Traders Who Code · Hugo Bowne-Anderson (data scientist)
Chat With TradersOctober 04, 201800:56:19

Traders Who Code · Hugo Bowne-Anderson (data scientist)

EP 166: The trader’s guide for learning to code—with data scientist, Hugo Bowne-Anderson

For this episode, I speak with Hugo Bowne-Anderson; a data scientist at DataCamp (an educational platform for learning to code) and host of the DataFramed podcast.

The idea for asking Hugo to appear on this episode, was to chat about learning a programming language. Because for some traders, having the ability to write code can have great advantages—such as having the ability to collect stats on market behavior, perform research in a robust data-driven way, visualize large amounts of data, backtest and analyse trading ideas, implement algorithmic strategies, etc.

Plus more professional trading firms and finance related positions now require applicants to have some programming skills. And the same goes for many industries, which should be no surprise, considering a recent IBM study revealed that ‘90% of the world’s data has been created in the last two years alone.’

Hugo and I discuss when someone should consider learning to code, determining what’s relevant, the time it takes to become fluent in a programming language, working with new datasets, what to be wary of when using predictive models. And for fun, I ask Hugo (as a data scientist) how he’d go about creating a basic strategy…
quant, machine learning, what is a data scientist, python programming for finance, quantitative trading, python tutorial, dataframed podcast, introduction to data science, learn python for data science, python programming, datacamp, wall street quants, a day in the life of a data scientist, r programming tutorial, Algorithmic Trading, learn python, learn data science with datacamp, what really is data science, python tutorial for beginners, introduction to data science with r,