MLearning.ai
Published in

MLearning.ai

6 Data Science Mistakes You Should Avoid At All Costs

Photo by Shubham Dhage on Unsplash

Part of coming to terms with the complexity of a solution is realizing that — despite our best thoughts and intentions — we are still drawn to simplistic solutions for complex problems. Data science solutions are no exception to this rule. In coming up with a data science strategy, you’re bound to encounter many “reasonable” assertions that are in fact far from reasonable and could potentially…

--

--

--

Data Scientists must think like an artist when finding a solution when creating a piece of code. ⚪️ Artists enjoy working on interesting problems, even if there is no obvious answer ⚪️ linktr.ee/mlearning 🔵 Follow to join our 18K+ Unique DAILY Readers 🟠

Recommended from Medium

Build a curated business vocabulary for your data fabric

Seaborn in Python

we gave a talk

Top 5 Data Visualization Tools for a Data Scientist

The rise of data apps & how to build apps in a blazing-fast way

Predicting Covid-19 Hotspots

Building a dataset for the São Paulo Subway operation

Vision Zero Lessons from London’s Congestion Toll

Get the Medium app

A button that says 'Download on the App Store', and if clicked it will lead you to the iOS App store
A button that says 'Get it on, Google Play', and if clicked it will lead you to the Google Play store
Rishabh Sharma

Rishabh Sharma

Writer, Volunteer Tutor — P.A.L.S.

More from Medium

Handling Missing Values — Data Science

Top 3 Concepts I wish I knew when I started as a Data Scientist

Make your messy data ready for analysis with only 3 commands