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- Singularity containers let users run applications in a Linux environment of their choosing.
- An Introduction to the CAN Bus: How to Programmatically Control a Car
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- What Intelligent Machines Need to Learn From the Neocortex
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- 읽을거리
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- The purpose of life is to be a nobody
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- Modifying Microsoft Flight Simulator 4 to run on three immersive monitors
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- Why You Can’t Help But Act Your Age - The surprising relationship between mindset and getting old.
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토요일, 6월 17, 2017
[B급 프로그래머] 6월 2주 소식(빅데이터/인공지능, 읽을거리 부문)
(오늘의 짤방: 프로그래머가 보는 반이 찬 물잔 @InfoQ)
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