Scala Data Engineer

Tenth Revolution Group
Bristol
1 month ago
Applications closed

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Scala Data EngineerI am working with an analytics and digital solutions consultancy that partner with clients from several different industries to unlock their potential to become truly data driven. They work to deliver tailored, bespoke systems to fit the needs of their clients with a focus on cloud-based transformations and AI products.You will be joining this award-winning consultancy during a period of significant growth off the back of winning new projects. They have undergone year on year growth and are backed by a private equity firm who are committed to continuing to help this business grow. You will work on a UK based project but the business have continued to build on their operations in both central Europe and America.You will be joining a project with a focus on data migration from Hadoop to the cloud, creating robust data pipelines and working with Scala, Spark and other AWS services to process and manipulate data.As part of this role, you will be responsible for some of the following areas.Develop big data solutions utilising Hadoop and Apache SparkCreate, develop and maintain robust ETL pipelines using AWS Glue and ScalaDesign and implement Scala-based applications for the use of big data processingWork with other technical members of the team to enhance the performance of code, promoting best practice at all timesImplement data processing and transformation workflows for both unstructured and structured dataTo be successful in this role you will have.Previous experience working as a Data Engineer utilising ScalaHands on experience with Apache Spark and Spark-ScalaExperience working within the Hadoop ecosystemExperience creating ETL pipelines using Scala or AWS GlueStrong understanding and experience with AWS technologies such as S3, Lambda and EMRThis is a fully remote role and you would be employed on a fixed-term contract basis for 12 months (the duration of the current project. My client are offering a starting salary of up to £120,000 depending on experience with a benefits packages that includes 28 days annual leave, private medical care and a strong company pension scheme.This is just a brief overview of the role. For the full information, simply apply to the role with your CV, and I will call you to discuss further. My client is looking to begin the interview process ASAP, so don't miss out, APPLY now! Or feel free to contact me on (phone number removed) or (url removed)

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