel 9

Google's Pixel 9 introduces AI-powered image creation through the Pixel Studio app, enabling users to generate custom visuals from text prompts and edit existing photos.

AI’s Insatiable Need for Energy is Presenting Big Investment Opportunities

The rapid expansion of AI-driven data centers is straining US power infrastructure, requiring over $500 billion in investments and potentially consuming 12% of national electricity by 2030.

AI Tutors Double Student Learning in Harvard Study

Students using an AI tutor demonstrated twice the learning gains in half the time compared to traditional lectures, suggesting potential for more efficient and personalized education.