Book Image

Managing Data Science

By : Kirill Dubovikov
Book Image

Managing Data Science

By: Kirill Dubovikov

Overview of this book

Data science and machine learning can transform any organization and unlock new opportunities. However, employing the right management strategies is crucial to guide the solution from prototype to production. Traditional approaches often fail as they don't entirely meet the conditions and requirements necessary for current data science projects. In this book, you'll explore the right approach to data science project management, along with useful tips and best practices to guide you along the way. After understanding the practical applications of data science and artificial intelligence, you'll see how to incorporate them into your solutions. Next, you will go through the data science project life cycle, explore the common pitfalls encountered at each step, and learn how to avoid them. Any data science project requires a skilled team, and this book will offer the right advice for hiring and growing a data science team for your organization. Later, you'll be shown how to efficiently manage and improve your data science projects through the use of DevOps and ModelOps. By the end of this book, you will be well versed with various data science solutions and have gained practical insights into tackling the different challenges that you'll encounter on a daily basis.
Table of Contents (18 chapters)
Free Chapter
1
Section 1: What is Data Science?
5
Section 2: Building and Sustaining a Team
9
Section 3: Managing Various Data Science Projects
14
Section 4: Creating a Development Infrastructure

Implementing ModelOps

In this chapter, we will look at ModelOps and its closest cousin—DevOps. We will explore how to build development pipelines for data science and make projects reliable, experiments reproducible, and deployments fast. To do this, we will familiarize ourselves with the general model training pipeline, and see how data science projects differ from software projects from the development infrastructure perspective. We will see what tools can help to version data, track experiments, automate testing, and manage Python environments. Using these tools, you will be able to create a complete ModelOps pipeline, which will automate the delivery of new model versions, while taking care of reproducibility and code quality.

In this chapter, we will cover the following topics:

  • Understanding ModelOps
  • Looking into DevOps
  • Managing code versions and quality
  • Storing data...