tag:blogger.com,1999:blog-4612512260238025662024-03-08T06:11:25.288-08:00ScalaPython Peerhttp://www.blogger.com/profile/08157796896116185350noreply@blogger.comBlogger2125tag:blogger.com,1999:blog-461251226023802566.post-23375972317577686522016-03-11T01:55:00.002-08:002016-03-15T02:34:20.587-07:00reading file in Scala<div dir="ltr" style="text-align: left;" trbidi="on">
Files can be read in Scala using the below code.<br />
<br />
<img alt="" src="data:image/png;base64,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" /><br />
<br />
Here as I have defined a dedicated packages for all the
examples presented here i.e example which is defined in first line. We
need to import scala.io.Source package for the io operation. We defined a
class/object Main in which we defined a main method. We have defined a
variable filename in which we have decalred our file name with the path
and read its content using the for loop over the file lines.</div>
Python Peerhttp://www.blogger.com/profile/08157796896116185350noreply@blogger.com0tag:blogger.com,1999:blog-461251226023802566.post-34747993194631450602016-03-09T23:46:00.001-08:002016-03-15T02:33:50.073-07:00Hello World Program in Scala<div dir="ltr" style="text-align: left;" trbidi="on">
Below is the hello world program in Scala<br />
<br />
As Scala is very similar to java. Hence people with programming experience can relate the below code to java. Object keyword will create a class HelloWorld and instantiate one object with same name. Main function serves the same purpose as that in java and acts as the starting point for code execution. And println function prints the output.<br />
<br />
<br />
<br />
<img alt="" src="data:image/png;base64,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" /> </div>
Python Peerhttp://www.blogger.com/profile/08157796896116185350noreply@blogger.com0