You can't apply any of the tools you've applied so far to your own work, unless you can get your own data into R. In this chapter, you'll learn how to import:
* Flat files (like csv) with readr.
* Database queries with DBI.
* Data from web APIs with httr.
* Binary file formats (like excel or sas), with haven and readxl.
The common link between all these packages is they all aim to take your data and turn it into a data frame in R, so you can tidy it and then analyse it.
There are many ways to read flat files into R. If you've be using R for a while, you might be familiar with `read.csv()`, `read.fwf()` and friends. We're not going to use these base functions. Instead we're going to use `read_csv()`, `read_fwf()`, and friends from the readr package. Because:
* These functions are typically much faster (~10x) than the base equivalents.
Long run running jobs also have a progress bar, so you can see what's
For the rest of this chapter we'll focus on `read_csv()`. If you understand how to use this function, it will be straightforward to your knowledge to all the other functions in readr.
Readr uses a heuristic to figure out the types of your columns: it reads the first 1000 rows and uses some (moderately conservative) heuristics to figure out the type of each column. This is fast, and fairly robust. If readr detects the wrong type of data, you'll get warning messages. Readr prints out the first five, and you can access them all with `problems()`:
Typically, you'll see a lot of warnings if readr has guessed the column type incorrectly. This most often occurs when the first 1000 rows are different to the rest of the data. Perhaps there are a lot of missing data there, or maybe your data is mostly numeric but a few rows have characters. Fortunately, it's easy to fix these problems using the `col_type` argument.
(Note that if you have a very large file, you might want to set `n_max` to 10,000 or 100,000. That will speed up iterations while you're finding common problems)
You might have noticed that each column parser has a one letter abbreviation, which you can use instead of the full function call (assuming you're happy with the default arguments):
(If you just have a few columns you supply a single string giving the type for each column: `i__dc`. See the documentation for more details. It's not as easy to understand as the `cols()` specification, so I'm not going to describe it further here.)
By default, any column not mentioned in `cols` will be guessed. If you'd rather those columns are simply not read in, use `cols_only()`. In that case, you can use `col_guess()` (?) if you want to guess the type of a column.
Each `col_XYZ()` function also has a corresponding `parse_XYZ()` that you can use on a character vector. This makes it easier to explore what each of the parsers does interactively.
Parsing occurs after leading and trailing whitespace has been removed (if not overridden with `trim_ws = FALSE`) and missing values listed in `na` have been removed:
Readr provides three options depending on where you want a date (the number of days since 1970-01-01), a date time (the number of seconds since midnight 1970-01-01), or a time (i.e. the number of seconds since midnight). The defaults read:
* Date times: an [ISO8601](https://en.wikipedia.org/wiki/ISO_8601) date time.
* Date: a year, optional separator, month, optional separator, day.
The best way to figure out the correct string is to create a few examples in a character vector, and test with one of the parsing functions. For example:
The goal of readr's locales is to encapsulate the common options that vary between languages and different regions of the world. This includes:
* Names of months and days, used when parsing dates.
* The default time zones, used when parsing date times.
* The character encoding, used when reading non-ASCII strings.
* Default date and time formats, used when guessing column types.
* The decimal and grouping marks, used when reading numbers.
Readr is designed to be independent of your current locale settings. This makes a bit more hassle in the short term, but makes it much much easier to share your code with others: if your readr code works locally, it will also work for everyone else in the world. The same is not true for base R code, since it often inherits defaults from your system settings. Just because data ingest code works for you doesn't mean that it will work for someone else in another country.
The settings you are most like to need to change are: