Darwoft logo
Darwoft

You have just found the top firm for your next successful software development project! 🧠💻📱.

Data Engineer

Data EngineerData EngineerFull TimeRemoteMid LevelTeam 51-200Since 2010H1B No SponsorCompany SiteLinkedIn

Location

Argentina

Posted

3 days ago

Salary

0

Seniority

Mid Level

Job Description

Data Engineer

Darwoft

Role Description Sumamos un/a Data Engineer Semi Senior para sumarse a un equipo de datos que trabaja sobre productos financieros digitales de alto impacto. Tu misión será diseñar, construir y optimizar pipelines de datos robustos, seguros y escalables que permitan que la información fluya de manera confiable dentro de la organización y habilite mejores decisiones de negocio. - Diseñar y desarrollar pipelines de datos ETL y ELT eficientes, seguros y escalables. - Construir procesos de ingesta, transformación, procesamiento y carga de datos. - Mantener y optimizar soluciones de datos desarrolladas sobre Snowflake, Apache Airflow y bases de datos relacionales. - Trabajar con Python y SQL para procesar información, modelar datos y optimizar consultas. - Administrar y optimizar el almacenamiento y procesamiento de datos en entornos AWS. - Integrar servicios como Amazon S3, AWS Glue y Amazon Athena dentro de la plataforma de datos. - Implementar controles de calidad, validaciones y testing automatizado sobre pipelines y transformaciones. - Incorporar monitoreo, alertas y mecanismos de observabilidad para detectar fallas, demoras o inconsistencias. - Resolver problemas de performance, disponibilidad y calidad de datos en entornos productivos. - Aplicar buenas prácticas de ingeniería de software, incluyendo control de versiones, code review, documentación y CI/CD. - Colaborar con equipos de Producto, Analytics, Tecnología y Negocio para traducir necesidades funcionales en soluciones técnicas. - Participar activamente en ceremonias ágiles y contribuir a la mejora continua de procesos y soluciones. Qualifications - Más de 5 años de experiencia en Data Engineering o posiciones similares. - Experiencia sólida diseñando y construyendo pipelines de datos ETL o ELT. - Experiencia práctica trabajando con Snowflake en entornos productivos. - Experiencia desarrollando y manteniendo DAGs y pipelines con Apache Airflow. - Dominio avanzado de Python aplicado a ingeniería de datos. - Dominio avanzado de SQL, incluyendo modelado, transformación y optimización de consultas. - Experiencia con bases de datos relacionales, preferentemente PostgreSQL. - Experiencia trabajando con AWS y servicios como Amazon S3, AWS Glue y Amazon Athena. - Conocimientos de infraestructura cloud, incluyendo nociones de IAM, EC2 o EKS. - Experiencia con Git, GitLab o herramientas equivalentes de control de versiones. - Experiencia participando en pipelines de CI/CD. - Conocimientos o experiencia en testing automatizado aplicado a pipelines de datos. - Capacidad para trabajar con equipos técnicos y de negocio. - Autonomía para resolver problemas de complejidad intermedia y proponer mejoras. - Familiaridad con metodologías ágiles como Scrum o Kanban. Requirements - Experiencia implementando soluciones de calidad y observabilidad de datos. - Conocimientos de herramientas como Great Expectations, Soda, dbt tests o soluciones equivalentes. - Experiencia trabajando con monitoreo, alertas, logs y métricas operativas. - Conocimientos de procesamiento incremental, idempotencia y manejo de reprocesamientos. - Experiencia con formatos de datos como Parquet o Avro. - Conocimientos de PySpark o procesamiento distribuido. - Experiencia con dbt. - Conocimientos de infraestructura como código, especialmente Terraform. - Experiencia con Kubernetes o workloads ejecutados sobre EKS. - Experiencia optimizando costos y performance en entornos cloud. - Estudios en Ingeniería en Sistemas, Ingeniería Informática, Licenciatura en Sistemas, Ciencias de la Computación o carreras afines. - Experiencia previa en fintech, banca, medios de pago o servicios financieros. - Conocimiento de entornos con datos sensibles, auditoría, trazabilidad y requerimientos de seguridad. Benefits - Contratación full-time en relación de dependencia. - Pago en pesos argentinos. - Trabajo 100% remoto. - Salario competitivo. - Vacaciones y licencias correspondientes. - Días personales adicionales por año. - Acceso a plataformas de aprendizaje. - Tarjeta de beneficios y descuentos. - Welcome kit. - Programas de reintegros. - Clases de inglés. - Programa de referidos. - Regalo de cumpleaños. - Healthy Break. - Celebaciones, aniversarios, fiestas de fin de año y actividades de integración al estilo Darwoft.

Related Categories

Related Job Pages

More Data Engineer Jobs

DriveTime logo

Senior Data Engineer, DBT

DriveTime

DriveTime is a used car dealership and automotive financial network company founded in 2002. The company specializes in helping all individuals finance a reliab

Data Engineer3 days ago

• Owning the design and development of robust dbt Core models that transform raw data into trusted, analytics‑ready datasets in Snowflake • Architecting scalable, high‑performance data models that support enterprise reporting, analytics, and AI use cases • Translating complex business and analytical requirements into efficient, well‑structured ELT solutions through close collaboration with BI, analytics, and business stakeholders • Embedding best practices in data quality, testing, documentation, and lineage to ensure transparency, reliability, and trust in our data ecosystem • Leveraging Python to support automation, data validation, orchestration, and performance monitoring across ELT pipelines • Monitoring, tuning, and optimizing Snowflake query performance and cost efficiency • Leading technical design discussions and contributing hands‑on to critical data initiatives • Serving as a technical lead and mentor, guiding other engineers and elevating standards across the full data transformation lifecycle • Providing thought leadership on modern data transformation patterns, tooling, and architecture to help shape enterprise data strategy • Supporting data governance and metadata enrichment initiatives in alignment with broader enterprise data goals

Arizona
Full TimeRemoteTeam 51-200Since 2013H1B Sponsor

• You'll be the first person at LawnStarter dedicated to data governance - the owner of whether our data can be trusted. • That means the quality and freshness of our source data, pipelines, and reports; the definitions behind our metrics; the standards behind our Segment event tracking; the health of our Lightdash workspace; the data feeding our machine learning models; and the security of the data itself. • This is a hands-on role. You'll work solo at first, with the Analytics team around you but nobody under you - building automation, writing checks, fixing what's broken, and putting processes in place that scale past you. If the scope grows the way we expect, this becomes the foundation of a team you'd build. • Data quality and freshness - automated monitoring across source data, pipelines, and reports; catching upstream schema and source changes before they break anything downstream; running incidents to resolution when they happen. • Data lineage and impact analysis - a living map from production source to warehouse model to dashboard, and the process that uses it: when a production change is proposed, its downstream impact on pipelines, metrics, and reports gets assessed before it ships, not discovered after. The end-state is data contracts with engineering, so breaking changes get caught in their workflow, not ours. • Lightdash - administration, workspace structure, permissions, and the rollout itself. Your job is to give the company self-serve autonomy while keeping the workspace tidy enough that people can find and trust what's there. Enablement is part of the deal - people follow standards they've been taught - and so is keeping queries fast and warehouse costs sane. • The semantic layer - we just shipped it for our most critical metrics: one governed definition per metric, in code. You'll extend definition and mapping to the rest and guard the layer against uncontrolled growth as it scales. • Event tracking governance - our governed Segment event catalog: reviewing new events against its standards, keeping it matched to what production actually sends, and evolving the guardrails (naming, property dictionary, drift detection) as tracking grows. • AI data readiness - AI agents query our warehouse every day through Brain, our internal AI toolkit. You'll govern what data AI tools can access and keep the warehouse AI-legible: documented, consistent, and safe for an agent to query and get the right answer. • Data security and privacy - access controls, PII handling and retention under US state privacy laws, and periodic reviews of who - and which AI tools - can see what. • The governance system itself - the documentation, ownership models, and review loops that keep all of the above running without heroics.

Brazil
$75K - $100K / year
Full TimeRemoteTeam 1,001-5,000H1B Sponsor

• Design and implement scalable data platforms using Snowflake, Databricks, Delta Lake, and cloud technologies. • Build batch and real-time data pipelines using PySpark, Kafka, and Spark Structured Streaming. • Develop AI-ready data architectures supporting analytics, ML, LLMs, and RAG applications. • Design semantic models, data governance, metadata, and data lineage solutions. • Implement vector databases, embedding pipelines, and retrieval solutions for AI applications. • Build and manage ML/LLMOps pipelines, model deployment, monitoring, and CI/CD. • Ensure data security, RBAC, compliance, and governance across the platform. • Mentor engineering teams and define architecture best practices.

India
Hand Talk logo

Data Engineer Intern

Hand Talk

Inteligência Artificial para Acessibilidade Digital

Data Engineer4 days ago
InternshipRemoteTeam 51-200Since 2012H1B No Sponsor

• Assist in developing and maintaining basic data ingestion and transformation pipelines (ETL/ELT) using PySpark and SQL. • Help monitor data pipelines and implement basic checks to ensure data reliability for internal consumers (such as Data Scientists). • Learn and assist in automating pipeline testing and deployment processes. • Work alongside data scientists and software engineers to understand and support integrated data flows. • Assist in documenting data schemas, pipeline architectures, and metadata cataloging.

Brazil