About the Role
<p><strong>Senior AI Engineer, Time-Series Signal Processing</strong></p>
<p>Bright.AI is a high-growth Physical AI company transforming how businesses interact with the physical world through intelligent automation. Our platform processes visual, spatial, and temporal data from billions of real-world events—captured through edge devices, mobile sensors, and large-scale cloud infrastructure—to deliver intelligent, real-time decisions.</p>
<p>We are now hiring a Senior AI Engineer – Time-Series Signal Processing to lead the development of AI/ML solutions built on high-frequency multi-modal sensor data. This is a critical role focused on modeling and understanding time-series signals coming from IoT devices equipped with various sensors (IMU, acoustic, pressure, temperature, etc) that drive intelligent automation across physical infrastructure systems.</p>
<p>You’ll work on building cutting-edge real-time AI models that process noisy, high-throughput data streams and extract meaningful insights for real-world decision-making—at both the edge and cloud scale.</p>
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<p><strong>Responsibilities</strong></p>
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<p>Design and implement real-time signal processing and ML pipelines for multi-modal time-series data such as those acquired from IMUs, microphones, pressure or force sensors, ultrasonic transducers, and similar sensor sources.</p>
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<p>Develop and deploy ML models for time-series classification, prediction, anomaly detection, activity recognition, condition monitoring and pattern analysis.</p>
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<p>Lead research and implementation of RNN-based architectures (especially LSTMs and their variants) as well as temporal transformer models as needed.</p>
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<p>Collaborate with hardware, embedded, and product teams to integrate models into edge devices and IoT platforms.</p>
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<p>Drive experimentation and optimization of signal-processing techniques (e.g., filtering, feature extraction, event detection) to enhance model input quality.</p>
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<p>Design and maintain scalable workflows for ingesting, labeling, training, and evaluating multi-channel time-series datasets.</p>
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<p>Stay current with advances in time-series modeling, signal processing, and real-time inference, and incorporate them into product roadmaps.</p>
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<p>Ensure model robustness, performance, and reliability in production environments, including edge deployments.</p>
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<p><strong>Educational Background</strong></p>
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<p>M.S. or Ph.D. in Electrical Engineering, Computer Science, or a related field, with a strong focus on signal processing, time-series analysis, and machine learning.</p>
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<p>Strong academic or industry track record in time-series modeling, signal processing, or real-time AI systems.</p>
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<p><strong>Required Skills & Expertise</strong></p>
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<p>5+ years of experience developing signal processing and ML solutions for time-series sensor data. Track record of bringing at least one ML solution to market.</p>
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<p>Deep understanding of digital signal processing (DSP) methods: filtering, sampling, windowing, FFT, feature extraction, etc.</p>
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<p>Hands-on experience with RNNs (especially LSTMs/GRUs) and/or temporal convolutional networks for time-series modeling.</p>
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<p>Proven experience with time-series data from physical sensors such as IMUs, microphones, vibration or pressure sensors.</p>
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<p>Strong coding skills in Python and fluency with ML/DL frameworks (e.g., PyTorch, TensorFlow, Keras).</p>
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<p>Experience in optimizing and deploying models in real-time or near-real-time environments, including edge devices or resource-constrained embedded systems.</p>
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<p>Fluency with best practices in data labeling, augmentation, and evaluation for time-series tasks.</p>
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<p>Excellent problem-solving and collaboration skills with the ability to work across teams.</p>
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<p>Strong communication skills with the ability to convey findings and recommendations to internal and external stakeholders.</p>
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<p><strong>Bonus Qualifications</strong></p>
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<p>Experience building end-to-end AI systems for structural health monitoring, condition monitoring, anomaly detection, activity recognition, or motion tracking.</p>
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<p>Proficiency in embedded software or deploying models to constrained environments (e.g., using TFLite, ONNX, or custom firmware).</p>
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<p>Familiarity with containerized workflows and Linux-based development environments.</p>
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<p>Experience with Agile workflows and tools such as JIRA, Git, and CI/CD pipelines.</p>
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<p>Prior work in startup or high-pace teams with experience in building real-time systems from the ground up.</p>
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