Close Menu
    What's Hot

    Colombians head to the polls to choose President Gustavo Petro’s successor | Elections News

    Israel Captures Crusader Castle That Symbolized Its Long Lebanon Occupation

    Black founders raise highest amount of quarterly funding since 2022, but there’s a catch

    Facebook X (Twitter) Instagram
    Trending
    • Colombians head to the polls to choose President Gustavo Petro’s successor | Elections News
    • Israel Captures Crusader Castle That Symbolized Its Long Lebanon Occupation
    • Black founders raise highest amount of quarterly funding since 2022, but there’s a catch
    • Making sense of the debate over AI psychosis
    • French Open: Aryna Sabalenka and Naomi Osaka to meet in first women’s night-time slot at Roland-Garros since 2023 | Tennis News
    • Brighton Women 0 – 4 Man City Women
    • TechCrunch Mobility: It doesn’t matter that people hate the Ferrari Luce
    • This 3D model captures a rare tropical glacier before it’s gone
    interluknewsinterluknews
    • Home
    • Business
      • Corporate News
      • Industry Insights
      • Startups & Entrepreneurship
      • Technology & Innovation
    • Economy
      • Economic Policy
      • Financial Analysis
      • Inflation & Interest Rates
      • Trade & Markets
    • Global
      • Conflicts & Security
      • Diplomacy
      • Global Trends
      • International Affairs
    • Lifestyle
      • Fashion
      • Food & Dining
      • Personal Development
      • Travel
    • Opinion
      • Columns
      • Editorials
      • Expert Opinions
      • Reader Voices
    • More
      • Politics
        • Elections
        • Government & Policy
        • International Relations
        • Political Analysis
      • Sports
        • Cricket
        • Football / Soccer
        • International Sports
        • Local Sports
      • Technology
        • Artificial Intelligence
        • Cybersecurity
        • Gadgets & Reviews
        • Tech News
      • South Africa News
    Facebook X (Twitter) Instagram
    interluknewsinterluknews
    Startups & Entrepreneurship

    Definity embeds agents inside Spark pipelines to catch failures before they reach agentic AI systems

    adminBy adminApril 30, 2026No Comments5 Mins Read
    Share Facebook Twitter Pinterest Copy Link Telegram LinkedIn Tumblr Email
    Definity embeds agents inside Spark pipelines to catch failures before they reach agentic AI systems
    Share
    Facebook Twitter LinkedIn Pinterest Email

    For most data engineering teams, managing pipeline reliability often means waiting for an alert, manually tracing failures across distributed jobs and clusters, and fixing problems after they’ve already hit the business. Agentic AI needs the data to be there, clean and on time. A pipeline that fails silently or delivers stale data doesn’t just break a dashboard — it breaks the AI system depending on it.

    That gap is what Definity, a Chicago-based data pipeline operations startup, is building into: embedding agents directly inside the Spark or DBT driver to act during a pipeline run, not after it. One enterprise customer identified 33% of its optimization opportunities in the first week of deployment and cut troubleshooting and optimization effort by 70%, according to Definity. The company also claims customers are resolving complex Spark issues up to 10x faster.

    “You need three big things for agentic data operations: full stack context that is real time and production aware. Control of the pipeline. And the ability to validate in a feedback loop. Without that, you can be outside looking in and read only,” Roy Daniel, CEO and co-founder of Definity told VentureBeat in an exclusive interview.

    The company on Wednesday announced that it has raised $12 million in Series A financing led by GreatPoint Ventures, with participation from Dynatrace and existing investors StageOne Ventures and Hyde Park Venture Partners.

    Why existing pipeline monitoring breaks down at scale

    Existing tools approach the problem from outside the execution layer — Datadog, which acquired data quality monitor Metaplane last year, Databricks system tables, and platforms like Unravel Data and Acceldata all read metrics after a job completes. Dynatrace has monitoring capabilities; it also participated in Definity’s Series A.

    The Definity approach is differentiated from other options in the way the solution is architected. According to Daniel, that means by the time a platform monitoring tool surfaces a problem, the pipeline has already run — and the failure, the wasted compute or the bad data is already downstream.

    “It’s always after the fact,” Daniel said. “By the time you know something happened, it already happened.”

    How Definity’s in-execution agents work

    The core architectural difference is where the agent sits — inside the pipeline rather than watching from outside it.

    Inline instrumentation. The Definity system installs a JVM agent directly inside the pipeline execution layer via a single line of code, running below the platform layer and pulling execution data directly from Spark.

    Execution context during the run. The agent captures query execution behavior, memory pressure, data skew, shuffle patterns and infrastructure utilization as the pipeline runs. It also infers lineage between pipelines and tables dynamically — no predefined data catalog is required.

    Intervention, not just observation. The agent can modify resource allocation mid-run, stop a job before bad data propagates or preempt a pipeline based on upstream data conditions. Daniel described one production deployment where the agent detected that an upstream job had been preempted and the input table it was supposed to write was stale — and stopped the downstream pipeline before it started, before bad data reached any dependent system.

    What is and isn’t real time. Detection and prevention are real time. Root cause analysis and optimization recommendations run on demand when an engineer queries the assistant, with full execution context already assembled.

    Overhead and data residency. The agent adds approximately one second of compute on an hour-long run. Only metadata transmits externally; full on-premises deployment is available for environments where no metadata can leave the perimeter.

    What in-execution intelligence looks like in a production environment

    One early user of the Definity platform is Nexxen, an ad tech platform running large-scale Spark pipelines  for mission-critical advertising workloads, running on-premises.

    Dennis Meyer, Director of Data Engineering at Nexxen, told VentureBeat that the core problem he was facing was not pipeline failures but the accumulating cost of inefficiency in an environment with no elastic cloud capacity to absorb waste.

    “The main challenge wasn’t about pipelines breaking, but about managing an increasingly complex and large-scale environment,” Meyer said. “Because we operate on-prem, we don’t have the flexibility of instant elasticity, so inefficiencies have a direct cost impact.”

    Existing monitoring tools gave Nexxen partial visibility but not enough to act on systematically. “We had existing monitoring tools in place, but needed full-stack visibility to understand workload behavior holistically and to systematically prioritize optimizations,” Meyer said.

    Nexxen deployed Definity with no pipeline code changes. According to Meyer, the team identified 33% of its optimization opportunities within the first week, and engineering effort on troubleshooting and optimization dropped by 70%. The platform freed infrastructure capacity, allowing the team to support workload growth without additional hardware investment.

    “The key shift was moving from reactive troubleshooting to proactive, continuous optimization,” Meyer said. “At scale, the biggest gap often isn’t tooling — it’s actionable visibility.”

    What this means for enterprise data teams

    For data engineering teams running production Spark environments, the shift from reactive monitoring to in-execution intelligence has architectural and organizational implications worth thinking through.

    Pipeline ops is becoming an AI infrastructure problem. Data pipelines that previously supported analytics now carry AI workloads with direct business dependencies. Failures that were once an inconvenience are now blocking production AI delivery.

    Troubleshooting time is a recoverable cost. According to Meyer, Nexxen cut engineering effort on troubleshooting and optimization by 70% after deploying Definity. For teams running lean, that time going back to the roadmap is the most direct near-term case for evaluating this category.

    agentic agents catch Definity Embeds Failures Pipelines reach spark systems
    Follow on Google News Follow on Flipboard
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email Copy Link
    Previous ArticleEufyMake E1 UV Printer Review (2026): Add 3D Texture to Mugs, Magnets, and More
    Next Article Korean Air Bans Roosters on U.S. Flights to the Philippines
    admin
    • Website

    Related Posts

    Black founders raise highest amount of quarterly funding since 2022, but there’s a catch

    May 31, 2026

    Most popular stories on GeekWire for the week of May 24, 2026 – GeekWire

    May 31, 2026

    These 3 AI Shortcuts Turn Ordinary Founders Into 10x Operators

    May 30, 2026
    Leave A Reply Cancel Reply

    Demo
    Latest Posts

    Colombians head to the polls to choose President Gustavo Petro’s successor | Elections News

    Israel Captures Crusader Castle That Symbolized Its Long Lebanon Occupation

    Black founders raise highest amount of quarterly funding since 2022, but there’s a catch

    Making sense of the debate over AI psychosis

    Latest Posts

    Subscribe to News

    Get the latest sports news from NewsSite about world, sports and politics.

    Advertisement
    Demo

    We are a digital news platform delivering timely, accurate, and insightful coverage of politics, global affairs, business, economy, sports, and more. Our mission is to keep readers informed with reliable news, clear analysis, and stories that truly matter.
    We're social. Connect with us:

    Facebook X (Twitter) Instagram Pinterest YouTube

    Subscribe to Updates

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

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

    Powered by
    ...
    ►
    Necessary cookies enable essential site features like secure log-ins and consent preference adjustments. They do not store personal data.
    None
    ►
    Functional cookies support features like content sharing on social media, collecting feedback, and enabling third-party tools.
    None
    ►
    Analytical cookies track visitor interactions, providing insights on metrics like visitor count, bounce rate, and traffic sources.
    None
    ►
    Advertisement cookies deliver personalized ads based on your previous visits and analyze the effectiveness of ad campaigns.
    None
    ►
    Unclassified cookies are cookies that we are in the process of classifying, together with the providers of individual cookies.
    None
    Powered by