Health Sensing ML Engineer
at Apple
Cupertino, California, USA -
Start Date | Expiry Date | Salary | Posted On | Experience | Skills | Telecommute | Sponsor Visa |
---|---|---|---|---|---|---|---|
Immediate | 20 Jan, 2025 | USD 264200 Annual | 21 Oct, 2024 | 3 year(s) or above | Machine Learning,Failure Analysis,Algorithms,Reliability | No | No |
Required Visa Status:
Citizen | GC |
US Citizen | Student Visa |
H1B | CPT |
OPT | H4 Spouse of H1B |
GC Green Card |
Employment Type:
Full Time | Part Time |
Permanent | Independent - 1099 |
Contract – W2 | C2H Independent |
C2H W2 | Contract – Corp 2 Corp |
Contract to Hire – Corp 2 Corp |
Description:
SUMMARY
Posted: Jul 19, 2024
Role Number:200546473
The Health Sensing team builds outstanding technologies to support our users in living their healthiest, happiest lives by providing them with objective, accurate, and timely information about their health and well-being. As part of the larger Sensor SW & Prototyping team, we develop algorithms for a variety of health sensors, including PPG, accelerometer, ECG.
DESCRIPTION
In this role, you will be at the forefront of developing ML algorithms for health sensing applications and ensuring the efficient evaluation of these models to be in production at scale. You will be interacting closely with ML engineers, clinicians, software and hardware engineers. You will be delivering solutions on time and with high quality standing up to the standards considering a customer facing product.
- Proven experience in developing machine learning and deep learning models, preferably in the health domain
- Strong proficiency in Python and ML frameworks e.g. PyTorch, Tensorflow
- Experience with health data analysis, including time-series data, sensor data, and biomedical signal processing
- Solid understanding of data preprocessing, feature extraction, and model evaluation techniques
- Familiar with software development standard methods/collaborations
- Sufficient SW skills to run large ML training jobs efficiently on a distributed backend with large volume of data
- Excellent interpersonal skills; comfortable in a collaborative and ground breaking research environments
PREFERRED QUALIFICATIONS
- Responsibilities:
- Develop and implement machine learning and deep learning models using health sensing data
- Analyze large-scale health data from wearable sensors to extract meaningful insights
- Work across the entire ML development cycle, from setting up data pipelines to model evaluation
- Analyze model behavior and finding weaknesses; drive design decisions with in-depth failure analysis
- Build end-to-end pipelines that prioritize rapid iterations in support for reliability of a complex multi-year project
- Work cross-functionally to bring algorithms to real-world applications; this can span a wide range of teamworks with clinical authorities and engineering specialists across HW and SW
- MS or PhD with 3+ years industry experience
EDUCATION & EXPERIENCE
BS and a minimum of 3 years relevant industry experience
Responsibilities:
- Proven experience in developing machine learning and deep learning models, preferably in the health domain
- Strong proficiency in Python and ML frameworks e.g. PyTorch, Tensorflow
- Experience with health data analysis, including time-series data, sensor data, and biomedical signal processing
- Solid understanding of data preprocessing, feature extraction, and model evaluation techniques
- Familiar with software development standard methods/collaborations
- Sufficient SW skills to run large ML training jobs efficiently on a distributed backend with large volume of data
- Excellent interpersonal skills; comfortable in a collaborative and ground breaking research environment
REQUIREMENT SUMMARY
Min:3.0Max:8.0 year(s)
Information Technology/IT
IT Software - Other
Software Engineering
Phd
Proficient
1
Cupertino, CA, USA