Senior AI Engineer, Time-Series Signal Processing

brightai· Engineering
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📍 Palo Alto, CA

About this role

Senior AI Engineer, Time-Series Signal Processing

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.

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.

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.

 

Responsibilities

  • 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.

  • Develop and deploy ML models for time-series classification, prediction, anomaly detection, activity recognition, condition monitoring and pattern analysis.

  • Lead research and implementation of RNN-based architectures (especially LSTMs and their variants) as well as temporal transformer models as needed.

  • Collaborate with hardware, embedded, and product teams to integrate models into edge devices and IoT platforms.

  • Drive experimentation and optimization of signal-processing techniques (e.g., filtering, feature extraction, event detection) to enhance model input quality.

  • Design and maintain scalable workflows for ingesting, labeling, training, and evaluating multi-channel time-series datasets.

  • Stay current with advances in time-series modeling, signal processing, and real-time inference, and incorporate them into product roadmaps.

  • Ensure model robustness, performance, and reliability in production environments, including edge deployments.

 

Educational Background

  • 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.

  • Strong academic or industry track record in time-series modeling, signal processing, or real-time AI systems.

 

Required Skills & Expertise

  • 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.

  • Deep understanding of digital signal processing (DSP) methods: filtering, sampling, windowing, FFT, feature extraction, etc.

  • Hands-on experience with RNNs (especially LSTMs/GRUs) and/or temporal convolutional networks for time-series modeling.

  • Proven experience with time-series data from physical sensors such as IMUs, microphones, vibration or pressure sensors.

  • Strong coding skills in Python and fluency with ML/DL frameworks (e.g., PyTorch, TensorFlow, Keras).

  • Experience in optimizing and deploying models in real-time or near-real-time environments, including edge devices or resource-constrained embedded systems.

  • Fluency with best practices in data labeling, augmentation, and evaluation for time-series tasks.

  • Excellent problem-solving and collaboration skills with the ability to work across teams.

  • Strong communication skills with the ability to convey findings and recommendations to internal and external stakeholders.

 

Bonus Qualifications

  • Experience building end-to-end AI systems for structural health monitoring, condition monitoring, anomaly detection, activity recognition, or motion tracking.

  • Proficiency in embedded software or deploying models to constrained environments (e.g., using TFLite, ONNX, or custom firmware).

  • Familiarity with containerized workflows and Linux-based development environments.

  • Experience with Agile workflows and tools such as JIRA, Git, and CI/CD pipelines.

  • Prior work in startup or high-pace teams with experience in building real-time systems from the ground up.

Frequently Asked Questions

Is the salary disclosed for the Senior AI Engineer, Time-Series Signal Processing position at brightai?
The salary for this Senior AI Engineer, Time-Series Signal Processing role at brightai is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Senior AI Engineer, Time-Series Signal Processing position at brightai located?
This Senior AI Engineer, Time-Series Signal Processing role at brightai is based in Palo Alto, CA. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Which team or department does the Senior AI Engineer, Time-Series Signal Processing at brightai belong to?
This Senior AI Engineer, Time-Series Signal Processing position is part of the Engineering department at brightai. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Senior AI Engineer, Time-Series Signal Processing position at brightai?
Click the "Apply Now" button on this page. You will be redirected to brightai's official application portal hosted on greenhouse where you can submit your application directly.
When was the Senior AI Engineer, Time-Series Signal Processing job at brightai posted?
This Senior AI Engineer, Time-Series Signal Processing position at brightai was posted on Aug 8, 2025. Apply as soon as possible — early applications are often reviewed first.
Senior AI Engineer, Time-Series Signal Processing
brightai
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