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Data Architect

Ensono
London
5 days ago
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At Ensono, we're evolving into a software-first Managed Services Provider, powered by the Envision Operating System. To deliver predictive, zero-touch operations across mainframe, distributed, and cloud environments, we need a Data Architect to define the data foundation that enables AI/ML, automation, and analytics at scale. The Data Architect will own the blueprint for data flow, governance, and integration across ServiceNow, Snowflake, operational telemetry, and customer systems. You'll partner closely with Data Engineers, Data Scientists, ML Engineers, and MLOps to ensure all models and applications are built on reliable, standardized, and scalable data pipelines. This role is equal parts strategic designer and practical enabler: setting standards and guardrails while ensuring projects can move fast and deliver measurable business outcomes.


What You Will Do

  • Define and maintain enterprise data architecture that supports AI/ML platforms, analytics, and operational reporting.
  • Establish and enforce standards for data modeling, integration, and governance across Snowflake, ServiceNow, and other core platforms.
  • Design how data is collected, processed, stored, and consumed across EnvisionOS and predictive services.
  • Partner with Data Engineering to ensure pipelines align with architecture principles, are efficient, and support multiple downstream consumers.
  • Work with ML Engineers and MLOps to design feature stores, model input/output schemas, and scalable serving architectures.
  • Ensure data is secured, governed, and compliant with enterprise standards while maintaining accessibility for innovation.
  • Drive architectural decisions that balance scalability, latency, and cost across global environments.
  • Continuously evaluate new tools, frameworks, and patterns to evolve the architecture in step with AI/ML and automation growth.

Qualifications

  • 8 plus years of proven experience as a Data Architect, Principal Data Engineer, or equivalent in enterprise-scale environments.
  • Expertise in Snowflake (or similar cloud data warehouses), SQL, and modern data lake/data mesh architectures.
  • Strong understanding of ServiceNow data models and IT operations datasets.
  • Hands‑on background in ETL/ELT pipeline design and orchestration frameworks.
  • Familiarity with AI/ML data readiness concepts (feature engineering, feature stores, model‑serving pipelines).
  • Deep knowledge of data governance, lineage, and compliance frameworks.
  • Proficiency in at least one programming language (Python, Java, or Scala).
  • Experience collaborating with ML, SWE, and Ops teams to ensure end-to-end usability of data assets.

Benefits

  • Unlimited Paid Days Off
  • Three health plan options through Blue Cross Blue Shield
  • 401k with company match
  • Eligibility for dental, vision, short and long‑term disability, life and AD&D coverage, and flexible spending accounts
  • Ability to take advantage of fitness centers (depending on location)
  • Wellness program
  • Flexible work schedule
  • Salary range: $126,000 to $183,000 annually (subject to change)

Ensono is an Equal Opportunity/Affirmative Action employer. We are committed to providing equal employment to our Associates and building a diverse and inclusive workforce. All qualified applicants will be considered without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, protected veteran status, disability, or other legally protected basis, in accordance with applicable law.


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