[eng] The geometry of the phase space of a dynamical system contains information about the
dynamics of the system. The Takens embedding theorem shows that the full dynamical
evolution of the system can be extracted from the structure of the phase space and it can be
reconstructed just by measuring one of the variables of the dynamical system. This result has
many applications such as recovering lost time series data, testing data encryption security
in chaotic synchronization cryptography or data forecasting. This can also be used in control
engineering to create a state observer. There are real-world systems that have some variables
that can be measured easily but it might be unfeasible to measure the others. In this work
we implement reservoir computing techniques to reconstruct and forecast the dynamics of a
3-dimensional dynamical system that describes the evolution of an optically injected class B
semiconductor laser. This system has 3 variables, the amplitude, phase and carrier density
but usually only the first one is measured. A reservoir computing state observer is utilized to
infer the evolution of unmeasured variables provided that time series are available for measurements of one of the dynamical variables. Later on, an autonomous reservoir computing
algorithm is used to predict the evolution of the system dynamics. In this same context, a
hybrid method is also considered by introducing an approximate mathematical model into
the autonomous algorithm in order to extend the prediction horizon.