There is a much simpler solution for acquiring the annual CPI (e.g., CPIAUCSL) that does not require use of the `quantmod`

package, which seems to always have compatibility issues for one reason or another, at least in my experience.

```
require(lubridate) || install.packages("lubridate")
require(dplyr) || install.packages("dplyr")
monthly_cpi <-
read.table("http://research.stlouisfed.org/fred2/data/CPIAUCSL.txt",
skip = 53, header = TRUE)
monthly_cpi$cpi_year <- year(monthly_cpi$DATE)
yearly_cpi <- monthly_cpi %.% group_by(cpi_year) %.% summarize(cpi = mean(VALUE))
```

Then, to create your adjustment factor relative to say, last year's prices:

```
yearly_cpi$adj_factor <- yearly_cpi$cpi/yearly_cpi$cpi[yearly_cpi$cpi_year == 2013]
```

You have to find out how many lines to `skip`

, but then again, that causes you to actually look at the lines that are skipped by viewing the actual data source, which happens to have useful preamble information.

**BUT WAIT! THERE'S MORE!**

Thanks to @GSee (who gave the checked answer) for noting that there is a `.csv`

version for which you need not skip any rows! Using this version, the code is:

```
require(lubridate) || install.packages("lubridate")
require(dplyr) || install.packages("dplyr")
monthly_cpi <-
read.csv("http://research.stlouisfed.org/fred2/data/CPIAUCSL.csv", header = TRUE)
monthly_cpi$cpi_year <- year(monthly_cpi$DATE)
yearly_cpi <- monthly_cpi %.% group_by(cpi_year) %.% summarize(cpi = mean(VALUE))
yearly_cpi$adj_factor <- yearly_cpi$cpi/yearly_cpi$cpi[yearly_cpi$cpi_year == 2013]
```

`getSymbols`

from`quantmod`

to download CPI data from FRED. I'm not sure which you want, but you can look here. e.g.`getSymbols("CPIAUCSL", src='FRED')`

will download theConsumer Price Index for All Urban Consumers: All Items