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I have Hour and Minute on my yaxis they are factors. I would like to scale my y-axis so that it is more readable. For example, I only like to show 00:00, 03:00, 09:00, 12:00, etc on my yaxis. Right now, three are too many hours and minutes on y-axis that and it does not look good.

This ended up being a very challenging and I am ready to give up. I took two approach to addres this:

  1. I formatted my Time1 field as.POSIXct and used scale_y_datetime to strip out the Hour and Minute to put it on the y axis. The problem with this one is that I can not reverse order the time. I like to see 00:00 on the top of the y-axis and then 01:00, 02:00 and 03:00 etc. I could not do this. I tried this

    coord_trans(y="reverse")

    It did not work.

  2. Second approach was to convert Time1 field to factor and only show Hour and Minute. I did this

    y$Time1<-format(y$Time, "%H:%M")

then

y$Time1 = factor(y$Time1, levels=sort(unique(y$Time1), decreasing=TRUE))

this kinda worked but since it is factor, all the values for y-axis are showin on the plot. I like to scale this but couldnt find a solution yet. Any help is greatly appreciated as I am out of any ideas.

    dput(head(y,50))
structure(list(DATE = structure(c(15744, 15744, 15744, 15744, 
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 
15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 15744, 
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15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 
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15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 
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15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 
15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 15745, 
15745, 15745, 15745, 15745, 15745, 15745, 15746, 15746, 15746, 
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15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 15746, 
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15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 
15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 
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15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 15747, 
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 
15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748, 15748
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    46.0888888888889, 48.5555555555556, 46.0555555555556, 44.8777777777778, 
    44.5, 46.0666666666667, 45.6777777777778, 43.6, 44.5888888888889, 
    46.0555555555556, 45.4111111111111, 44.7555555555556, 43.3222222222222, 
    43.9888888888889, 43.1666666666667, 42.4777777777778, 41.4, 
    40.7555555555556, 40.2111111111111, 39.7333333333333, 38.9555555555556, 
    38.7111111111111, 38.9444444444444, 37.8222222222222, 37.5444444444444, 
    38.1888888888889, 37.2444444444444, 36.7222222222222, 36.7333333333333, 
    37.2333333333333, 35.3666666666667, 35.0444444444444, 34.7111111111111, 
    33.5666666666667, 32.4111111111111, 30.6222222222222, 29.9444444444444, 
    29.7888888888889, 29.7111111111111, 28.5, 27.6470588235294, 
    25.9, 24.0222222222222, 22.0444444444444, 22.5888888888889, 
    19.9888888888889, 17.3555555555556, 17.7555555555556, 17.6, 
    16.8, 16.2333333333333, 16.1666666666667, 18.5555555555556, 
    19.0444444444444, 17.6111111111111, 18)), .Names = c("DATE", 
"TIME1", "CPU"), row.names = c(NA, 400L), class = "data.frame")

This one returns this error: Error: Discrete value supplied to continuous scale

val<-c(0,0.19,0.29,0.39, 0.49,0.59, 0.69, 0.79, 0.89, 0.90,1)
brk = c(20, 30, 40, 50, 60, 70, 80, 90, 100)
cols<-c("white","#F0FFFF","#BBFFFF","#00FFFF","#42C0FB","#1C86EE", "green","yellow","#C9821E", "#FF0000", "#FF0000")
ggplot(y,aes(DATE, Time1, fill=CPU)) + geom_tile() + theme_bw() +
 scale_fill_gradientn(name="CPU Utilization", colours=cols, values=val, limits=c(0,100), breaks = brk) +
 guides(fill = guide_legend(keywidth = 5, keyheight = 1))+
 scale_x_date(breaks = "1 days", labels=date_format("%a")) +
 scale_y_continuous(breaks=1:4, labels=c("00:00", "03:00", "09:00", "12:00"))

this one, I get no text in my y-axis:

val<-c(0,0.19,0.29,0.39, 0.49,0.59, 0.69, 0.79, 0.89, 0.90,1)
brk = c(20, 30, 40, 50, 60, 70, 80, 90, 100)
cols<-c("white","#F0FFFF","#BBFFFF","#00FFFF","#42C0FB","#1C86EE", "green","yellow","#C9821E", "#FF0000", "#FF0000")
ggplot(y,aes(DATE, Time1, fill=CPU)) + geom_tile() + theme_bw() +
 scale_fill_gradientn(name="CPU Utilization", colours=cols, values=val, limits=c(0,100), breaks = brk)+
  guides(fill = guide_legend(keywidth = 5, keyheight = 1))+
 scale_x_date(breaks = "1 days", labels=date_format("%a")) + scale_y_discrete(breaks=1:4, labels=c("00:00", "03:00", "09:00", "12:00"))
share|improve this question
    
Not a reproducible example... –  JT85 Apr 26 '13 at 15:13
    
@JT85, I've updated the original post. it is now reproduceable –  user1471980 Apr 26 '13 at 15:22
    
I've written a blog post about plotting times with ggplot2: blog.ggplot2.org/post/29433173749/… Hopefully the code and examples there will be helpful. –  Brian Diggs Apr 26 '13 at 19:35
    
@Brian Diggs, I followed you instructions exactly and get 0.00 to 1.0 on y-axis. Any idea, what I might be mising here? –  user1471980 May 1 '13 at 19:53
    
@user1471980 Your question has morphed too much at this point. The original question you asked has been dealt with. Create a new question that contains (a minimalist version of) your new problem. Then roll back your last edit. –  Brian Diggs May 2 '13 at 17:31

1 Answer 1

up vote 1 down vote accepted

The problem you might be seeing with implementing the code from my blog post on the topic may be due to a bug I later found in the implementation when the scale includes midnight.

library("ggplot2")
library("scales")
library("chron")

Using the y you define in the question. Make a pure time column:

y$Time2 <- as.chron(y$Time1, format="%H:%M")
y$Time2 <- y$Time2 - floor(y$Time2)

so now y has the structure

> str(y)
'data.frame':   50 obs. of  5 variables:
 $ DATE : Date, format: "2013-04-14" "2013-04-14" ...
 $ Time : POSIXct, format: "2013-04-26 17:14:00" "2013-04-26 17:29:00" ...
 $ CPU  : num  30.4 30.1 30 31 30 ...
 $ Time1: chr  "20:14" "20:29" "20:44" "20:59" ...
 $ Time2:Class 'times'  atomic [1:50] 0.843 0.853 0.864 0.874 0.885 ...
  .. ..- attr(*, "format")= chr "h:m:s"

The updated code for the transformation is

timesreverse_trans <- function() {
    trans <- function(x) {-as.numeric(x)}
    inv <- function(x) {times(-x)}
    fmt <- function(x) {
        notone <- x != 1
        simplify <- !any(diff(x) < 1/(24*60))
        ifelse(notone,
               format(x-floor(x), simplify=simplify),
               ifelse(simplify, "24:00", "24:00:00"))
    }
    trans_new("chrontimes-reverse",
              transform = trans,
              inverse = inv,
              breaks = pretty_breaks(),
              format = fmt,
              domain=c(0,1))
}
scale_y_times <- function(..., trans=NULL) {
    scale_y_continuous(trans=timesreverse_trans(), ...)
}

Using this:

ggplot(y,aes(DATE, Time2, fill=CPU)) + 
  geom_tile() + 
  scale_fill_gradientn(name="CPU Utilization", colours=cols, 
                       values=val, limits=c(0,100), breaks = brk) + 
  scale_x_date(breaks = "1 days", labels=date_format("%a")) + 
  scale_y_times() +
  guides(fill = guide_legend(keywidth = 5, keyheight = 1)) +
  theme_bw()

gives

enter image description here

If this doesn't work for you, give a dataset that fails in the way you see.

share|improve this answer
    
@Brain Diggs, do you have to do this line - y$Time2 <- as.chron(y$Time)- floor(as.chron(y$Time)). when you do this y$Time2 becomes 4 hours aheas. For example in this case y$Time is 2013-04-26 20:14:00 and y$Time2 becomes 00:14:00. Is this accurate, do we need this line (y$Time2 <- as.chron(y$Time)- floor(as.chron(y$Time))? –  user1471980 May 2 '13 at 15:59
    
Looking back at the data, DATE, Time and Time1 are not consistent with each other. DATE doesn't agree with the date part of Time, and Time1 doesn't agree with the time part of Time (3 hours difference). The Time2 I created doesn't agree with any of those (7 hours different from Time for me). I'll update the code to give a Time2 that is at least consistent with Time1 –  Brian Diggs May 2 '13 at 16:11
    
ok I got the time part working but I intoroduced another huge problem. If the Date range is let's say one day, geom_tile() show the colors nice. But my data frame is huge and when I try to create a geom_tile(), I see little spots of color. What do you think that is happening. My x-axis is the DATE. –  user1471980 May 2 '13 at 16:30
    
I have update the orinial y data frame, it is first 400 rows. –  user1471980 May 2 '13 at 16:43
    
Likely that geom_tile is fitting the largest tiles that it can between unique values of your times, which is 1 second resolution. I doubt that is what you really want, but I don't know what it is that you do want. –  Brian Diggs May 2 '13 at 17:37

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