Job Description:
We are seeking an experienced engineer who brings two distinct skill sets: AI/ML (Computer Vision) - owning the training, testing, and tuning of vision-based models for live camera-feed monitoring; and Native Android Development - developing and shipping a production Android app that talks to our cloud. You will partner with the deployment team to align models with their scaling/runtime constraints, work with the maintenance team to maintain and upgrade models.
Key Responsibilities
Design, train, evaluate, and tune computer vision models (detection, classification, segmentation, tracking) for live video and multi-camera use cases, including dataset curation, training/validation/testing pipelines, and rigorous benchmarking on accuracy, latency, and throughput.
Optimize models (architecture, quantization, pruning, distillation) to meet deployment and scaling constraints provided by the deployment team; re-tune or re-architect when those constraints change.
Partner with the operations team to maintain and upgrade models in production — triage regressions, refresh on new data, address drift, and ship improved versions.
Design, build, and ship a native Android application (Kotlin, Jetpack Compose, MVVM/Clean Architecture, Hilt, Coroutines/Flow, Room, WorkManager) that interacts with our cloud backend.
Build secure cloud integration: REST/gRPC, OAuth2/JWT, TLS, FCM push, and offline-first sync; handle Android runtime permissions and background execution correctly.
Set up Android CI, testing (unit + instrumentation), crash reporting, and Play Store release pipelines.
Required Qualifications
5+ years of total professional software engineering experience.
Proven experience in vision-based model training and testing, with models shipped to production.
Hands-on experience with cloud-based AI training/experimentation infrastructure (AWS SageMaker, GCP Vertex AI, Azure ML, or equivalent).
Experience building models for continuous monitoring via live video input from cameras and tuning them for efficient inference across multiple concurrent camera streams.
Track record of collaborating with deployment/MLOps/operations teams - translating runtime constraints into model decisions and supporting models post-launch.
Proficiency in Python and ML frameworks (PyTorch, TensorFlow, TensorFlow Lite, ONNX); strong grasp of CNNs and modern detection/tracking architectures (YOLO, DETR, ByteTrack, etc.).
Strong proficiency in Kotlin and the modern Android stack (Jetpack, Compose, Coroutines/Flow, Hilt, Room, WorkManager); demonstrated experience shipping production Android apps to the Play Store.
Deep working knowledge of Android Wi-Fi and BLE APIs.
Experience with cloud connectivity on Android (REST, gRPC, WebSockets, or MQTT; OAuth2/JWT; TLS; FCM) and Android’s security/permissions model (runtime permissions, foreground services, background execution limits).
Comfort interfacing with embedded/IoT hardware over BLE and WiFi under real-world conditions (intermittent connectivity, retries, power constraints).
Preferred Qualifications
On-device inference acceleration (Android NNAPI, Qualcomm SNPE, MediaPipe, GPU delegates).
Streaming protocols (RTSP, WebRTC, HLS) and video codecs; edge / IoT camera deployments.
Model monitoring, drift detection, and active learning loops.
Contributions to open-source ML or Android projects.
Education
Bachelor’s or Master’s degree in Computer Science, AI/ML, or related field — or equivalent practical experience.
measurement bias
Strong product mindset and bias for measurement - you instrument, benchmark, and optimize.
Excellent collaboration skills with deployment and operations teams, and a maintenance mindset toward models in production.
Ability to switch effectively between two distinct domains (ML model development and Android app development) and deliver in both.
Skills Required
- 5+ years of professional software engineering experience
- Proven experience in vision-based model training, testing, and shipping models to production
- Hands-on experience with cloud-based AI training/experimentation infrastructure (AWS SageMaker, GCP Vertex AI, Azure ML, or equivalent)
- Experience building models for continuous monitoring via live video input and tuning for efficient inference across multiple concurrent camera streams
- Track record collaborating with deployment/MLOps/operations teams and supporting models post-launch
- Proficiency in Python and ML frameworks (PyTorch, TensorFlow, TensorFlow Lite, ONNX)
- Strong grasp of CNNs and modern detection/tracking architectures (YOLO, DETR, ByteTrack, etc.)
- Strong proficiency in Kotlin and the modern Android stack (Jetpack, Compose, Coroutines/Flow, Hilt, Room, WorkManager) and experience shipping apps to the Play Store
- Deep working knowledge of Android Wi-Fi and BLE APIs
- Experience with cloud connectivity on Android (REST, gRPC, WebSockets, MQTT; OAuth2/JWT; TLS; FCM) and Android security/permissions/background execution
- Comfort interfacing with embedded/IoT hardware over BLE and Wi-Fi under intermittent connectivity and power constraints
- Bachelor's or Master's degree in Computer Science, AI/ML, or related field, or equivalent practical experience
- Experience optimizing models (architecture changes, quantization, pruning, distillation) for deployment constraints
Stryker Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Stryker and has not been reviewed or approved by Stryker.
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Healthcare Strength — Healthcare coverage is described as comprehensive, with multiple medical plan options and added protections such as critical illness, accident, and hospital indemnity, plus mental health resources. Wellbeing programs, onsite gyms, and fitness/nutrition classes further reinforce the perceived strength of health benefits.
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Retirement Support — Retirement offerings are seen as strong, highlighted by a competitive 401(k) plan with company matching and potential discretionary contributions. These elements are often viewed as valuable pillars of total rewards.
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Strong & Reliable Incentives — Variable pay is viewed positively, with annual bonuses and sales commissions often lifting total compensation. Incentive plans are seen as a meaningful contributor to pay satisfaction in roles where performance drives earnings.
Stryker Insights
What We Do
Stryker is a global leader in medical technologies and, together with its customers, is driven to make healthcare better. The company offers innovative products and services in MedSurg, Neurotechnology, Orthopaedics and Spine that help improve patient and healthcare outcomes. Alongside its customers around the world, Stryker impacts more than 130 million patients annually. More information is available at www.stryker.com. Together with our customers, we are driven to make healthcare better.
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