Robots & Pencils is an applied AI engineering firm building the next frontier of business architecture. We design and ship AI co-workers that integrate into enterprise operations and deliver measurable results for our clients. We're all in on AWS, combining deep UX capability with senior engineering talent to get AI into production fast and keep it there.
We’ve earned the trust of leaders across Consumer Products and Retail, Education, Energy, Financial Services, Healthcare, and Manufacturing and more, and earned a reputation as the nimble alternative to traditional global systems integrators. Founded in 2009, with delivery centers in Canada, the United States, Eastern Europe, and Latin America, we are smaller, faster, and more senior by design. Our teams average 15+ years of experience. We move fast, sweat the details, and build things that actually ship.
Position Overview
We’re looking for a Staff Data Engineer to join a multi-disciplinary engineering team building modern, enterprise-grade data platforms. This role is ideal for an experienced engineer who can define data strategy, own platform decisions end-to-end, and contribute to technical leadership across the team.
In this role, you will design scalable data lakes, warehouses, and pipelines, define governance and quality standards, and drive data platform modernization across real, in-flight work where performance, reliability, and security are critical. You’ll mentor more junior engineers, partner with leadership on data strategy, and bring an AI-forward mindset.
Why This Role Matters
At Robots & Pencils, we design AI systems for a human world. Our name says it all. Robots and pencils means engineering paired with creativity, because every agent we ship has to work for real people in real workflows. That balance is baked into how we operate.
Every role here contributes directly to that mission. Here, you shape how AI systems integrate into enterprise operations, how teams move at real velocity, and how products create measurable impact for clients and the people they serve. We ship production-ready AI in 30 to 45 days. That pace demands people who take ownership, lead with craft, and care deeply about what they put their name on.
What You’ll Do
Craft & Delivery
- Define data architecture and platform strategy, leading design across pipelines, warehouses, and data lakes
- Build and optimize scalable data pipelines supporting batch and real-time processing
- Define and enforce data governance, quality standards, and compliance frameworks across the platform
- Build monitoring, logging, and alerting for data pipelines and services, and contribute to CI/CD workflows for data deployment and automation
- Drive data platform modernization, optimizing for performance, cost, and scalability
- Bring an AI-forward mindset to your daily work, using tools like Claude, Cursor, and other modern AI assistants to ship higher-quality work at pace
- Design and implement data contracts and event flows in collaboration with backend, platform, and engineering teams
- Lead the design and implementation of data pipelines for production AI/ML systems, including embeddings, vector stores, RAG data preparation, feature stores, and training/inference data flows
- Integrate data services with APIs, middleware, and third-party systems to support end-to-end data consumption
Collaboration & Communication
- Partner with leadership on data strategy, translating technical depth into decisions others can act on
- Collaborate closely with engineering, analytics, AI, and product teams to align data platforms with broader goals
- Advocate for data quality, governance, and platform best practices across teams and engagements
Leadership & Influence
- Establish data engineering standards that lift the quality and consistency of work across the team
- Mentor junior and mid-level engineers, helping them grow their craft, confidence, and impact
- Make high-stakes architectural decisions with clear ownership and consideration of long-term tradeoffs
What You’ll Bring
- 7+ years of professional data engineering experience, with experience leading complex data platform initiatives
- Strong system architecture background with expertise in distributed data systems
- Expert proficiency in Python, Scala, and SQL
- Deep expertise with cloud-native data platforms and enterprise data warehousing
- Strong expertise in data pipeline orchestration and processing
- Strong experience with streaming platforms and real-time data processing (e.g., Kafka, Kinesis, Pub/Sub)
- Strong data modeling expertise and experience with data transformation
- Strong experience with data quality, governance, and compliance frameworks
- Strong experience with container orchestration and CI/CD for data systems
- Strong experience building data pipelines for production AI/ML systems, including embeddings, vector stores, RAG data preparation, feature stores, and training/inference data flows
- Demonstrated leadership and technical mentoring experience across a team or organization
- Strong stakeholder communication skills, with the ability to translate technical depth across audiences
- Demonstrable, day-to-day usage and expert knowledge of AI-forward coding tools such as Claude and Cursor
- Excellent problem-solving skills and the ability to navigate highly ambiguous technical and business challenges with sound judgment
- Experience with data mesh or data fabric concepts, lakehouse architectures, or governance framework implementation is a plus
Helpful Extras and Unique Skills
- Experience with handling and modeling data in the healthcare industry is a plus
- AWS certifications, like Certified Data Engineer – Associate, strongly preferred
You’ll Do Well Here if You Are
- A doer. You see something broken and fix it. You'd rather move on clarity than wait for certainty.
- A fast learner who knows you don't know everything. The AI landscape changes weekly. You're senior enough to know better and curious enough to keep learning anyway.
- Direct in a way that makes the work better. You give honest feedback. You'd rather have the hard conversation than blow smoke.
- Obsessed with craft. You know genius is in the details. You ship exceptional, not perfect, and you don't put your name on work you wouldn't stand behind.
- Built for ownership. You honor commitments, admit mistakes fast, and back your teammates when a decision costs something. No handoffs, no finger-pointing.
- All in. You treat clients' businesses like your own. You take the work seriously without taking yourself seriously.
- Resourceful when the budget, timeline, or team is tight. Constraints don't slow you down. They sharpen you.
- Glad to be in the room with people who care as much as you do. Our teams average fifteen-plus years of experience. We hire people who push each other to do better work.
An offer of employment may be conditional upon successful completion of a background check in accordance with local legislation and our candidate privacy notice. Your current employer will not be contacted without your permission. We are committed to ensuring equal employment opportunities for all job applicants and employees. Employment decisions are based upon job-related reasons regardless of an applicant's race, color, religion, sex, sexual orientation, gender identity, age, national origin, disability, marital status, genetic information, protected veteran status, or any other status protected by law.
Similar Jobs
What you need to know about the Boston Tech Scene
Key Facts About Boston Tech
- Number of Tech Workers: 269,000; 9.4% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Thermo Fisher Scientific, Toast, Klaviyo, HubSpot, DraftKings
- Key Industries: Artificial intelligence, biotechnology, robotics, software, aerospace
- Funding Landscape: $15.7 billion in venture capital funding in 2024 (Pitchbook)
- Notable Investors: Summit Partners, Volition Capital, Bain Capital Ventures, MassVentures, Highland Capital Partners
- Research Centers and Universities: MIT, Harvard University, Boston College, Tufts University, Boston University, Northeastern University, Smithsonian Astrophysical Observatory, National Bureau of Economic Research, Broad Institute, Lowell Center for Space Science & Technology, National Emerging Infectious Diseases Laboratories



