This document discusses filtering and likelihood inference. It begins by introducing filtering problems in economics, such as evaluating DSGE models. It then presents the state space representation approach, which models the transition and measurement equations with stochastic shocks. The goal of filtering is to compute the conditional densities of states given observed data over time using tools like the Chapman-Kolmogorov equation and Bayes' theorem. Filtering provides a recursive way to make predictions and updates estimates as new data arrives.