You can always apply hclust to transposed matrix:
# If you have observations matrix
m <- matrix(1:100, nrow=20)
hc <- hclust(dist(t(m)))
Besides, does dist work the same or does dist work with columns?
General convention is variables in columns, observations in rows and that's how dist works:
dist package:stats R Documentation
Distance Matrix Computation
This function computes and returns the distance matrix computed by
using the specified distance measure to compute the distances
between the rows of a data matrix.
hclust works by using each row of a given matrix as a vector.
Actually internal implementation of hclust shouldn't matter. You pass as an argument dissimilarity structure produced by dist, and I am almost sure, that all metrics implemented in dist produce proper symmetrical distance matrix.