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Data Scientist, University Graduate, 2024

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As a Data Scientist at Google, you will analyze large datasets using statistical methods to optimize business strategies, products, and user behavior. Working with cross-functional teams, you will develop and implement data-driven solutions to drive business growth and enhance advertising efficacy.
Minimum qualifications:
  • Master's degree or PhD in Statistics, Biostatistics, Operations Research, Physics, Economics, Applied Mathematics, or similar quantitative discipline, or equivalent practical experience.
     
  • Relevant internship or work experience with data. Experience in quantitative methodologies with statistics and causal inference method.
     
  • Experience with statistical software (e.g., R, Python, S-Plus, SAS, or similar).
     
Preferred qualifications:
  • Experience with statistical data analysis such as linear models, multivariate analysis, stochastic models, sampling methods.
  • Experience with machine learning on large datasets.
  • Ability to draw conclusions from data and recommend actions.
  • Ability to teach others and learn new techniques such as differential privacy.
  • Ability to select the right statistical tools given a data analysis problem.
     
About the job

At Google, data drives all of our decision-making. Quantitative Analysts work all across the organization to help shape Google's business and technical strategies by processing, analyzing and interpreting huge data sets. Using analytical excellence and statistical methods, you mine through data to identify opportunities for Google and our clients to operate more efficiently, from enhancing advertising efficacy to network infrastructure optimization to studying user behavior. As an analyst, you do more than just crunch the numbers. You work with Engineers, Product Managers, Sales Associates and Marketing teams to adjust Google's practices according to your findings. Identifying the problem is only half the job; you also figure out the solution.

As a key member of the team, you work with engineers to analyze and interpret data, develop metrics to measure results and integrate new methodologies into existing systems.

As a Data Scientist, you will evaluate and improve Google's products. You will collaborate with a multi-disciplinary team of Engineers and Analysts on a wide range of problems, using statistical methods for the issues of measuring quality, improving consumer products, and understanding the behavior of end-users, advertisers, and publishers.

In this role, you will be working on Ads Insights and Measurement. You will develop, evaluate and improve the entire range of Google's advertising products including Search, Display, Apps, TV and Video (e.g., YouTube). You will also play a key role in developing new ideas and methods that drive ad measurement and business generation, including paradigm-shifting ad-measurement science and products for the privacy-preserving future of digital advertising.
 

 

Responsibilities
  • Work with large complex data sets, solve difficult non-routine analysis problems, and apply advanced problem-solving methods as needed. Conduct analysis that includes data gathering and requirements specification, processing, analysis, ongoing deliverables and presentations.
  • Make business recommendations (e.g. cost-benefit, forecasting, experiment analysis) with effective presentations of findings at multiple levels of stakeholders through visual displays of quantitative information.
  • Research and develop analysis, forecast and optimize methods to improve the quality of Google's user facing products such as ads quality, search quality, end-user behavioral modeling and live experiments.
  • Help suggest, support and shape new data-driven and privacy-preserving advertising and marketing products in collaboration with engineering, product and customer-facing teams.
     
  • Find ways to combine large-scale experimentation, statistical-econometric, machine learning and social-science methods to answer business questions at scale.
Google Logo

Company

Google

Job Posted

a year ago

Job Type

Full-time

WorkMode

On-site

Experience Level

0-2 Years

Category

Data Science

Locations

Bengaluru, Karnataka, India

Qualification

Bachelor

Applicants

Be an early applicant

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