Close Menu
    • Home
    • Events
      • Upcoming Events
      • Videos
        • Machine Can Think Summit 2026
        • Step Dubai Conference 2026
    • Technology & Innovation
    • Business & Marketing
    • Trends & Insights
    • Industry Applications
    • Tutorials & Guides
    What's Hot
    Business & Marketing

    eBay Q2 Revenue Forecast AI Driving Marketplace Success

    By Art RyanApril 30, 20260

    eBay is on track for a strong year with Q2 revenue expected to beat analysts’…

    Pirelli AI Tyre Technology: Revolutionizing Mobility

    April 30, 2026

    Microsoft Cloud Growth AI: Azure Revenue Surge

    April 30, 2026

    Amazon Surprises Investors As Artificial Intelligence Demand Booms

    April 30, 2026
    Facebook X (Twitter) Instagram
    Facebook X (Twitter) Instagram
    Breaking AI News
    Thursday, April 30
    • Home
    • Events
      • Upcoming Events
      • Videos
        • Machine Can Think Summit 2026
        • Step Dubai Conference 2026
    • Technology & Innovation

      Pirelli AI Tyre Technology: Revolutionizing Mobility

      April 30, 2026

      Pentagon Google AI Deal: Transforming Defense Technology

      April 30, 2026

      SAS Puts AI Governance at the Core of Its Agent Strategy

      April 29, 2026

      Amazon AI Hiring Software Enhances Recruitment Efficiency

      April 29, 2026

      AI Drug Development Johnson & Johnson Impact on Healthcare

      April 28, 2026
    • Business & Marketing

      eBay Q2 Revenue Forecast AI Driving Marketplace Success

      April 30, 2026

      Microsoft Cloud Growth AI: Azure Revenue Surge

      April 30, 2026

      Amazon Surprises Investors As Artificial Intelligence Demand Booms

      April 30, 2026

      Alphabet AI Cloud Revenue Growth Surpasses Expectations

      April 30, 2026

      Big Tech AI Spending 2026: Investment Trends Revealed

      April 29, 2026
    • Trends & Insights

      eBay Q2 Revenue Forecast AI Driving Marketplace Success

      April 30, 2026

      Amazon Surprises Investors As Artificial Intelligence Demand Booms

      April 30, 2026

      SAS Puts AI Governance at the Core of Its Agent Strategy

      April 29, 2026

      Big Tech AI Spending 2026: Investment Trends Revealed

      April 29, 2026

      Oracle & CoreWeave Shares Fall on OpenAI Growth Miss

      April 29, 2026
    • Industry Applications

      Pirelli AI Tyre Technology: Revolutionizing Mobility

      April 30, 2026

      Pentagon Google AI Deal: Transforming Defense Technology

      April 30, 2026

      Amazon AI Hiring Software Enhances Recruitment Efficiency

      April 29, 2026

      AI Drug Development Johnson & Johnson Impact on Healthcare

      April 28, 2026

      Accenture Copilot Rollout Enhances Employee Productivity

      April 28, 2026
    • Tutorials & Guides

      How AI Is Revolutionizing the Future of Travel 2026 with Wellness and Sustainability

      April 19, 2026

      University of Wollongong in Dubai AI initiative boosts future-ready education

      March 31, 2026

      Microsoft AI upgrades Copilot Cowork unveiled for early access users

      March 31, 2026

      Starcloud $11 billion valuation signals AI space race surge

      March 31, 2026

      Flexible AI Factories Power the Future of Energy Grids

      March 30, 2026
    Breaking AI News
    Home » Report Released on Enterprise AI Trust: 42% Don’t Trust Outputs
    Technology & Innovation

    Report Released on Enterprise AI Trust: 42% Don’t Trust Outputs

    Art RyanBy Art RyanJune 20, 2025No Comments4 Mins Read
    Facebook Twitter Pinterest LinkedIn Tumblr Email
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Ataccama announced the release of a report by Business Application Research Center (BARC), “The Rising Imperative for Data Observability,” which examines how enterprises are building – or struggling to build – trust into modern data systems.

    Based on a survey of more than 220 data and analytics leaders across North America and Europe, the report finds that while 58% of organizations have implemented or optimized data observability programs – systems that monitor detect, and resolve data quality and pipeline issues in real-time – 42% still say they do not trust the outputs of their AI/ML models.

    The findings reflect a critical shift. Adoption is no longer a barrier. Most organizations have tools in place to monitor pipelines and enforce data policies. But trust in AI remains elusive. While 85% of organizations trust their BI dashboards, only 58% say the same for their AI/ML model outputs. The gap is widening as models rely increasingly on unstructured data and inputs that traditional observability tools were never designed to monitor or validate.

    Observability is often introduced as a reactive, fragmented, and loosely governed monitoring layer, symptomatic of deeper issues like siloed teams or unclear ownership. 51% of respondents cite skills gaps as a primary barrier to observability maturity, followed by budget constraints and lack of cross-functional alignment. But leading teams are pushing it further, embedding observability into designing, delivering, and maintaining data across domains.

    These programs don’t just flag anomalies – they resolve them upstream, often through automated data quality checks and remediation workflows that reduce reliance on manual triage. When observability is deeply connected to automated data quality, teams gain more than visibility: they gain confidence that the data powering their models can be trusted.

    “Data observability has become a business-critical discipline, but too many organizations are stuck in pilot purgatory,” said Jay Limburn, Chief Product Officer at Ataccama. “They’ve invested in tools, but they haven’t operationalized trust. That means embedding observability into the full data lifecycle, from ingestion and pipeline execution to AI-driven consumption, so issues can surface and be resolved before they reach production. We’ve seen this firsthand with customers – a global manufacturer used data observability to catch and eliminate false sensor alerts, unnecessarily shutting down production lines. That kind of upstream resolution is where trust becomes real.”

    The report also underscores how unstructured data is reshaping observability strategies. As adoption of GenAI and retrieval-augmented generation (RAG) grows, enterprises are working with inputs like PDFs, images, and long-form documents – objects that power business-critical use cases but often fall outside the scope of traditional quality and validation checks. Fewer than a third of organizations are feeding unstructured data into AI models today, and only a small fraction of those apply structured observability or automated quality checks to these inputs. These sources introduce new forms of risk, especially when teams lack automated methods to classify, monitor, and assess them in real time.

    “Trustworthy data is becoming a competitive differentiator, and more organizations are using observability to build and sustain it,” said Kevin Petrie, Vice President at BARC. “We’re seeing a shift: leading enterprises aren’t just monitoring data; they’re addressing the full lifecycle of AI/ML inputs. That means automating quality checks, embedding governance controls into data pipelines, and adapting their processes to observe dynamic unstructured objects. This report shows that observability is evolving from a niche practice into a mainstream requirement for Responsible AI.”

    The full report is here: www.ataccama.com/barc-observability-report

    The most mature programs are closing that gap by integrating observability directly into their data engineering and governance frameworks. In these environments, observability is not siloed; it works in concert with DataOps automation, MDM systems, and data catalogs to apply automated data quality checks at every stage, resulting in improved data reliability, faster decision-making, and reduced operational risk.

    Ataccama partnered with BARC on the report to help data leaders understand how to extend observability beyond infrastructure metrics or surface-level monitoring. Through its unified data trust platform, Ataccama ONE, organizations can apply anomaly detection, lineage tracking, and automated remediation across structured and unstructured data. Observability becomes part of a broader data trust architecture that supports governance, scales with AI workloads, and reduces the operational burden on data teams.

    Source: https://insideainews.com/

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Art Ryan

    Related Posts

    Pirelli AI Tyre Technology: Revolutionizing Mobility

    April 30, 2026

    Pentagon Google AI Deal: Transforming Defense Technology

    April 30, 2026

    SAS Puts AI Governance at the Core of Its Agent Strategy

    April 29, 2026

    Comments are closed.

    Latest News

    eBay Q2 Revenue Forecast AI Driving Marketplace Success

    April 30, 2026

    Pirelli AI Tyre Technology: Revolutionizing Mobility

    April 30, 2026

    Microsoft Cloud Growth AI: Azure Revenue Surge

    April 30, 2026

    Amazon Surprises Investors As Artificial Intelligence Demand Booms

    April 30, 2026
    Facebook X (Twitter) Pinterest Vimeo WhatsApp TikTok Instagram LinkedIn YouTube Spotify Reddit Snapchat Threads

    AI University

    • Global Universities
    • Universities in Africa
    • Universities in Asia
    • Universities in Europe
    • Universities in Latin America
    • Universities in Middle East
    • Universities in North America
    • Universities in Oceania

    AI Tools & Apps Directory

    • AI Productivity Tools
    • AI Coding Tools
    • AI Voice Tools
    • AI Video Tools
    • AI Image Generators
    • AI Writing Tools

    Info

    • Home
    • About Us
    • AI Organizations & Associations
    • Contact Us

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    © 2026 Breaking AI News.
    • Privacy Policy

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

    Sign Up

    Want to stay ahead In Artificial Intelligence?

     Sign up now and get exclusive breaking AI news and special updates—FREE!