I am stuck at performing t.tests for multiple categories in Rstudio. I want to have the results of the t.test of each product type, comparing the online and offline prices. I have over 800 product types so that's why don't want to do it manually for each product group.

I have a dataframe (more than 2 million rows) named data that looks like:

```
> Product_type Price_Online Price_Offline
1 A 48 37
2 B 29 22
3 B 32 40
4 A 38 36
5 C 32 27
6 C 31 35
7 C 28 24
8 A 47 42
9 C 40 36
```

Ideally I want R to write the result of the t.test to another data frame called product_types:

```
> Product_type
1 A
2 B
3 C
4 D
5 E
6 F
7 G
8 H
9 I
800 ...
```

becomes:

```
> Product_type t df p-value interval mean of difference
1 A
2 B
3 C
4 D
5 E
6 F
7 G
8 H
9 I
800 ...
```

This is the formula if I had all product types in different dataframes:

```
t.test(Product_A$Price_Online, Product_A$Price_Offline, mu=0, alt="two.sided", paired = TRUE, conf.level = 0.99)
```

There must be an easier way to do this. Otherwise I need to make 800+ data frames and then perform the t test 800 times.

I tried things with lists & lapply but so far it doesn't work. I also tried t-Test on multiple columns: https://sebastiansauer.github.io/multiple-t-tests-with-dplyr/

However, at the end he is still manually inserting male & female (for me over 800 categories).