[Apply Now] Staff Software Engineer, AI/ML

Google Inc.
London
1 day ago
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Experience owning outcomes and decision making,solving ambiguous problems and influencing stakeholders; deepexpertise in domain. Apply - link Copy link - Bachelor’s degree orequivalent practical experience. - 8 years of experience insoftware development and with data structures/algorithms in either(C, C++, Python, Java or Go). - 5 years of experience with MLdesign and ML infrastructure (e.g., model deployment, modelevaluation, data processing, debugging, fine tuning). - 5 years ofexperience designing, training, and evaluating machine learningmodels. - Experience using generative AI, to solve real-worldissues. Preferred qualifications: - Master’s degree or PhD inEngineering, Computer Science, or a related technical field. - 3years of experience in a technical leadership role leading projectteams and setting technical direction. - Ability to guide the workof others. - Ability to take an issue and reduce it to a coreexperiment to prove or disprove a hypothesis. - Ability toempathize with customers' needs to generate solutions. About thejob Google's software engineers develop the next-generationtechnologies that change how billions of users connect, explore,and interact with information and one another. Our products need tohandle information at massive scale, and extend well beyond websearch. We're looking for engineers who bring fresh ideas from allareas, including information retrieval, distributed computing,large-scale system design, networking and data storage, security,artificial intelligence, natural language processing, UI design andmobile; the list goes on and is growing every day. As a softwareengineer, you will work on a specific project critical to Google’sneeds with opportunities to switch teams and projects as you andour fast-paced business grow and evolve. We need our engineers tobe versatile, display leadership qualities and be enthusiastic totake on new problems across the full-stack as we continue to pushtechnology forward. We are a diverse team of experienced engineersand technologists working directly with Cloud leadership. Ourmission is to foster market-disrupting collaborative innovationbetween Google and the world's ambitious organizations. We focus oncomplex technical tests with Cloud’s most important customers,delivering collaborative and practical solutions. In this role, youwill be running an incubation program designed to drive Cloudinnovation through joint experimentation. You will partner withother engineering teams and key customers to build technology thatpushes the boundaries of what's possible with real-worldapplications and is open to impact in any area of technology,provided it aligns with the needs of Cloud customers. Google Cloudaccelerates every organization’s ability to digitally transform itsbusiness and industry. We deliver enterprise-grade solutions thatleverage Google’s cutting-edge technology, and tools that helpdevelopers build more sustainably. Customers in more than 200countries and territories turn to Google Cloud as their trustedpartner to enable growth and solve their most critical businessproblems. Responsibilities - Drive the creation and execution ofexperiments across diverse machine learning domains. - Assesstechnical tests and develop practical, testable solutions. -Partner with Google Cloud Platform (GCP) product and engineeringteams, Google Research, and GCP customers to identify and implementreal-world applications of cutting-edge generative AI and machinelearning technologies. - Contribute to building a positive andinclusive team culture that emphasizes teamwork, innovation, andcollaboration including playing a key role in shaping and executingthe team's tactical goal. - Write product or system developmentcode and participate in, or lead design reviews with peers andstakeholders to decide amongst available technologies. Google isproud to be an equal opportunity and affirmative action employer.We are committed to building a workforce that is representative ofthe users we serve, creating a culture of belonging, and providingan equal employment opportunity regardless of race, creed, color,religion, gender, sexual orientation, gender identity/expression,national origin, disability, age, genetic information, veteranstatus, marital status, pregnancy or related condition (includingbreastfeeding), expecting or parents-to-be, criminal historiesconsistent with legal requirements, or any other basis protected bylaw. See also Google's EEO Policy, Know your rights: workplacediscrimination is illegal, Belonging at Google, and How we hire.Google is a global company and, in order to facilitate efficientcollaboration and communication globally, English proficiency is arequirement for all roles unless stated otherwise in the jobposting. To all recruitment agencies: Google does not accept agencyresumes. Please do not forward resumes to our jobs alias, Googleemployees, or any other organization location. Google is notresponsible for any fees related to unsolicited resumes.#J-18808-Ljbffr

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