in

Introducing Gemini in BigQuery at Next ‘24


The journey of going from data to insights can be fragmented, complex and time consuming. Data teams spend time on repetitive and routine tasks such as ingesting structured and unstructured data, wrangling data in preparation for analysis, and optimizing and maintaining pipelines. Obviously, they’d rather prefer doing higher-value analysis and insights-led decision making. 

At Next ‘23, we introduced Duet AI in BigQuery. This year at Next ‘24, Duet AI in BigQuery becomes Gemini in BigQuery which provides AI-powered experiences for data preparation, analysis and engineering as well as intelligent recommendations to enhance user productivity and optimize costs.

“With the new AI-powered assistive features in BigQuery and ease of integrating with other Google Workspace products, our teams can extract valuable insights from data. The natural language-based experiences, low-code data preparation tools, and automatic code generation features streamline high-priority analytics workflows, enhancing the productivity of data practitioners and providing the space to focus on high impact initiatives. Moreover, users with varying skill sets, including our business users, can leverage more accessible data insights to effect beneficial changes, fostering an inclusive data-driven culture within our organization.” said Tim Velasquez, Head of Analytics, Veo 

Let’s take a closer look at the new features of Gemini in BigQuery.

Accelerate data preparation with AI

Your business insights are only as good as your data. When you work with large datasets that come from a variety of sources, there are often inconsistent formats, errors, and  missing data. As such, cleaning, transforming, and structuring them can be a major hurdle.

To simplify data preparation, validation, and enrichment, BigQuery now includes AI augmented data preparation that helps users to cleanse and wrangle their data. Additionally we are enabling users to build low-code visual data pipelines, or rebuild legacy pipelines in BigQuery. 

Once the pipelines are running in production, AI assists with finding and resolving issues such as schema or data drift, significantly reducing the toil associated with maintaining a data pipeline. Because the resulting pipelines run in BigQuery, users also benefit from integrated metadata management, automatic end-to-end data lineage, and capacity management.


https://storage.googleapis.com/gweb-cloudblog-publish/images/Next24_Blog_blank_2-05.max-2500x2500.jpg

Gemma on Google Kubernetes Engine deep dive

https://storage.googleapis.com/gweb-cloudblog-publish/images/Next24_Blog_blank_2-01.max-2500x2500.jpg

Understanding the SCaNN index in AlloyDB