top of page

Data Analytics Starter Guide Part III

Learning while a working professional isn't about having immediate recall and doing everything at once. There isn't a test we need to cram for. We aren't (typically) working directly with data on a daily basis, but we tend to be managing others. So knowing what to do is more our speed. Guiding others in diagnosing problems, inconsistencies or other forms of troubleshooting require we have some relevant experience.  

Pandas Profiling Tutorial

emiliano-vittoriosi-0N_azCmUmcg-unsplash.jpg

The word is getting out — data is subjective. So as we’re taken off our

rose-colored glasses, we’re picking up the magnifying glass to screen data and datasets, data processing and data insights more carefully.

​

The next hurdle becomes how to assess the the quality of your data and datasets. Short answer: it’s a multi-step, human-informed and algorithmic-based set of processes that are achievable in reasonable timeframe but may not lead you to the conclusions you expect. Long-ish answer: you’ll need to be comfortable with the uncomfortable by leaning on others’ perspective of the data and datasets. Then, you’ll likely have to forgo executing some of your “standard” data processing approaches as you’ll learn that not all approaches lead to valuable insights. And lastly, you’ll likely recognize how elusive quality data truly is so you become more agile and forgiving of your data. When you know better about your data and datasets, you do better.

​

Analytics Design Guide by BI Brainz

Data_Analytics_Tutorial.png

Stop struggling to standardize your dashboards and reports with our Analytics Design Guide online course and downloadable template. No design or marketing skills are needed to use our guide. Learn how to quickly customize it so you can share it with your team and users in minutes.

After downloading the guide, feel free to use it in your current/next project.

​

Exploratory Data Analysis (EDA) Using Python

Data_Analytics_Tutorial.png

This 30-min turtorial walks the viewer through fundamental data analyses in Jupyter Notebook. It's golden, especial for those who don't know where to start. 

​

Learn what you need and leave the rest for someone else :-)

​​

bottom of page