Staff Backline Engineer - Data & AI
DatabricksDallas, Texas; San Francisco, California; Vancouver, CanadaPosted 5 March 2026
Job Description
<h4><strong>P-1381</strong></h4>
<p>At Databricks, we are passionate about enabling Data AI teams to solve the world's toughest problems - from making the next mode of transportation a reality to accelerating the development of medical breakthroughs. We do this by building and running the world's best data and AI infrastructure platform so our customers can use deep data insights to improve their business. Founded by engineers, we leap at every opportunity to tackle technical challenges, from designing next-gen UI/UX for data interaction to scaling our services and infrastructure across millions of virtual machines. And we're only getting started.</p>
<h3><strong>About the Team: </strong></h3>
<p>The Backline Engineering Team serves as the critical bridge between Frontline Support and Engineering. We handle complex technical issues and escalations across the Data and AI ecosystem. With a strong focus on customer success, we are committed to delivering exceptional customer satisfaction by providing deep technical expertise, proactive issue resolution, and continuous platform improvements. We emphasise automation and tooling to enhance troubleshooting efficiency, reduce manual efforts, and improve the overall supportability of the platform and the health of our products. By developing smart solutions and streamlining workflows, we drive operational excellence and ensure a delightful experience for both customers and internal teams.</p>
<h3><strong>What your impact will be:</strong></h3>
<ul>
<li><strong>Deep Dive Troubleshooting</strong>: Conduct deep-dive forensics into Spark core internals and the broader Databricks Data and AI ecosystem to resolve high-priority architectural failures and complex system anomalies.</li>
<li><strong>Root Cause Analysis</strong>: Perform advanced code-level analysis and resource profiling to identify and mitigate systemic root causes, ensuring the stability and reliability of high-scale production workloads.</li>
<li><strong>Architectural Optimization</strong>: Optimise architectural performance across the Data and AI stack by refining execution parameters and enforcing best practice strategies to maximise resource efficiency and throughput.</li>
<li><strong>Product Improvements</strong>: Analyse global issue trends and patterns to partner directly with Product Engineering, influencing the product roadmap and driving initiatives that enhance long-term supportability.<br>Scalability Tooling: Develop reproduction frameworks, automated workflows, and AI-driven diagnostic tools that translate complex backline findings into standardised resolution paths to empower and scale the broader organisation.</li>
</ul>
<h3><strong>What we look for:</strong></h3>
<p>We are looking for customer-obsessed candidates with 10+ years of relevant experience, including deep expertise in one of the following three specialized tracks, along with proven experience in managing both customers and technical stakeholders. <em><strong>Since each track calls for a different set of technical capabilities, we’re looking for excellence in one area rather than proficiency in al</strong></em>l: </p>
<ul>
<li><strong>Data Engineering Track</strong>: Expertise in large-scale big data solutions and ETL pipelines using Spark, Delta Lake, or Hive. Strong experience troubleshooting failures, diagnosing performance issues, and identifying root causes. Demonstrated problem-solving ability and understanding of data engineering best practices to ensure reliable, efficient workflows. Solid hands-on programming skills in Python, SQL, or Scala.</li>
<li><strong>Product Supportability Track</strong>: Deep understanding of distributed system internals. Ability to perform code-level root-cause analysis and profiling (using metrics and heap/thread dumps) in Java, Scala, or Python. Proven record of contributing to bug fixes and mentoring other engineers.</li>
<li><strong>AI Track</strong>: Experience with large-scale machine learning and generative A ... (truncated, view full listing at source)
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