Machine Learning Engineer; AI/ML
Listed on 2026-01-12
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IT/Tech
AI Engineer, Machine Learning/ ML Engineer
Join to apply for the Machine Learning Engineer (AI/ML) role at Cirrus Logic
Are you a builder at the frontier of AI/ML, eager to apply your craft to high-impact, real-world problems? Do you thrive in ambiguous spaces where data, silicon, and algorithms intersect? Cirrus Venture Labs (CVL) may be the place for you.
CVL is Cirrus Logic’s newly formed technology accelerator, chartered to develop disruptive, scalable, and monetizable innovations that solve endemic industry problems. Our vision is to be a globally recognized innovation engine that repeatedly shapes and transforms semiconductor markets. We do so by embedding intelligence directly where signals originate in the physical world, across Voice, Sense, and Control domains, and pioneering ML-augmented signal processing.
As a Machine Learning Engineer, you will be a hands‑on technical leader shaping CVL’s machine‑learning programs. You will drive the development of ML models, frameworks, and prototyping pipelines, spanning data generation, curation, model engineering, and optimisation for deployment on edge and mixed‑signal systems. Partnering closely with innovation managers, architects, external ventures, and away‑team contributors, you will turn ambitious hypotheses into validated prototypes that can be scaled into new product categories for Cirrus Logic.
Responsibilities- Prototype Development:
Lead rapid prototyping of ML models for edge intelligence across Voice, Sense, and Drive domains, tightly integrated with Cirrus Logic’s mixed‑signal processing strengths. - Data & Model Engineering:
Build datasets, design model architectures, and optimise for performance, efficiency, and interpretability. Explore advanced approaches in ML‑augmented signal processing, anomaly detection, and adaptive control. - System Integration:
Collaborate with silicon, firmware, and systems teams to co‑design ML architectures that operate efficiently on constrained hardware, balancing algorithmic accuracy with compute and power budgets. - Exploration & Research:
Stay at the forefront of ML frameworks, foundation/SLM trends, and physical‑world AI applications. Scout external IP, academic work, and startups to inform CVL’s ML strategy. - Mentorship & Technical Leadership:
Provide guidance and technical direction to away‑team engineers and contributors across Cirrus Logic. Share best practices in ML model lifecycle, from experimentation to deployment. - Cross‑Functional
Collaboration:
Work hand‑in‑hand with Innovation Managers, advisory teams, customers, and external partners to identify opportunities, define success criteria, and validate ML‑enabled innovations in real‑world scenarios. - Impact Assessment:
Help define benchmarks, evaluation metrics, and pass/fail criteria that ensure ML prototypes address significant industry problems with clear paths to monetisation.
- Educational Background:
Master’s or Ph.D. in Computer Science, Electrical Engineering, or related field with a focus on ML/AI. - Experience:
8+ years of hands‑on experience developing and deploying ML systems, including ownership of datasets, model development, and deployment pipelines. - Architectural Expertise:
Demonstrated experience with CNNs, RNNs (LSTM/GRU), and Transformer‑based models, including custom architecture design and optimisation for production. - Technical Depth:
Strong understanding of representation learning, attention mechanisms, sequence‑to‑sequence modelling, and generative architectures. - Optimization for Edge:
Experience with quantisation, pruning, knowledge distillation, and compiler‑level optimisations to deploy models on CPUs, DSPs, NPUs, or custom accelerators. - Data Engineering:
Ability to design labeling strategies, synthetic data generation, and augmentation pipelines to support robust model development. - Systems Thinking:
Proven track record of co‑designing ML solutions alongside hardware/software teams; familiarity with embedded frameworks (e.g., Tensor
RT, ONNX Runtime, TVM, CoreML, TFLite). - Collaboration & Communication:
Ability to translate complex ML concepts into actionable insights for cross‑disciplinary teams.
- Startup & Incubator
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