Apple · Cupertino

Data Scientist, Machine Learning

(f/m/d) · 1/16/2025

Description

We are looking for an experienced Machine Learning Engineer/Data Scientist to join our team and help us derive further valuable analytical insights from data, and deploy ML solutions on-device, particularly for audio and voice applications, across our portfolio of consumer devices. You will work at the intersection of audio engineering, machine learning, and user experience, analyzing complex datasets to drive improvements within media haptics, Siri, voice technologies and other use cases of varying sizes and scope. In this role, you will collaborate daily with engineers and leadership across Apple's audio teams to enhance audio experiences through ML innovation while maintaining a data-driven approach to product decisions through analytics. A Typical Work Day would be like: Work with large, complex, non-relational datasets to conduct end-to-end analysis that includes problem definition, data gathering, exploratory analysis, hypothesis testing and insight communication with stakeholders. Prototype and productionalize analytical pipelines iteratively to provide insights at scale. Develop comprehensive knowledge of audio data structures and pipelines, advocating for changes where needed for pipeline development. Interact cross-functionally with a wide variety of leaders and teams, and work closely with engineers and product managers to assess improvements and make business recommendations for audio products with convincing data-driven storytelling. Build, maintain and communicate audio analytics dashboards.

Qualifications

  • Strong expertise in applying ML to user behavior data and system telemetry for insights and predictions.
  • Strong data visualization and storytelling skills using tools like Plotly, Tableau, or similar BI tools.
  • Expertise in extracting insights from large telemetry datasets, with strong programming skills in Python, SQL, and ML frameworks (TensorFlow, PyTorch). Experience with NoSQL databases a plus.
  • Proven track record of employing analytical/ML methodologies for: User behavior analysis and segmentation, Performance monitoring and anomaly detection, Feature usage analytics and A/B testing and Time series forecasting and trend analysis.
  • Background in developing ETL pipelines and working with production logging systems.
  • Comfortable working with and delivering complex technical insights across multiple business teams.
  • Experience articulating and translating business questions into both ML solutions and analytical insights
  • BS degree in Engineering, Statistics, Physics or other related field.

Preferred Qualifications

  • Familiarity with Splunk or other monitoring/reporting tools.
  • Experience with distributed computation, storage, and workflow management (Cassandra, Spark, Airflow) desired.
  • Past experience in the audio domain is preferred.
  • A passion for audio, digital signal processing, or related fields highly desired.

Benefits

Application

View listing at origin and apply!