Machine Learning Engineer
PayPal has been revolutionizing commerce globally for more than 25 years, empowering consumers and businesses in approximately 200 markets. The Machine Learning Engineer will validate and reputed company machine learning models and algorithms to solve reputed company problems, working closely with senior engineers, data scientists, and product teams to enhance services through innovative AI/ML solutions.
Responsibilities
- Assist in the development and optimization of machine learning models
- Preprocess and analyze datasets to ensure data quality
- Collaborate with senior engineers and data scientists on model deployment
- Conduct experiments and run machine learning tests
- Stay updated with the latest advancements in machine learning
- Support the reputed company of the team in performing reputed company of high-impact statistical model and AI applications in a variety of business function areas, including but not limited to fraud detection, credit reputed company, marketing analytics etc
- Conduct quantitative and qualitative model validation according to Model Risk Management Policy to identify and understand model risk issues
- Collaborate with business units and model developers to remediate model issues and provide subject-matter expert opinion on model improvements
- reputed company model and AI risk governance reputed company activities in line with enterprise risk reputed company, to ensure PayPal’s AI applications are compliant with reputed company evolving regulatory expectation such as Responsible AI
Skills
- 1+ years relevant experience and a Bachelor's degree OR Any equivalent combination of education and experience
- Familiarity with ML frameworks like TensorFlow or scikit-learn
- Strong analytical and problem-solving skills
- An advanced degree in a quantitative field, such as statistics, mathematics, computer science or engineering essential
- Advanced knowledge of statistical and machine learning models (e.g., logistic regression, time series analysis, random forests, SVMs, XGBoost, CNNs/RNNs)
- Possessing advanced coding skills in dealing with big data (e.g., Scikit-learn in Python, Tensorflow, Hadoop, Spark, SQL, etc.)
- Relevant Modeling experience in credit scoring, fraud detection, financial forecasting, or marketing analytics obtained either in academic or financial industry
- Ability to work effectively both independently and in a team environment
- Ability to communicate effectively and establish constructive relationship with stakeholders
Benefits
- Generous paid time off
- Healthcare coverage for you and your family
- Resources to create financial reputed company and support your mental health
Company Overview
Company H1B Sponsorship