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Sur

***Only CV's submitted in English will be accepted.

Lead Data Engineer

Location

Serbia

Posted

17 days ago

Salary

$5K - $7K / month

Seniority

Lead

Job Description

Lead Data Engineer

Sur

Role Description As the Data Engineer you will be responsible for designing, building, and maintaining the data engineering function for a remote-first technology organization. This role oversees the full lifecycle of data architecture, pipelines, modeling, tooling, and reliability. It also involves operational duties and direct collaboration with technical leadership, including defining the complete data engineering strategy from the ground up. - Architect, implement, and maintain scalable data pipelines across core systems. - Build and manage analytics infrastructure using both open-source and commercial tools. - Ensure data quality and schema discipline for operational reliability. - Deliver clean, consistent models and dashboards utilized by multiple teams. - Collaborate with stakeholders to support analytics, business intelligence, and decision-making initiatives. Qualifications - 5+ years hands-on data engineering experience; big plus if you’ve been the first data hire before. - Strong SQL plus real programming ability (Python preferred). - Production experience with data tooling (Airflow, dbt, Fivetran). - Experience integrating APIs and working with warehouses/lakes such as Redshift, ClickHouse, or similar. - Experience with analytics/BI tools (Metabase, Looker, Tableau, PowerBI, etc.). - Comfortable with cloud infrastructure and IaC (AWS strongly preferred). - Soft skills to understand business needs and collaborate with non-tech teams on their use cases. - Embedded and real-time analytics experience is a plus. - Streaming architectures (Kinesis/Kafka), ClickHouse, ELK, VictoriaMetrics, reverse-ETL is a plus. Requirements - $5,000 - $7,000 USD/month - Unlimited PTO

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