Unless your heart is set on using R there is no need for external libraries. Python's builtin random module is well suited for general purpose use. It can generate random numbers from a variety of common distributions.

```
import math
import random
#generate 10k lognormal samples with mean=0 and stddev=1
samples = [random.lognormvariate(0,1) for r in xrange(10000)]
#demonstrate the mean and stddev are close to the target
#compute the mean of the samples
log_samples = [math.log(sample) for sample in samples]
mu = sum(log_samples)/len(samples)
#compute the variance and standard deviation
variance = sum([(val-mu)**2 for val in log_samples])/(len(log_samples)-1)
stddev = var**0.5
print('Mean: %.4f' % mu)
print('StdDev: %.4f' % stddev)
#Plot a histogram if matplotlib is installed
try:
import pylab
hist = pylab.hist(samples,bins=100)
pylab.show()
except:
print('pylab is not available')
```

If you are using Rpy2 this should get you started:

```
import rpy2.robjects as robjects
#reference the rlnorm R function
rlnorm = robjects.r.rlnorm
#generate the samples in R
samples = rlnorm(n=10000, meanlog=1, sdlog=1)
```