# vectorization of differentiation in R

I have a table stored in a dataframe in R.

I want to calculate the first derivative along each column. Columns are measured variables, rows are time.

Can I vectorize this function ?

``````df\$C <- df\$A + df\$B
``````

In principle I'd like something like :

``````df\$DiffA <- diff(df\$A)
``````

The problem is, that I don't know how to vectorize functions that need `A(n)` and `A(n+1)`, where n is the row within the dataframe (Pseudocode).

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Please, can you elaborate your pseudo code ? Write your code using for loops if easier, then we will see if it's possible to vectorize it... –  digEmAll Sep 28 '12 at 12:22
well, as rows are time and time-intervals are equally spaced, the interval can be ignored for the purpose of differentiation. Therefore, I´m searching for `diffA(n) = A(n+1) - A(n)`. –  Doc Sep 28 '12 at 12:30
`A[-1]-A[-length(A)]` which is essentially how `diff` works –  James Sep 28 '12 at 12:37
I do not understand, what is actually asked here. It seems like `diff` is the answer. However, if it is not, the question needs to be rephrased. –  Roland Sep 28 '12 at 12:42
What does `df\$C <- df\$A + df\$B` mean? What do you want with it? –  Patrick Li Sep 28 '12 at 12:42

``````df <- data.frame(n=1:100)
df\$sqrt <- sqrt(df\$n)
df\$diff <- c(NA,diff(df\$sqrt,lag=1))
``````

`diff` returns one value less then there are values in the input vector (for obvious reasons). You can fix that by prepending or appending an `NA` value.

Some timings:

``````#create a big data.frame
vec <- 1:1e6
df <- data.frame(a=vec,b=vec,c=vec,d=vec,e=vec,sqroot=sqrt(vec))

#for big datasets data.table is usually more efficient:
library(data.table)
dt <- data.table(df)

#benchmarks
library(microbenchmark)

microbenchmark(df\$diff <- c(NA,diff(df\$sqroot,lag=1)),
dt[,diff:=c(NA,diff(sqroot,lag=1))])
Unit: milliseconds
expr      min        lq    median        uq      max
1     df\$diff <- c(NA, diff(df\$sqroot, lag = 1)) 75.42700 116.62366 140.98300 151.11432 174.5697
2 dt[, `:=`(diff, c(NA, diff(sqroot, lag = 1)))] 37.39592  45.91857  52.21005  62.89996 119.7345
``````

`diff` is fast, but for big datasets using a `data.frame` is not efficient. Use `data.table` instead. The speed gain gets more pronounced, the bigger the dataset is.

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Thanks Roland. That obviously solves the coding problem. Just one minor question: Is this still vectorized? Or is it a function looping through the dataframe? As I wrote earlier, I´m facing a dataframe close to 500MB continues data (some 100 thousand measurements). Will this perform adequately? –  Doc Sep 28 '12 at 15:50
`diff` is pretty fast. If that is not sufficient, you should ask for a more efficient alternative in a new question. Try to make it more clear what you are actually asking next time. If you had provided the example code in your comment from the beginning, this question could have been answer much faster. –  Roland Sep 28 '12 at 18:18
@doc I added some benchmarks to my answer. –  Roland Sep 29 '12 at 8:25
That is really cool code! Thanks! I didn´t know about the data.table option You used. –  Doc Oct 1 '12 at 11:58
You might try the `lag()` or `diff()` functions. They would seem to do what you want.