I've recently started using Python (and have also started looking at R).I came across an interesting example (copied below for reference) in R which I wanted to try and see if I could implement in Python (without using rpy or Pandas etc.).

R code-example

```
# Goal:
# A stock is traded on 2 exchanges.
# Price data is missing at random on both exchanges owing to non-trading.
# We want to make a single price time-series utilising information
# from both exchanges. I.e., missing data for exchange 1 will
# be replaced by information for exchange 2 (if observed).
# Let's create some example data for the problem.
e1 <- runif(15) # Prices on exchange 1
e2 <- e1 + 0.05*rnorm(15) # Prices on exchange 2.
cbind(e1, e2)
# Blow away 5 points from each at random.
e1[sample(1:15, 5)] <- NA
e2[sample(1:15, 5)] <- NA
cbind(e1, e2)
# Now how do we reconstruct a time-series that tries to utilise both?
combined <- e1 # Do use the more liquid exchange here.
missing <- is.na(combined)
combined[missing] <- e2[missing] # if it's also missing, I don't care.
cbind(e1, e2, combined)
```

I have tried

```
import numpy as np
e1=np.random.random((15,)).reshape(-1,1)
e2=e1+0.05*np.random.standard_normal(15).reshape(-1,1)
np.concatenate((e1,e2),axis=1) # cbind equivalent on two vectors
```

I have not managed to do the next section i.e.

```
# Blow away 5 points from each at random
```

I did try python's `np.random.random_sample`

command but could not get it to work at all.

I would very much appreciate your assistance please with this and the last section i.e. reconstructing the timeseries that tries to utilise both data arrays as described above.