A successful candidate will be a person who enjoys diving deep into data, doing analysis, discovering root causes, and designing long-term solutions. It will be a person that wants to innovate in the world of cloud big data engineering and machine learning. Major responsibilities include:
Understand the client's business need and guide them to a solution using Apache Spark, Hadoop, Kubernetes, AWS etc.
Lead the customer projects by being able to deliver a Spark project on AWS from beginning to end, including understanding the business need, aggregating data, exploring data and deploying to AWS (EMR, S3, Step Functions etc.) to deliver business impact to the organization.
Degree in computer science or a similar field
5+ years work experience in big data engineering
Experience in managing and processing data in a data lake
Able to use a major programming, preferably Scala/Python (preference in that order) on Spark to process data at a massive scale
Experience working with a wide range of big data tools, especially Spark on AWS
Experience with processing large datasets with Spark on AWS
Experience in data modelling, ETL development, and data warehousing.
Experience building/operating highly available, distributed systems of data extraction, ingestion, and processing of large data sets
Experience developing software projects
Experience using Linux to process large data sets
Combination of deep technical skills and business savvy enough to interface with all levels and disciplines within our client's organization
Demonstrable track record of dealing well with ambiguity, prioritizing needs, and delivering results in a dynamic environment
More information about Kubevisor is available here.
Ideally you are in the GMT to GMT+4 timezone.
Kubevisor is a company that believes in the power of data to make a positive change in the world. We are passionate about working closely with organizations to improve both the lives of their customers and their employees through the responsible use of big data and machine learning.