Being an effective leader is not only about making technological choices but also about continuous learning and constantly seeking out new ideas and new methods. Data scientists hoping to become leaders will need to understand that
Businesses have become increasingly reliant on data, its efficient collection and in-depth analysis to facilitate operations and informed decisions making. The resulting advent of Data Science in the corporate sector has generated significant demand for data scientists, both technical and leaders. Data Science is a thriving field with a remarkable number of job openings around the globe. The demand is overflowing the supply.
Data Science is one of the most lucrative jobs of the 21st century but like all other jobs, this requires hard work. A day-to-day experience in data science requires working on technological aspects such as developing or programming the models for long hours with in-depth research. When we are aiming for a leadership role, your experience needs to shine.
For practitioners, leadership means managing people and products with a focus on developing workflows and practices that will help companies succeed. But data science requires navigating the fast-changing demand alongside peers and stakeholders across multiple disciplines. Leading a team is a dream for many of us. It’s the natural progression along the career path, and everyone has ambitions to grow in their career, to make a mark on their company, clients, and in the analytical world.
But leading is tough. There is nothing that adequately prepares you to lead an analytical team. On top of this, data science needs project management and leadership styles to drift into comfortable territory. In the data science domain, we must learn cutting-edge technologies and need to master the art of leadership. Thus, the management philosophies that work well in the rest of the organisations may not translate well to data science teams.
Businesses don’t know what to do with their data. It’s a new world with the potential to derail even the most earnest data science initiatives. Therefore, as a data science leader, you need to bridge the gap between the different business stakeholders and the data scientist team. Be in continuous communication with business stakeholders to help them identify the business problem. Help them convert the business problem into a data problem. Work with the data science team to formulate a hypothesis, data collection or extraction, data modelling and development and be able to communicate the results and insights to businesses and help them design and develop their strategies.
[This article has been reproduced with permission from the Indian School of Business, India]