GCP Data Engineer

Response Informatics
London, England
10 months ago
Applications closed

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Key Responsibilities Design and implement real-time data pipelines using tools like Apache Kafka, Apache Flink, or Spark Streaming. Develop and maintain event schemas using Avro, Protobuf, or JSON Schema. Collaborate with backend teams to integrate event-driven microservices. Ensure data quality, lineage, and observability across streaming systems. Optimize performance and scalability of streaming applications. Implement CI/CD pipelines for data infrastructure. Monitor and troubleshoot production data flows and streaming jobs. Required Skills & Qualifications 3 years of experience in data engineering or backend development. Strong programming skills in Python, Java, or Scala. Hands-on experience with Kafka, Kinesis, or similar messaging systems. Familiarity with stream processing frameworks like Flink, Kafka Streams, or Spark Structured Streaming. Solid understanding of event-driven design patterns (e.g., event sourcing, CQRS). Experience with cloud platforms (AWS, GCP, or Azure) and infrastructure-as-code tools. Knowledge of data modeling, schema evolution, and serialization formats.

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