Map of content for signals and systems — how to describe signals as functions of time, how to characterize the systems that process them, and how to switch between time and frequency representations. The path: signal vocabulary → system properties → LTI theory → convolution → Fourier series → Fourier transform → Laplace transform → sampling → filters.

Signal fundamentals

What a signal is, and the four kinds we classify them into.

Standard signal zoo

The basic building blocks out of which more complicated signals are constructed.

Signal manipulation and properties

Operations on signals and their structural features.

System properties

The seven properties we use to characterize systems.

Impulse response and convolution

The time-domain characterization of LTI systems.

Fourier series

Decomposing periodic signals into discrete harmonics.

Fourier transform

Extending Fourier series to aperiodic signals.

Laplace transform

Generalizing the Fourier transform to complex frequencies.

Sampling and reconstruction

Bridging continuous and discrete signals.

Frequency response and filters

LTI systems designed to shape the spectrum.


Most of the analytical machinery here comes from Differential equations — the Laplace transform, characteristic equation, RLC circuit dynamics, and convolution all live in both courses. The discrete-signal counterpart is the natural sequel: when these continuous-time tools are applied to sampled signals via the z-transform and digital filters. Digital logic provides the physical layer that actually implements digital signal processing once we’ve moved into discrete time.