Check out our Blog

Nothing but quality content. Be sure to sign-up to our newsletter for regular updates.


Search our Blog

Search through our past blog posts.

All Advanced Analytics Analytics Strategy Education and Training Technology

Data Talent Spotlight: Data Scientists

Data pervades every aspect of modern life. We generate massive amounts of data every day, and this data holds valuable insights that can help businesses make better decisions, improve their products and services, and understand their customers. But this data …

Data Talent Spotlight: Data Analysts

What is a Data Analyst? In today's digital age, data is everywhere. From social media platforms to e-commerce websites, businesses have access to vast amounts of data that can provide valuable insights into their customers' …

Building feature engineering pipelines

Data scientists are always looking for ways to improve model performance. Of course, getting your hands on more data, trying different model types, and tweaking model parameters are all good options to get that better model fit. But what about feature engineering? And better yet, what about building a solid feature engineering pipeline?

Data science using Excel

It's not surprising to see a number of businesses using Excel for data analytics. With many citing the transparency and ease of sharing workflows, the broad level of acceptance and adoption, as well as the flexibility and power Excel's built-in functions and formula provide. But there is also a dark side to Excel. Particularly for those who have too heavily relied on the tool to serve their more advanced data needs.

A summarized list of data science concepts

As a fun exercise, our team of Datakick Collaborators spent time discussing and collating a list of data science concepts. This is only a start, but should provide a taste of the breadth of knowledge many expect from a data scientist. Feel free to take an early look before we go for round two on this.

Skills for deploying data science solutions

The role of a data scientist is evolving. And it's now more important than ever, that data scientists know how to deploy and scale their solutions for use across the wider organization. So, as a data scientist, how should you prepare yourself to confront these challenges? Which skills should you embrace and develop, versus which should you suggest are better suited for a dedicated data engineer or software developer?


Sign up for our newsletter

Stay up to date with our product releases, announcements, and exclusive discounts by signing up to our newsletter.