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Weigh-In Saturday

Weight: 83.7kg. Body fat: 20.7%. Been fairly idle this week, only 6hrs on the turbo. Lets chalk this down as a recovery and adaptation week. Next week is a medium intensity week, so I'm doing some hill intervals at Pitch Hill this afternoon and probably won't lose a lot of fat for the week.

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