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Applied ML, Software Engineer - Sensing & Connectivity

External
Apple logoApple · Cupertino, CA
Full-timeOn-site1mo ago30+ days old, may be filled
ClassificationClusteringMachine LearningNumPyPandasPrototyping
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About the role

As part of this role, you'll join a team of software engineers and researchers focused on identifying behavioral patterns and you will help shape new and enhanced user experiences by collaborating closely with teams across sensing, Siri, and apps. Excited to take ownership of complex, end-to-end problems? You'll design, build, and evaluate production ML systems that infer a device's patterns by inference on date like GPS, Wi-Fi, and accelerometers and higher semantic signals - combining estimation techniques with machine learning. You'll test and refine your work, use it yourself, track metrics, and iterate for quality.

Requirements

  • Machine Learning algorithms: Strong grasp of supervised/unsupervised learning, regression, classification, clustering, and model evaluation techniques.
  • Having worked as an ML practitioner in an industrial setting
  • Laser focus on customer impact and product experience.
  • Some professional background in location and/or other wireless sensing technologies, including for example, GPS/GNSS, WiFi, indoor localization, and/or discrete localization.
  • Excellent communication, verbally and in writing. You can succeed in a collaborative environment, and are comfortable with what will sometimes feel like a high degree of uncertainty.
  • You can innovate within tight memory, CPU, and schedule constraints, and deliver on time. These constraints motivate you, and ignite your creativity.
  • Proven experience taking machine learning models through the entire lifecycle-from ideation, data collection, and prototyping to production deployment and monitoring
  • Demonstrated experience working with time-series analysis, sequential modeling, or spatial-temporal datasets.
  • Experience handling sparse, irregular, or highly imbalanced data streams typical of real-world sensor or location data
  • Experience shipping production software for mobile and/or other resource-constrained devices. Tight memory, CPU, and schedule constraints motivate you and ignite your creativity. Capability of creating, analyzing, and modifying SW functionality, ideally in C++/Obj-C/Swift codebases
  • Experience with libraries like NumPy, pandas, scikit-learn, and PyTorch or TensorFlow.
  • Hands-on experience with applied probability, statistics, and empirical and/or ML algorithms. Classical estimation, signal processing, and/or training supervised ML models are relevant.
  • Bachelor's or graduate degree in Computer Science, Computer Engineering, Mathematics, or a related field.
  • Pay & Benefits
  • Note: Apple benefit, compensation and employee stock programs are subject to eligibility requirements and other terms of the applicable plan or program.

Additional Information

Our mission is to personalize the Apple user experience based on where you go, when you're there, and what those places mean to you. We're developing intelligent systems that understand location context and help users achieve what they want- wherever they are. You've seen our work in action through suggested locations in Maps, Journaling Suggestions for outings and trips, and curated Memories in Photos. We're seeking motivated, experienced engineers to elevate our software's intelligence, performance, and impact. Do you have experience linking users and devices to points of interest on a map? Are you an ML practitioner energized by the challenge of delivering rich contextual intelligence within a tight resource budget? If so, we'd love to hear from you.


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