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I have a variable in R that I would like to pass to a database. I could use paste like many suggest when reading Google results, but that is unsafe because of SQL injection vulnerabilities. I'd rather prefer something like this:

x <- 42
sqlQuery(db, 'SELECT Id, Name FROM People WHERE Age > ?;', bind=c(x))

Is it possible to use parameterized queries with RODBC? If not, is there an alternative library that supports them?

I'm using SQL Server, RODBC 1.3-6 and R 3.0.0.

  • Not that I'm aware of. sprintf is the only other option to paste that I know of, but that doesn't do any sanitization either. – joran Apr 23 '13 at 20:44
  • It seems to be mentioned here as "placeholders" but I still couldn't find how to use them. – user142019 Apr 23 '13 at 20:46
  • 1
    would cleaning the string before pasting it not accomplish the same thing? – Ricardo Saporta Apr 23 '13 at 20:48
  • They could have meant for one to use gsub or sub, but then you probably have to be clever about naming the place holders. The typical use of sprintf would use place holders of %s or %d etc. – joran Apr 23 '13 at 20:49
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    Take a look at the RODBCext package – Juancentro Mar 6 '15 at 5:29
9

Mateusz Zoltak wrote RODBCext package in 2014 (based on work by Brian Ripley and Michael Lapsley):

conn = odbcConnect('MyDataSource')

sqlPrepare(conn, "SELECT * FROM myTable WHERE column = ?")
sqlExecute(conn, 'myValue')
sqlFetchMore(conn)

Source: http://cran.r-project.org/web/packages/RODBCext/vignettes/Parameterized_SQL_queries.html

  • 1
    Yes - this is a better solution. Proper parameterization reduces security issues (SQL Injection) and can improve performance due to cached query plans (only important if the query is executed a lot). As a better software Craftsman pattern - I recommend this kind of solution. – ripvlan Jul 27 '15 at 18:13
5

These are the options that I know of using RODBC. I know that RSQLite supports parameter binding natively, but that is usually not an option for most people.

# Note that sprintf doesn't quote character values. The quotes need
# to be already in the sql, or you have to add them yourself to the
# parameter using paste().
q <- "select * from table where val1 = '%s' and val2 < %d and val3 >= %f"
sprintf(q,"Hey!",10,3.141)

# The gsub route means you can't easily use a single placeholder
# value.
q <- "select * from table where val1 = '?' and val2 < ? and val3 >= ?"
gsub("?","Value!",q,fixed = TRUE)

I deal with lots of canned queries for my work that require various parameters. Since in my case I only have SELECT privileges, and I'm the only person running my code, I dont really need to worry about validation.

So I have basically gone the gsub route, in order to be able to store all my queries in separate .sql files. This is because the queries are often long enough that keeping them in my .R files just gets unwieldy. Keeping them separate makes it easier for me to edit and maintain them with formatting and highlighting that is more SQL appropriate.

So I have written some small functions that read a query from a .sql file and bind any parameters. I write the query with parameters denoted with colons, i.e. :param1:, :param2:.

Then I use this function to read the .sql file:

function (path, args = NULL) 
{
    stopifnot(file.exists(path))
    if (length(args) > 0) {
        stopifnot(all(names(args) != ""))
        sql <- readChar(path, nchar = file.info(path)$size)
        p <- paste0(":", names(args), ":")
        sql <- gsub_all(pattern = p, replacement = args, x = sql)
        return(sql)
    } else {
        sql <- readChar(path, nchar = file.info(path)$size)
        return(sql)
    }
}

where gsub_all is basically just a wrapper for a for loop over the parameters and args is a named list of parameter values.

That's the range of options that I'm aware of.

  • 1
    Passing parameters to a query is the exact opposite of constructing the string with string manipulation. It's dangerous (allows SQL injection attacks), fragile (breaks due to localization issues when formatting values to string) and slow – Panagiotis Kanavos Aug 4 '16 at 15:11
  • @PanagiotisKanavos The single most common usage of RODBC from R is for data analysts to retrieve data themselves from a db. This is changing somewhat with the advent of things like Shiny, but the majority of users are only ever submitting queries they wrote, in small numbers. So none of those issues are likely to be a concern for many RODBC users. – joran Aug 4 '16 at 15:19
  • On the contrary, they do affect people that try to pass eg a date parameter, or forget to use the proper syntax to pass Unicode vs ANSI strings, or encounter collation conflicts. Data analysts are far more likely to make such mistakes. In any case, the OP asked how to use parameterized queries, not how to construct a SQL string – Panagiotis Kanavos Aug 4 '16 at 15:30
  • @PanagiotisKanavos Of your three objections, I should have said that localization is the only one that seemed sort of reasonable (again, unless you're building a web app with Shiny, as I said). However, I'm a data analyst, I've been using simple methods like these for a decade and I've never had date/unicode issues. Not once. – joran Aug 4 '16 at 15:34
  • Non-US data analysts on the other hand, run into such problems all the time. Even UK analysts have to explicitly define their date string formats. I found this question searching for existing answers to this question about a failed date conversion that was asked today. In any case, this problem is already fixed with RODBCext. – Panagiotis Kanavos Aug 4 '16 at 15:37

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