2022 Blockly Developers Summit: Block Definitions - Past, Present, and Future

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Published on ● Video Link: https://www.youtube.com/watch?v=ebBbj4nDyLg



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A Google TechTalk, presented by Christopher Allen, 2022/05/03.
ABSTRACT: This talk details how blocks have historically been defined, how they are defined today, and previews the anticipated future roadmap. We pose some questions about the future of block definitions which we hope to get developer feedback on.

About the presenter: Christopher Allen is a software engineer at Google. Christopher recently joined the Blockly team to work on modernising the Blockly codebase. Previously, he developed Code City, a Google platform for teaching advanced software engineering skills through undirected play. This work has given him a deep knowledge of the ECMAScript specification and server-side JS; he looks forward with not inconsiderable trepidation to learning more about client-side JS the DOM.




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