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DF ASCENSORI di FIORE D. & C. sas

72017 Ostuni (BR) - Italia-Italy

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DF ASCENSORI di FIORE D. & C. sas
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Company Address: 22/28, v. Suor Maria Raimondi Fuentes,72017 Ostuni (BR) - Italia,,Italy 
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Company News:
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  • disk usage - Differences between df, df -h, and df -l - Ask Ubuntu
    df -h tells df to display sizes in Gigabyte, Megabyte, or Kilobyte as appropriate, akin to the way a human would describe sizes Actually, the h stands for "human-readable" df -l tells df to display only local filesystems, but no remote ones
  • In R, What is the difference between df [x] and df$x
    I usually see that [[ is used for lists, [ for arrays and $ for getting a single column or element If you need an expression (for example df[[name]] or df[,name]), then use the [ or [[ notation also The [ notation is also used if multiple columns are selected For example df[,c('name1', 'name2')] I don't think there is a best-practices for this
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    So we use df[df['col a']== x] instead of just df['col a'] == x because to optimize the dataframe itself you are escencially telling the data frame with df['col a'] == x that you want a bool of true false if the condition is met (you can try this on your df and will see that when you do not put it in the df[] that it only will list df['col a'] == x as a list of true and false) so it pandas
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    As per the documentation of where: Return an object of same shape as self and whose corresponding entries are from self where cond is True and otherwise are from other
  • Difference between df[x], df[[x]], df[x] , df[[x]] and df. x
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