still a newbie, but learning R fast. I wanted to see if anyone could offer some ideas on how to make the below possible. To make this commercially relevant for you, I'm trying to summarize at a certain geography-product level the prices that cover a certain percentage of the competitive market volume. Envision it this way: if you see a 100 different price points in the marketplace for a particular product, order those price points in descending order, from highest to lowest. Then assign cumulative percentages to each price point, based on the percent of the Product's volume they have. If I state that price point 123 "covers or beats" 70% of the market volume for the product, it simply means that the price points that are HIGHER that price 123 represent a cumulative 70% of the volume for the particular product. Therefore, any price that is LOWER than price 123 (inclusive) represents ~ 30% of the product volume.

I have a very simple data frame with some geographic factors (State, Market, etc.), product factor (Item Name, Item Number) and corresponding values for Price and $ Volume. Please see below. In case the image does not come through, think of the data frame with only 3 factors (State ,Market and Product) and 2 values (Price and dollar Volume).

The end result would be a data frame output with the same headings, but with an indicator for the following: from the available Price points, what is the price of "Product ABC" that beats 50% of ABC Market dollar Volume? What is the price of "Product ABC" that beats 60% of ABC Market Volume? What is it that covers 70%, 80% and 90%?

To accomplish this, I would need to do the following: 1) Sum the dollar Volume at its lowest common denominator: At the State-Market-Product-Price level. This would tell me how much $$ is sold of a particular product in a particular market at a given price point.

2) Order the lowest common denominator level in descending Price order. Thus, order the State, Market and Product in ascending order, with Price in descending order.

3) This is where I get stuck: assign a new column to the data frame that measures the cumulative % of volume for the particular State-Market-Product combination for a given price. As an example, if Product ABC in a given Market sells 400 dollars worth at a price of 10, 2000 dollars worth at a price of 8 and 1000 dollars worth at a price of 6, then 25pct of the dollar volume is sold at 10 (25pct cumulative), 50pct sold at price of 8 dollars (75pct cumulative) and 25pct sold at a price point of 6 dollars (100pct cumulative). Since I summed and ordered the data in steps 1 and 2, I have the underlying data, I just can't figure out the creation of this new appended column.

4) Finally, I need to create a new data frame that leverages the existing geographic and product factors, thus State, Market and Product, but also adds 5 additional columns to measure the Price that beats/covers X% of the market volume (let's call them Price at 50%, Price at 60pct....Price at 90pct). Thus, from step 3, the logic would be: for Product ABC, the 8 dollar price point would appear in the columns for "Price at 50pct"...60pct and 70pct; however, the 6 price point would appear in the columns for "Price at 80pct" and "Price at 90pct". The reason is that the cumulative pct for the 8 price point is 75pct, thus does not make it into the 80pct column; however, the 6 price point covers 100pct of the market volume, thus is indicated as the price that covers both 80pct and 90pct of the market.

Below are the codes that got me started and get me through steps 1 and 2. If you have any suggestions on how to finish steps 3 and 4, I would highly appreciate it. I actually learn a great deal from the responses from other boards.

```
data <-read.csv("Sample Price Data.csv")
head(data)
orderBy(~State+Market+Product-Price, data=data)
datasum <- summaryBy(Vol..~State+Market+Product+Price, data=data, FUN=c(sum))
ordereddatasum <- orderBy(~State+Market+Product-Price, data=datasum)
ordereddatasum
```