Shape the future of fraud detection technology as a talented Machine Learning Engineer. Focus on building systems that enhance customer trust and optimize transaction safety.
In this critical role, you'll create and maintain machine learning models capable of identifying fraud and risky transactions. Building scalable feature engineering pipelines is essential, alongside optimizing models for reliability through MLOps best practices. Your involvement in architectural assessments will further contribute to better practices and systems.
Key Responsibilities:
• Design machine learning models for identifying fraudulent activities
• Create reliable engineering pipelines for various data types
• Optimize model performance and ensure reliability through monitoring
• Contribute to technical discussions and code improvements
Requirements:
• Degree in computer science, data science, or equivalent
• Minimum 2 years’ experience in machine learning roles
• Proficient in programming languages like Python or Scala
• Familiarity with ML frameworks such as scikit-learn
• Experience with AWS, GCP, or Azure preferred
Utilize your machine learning skills to forge secure, productive solutions that bolster customer confidence.
#J-18808-Ljbffr