My series has 3 different columns, first ID tag identifying the first outlet, then time tag, and finally the measurement.
I need to create forecasts for 100 different series (outlets). First I need to subset ID for the first outlet, then predict arima functions and finally collect 7 days ahead forecasts for every outlet. Moreover, I also need hourly, weekly, daily dummies in my model. So I need to xregs to the auto.arima procedure.
However, I am incapable create the code bellow with a loop that would run for all 100 different IDs.
df11 <-subset(df10,ID==288)%>%select(Tag,Measure)
sales.xts <- xts(df11[ ,c(-1)],order.by = df11$Tag)
sales.xts_m<-sales.xts["2020-07-22/2020-10-04"]
dummies<- xts(Seasonaldummies_all[,-1],order.by = Seasonaldummies_all$Tag)
dummies_hd_m<-dummies_hd["2020-07-22/2020-10-04"]
model<-auto.arima(sales.xts_m,xreg=dummies_hd_m, biasadj = TRUE,max.p=7,max.q=7,seasonal=FALSE,test=c("kpss"),lambda = "auto",num.cores=15,stationary = TRUE)
Can you show me a quick way to do that job by apply or loop functions?

You if you want to use
forecastpackage need to convert your data into ats(mts) object. To do that fist transform your data from long format to wide format (from the image you post above I assume your data is in a long format). Then by usingts()function to create ats()object, see the example below.Let's generate some example ts data
Example xreg
if you need to keep the models --------------------
models will be in mylist and point forecast in fc for each ts
if you do not need to keep models --------------------
If you want to use ML models for your projects
example: Support Vector Machines with Linear Kernel. You need to change only caret_method argument to use another model, for example caret_method = "ridge" or caret_method = "rf" etc. Ref: https://github.com/Akai01/caretForecast