Cookies help us display personalized product recommendations and ensure you have great shopping experience.

By using this site, you agree to the Privacy Policy and Terms of Use.
Accept
SmartData CollectiveSmartData Collective
  • Analytics
    AnalyticsShow More
    predictive analytics risk management
    How Predictive Analytics Is Redefining Risk Management Across Industries
    7 Min Read
    data analytics and gold trading
    Data Analytics and the New Era of Gold Trading
    9 Min Read
    composable analytics
    How Composable Analytics Unlocks Modular Agility for Data Teams
    9 Min Read
    data mining to find the right poly bag makers
    Using Data Analytics to Choose the Best Poly Mailer Bags
    12 Min Read
    data analytics for pharmacy trends
    How Data Analytics Is Tracking Trends in the Pharmacy Industry
    5 Min Read
  • Big Data
  • BI
  • Exclusive
  • IT
  • Marketing
  • Software
Search
© 2008-25 SmartData Collective. All Rights Reserved.
Reading: Unlocking the Power of Better Data Science Workflows
Share
Notification
Font ResizerAa
SmartData CollectiveSmartData Collective
Font ResizerAa
Search
  • About
  • Help
  • Privacy
Follow US
© 2008-23 SmartData Collective. All Rights Reserved.
SmartData Collective > Big Data > Data Science > Unlocking the Power of Better Data Science Workflows
Data Science

Unlocking the Power of Better Data Science Workflows

Larry Alton
Larry Alton
6 Min Read
Unlocking the Power of Better Data Science Workflows
SHARE

It doesn’t matter what the project or desired outcome is, better data science workflows produce superior results. But if you’re still working with outdated methods, you need to look for ways to fully optimize your approach as you move forward.

Contents
  • 5 Tips for Better Data Science Workflows
  • 1. Demarcate Each Project Into Phases
  • 2. Use the Proper Mix of Hardware and Software
  • 3. Make the Workflow Obvious and Apparent to Others
  • 4. Involve the Right Number of People
  • 5. Select the Appropriate KPIs
  • Adding it All Up

5 Tips for Better Data Science Workflows

Data science is a complex field that requires experience, skill, patience, and systematic decision-making in order to be successful. If you want to thrive and add value to those around you, it’s imperative that you develop superior data science workflows. Here are a few helpful suggestions:

1. Demarcate Each Project Into Phases

It’s overwhelming to look at a data science project from the top down. Doing so will make you feel overwhelmed. If nothing else, it’ll compromise your ability to take tangible strides. The better strategy is to demarcate each data science project into four distinct phases:

  • Phase 1: Preliminary Analysis. This is the preparation step where data is gathered, goals are set, and objectives are clarified. A lot of data scientists gloss over this phase, but it’s an important one if you want the rest of the workflow to be efficient and productive.
  • Phase 2: Exploratory Data. During this phase, data is cleaned, analyzed, and assessed. This is also the period where specific questions are asked and confusion is cleared up.
  • Phase 3: Data Visualization. With the data analyzed and stored in spreadsheets, it’s time to visualize the data so that it can be presented in an effective and persuasive manner.
  • Phase 4: Knowledge Discovery. Finally, models are developed to explain the data. Algorithms can also be tested to come up with ideal outcomes and possibilities.

This four-stage workflow is just one framework – but it’s a good one. It should give you an idea of the importance of dividing work up into systematic phases that simplify the complex and bring clarity into the details.

More Read

data science jobs
Writing the Ideal Resume for Your Next Job in Data Science
Growing Demand for Data Science & Data Analyst Roles
5 Reasons No-Code Platforms Are the Future of Data Science and AI
5 Hardware Accelerators Every Data Scientist Should Leverage
Reasons Data Science Consultants Can Be Excellent Investments

2. Use the Proper Mix of Hardware and Software

When it comes to data science workflows, speed and efficiency are of the utmost importance. If you’re lacking in either of these areas, the entire project can become compromised. One way to ensure optimal speed and efficiency is to leverage the correct mix of hardware and software.

Take a 3D rendering project, for example. In order for an architect and data scientist to achieve fast rendering and improved workflow efficiency, there must be balance and alignment between the computer and the rending software. When these two elements are in harmony, there are fewer delays and less risk of data corruption.

3. Make the Workflow Obvious and Apparent to Others

Regardless of whether you’re working on a small, isolated project, or you’re involved in a much larger assignment that involves an array of people and groups, you need to make sure your workflow is clear, obvious, and apparent to anyone who encounters it.

Sterling Osborne, a data scientist and Ph.D. Researcher, likes to create notebooks for writing code. And any time he creates a notebook, he’s intentional about making it readable to all.

“My aim with any notebook is to enable someone to pick it up without any prior knowledge of the project and fully understand the analysis, decisions made and what the final output means,” Osborne explains.

Whether you’re writing code or analyzing data, this is a good rule of thumb to follow. Make your work so obvious that anyone can pick it up and quickly catch up with what’s happening.

4. Involve the Right Number of People

Be mindful of project involvement and try to keep your team small. This limits the outside noise and ensures you don’t become paralyzed by excessive opinions and diverse strategies. You want enough people to avoid tunnel vision, but not so many that you lose focus.

5. Select the Appropriate KPIs

One of the biggest challenges with any data science project is communicating what success looks like. And no matter how articulate your goals and objectives are on the front end, you need the appropriate key performance indicators (KPIs) on the back end to ensure results are analyzed in an objective fashion.

“After KPIs are established, you then must operationalize them,” Trenton Huey writes for Oracle. “Data-savvy people will pick them up quickly, but KPIs are for the entire team. Teams have higher performance when everyone understands the primary objective.”

The sooner you establish KPIs and start analyzing your results, the more effective your workflow will become.

Adding it All Up

When it’s all said and done, better data science workflows are more efficient, less expensive, and higher returning than the average approach. By implementing some of the aforementioned tips and suggestions, you can revolutionize your approach from the inside out.

Hopefully, this article spoke to you and provided both encouragement and insights. Regardless of whether you’ve been in the industry for decades, or you’re just now starting out, improving your workflow is a surefire way to grow your career.

Share This Article
Facebook Pinterest LinkedIn
Share
ByLarry Alton
Follow:
Larry is an independent business consultant specializing in tech, social media trends, business, and entrepreneurship. Follow him on Twitter and LinkedIn.

Follow us on Facebook

Latest News

microsoft 365 data migration
Why Data-Driven Businesses Consider Microsoft 365 Migration
Big Data Exclusive
real time data activation
How to Choose a CDP for Real-Time Data Activation
Big Data Exclusive
street address database
Why Data-Driven Companies Rely on Accurate Street Address Databases
Big Data Exclusive
predictive analytics risk management
How Predictive Analytics Is Redefining Risk Management Across Industries
Analytics Exclusive Predictive Analytics

Stay Connected

1.2kFollowersLike
33.7kFollowersFollow
222FollowersPin

You Might also Like

tech industry and data science
Data Science

How People from Outside of the Tech Industry are Breaking into Data Science

6 Min Read
programming concepts for data scientists
Big DataData ScienceExclusiveProgramming

Crucial Programming Concepts For Data Scientists

6 Min Read
guidelines for hiring a data scientist
Data Science

Checklist to Follow When Hiring and Managing Data Scientists

8 Min Read
benefits of ai in startups
Artificial Intelligence

Using Data Science and Artificial Intelligence in Your Tech Company

7 Min Read

SmartData Collective is one of the largest & trusted community covering technical content about Big Data, BI, Cloud, Analytics, Artificial Intelligence, IoT & more.

giveaway chatbots
How To Get An Award Winning Giveaway Bot
Big Data Chatbots Exclusive
ai in ecommerce
Artificial Intelligence for eCommerce: A Closer Look
Artificial Intelligence

Quick Link

  • About
  • Contact
  • Privacy
Follow US
© 2008-25 SmartData Collective. All Rights Reserved.
Go to mobile version
Welcome Back!

Sign in to your account

Username or Email Address
Password

Lost your password?