AIML - Senior Machine Learning Engineer, NLP - Siri and Information Intelli at Apple
Seattle, Washington, USA -
Full Time


Start Date

Immediate

Expiry Date

24 Jun, 25

Salary

296300.0

Posted On

24 Mar, 25

Experience

7 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Computer Science, Experimental Design, Hadoop, Data Solutions, Hive, Statistics, Speech Recognition, Nlp, Physics, Causal Analysis, Mapreduce, Analytical Skills, Python

Industry

Information Technology/IT

Description

SUMMARY

Posted: Oct 18, 2024
Role Number:200573127
As part of Apple Intelligence, Siri team is at the forefront of the next revolution in machine learning and NLP. Our innovative product redefines computing by leveraging cutting-edge technologies in Natural Language Understanding and Conversational AI. We are dedicated to creating groundbreaking conversational assistant technologies for both large-scale systems and new client devices, building upon our legacy of intelligent assistant solutions that already assist millions of users worldwide! We are seeking a highly skilled Senior Machine Learning Engineer specializing in NLP/Conversational AI to join our dynamic team. The ideal candidate will play a pivotal role in the evaluation and enhancement of our Apple Intelligence products. You will collaborate closely with cross-functional teams to implement and optimize models, ensuring the highest level of performance, accuracy, and scalability. This role offers an exciting opportunity to contribute to the advancement of AI systems and shape the future of computing. We define new approaches for evaluating state-of-the-art ML based systems, conversational AI, and model interpretability. We collaborate with different modeling teams, and product managers to conduct thorough evaluation and analysis of Apple Intelligence products and models, identifying areas for improvement and optimization. Our teams work with large amounts of real-world data to analyze and propose changes to the Siri user experience. You will ensure data quality throughout all stages of acquisition and processing, data wrangling, etc. Your expertise in defining and measuring the online and offline end-to-end metrics will help communicate, evaluate, and iterate on state-of-the-art deployed models and predictors. Would you be interested in working on cutting edge technologies in the AIML space?

DESCRIPTION

As Siri is becoming increasingly complex AI system, it is critical to understand the impact of each ML model on other dependent models, while assessing the impact on Siri end-user experience. The Siri team leads the development of advanced evaluation methodologies for ML based systems, model interpretability, and experimentation, to ensure that every release delivers an improved Siri user experience. The team is searching for talented ML Engineers to work with a passionate, product-focused team to define new approaches for evaluating ML based systems, conversational AI, and model interpretability You will run experiments, statistically interpret data with a mind on causation, data visualization, plus designing, building, and evaluating models. You will work with large amounts of real-world data to analyze and propose changes to Siri user experience. You will ensure data quality throughout all stages of acquisition and processing, data wrangling, etc. Your expertise in defining and measuring the online and offline end-to-end metrics will help communicate, evaluate, and iterate on state-of-the-art deployed models and predictors.

MINIMUM QUALIFICATIONS

  • 7+ years of professional work experience applying machine learning to real-world problems, and crafting scalable and effective data solutions.
  • Strong domain knowledge in at least one of the following: NLP, conversational AI, speech recognition
  • Excellent programming skills in Python
  • Excellent data analytical skills. Strong attention to detail. Proven ability to dive into data to discover hidden patterns and conduct error/deviation analysis

PREFERRED QUALIFICATIONS

  • Strong background in A/B testing procedure, causal analysis, and cohort analysis.
  • Exposure to model interpretability techniques and their real-world advantages/drawbacks
  • Good Conversational AI domain knowledge
  • Experience working with end-to-end pipelines and/or crowd-sourced data labeling
  • Good experience with applying Big Data tools (MapReduce, Hadoop, Hive and/or Pig, Spark) to large quantities of textual data
  • Excellent problem solving, critical thinking, and communication skills.
  • Domain knowledge in applied statistics and experimental design is big plus!
  • Enthusiasm for continuing to learn state-of-the-art techniques in machine learning/data science
  • Education
  • B.S., M.S. or Ph.D. in Computer Science, Electrical Engineering, Statistics, Applied Math, Physics or related fields is preferred.
Responsibilities

Please refer the Job description for details

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