Alex Vayner: Using Data Science to Deliver Real Value to the Business

Data science has made immense progress, but companies are still stuck with the question: how do you use data science to deliver real value to the business? They hire dozens of data scientists and invest in state-of-the-art technology, but only a few have delivered ROI and business impact. In this episode, Wayne Eckerson and Alex Vayner discuss what organizations need to do for data science success.

Alex Vayner is a Partner and Americas Data & AI Practice Leader for PA Consulting Group, an innovation and transformation consultancy. Alex has spent his entire career in data & analytics, with his last five roles focused on building and running high-performance data science teams and capabilities in consulting and corporate environments. Before joining PA Consulting, Alex ran the NA Data Science & AI practice at Capgemini. He joined Capgemini from Equifax, where he served as VP, Global Data Innovation Leader, building a team responsible for pioneering disruptive data & analytics solutions for clients across all industries.

Key Takeaways:

  • Apart from picking the right project, it's important to check data readiness and systems readiness.
  • Some companies are successful in implementing smaller data science projects but are not able to industrialize the concept because of the unavailability of data and IT bottlenecks.
  • Defining the problem is the most challenging part of the early stage POC.
  • Business leaders have trouble coming up with outside-the-box questions can be used for data science projects.
  • The more domain knowledge your data scientists have, the more successful you are going to be.
  • The IT mentality of building something first and telling the business later decreases the proof-of-value.
  • If you are planning to build new products using data science over a more extended period than hiring a team is recommended.
  • However, if you only need to build one or two products than hiring a consultancy would be the right option.
  • The build and buy decision depends on the price, control, and speed.
  • Buying a solution brings speed, but the company loses control over pricing.
  • If you feel that the insights could become a new revenue stream for you, then the buy option is not the best one.
  • The benefits of cloud outnumber on-premise solutions.
  • Instead of looking at the data, companies can look at models to organize and manage their data science data lakes.
Wayne Eckerson

Wayne Eckerson is an internationally recognized thought leader in the business intelligence and analytics field. He is a sought-after consultant and noted speaker who thinks critically, writes clearly and presents...

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