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2

You just need to reorder the factor levels x3 = factor(x3, levels = c("yes","no")) glm uses this ordering.


2

Rather than just extracting a few fields from a single line, this will parse the entire block of output into a useful data structure. Each of the labels becomes a hash key, and for the special case of the first two lines, the sub-labels get appended to the main labels to form unique keys. use strict; use warnings; use Data::Dump; my %stats; while ...


2

You would benefit from studying regular expressions more, and how to use capturing groups, but for this specific case, you'd probably want something like this. if ($line =~ /^Number of files:\s+(\d+)\s+\(reg:\s+(\d+),\s+dir:\s+(\d+)\)/) { $numfiles = $1; $regfiles = $2; $dirfiles = $3; }


2

By default multivariate_normal checks whether any of the eigenvalues of the covariance matrix are less than some tolerance chosen based on its dtype and the magnitude of its largest eigenvalue (take a look at the source code for scipy.stats._multivariate._PSD and scipy.stats._multivariate._eigvalsh_to_eps for the full details). As @kazemakase mentioned ...


1

I am having trouble reading your question based on the lack of formatting, but I think this is what you want. df$match=ifelse(df$A == df$B, TRUE, FALSE)


1

We can use == to get the logical index df1$match <- df1[,1]==df1[,2] df1 # col1 col2 match #1 F M FALSE #2 F M FALSE #3 F M FALSE #4 F M FALSE #5 M M TRUE #6 M F FALSE #7 F F TRUE #8 F F TRUE #9 F M FALSE #10 F M FALSE #11 F F TRUE #12 M F FALSE #13 M M TRUE #14 ...


1

Just import your data as a DataFrame and apply required aggregations: import org.apache.spark.sql.DataFrame; import static org.apache.spark.sql.functions.*; DataFrame df = sqlContext.read() .format("org.apache.spark.sql.cassandra") .option("table", someTable) .option("keyspace", someKeyspace) .load(); ...


1

In general, compile scala file: $ scalac Main.scala create your java source file from Main.class file: $ javap Main More info is available at following url: http://alvinalexander.com/scala/scala-class-to-decompiled-java-source-code-classes


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I suggest checking out https://github.com/datastax/spark-cassandra-connector/tree/master/spark-cassandra-connector-demos Which contains demos in both Scala and the equivalent Java. You can also check out: http://spark.apache.org/documentation.html Which has tons of examples that you can flip between Scala, Java, and Python versions. I'm almost 100% ...


1

Cast it. (double) Variable_here will be the variable's value, but as a double.


1

You usually cannot convert these metrics. They measure subtly different things. But linear error is not the same as squared error. Winning in one metric does not mean winning on a different metric. Assume we want to summarize univariate data into a single number. The mean minimizes squared error, the median linear error - so they have different optimal ...


1

This is O(n/2) Item PickItem(float cost, float size, float weight, float temperature) { var bestDiff = float.MaxValue; Item bestItem = null; foreach(var item in items) { var diff = CaluclateDifference(item, cost, size, weight, temperature); if(diff < bestDiff) { bestDiff = diff; bestItem = ...



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