This paper develops algorithms for dynamically consistent updating of ambiguous
beliefs in the maxmin expected utility model of decision making under ambiguity.
Dynamic consistency is the requirement that ex-ante contingent choices are respected
by updated preferences. Such updating, in this context, implies dependence on the
feasible set of payoff vectors available in the problem and/or on an ex-ante optimal act
for the problem. Despite this complication, the algorithms are formulated concisely
and are easy to implement, thus making dynamically consistent updating operational
in the presence of ambiguity.