To compile this package a fully C++11 compliant compiler is required.
This is implicit
for CRAN packages since R=3.6.2
and is hence not listed
in SystemRequirements.
If you encounter an error saying that that no matching function call
to zmq::message_t::message_t(std::string&)
exists, your
compiler does not (fully) support this and the automated check failed
for some reason.
In file included from CMQMaster.cpp:2:0:
CMQMaster.h: In member function ‘void CMQMaster::proxy_submit_cmd(SEXP, int)’:
CMQMaster.h:146:40: error: no matching function for call to ‘zmq::message_t::message_t(std::string&)’
mp.push_back(zmq::message_t(cur));
This happens for instance for old versions of the gcc
compiler (default on most Linux distributions). You can check your
version in the terminal using:
In this case, it is very likely that your HPC system already
has a newer compiler installed that you need to add to your
$PATH
or load as a module. Once this is set, you can
install the package from R that was started in a terminal that has
this module/path active.
Your R session may be stuck at something like the following:
> clustermq::Q(identity, x=42, n_jobs=1)
Submitting 1 worker jobs (ID: cmq8480) ...
Running 1 calculations (5 objs/19.4 Kb common; 1 calls/chunk) ...
You will see this every time your jobs are queued but not yet
started. Depending on how busy your HPC is, this may take a long time.
You can check the queueing status of your jobs in the terminal with
e.g. qstat
(SGE), bjobs
(LSF), or
sinfo
(SLURM).
If your jobs are already finished, this likely means that the
clustermq
workers can not connect to the main session. You
can confirm this by passing log_worker=TRUE
to Q
and inspect the logs created in your current working
directory. If they state something like:
> clustermq:::worker("tcp://my.headnode:9091")
2023-12-11 10:22:58.485529 | Master: tcp://my.headnode:9091
2023-12-11 10:22:58.488892 | connecting to: tcp://my.headnode:9091:
Error: Connection failed after 10016 ms
Execution halted
the submitted job is indeed unable to establish a network connection with the head node. This can happen if your HPC does not allow incoming connections at all, but more likely happens because (1) only certain ports are allowed, or (2) there are multiple network interfaces, only some of which have access to the head node.
clustermq.ports=<port range>
.ifconfig
command in the terminal. Find the interface that
shares a subnetwork with the head node and add the R
option clustermq.host=<interface>
. If this is
unclear, contact your system administrators to see which interface to
use.Before trying remote schedulers via SSH, make sure that the scheduler works when you first connect to the cluster and run a job from there.
If the terminal is stuck at
Connecting <user@host> via SSH ...
make sure that each step of your SSH connection works by typing the following commands in your local terminal and make sure that you don’t get errors or warnings in each step:
# test your ssh login that you set up in ~/.ssh/config
# if this fails you have not set up SSH correctly
ssh <user@host>
# test port forwarding from 54709 remote to 6687 local (ports are random)
# if the fails you will not be able to use clustermq via SSH
ssh -R 54709:localhost:6687 <user@host> R --vanilla
If you get an Command not found: R
error, make sure your
$PATH
is set up correctly in your
~/.bash_profile
and/or your ~/.bashrc
(depending on your cluster config you might need either). You may also
need to modify your SSH
template to load R as a module or conda environment.
If you get a SSH warning or error try again with ssh -v
to enable verbose output. If the forward itself works, run the following
in your local R session (ideally also in command-line R, not only in
RStudio):
options(clustermq.scheduler = "ssh",
clustermq.ssh.log = "~/ssh_proxy.log")
Q(identity, x=1, n_jobs=1)
This will create a log file on the remote server that will
contain any errors that might have occurred during
ssh_proxy
startup.
If the ssh_proxy
startup fails on your local machine
with the error
Remote R process did not respond after 5 seconds. Check your SSH server log.
but the server log does not show any errors, then you can try increasing the timeout:
This can happen when your SSH startup template includes additional steps before starting R, such as activating a module or conda environment, or having to confirm the connection via two-factor authentication.
If your master process is inside a container, accessing the HPC scheduler is more difficult. Containers, including singularity and docker, isolate the processes inside the container from the host. The R process will not be able to submit a job because the scheduler cannot be found.
Note that the HPC node running the master process must be allowed to submit jobs. Not all HPC systems allow compute nodes to submit jobs. If that is the case, you may need to run the master process on the login node, and discuss the issue with your system administrator.
If your container is binary compatible with the host, you may be able to bind in the scheduler executable to the container.
For example, PBS might look something like:
#PBS directives ...
module load singularity
SINGULARITYENV_APPEND_PATH=/opt/pbs/bin
singularity exec --bind /opt/pbs/bin r_image.sif Rscript master_script.R
A working example of binding SLURM into a CentOS 7 container image from a CentOS 7 host is available at https://groups.google.com/a/lbl.gov/d/msg/singularity/syLcsIWWzdo/NZvF2Ud2AAAJ
Alternatively, you can create a script that uses SSH to execute the
scheduler on the login node. For this, you will need an SSH client in
the container, keys
set up for password-less login, and create a script to call the
scheduler on the login node via ssh (e.g. ~/bin/qsub
for
SGE/PBS/Torque, bsub
for LSF and sbatch
for
Slurm):
Make sure the script is executable, and bind/copy it into the
container somewhere on $PATH
. Home directories are bound in
by default in singularity.