Job descriptionLooking for a Data Engineer to join our engineering will contribute directly to the design, automation, and optimization of our data processes, primarily developing solutions in Python within the AWS cloud ecosystem, including Lambda, Glue, Redshift, and other key services.The role also involves working with infrastructure as code (Terraform), Git-based version control, and designing scalable data architectures. The ideal candidate has solid data engineering knowledge, a passion for automation, experience working with large volumes of data, and the ability to proactively propose technical and architectural improvements. Responsibilities :Design, develop, and maintain efficient ETL processes using Python, SQL, AWS Glue, and Redshift.Automate data flows and integrations using AWS Lambda and other serverless services. Propose improvements and optimizations to existing pipelines, prioritizing performance, scalability, and maintainability.Collaborate on the design of scalable and resilient data architectures in AWS.Develop and manage infrastructure as code using Terraform.Actively participate in code reviews and collaborative version control workflows using Git.Document technical solutions and promote best practices in data engineering.Ensure that data processing pipelines can handle large-scale datasets (Big Data). Who we’re looking for : Technical Requirements :Programming Languages : Python – 3+ years of experience (Intermediate to advanced level) o SQL – 3+ years of experience, capable of working with complex data modelsLarge-scale data processing :Experience with PySpark or Big Data environments – 1–2+ years (preferred)Familiarity with distributed processing and performance optimization for high-volume data pipelinesAWS Technologies : Lambda, Glue, Redshift, S3 – 2–3 years of hands-on experienceExperience designing ETL workflows using native AWS servicesProactive mindset with a drive to propose and implement improvementsAnalytical thinker with the ability to identify bottlenecks and performance issues.Effective collaborator with both technical teams and non-technical stakeholdersStrong documentation and technical communication skills Nice to have (not mandatory) :Experience with monitoring and observability tools for data pipelines (CloudWatch, logging, alerting), Knowledge of event-driven architecture designFamiliarity with orchestration tools like ApacheExperience with automated testing for data pipelinesBackground in Fintech or experience handling financial datasets