Data Solutions Engineer building POCs and implementing data pipelines at Keboola. Collaborating with teams to turn business requirements into working solutions.
Responsibilities
Develop proof-of-concept solutions that demonstrate platform capabilities against specific customer requirements
Build and configure data pipelines, transformations, and integrations within Keboola
Create technical documentation and handoff materials that set customers up for success
Present your implemented solutions to customer technical teams, walking them through architecture and design decisions
Join discovery calls when deep technical discussion is needed—data sources, APIs, integration patterns
Translate complex technical concepts for mixed audiences without drowning them in jargon
Partner with Product and Engineering to communicate customer needs and platform gaps
Contribute reusable components and templates that make the whole team faster
4+ years in data engineering, analytics engineering, or technical data analyst roles
You've worked on data teams, at consultancies doing data implementations, or in analytics-focused roles where you built things—not just consumed reports
You're a builder. You get satisfaction from making things work. Ambiguity doesn't paralyze you—it motivates you.
Data Acumen You have a solid understanding of data modeling and ETL/ELT patterns. You can write complex SQL, design a dimensional model, and spot data quality issues before they become problems. This isn't theoretical—you've done it.
Technical Communication You can explain what you've built to anyone—from developers to business stakeholders. You demo confidently, answer questions clearly, and know when to go deep versus when to keep it simple.
Solution Orientation You don't wait for perfect specs. When requirements are ambiguous (and they often are), you figure it out. You take ownership and deliver.
English Proficiency Professional working proficiency is essential. You'll lead technical discussions, write documentation, and present demos in English daily. We operate globally—this isn't optional.
Strong Pluses Python scripting ability for automation and data tasks
Hands-on experience with cloud data platforms (Snowflake, BigQuery, Databricks)
Familiarity with REST APIs and data integration patterns
Understanding of SaaS architecture and deployment models
Nice to Have Experience with BI/visualization tools
Previous work in a customer-facing technical role
Benefits
Competitive salary + equity package.
Budget for education.
25 PTO's plus 3 sick days.
Cool new offices in the heart of Holesovice in Prague. You need to be 3 times a week in the office.
Data Engineer at Regions Bank focusing on designing and maintaining data structures for analytics. Collaborating with technical teams to deliver data - driven business value and products.
Analytics Engineer shaping Statista's reporting platform for data - driven decision - making. Focusing on BI tools like Power BI and improving report usability and transparency.
Director of Data & Analytics leading data strategy for Reach Financial, enhancing decision - making through a data - driven culture. Guiding a team to innovate and implement scalable data solutions.
Data Scientist creating scalable insights from unstructured data at AI safety company. Collaborating with engineering and research teams in a hybrid Paris location.
Senior Analytics Engineer owning the analytics data platform for parenting technology startup. Requires deep SQL expertise and data pipeline experience in a hybrid role.
Senior Analytics Engineer at Higgsfield AI translating product and finance metrics into data models. Collaborating cross - functionally to ensure consistent, reliable data for decision - making.
Senior Data Analytics Developer for Krux, building data infrastructure for innovative SaaS solutions in mining industry. Collaborating with a self - motivated team to drive company growth.
Lead Risk Analytics Consultant at Wells Fargo focused on model governance and risk management strategies. Collaborate across teams to enhance system stability and mentor junior staff.
Analytics Engineering Lead responsible for building data products at Sanlam Fintech. Overseeing analytics engineering practice modernization and talent development within the organization.
Analytics Engineer foundational technical pillar for Analytics & Data Engineering at Skin + Me, transforming raw data into a strategic engine for growth. Reporting to the Director of Data and optimizing performance across business units.