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A leading company in fintech solutions is seeking a skilled Data Engineer (MLOps) to join their remote team. The role involves designing robust data pipelines and implementing MLOps infrastructure on AWS to support advanced financial technology projects. Ideal candidates will have 3-5 years of experience in data engineering, strong Python skills, and familiarity with AWS services. This position offers an exciting opportunity to work on cutting-edge financial solutions in a dynamic environment.
At Solvedex , we collaborate with prestigious organizations to deliver cutting-edge fintech solutions . Our expertise lies in custom software development, IT consulting, and AI-driven financial technology services . We are dedicated to building scalable, high-performance payment processing systems, fraud detection algorithms, and financial analytics platforms .
As part of our commitment to innovation , we are seeking a highly skilled Data Engineer (MLOps) to join a dynamic team working on advanced financial technology projects . This remote role offers the opportunity to work with state-of-the-art machine learning and cloud infrastructure in a fast-paced, growth-oriented environment .
Role Overview
We are seeking an experienced Data Engineer with strong MLOps expertise and machine learning modeling experience in the financial domain . In this role, you will be responsible for building robust data pipelines and ML infrastructure to support our payment processing systems, fraud detection algorithms, and financial analytics solutions.
Key Responsibilities
Design, develop, and maintain scalable data pipelines using Python, Airflow, and PySpark to process large volumes of financial transaction data.
Implement and optimize MLOps infrastructure on AWS to automate the full machine learning lifecycle from development to production.
Build and maintain deployment pipelines for ML models using SageMaker and other AWS services .
Collaborate with data scientists and business stakeholders to implement machine learning solutions for fraud detection, risk assessment, and financial forecasting .
Ensure data quality, reliability, and security across all data engineering workloads.
Optimize data architecture to improve performance, scalability, and cost-efficiency.
Implement monitoring and alerting systems to ensure production ML models perform as expected.
Qualifications & Skills
3-5 years of experience in Data Engineering with a focus on MLOps in production environments.
Strong proficiency in Python programming and data processing frameworks (PySpark) .
Experience with workflow orchestration tools , particularly Airflow .
Hands-on experience with AWS stack , especially SageMaker, Lambda, S3, and other relevant services .
Working knowledge of machine learning model deployment and monitoring in production.
Experience with data modeling and database systems (SQL and NoSQL) .
Knowledge of financial services or payment processing domain is highly desirable.
Familiarity with containerization (Docker) and CI/CD pipelines .
Excellent problem-solving skills and ability to work in a fast-paced fintech environment .