Machine Learning Engineer
Listed on 2025-12-24
-
Software Development
AI Engineer, Machine Learning/ ML Engineer
Location: New York
We are seeking an exceptional Staff Machine Learning Engineer to lead the design and development of the next generation of our AI-driven fraud detection platform
.
You will architect large-scale ML systems that detect and prevent fraud in real time combining deep machine learning expertise with scalable engineering and domain knowledge in financial systems.
This is a hands-on technical leadership role, shaping our fraud prevention roadmap and ensuring the platform evolves to meet emerging threat patterns through automation, data intelligence, and generative AI–enhanced detection models.
Responsibilities- Architect and build scalable ML systems for fraud detection, anomaly detection, and behavioral analysis.
- Develop and maintain end-to-end ML pipelines: data ingestion, feature engineering, model training, deployment, and monitoring.
- Leverage modern AI techniques
, including generative AI, to improve fraud pattern discovery and model robustness. - Design and implement real-time decision systems
, integrating with transaction or behavioral data streams. - Collaborate closely with engineering, security, and risk teams to define data strategy and labeling frameworks.
- Lead experimentation on model explainability, drift detection, and adversarial robustness for fraud prevention use cases.
- Promote engineering excellence — automation, CI/CD, reproducibility, observability, and model governance.
- Mentor and guide ML and software engineers, fostering best practices and innovation.
- 5+ years of experience building ML or AI systems in production; at least 2+ in fraud, risk, or anomaly detection domains.
- Proven track record designing and maintaining ML pipelines at scale.
- Expertise in Python
, ML frameworks (e.g., PyTorch, Tensor Flow, scikit-learn), and CI/CD (Git Hub Actions, Jenkins, or similar). - Strong understanding of supervised / unsupervised learning
, anomaly detection, and statistical modeling. - Experience with big data and distributed systems (e.g., Spark, Kafka, Flink, or similar).
- Familiarity with cloud platforms (AWS, GCP, or Azure) and containerized deployments (Docker, Kubernetes).
- Strong collaboration, communication, and cross-team leadership skills.
- Prior experience with fraud or financial crime detection
, identity verification
, or risk scoring systems
. - Domain expertise in banking
, payments
, or transaction monitoring - Experience fine-tuning or adapting generative AI / large language models for pattern generation or synthetic data augmentation.
- Familiarity with streaming analytics
, graph ML
, or time-series anomaly detection
. - Knowledge of model governance
, bias mitigation
, and regulatory compliance in fraud contexts. - Contributions to fraud detection research, open-source, or AI publications.
Appgate is An Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or veteran status, age or any other federally protected class. In furtherance of Appgate’s policy regarding affirmative action and equal employment opportunity, Appgate has developed a written affirmative action program. This program is available for review upon request by any applicant or employee during normal business hours by contacting the company’s EEO Coordinator.
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