• @tequinhu
    link
    English
    101 month ago

    It really depends on the machine that is running the code. Pandas will always have the entire thing loaded in memory, and while 600Mb is not a concern for our modern laptops running a single analysis at a time, it can get really messy if the person is not thinking about hardware limitations

    • @[email protected]
      link
      fedilink
      English
      81 month ago

      Pandas supports lazy loading and can read files in chunks. Hell, even regular ole Python doesn’t need to read the whole file at once with csv

      • @tequinhu
        link
        English
        3
        edit-2
        1 month ago

        I didn’t know about lazy loading, that’s cool!

        Then I guess that the meme doesn’t apply anymore. Though I will state that (from my anedoctal experience) people that can use Panda’s most advanced features* are also comfortable with other data processing frameworks (usually more suitable to large datasets**)

        *Anything beyond the standard groupby - apply can be considered advanced, from the placrs I’ve been

        **I feel the urge to note that 60Mb isn’ lt a large dataset by any means, but I believe that’s beyond the point