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      <title>Canadians Land on Jupyter</title>
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      <description>The proliferation of mobile devices, social networks and sensor networks, the massive data streams they generate, and increasing computational power generate research challenges and provoke widespread interest in mathematical sciences expertise and insight. Democratizing access to this expertise and insight catalyzes meaningful change. Higher education institutions are launching interdisciplinary programs in digital humanities, data science, scientific computation, mathematical modeling, bioinformatics and epigentics to address these challenges. To achieve success, these programs require easy access to state-of-the-art computing environments to support research, teaching and training activities.</description>
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