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Quora is the place to share knowledge and better understand the world.
Staff Machine Learning Engineer, Ads
Location
California
Posted
146 days ago
Salary
$189.5K - $320.6K / year
Seniority
Lead
Job Description
Staff Machine Learning Engineer, Ads
Quora
• Improve our existing machine learning systems using your core coding skills and ML knowledge • Take end to end ownership of machine learning systems - from data pipelines, feature engineering, candidate extraction, model training, as well as integration into our production systems • Apply state-of-the-art machine learning algorithms at scale and serving for next-generation targeting and bidding products that directly impact the company’s top line metrics • Collaborate with ML platform and product engineers to build scalable and efficient machine learning systems in the production environment • Work with product and business teams on new innovative features for ad targeting and bidding to optimize advertisement performance • Identify new opportunities to apply machine learning to different parts of the Ads product to drive value for our users and advertisers
Job Requirements
- 5+ years of professional software development experience in machine learning
- Previous experience working in Adtech, developing ad targeting/retrieval/recommender systems
- Previous experience building large scale ranking/recommendation systems
- Good understanding of mathematical foundations of machine learning algorithms
- Highly proficient coding ability writing Python
- BS, MS or PhD in Computer Science, Engineering or a related technical field
- Availability for meetings and impromptu communication during Quora's coordination hours (Mon-Fri: 9am-3pm Pacific Time)
Benefits
- medical/dental/vision coverage
- equity refreshers
- remote work reimbursement
- paid time off
- employee assistance programs
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