Data Analyst (Business Reporting) (Two positions available)

Farm Credit Canada
Leeds
1 week ago
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Closing Date (MM/DD/YYYY):

05/02/2025

Worker Type:

Permanent

Language(s) Required:

English

Term Duration (in months):

Salary Range (plus eligible to receive a performance based incentive, applicable to position) :

$79,648 - $107,760Data and reporting expertise rewarded
Develop and maintain reports that inform partners about relevant data, helping them solve business problems and make better decisions. You’ll collaborate as part of a team to enhance existing reports and tools, including optimizing data, consolidating or decommissioning reports and tools, or making them more relevant to the needs of stakeholders.

What you’ll do:

Gather and structure data, create reports, create and run models, monitor key organizational indicators, perform trend analysis, and make recommendations within one or more subject areas Scrutinize data with analytical tools and/or programming languages Analyze data, assess data quality, maintain data, and cleanse data

What we’re looking for:

Analytical thinker who can transform data into useable information Creative thinker with proven research, analytical and problem solving skills Strong communicator, who loves to solve problems with data Relationship-builder who uses collaboration to find the best solutions

What you’ll need:

A bachelor’s degree in agriculture, finance, business, economics, mathematics, statistics, or computer science and at least three years of experience (or an equivalent combination of education and experience) Advanced working knowledge of data manipulation and management tools

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