Data Scientist, Extended Workforce Solutions

Google is a global technology leader that specializes in internet-related services and products.
Data
Mid-Level Software Engineer
5,000+ Employees
4+ years of experience
AI · Enterprise SaaS
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Description For Data Scientist, Extended Workforce Solutions

Google's Extended Workforce Solutions (xWS) team is seeking a Data Scientist to drive data-driven decision making for their outsourced operations. This role combines technical expertise in data science, machine learning, and programming with business acumen to optimize Google's extended workforce strategy. You'll work with cross-functional teams to develop data infrastructure, analyze complex datasets, and provide actionable insights to leadership.

The ideal candidate will have strong technical skills in Python, SQL, and machine learning, coupled with excellent communication abilities to present findings to both technical and non-technical stakeholders. You'll be responsible for establishing KPIs, conducting advanced analysis, and developing solutions that balance optimization with policy compliance.

This position offers the opportunity to work at one of the world's leading tech companies, tackling challenging problems that impact Google's global workforce strategy. You'll have access to large-scale datasets and the latest tools while collaborating with talented teams across the organization. The role requires both technical depth and business acumen, making it ideal for data scientists who want to drive strategic decision-making at scale.

Working in Hyderabad, you'll be part of Google's growing presence in India, contributing to critical workforce solutions that enable Google's continued growth and success. This role offers the chance to work on meaningful problems while developing your expertise in data science, machine learning, and business strategy.

Last updated 4 months ago

Responsibilities For Data Scientist, Extended Workforce Solutions

  • Translate Extended Workforce Solutions (xWS) data strategy and leverage expertise to deliver solutions for users. Develop the data infrastructure, project planning, and solution roadmap development
  • Collaborate with Leadership, Engineering, and PA teams to establish performance objectives, key performance indicators (KPI), and other success metrics for xWS projects and processes
  • Work with large, complex internal data sets; solve difficult, non-routine analysis problems, applying advanced investigative methods as needed
  • Collaborate with technical stakeholders to provide insights and recommendations driven by data analysis and business objectives
  • Deliver effective presentations of findings and recommendations to multiple levels of leadership, creating visual displays of quantitative information

Requirements For Data Scientist, Extended Workforce Solutions

Python
  • Master's degree in a STEM field or equivalent practical experience
  • 4 years of industry or PhD Data Science experience
  • Experience in causal inference, A/B testing, statistical modeling, or Machine Learning (ML)
  • Experience with programming in SQL and Python, leveraging ML or statistical libraries (e.g. TensorFlow, Scikit-learn, XGBoost, Keras, Pandas)

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