(no title)
eddythompson80 | 17 days ago
For example, python got a similar boost in popularity in the late 2000s and early 2010s when almost every startup was either ruby on rails or django. Then again in the mid 2010s when "data science" got popular with pandas. Then again in the end of 2010s with ML. Then again in the 2020s with LLMs. Every time people eventually drop it for something else. It's arguably in a much better place with types, asyncio, and much better ecosystem in general these days than it was back then. As someone who worked on developer tools and devops for most of the time, I always dread dealing with python developers though tbh.
CatMustard|17 days ago
Out of curiosity, why is that?
eddythompson80|17 days ago
Containers have certainly helped a lot with python deployments these days, even if the Python community was late to adopt it for some reason. throughout the 2010s where containers would have provided a much better story especially for python where most libraries are just C wrappers and you must pip install on the same target environments, python developers I dealt with were all very dismissive of it and just wanted to upload a zip or tarball because “python is cross platform. It shouldn’t matter” then we had to invent all sorts of workarounds to make sure we have hundreds of random system libs installed because who knows what they are using and what pip will need to build their things. prebuilt wheels were a lot less common back then too causing pip installs to be very resource intensive, slow and flaky because som system lib is missing or was updated. Still python application docker images always range in the 10s of GBs