Databricks

Sr. Manager - Data & AI Support Engineering

Databricks$150K — $180K *
Plano, TX 75025In-Person
Information Technology
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • 10+ years of experience with Data & AI applications using Python, Java, Scala, or Spark.
  • Strong background in AI-enabled workflows and operational automation frameworks.
  • Proven production experience with Databricks tech stacks like Lakehouse and Delta.
  • Expertise in Apache Spark, Spark SQL, and structured streaming.
  • Hands-on experience with major cloud platforms such as AWS, Azure, or GCP.
  • Experience managing globally distributed technical teams and high-severity escalations.
  • Excellent problem-solving and troubleshooting skills in distributed systems.

Responsibilities

  • Lead and manage Technical Solutions Engineers and support operations personnel.
  • Build AI-enabled support workflows and automation for improved resolution and quality.
  • Drive AI-first support transformation initiatives for better operational efficiency.
  • Collaborate with engineering and product teams for innovative support solutions.
  • Serve as a senior escalation point for customers and internal teams.
  • Guide customers through Spark optimization and best practices for Data & AI workloads.
  • Oversee the hiring, training, and development of support engineers.

Benefits

  • Comprehensive benefits and perks available to employees.
Full Job Description
P-1388

As a Sr. Manager of the Data & AI Support Engineering team, you will lead and manage a team of Technical Solutions Engineers responsible for driving deep technical resolutions for complex customer issues across Spark, AI/ML, Streaming, and Lakehouse platforms. You will help customers realize business value from Databricks Ecosystem products through strong technical leadership, AI-first operational innovation and customer-centric execution.

Mission

Lead and scale a world-class AI-first Data & AI Support Engineering organization that combines deep technical expertise, operational excellence, intelligent automation and customer-centric support to accelerate issue resolution, improve platform reliability and drive exceptional customer outcomes across enterprise-scale Data and AI workloads.
  • Build AI-enabled support workflows and reusable automations to improve resolution speed and support quality.
  • Use Agentic AI systems, logs, telemetry, observability platforms and internal systems to accelerate troubleshooting and root-cause analysis safely.
  • Create reusable runbooks, prompts, and agentic workflows that scale operational efficiency across teams.
  • Ensure strong AI governance, customer data safety, validation practices, auditability, and human-in-the-loop controls.
  • Partner with Engineering and Product teams to drive AI-first support innovation and operational excellence.
Outcomes
  • Drive AI-first support transformation initiatives that improve resolution speed, case quality, operational efficiency and customer experience.
  • Partner with Engineering and Product teams to operationalize AI-assisted diagnostics, observability insights, and intelligent escalation management for enterprise customers.
  • Build and scale reusable AI-enabled workflows, automations, runbooks, and operational intelligence frameworks across the support organization.
  • Lead and manage Technical Solutions Engineers, Team Leads, and support operations personnel across AMER support functions based out of the Dallas location.
  • Own and improve operational KPIs including customer satisfaction, escalation management, backlog health, resolution efficiency, and support quality.
  • Act as a senior escalation point for customers and internal teams while driving operational excellence and process optimization.
  • Lead hiring, onboarding, mentoring, technical assessments, training, and career development for support engineers and technical leads.
  • Conduct regular one-on-ones, annual review, and career development discussions with direct reports.
  • Be a hands-on technical leader supporting complex issues related to Spark Core, Spark SQL, Structured Streaming, Delta Lake, Lakehouse architecture, and Databricks Runtime technologies.
  • Guide customers on Spark runtime optimization, distributed systems performance, and best practices for scalable Data & AI workloads.
  • Own Engineering JIRA escalations and proactively drive faster resolutions for customer-reported product issues.
  • Maintain internal operational documentation, runbooks, and customer-facing knowledge base assets.
  • Coordinate closely with Engineering and Backline Support engineering, customer experience intelligence teams to identify, reproduce, and report product defects effectively.
  • Act as a strong customer advocate and collaborate with cloud partners to support mutual customer success.
  • Participate in major incident management, escalation handling, on-call rotations, and critical production support activities.
What we are looking for:
  • 10+ years of experience designing, building, troubleshooting, and supporting large-scale Data & AI applications using Python, Java, Scala, Spark, or related distributed technologies.
  • Strong work experience of AI-enabled support workflows, agentic AI systems, Claude Skills workflows, RAG architectures, vector databases and any other operational automation frameworks.
  • Proven development/delivery experience at a production scale in Databricks tech stacks like Model serving, Lakehouse, Delta, DLT, Lakeflow, Lakebase platforms is a strong plus.
  • Experience using AI tools for troubleshooting, root-cause analysis, observability analysis, and support workflow acceleration.
  • Strong hands-on expertise in Apache Spark, Spark SQL, Structured Streaming, Delta Lake, and distributed data processing systems.
  • Experience leading production-scale workloads across Big Data, Hadoop, AI/ML, Kafka, Streaming, Data Science, or Analytics platforms.
  • Strong troubleshooting and performance tuning experience for Spark and JVM-based distributed systems, including memory management, garbage collection, heap analysis, and thread dump analysis.
  • Hands-on experience with AWS, Azure, or GCP cloud platforms.
  • Proven experience managing globally distributed technical teams and handling high-severity customer escalations.
  • Strong analytical, debugging, problem-solving, and distributed systems troubleshooting skills.
  • Excellent written and verbal communication skills with strong customer-facing leadership abilities.
  • Strong organizational, multitasking, stakeholder management, and operational leadership capabilities.


BenefitsAt Databricks, we strive to provide comprehensive benefits and perks that meet the needs of all of our employees. For specific details on the benefits offered in your region click here.

About Databricks

Databricks is a unified analytics platform that provides data engineering, collaborative data science, and machine learning capabilities. The company was founded in 2013 by the original creators of Apache Spark, a popular open-source big data processing engine. Databricks provides a cloud-based platform that allows data teams to collaborate and build data pipelines, run machine learning models, and perform advanced analytics. The company has raised over $1 billion in funding and is valued at $38 billion as of November 2021.
Learn more about Databricks
Size
2,000 employees
Industry
Founded
2013

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