Senior Data Analyst

São Paulo, São Paulo, Brazil

Applications have closed

The Finance Business Analysis team handles huge amounts of financial data. The team's activities range from processing data, reconciling numbers and automating tasks to building insightful dashboards and reports.

We appreciate having people with different backgrounds, as our activities require a good mix of tech, business and communication skills. We are always learning something new to keep up with and support Shopee's growth.

Come make history with us if you seek to work in a dynamic environment and are interested in combining your data and finance skills!

Job description

  • Check consistency of invoices issued by third party logistics companies;
  • Perform reconciliation between logistics data from different sources;
  • Build, run and maintain logistics reports for monthly accounting closings;
  • Build dashboards and reports to showcase financial logistics data trends and possible issues;
  • Play as a key contact point between Finance and Logistics teams;
  • Prioritize project timelines based on financial impact, while maintaining high levels of data accuracy;
  • Think strategically and analytically about business, product and technical challenges.

Requirement

  • Degree holder preferably in a technical field such as Economics, Business Administration or Accounting, etc; or Degree holder in a business related field as long as there is a strong interest in data analysis;
  • Knowledge in logistics;
  • Knowledge in SQL and Power BI;
  • Advanced English skills;
  • Strong logical and analytical thinking skills;
  • Great verbal and written communication skills.

* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

Tags: Data analysis Economics Finance Power BI SQL

Perks/benefits: Career development Team events

Region: South America
Country: Brazil
Job stats:  2  1  0
Category: Analyst Jobs

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