
1001 - 5000 employees
Founded 2015
💸 Finance
👥 B2C
💰 $115.8M Series A on 2018-11
Finance • B2C
Prima is a digitally-native insurance company that redesigns and digitizes the insurance value chain to deliver fast, customer-friendly policies and claims online. Founded in 2015, Prima has grown to serve over 5 million customers across Europe and reported €1. 8 billion in gross written premiums in 2025, operating in Italy, Spain and the UK through partnerships with established carriers and brokers. The company builds its own tech platforms and data stack to power pricing, distribution, agent/broker management, and claims handling, and joined the AXA Group in November 2025 to support further growth.
🕒 May 13
Improve your chances of getting an interview by checking your resume score before you apply.

1001 - 5000 employees
Founded 2015
💸 Finance
👥 B2C
💰 $115.8M Series A on 2018-11
Finance • B2C
Prima is a digitally-native insurance company that redesigns and digitizes the insurance value chain to deliver fast, customer-friendly policies and claims online. Founded in 2015, Prima has grown to serve over 5 million customers across Europe and reported €1. 8 billion in gross written premiums in 2025, operating in Italy, Spain and the UK through partnerships with established carriers and brokers. The company builds its own tech platforms and data stack to power pricing, distribution, agent/broker management, and claims handling, and joined the AXA Group in November 2025 to support further growth.
• Own the product strategy for the Data Platform, defining the vision, principles, roadmap, and prioritization framework aligned with business and engineering goals • Partner closely with the Head of Data Platform and engineering teams to ensure fast, scalable, and consistent product delivery • Act as the voice of internal users by mapping end-to-end journeys - from discoverability and onboarding to adoption, operations, and scaling - identifying friction points and opportunities for improvement • Drive product discovery and execution in collaboration with cross-functional stakeholders across Data Platform Engineering, Security, Governance and Analytics • Define and monitor success metrics such as adoption, reliability, developer productivity, cost efficiency, time-to-first-value, and data quality to guide prioritization and decision-making • Collaborate with engineering teams on technical trade-offs, sequencing, and solution design, helping balance scalability, usability and speed of delivery • Champion a product mindset across platform teams, promoting usability, self-service, scalability, reliability, and security-by-default principles • Improve platform adoption and enablement through documentation, feedback loops, onboarding experiences, and training initiatives • Contribute to building a modern, scalable data ecosystem leveraging Databricks, AWS and Python-based solutions
• 5+ years of experience in Product Management or a similar role, with strong exposure to internal platforms, developer tools, infrastructure, or data platforms • Proven track record of driving user adoption and delivering measurable product outcomes in complex technical environments • Strong technical understanding of modern data architectures, workflows, and platform ecosystems • Experience working with modern cloud-native data stacks, particularly AWS and Databricks (or equivalent lakehouse/data platform technologies) • Ability to engage deeply with topics such as instrumentation, pipelines, monitoring, data quality, and downstream consumption, translating technical complexity into clear product requirements • Strong analytical and data-driven mindset with experience defining KPIs, measuring outcomes, and driving continuous improvement • Experience operating in cross-functional and ambiguous environments, influencing stakeholders without direct authority. • Excellent communication and stakeholder management skills, with the ability to explain technical concepts and trade-offs to both technical and non-technical audiences • Practical familiarity with: AWS services, IAM/security, networking concepts, observability, and cost optimization, databricks and lakehouse architectures, Python and modern data workflow
• Work Your Way: Enjoy full flexibility - work from home, the office or a mix of both. Plus, work from anywhere for up to 30 days a year. • Grow with us: Get access to learning resources, mentorship and a growth plan tailored to you. • Thrive and perform: Enjoy private healthcare, gym discounts, wellbeing programs and mental health support.
Apply Now🕒 May 12
501 - 1000
Middle Data Engineer specializing in Azure Databricks at Miratech, an IT services company. Designing data pipelines and cloud architectures for clients worldwide.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS
🕒 May 12
501 - 1000
Middle Data Engineer specializing in Azure Databricks at Miratech, developing modern data pipelines and Lakehouse architectures while collaborating with BI teams.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS
🕒 May 12
501 - 1000
Middle Data Engineer specializing in Azure Databricks at Miratech, supporting data platforms for global clients. Designing scalable solutions integrating with existing SQL Server environments.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS
🕒 May 12
501 - 1000
Data Engineer specializing in Azure Databricks at Miratech, focusing on data pipelines and Lakehouse architectures. Collaborating with teams to design scalable cloud data platforms.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS
🕒 May 12
501 - 1000
Middle Data Engineer specializing in Azure Databricks for global IT services company. Designing and developing modern data pipelines and Lakehouse architectures.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS