Ranter
Join devRant
Do all the things like
++ or -- rants, post your own rants, comment on others' rants and build your customized dev avatar
Sign Up
Pipeless API
From the creators of devRant, Pipeless lets you power real-time personalized recommendations and activity feeds using a simple API
Learn More
Comments
-
For deployment, it's a great idea. For iteration/exploration/graphing/model prep/etc. which honestly take up the most time, horrible.
-
Root826024yPros: better language, significantly faster at runtime.
Cons: limited toolset, high cost of iteration, smaller community for support. -
@johnmelodyme if you really want to take up data science, the hard part is learning the maths and stuff behind it. Languages/deployment etc. is the easy part. Literally pick whatever/the simplest one and have at it.
Making a graph or visualization of a dataset is easy. Can you interpret what it means? From the graph and other metrics, can you figure out what you'd do to clean up the data or extract whatever insight you're looking for? That's hard. -
@johnmelodyme while it's not ML, a great site that I used is https://d2l.ai. It goes through the math, and the implementations in python.
Related Rants
-
xjose97x19Just saw a variable in C named like this: long time_ago; //in a galaxy far away I laughed no stop.
-
Unskipp24So this happened last night... Gf: my favorite bra is not fitting me anymore Me: get a new one ? Gf: but it ...
-
sam966911Hats off to this lady .... I would have just flipped the machine
Considering using C++ instead of python for data science, it is good idea?
question
datascience
ml
c++