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Senior Machine Learning Engineer - Ads

Machine Learning, Engineering
San Francisco, California |
New York, New York
Full Time

About the Role

The Ads Machine Learning (Ads ML) team at Uber is responsible for providing relevant ad recommendations to the users across the different applications within the Uber ecosystem. We focus on building a deep understanding of both user and merchant behavior to generate accurate ML signals that enhance the Ads auction system providing accurate pricing for our advertisers. Our goal is to maximize the benefits for both users and merchants within Uber's Ads distribution system.

You will directly impact Uber's Ads systems by defining and executing the Ads ML roadmap, with a focus on enabling and accelerating large-scale improvements to our recommendation and auction systems. Developing relevant, robust, and observable ad recommendations is crucial to Uber’s fast growing Ads Business strategy, making this a highly impactful role.

---- What the Candidate Will Do ----

  1. Design and implement machine learning models and algorithms to optimize ad recommendations and auction mechanisms.
  2. Develop and maintain scalable ML pipelines and data infrastructure to support real-time and batch processing of large-scale datasets.
  3. Apply advanced statistical and machine learning techniques to generate insights and improve the effectiveness of ad targeting and delivery.
  4. Collaborate with data scientists and engineers to build and refine predictive models that enhance user engagement and merchant benefits.
  5. Conduct rigorous experimentation and A/B testing to validate model performance and iterate on improvements.
  6. Define success metrics and develop dashboards to monitor and visualize the performance of ML models in production.
  7. Work closely with cross-functional teams, including Product, Engineering, and Data Science, to translate business requirements into ML solutions.
  8. Mentor and provide technical guidance to junior ML engineers and data scientists.
  9. Stay up-to-date with the latest research and advancements in machine learning, recommendation systems, and ad auction techniques.

---- Basic Qualifications ----

  1. Bachelor's degree or equivalent experience in Computer Science, Computer Engineering, Data Science, ML, Statistics, or other quantitative fields.
  2. Proven experience with designing and implementing machine learning models in production environments.
  3. Proficiency in using Python for developing ML models and handling large-scale data sets.
  4. Solid understanding of SQL and experience using it in a production environment.
  5. Strong grasp of Big Data architecture and experience with ETL frameworks and platforms.
  6. Hands-on experience with building batch data pipelines using technologies like Spark or other map-reduce frameworks.
  7. Expertise in experimental design and analysis, including A/B testing, exploratory data analysis, and statistical analysis.
  8. Experience with data visualization tools and creating insightful dashboards.
  9. Proficiency with methodologies such as sampling, statistical estimates, and descriptive statistics.
  10. Ability to synthesize complex data analyses into clear and actionable insights to influence product direction.
  11. Experience with recommendation systems.
  12. Fast learner with a passion for solving complex problems and asking thoughtful questions to ensure effective solutions.
  13. Strong communication skills to engage with technical, non-technical, and executive audiences effectively.
  14. Commitment to seeking and providing timely feedback to drive continuous improvement.

---- Preferred Qualifications ----

  1. 5 years of industry experience as an ML engineer or equivalent.
  2. Expertise in building sophisticated systems and knowledge of Hadoop-related technologies such as HDFS, Kafka, Hive, and Presto.
  3. Experience managing projects across large, ambiguous scopes and driving initiatives in a fast-moving, cross-functional environment.
  4. Experience with enabling production-scale and maintaining large ML models.
  5. Experience in one or more object-oriented programming languages (e.g. Python, Go, Java, C++).
  6. Experience with REST APIs and Distributed Messaging / Kafka.
  7. Familiarity with recommendation systems and modern ad auction techniques.
  8. Experience with ad auctioning systems.
  9. Experience with state-of-the-art deep learning techniques.
  10. Advanced degree (Ph.D. or M.S.) in Data Science, ML, or related disciplines.

For New York, NY-based roles: The base salary range for this role is USD$202,000 per year - USD$224,000 per year.

For San Francisco, CA-based roles: The base salary range for this role is USD$202,000 per year - USD$224,000 per year.

For all US locations, you will be eligible to participate in Uber's bonus program, and may be offered an equity award & other types of comp. All full-time employees are eligible to participate in a 401(k) plan. You will also be eligible for various benefits. More details can be found at the following link https://jobs.uber.com/en/benefits.

Uber's mission is to reimagine the way the world moves for the better. Here, bold ideas create real-world impact, challenges drive growth, and speed fuels progress. What moves us, moves the world - let's move it forward, together.

Uber is proud to be an Equal Opportunity employer. All qualified applicants will receive consideration for employment without regard to sex, gender identity, sexual orientation, race, color, religion, national origin, disability, protected Veteran status, age, or any other characteristic protected by law. We also consider qualified applicants regardless of criminal histories, consistent with legal requirements. If you have a disability or special need that requires accommodation, please let us know by completing this form.

Offices continue to be central to collaboration and Uber's cultural identity. Unless formally approved to work fully remotely, Uber expects employees to spend at least half of their work time in their assigned office. For certain roles, such as those based at green-light hubs, employees are expected to be in-office for 100% of their time. Please speak with your recruiter to better understand in-office expectations for this role.


See our Candidate Privacy Statement

Uber is proud to be an equal opportunity workplace. We are committed to equal employment opportunity regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender identity, Veteran Status, or any other characteristic protected by law.

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선호하는 언어 선택

아랍어, العربية아삼어, অসমীয়া아제르바이잔어, Azərbaycanca불가리아어, Български벵골어, বাংলা카탈로니아어(스페인), Català (Espanya)체코어, Čeština덴마크어, Dansk독일어, Deutsch그리스어, Ελληνικά영어, English스페인어, Español (Internacional)스페인어, Español (Argentina)스페인어, Español (Chile)스페인어, Español (Colombia)스페인어, Español (Costa Rica)스페인어(유럽), Castellano스페인어, Español (Honduras)스페인어, Español (México)스페인어, Español (Uruguay)에스토니아어, Eesti핀란드어, Suomi프랑스어(캐나다), Français (Canada)프랑스어, Français (France)히브리어, עברית힌디어, हिन्दी크로아티아어, Hrvatski헝가리어, Magyar인도네시아어, Bahasa Indonesia이탈리아어, Italiano일본어, 日本語조지아어, ქართული칸나다어, ಕನ್ನಡ한국어, 한국어쿠르드어, کوردی리투아니아어, Lietuvių라트비아어, Latviešu말라얄람어, മലയാളം마라티어, मराठी노르웨이어(보크말), Norsk Bokmål네팔어, नेपाली네덜란드어, Nederlands펀잡어, ਪੰਜਾਬੀ폴란드어, Polski포르투갈어(브라질), Português (Brasil)포르투갈어(유럽), Português (Portugal)루마니아어, Română러시아어, Русский싱할라어(스리랑카), සිංහල슬로바키아어, Slovenčina슬로베니아어(슬로베니아), Slovenščina스웨덴어, Svenska스와힐리어, Kiswahili타밀어, தமிழ்텔루구어, తెలుగు태국어, ไทย터키어, Türkçe우크라이나어, Українська우르두어, اردو베트남어, Tiếng Việt중국어, 简体中文중국어(홍콩[중국 특별행정구]), 香港中文중국어(대만), 繁體中文