Databricks

Sr.ManagerData&AISupportEngineering

$215–310k ~AI est. Dallas, Texas, United States
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Manager candidates.

The Brief

“Sr. Manager – Data & AI Support Engineering at Databricks. Skills: AI-first support, Technical Solutions Engineering. Lead and manage Technical Solutions Engineers. Drive deep technical resolutions for customer issues”

What You'll Achieve.

Improve resolution speed; Improve support quality; Drive exceptional customer outcomes; Improve platform reliability; Improve case quality; Improve operational efficiency; Improve customer experience; Drive faster resolutions

Industry & Context.

Problems you'll solve

Analytical skills; Debugging skills; Problem-solving skills; Distributed systems troubleshooting skills; Troubleshooting; Performance tuning; Root-cause analysis

Eligibility Requirements

On-call rotations

What They're Looking For.

Must Have

10+ years experience designing, building, troubleshooting, supporting Data & AI applications, 10+ years experience using Python, Java, Scala, Spark, Work experience of AI-enabled support workflows, Work experience of agentic AI systems, Work experience of Claude Skills workflows, Work experience of RAG architectures, Work experience of vector databases, Work experience of operational automation frameworks, Proven development/delivery experience at production scale, Experience using AI tools for troubleshooting, Experience using AI tools for root-cause analysis, Experience using AI tools for observability analysis, Experience using AI tools for support workflow acceleration, Hands-on expertise in Apache Spark, Hands-on expertise in Spark SQL, Hands-on expertise in Structured Streaming, Hands-on expertise in Delta Lake, Hands-on expertise in distributed data processing systems, Experience leading production-scale workloads, Troubleshooting and performance tuning experience for Spark, Troubleshooting and performance tuning experience for JVM-based distributed systems, Hands-on experience with AWS, Hands-on experience with Azure, Hands-on experience with GCP, Proven experience managing globally distributed technical teams, Proven experience handling high-severity customer escalations

Nice to Have

Databricks tech stacks experience a plus, Model serving experience a plus, Lakehouse experience a plus, Delta experience a plus, DLT experience a plus, Lakeflow experience a plus, Lakebase platforms experience a plus

What You'll Do.

Lead and manage Technical Solutions Engineers

Drive deep technical resolutions for customer issues

Help customers realize business value

Scale AI-first Data & AI Support Engineering organization

Combine technical expertise and operational excellence

Improve platform reliability

Drive exceptional customer outcomes

Build AI-enabled support workflows

Build reusable automations

Improve resolution speed

Improve support quality

Use Agentic AI systems for troubleshooting

Use logs for troubleshooting

Use telemetry for troubleshooting

Use observability platforms for troubleshooting

Use internal systems for troubleshooting

Accelerate troubleshooting

Accelerate root-cause analysis

Create reusable runbooks

Create reusable prompts

Create reusable agentic workflows

Scale operational efficiency

Ensure customer data safety

Ensure validation practices

Ensure human-in-the-loop controls

Partner with Engineering teams

Partner with Product teams

Drive AI-first support innovation

Drive operational excellence

Drive AI-first support transformation initiatives

Improve operational efficiency

Improve customer experience

Operationalize AI-assisted diagnostics

Operationalize observability insights

Operationalize intelligent escalation management

Build reusable AI-enabled workflows

Build reusable automations

Build reusable runbooks

Build reusable operational intelligence frameworks

Lead Technical Solutions Engineers

Lead support operations personnel

Own and improve operational KPIs

Improve customer satisfaction

Improve escalation management

Improve backlog health

Improve resolution efficiency

Improve support quality

Act as senior escalation point

Drive operational excellence

Drive process optimization

Lead technical assessments

Lead career development

Conduct regular one-on-ones

Conduct annual reviews

Conduct career development discussions

Support complex issues

Guide customers on Spark runtime optimization

Guide customers on distributed systems performance

Guide customers on best practices

Own Engineering JIRA escalations

Drive faster resolutions for product issues

Maintain internal operational documentation

Maintain customer-facing knowledge base assets

Coordinate with Engineering

Coordinate with Backline Support engineering

Coordinate with customer experience intelligence teams

Identify product defects

Reproduce product defects

Report product defects

Act as customer advocate

Collaborate with cloud partners

Support mutual customer success

Participate in major incident management

Participate in escalation handling

Participate in on-call rotations

Participate in critical production support activities

How You'll Work.

Team & Collaboration

Partner with Engineering teams; Partner with Product teams; Coordinate with Engineering; Collaborate with cloud partners

Communication Scope

Written communication; Verbal communication; Customer-facing leadership

Process & Methodology

JIRA escalations

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

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