What is Big-O Notation?

Rob Conery
2 min readFeb 9, 2022

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When I started writing The Imposter’s Handbook, this was the question that was in my head from the start: what the f*** is Big O and why should I care? It took a while but I think I figured it out.

Many people want to qualify the efficiency of an algorithm based on the number of inputs. A common thought is if I have a list with 1 item it can’t be O(n) because there’s only 1 item so it’s O(1). This is an understandable approach, but Big O is a technical adjective, it’s not a bench marking system. It’s simply using math to describe the efficiency of what you’ve created.

, always. That means that even if you think you’re looking for is the very first thing in the set, Big O doesn’t care, a loop-based find is still considered O(). That’s because Big O is just a descriptive way of thinking about the code you’ve written, not the inputs expected.

There You Have It

I find myself thinking about things in terms of Big O a lot. The cart example, above, happened to me just over a month ago and I needed to make sure that I was flexing the power of Redis as much as possible.

I don’t want to turn this into a Redis commercial, but I will say that it (and systems like it) have a lot to offer when you start thinking about things in terms of time complexity, which you should! It’s not premature optimization to think about Big O upfront, it’s and I don’t mean to sound snotty about that! If you can clip an O() operation down to O() then you should, don’t you think?

So, quick review:

  • Plucking an item from a list using an index or a key: O(1)
  • Looping over a set of n items: O(n)
  • A nested loop over n items: O()
  • A divide and conquer algorithm: O(log n)

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Rob Conery
Rob Conery

Written by Rob Conery

Author of The Imposter’s Handbook, founder of bigmachine.io, Cofounder of tekpub.com, creator of This Developer's Life, creator of lots of open source stuff.

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