Close Menu
  • Home
  • AI Models
    • DeepSeek
    • xAI
    • OpenAI
    • Meta AI Llama
    • Google DeepMind
    • Amazon AWS AI
    • Microsoft AI
    • Anthropic (Claude)
    • NVIDIA AI
    • IBM WatsonX Granite 3.1
    • Adobe Sensi
    • Hugging Face
    • Alibaba Cloud (Qwen)
    • Baidu (ERNIE)
    • C3 AI
    • DataRobot
    • Mistral AI
    • Moonshot AI (Kimi)
    • Google Gemma
    • xAI
    • Stability AI
    • H20.ai
  • AI Research
    • Allen Institue for AI
    • arXiv AI
    • Berkeley AI Research
    • CMU AI
    • Google Research
    • Microsoft Research
    • Meta AI Research
    • OpenAI Research
    • Stanford HAI
    • MIT CSAIL
    • Harvard AI
  • AI Funding & Startups
    • AI Funding Database
    • CBInsights AI
    • Crunchbase AI
    • Data Robot Blog
    • TechCrunch AI
    • VentureBeat AI
    • The Information AI
    • Sifted AI
    • WIRED AI
    • Fortune AI
    • PitchBook
    • TechRepublic
    • SiliconANGLE – Big Data
    • MIT News
    • Data Robot Blog
  • Expert Insights & Videos
    • Google DeepMind
    • Lex Fridman
    • Matt Wolfe AI
    • Yannic Kilcher
    • Two Minute Papers
    • AI Explained
    • TheAIEdge
    • Matt Wolfe AI
    • The TechLead
    • Andrew Ng
    • OpenAI
  • Expert Blogs
    • François Chollet
    • Gary Marcus
    • IBM
    • Jack Clark
    • Jeremy Howard
    • Melanie Mitchell
    • Andrew Ng
    • Andrej Karpathy
    • Sebastian Ruder
    • Rachel Thomas
    • IBM
  • AI Policy & Ethics
    • ACLU AI
    • AI Now Institute
    • Center for AI Safety
    • EFF AI
    • European Commission AI
    • Partnership on AI
    • Stanford HAI Policy
    • Mozilla Foundation AI
    • Future of Life Institute
    • Center for AI Safety
    • World Economic Forum AI
  • AI Tools & Product Releases
    • AI Assistants
    • AI for Recruitment
    • AI Search
    • Coding Assistants
    • Customer Service AI
    • Image Generation
    • Video Generation
    • Writing Tools
    • AI for Recruitment
    • Voice/Audio Generation
  • Industry Applications
    • Finance AI
    • Healthcare AI
    • Legal AI
    • Manufacturing AI
    • Media & Entertainment
    • Transportation AI
    • Education AI
    • Retail AI
    • Agriculture AI
    • Energy AI
  • AI Art & Entertainment
    • AI Art News Blog
    • Artvy Blog » AI Art Blog
    • Weird Wonderful AI Art Blog
    • The Chainsaw » AI Art
    • Artvy Blog » AI Art Blog
What's Hot

EU Commission: “AI Gigafactories” to strengthen Europe as a business location

United States, China, and United Kingdom Lead the Global AI Ranking According to Stanford HAI’s Global AI Vibrancy Tool

Foundation AI: Cisco launches AI model for integration in security applications

Facebook X (Twitter) Instagram
Advanced AI News
  • Home
  • AI Models
    • Adobe Sensi
    • Aleph Alpha
    • Alibaba Cloud (Qwen)
    • Amazon AWS AI
    • Anthropic (Claude)
    • Apple Core ML
    • Baidu (ERNIE)
    • ByteDance Doubao
    • C3 AI
    • Cohere
    • DataRobot
    • DeepSeek
  • AI Research & Breakthroughs
    • Allen Institue for AI
    • arXiv AI
    • Berkeley AI Research
    • CMU AI
    • Google Research
    • Meta AI Research
    • Microsoft Research
    • OpenAI Research
    • Stanford HAI
    • MIT CSAIL
    • Harvard AI
  • AI Funding & Startups
    • AI Funding Database
    • CBInsights AI
    • Crunchbase AI
    • Data Robot Blog
    • TechCrunch AI
    • VentureBeat AI
    • The Information AI
    • Sifted AI
    • WIRED AI
    • Fortune AI
    • PitchBook
    • TechRepublic
    • SiliconANGLE – Big Data
    • MIT News
    • Data Robot Blog
  • Expert Insights & Videos
    • Google DeepMind
    • Lex Fridman
    • Meta AI Llama
    • Yannic Kilcher
    • Two Minute Papers
    • AI Explained
    • TheAIEdge
    • Matt Wolfe AI
    • The TechLead
    • Andrew Ng
    • OpenAI
  • Expert Blogs
    • François Chollet
    • Gary Marcus
    • IBM
    • Jack Clark
    • Jeremy Howard
    • Melanie Mitchell
    • Andrew Ng
    • Andrej Karpathy
    • Sebastian Ruder
    • Rachel Thomas
    • IBM
  • AI Policy & Ethics
    • ACLU AI
    • AI Now Institute
    • Center for AI Safety
    • EFF AI
    • European Commission AI
    • Partnership on AI
    • Stanford HAI Policy
    • Mozilla Foundation AI
    • Future of Life Institute
    • Center for AI Safety
    • World Economic Forum AI
  • AI Tools & Product Releases
    • AI Assistants
    • AI for Recruitment
    • AI Search
    • Coding Assistants
    • Customer Service AI
    • Image Generation
    • Video Generation
    • Writing Tools
    • AI for Recruitment
    • Voice/Audio Generation
  • Industry Applications
    • Education AI
    • Energy AI
    • Finance AI
    • Healthcare AI
    • Legal AI
    • Media & Entertainment
    • Transportation AI
    • Manufacturing AI
    • Retail AI
    • Agriculture AI
  • AI Art & Entertainment
    • AI Art News Blog
    • Artvy Blog » AI Art Blog
    • Weird Wonderful AI Art Blog
    • The Chainsaw » AI Art
    • Artvy Blog » AI Art Blog
Advanced AI News
Home » BigQuery is 5x bigger than Snowflake and Databricks: What Google is doing to make it even better
VentureBeat AI

BigQuery is 5x bigger than Snowflake and Databricks: What Google is doing to make it even better

Advanced AI BotBy Advanced AI BotApril 18, 2025No Comments9 Mins Read
Share Facebook Twitter Pinterest Copy Link Telegram LinkedIn Tumblr Email
Share
Facebook Twitter LinkedIn Pinterest Email


Join our daily and weekly newsletters for the latest updates and exclusive content on industry-leading AI coverage. Learn More

Google Cloud announced a significant number of new features at its Google Cloud Next event last week, with at least 229 new announcements.

Buried in that mountain of news, which included new AI chips and agentic AI capabilities, as well as database updates, Google Cloud also made some big moves with its BigQuery data warehouse service. Among the new capabilities is BigQuery Unified Governance, which helps organizations discover, understand and trust their data assets. The governance tools help address key barriers to AI adoption by ensuring data quality, accessibility and trustworthiness.

The stakes are enormous for Google as it takes on rivals in the enterprise data space.

BigQuery has been on the market since 2011 and has grown significantly in recent years, both in terms of capabilities and user base. Apparently, BigQuery is also a big business for Google Cloud. During Google Cloud Next, it was revealed for the first time just how big the business actually is. According to Google, BigQuery had five times the number of customers of both Snowflake and Databricks.

“This is the first year we’ve been given permission to actually post a customer stat, which was delightful for me,” Yasmeen Ahmad, managing director of data analytics at Google Cloud, told VentureBeat. “Databricks and Snowflake, they’re the only other kind of enterprise data warehouse platforms in the market. We have five times more customers than either of them.”

How Google is improving BigQuery to advance enterprise adoption

While Google now claims to have a more extensive user base than its rivals, it’s not taking its foot off the gas either. In recent months, and particularly at Google Cloud Next, the hyperscaler has announced multiple new capabilities to advance enterprise adoption.

A key challenge for enterprise AI is having access to the correct data that meets business service level agreements (SLAs). According to Gartner research cited by Google, organizations that do not enable and support their AI use cases through an AI-ready data practice will see over 60% of AI projects fail to deliver on business SLAs and be abandoned.

This challenge stems from three persistent problems that plague enterprise data management:

Fragmented data silos

Rapidly changing requirements

Inconsistent organizational data cultures where teams don’t share a common language around data.

Google’s BigQuery Unified Governance solution represents a significant departure from traditional approaches by embedding governance capabilities directly within the BigQuery platform rather than requiring separate tools or processes.

BigQuery unified governance: A technical deep dive

At the core of Google’s announcement is BigQuery unified governance, powered by the new BigQuery universal catalog. Unlike traditional catalogs that only contain basic table and column information, the universal catalog integrates three distinct types of metadata:

Physical/technical metadata: Schema definitions, data types and profiling statistics.

Business metadata: Business glossary terms, descriptions and semantic context.

Runtime metadata: Query patterns, usage statistics and format-specific information for technologies like Apache Iceberg.

This unified approach allows BigQuery to maintain a comprehensive understanding of data assets across the enterprise. What makes the system particularly powerful is how Google has integrated Gemini, its advanced AI model, directly into the governance layer through what they call the knowledge engine.

The knowledge engine actively enhances governance by discovering relationships between datasets, enriching metadata with business context and monitoring data quality automatically.

Key capabilities include semantic search with natural language understanding, automated metadata generation, AI-powered relationship discovery, data products for packaging related assets, a business glossary, automatic cataloging of both structured and unstructured data and automated anomaly detection.

Forget about benchmarks, enterprise AI is a bigger issue

Google’s strategy transcends the AI model competition. 

“I think there’s too much of the industry just focused on getting on top of that individual leaderboard, and actually Google is thinking holistically about the problem,” Ahmad said.

This comprehensive approach addresses the entire enterprise data lifecycle, answering critical questions such as: How do you deliver on trust? How do you deliver on scale? How do you deliver on governance and security?

By innovating at each layer of the stack and bringing these innovations together, Google has created what Ahmad calls a real-time data activation flywheel, where, as soon as data is captured, regardless of the type or format or where it’s being stored, there is instant metadata generation, lineage and quality.

That said, models do matter. Ahmad explained that with the advent of thinking models like Gemini 2.0, there has been a huge unlock for Google’s data platforms.

“A year ago, when you were asking GenAI to answer a business question, anything that got slightly more complex, you would actually need to break it down into multiple steps,” she said. “Suddenly, with the thinking model it can come up with a plan… you’re not having to hard code a way for it to build a plan. It knows how to build plans.”

As a result, she said that now you can easily have a data engineering agent build a pipeline that’s three steps or 10 steps. The integration with Google’s AI capabilities has transformed what’s possible with enterprise data. 

Real-world impact: How enterprises are benefiting

Levi Strauss & Company offers a compelling example of how unified data governance can transform business operations. The 172-year-old company is using Google’s data governance capabilities as it shifts from being primarily a wholesale business to becoming a direct-to-consumer brand. In a session at Google Cloud Next, Vinay Narayana, who runs data and AI platform engineering at Levi’s, detailed his organization’s use case.

“We aspire to empower our business analysts to have access to real-time data that is also accurate,” Narayana said. “Before we embarked on our journey to build a new platform, we discovered various user challenges. Our business users didn’t know where the data lived, and if they knew the data source, they didn’t know who owned it. If they somehow got access, there was no documentation.”

Levi’s built a data platform on Google Cloud that organizes data products by business domain, making them discoverable through Analytics Hub (Google’s data marketplace). Each data product is accompanied by detailed documentation, lineage information and quality metrics.

The results have been impressive: “We are 50x faster than our legacy data platform, and this is on the low end. A significant number of visualizations are 100x faster,” Narayana said. “We have over 700 users already using the platform on a daily basis.”

Another example comes from Verizon, which is using Google’s governance tools as part of its One Verizon Data initiative to unify previously siloed data across business units.

“This is going to be the largest telco data warehouse in North America running on BigQuery,” Arvind Rajagopalan, AVP of data engineering, architecture and products at Verizon, said during a Google Cloud Next session. 

The company’s data estate is massive, comprising 3,500 users who run approximately 50 million queries, 35,000 data pipelines, and over 40 petabytes of data.

In a spotlight session at Google Cloud Next, Ahmad also provided numerous other user examples. Radisson Hotel Group personalized their advertising at scale, training Gemini models on BigQuery data. Teams experienced a 50% increase in productivity, while revenue from AI-powered campaigns rose by more than 20%. Gordon Food Service migrated to BigQuery, ensuring their data was ready for AI and increasing adoption of customer-facing apps by 96%

What’s the ‘big’ difference: Exploring the competitive landscape

There are multiple vendors in the enterprise data warehouse space, including Databricks, Snowflake, Microsoft with Synapse and Amazon with Redshift. All of these vendors have been developing various forms of AI integrations in recent years.

Databricks has a comprehensive data lakehouse platform and has been expanding its own AI capabilities, thanks in part to its $1.3 billion acquisition of Mosaic. Amazon Redshift added support for generative AI in 2023, with Amazon Q helping users build queries and obtain better answers. For its part, Snowflake has been busy developing tools and partnering with large language model (LLM) providers, including Anthropic.

When pressed on comparisons specifically to Microsoft’s offerings, Ahmad argued that Synapse is not an enterprise data platform for the types of use cases that customers use BigQuery for.

“I think we’ve leapfrogged the entire industry, because we’ve worked on all of the pieces,” she said. “We’ve got the best model, by the way, it’s the best model integrated in a data stack that understands how agents work.”

This integration has driven rapid adoption of AI capabilities within BigQuery. According to Google, customer use of Google’s AI models in BigQuery for multimodal analysis has increased by 16 times year over year.

What this means for enterprises adopting AI

For enterprises already struggling with AI implementation, Google’s integrated approach to governance may offer a more streamlined path to success than cobbling together separate data management and AI systems.

Ahmad’s claim that Google has “leapfrogged” competitors in this space will face scrutiny as organizations put these new capabilities to work. However, the customer examples and technical details suggest Google has made significant progress in addressing one of the most challenging aspects of enterprise AI adoption.

For technical decision-makers evaluating data platforms, the key questions will be whether this integrated approach delivers sufficient additional value to justify migrating from existing investments in specialized platforms, such as Snowflake or Databricks, and whether Google can maintain its current innovation pace as competitors respond.

Daily insights on business use cases with VB Daily

If you want to impress your boss, VB Daily has you covered. We give you the inside scoop on what companies are doing with generative AI, from regulatory shifts to practical deployments, so you can share insights for maximum ROI.

Read our Privacy Policy

Thanks for subscribing. Check out more VB newsletters here.

An error occured.



Source link

Follow on Google News Follow on Flipboard
Share. Facebook Twitter Pinterest LinkedIn Tumblr Email Copy Link
Previous ArticleGoogle’s latest AI model report lacks key safety details, experts say
Next Article Global Venture Capital Transactions Plummet by 32%, Asia Accounts for Less Than 10% in Q1 AI Funding_global_The
Advanced AI Bot
  • Website

Related Posts

Sam Altman calls for ‘AI privilege’ as OpenAI clarifies court order to retain temporary and deleted ChatGPT sessions

June 6, 2025

Voice AI that actually converts: New TTS model boosts sales 15% for major brands

June 6, 2025

Google claims Gemini 2.5 Pro preview beats DeepSeek R1 and Grok 3 Beta in coding performance

June 5, 2025
Leave A Reply Cancel Reply

Latest Posts

Jiaxing Train Station By Architect Ma Yansong Is A Model Of People-Centric, Green Urban Design

Midwestern Grotto Tradition Celebrated In Sheboygan, WI

Hugh Jackman And Sonia Friedman Boldly Bid To Democratize Theater

Men’s Swimwear Gets Casual At Miami Swim Week 2025

Latest Posts

EU Commission: “AI Gigafactories” to strengthen Europe as a business location

June 7, 2025

United States, China, and United Kingdom Lead the Global AI Ranking According to Stanford HAI’s Global AI Vibrancy Tool

June 7, 2025

Foundation AI: Cisco launches AI model for integration in security applications

June 7, 2025

Subscribe to News

Subscribe to our newsletter and never miss our latest news

Subscribe my Newsletter for New Posts & tips Let's stay updated!

Welcome to Advanced AI News—your ultimate destination for the latest advancements, insights, and breakthroughs in artificial intelligence.

At Advanced AI News, we are passionate about keeping you informed on the cutting edge of AI technology, from groundbreaking research to emerging startups, expert insights, and real-world applications. Our mission is to deliver high-quality, up-to-date, and insightful content that empowers AI enthusiasts, professionals, and businesses to stay ahead in this fast-evolving field.

Subscribe to Updates

Subscribe to our newsletter and never miss our latest news

Subscribe my Newsletter for New Posts & tips Let's stay updated!

YouTube LinkedIn
  • Home
  • About Us
  • Advertise With Us
  • Contact Us
  • DMCA
  • Privacy Policy
  • Terms & Conditions
© 2025 advancedainews. Designed by advancedainews.

Type above and press Enter to search. Press Esc to cancel.