Accounts Payable & Data Analyst

The Crupi Group
Scarborough
1 week ago
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Reporting to the Accounting Manager, Accounts Payable & Data Analyst will perform some routine data entry with about 40% ad‑hoc reporting, analysis and problem solving. The Analyst will have an outstanding attention to detail, intermediate to advanced level experience with Excel, and a positive attitude.


Accounts Payable & Data Analyst will also assist the organization transition from a paper‑based to a more digital and technology‑based organization.


Responsibilities

  • Code, post and process payables.
  • Investigate and resolve discrepancies connected with payables.
  • Complete monthly reporting and analyses, as required.
  • Various ad‑hoc analysis type support as needed.
  • Occasional billing support as needed.
  • Brings a strong administrative and organizational inclination to support other departments.

Qualifications

  • At least 2-5 years of experience in a similar position.
  • An Accounting Degree or enrolment in CPA program is an asset.
  • Intermediate to advanced knowledge of Excel.
  • Experience in a construction or manufacturing environment would be an asset.
  • Personable, with strong communication skills; both verbal and written.
  • Excellent attention to detail.
  • Ability and willingness to problem solve and collaborate with operations teams.
  • Ability to meet deadlines and can prioritize multiple responsibilities.
  • Possess a customer service disposition and not hesitant to suggest process improvements.

Compensation

$50,000-$60,000/year


While we appreciate all applications we receive, only candidates under consideration will be contacted.


Accommodations are available upon request for candidates taking part in all stages of the selection process


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