Join Evolv as Senior AI/Machine Learning Engineer to advance AI innovation in physical security technology. As a key team member of the AI/ML team, you will be developing and deploying state-of-the-art machine learning and deep learning solutions. Your role will involve leveraging diverse data sources, including magnetic sensors, 3D cameras and other sensors, to create multi-sensor fusion solutions that operate in real-time on constrained hardware platforms. This hands-on role requires deep expertise in classical ML, deep learning, feature engineering, model optimization, and MLOps. You will drive modeling strategy, strengthen model accuracy and robustness, and deploy reliable models in real-world environments. This position is ideal for someone known for measurably improving models—not just building them. Success in the Role: What performance outcomes will you work toward in the first 6–12 months? In the first 30 days: Learn the sensor ecosystem, ML pipelines, and development standards. Review real-time constraints, production workflows, and existing model performance baselines. Engage in code reviews and collaborate across engineering teams. Identify key opportunities for improving accuracy, latency, and robustness. Within the first three months: Lead feature engineering from raw sensor inputs, including temporal, spectral, and statistical features. Develop and optimize classical ML and deep learning models. Propose model improvements through systematic experimentation and benchmarking. Partner with product and hardware teams to translate sensor behavior into ML architectures. By the end of the first year: Own end‑to-end ML model lifecycle for core production systems. Deploy scalable ML models and ensure operational reliability. Drive architecture decisions balancing classical ML and deep learning approaches. Improve robustness across devices and field environments by modeling sensor characteristics.
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Job Type
Full-time
Career Level
Mid Level