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Apple Software Engineer Apple Pay 
United States, Texas, Austin 
329082627

07.04.2025
Your responsibilities will encompass designing and implementing ML/data infrastructure, platforms, and solutions tailored to our specific needs. This will involve developing infrastructure and platforms that empower others and facilitate collaboration to address a wide range of challenges within multifaceted production environments. You will be closely working with machine learning engineers, data scientists, software engineers to ensure a flawless integration and operation. Additionally, you will explore opportunities within our production and development processes to leverage computer vision, deep learning and other ML/software tools to drive continuous improvements and innovation.
  • Solid software development skills in one or more general purpose languages such as Python, Java or Swift, adhering to the best coding practices
  • Experience with object oriented analysis and design
  • Proficient in network infrastructure, databases, telemetry, containerization and cloud technologies.
  • Experience with full software development life cycle, including coding standards, code reviews, source control management, build processes, testing, and operations
  • Experience in Machine Learning Operations (MLOps) in deploying, operationalizing, and maintaining scalable AI/ML.
  • Familiarity with data processing and ETL technologies, including NumPy, Pandas, Amazon S3, Kafka, Airflow, Kubeflow, Dataflow, etc.
  • Basic knowledge of Machine Learning concepts and frameworks.
  • Strong communication, collaboration & interpersonal skills
  • BS degree in computer science or equivalent field plus 5-8 years of software development experience or equivalent experience
  • Experience in machine learning, data science, statistics, computer vision, image processing
  • Experience with building biometric fraud systems, digital identity management