Kindly DO NOT SEND Resume if you graduated in the recent 3 years.
Kindly DO NOT SEND Resume if you graduated in the recent 3 years.
Sr. Machine Learning Engineer
* 5+ years or more with Machine Learning and 10 years working experience preferred.
* Must be fluent with Python using Pandas, Numpy, scikit-learn, XGBoost, TensorFlow, PyTorch.
* Experience with MLOps tools such as MLflow, Weights & Biases, or equivalent.
* Full-time salaried job in Manhattan with 3 days in the office.
* Local candates to NYC/NJ and must interview in-person.
The Role
As a Senior Associate, Machine Learning Engineer, you'll work alongside experienced ML engineers and data scientists to design, build, and scale machine learning systems that deliver real business value. Reporting to the Executive Director of ML Engineering, you'll gain hands-on experience developing production-grade pipelines, monitoring frameworks, and scalable ML applications that support mission-critical business functions. This is a high-growth opportunity for someone with early industry experience (or strong academic grounding) in machine learning engineering, eager to deepen their expertise in production systems and MLOps while growing within a dynamic AI team operating at the frontier of applied ML.
Key Responsibilities:
- Contribute to the design, development, and deployment of ML models and pipelines across business-critical domains such as financial services and insurance.
- Support production efforts, including model packaging, integration, CI/CD deployment, and monitoring for performance, drift, and reliability.
- Collaborate with senior engineers to build internal ML engineering tools and infrastructure that improve training, testing, and observability workflows.
- Partner with Data Scientists to operationalize prototype models, ensuring they are scalable, robust, and cost-efficient in production.
- Work with large-scale datasets to enable feature engineering, transformation, and quality assurance within ML pipelines.
- Implement monitoring dashboards, alerts, and diagnostics for model health and system performance.
- Contribute to documentation, governance, and reproducibility practices, supporting compliance in regulated environments.