The experience innovation company.
Senior Data Engineer
Location
Kosovo
Posted
5 days ago
Salary
0
Seniority
Senior
Job Description
Senior Data Engineer
Valtech
• Design and implement scalable data platforms and pipelines across cloud environments • Develop reliable batch, streaming, and near-real-time pipelines • Build ingestion, transformation, and curation workflows for both structured and unstructured data • Implement modern data architectures including lakehouse patterns and medallion layering • Deliver high-quality datasets that support analytics, machine learning, causal modeling, and optimization systems • Design scalable logical and physical data models • Orchestrate workflows using tools such as Airflow, dbt, Lakeflow, or equivalents • Apply modern architecture patterns including event-driven and streaming architectures • Establish strong data observability • Enable data serving layers to support downstream systems • Collaborate with data scientists, ML engineers, analysts, and business stakeholders
Job Requirements
- Strong hands-on experience with Apache Spark and Delta Lake
- Strong programming skills in Python and SQL
- Proven experience building batch and streaming data pipelines
- Solid understanding of data modeling, data quality, and governance principles.
- Experience with one or more major cloud platforms (Microsoft Azure / Fabric preferred, also AWS or GCP)
- Familiarity with modern data platforms (e.g., Databricks and Snowflake)
- Experience with lakehouse architectures and distributed data systems
- Strong understanding of scalability, reliability, and performance considerations in data pipelines
- Problem-solving skills focused on scalability and reliability
- Collaborative approach to working in cross-functional teams
Benefits
- growth opportunities
- values-driven culture
- international careers
- the chance to shape the future of experience
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Data Platform Development & AI Enablement: You will build, maintain, and optimise ELT pipelines that ingest data from internal operational systems, APIs, third-party platforms, and event sources into Snowflake using tools such as Fivetran and cloud-native integrations. • Data Modelling, Transformation & Analytics Enablement: You will develop and maintain raw, curated, and business-ready data models within Snowflake, ensuring data is structured, documented, and optimised for analytics and self-service reporting. • Platform Optimisation & Continuous Improvement: You will help improve the reliability, scalability, performance, and observability of the modern data platform, identifying opportunities to optimise Snowflake usage, streamline workflows, improve automation, and enhance developer experience as TLC’s data capabilities continue to evolve. • Cross-Functional Collaboration: You will work closely with Analysts, Technology, Product, and Client teams to understand data requirements and deliver scalable data solutions that support business decision-making. • Operational System Integration: You will support integrations across TLC’s operational ecosystem, including COSMOS, Mixpanel, external plugins, and third-party platforms, helping ensure reliable, accurate, and scalable movement of data across business systems. • Data Quality, Governance & Engineering Best Practices: You will contribute to data governance, testing, monitoring, documentation, and engineering standards to ensure trusted, high-quality datasets and scalable development practices across the data platform. This includes version control, code reviews, automation, and continuous improvement of engineering processes.
Data Engineering Lead
Zup InnovationWe create digital assets to build, grow and accelerate your applications with efficiency, security and scalability.
• Design and implement reusable data platforms and systems with a focus on security • Define architectural standards for data flows, ensuring scalability and resilience • Lead the development of data ingestion, processing, and governance pipelines across cloud and on-premises environments • Propose and evolve integration solutions between dependent teams using modern data tools • Implement best practices for observability, cost control, and security in distributed environments • Support the dissemination of development standards, code review practices, and release automation
Role Description We are looking for an Analytics Consultant with sound experience in the development of data integration solutions. SQL and working knowledge of Data Integration techniques necessary (ETL, Replication, Profiling) to support business needs. - Develop and maintain SQL code and SSIS packages. - Analyze data and solve new and existing business issues. - Reviewing query performance and optimizing code. - Provide production level support. - Fully document all processes that are being created. - Sound experience on Microsoft on-premise data integration stack (SSIS, SQL, SQL Server). - Skilled in PowerBI. - Fluent in English, able to communicate both with the team and client. - Knowledge of insurance industry is a plus. - Reside in Argentina. Qualifications - Sound experience in data integration solutions. - Proficiency in SQL and Data Integration techniques (ETL, Replication, Profiling). - Experience with Microsoft on-premise data integration stack (SSIS, SQL, SQL Server). - Skilled in PowerBI. - Fluent in English. - Knowledge of the insurance industry is a plus. - Must reside in Argentina. Requirements - Experience developing and maintaining SQL code and SSIS packages. - Ability to analyze data and solve business issues. - Experience in reviewing query performance and optimizing code. - Capability to provide production level support. - Ability to fully document processes.
• Design, develop, and maintain enterprise data architecture solutions that support business growth, operational efficiency, regulatory compliance, and risk management objectives. • Lead modernization initiatives across data platforms, integration frameworks, reporting environments, and analytical capabilities. • Evaluate and implement emerging technologies, including cloud services, artificial intelligence, machine learning, automation, and advanced analytics solutions where appropriate. • Architect scalable and reusable data integration frameworks that reduce maintenance overhead and support future business expansion. • Develop and optimize ETL/ELT processes, data pipelines, and data movement strategies across multiple systems and platforms. • Collaborate with business leaders, risk management teams, compliance personnel, and technology stakeholders to translate business requirements into sustainable technical solutions. • Design data models, metadata strategies, governance frameworks, lineage tracking, and quality controls that support enterprise reporting and regulatory requirements. • Partner with stakeholders to identify opportunities for process automation, operational improvement, and enhanced decision-making through data-driven solutions. • Establish and promote development standards, architectural best practices, and data engineering disciplines that balance agility with long-term maintainability. • Evaluate existing systems and processes to identify technical debt, scalability limitations, operational risks, and modernization opportunities. • Support risk modeling, forecasting, financial analytics, and strategic reporting initiatives through robust data architecture and engineering practices. • Implement monitoring, validation, reconciliation, and control processes to ensure data accuracy, integrity, availability, and auditability. • Participate in technology roadmap planning and provide architectural guidance for future-state platform evolution. • Serve as a technical leader and trusted advisor across multiple business and technology teams. • Maintain awareness of regulatory expectations, industry trends, cybersecurity considerations, and emerging technologies impacting financial services organizations.



