Data Science Project Planning
Fundamental Concepts for Beginners
Description
Success of any project depends highly on how well it has been planned. Data science projects are no exception.
Large number of data science projects in industrial settings fail to meet the expectations due to lack of proper planning at their inception stage.
This course will provide a overview of core planning activities that are critical to the success of any data science project.
We will discuss the concepts underlying - Business Problem Definition; Data Science Problem Definition; Situation Assessment; Scheduling Tasks and Deliveries.
The concepts learned will help the students in:
A) Framing the business problem
B) Getting buy-in from the stakeholders
C) Identifying appropriate data science solution that can solve the business problem
D) Defining success criteria and metrics to evaluate the key project deliverables viz; models, data flow pipeline and documentation.
E) Assessing the prevailing situation impacting the project. For e.g. availability of data and resources; risks; estimated costs and perceived benefits.
F) Preparing delivery schedules that enable early and continuously incremental valuable actionable insights to the customers
G) Understanding the desired team attributes and communication needs
What You Will Learn!
- Fundamental concepts underlying core planning activities that are critical for a data science project's success.
- PLEASE NOTE: This course will not cover technical topics like programming , statistics and algorithms.
Who Should Attend!
- Managers or Leads who are going to plan their first data science project in a real life business environment
- Members of a data science team who want to build awareness about crucial planning activities required for making their project successful
- Senior Executives requiring a bird’s eye view of activities involved in planning a data science project