Role overview
Google's software engineers develop the next-generation technologies that change how billions of users connect, explore, and interact with information and one another. Our products need to handle information at massive scale, and extend well beyond web search. We're looking for engineers who bring fresh ideas from all areas, including information retrieval, distributed computing, large-scale system design, networking and data storage, security, artificial intelligence, natural language processing, UI design and mobile; the list goes on and is growing every day. As a software engineer, you will work on a specific project critical to Google’s needs with opportunities to switch teams and projects as you and our fast-paced business grow and evolve. We need our engineers to be versatile, display leadership qualities and be enthusiastic to take on new problems across the full-stack as we continue to push technology forward.
Google Shopping Ads aims to make Google the best place for users’ purchase, price-comparison, and shopping informational needs. The Shopping Auction Predicted Click-Through Rate (pCTR) Models Team plays a critical role in driving this fast-growing business! Our features and models impact the shopping commercial unit on Google.com, often the top of the page for a shopping-related query such as [buy nikon camera]. We also impact commercial units on image search [query: prom dress] and shopping mode [query: mountain bike], where users may have a more visual or in-depth shopping journey.Google Ads is helping power the open internet with the best technology that connects and creates value for people, publishers, advertisers, and Google. We’re made up of multiple teams, building Google’s Advertising products including search, display, shopping, travel and video advertising, as well as analytics. Our teams create trusted experiences between people and businesses with useful ads. We help grow businesses of all sizes from small businesses, to large brands, to YouTube creators, with effective advertiser tools that deliver measurable results. We also enable Google to engage with customers at scale.
The US base salary range for this full-time position is $197,000-$291,000 + bonus + equity + benefits. Our salary ranges are determined by role, level, and location. Within the range, individual pay is determined by work location and additional factors, including job-related skills, experience, and relevant education or training. Your recruiter can share more about the specific salary range for your preferred location during the hiring process.
Please note that the compensation details listed in US role postings reflect the base salary only, and do not include bonus, equity, or benefits. Learn more about benefits at Google.
What you'll work on
- Set technical direction and explore improvements to model architectures, components, and hyper-parameters in order to continuously improve model accuracy.
- Train machine learning models, making use of Tensor Processing Units (TPUs) dedicated to the team.
- Implement code and tests for model training (Python, C++) and backend code and tests for model serving (in C++) as needed.
- Collaborate with Machine Learning (ML) researchers on the methods of improving models that train on enormous amounts of data.
- Collaborate with ML infrastructure teams to optimize training and inference efficiency.
Google is proud to be an equal opportunity workplace and is an affirmative action employer. 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 or Veteran status. We also consider qualified applicants regardless of criminal histories, consistent with legal requirements. See also Google's EEO Policy and EEO is the Law. If you have a disability or special need that requires accommodation, please let us know by completing our Accommodations for Applicants form.
What we're looking for
- Bachelor's degree in Computer Science or related fields (e.g., Math, Physics, Engineering), with an emphasis on Machine Learning.
- Experience building and deploying large scale machine learning models for recommendation applications.
- Knowledge and experience with modern Machine Learning techniques including deep learning, transformers, and model optimization.
- Knowledge of statistics and experiment design.