Job Closed
This listing is no longer active.
We connect extraordinary talent with forward thinking companies.
Data Architect – Azure Synapse Analytics, Microsoft Fabric
Location
Colombia
Posted
131 days ago
Salary
0
Seniority
Senior
Job Description
Data Architect – Azure Synapse Analytics, Microsoft Fabric
Multiplica Talent
• Diseñar arquitecturas analíticas modernas • Optimizar rendimiento y calidad de datos • Implementar soluciones utilizando Azure Synapse Analytics y Microsoft Fabric
Job Requirements
- Experiencia sólida en **Azure Synapse Analytics** y **Microsoft Fabric**.
- Dominio de **Power BI** y modelos semánticos.
- Experiencia en **modelado dimensional**.
- SQL avanzado y experiencia con **Spark**.
- Conocimiento de **Delta / Parquet** y patrones de data quality.
- Experiencia en CI/CD y automatización.
- Inglés profesional (C1).
- Deseable**
- Optimización de capacidades en Fabric.
- Direct Lake / Import / DirectQuery.
- Artefactos avanzados de Power BI.
- Streaming (Event Hubs, Stream Analytics, Fabric Real-Time).
- Conocimientos en **FinOps** para optimización de costos y capacidad.
Benefits
- Horario: Full time | L–V 9:00 a.m. – 6:00 p.m.
- Pago: En dólares (USD)
- Tipo: Contractor (Freelance)
- Tiempo: 3 meses con posibilidad de renovación
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Senior Principal Data Engineer
AutodeskAutodesk is an award-winning Fortune 1000 company based in San Rafael, California. Over the years, the company has made significant contributions toward revolutionizing the movemen
• Work with multiple scrum teams (each has 7-9 engineers), and act as a force multiplier by coaching, mentoring, and developing high-performing data engineering teams and individuals. • Establish and uphold high standards for code quality, readability, and maintainability across multiple engineering teams. • Quickly and confidently navigate large, unfamiliar codebases, making sound technical decisions in ambiguous or evolving environments. • Own and drive the data engineering approach to data quality, including framework design, enforcement, and ongoing improvement. • Lead engineering teams through complex production incidents and outages, driving effective triage, root cause analysis, and durable remediation. • Guide teams toward mature, high-performing DataOps practices that improve reliability, observability, and delivery velocity. • Apply deep expertise in SQL best practices, with an emphasis on performance optimization, readability, and long-term maintainability. • Demonstrate strong understanding of conceptual, logical, and physical data modeling, and apply these principles effectively at enterprise scale. • Solve complex, enterprise-scale data engineering challenges across GTM systems, balancing technical rigor with business impact. • Define, standardize, and enforce testing frameworks and quality gates for data engineering workloads. • Serve as a technical decision-maker for best practices, resolving tradeoffs and driving alignment across teams when standards or approaches are unclear. • Business domain experience in subscription and consumption business models. • Work closely with different stakeholders: Business owners, users, product managers, program managers, architects, engineering managers & developers, etc. to translate business needs and product requirements to well-documented engineering solutions. • Constantly communicating updates to stakeholders and other partners with stakeholders in different phases in terms of requirements clarification, solution/planning review, status/progress sharing etc.
Geospatial Data Engineer
NV5NV5 provides technical engineering and consulting solutions across various sectors, including five internationally recognized service verticals: construction quality assurance, inf
• Translate business requirements into technical specifications, data models, data streams, and databases • Convert or embed ML/AI workflows into production-grade, enterprise systems • Design, develop, and maintain infrastructure for geospatial analysis and ML/AI applications on large data • Develop API-driven backend services with FastAPI, Pydantic, and async Python • Work with columnar analytics stacks (DuckDB, PyArrow, Parquet / GeoParquet) • Deploy monitoring tools to track status and performance of system architecture and data flows • Propose enterprise data architecture solutions in support of business development.
Senior Cloud Data Engineer – Azure, DataBricks
Future ProcessingGreat software... because we put people first
• odpowiedzialność za całość rozwiązań współtworzonych wraz z zespołem, • tworzenie lub modyfikowanie rozwiązań do przetwarzania danych w chmurze, • tworzenie i modyfikowanie dokumentacji, • analizowanie i optymalizowanie rozwiązań w zakresie działającego lub projektowanego systemu, • analizowanie wymagań klienta pod kątem dostarczenia optymalnego rozwiązania jego potrzeby biznesowej, • analizowanie potencjalnych zagrożeń, • dostosowywanie rozwiązań względem wymagań biznesowych.
• Reporting to a Technical Lead, this role plays a critical part in supporting the Data Ingestion team and both Business and Technical Product Owners. • Contribute to the expansion and adoption of data products across multiple service lines, products, functions, and delivery teams. • Collaborate with stakeholders to identify and ideate opportunities for continuous improvement of data assets and the services provided to data consumers. • Participate in design and development sessions to enhance data asset creation and ingestion pipelines, with a strong focus on stability, performance optimization, and traceability. • Design, develop, test, and maintain data ingestion pipelines and supporting processes. • Build resilient, fault-tolerant, and modular code to ensure data pipelines and services are robust, scalable, and highly available. • Research, evaluate, and implement new tools, methods, and processes to enable the creation of high-quality, enterprise-grade data products and services. • Actively collaborate across teams to ensure seamless transitions between data ingestion, consumption, and activation stages. • Contribute to documentation, reporting, and knowledge sharing to support long-term platform sustainability.



