hero

Data Careers

Looking for a career in data? Start here!
Data Careers
organizations
Jobs
If you are a Data Careers organizationclaim your profile.

Data Quality & Pipeline Architect

Motorola Solutions

Motorola Solutions

IT, Data Science, Quality Assurance
Kraków, Poland
Posted on Mar 10, 2026

Company Overview

At Motorola Solutions, we believe that everything starts with our people. We’re a global close-knit community, united by the relentless pursuit to help keep people safer everywhere. We build and connect technologies to help protect people, property and places. Our solutions foster the collaboration that’s critical for safer communities, safer schools, safer hospitals, safer businesses, and ultimately, safer nations. Connect with a career that matters, and help us build a safer future.


Department Overview

We are responsible for ensuring Motorola Solution's enterprise data is available, accessible, and high quality in order to enable business decisions.


Job Description

We are seeking a Staff or Principal level Data Architecture Lead within the centralized IT Data Infrastructure team. This is a high-impact, high-visibility role, central to modernizing our data warehouse infrastructure and ecosystem for 2026 and beyond. You will be a key driver in ensuring our stakeholders have high confidence in the reliability, timeliness, and accuracy of our data, ultimately helping Motorola unlock our data to become fully AI and LLM ready.

Responsibilities:

Leadership & Strategy

  • Define the long-term vision, standards, and reference architectures to drive modern data warehouse implementation.

  • Lead cross-functional design reviews to influence roadmaps and platform evolution.

  • Establish and report on Service Level Objectives (SLOs) and Service Level Agreements (SLAs) for platform performance and adoption.

Data Quality Architecture

  • Design and roll out enterprise-wide data quality and pipeline standards at scale, including creation of formal data contracts for schema evolution.

  • Architect the data quality framework (test specification, governance, and lifecycle) and establish automated scorecards for completeness, accuracy, and consistency.

  • Develop a statistical-based approach for monitoring data quality shifts, volume anomalies, and identifying outliers.

  • Define standard data models and principles, and ensure the data catalog (e.g., Alation) serves as the single source of truth for lineage and ownership.

Pipeline Architecture and Orchestration

  • Design end-to-end data platform patterns across ingestion, processing, storage, serving, observability, and governance for batch and streaming.

  • Establish governance around data loading (e.g., Airflow DAGs) to ensure data integrity and enable rollback capabilities.

  • Define clear API and interface standards for how upstream source systems and downstream consumption tools (BI, Analytics, ML) interact with the data platform.

  • Design and enforce data security standards, including encryption strategies and access control mechanisms (RBAC/ABAC) for sensitive data.

  • Forecast and optimize compute/storage costs, throughput, and latency; build capacity plans and efficiency goals.

Reliability & Observability

  • Establish robust data monitoring (freshness, volume, schema drift) with automated alerting for violations.

  • Build for platform resilience, including data loading retry with backoff, checkpointing, and a disaster recovery plan.

  • Lead incident response, conduct post-mortems, and update policies to prevent similar future incidents.

  • Implement CI/CD pipelines for data workflows, including automated testing (unit, integration, validation) and environment promotion.

Data Platform Design & Optimization

  • Design end-to-end data platform patterns across ingestion, processing, storage, serving, observability, and governance for batch and streaming.

  • Document trade-offs and decisions for tooling, formats, and processes; ensure reproducible, auditable standards.

  • Define and enforce data freshness, completeness, accuracy, and reliability objectives; establish error budgets and escalation pathways.

  • Design and enforce data security standards, including encryption strategies, access control mechanisms (RBAC/ABAC), and tokenization/masking techniques for sensitive data.

  • Define clear API and interface standards for how upstream source systems and downstream consumption tools (BI, Analytics, ML) interact with the data platform.

  • Forecast and optimize compute/storage costs, throughput, and latency; build capacity plans and efficiency goals.

Data Modeling and Governance

  • Write data governance standards and make recommendations for implementation.

  • Define standard data models and principles.

  • Ensuring the data catalog (e.g., Alation) is fully integrated into the data lifecycle and serves as the single source of truth for lineage, definitions, and ownership.

Mentorship and Collaboration

  • Create reference implementations and mentor junior engineers in their development and design of proposed solutions.

  • Partner effectively with business stakeholders to define compliance SLA requirements, data contracts, and acceptance criteria.

Testing, CI/CD & DevOps

  • Automate testing for data: unit, integration, validation tests, and regression checks; fixture design and synthetic test data.

  • Implement CI/CD pipelines for data workflows: Git-based development, code reviews, and environment promotion.


Basic Requirements

Required Qualifications

  • 8+ years of progressive experience in data engineering or analytics platform roles, with 2+ years in a dedicated Data Architecture, Principal, or Staff role.

  • Bachelor’s or Master’s in Computer Science, Engineering, Mathematics, or a related field; or equivalent practical experience.

  • Demonstrated leadership designing and rolling out enterprise data quality and pipeline standards at scale.

  • Expert proficiency in SQL and Python (or a similar major language like Scala/Rust), with the ability to review and guide code quality and performance.

  • Proven experience operating both batch and streaming data systems in production, with end-to-end accountability for reliability and data trust.

In return for your expertise, we’ll support you in this new challenge with coaching & development every step of the way.

Also, to reward your hard work you’ll get:

  • Competitive salary package

  • Private medical & dental coverage

  • Employee Pension Plan

  • Life insurance

  • Employee Stock Purchase Plan

  • Flexible working hours

  • Strong collaborative culture

  • Comfortable work conditions (high-class offices, parking space)

  • Volleyball field and grill place next to the office

  • Access to wellness facilities and integration events as well as training and broad

  • Development opportunities

#LI-LB1


Travel Requirements

None


Relocation Provided

None


Position Type

Experienced

Referral Payment Plan

No

Company

Motorola Solutions Systems Polska Sp.z.o.o

EEO Statement

Motorola Solutions is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion or belief, sex, sexual orientation, gender identity, national origin, disability, veteran status or any other legally-protected characteristic.

We are proud of our people-first and community-focused culture, empowering every Motorolan to be their most authentic self and to do their best work to deliver on the promise of a safer world. If you’d like to join our team but feel that you don’t quite meet all of the preferred skills, we’d still love to hear why you think you’d be a great addition to our team.