Skip to main content
Back to jobs

Senior Data Engineer - WBAA Discovery Domain

External
ing logoIng · Cdr (amsterdam - Cedar)
ContractHybridToday
AgileAirflowCI/CDComplianceDockerEvent-Driven Architecture
Cover LetterConnect

Prepare for this interview

Elite

AI-generated questions, company research, and talking points tailored to this role


About the role

Curious abou

Benefits

Paid time offPerformance bonus

Additional Information

This role was originally published on 28 May 2026. Think Forward! Our goal is to help people advance in life and business. We are a well-established brand with strong financials, global reach, and omni-channel strategies. If you value innovation, agile principles balanced with compliance and quality, reliable service, and a practical work approach, this is the place for you. What department? Within Wholesale Banking Advanced Analytics (WBAA) , the Discovery team is a fast-paced group that partners with different areas of ING's Wholesale Bank to explore, shape and validate AI opportunities. Goal is to define, validate and prioritize the most impactful AI opportunities for WB, making the most efficient use of our limited resources. During the idea gathering we check on business impact, re-use, scalability and s trategic fit. The ideas with highest potential and priority will move to an AI discovery phase, where they will be evaluated for desirability, viability, and feasibility. We help stakeholders clarify problems, assess data and technical feasibility, and create rapid prototypes that demonstrate business value. Successful initiatives are then prepared for build and enable ING's Wholesale Banking teams. Role description As an ML/AI Engineer in WBAA Discovery , you turn ambiguous business questions into feasible analytics solutions. You work end-to-end: from problem framing with stakeholders, to data exploration and feasibility assessments, to rapid proofs of concept and prototypes, and finally to clear recommendations and handover packages for build teams. You thrive in a start-up mindset: short feedback loops, iterative delivery, and making pragmatic trade-offs while staying aligned with banking standards (risk, privacy, security and model governance). Success in this role depends on strong stakeholder management , clear communication, and comfort with uncertainty , ambiguity , often working with incomplete requirements and evolving priorities. Do you recognize yourself in this profile: Strong Python programming proficiency Demonstrated expertise in AI integration, including working with large language models (LLMs) such as Gemini and Claude, implementing retrieval-augmented generation (RAG) patterns, designing and evaluating prompts, and utilizing vector databases. Ability to explore data quickly and assess feasibility (data availability/quality, constraints, and expected business impact). Data engineering skills: building scalable data pipelines and optimising data processing (e.g., Spark , Airflow , partitioning, incremental loads, performance tuning). Experience building rapid prototypes/PoCs and translating outcomes into clear recommendations and next steps. Experience designing and deploying cloud solutions , i ncluding CI/CD, containerisation (e.g., Docker ) and infrastructure-as-code (e.g., Terraform). Experience with production-minded development (testing, monitoring/observability, reliability), even when starting from early-stage prototypes. Experience with APIs and service-based architectures (microservices, REST/ gRPC , async programming). Strong stakeholder management: ability to align multiple parties, manage expectations, and communicate complex topics to technical and non-technical audiences. Comfortable with rapidly changing priorities of varying degrees of certainty ; you proactively structure problems and drive decisions with limited information. Collaborative mindset: work effectively with data engineers, analysts, data scientists and product owners in a fast-paced discovery setting. Nice to have (but Not Required): Even if you don't meet every requirement, we encourage you to apply. Experience in these areas is a bonus: ML model training, validation, and experiment tracking experience GCP expertise Familiarity with discovery process or design sprints; strong story-telling and visualisation skills to drive alignment. Experience with Kubernetes and container platforms (e.g., OpenShift). Experience building and maintaining high-load APIs and OpenAPI integration/governance. Basic networking knowledge and familiarity with event-driven architecture. Experience working in regulated environments. Familiarity with agentic frameworks (ADK, LangChain , LangGraph , CrewAI ) and multi-agent design patterns is a plus. Basic understanding of Java/Kotlin for connectivity to ING internal systems. Contribution to open-source projects is considered advantageous . Rewards and benefits We want to make sure that it's possible for you to strike the right balance between your career and your private life. Find out more about our employment conditions. (opens in new window) The benefits of working with us at ING include: 25-28 vacation days depending on contract Pension scheme 13th month salary 8% Holiday payment Hybrid working Personal growth and challenging work with endless possibilities An informal working environment with innovative colleagues


Your Match

How well this role fits your profile.

Company Intel

What employees say

Worked at ing? Share your experience

Interested in this role?

Apply on the company's website.

Cover LetterConnect