The fastest-growing team in your company just might be the data team, so we’re going to explore how to build an effective team with the right roles in place.
How do you make the transition from a career in academia to a data professional? Many students at The Data Incubator (TDI) say that was their first hurdle when deciding if they were ready to apply. Hear more from alumni Newton Le and his journey out of academia.
Do you keep pushing forward in academia, betting on being one of the few to land the coveted tenure track? Or do you leap into something new and carve your path outside of academia?
While we can’t tell you with absolute certainty what path is right for you, we can help you get started if you choose to transition out of academia.
Dr. Becky Tucker is a senior data scientist at Netflix and chats with us about how Netflix is an extremely data-driven company how they apply data science to every aspect of the user experience, including content – one of the most nuanced ways to use data science.
The shape of code, or what we can learn from indentation. As a TDI data scientist in residence, I have learned to judge code quality at a quick glance by looking at indentation. The rule of thumb is: good code has frequent changes in indentation, but should not be deeply indented.
The increasing demand for artificial Intelligence (AI) and data science experts, driven in part by the COVID-19 economic crisis, is showing no sign of abating. Many employers are failing to identify viable job candidates, much less interviewing or hiring them. What’s the biggest obstacle holding them back? In our experience, it is often a poor job posting.
Sign up for our newsletter!