[2013 체인지온] 마을과 지역을 바꾸는 데이터와 데이터의 시각화 - 최용선

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마을과 지역을 바꾸는 데이터와 데이터의 시각화 / 최용선 (광주광역시 광산구청 정책팀장) 지방자치단체에는 다양한 분야의 방대한 데이터가 존재합니다. 각종 민원발생 현황부터, 시설물 위치 현황뿐만 아니라 어떤 주민들이 어디에서 이사 와서, 또 어디로 이사를 가는지에 관한 데이터까지. 이러한 데이터를 잘 활용하면, 우리지역에 살고 있는 주민들이 필요로 하는 행정수요가 어디에 있는지, 지금 우리지역에서 벌어지고 있는 도시문제는 무엇이 있는지를 좀 더 구체적으로 살펴볼 수 있습니다. 광주광역시 광산구가 지역문제를 해결하기 위해 데이터를 어떻게 활용하고 있고, 데이터의 시각화는 어떻게 활용하고 있는지를 소개할 계획입니다. https://vimeo.com/77934563 #changeon

Transcript of [2013 체인지온] 마을과 지역을 바꾸는 데이터와 데이터의 시각화 - 최용선

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Who?

The Story of Utopias, by Lewis Mumford, (1922)

“The chief business of eutopians was summed upby Voltaire in the final injunction of Candide : Letus cultivate our garden. The aim of the realeutopian is the culture of his environment, mostdistinctly not the culture, and above all not theexploitation, of some other person's environment.Hence the size of our Eutopia may be big or little; itmay begin in a single village; it may embrace awhole region. A little leaven will leaven the wholeloaf.“ “The notion that no effective change can be broughtabout in society until millions of people havedeliberated upon it and willed it is one of therationalizations which are dear to the lazy and theineffectual.”

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