I will start by recalling some known concentration estimates and limit theorems
for Poisson point processes with focus on U-statistics. Next I will discuss
moment and tail inequalities for multiple stochastic integrals
(of deterministic functions), compare them with analogous inequalities
on the Gauss space (due to Latała) and classical U-statistics and show how
they can be used to derive the law of the iterated logarithm when the
intensity of the process tends to infinity. I will also discuss similarities
and differences with the law of the iterated logarithm for classical
U-statistics. Finally, I will illustrate these results with specific
examples from stochastic geometry and stochastic processes. I will conclude
with some open problems. Based on joint work with Dominik Kutek (University
of Warsaw).