What are the responsibilities and job description for the AI/ML Engineer position at Tiposi?
About Tiposi
Tiposi is a Silicon Valley medical device startup developing AI-powered, microwave-based brain imaging technology — built to detect strokes and expand access to brain health screening worldwide. We combine RF innovation, custom ASICs, and machine learning to make imaging faster, safer, and more accessible than ever before.
AI/ML Engineer
We are building a medical imaging device that reconstructs images from noisy, physics-constrained sensor data. This role focuses on applied machine learning embedded in real systems, not standalone research models.
You will design, implement, and maintain ML pipelines that integrate with signal processing, hardware, and clinical constraints.
Responsibilities
- Develop and train multi-task ML models for stroke detection using RF-derived features, including binary and multi-class classification as well as auxiliary prediction tasks.
- Build and own production-quality ML code for signal → image reconstruction
- Design and evaluate ML approaches for inverse problems under noise and data scarcity
- Integrate ML models with existing signal processing and hardware pipelines
- Debug training failures, data issues, and edge cases
- Make tradeoffs between model complexity, robustness, and interpretability
- Collaborate closely with hardware, DSP, and software engineers
Required
- M.S. in Computer Science, Electrical Engineering, or related field, or 5 years of industry experience in machine learning
- Experience with generative models (diffusion models, VAEs, or encoder-decoder architectures) applied to 2D/3D data
- Experience building and maintaining ML pipelines beyond notebooks
- Comfort working with imperfect, noisy, real-world data
- Solid foundations in linear algebra, probability, and optimization
- Ability to reason about system-level constraints, not just model performance
Preferred Qualifications
- Signal or image processing background, particularly with radar, microwave, or compressed sensing techniques
- Experience with multimodal models or cross-modal generation
- Prior work optimizing models for GPU or edge deployment
- Familiarity with medical device regulatory standards and a clear understanding of the application of AI technologies within FDA-regulated environments.
- Experience in medical device or healthcare technology companies
Relevant ML Experience
Experience with one or more of the following in applied contexts:
- Inverse problems / reconstruction
- Generative or probabilistic models (e.g., VAEs, diffusion, GANs)
- CNNs or learned image reconstruction
- Physics-informed or hybrid signal-processing ML approaches
- Uncertainty estimation and robustness
We care about how you choose models, not whether you’ve memorized architectures.
Compensation Structure
This role begins with a 3-6 month contract phase at $4,000-$8,000/month to establish mutual fit. Upon conversion to full-time employment, salary range is $100,000-$120,000 plus equity, based on experience. Full-time benefits include health insurance (medical, dental, vision) and performance bonuses.
Salary : $100,000 - $120,000