In mathematics, the Itô isometry, named after Kiyoshi Itô, is a crucial fact about Itô stochastic integrals. One of its main applications is to enable the computation of variances for random variables that are given as Itô integrals.
Let ![{\displaystyle W:[0,T]\times \Omega \to \mathbb {R} }](./b2227fe6d949bb5ffca7a97320cfa6ba143b763e.svg) denote the canonical real-valued Wiener process defined up to time
 denote the canonical real-valued Wiener process defined up to time  , and let
, and let ![{\displaystyle X:[0,T]\times \Omega \to \mathbb {R} }](./5b00de44703312aa78ba1b270e89fc4a4481520b.svg) be a stochastic process that is adapted to the natural filtration
 be a stochastic process that is adapted to the natural filtration  of the Wiener process. Then
 of the Wiener process. Then
![{\displaystyle \operatorname {E} \left[\left(\int _{0}^{T}X_{t}\,\mathrm {d} W_{t}\right)^{2}\right]=\operatorname {E} \left[\int _{0}^{T}X_{t}^{2}\,\mathrm {d} t\right],}](./815c8681fac3ee5f8629da2c34e7bdaf0658ee33.svg) 
where  denotes expectation with respect to classical Wiener measure.
 denotes expectation with respect to classical Wiener measure. 
In other words, the Itô integral, as a function from the space ![{\displaystyle L_{\mathrm {ad} }^{2}([0,T]\times \Omega )}](./7a59d5fd5a88280ebaa97d609251839a594e009e.svg) of square-integrable adapted processes to the space
 of square-integrable adapted processes to the space  of square-integrable random variables, is an isometry of normed vector spaces with respect to the norms induced by the inner products
 of square-integrable random variables, is an isometry of normed vector spaces with respect to the norms induced by the inner products
![{\displaystyle {\begin{aligned}(X,Y)_{L_{\mathrm {ad} }^{2}([0,T]\times \Omega )}&:=\operatorname {E} \left(\int _{0}^{T}X_{t}\,Y_{t}\,\mathrm {d} t\right)\end{aligned}}}](./a239b9e0e5c4334a7c84776c984cdcd5823b14cd.svg) 
and
 
As a consequence, the Itô integral respects these inner products as well, i.e. we can write
![{\displaystyle \operatorname {E} \left[\left(\int _{0}^{T}X_{t}\,\mathrm {d} W_{t}\right)\left(\int _{0}^{T}Y_{t}\,\mathrm {d} W_{t}\right)\right]=\operatorname {E} \left[\int _{0}^{T}X_{t}Y_{t}\,\mathrm {d} t\right]}](./3ee457ac2ad838b79ac3e4d2a4b2accf0bd27428.svg) 
for ![{\displaystyle X,Y\in L_{\mathrm {ad} }^{2}([0,T]\times \Omega )}](./048aded9590cd42ded3599a3e577c6fb33adb90b.svg) .
 .