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You are here: Home / Data Science / Data Science Podcast / Interested in Data Science? Follow DataFramed Podcast from Datacamp

Interested in Data Science? Follow DataFramed Podcast from Datacamp

January 29, 2018 by cmdlinetips

DataFramed, Data Science Podcast from DataCamp
DataFramed, Data Science Podcast

Datacamp, one of the leading data science education portal with over 100 courses on variety of data science aspects in both Python and R, has launched a new podcast named “DataFramed“. The main theme of the podcast DataFramed is, you guessed it, data science.

DataFramed is a weekly data science podcast hosted by DataCamp’s Hugo Bowne-Anderson. And Hugo will be talking with leading data scientists from industry on all thing data science, including what is data science, what data science can do, and the future of data science.

Here is how DataCamp describes what will be the focus of DataFramed podcast

Data Science is one of the fastest growing industries and has been called the Sexiest job of the 21st Century. But what exactly is Data Science? In the podcast by DataCamp, Hugo Bowne-Anderson approaches this question from the perspective of what problems Data Science tries to solve instead of what definition fits it best. From automated medical diagnosis and self-driving cars to recommendation systems and climate change, come on a journey with industry and academic experts to explore the inner workings of the industry that will color the 21st century.

Launching DataFramed, DataCamp released six podcasts from leading data science practitioners including Dave Robinson and Hilary Mason.


  1. Citizen Data Science with David Robinson, Data Scientist at StackOverflow and author of the blog, varianceexplained.org, and author/co-author of books; Introduction to Empirical Bayes and Text Mining with R

  2. Data Science, Past, Present and Future, with Hilary Mason, VP of Research at Cloudera Fast Forward Labs and Data Scientist in Residence at Accel Partners

  3. How Data Science is Impacting Telecommunications Networks with Chris Volinksy, Assistant Vice President for Big Data Research at AT&T Labs and a member of the 7-person, 4-country team that won the $1M Netflix Prize

  4. How Data Science is Revolutionizing the Trucking Industry with Ben Skrainka, data scientist at Convoy, a company dedicated to revolutionizing the North American trucking industry with data science,

  5. Data Science, Epidemiology and Public Health with Maelle Salmon Statistician/data scientist in Public Health, Epidemiology, #rstats

  6. How Data Science and Machine Learning are Shaping Digital Advertising with Claudia Perlich, Chief Scientist at Dstillery

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Filed Under: Data Science Podcast, DataCamp, DataFramed podcast Tagged With: Data Science, Data Science Podcast, DataCamp, DataFramed podcast

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