Client-Focused Accountant & Data Analyst

Abroad Work
Liverpool
1 month ago
Applications closed

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Overview

Attention! This vacancy is temporarily suspended!

Contact person: GLOBAL PETROLEUM LIMITED

Responsibilities
  • Communicating with clients to understand their needs and explain product value.
  • Building relationships with clients based on trust and respect.
  • Collaborating with internal departments to facilitate client need fulfillment.
  • Collecting and analyzing data to learn more about consumer behavior.
  • Keeping accurate records pertaining to inventory and account notes.
  • Maintaining updated knowledge of company products and services.
  • Resolving complaints and preventing additional issues by improving processes.
  • Identifying industry trends.
  • Acting as a client advocate with a focus on improving the buyer experience.


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