- Career Center Home
- Search Jobs
- Senior Team Manager, Cloud Data & AI Platform Engineering
Results
Job Details
Explore Location
Schwab
Austin, Texas, United States
(on-site)
Posted
10 days ago
Schwab
Austin, Texas, United States
(on-site)
Job Type
Full-Time
Senior Team Manager, Cloud Data & AI Platform Engineering
The insights provided are generated by AI and may contain inaccuracies. Please independently verify any critical information before relying on it.
Senior Team Manager, Cloud Data & AI Platform Engineering
The insights provided are generated by AI and may contain inaccuracies. Please independently verify any critical information before relying on it.
Description
Your OpportunityAt Schwab, you're empowered to make an impact on your career. Here, innovative thought meets creative problem solving, helping us challenge the status quo and transform the finance industry together. We believe in the importance of in-office collaboration and fully intend for the selected candidate for this role to work on site in the specified location(s).
Schwab Technology Services enables the future of how clients manage their money by delivering innovative, reliable technology that expands access to investing and financial planning. Within this environment, Schwab is advancing next-generation data, analytics, and AI capabilities through modern cloud platforms and reusable engineering solutions that accelerate enterprise adoption of predictive and generative AI.
As a Senior Manager, Cloud Data & AI Platform Engineering, you will lead the strategy, engineering, and evolution of shared data and AI platforms that power enterprise analytics and AI at scale. You will shape how cloud-native platforms are designed, modernized, and operated-driving scalability, resiliency, and automation while enabling engineering teams and analytics users to deliver high-impact outcomes. This includes advancing reusable GenAI platform capabilities that support experimentation, observability, governance, and production readiness, as well as enabling intelligent, AI-assisted platform experiences such as conversational analytics and developer productivity accelerators.
In this role, you will influence enterprise-wide platform transformation by establishing engineering patterns, improving operational maturity, and integrating cloud automation and infrastructure as code to enhance efficiency and consistency. You will collaborate closely with security, risk, compliance, and business stakeholders to ensure platforms meet regulatory expectations while supporting innovation. Success in this role is defined by your ability to lead cross-functional teams, translate complex technical capabilities into business value, and deliver scalable, secure, and future-ready AI and data platforms in a highly regulated environment.
What you have
Required Qualifications
- Bachelor's or Master's degree in Computer Science, Engineering, Information Systems, or a related technical field
- 10+ years of experience in cloud, platform, data, analytics, or AI engineering roles
- 5+ years of experience leading engineering teams or enterprise platform capabilities
- Proven experience designing and leading large-scale enterprise cloud platforms with a focus on scalability, resiliency, and high availability
- Demonstrated experience delivering technology solutions in complex, highly regulated environments
- Strong expertise with Google Cloud Platform (GCP) and cloud-native engineering practices
- Experience with cloud technologies such as BigQuery, Kubernetes (GKE), Dataflow, Pub/Sub, Dataproc, Cloud Run, Cloud Functions, Cloud Storage, IAM, and observability tooling
- Strong understanding of platform engineering, site reliability engineering (SRE), service lifecycle management, and operational excellence
- Experience with Infrastructure as Code (e.g., Terraform), CI/CD enablement, automation frameworks, and reusable deployment patterns
- Experience supporting enterprise data, analytics, or AI/ML platforms, including solutions used by engineering and analytics teams
- Familiarity with generative AI concepts, LLM-enabled workflows, or AI-assisted engineering capabilities
- Proven ability to lead cross-functional initiatives and influence stakeholders across technology and business organizations
- Strong communication skills with the ability to connect technical solutions to business outcomes
Preferred Qualifications
- Experience with GenAI enablement platforms, model lifecycle management, or reusable AI frameworks
- Experience with Vertex AI, Dataiku, MLOps practices, or enterprise AI orchestration patterns
- Experience enabling AI-assisted analytics or conversational data experiences
- Experience within financial services or other highly regulated industries
- Experience leading enterprise cloud modernization or platform transformation initiatives
In addition to the salary range, this role is also eligible for bonus or incentive opportunities.
Requisition #: 2026-122711
r1d4rh5eu
Requirements
2026-122711
Job ID: 84610536

Schwab
United States
Schwab is a leader in financial services, helping millions of people make the most of their money. Most Schwab careers are based in one of our two main operating segments, Investor Services or Institutional Services. But across the entire Schwab organization, more than 12,000 employees share a passion for fulfilling our corporate purpose: to help everyone be financially fit.
View Full Profile
More Jobs from Schwab
Sr. Manager Full Stack Software Engineer
Southlake, Texas, United States
15 hours ago
Senior Team Manager, Data Engineering - Cloud Platform
Austin, Texas, United States
15 hours ago
SDET - Workplace Services Engineering
Southlake, Texas, United States
15 hours ago
Jobs You May Like
Median Salary
Net Salary per month
$4,973
Cost of Living Index
68/100
68
Median Apartment Rent in City Center
(1-3 Bedroom)
$2,094
-
$4,012
$3,053
Safety Index
56/100
56
Utilities
Basic
(Electricity, heating, cooling, water, garbage for 915 sq ft apartment)
$101
-
$350
$197
High-Speed Internet
$50
-
$100
$68
Transportation
Gasoline
(1 gallon)
$2.80
Taxi Ride
(1 mile)
$2.61
Data is collected and updated regularly using reputable sources, including corporate websites and governmental reporting institutions.
Loading...
