Principal Engineer - Time-Series & Sensor Reasoning Models; Lorenz Labs
Job in
Roble, Butte County, California, USA
Listed on 2026-01-12
Listing for:
1010 Analog Devices Inc.
Full Time
position Listed on 2026-01-12
Job specializations:
-
Engineering
Systems Engineer, Electrical Engineering, AI Engineer, Robotics
Job Description & How to Apply Below
Location: Roble
About Analog Devices
Analog Devices, Inc. (NASDAQ: ADI ) is a global semiconductor leader that bridges the physical and digital worlds to enable breakthroughs at the Intelligent Edge. ADI combines analog, digital, and software technologies into solutions that help drive advancements in digitized factories, mobility, and digital healthcare, combat climate change, and reliably connect humans and the world. With revenue of more than $9 billion in FY24 and approximately 24,000 people globally, ADI ensures today's innovators stay Ahead of What's Possible™.
Learn more at and on Linked In and Twitter (X) .
Principal Engineer - Time-Series & Sensor Reasoning Models (Lorenz Labs)
About Analog Devices & Lorenz Labs
Analog Devices (NASDAQ: ADI) is a global leader in semiconductors that bridge the physical and digital worlds. Our mission is to enable breakthroughs at the Intelligent Edge-where sensors, compute , and AI converge to transform industries from mobility to healthcare.
Lorenz Labs, ADI’s advanced AI engineering group within Edge AI, is pioneering the frontier of Physical Intelligence-developing foundation models and agentic sys tems that can reason about the physical world. We are building the next generation of models that go beyond language and vision, into time, signals, and embodied experience. Our long-term ambition is the realization of an Artificial Engineer: an AI capable of understanding, simulating, and designing electro-physical systems with human-like intuition-complemented by the development of highly optimized embedded models for Edge AI.
About the Role
We are seeking a Principal Engineer in Time-Series & Sensor Foundation Models to advance AI engineering at the intersection of sensing, signal intelligence, and large-scale temporal modeling. This role will develop architectures that unify multimodal sensor data-including audio, motion, photonic, and physiological signals-into a coherent foundation for context-aware reasoning across time. Your work will contribute directly to ADI’s PhysGPT suite of physically-intelligent reasoning models.
Building on ADI’s leadership in sensing and edge intelligence, you will extend foundation-scale modeling into domains such as health, industrial systems, and robotics-enabling anomaly detection, forecasting, and cross-sensor understanding that bridge physics and AI. You will explore compact architectures such as Tiny Recursive Models and other efficient recurrent paradigms for resource-constrained edge inference, while advancing contextually-aware audio reasoning and sensor fusion learning frameworks that enable systems to interpret their environment with human-like sensitivity.
Beyond runtime intelligence, your work will extend into design-time reasoning-developing models and tools that accelerate the creation and optimization of foundation models through physics alignment and tool-in-the-loop optimization, transforming how AI learns from and designs for the physical world.
Key Responsibilities
- Lead R&D on time-series foundation models that integrate multi-sensor streams (e.g., audio, motion, environmental, and physiological).
- Develop compact, recursive, and hybrid modeling approaches (e.g., Tiny Recursive Models, Liquid Neural Networks, State-Space Transformers) for efficient deployment on edge hardware.
- Advance research in sensor fusion, enabling cross-modal alignment between acoustic, inertial, and photonic domains.
- Explore audio reasoning models that interpret context and intent through dynamic acoustic and environmental cues.
- Create benchmarking pipelines for cross-domain time-series foundation models, covering representation robustness, interpretability, and hardware performance metrics.
- Apply alignment and fine-tuning methods such as LoRA , Q
- LoRA , adapter-tuning, and contrastive alignment for multimodal sensor datasets.
- Investigate modern foundation alignment techniques, including DPO (Direct Preference Optimization) and RLAIF (Reinforcement Learning from AI Feedback) for physical and sensory reasoning tasks.
- Partner with ADI’s hardware, signal processing, and systems teams to co-design architectures for real-time, energy-efficient sensing…
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