Thinking Like a Data Scientist
The field of data science is having an little identity crisis. The fundamental questions of what data science is, and who a data scientist is, remain largely undecided. Regardless of where the answer will fall, there are a number of tools and techniques that every data scientist should have in their toolbelt. Although the software languages, frameworks, and algorithms will come in and out of fashion, the fundamentals behind the trade of data science, which we talk about in this session, have existed for centuries and will continue to be used for ages to come.
What will the audience learn from this talk?
The audience will learn an overview and history of the math, philosophy, software engineering, and algorithms that are inseparable from the field of Data Science. We will cover techniques like optimisation theory like principle component analysis, at the level of analysing where and why we use certain techniques, but not how they are implemented or how to use them in a data science pipeline.
Does it feature code examples and/or live coding?
Yes, there will be brief code examples
Prerequisite attendee experience level:
Level 100
-
Space ShuttleStephen CarverMonday Nov 18 @ 08:45
-
Quantum ComputingJessica PointingTuesday Nov 19 @ 09:00
-
Composing Bach Chorales Using Deep LearningFeynman LiangMonday Nov 18 @ 13:20
-
Design For The Utopia You Want, Not The Dystopia You're InChris AthertonMonday Nov 18 @ 17:30
-
Is Business The Key To Making The World A Happier Place?Evan SutterTuesday Nov 19 @ 13:20
-
Party KeynoteSteve WozniakTuesday Nov 19 @ 18:10
-
Extreme Digitalization in ChinaChristina BoutrupWednesday Nov 20 @ 09:00
-
The Promise and Limitations of AIDoug LenatWednesday Nov 20 @ 13:20
-
How to Be Human in the Age of The MachineHannah FryWednesday Nov 20 @ 17:00