Title – ML Engineer Location: London UK Work Mode : Hybrid (Weekly twice) Job Description Redis cluster setup Kafka/Flink streaming pipelines S3 Data pipeline Real time micro batches implementation (5 minutes, hourly, daily) Mongo/Atlas as alternative implementation (we might land with S3 instead) SageMaker MLOps / SageMaker Training / SM Model Deployment Pytorch Design machine learning systems: You will work on building and implementing machine learning models and deploying these models into production. Data analysis: You will be responsible for improving data quality through data cleaning, validation, and transformation so that it can be used effectively by the machine learning models. Educate the team: As our machine learning expert, you will also have the opportunity to teach others about machine learning principles and help them understand how these principles can be applied to our products. Stay updated: You should stay abreast of latest trends and developments in machine learning, ensuring we continue to innovate. Qualifications Bachelor's Degree in Computer Science, Statistics, Applied Math or related field. 8 years of practical experience with machine learning, algorithm design, data modeling, and software development. Hands-on experience in machine learning, predictive modeling and analysis, and cross-functional collaboration. Proficient in Python, R, Java or C++ programming languages. Experience with Hadoop, Hive, Spark, SQL or other big data technologies. Excellent communication skills, as this role will collaborate with both technical and non-technical colleagues.