
We expect basis-free, we write basis-free, but when the chips are down we close the office door and compute with matrices like fury.

Linear algebra is a fundamental discipline underlining anything one can do with Math. From Physics to machine learning, probability theory (ex: Markov chains), you name it. Regardless of what you’re doing, linear algebra is all the time lurking under the covers, able to spring at you as soon as things go multi-dimensional. In my experience (and I’ve heard this from others), this was on the source of an enormous shock between highschool and university. In highschool (India), I used to be exposed to some very basic linear algebra (mainly determinants and matrix multiplication). Then in university level engineering education, every subject hastily appears to be assuming proficiency in concepts like Eigen values, Jacobians, etc. such as you were alleged to be born with the knowledge.
This blog is supposed to offer a high level overview of the concepts and their obvious applications that exist and are necessary to know on this discipline. So that you just no less than know what you don’t know (if anything). Its also an excuse to gather resources and links so people can dig deeper into the rabbit hole.
As mentioned within the previous section, linear algebra inevitably crops up when things go multi-dimensional. We start off with a scalar, which is just quite a few some sort. For this text, we’ll be considering real and complicated numbers for these scalars. On the whole, a scalar will be any object where the fundamental operations of addition, subtraction, multiplication and division are defined (abstracted as a “field”). Now, we would like a framework to explain collections of such numbers (add dimensions). These collections are called “vector spaces”. We’ll be considering the cases where the weather of the vector space are either real or complex numbers (the previous being a special case of the latter). The resulting vector spaces are called “real vector spaces” and “complex vector spaces” respectively.
The ideas in linear algebra are applicable to those “vector spaces”. Probably the most common example is your floor, table or the pc screen you’re…