Data Engineer, Go-to-Market

Google is a global technology company that specializes in internet-related services and products.
$97,500 - $143,000
Data
Entry-Level Software Engineer
In-Person
5,000+ Employees
1+ year of experience
Enterprise SaaS · Advertising

Description For Data Engineer, Go-to-Market

Google's Go-to-Market Operations team is seeking a Data Engineer to join their Ads business division. This role is crucial in ensuring smooth operations and strategy execution for Google's advertising initiatives. As a Data Engineer, you'll be responsible for developing and maintaining data pipelines, creating insightful dashboards, and conducting analysis to drive business decisions.

The position offers an excellent opportunity to work with cross-functional teams, including Global Product Leads, Product Management, and Go-to-Market teams. You'll be instrumental in defining and tracking Key Performance Indicators (KPIs) that guide global initiatives across various business channels.

The role requires strong technical skills in programming languages like Python, Java, and SQL, combined with experience in data pipeline design and analytics. You'll be working on developing business tools and dashboards that drive Google Ads adoption while partnering with engineering teams to create robust data solutions.

This is an ideal position for someone who wants to make a significant impact at one of the world's leading technology companies. You'll be part of a team that directly influences Google's advertising strategy and business operations. The role offers competitive compensation, including a base salary range of $97,500-$143,000, plus bonus, equity, and comprehensive benefits.

Google provides an inclusive work environment and is committed to equal opportunity employment. The company offers a collaborative culture where you can work with talented professionals while solving complex business challenges. This role is perfect for candidates who combine technical expertise with business acumen and want to be at the forefront of digital advertising technology.

Last updated 2 days ago

Responsibilities For Data Engineer, Go-to-Market

  • Motivate Google Ads adoption by developing shareable business tools, dashboards, data, and programs
  • Partner with cross-functional teams to synthesize advertiser data and conduct analysis
  • Define and prioritize Key Performance Indicators (KPIs) for global initiatives
  • Work with engineering teams to create data pipelines and reports
  • Develop an understanding of Google data structures and metrics

Requirements For Data Engineer, Go-to-Market

Python
Java
  • Bachelor's degree in Engineering, Computer Science, a related field, or equivalent practical experience
  • 1 year of experience in designing data pipelines (extract transform and load) and model data
  • 1 year of experience in coding with one or more programming languages (e.g., Python, Java, C/C++)
  • 1 year of experience in analyzing data, database querying (e.g., SQL), and creating dashboards/reports

Benefits For Data Engineer, Go-to-Market

  • bonus
  • equity
  • benefits

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