At HBX Group, we believe that diversity drives innovation and makes travel a force for good. We're committed to creating an inclusive workplace where everyone feels valued and respected, embracing different backgrounds, perspectives and talents. Join us and be part of a team where diversity and equal opportunities really do make a difference. You will have the opportunity to work for a company that is going through significant change in becoming the world´s leading travel services provider. We are looking for people that are ready to ride the wave in this exciting journey.
Senior Data Engineer
Location
Spain
Posted
73 days ago
Salary
0
Seniority
Senior
No structured requirement data.
Job Description
Senior Data Engineer
Hotelbeds Group
HBX Group is the world’s leading technology partner, connecting and empowering the world of travel. We’re game-changers, disruptors, the people who bring together local and global brands in accommodation, transport, activities and payments through our network of 300,000 hotels worldwide, 60,000 hard to reach high value clients such as tour operators, travel agents and loyalty schemes across 140 source markets. We are tech-driven, with a customer-first philosophy, and commercial teams whose knowledge and relationships on the ground are second to none. And of course we have an amazing team! Our people, Team HBX Group, are the beating heart of the company who we encourage to ‘move fast, dream big and make the difference’ every day. In fact, we believe that it is tech + data + people that truly sets us apart in the market, alongside our ‘global approach, local touch’ mentality. We’re headquartered in Palma, Mallorca and employ around 3,500 people worldwide. JOB DESCRIPTION: . Civitfun is opening a new data-focused vertical and is looking for a Senior Data Engineer with approximately seven years of experience. This role will be responsible for designing and establishing the foundations of our data architecture, including the creation of a data warehouse on AWS and the definition of all associated data pipelines. The position involves close collaboration with the Platform team, the CTO, and development teams, with the goal of enabling data-driven decision-making across the company. The ideal candidate combines strong technical skills with an understanding of business impact, and is able to translate business needs into robust, scalable, and cost-efficient data solutions. Responsibilities: - Design, build, and maintain scalable data pipelines and data models within the AWS ecosystem, ensuring data consistency, reliability, and performance. - Lead the design and implementation of a new data warehouse, selecting appropriate components of the AWS Data Stack and defining the architectural principles that will guide future development. - Understand the business domain and work closely with stakeholders to translate analytical needs into technical solutions that bring measurable business value. - Anticipate data quality issues, bottlenecks, scalability challenges, and operational risks, proactively proposing improvements and preventive measures. - Act as a technical reference within the data domain, collaborating with Platform, Development, and Business teams to align on priorities and deliverables. - Promote best practices in data engineering, including data governance, testing, documentation, monitoring, and cost control. - Review, analyse, and optimise data processes regularly, ensuring adherence to standards and continuous improvement across the data lifecycle. - Participate in the design and planning of initiatives, contributing technical guidance and helping establish long-term data standards aligned with company goals. - Stay updated on industry trends and emerging technologies and bring this knowledge into the team to improve processes, architecture, and tools Technologies: - Core work will rely on the AWS Data Stack. This may include, but is not limited to, services such as Amazon Redshift, AWS Glue, Amazon S3, AWS Lambda, Athena, Step Functions, and related AWS analytics services. - Experience with Snowflake, Tableau, or other enterprise-grade analytics and reporting tools is considered a plus. - Familiarity with modern data engineering tooling, orchestration frameworks, and CI/CD workflows is valued. Requirements: - Approximately seven years of experience in data engineering, data management, or similar roles, preferably within cloud-based environments. - Strong understanding of data modelling, ETL/ELT processes, and distributed data systems. - Experience working with AWS or another major cloud provider in a data-focused context. - Ability to evaluate and design solutions based on business impact, scalability, reliability, and cost efficiency. - Strong analytical, organisational, and time-management skills. - Excellent communication skills, with the ability to work effectively across technical and non-technical teams. - Ability to operate with autonomy, lead initiatives end-to-end, and act as a technical reference for others. Day-to-Day: - Work closely with the Platform team, CTO, and developers to define data priorities, design data processes, and integrate new data sources into the data platform. - Collaborate with business stakeholders to understand reporting and analytical needs and translate them into data models, datasets, and pipelines. - Design, test, and deploy data workflows using AWS components, ensuring scalability, reliability, and cost control. - Participate in planning sessions, reviews, and other agile ceremonies, contributing technical expertise and aligning on deliverables. - Continuously refine and improve data pipelines, monitoring systems, and architectural components based on performance, business needs, and industry best practices. - Ensure that data is consistently available, high quality, and ready for analysis, supporting the organisation’s transition toward data-driven decision making. You will have the opportunity to work for a company that is going through significant change in becoming the world´s leading travel services provider. We are looking for people that are ready to ride the wave in this exciting journey. As well as an attractive benefits package you will be able to work: - Within an innovative, engaging and multicultural environment. - Have the opportunity to build strong and lasting business relationships and friendships from around the world. - Have the opportunity in developing your career locally or within one of our beautiful working locations across the globe.
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