Upgrade & Secure Your Future with DevOps, SRE, DevSecOps, MLOps!

We spend hours on Instagram and YouTube and waste money on coffee and fast food, but won’t spend 30 minutes a day learning skills to boost our careers.
Master in DevOps, SRE, DevSecOps & MLOps!

Learn from Guru Rajesh Kumar and double your salary in just one year.

Get Started Now!

Rightsizing data science: How to architect analytics around the business need

Source:- ciodive.com

Large, successful companies are increasingly embracing the value of the data science function and its potential to deliver powerful insights, better outcomes, and personalized customer experiences.

Growth in the application of data science is evident in new hiring trends, increased spending in areas like technology and data science, as well as an overall cultural shift and recognition of the need for data-inspired decision making at the highest levels of leadership for critical strategic direction.

But the glorification of data science in today’s enterprise can be a two-edged sword.

The growing wave of big data applications and activities, along with plenty of media hype and publicity, can sometimes supercharge the expectations and demands of business leaders.

Executives can push for what’s shiny and new — the biggest and most complex — data science models to address their perceived business needs.

Perhaps there’s also a desire to gain bragging rights among executives as the leader who implemented the most advanced data science techniques in their industry.

While the growing stature of data science and an improved data culture represent positive trends for the field, all the excitement can drive data science teams to fall into a trap I call “Data Science Overdone.”

It’s an unhealthy condition that leads data science teams to over-engineer solutions and lose focus of a few key guiding principles as they architect their data science processes, methods, and solutions.

In lieu of practical, effective approaches, enthusiasm among business leaders, combined with the curiosity and ambition of highly trained and well-qualified data science teams, can ironically sometimes push data scientists toward over-hyped and unnecessarily complex approaches — often to the detriment of the business.

Instead, data scientists should remember the principle of Occam’s razor and right size their projects by embracing the simplicity of practical and effective designs.

What follows are three suggestions to help get the data science function on track in rightsizing their data science solutions:

1. Data science team

Experience is the best teacher and experienced data science teams have seen solutions fall short of implementation over time.

Strong, experienced and confident data science leaders understand the value of rightsizing data science rather than creating solutions that excite and astound because of the advanced techniques applied.

2. Senior leaders and cultural understanding

Executives and others outside of the data science function commonly represent the ultimate consumers of analytics solutions.  Their exposure to new terms, methods, and trends can result in buzzword-fueled requests for the latest and greatest in data science work.

While it’s exciting to see the thrill and enthusiasm, analytics clients can lose sight of the importance of focusing on their business needs rather than the latest trends.

It’s incumbent on data science leaders to help their clients understand the difference between cutting edge and the surest, most cost-effective, route to solving business challenges.

3. Framing the problems or opportunities

Data science teams need to take the time to work with the business to frame the business problem and, especially, to understand the intended application of the results.

Experience has shown that this is an often neglected, yet vitally important step in the analytics project lifecycle.

Related Posts

What is Data Pipelining Tools and that are the Different Types of Data Pipelining Tools?

Introduction to Data Pipelining Tools Data pipelining tools are an essential part of modern data management processes. As companies collect more and more data, they need to Read More

Read More

What are Data Engineering Tools?

Introduction to Data Engineering Tools Data engineering is a crucial component of the data lifecycle that involves collecting, transforming, storing, and managing large datasets. With the increase Read More

Read More

What is a data science platform?

Introduction to Data Science Platforms Data Science Platforms have revolutionized the way businesses operate by providing a comprehensive suite of tools for managing and analyzing large volumes Read More

Read More

What are Data Analytics Tools and Why are Data Analytics Tools Important?

Introduction to Data Analytics Tools Data analytics tools are software solutions designed to collect, process, and analyze large sets of data to extract valuable insights. With data Read More

Read More

What is Data Science Platform and Why Data Science Platform is important?

Introduction to Data Science Platforms In today’s data-driven world, businesses are collecting and processing vast amounts of information to gain insights, make informed decisions, and stay ahead Read More

Read More

GET RECRUITED: TOP DATA SCIENCE JOBS TO APPLY THIS WEEKEND

Source – https://www.analyticsinsight.net/ Data science is an essential part of any industry today, given the massive amounts of data that are produced. Data science is one of Read More

Read More
Subscribe
Notify of
guest
1 Comment
Oldest
Newest Most Voted
Inline Feedbacks
View all comments
1
0
Would love your thoughts, please comment.x
()
x