At Smeetz, we are dedicated to revolutionizing the way visitor attractions manage their sales and optimize their revenue. As a unified commerce Software-as-a-Service (SaaS) platform powered by AI, we provide attractions such as theme parks, museums, and theaters with an all-in-one solution to effectively manage, market, and price their products.
We are looking for a passionate and detail-oriented Analytics Engineer who thrives on transforming raw data into actionable insights. This is an exciting opportunity to join a fast-growing SaaS startup and play a pivotal role in shaping our data infrastructure and analytics capabilities from the ground up.
Responsibilities
Design, build, and maintain scalable and reliable data models within our data warehouse (Google BigQuery) using dbt to power business intelligence and analytics.
Develop and own key business intelligence dashboards and reports in our BI tool (e.g., Looker, Tableau, Metabase), providing actionable insights to stakeholders across sales, operations, and product teams.
Collaborate with business stakeholders to understand their needs, translating complex questions into technical requirements and analytical projects.
Analyze large, complex datasets to identify trends, opportunities, and performance drivers, delivering clear and compelling findings.
Ensure data integrity and quality by developing data validation tests, documentation, and monitoring our core data pipelines and models.
Build the foundational data infrastructure that empowers self-service analytics and prepares Smeetz for future data science and AI initiatives.
Requirements
Benefits
Innovate with Smeetz, the future of unified commerce for visitor attractions. Join our amazing team and revolutionise the attractions industry with us! We are always on the lookout for the best talents 🚀
Please mention you found this job on AI Jobs. It helps us get more startups to hire on our site. Thanks and good luck!
Be the first to apply. Receive an email whenever similar jobs are posted.
Understand the required skills and qualifications, anticipate the questions you may be asked, and study well-prepared answers using our sample responses.
Analytics Engineer Q&A's