Summary

In this chapter, I described a high-level architecture and approach to design a data-driven enterprise. I also introduced you to influence diagrams, a tool for understanding how the decisions are made in traditional and data-driven enterprises. I stopped on a few key models, such as Kelly Criterion and multi-armed bandit, essential to demonstrate the issues from the mathematical point of view. I built on top of this to introduce some Markov decision process approaches where we deal with decision policies based on the results of the previous decisions and observations. I delved into more practical aspects of building a data pipeline for decision-making, describing major components and frameworks that can be used to built them. I also discussed the issues of communicating the data and modeling results between different stages and nodes, presenting the results to the user, feedback loop, and monitoring.

In the next chapter, I will describe MLlib, a library for machine learning over distributed set of nodes written in Scala.

..................Content has been hidden....................

You can't read the all page of ebook, please click here login for view all page.
Reset