#127 How Data Scientists Can Thrive in Consulting

DataCamp · Intermediate ·🔍 RAG & Vector Search ·3y ago
The most common application for data science is to solve problems within your own organization, and as professionals become more data literate, they rely less and less on others to solve their problems and unlock professional growth and career advancement. But in the world of consulting, data science is used to solve other people’s problems, which adds an additional layer of complexity since consultants aren’t always given all of the tools they need to do the job right. Enter Pratik Agrawal, a Partner at Kearney Analytics leading the automotive and industrial transportation sector. In this episode, we are taking a look at how data science is applied in the consulting industry and what skills are critical to be a successful data science consultant. As a software engineer and data scientist with over a decade of experience in the consulting world at companies like Boston Consulting Group and IRI, Pratik has a deep understanding of how to navigate the industry and how data science can be leveraged in it, as well as expertise in digital transformation projects and strategy. Throughout the episode, we discuss common problems that consultants encounter, the skills needed to be successful as a consultant, the different approaches to analytics in consulting versus in an organization, how to handle context switching when juggling multiple projects, what makes consulting feel exciting and challenging, and much more. Itunes: https://podcasts.apple.com/us/podcast/127-how-data-scientists-can-thrive-in-consulting/id1336150688?i=1000600547077 This is the DataCamp podcast link; check it out for the show notes and other goodies: https://open.spotify.com/episode/4blj0M96UM4rhgH4k1q2Ge?go=1&sp_cid=39b5625ab800002a810bf96c7e767aba&utm_source=embed_player_p&utm_medium=desktop&nd=1
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