Streaming Data Engineer

N Consulting Limited
London
4 days ago
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LocationLondon, England, United Kingdom# Streaming Data Engineer at N Consulting LtdLocationLondon, England, United KingdomSalary£400 - £450 /dayJob TypeContractDate PostedJanuary 16th, 2026Apply NowRole: Senior Streaming Data Engineer (AWS / Apache Flink)Location: LondonDuration: Contract (2-3 months)Skills Requirements 1. MSF (Managed Service for Apache Flink) 2. Data analytics expertise 3. MSK (Managed Streaming for Apache Kafka), Amazon Redshift, Amazon Aurora 4. CI/CD expertise & CloudFormation 5. Machine Learning is good to have 6. Usage of Kiro IDE* Analyze and organize raw, complex data* Develop and maintain architectures such as databases and processing systems* Implement systems for tracking data quality and consistency* Collaborate with data scientists and architects on several projects* Develop data set processes and use programming skills to build robust data pipelines* Design, construct, install, test and maintain data management systems* Build high-performance algorithms, predictive models, and prototypes* Ensure the business uses the data responsibly and complies with data protection regulationsQualifications:* Bachelor’s degree in Computer Science, Software Engineering or related field* At least 8 years of experience in data engineering or in a similar role* Experience with big data tools: Hadoop, Spark, Kafka, etc.* Experience with relational SQL and NoSQL databases, including Postgres and Cassandra* Knowledge of programming languages including Java, Python, etc* Experience with AWS cloud services: S3, EC2, EMR, RDS, Redshift* Experience with stream-processing systems: Storm, Spark-Streaming, etc* Strong organizational and communication skills* Ability to work in a fast-paced, agile environmentBenefits:* Innovative and dynamic work environment* Continued professional development opportunities* Competitive compensation package* Comprehensive health and benefits package* Flexible work hours and remote work options* Team building and social activitiesAs a Streaming Data Engineer at N Consulting Ltd, you will have the opportunity to be part of a diverse and dedicated team, working at the forefront of data processing technologies. Our company culture is inclusive and innovative, where every employee is valued and has a tangible impact on the services we provide to our clients.
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