Research Data Scientist, Global Network Demand Modeling, Cloud
Company: Google
Location: Sunnyvale
Posted on: April 3, 2026
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Job Description:
Minimum qualifications: Master's degree in Statistics, Data
Science, Mathematics, Physics, Economics, Operations Research,
Engineering, or a related quantitative field. 3 years of work
experience using analytics to solve product or business problems,
coding (e.g., Python, R, SQL), querying databases or statistical
analysis, or a PhD degree. Preferred qualifications: 5 years of
work experience using analytics to solve product or business
problems, coding (e.g., Python, R, SQL), querying databases or
statistical analysis, or a PhD degree. Experience applying
investigative methods to networking, cloud infrastructure, hardware
supply chains, or large-scale distributed systems. Experience in
designing and building time-series forecasting, optimization, or
probabilistic models, particularly for high-scale or dynamic
environments. Experience working at the intersection of
infrastructure and data science, with a drive to solve complex,
large-scale engineering issues. Ability to frame difficult,
ambiguous business questions into mathematical problems and deliver
technical solutions with minimal guidance. About the job Our
mission is to optimize the scale, speed, and efficiency of Google’s
global network ecosystem through production-critical modeling and
domain-native integration. As a Data Science team dedicated to
delivering quantitative solutions to the most important issues in
the network and its adjacent domains, we partner with stakeholders
on critical initiatives and proactively solve high-impact problems
through algorithms, analytics, and statistical insights. Our team
manages a broad spectrum of issues ranging from network demand
forecasting and probabilistic capacity planning to sophisticated
risk monitoring and network operations. These efforts directly
enable the network agility and scale required to support the next
generation of Google's infrastructure in the AI-centric era. As a
Data Scientist in Research, you will optimize the scale, speed, and
efficiency of Google’s global network ecosystem one of the world's
largest and most dynamic infrastructures through
production-critical modeling and analytics. You will lead
quantitative projects that utilize intricate, large-scale datasets
to understand global traffic usage and forecast future demand. You
will be focusing in modeling the evolving impact of AI and machine
learning workloads on network patterns, ensuring Google’s
infrastructure remains agile and scalable in an AI-centric era. You
will translate ambiguous business issues into mathematical
frameworks, delivering high-quality analysis that directly
influences long-term infrastructure strategy and investment
decisions. The US base salary range for this full-time position is
$147,000-$211,000 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 .
Responsibilities Work separately and deliver on difficult
investigative problems end-to-end from data exploration and
methodology development to communicating findings that influence
infrastructure project decisions. Apply statistical and machine
learning techniques to understand traffic usage patterns and
forecast demand for Google's global network. Design and implement
metric frameworks to monitor forecast health and quality, utilizing
backtesting and historical benchmarks to extract actionable
insights that guide continuous improvements in forecasting models.
Partner with Engineering, Product Management, and Planning teams to
understand business needs, frame investigative problems, and
provide data-driven recommendations that guide infrastructure
strategy. Identify strategic issues and technical bottlenecks,
generating the methodologies required to resolve them and helping
the team course-correct as requirements evolve.
Keywords: Google, Parkway-South Sacramento , Research Data Scientist, Global Network Demand Modeling, Cloud, IT / Software / Systems , Sunnyvale, California