Skip to main content
Tallo logoTallo logo

Senior Google Data (AI) Architect

Job

NLX

Hagerstown, MD (In Person)

Full-Time

Posted 3 days ago (Updated 1 day ago) • Actively hiring

Expires 6/29/2026

Apply for this opportunity

This job application is on an outside website. Be sure to review the job posting there to verify it's the same.

Review key factors to help you decide if the role fits your goals.
Pay Growth
?
out of 5
Not enough data
Not enough info to score pay or growth
Job Security
?
out of 5
Not enough data
Calculating job security score...
Total Score
100
out of 100
Average of individual scores

Were these scores useful?

Skill Insights

Compare your current skills to what this opportunity needs—we'll show you what you already have and what could strengthen your application.

Job Description

Senior Google Data (AI) Architect DescriptionJob Description SummaryWe are seeking an exceptional Senior Google Cloud Data Architect who is passionate about building world class, cloud native data platforms and data services that power the enterprise.

This is not a generic architect role
  • it is a high influence, high ownership opportunity to help define how a modern financial institution designs, scales, and operates data platforms on Google Cloud, with a strong focus on enabling data as a product and data as a service capabilities.
You will play a key role in evolving our platforms to support not only analytics and operational workloads, but also emerging AI and intelligent application patterns that depend on high-quality, well-governed, and accessible data.

If you're excited by complex engineering challenges, modern GCP data capabilities, and shaping how data platforms evolve to support the next generation of intelligent systems, we want to meet you.

Job DescriptionJoin us as a Senior Google Data Architect and help shape the future of our enterprise data services ecosystem. In this high impact role, you'll leverage Google Cloud to design and deliver scalable, secure, and reusable data platforms and APIs that fuel analytics, real-time processing, and enterprise integration.

You will define how data is ingested, processed, governed, and exposed across the organization, enabling consistent and reliable access to trusted data.

In parallel, you will help extend these platforms to support AI/ML and emerging agent-driven use cases, ensuring our data foundation is fully prepared to power intelligent applications and automated decisioning in a controlled, enterprise-ready manner.

Job Description Details
  • Define and evolve target-state data platform and data services architecture aligned to business strategy and modernization goals
  • Establish enterprise standards and reference architectures for data as a service, event-driven architecture, and API-based data access
  • Drive adoption of data as a strategic asset, enabling operational, analytical, and intelligent system use cases across the enterprise
  • Architect scalable data platforms that support both traditional workloads and emerging AI/ML use cases, grounded in trusted enterprise data
  • Define integration patterns that unify data services, APIs, and AI capabilities to enable intelligent applications and automation
  • Enable data accessibility, reuse, and contextualization to support cross-platform consumption, including emerging agent-driven workflows
  • Establish foundational patterns for data retrieval, context enrichment, and grounding to support advanced use cases such as AI and real-time decisioning
  • Architect and design enterprise-grade data pipelines supporting batch, streaming, and real-time workloads
  • Build and standardize data ingestion, transformation, and distribution frameworks that power scalable data services capabilities
  • Ensure delivery of high-quality, governed, and trusted data pipelines that support analytics, APIs, and downstream intelligent applications
  • Implement best practices for event-driven data movement and microservices-based integration patterns
  • Design data models and structures that enable data productization and consumption across analytics, APIs, and AI-driven use cases
  • Architect high-performance storage solutions (including Bigtable, Spanner and other GCP services) to meet throughput, latency, and scalability requirements
  • Enable secure, governed, and efficient data access patterns across operational, analytical, and real-time environments
  • Serve as a trusted advisor and technical leader, mentoring teams, driving best practices, and partnering with stakeholders to identify high-value data and AI-enabled use casesRequired Qualifications
  • Job Description SummaryWe are seeking an exceptional Senior Google Cloud Data Architect who is passionate about building world class, cloud native data platforms and data services that power the enterprise.
This is not a generic architect role
  • it is a high influence, high ownership opportunity to help define how a modern financial institution designs, scales, and operates data platforms on Google Cloud, with a strong focus on enabling data as a product and data as a service capabilities.
You will play a key role in evolving our platforms to support not only analytics and operational workloads, but also emerging AI and intelligent application patterns that depend on high-quality, well-governed, and accessible data.

If you're excited by complex engineering challenges, modern GCP data capabilities, and shaping how data platforms evolve to support the next generation of intelligent systems, we want to meet you.

Job DescriptionJoin us as a Senior Google Data Architect and help shape the future of our enterprise data services ecosystem. In this high impact role, you'll leverage Google Cloud to design and deliver scalable, secure, and reusable data platforms and APIs that fuel analytics, real-time processing, and enterprise integration.

You will define how data is ingested, processed, governed, and exposed across the organization, enabling consistent and reliable access to trusted data.

In parallel, you will help extend these platforms to support AI/ML and emerging agent-driven use cases, ensuring our data foundation is fully prepared to power intelligent applications and automated decisioning in a controlled, enterprise-ready manner.

Job Description Details
  • Define and evolve target-state data platform and data services architecture aligned to business strategy and modernization goals
  • Establish enterprise standards and reference architectures for data as a service, event-driven architecture, and API-based data access
  • Drive adoption of data as a strategic asset, enabling operational, analytical, and intelligent system use cases across the enterprise
  • Architect scalable data platforms that support both traditional workloads and emerging AI/ML use cases, grounded in trusted enterprise data
  • Define integration patterns that unify data services, APIs, and AI capabilities to enable intelligent applications and automation
  • Enable data accessibility, reuse, and contextualization to support cross-platform consumption, including emerging agent-driven workflows
  • Establish foundational patterns for data retrieval, context enrichment, and grounding to support advanced use cases such as AI and real-time decisioning
  • Architect and design enterprise-grade data pipelines supporting batch, streaming, and real-time workloads
  • Build and standardize data ingestion, transformation, and distribution frameworks that power scalable data services capabilities
  • Ensure delivery of high-quality, governed, and trusted data pipelines that support analytics, APIs, and downstream intelligent applications
  • Implement best practices for event-driven data movement and microservices-based integration patterns
  • Design data models and structures that enable data productization and consumption across analytics, APIs, and AI-driven use cases
  • Architect high-performance storage solutions (including Bigtable, Spanner and other GCP services) to meet throughput, latency, and scalability requirements
  • Enable secure, governed, and efficient data access patterns across operational, analytical, and real-time environments
  • Serve as a trusted advisor and technical leader, mentoring teams, driving best practices, and partnering with stakeholders to identify high-value data and AI-enabled use casesBasic (Required) Qualifications
  • Minimum 7 years of experience in data architecture, cloud data engineering, or enterprise data platform design
  • Deep hands-on expertise with multiple GCP services, including: BigQuery, Bigtable, P.
.. Visit the Employer site for more details