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I would like to be able to download a .csv file from my Amazon S3 bucket using R.

I have started using the API that is documented here http://docs.amazonwebservices.com/AmazonS3/latest/API/RESTObjectGET.html

I am using the package httr to create the GET request, I just need to work out what the correct parameters are to be able to download the relevant file.

I have set the response-content-type to text/csv as I know its a .csv file I hope to download...but the response I get is as follows:

Response [https://s3-zone.amazonaws.com/bucket.name/file.name.csv?response-content-type=text%2Fcsv]
  Status: 200
  Content-type: text/csv
Date and Time,Open,High,Low,Close,Volume
2007/01/01 22:51:00,5683.00,5683.00,5673.00,5673.00,64
2007/01/01 22:52:00,5675.00,5676.00,5674.00,5674.00,17
2007/01/01 22:53:00,5674.00,5674.00,5673.00,5674.00,42
2007/01/01 22:54:00,5675.00,5676.00,5674.00,5676.00,36
2007/01/01 22:55:00,5675.00,5676.00,5675.00,5676.00,18
2007/01/01 22:56:00,5676.00,5677.00,5674.00,5677.00,64
2007/01/01 22:57:00,5678.00,5678.00,5677.00,5677.00,45
2007/01/01 22:58:00,5679.00,5680.00,5678.00,5680.00,30
 .../01/01 22:59:00,5679.00,5679.00,5677.00,5678.00,19

And no file is downloaded and the data seems to be in the response...I can extract the string of characters that is created in the response, which represents the data, and I guess with some effort it can be converted into a data.frame as originally desired, but is there a better way of downloading the data...straight from the GET command, and then using read.csv to read the data? I think that it is a parameter issues...just not sure what parameters need to be set for the file to be downloaded.

If people suggest the conversion of the string...This is the structure of the string I have...what commands would I need to do to convert it into a data.frame?

chr "Date and Time,Open,High,Low,Close,Volume\r\n2007/01/01 22:51:00,5683.00,5683.00,5673.00,5673.00,64\r\n2007/01/01 22:52:00,5675."| __truncated__



share|improve this question
Do you have code and a publicly accessible URL that could be used for testing? –  BondedDust Nov 30 '12 at 18:01
I found one of similar construction. See if the combination of reading directly from the GET value and using colClasses= improves performance. –  BondedDust Nov 30 '12 at 20:32

2 Answers 2

Here's one way:

library(taRifx) # for stack.list
test <- "Date and Time,Open,High,Low,Close,Volume\r\n2007/01/01 22:51:00,5683.00,5683.00,5673.00,5673.00,64\r\n2007/01/01 22:51:00,5683.00,5683.00,5673.00,5673.00,64\r\n"
stack( sapply( strsplit( test, "\\n" )[[1]], strsplit, split="," ) )

    [,1]                  [,2]      [,3]      [,4]      [,5]      [,6]      
ret "Date and Time"       "Open"    "High"    "Low"     "Close"   "Volume\r"
new "2007/01/01 22:51:00" "5683.00" "5683.00" "5673.00" "5673.00" "64\r"    
new "2007/01/01 22:51:00" "5683.00" "5683.00" "5673.00" "5673.00" "64\r"    

Now convert to a data.frame:

testdat <- stack( sapply( strsplit( test, "\\n" )[[1]], strsplit, split="," ) )
rownames(testdat) <- seq(nrow(testdat)) # Because duplicate rownames aren't allowed in data.frames
colnames(testdat) <- testdat[1,]
testdat <- testdat[-1,]
        Date and Time    Open    High     Low   Close Volume\r
2 2007/01/01 22:51:00 5683.00 5683.00 5673.00 5673.00     64\r
3 2007/01/01 22:51:00 5683.00 5683.00 5673.00 5673.00     64\r
share|improve this answer
You can split on "\\r\\n" instead if it's going to return the Windows line endings as in the example. –  Ari B. Friedman Nov 30 '12 at 2:01
Hmm, thanks for that, is there a way to quickly remove \r bit too?...but eitherway the file is quite large >75MB and so data transforms from character to data.frame like that seem to take a long time....so its not the ideal solution at the moment, given that the s3 data has already been uploaded as a csv file...am still hoping for the parameter values to adjust the API request to just download the data. –  h.l.m Nov 30 '12 at 2:07
Replace strsplit( test, "\\n" ) with strsplit( test, "\\r\\n" ), or just `gsub( "\\r", "", test) before you run any of the other code. I'm not sure what you mean by "just download the data," as it seems to me that what it gave you is the data, in comma-separated form. –  Ari B. Friedman Nov 30 '12 at 2:09
perhaps I should have said "just download the file" rather than getting the data in comma separated form...from the get request... –  h.l.m Nov 30 '12 at 2:14

The answer to your second question:

> chr <- "Date and Time,Open,High,Low,Close,Volume\r\n2007/01/01 22:51:00,5683.00,5683.00,5673.00,5673.00,64\r\n"
> read.csv(text=chr)
        Date.and.Time Open High  Low Close Volume
1 2007/01/01 22:51:00 5683 5683 5673  5673     64

If you want extra speed for the read.csv, try this:

chr <- "Date and Time,Open,High,Low,Close,Volume\r\n2007/01/01 22:51:00,5683.00,5683.00,5673.00,5673.00,64\r\n"
 read.csv(text=chr, colClasses=c("POSIXct", rep("numeric", 5) ) )

Assuming the URL is set up properly (and we have nothing to test this on yet) I'm wondering if you may want to look at the value for GET( ...)$content


infile <- read.csv(text=GET(...)$content, colClasses=c("POSIXct", rep("numeric", 5) ) )


That was not correct because the data comes across as "raw" format. One needs to convert from raw before it will become encoded as text. I did a quick search of Nabble (it must be good for something after all) to find a csv file that was residing on the Web. This is what finally worked:

                   )[["content"]] ) )
  Symbol Series        Date Prev.Close Open.Price High.Price Low.Price Last.Price Close.Price
1    ACC     EQ 16-Nov-2012     1404.4    1410.95    1410.95   1369.45    1374.95      1378.1
  Average.Price Total.Traded.Quantity Turnover.in.Lacs Deliverable.Qty X..Dly.Qt.to.Traded.Qty
1       1393.62                132921          1852.41           56899                   42.81
share|improve this answer
So much better than my attempts to reinvent the wheel. Likely faster too. –  Ari B. Friedman Nov 30 '12 at 2:18
that simple solution works out quite well actually...but now the biggest holdup appears to be at the conversion of the response to the character string...using content...the code I am currently using is x <- GET(end.point, add_headers(Date=time.string,Authorization=authorization.string), query=params) y <- read.csv(text=content(x)) any ideas on how to speed that up? –  h.l.m Nov 30 '12 at 2:26
My guess is that the server response is quite a bit slower than the read.csv step. Have you profiled it with system.time? (Also: Using colClasses is known to speed up all read.* functions.) –  BondedDust Nov 30 '12 at 2:32

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