Data Engineer (Latin America/Remote, Non-U.S.)
Ciudad Mexico, Mexico City, Mexico
PulsePoint
PulsePoint is accelerating data and programmatic health technology to deliver contextually relevant and personalized health information, in the moment. Everything Healthcare Marketers need to plan, activate, analyze and optimize their health...- Design, build, and maintain reliable and scalable enterprise-level distributed transactional data processing systems for scaling the existing business and supporting new business initiatives
- Optimize jobs to utilize Kafka, Hadoop, Presto, Spark, and Kubernetes resources in the most efficient way
- Monitor and provide transparency into data quality across systems (accuracy, consistency, completeness, etc)
- Increase accessibility and effectiveness of data (work with analysts, data scientists, and developers to build/deploy tools and datasets that fit their use cases)
- Collaborate within a small team with diverse technology backgrounds
- Provide mentorship and guidance to junior team members
- Ingest, validate and process internal & third party data
- Create, maintain and monitor data flows in Spark, Hive, SQL and Presto for consistency, accuracy and lag time
- Maintain and enhance framework for jobs(primarily aggregate jobs in Spark and Hive)
- Create different consumers for data in Kafka using Spark Streaming for near time aggregation
- Tool evaluation/selection/implementation
- Backups/Retention/High Availability/Capacity Planning
- Review/Approval - DDL for database, Hive Framework jobs and Spark Streaming to make sure they meet our standards
- Airflow - for job scheduling
- Docker - Packaged container image with all dependencies
- Graphite/Beacon - for monitoring data flows
- Hive - SQL data warehouse layer for data in HDFS
- Kafka- distributed commit log storage
- Kubernetes - Distributed cluster resource manager
- Presto - fast parallel data warehouse and data federation layer
- Spark Streaming - Near time aggregation
- SQL Server - Reliable OLTP RDBMS
- GCP BQ
Requirements:
- 5+ years of data engineering experience
- Strong recent Spark experience
- On-prem experience
- Fluency in Python, experience in Scala/Java is a huge plus (Polyglot programmer preferred!)
- Proficiency in Linux
- Strong understanding of RDBMS, SQL;
- Passion for engineering and computer science around data
- Knowledge and exposure to distributed production systems i.e Hadoop is a huge plus
- Knowledge and exposure to Cloud migration is a plus
- Willing and able to work East Coast U.S. hours (9am-6pm EST); you can work remotely
- Willingness to participate in 24x7 on-call rotation
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: Airflow Computer Science Data quality Data warehouse DDL Docker Engineering GCP Graphite Hadoop HDFS Java Kafka Kubernetes Linux Open Source Python RDBMS Scala Spark SQL Streaming
Perks/benefits: Career development Startup environment
More jobs like this
Explore more career opportunities
Find even more open roles below ordered by popularity of job title or skills/products/technologies used.