OneMagnify is an AI native, platform-enabled B2B digital agency operating at the intersection of data, technology, and creativity. We help complex organizations drive measurable business outcomes by building smarter customer experiences and delivering highly integrated solutions across digital, media, and technology. By combining deep industry expertise with advanced analytics and artificial intelligence, we enable our clients to make better decisions, move faster, and compete more effectively in dynamic markets.
Role SummaryAs a Data Architect at OneMagnify, you'll design and own the data infrastructure that makes complex analytics and AI-powered client solutions possible. This is a hands-on technical role working at the center of our data practice — shaping how data flows, integrates, and performs across enterprise systems. The work you do here directly affects the quality of insights our clients rely on to make faster, smarter business decisions.
The Impact You'll HaveData architecture at OneMagnify isn't a back-office function — it's the foundation that every analytics, AI, and customer experience solution is built on. When the data infrastructure is sound, everything downstream works better: campaign performance models are more accurate, personalization engines fire correctly, and clients get reporting they can actually trust.
You'll work on engagements where clients — often large B2B organizations in automotive, industrial, or enterprise technology sectors — are trying to connect disparate systems, improve data reliability, or modernize their pipelines to support cloud-native analytics. You'll partner closely with analytics, engineering, and strategy teams to make sure the architecture you design holds up in production and scales with the client's needs.
You'll also mentor junior data engineers and analysts, raising the technical bar across the team and helping others grow their craft alongside you.
What You'll DoDesign Enterprise Data Architecture
- Build and implement scalable data architecture frameworks that support enterprise analytics and operational needs
- Define data models, storage strategies, and integration patterns that translate business requirements into durable technical solutions
- Ensure designs are built for performance, reliability, and long-term maintainability — not just to solve today's problem
- Develop data quality protocols that ensure consistency, accuracy, and reliability across systems and sources
- Use strong SQL fundamentals to build validation and troubleshooting processes that catch issues before they reach end users
- Set standards that analytics and engineering teams can operate against with confidence
- Lead integration work using APIs and modern pipeline approaches to connect systems that weren't designed to talk to each other
- Optimize ETL/ELT workflows using Databricks and AWS-native services (Glue, Step Functions, Lambda) to build reliable, scalable pipelines
- Leverage the Databricks Lakehouse platform — Delta Lake, Unity Catalog, and Spark-based processing — to improve pipeline efficiency and reduce operational overhead
- Work directly with engineering and analytics teams to align data architecture decisions with broader project goals and client outcomes
- Partner with strategy and delivery teams to ensure data infrastructure supports the business use cases clients care most about
- Translate technical architecture concepts for non-technical stakeholders clearly and without jargon
- Provide technical guidance and mentorship to junior data engineers and analysts
- Help build team-wide fluency in data architecture best practices, pipeline patterns, and data quality thinking
- Bachelor's degree in Computer Science, Information Systems, or a related field — or equivalent professional experience
- 5+ years of hands-on experience in data architecture development or implementation
- Strong SQL skills across data analysis, validation, and troubleshooting
- Hands-on experience with Databricks (Delta Lake, Unity Catalog, Spark) and AWS data services (Glue, Redshift, S3, Lambda, or Step Functions)
- Familiarity with APIs and integration methods for connecting systems across an enterprise
- Deep experience with AWS cloud data infrastructure (Redshift, S3, Glue, EMR, or similar) in a production environment, ideally alongside Databricks
- Familiarity with Databricks MLflow or Feature Store as a bridge between data engineering and AI/ML workflows
- Familiarity with marketing data ecosystems: CRM platforms, CDP architectures, or Martech/Adtech data flows
- Experience in a digital agency, marketing services, or consulting environment where you've navigated multiple client data environments
- Working knowledge of data governance or observability frameworks (e.g., data lineage, cataloging, or pipeline monitoring tools)
We believe great work happens when people have the support and flexibility they need to thrive. Our benefits include medical, dental, and vision coverage, a 401(k) retirement plan, paid holidays, and Flexible Time Off (FTO) so you can take time away to recharge when you need it. We also offer additional programs focused on wellness, financial security, and professional growth.
We are an equal opportunity employerWe believe that Innovative ideas and solutions start with unique perspectives. That’s why we’re committed to providing every employee a workplace that’s free of discrimination and intolerance. We’re proud to be an equal opportunity employer and actively search for like-minded people to join our team.
We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform job functions, and to receive benefits and privileges of employment. Please contact us to request accommodation.
Top Skills
What We Do
We are technologists, strategists, and creative minds dedicated to moving brands forward with work that delivers results. Our messaging, communications and design are driven by human insights and fresh ideas because starting a conversation is one thing, but building a lasting relationship is another.









