Q #7 : What are the principal issues that prevent #datascientist from being effective modelers?

Anshuman Singh
Data munging!! Its pure evil!

Piyush Malik
Lack of business domain understanding and inability to sift through data challenges impact #DataScientist effectiveness

Zeydy Ortiz, PhD
To be effective, #DataScientists need to focus, first and foremost, on the biz problem - establish what is the question that needs to be answered with data, often overlooked @IBMbigdata

jameskobielus
I agree with Anshuman Singh: the data-munging (discovery, acquisition, preparation workload keeps modelers from devoting more time to exploring the data, building models, testing, iterating, and refining them.

Anshuman Singh
Unavailability of well labeled datasets!

Thalamus
"data science" means nothing. Everyone is a data scientist if they do science with data. Modelers are modelers, statisticians are statisticians, scientists are scientists. It's often wrongly assumed that their Venn diagram is one big circle
Adarsh Mohan
duration of effective modeling sessions, lack of ware of motives they are being asked about, identification of classifiers