In this section, we shall do some preparations that will come in handy later, when we need them in order to prove existence/uniqueness theorems. This is since those do rely heavily on some techniques from calculus, which may not usually be taught within a calculus course. Hence this section.
We shall begin with very useful estimation inequalities, called Gronwall's inequalities or inequalities of Gronwall type. These allow us, if we are given one type of estimation (involving an integral with a product of functions), to conclude another type of estimation (involving the exponential function).
Proof:
We define a new function by
.
By the fundamental theorem of calculus, we immediately obtain
,
where the inequality follows from the assumption on
. From this follows that
.
We may now multiply both sides of the equation by
and use the equation
(by the product and chain rules)
to justify
.
Hence, the function

is non-increasing. Furthermore, if we set
in that function, we obtain
.
Hence,
.
From
(assumption) follows the claim.
This result was for functions extending from
to the right. An analogous result holds for functions extending from
to the left:
Note that this time we are not integrating from
to
, but from
to
. This is more natural either, since this means we are integrating in positive direction.
Proof 1:
We rewrite the proof of theorem 12.1 for our purposes.
This time, we set
,
reversing the order of integration in contrast to the last proof.
Once again, we get
. This time we use

and multiply
by
to obtain
,
which is why

is non-decreasing. Now inserting
in the thus defined function gives
,
and thus for
.
Proof 2:
We prove the theorem from theorem 12.1. Indeed, for
we set
and
. Then we have

by the substitution
. Hence, we obtain by theorem 12.1, that

for
. Therefore, if now
,
.
Proof:
Let
be an enumeration of the set
. The set
is bounded, and hence has a convergent subsequence
due to the Heine–Borel theorem. Now the sequence
also has a convergent subsequence
, and successively we may define
in that way.
Set
for all
. We claim that the sequence
is uniformly convergent. Indeed, let
be arbitrary and let
such that
.
Let
be sufficiently large that if we order
ascendingly, the maximum difference between successive elements is less than
(possible since
is dense in
).
Let
be sufficiently large that for all
and
.
Set
, and let
. Let
be arbitrary. Choose
such that
(possible due to the choice of
). Due to the choice of
, the choice of
and the triangle inequality we get
.
Hence, we have a Cauchy sequence, which converges due to the completeness of
.
In this section, we shall prove two or three more or less elementary results from analysis, which aren't particular exciting, but useful preparations for the work to come.
Proof: Let
be arbitrary. Since
is a continuous function defined on a compact set, it is even uniformly continuous (this is due to the Heine–Cantor theorem). This means that we may pick
such that
for all
. Since
uniformly, we may pick
such that for all
and
,
. Then we have for
and
that
.
The next result is very similar; it is an extension of the former theorem making
time-dependent.
Theorem 2.5:
Let
be a sequence of functions defined on an interval
, whose image is contained within a compact set
such that
uniformly, and let this time
be a function from
to
. Then

uniformly in
.
Proof:
First, we note that the set
is compact. This can be seen either by noting that this set is still bounded and closed, or by noting that for a sequence in this space, we may first choose a convergent subsequence of the "induced" sequence of
and then a convergent subsequence of what's left in
(or the other way round).
Thus, the function
is uniformly continuous as before. Hence, we may choose
such that
implies
(note that
is a norm on
and since this space is still finite-dimensional, all norms there are equivalent; at least to the norm with respect to which continuity is measured).
Since
uniformly, we may pick
such that for all
and
,
. Then for
and all
, we have
.
We shall later give two proofs of the Picard-Lindelöf existence of solutions theorem; one can be given using the machinery above, whereas a different one rests upon the following result by Stefan Banach.
Theorem 2.6:
Let
be a complete metric space, and let
be a strict contraction; that is, there exists a constant
such that
.
Then
has a unique fixed point, which means that there is a unique
such that
. Furthermore, if we start with a completely arbitrary point
, then the sequence

converges to
.
Proof:
First, we prove uniqueness of the fixed point. Assume
are both fixed points. Then
.
Since
, this implies
.
Now we prove existence and simultaneously the claim about the convergence of the sequence
. For notation, we thus set
and if
is already defined, we set
. Then the sequence
is nothing else but the sequence
.
Let
. We claim that
.
Indeed, this follows by induction on
. The case
is trivial, and if the claim is true for
, then
.
Hence, by the triangle inequality,
.
The latter expression goes to zero as
and hence we are dealing with a Cauchy sequence. As we are in a complete metric space, it converges to a limit
. This limit further is a fixed point, as the continuity of
(
is Lipschitz continuous with constant
) implies
.