We are looking for an outstanding Data Engineer who is proficient in Big Data Systems to support Machine Learning / Economics based Statistical Models, Algorithms, and Solutions at scale. As a Big Data Engineer at MorphL you will work closely with Scientists, Economists and Engineers to architect & implement solutions that handle large volumes of data, author complex data pipelines, and create automated reporting.
You will drive actions that scale across enterprises while working on complex AI problems. This is a unique, high visibility opportunity for someone to have a large impact, dive deep into large-scale enterprise problems and, enable measurable actions on large scale digital products & services. If you are a sharp, experienced engineer with demonstrated capabilities in implementing machine learning and analytical solutions on Big Data stacks we want to hear from you.
Qualifications
Bachelor's degree in Computer Science, Engineering, Technical Science or 3 years of IT/Programming experience.
Minimum 2+ years of expertise in designing, implementing large scale data pipelines for data curation and analysis, operating in production environments, using Spark, pySpark, SparkSQL, with Java, Scala or Python on-premise or on Cloud (AWS, Google or Azure)
Minimum 1 year of designing and building performant data models at scale for using Hadoop, NoSQL, Graph or Cloud native data stores and services.
Minimum 1 year of designing and building secured Big Data ETL pipelines, for data curation and analysis of large scale production deployed solutions.
About MorphL
We started MorphL in January 2018, after being awarded a Google Digital News Initiative grant to create a machine learning platform capable of predicting user behaviors in mobile/web applications. We quickly realized that our mission is, in fact, to democratize AI and to empower people that want to AI-enhance their digital products or services, who believe their users deserve a personalized experience.