ML for Algorithmic Trading, with Stefan Jansen

Listen to this episode on Anchor FM In this episode of the DATAcated podcast, host Kate Strachnyi talks with Stefan Jansen about machine learning for algorithmic trading. Stefan has been a partner in an investment firm where he assisted in building data infrastructure and predictive analytics practice. He accomplished this when data science was only beginning to be taken seriously in the investment industry. You won’t want to miss this opportunity to learn from Stefan’s experiences. You will want to hear this episode if you are interested in... What is machine learning in trading? [02:53] The purpose behind Stefan’s book [05:29] Personal finance and personal investments [11:58] Stefan’s best trade or investment idea [13:21] Choosing Python vs. C [17:57] The third edition and what to expect [21:27] Pros and cons of algorithmic trading [29:54] Expectations in the algorithmic trading space [37:48] Resources & People Mentioned Machine Learning for Algorithmic Trading Quandl Bryan Kelly Bloomberg.com AI 2041: Ten Visions for Our Future GitHub Machine Learning for Trading Machine Learning for Trading Community Connect with Stefan Jansen On LinkedIn On Twitter Connect with DATAcated http://www.datacated.com/ DATAcated on LinkedIn: https://www.linkedin.com/company/datacated1/ Kate on LinkedIn: https://www.linkedin.com/in/kate-strachnyi-data/ DATAcated on Twitter: https://twitter.com/datacated_ DATAcated on YouTube: https://www.youtube.com/datacated Subscribe to the DATACATED On Air podcast --- Support this podcast: https://podcasters.spotify.com/pod/show/datacated/support

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The DATAcated On Air podcast is focused on providing the audience with interesting content for the data community. Episodes will include interviews with experts in the space, as well as presentations on various data science, analytics, machine learning and artificial intelligence topics. Support this podcast: https://podcasters.spotify.com/pod/show/datacated/support