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Concurrency and Parallelism in Modern Python
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sep_25
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Next: 1 Method Binding in Python
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Author(s):
Jeremy Shefer
Location
Avant
Date
sep Thu 11
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Start
Sept. 11, 2025, 6:30 p.m.
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01:00:00
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Sept. 11, 2025, 7:30 p.m.
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None min.
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I want to start broadly about what concurrency is, how it's implemented on the hardware level and what concurrency paradigms are available out there on various programming languages. I will then zoom into what's available in modern python. Hopefully this will give people a good understanding of the current concurrency landscape in python and how and why it came to be.
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