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Bank of Korea MPC Diorama

For anyone interested in central banking, you might find this photo amusing. I recently took it at the Bank of Korea Museum (website includes virtual 3D tour for those not traveling to Seoul anytime soon). It shows the BoK's Monetary Policy Committee.


I'm not sure how you would code this for a project on central bank transparency. Also, I'm not sure which of the puppets is supposed to be the Ministry of Strategy and Finance's "observer".

Final note: this reminded me of a perhaps an excruciating plan for an multi-holiday theme. Central bank museum tours. Then again, the museums are usually free, the Bank of England Museum is actually pretty interesting, and it can't be worse than touring all of the major league baseball stadiums.  

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