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Machine Learning from Scratch with Python

강의개요

강의정보

  • 강좌명: 밑바닥 부터 시작하는 머신러닝 입문(Machine Learning from Scratch with Python)
  • 강의자명: 가천대학교 산업경영공학과 최성철 교수 ([email protected], Director of TEAMLAB)
  • Email: [email protected]
  • 선수지식: Python(requirment), database(recommended)

강의

관련강좌

본 강의는 TEAMLABInflearn이 함께 구축한 데이터 사이언스 과정의 두 번째 강의인 밑바닥 부터 시작하는 머신러닝 입문 입니다. 밑바닥부터 시작하는 머신러닝 입문은 Part I과 Part II로 구성되어 있습니다.

본 강의는 TEAMLABInflearn이 함께 준비한 WADIZ 펀딩의 지원을 받아제작되었습니다. 아래 목록에 대한 강의를 개발할 예정입니다.

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