Expoint – all jobs in one place
המקום בו המומחים והחברות הטובות ביותר נפגשים
Limitless High-tech career opportunities - Expoint

Intuit Software Engineer Data Engineering 
Kenya, Nairobi County, Nairobi 
499649275

05.09.2025
Responsibilities
  • 70-85% hands-on development in all phases of the software life cycle.
  • Rapidly fix bugs and solve problems
  • Code reviews and Defect remediation
  • Clean, transform and validate data for use in analytics and reporting
  • Monitor data quality and pipeline performance, troubleshoot and resolve data issues
  • Collaborates effectively with senior engineers and architects to solve problems spanning their respective areas to deliver end-to-end quality in our technology and customer experience.
  • Influences and communicates effectively
  • Designing/developing ETL jobs across multiple big data platforms and tools including S3, EMR, Hive, Spark SQL, PYSpark.
  • Experience with Agile Development, SRUM, and/or Extreme Programming methodologies
  • Actively stay abreast of industry best practices, share learnings, and experiment and apply cutting edge technologies while proactively identifying opportunities to enhance software applications with AI technology
Qualifications
  • BS or MS in Computer Science, Data Engineering or related fieldMain
  • 2+ years of core development experience
  • Proficiency in developing Software for Java (Spring & Springboot), Scala for spark streaming & spark applications, or other JVM based languages.
  • Working Knowledge of SQL, XML, JSON, YML, very strong Python and Linux
  • Knowledgeable with tools and frameworks Docker, Spark, Scala, Jupiter Notebook, Databricks Notebook, Kubernetes, Feature Management Platforms, SageMaker
  • Advanced experience with scripting language – Python or Shell is a must have
  • Strong knowledge of software development methodologies and practices
  • Experience with cloud platforms such as AWS, Azure or GCP - Amazon web services: EC2, S3, and EMR (Elastic Map Reduce) or equivalent cloud computing approaches
  • Strong expertise in Data Warehousing and analytic architecture
  • Experience working with large data volumes, data visualization
  • Experience with low-latency NoSQL datastores (such as DynamoDB, HBase, Cassandra, MongoDB) is a plus
  • Experience with building stream-processing applications using Spark Streaming, Flink, etc. is a plus