Job Closed
This listing is no longer active.
Nuestro compromiso es promover ambientes de trabajo en los que se trate con respeto y dignidad a las personas, procurando el desarrollo profesional de la plantilla y garantizando la igualdad de oportunidades en su selección, formación y promoción ofreciendo un entorno de trabajo libre de cualquier discriminación por motivo de género, edad, discapacidad, orientación sexual, identidad o expresión de género, religión, etnia, estado civil o cualquier otra circunstancia personal o social.
Analista de Data Warehouse
Location
Peru
Posted
38 days ago
Salary
0
Seniority
Senior
Job Description
Analista de Data Warehouse
Indra Group
• Analizar y diseñar soluciones en Data Warehouse • Desarrollo y mantenimiento de pipelines ETL/ELT • Colaborar en proyectos de implementación de Datalakes • Optimización de procesos de datos • Participación en la estrategia de datos de la empresa
Job Requirements
- Egresado/Bachiller de Universidad de carreras como: Ing. Sistemas / Informática, Computación Científica, Ing. Industrial, Investigación Operativa y otros especializados
- Experiencia en SQL y PL/SQL, Oracle
- Experiencia en Python
- Experiencia en Spark, Datalakes
- Manejo de Unix/Linux, programación en Shell Scripting
- Experiencia en construcción de pipelines ETL/ELT
- Participación en proyectos DataWarehouse
- Conocimiento en Cloud (Azure, AWS)
- Deseable conocimientos en tecnologías de big data [Hadoop, Hive, Apache Spark, Apache NIFI] y de PowerBI
- Trabajo en equipo y enfoque en resultados.
Benefits
- Seguro EPS cubierto al 100%
- Seguro Vida Ley
- Programa de Certificaciones
- Bienestar (psicólogo, nutricionista)
- Descuentos corporativos
- Acceso a plataforma de formación continua (Udemy)
- Cultura colaborativa, oportunidades reales de crecimiento
- Proyectos tecnológicos de gran escala en clientes líderes
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Design the vision and blueprint of an organization’s data framework. • Design and manage data systems, set policies for how data is stored and accessed, coordinate various data sources within an organization, and integrate new data technologies into existing IT infrastructures. • Data modeling and design, including software development and database administration.
• Design and implement the enterprise data architecture. • Lead the development of scalable, secure, and integrated data platforms to support analytics, compliance, and business operations. • Define and implement the company’s data architecture, models, and pipelines. • Design integrations between internal platforms and third-party systems (Salesforce, CX platforms, etc.). • Establish standards for data quality, metadata, lineage, and classification. • Partner with engineering, security, and compliance teams to align on privacy, retention, and access control policies. • Lead the selection and implementation of data platforms. • Drive adoption of data best practices across teams and support data governance efforts. • Maintain data platforms and architecture performance. • Improve data models to support business growth and analytics.
• Build and operate scalable, reliable data pipelines on Azure • Develop batch and streaming ingestion, transform data using Databricks (PySpark/SQL), ADF • Design, build, and maintain ETL/ELT pipelines in Azure Data Factory and Databricks across Bronze → Silver → Gold layers/Medallion Architecture • Implement Delta Lake best practices (ACID, schema evolution, MERGE/upsert, time travel, Z-ORDER) • Write performant PySpark and SQL; tune jobs (partitioning, caching, join strategies) • Create reusable components; manage code in Git; contribute to CI/CD pipelines (Azure DevOps/GitHub Actions/Jenkins) • Apply data quality checks (Great Expectations or custom validations), monitoring, drift detection, and alerting • Model data for analytics (star/dimensional); publish to Synapse/Snowflake/SQL Server • Uphold governance and security (Purview/Unity Catalog lineage, RBAC, tagging, encryption, PII handling) • Author documentation/runbooks; support production incidents and root-cause analysis; suggest cost/performance improvements
• Design and implement batch and real-time ingestion pipelines from internal and external sources • Implement automated data quality checks, observability, and SLA monitoring • Support master data management, metadata, lineage, and access controls • Optimise datasets and pipelines for analytics, ML training, and API consumption • Work closely with Data Scientists and ML Engineers to support feature and model needs • Contribute to long term platform roadmap and AI readiness



