Job Closed
This listing is no longer active.
Optimizing business performance through people, data, tech & analytics
Data Engineer Manager – Snowflake
Location
Argentina
Posted
70 days ago
Salary
0
Seniority
Senior
Job Description
Data Engineer Manager – Snowflake
Blend360
• Design and implement data ingestion architectures on Snowflake. • Design, develop, and implement scalable data pipelines and architectures on AWS. • Build and maintain ingestion pipelines integrating multiple data sources. • Define and implement data quality checks, validation schemas, and testing frameworks. • Establish data governance components including glossary definitions and data stewardship patterns. • Develop the Streamlit-based ingestion validation UI and its backend logic. • Collaborate with cross-functional teams to align technical solutions with business requirements. • Contribute to documentation and continuous improvement of data reliability and quality processes.
Job Requirements
- 6+ years of experience in data engineering.
- Strong hands-on experience in Snowflake-based ETL pipelines (Must)
- Hands-on experience in Snowflake Cortex (Plus)
- Hands-on experience building and maintaining data pipelines in AWS (Plus)
- Experience building CI/CD pipelines for data workflows (Plus)
- Solid understanding of data quality, validation frameworks, and governance practices
- Strong communication skills, with the ability to work independently and collaborate across technical and business teams
- Experience with AWS ecosystem tools such as Glue, Athena, EMR, S3/Lambda, and infrastructure-as-code tools like CloudFormation, Terraform, or CDK, as well as dbt, is a strong plus
Benefits
- 📚 Learning Opportunities: Certifications in AWS (we are AWS Partners), Databricks, and Snowflake.
- Access to AI learning paths to stay up to date with the latest technologies.
- Study plans, courses, and additional certifications tailored to your role.
- Access to Udemy Business, offering thousands of courses to boost your technical and soft skills.
- English lessons to support your professional communication.
- 🛫 Travel opportunities to attend industry conferences and meet clients.
- 👩🏫 Mentoring and Development: Career development plans and mentorship programs to help shape your path.
- 🎁 Celebrations & Support: Special day rewards to celebrate birthdays, work anniversaries, and other personal milestones.
- Company-provided equipment.
- ⚖️ Flexible working options to help you strike the right balance.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Build data solutions on top of Google Cloud Platform (GCP) using Python and other languages as appropriate. • Contribute to the technical direction and development of Haus’ data services, infrastructure and tools. • Create and maintain scalable data pipelines and foundational datasets to support analytics, modeling, experimentation, and product/business needs. • Develop and support data quality checks at scale, implementing alerting and anomaly detection as necessary • Create dashboards and reports to support business objectives and enable data-driven decision making • Partner with data scientists, engineers, and product teams to accomplish all of the above!
Cloud Data Architect – Microsoft Fabric
Dataciders GmbHOur vision: Nobody has to make bad decisions again
• You work on varied client projects and are responsible for implementing modern data-engineering architectures with a focus on Microsoft Fabric. • You support clients from requirements analysis through architectural decisions to implementation and the successful transition into operational production. • In doing so, you build deep expertise in Microsoft Fabric and adjacent cloud & AI technologies — or develop existing knowledge further into true excellence. • You design and implement advanced data platforms based on Microsoft Fabric. • You shape solutions across the entire data value chain — from the cloud platform through integration and transformation processes to analytics and AI applications. • You work closely with clients in workshops, architecture sessions, and strategic roadmaps, guiding them confidently through transformation phases. • You deliver projects using modern Data & AI technologies — including Microsoft Fabric, Databricks, Azure services, and current ML frameworks. • You work with a variety of industries and company sizes across the DACH region, building a broad and valuable range of experience.
• Build analytical data products and provide valuable insights to business stakeholders in innovative leading e-commerce brands • Design and deploy features for our cloud-based Data Lake and our Customer Lifetime Value (CLV) product in an agile, test-driven environment • Design schemas and datalakes and datamarts • Build scalable data-processing pipelines in the cloud using technologies like Apache Spark, Hive, BigQuery, micro-services, Kubernetes • Use Python and SQL to analyze digital marketing performance
Product Data Engineer
DocPlannerAt Docplanner Group, we’re on a mission to help people live longer, healthier lives. As the world’s largest healthcare platform, each month, we connect 24 million patients with 280k doctors across 13 countries. Our marketplaces, SaaS and AI tools simplify daily tasks and help doctors, clinics and hospitals work more efficiently. Real impact – We help doctors help patients. Your work truly makes a difference. At scale, yet agile – 3,000+ employees, but still fast, flexible, and hands-on. Shape the future, sustain growth – Make a difference now and build for long-term success.
• Design, build, and maintain reliable end-to-end ETL pipelines orchestrated with Apache Airflow • Integrate data from multiple sources (internal operational databases, third-party APIs, SaaS tools) into the Google Cloud Data Warehouse (BigQuery) • Design and evolve data models, warehouse schemas, and transformations to support scalable analytics and KPIs • Ensure data quality, reliability, and observability through monitoring, validation, and alerting • Own the product data structure, mapping product features and behaviors to analytics-ready data models • Define and maintain meaningful KPIs in collaboration with Product and BI • Enable analytics for AI-powered product features, ensuring visibility on usage, performance, quality, and business impact • Partner with Product, BI, and other stakeholders to gather requirements and deliver dashboards and reports • Maintain clear and up-to-date documentation for data models, pipelines, and metrics • Act as the primary bridge between Backend Engineering and BI, owning the flow from data production to analytics consumption • Triage, analyze, and address BI requests related to data availability, correctness, performance, and modeling • Collaborate with Backend Engineers on data contracts, schema evolution, and performance optimization, without owning core backend services • Proactively identify and resolve data-related issues impacting BI and Product teams • Own first-level monitoring and support for data pipelines and Airflow DAGs, ensuring timely resolution of failures • Collaborate with BI and Backend teams to troubleshoot and resolve complex issues • Continuously improve the stability, performance, and maintainability of the data platform



