Full-Time

Machine Learning Engineer II

Confirmed live in the last 24 hours

Uber

Uber

10,001+ employees

Global platform for ride-hailing and logistics

Automotive & Transportation
Fintech

Compensation Overview

$158k - $175.5kAnnually

+ Bonus Program + Equity Award

Mid

Company Historically Provides H1B Sponsorship

San Francisco, CA, USA + 1 more

More locations: New York, NY, USA

Employees are expected to spend at least half of their work time in their assigned office.

Category
Applied Machine Learning
Natural Language Processing (NLP)
AI & Machine Learning
Required Skills
Python
Data Science
Apache Spark
Requirements
  • Bachelor’s degree or equivalent experience in Computer Science, Computer Engineering, Data Science, ML, Statistics, or other quantitative fields.
  • Proven experience with designing and implementing machine learning models in production environments applied to recommendation systems.
  • Proficiency in using Python for developing ML models and handling large-scale data sets.
  • Hands-on experience with building batch data pipelines using technologies like Spark or other map-reduce frameworks.
  • 2 years of industry experience as an ML engineer or equivalent.
  • Experience with enabling production-scale and debugging large ML models.
  • Experience in one or more object-oriented programming languages (e.g. Python, Go, Java, C++).
  • Advanced degree (Ph.D. or M.S.) in Data Science, ML, or related disciplines.
Responsibilities
  • Design and implement machine learning models and algorithms to optimize ad recommendations and auction mechanisms.
  • Apply advanced statistical and machine learning techniques to generate insights and improve the effectiveness of ad targeting and delivery.
  • Monitor and ensure the reliability of ML Predictions at large scale.
  • Stay up-to-date with the latest research and advancements in machine learning, recommendation systems, and ad auction techniques.

Uber connects people and goods through its global platform, offering services in ride-hailing and logistics. Users can request rides or deliveries via the app, which matches them with drivers or delivery personnel. The company operates on a commission-based model, earning revenue from ride fares, delivery fees, and service charges. What sets Uber apart from its competitors is its extensive range of services, including freight and essential goods transportation, alongside traditional ride-hailing. Uber aims to enhance safety with measures like driver background checks and real-time verification, while continuously expanding its offerings to meet diverse customer needs.

Company Stage

IPO

Total Funding

$15.4B

Headquarters

San Francisco, California

Founded

2009

Growth & Insights
Headcount

6 month growth

9%

1 year growth

18%

2 year growth

35%
Simplify Jobs

Simplify's Take

What believers are saying

  • Uber's innovative travel products, such as Uber Yacht and Uber Cruise, cater to high-end tourists, potentially increasing revenue and brand prestige.
  • The settlement in Massachusetts could serve as a model for similar agreements globally, enhancing driver satisfaction and retention.
  • Uber's 'One Less Car' initiative could attract environmentally conscious consumers, boosting its reputation and user base.

What critics are saying

  • The high cost of settlements and compliance with new regulations could strain Uber's financial resources.
  • Expanding into new services like boat rides may divert focus and resources from its core ride-hailing business.

What makes Uber unique

  • Uber's expansion into boat services in European tourist destinations like Ibiza, Venice, and Greece sets it apart from traditional ride-hailing competitors.
  • The company's strategic push to become a super app, offering comprehensive travel booking options, differentiates it from other ride-hailing services.
  • Uber's settlement with Massachusetts, which includes guaranteed minimum pay and benefits for drivers, positions it as a leader in driver welfare compared to other gig economy companies.

Help us improve and share your feedback! Did you find this helpful?