Difference between revisions of "Recruitment Campaign for Data Scientists – Information Page for Candidates"
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*Candidates apply online HERE (link to poster) between November 2 and 30, 2022. | *Candidates apply online HERE (link to poster) between November 2 and 30, 2022. | ||
− | *Four information sessions during the month of November 2022 (see | + | *Four information sessions during the month of November 2022 (see above for dates and links to registration forms). |
===December 2022 to January 2023=== | ===December 2022 to January 2023=== | ||
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The Public Service Commission is launching a Canada-wide selection process that aims to recruit the very best talent in data science. As a data scientist in the Government of Canada, you will: | The Public Service Commission is launching a Canada-wide selection process that aims to recruit the very best talent in data science. As a data scientist in the Government of Canada, you will: | ||
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* Participate in the definition, development and implementation of a data science program that clearly establishes the opportunities for the use of internal and scientific data; design and implement projects to enhance and facilitate the use of internal and scientific data by internal and external users. | * Participate in the definition, development and implementation of a data science program that clearly establishes the opportunities for the use of internal and scientific data; design and implement projects to enhance and facilitate the use of internal and scientific data by internal and external users. | ||
*Provide advice and mentoring to GC staff on internal and scientific data analysis and related activities in support of the mandate; maintain industry and academic data science practices and standards documents. | *Provide advice and mentoring to GC staff on internal and scientific data analysis and related activities in support of the mandate; maintain industry and academic data science practices and standards documents. |