Genesis
Data Engineer (Promova)
Vaga remota de Data Engineering com fit claro de localização do candidato.
Publicada3 de jul. de 2026
Países elegíveis1 país aceito
Sinal de senioridadeMiddle
Modelo de trabalhoRemoto
Locais aceitos para candidatos
Ucrânia
Resumo da vaga
Data Engineer (Promova)
Requisitos e responsabilidades
Conteúdo da vaga extraído em seções para revisão mais rápida.
Details
- Direct Business Impact: The data platform you build is the infrastructure the entire company runs on. Every team — marketing, product, etc — depends on the reliability and quality of what you ship. This is foundational work that scales with the business.
- AI-First Culture: You won't be figuring out AI alone. We have a dedicated squad focused on AI adoption and a full setup ready to use: Claude Desktop connected to Tableau, Notion, and our internal data sources. You'll be building the data layer that makes AI agents actually useful.
- Multiproduct Ecosystem: As Promova expands into new products, you'll integrate new data sources and adapt pipelines — building once in a way that scales across the whole ecosystem from day one.
Core experience:
- 2+ years of hands-on experience as a Data Engineer or in a similar data infrastructure role.
- Strong SQL proficiency and practical experience working with cloud data warehouses (BigQuery preferred).
- Experience designing and maintaining ETL/ELT pipelines and layered data warehouse architecture (raw → stage → final).
- Hands-on experience with pipeline orchestration tools (Airflow, MWAA, or Cloud Functions): task dependencies, error handling, retry logic, failure recovery.
- Solid understanding of data quality practices: validation, NULL/duplicate handling, freshness and consistency monitoring.
Bonus points:
- Experience in subscription-based products (web and/or mobile).
What You Will Do
- Develop and optimize the data warehouse (BigQuery): design and maintain the raw → stage → final layer architecture.
- Connect and integrate new data sources: product, payment, marketing, internal services — into a unified pipeline.
- Orchestrate and ensure pipeline reliability: manage task dependencies, error handling, retry logic, and recovery from failures.
- Maintain data quality: build validation checks, handle NULLs and duplicates, monitor freshness and consistency.
- Prepare data as a product for AI agents: clean, documented, predictable datasets that can be trusted without manual verification.
- Contribute to analytical tasks where automation falls short, and support the team through the transition to self-service analytics.
Interview Process
- Intro-call with Recruiter
- Meeting with the Hiring Manager + Test Case
- Bar-raising
Vagas similares
Mantenha uma lista reserva.
Stack
Use estas tags para comparar vagas remotas similares.
Elegibilidade de localização
Candidatos devem aplicar apenas quando o país do perfil estiver listado aqui.
Seu perfilPaís não definidoEntre para comparar seu país com esta vaga.
Fluxo de contratação
O WithMira mostra a vaga e depois envia candidatos para a aplicação da empresa.
1Confira fit da vaga, stack e elegibilidade de localização no WithMira.
2Abra a página de aplicação da empresa pelo link rastreado.
3Salve a vaga ou assine oportunidades similares antes de sair.