Responsibilities:Model Development: Design and implement core decision models for identity, onboarding, authentication, abuse, scam, product-specific models.Anomaly Detection: Develop and refine algorithms for detecting anomalies and identifying potential fraud patterns.Supervised Learning: Apply supervised learning techniques to build predictive models that accurately identify fraudulent activities.Continuous Learning: Utilize continual learning methods to continuously improve model performance and adapt to new fraud tactics.Experimentation and Analysis: Conduct experiments, analyze results, and interpret findings to drive innovation and enhance decision-making processes.
Essential 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.
Minimum Qualifications:
- Minimum of 2 years of relevant work experience and a Bachelor's degree or equivalent experience.
- Familiarity with ML frameworks like TensorFlow or scikit-learn.
- Strong analytical and problem-solving skills.
- Expertise : Familiarity with decision models for identity and authentication.
- Domain Knowledge : Experience in fraud prevention and detection.
- Instrumentation : Experience driving data instrumentation for experimentation and large-scale data collection.
- Real-time Systems : Familiarity with building systems that incorporate real-time feedback and continuous learning.
- Advanced Techniques : Knowledge of reinforcement learning, contextual bandits, sequence models, optimization, or graph mining.
- Education : Master's degree or PhD in Computer Science, Statistics, Data Science, Machine Learning, Artificial Intelligence, or a related quantitative field (STEM).
- Experience : 3+ years of experience within ML Engineering or AI Research roles, with demonstrated expertise in building and deploying real-world predictive models.
- Skills : Strong understanding of anomaly detection, supervised learning techniques, and experiential learning methods. Experience in fraud prevention is a plus.
- Communication : Strong interpersonal, written, and verbal communication skills, with experience collaborating across multiple business functions.
Travel Percent:
The total compensation for this practice may include an annual performance bonus (or other incentive compensation, as applicable), equity, and medical, dental, vision, and other benefits. For more information, visit .
The US national annual pay range for this role is $111,500 to $191,950
Our Benefits:
Any general requests for consideration of your skills, please