Our review
Manages experiment execution on the TACC Vista HPC cluster, including syncing code, submitting SLURM jobs, and retrieving results.
Strengths
- Seamless integration with TACC Vista via SSH and rsync for code synchronization.
- Dedicated command wrapper (cmd) that sets up the environment on compute nodes.
- Full job lifecycle management (submit, monitor, cancel, download results).
Limitations
- Works only with the specific TACC Vista cluster; not portable to other HPC systems without adaptation.
- Requires initial SSH and environment setup (installing the cmd wrapper).
- Relies on the user's .bashrc to set up the Python environment.
Use when you need to run GPU-intensive experiments on TACC Vista, submit SLURM jobs, or manage experiment workflows on that cluster.
Do not use for local-only tasks like editing code or running tests, or for other HPC clusters without modifying the configuration.
Security analysis
SafeThe skill manages HPC cluster operations via SSH and SLURM commands without instructing any destructive or exfiltrating actions. It uses a wrapper script for running user commands on compute nodes, but the skill itself is not inherently risky.
No concerns found
Examples
Submit a training job on TACC using 1 GPU, 4 CPUs, and the 'genecad' repo.Sync my latest code changes to TACC.Check the SLURM queue on TACC.name: tacc description: Manages experiment execution on the TACC Vista HPC cluster. Use when the user says "run on TACC", "run the pipeline", "allocate a GPU node", "check SLURM queue", "sync code to TACC", "download results from TACC", "cancel that job", or when any task requires GPU/CPU compute that cannot run locally. Do NOT use for local-only tasks like editing code, running tests, or plotting. allowed-tools: Bash
TACC HPC Cluster (Vista)
This skill targets the Vista supercomputer within TACC (Texas Advanced Computing Center). Queue names, module versions, and filesystem layout are Vista-specific and may differ on other TACC systems.
First-Time Setup
Before any TACC operations, verify the user's environment is ready. Run these checks and guide the user through fixing any failures:
Step 1: Verify SSH access
ssh tacc "echo 'SSH OK'"
If this fails, the user needs to configure tacc as an SSH host in ~/.ssh/config.
Step 2: Install command wrapper
ssh tacc "test -x \$HOME/local/bin/genecad/cmd && echo 'cmd OK' || echo 'MISSING'"
If missing, install it from the local skill scripts:
ssh tacc "mkdir -p ~/local/bin/genecad"
rsync -Pz .claude/skills/tacc/scripts/cmd tacc:~/local/bin/genecad/cmd
ssh tacc "chmod +x ~/local/bin/genecad/cmd"
The cmd script sources .bashrc, sets PYTHONPATH, cds to the repo, and exports RANK/WORLD_SIZE from SLURM variables, then execs the given command. It is the single entry point for running commands on compute nodes.
Step 3: Verify Python environment
ssh tacc "bash -l -c 'which python && python --version'"
Expected: Python 3.11+ from a venv at $WORK/envs/ml-rel/bin/activate, sourced by .bashrc. Do NOT use conda, mamba, or micromamba — they are not installed on Vista.
Step 4: Verify repository exists on TACC
ssh tacc "bash -l -c 'cd \$WORK/repos/genecad && git status --short'"
If the repo doesn't exist, clone it: ssh tacc "bash -l -c 'git clone <REPO_URL> \$WORK/repos/genecad'".
Filesystem Model
$WORK— Small, persistent filesystem. All code and repositories live here. Treat stored data as read-only unless explicitly instructed otherwise.$SCRATCH— Effectively unlimited capacity but subject to automatic garbage collection (data expires if not accessed frequently enough).$SCRATCH/tmpis the default output location for ALL experiment results unless instructed otherwise. Any other directories under$SCRATCHshould be treated as read-only data sources, not output destinations.
Login Node vs Compute Node
The tacc SSH alias connects to a login node. Use it freely for:
- File exploration (
ls,find,du) - Environment checks (
which python,env) - Data inspection and analysis (Python + pandas, matplotlib, parsing results, generating tables/plots)
- Running analysis scripts that don't need GPUs or heavy compute
- Git operations (
git status,git pull) - Job management (
squeue,scancel,idev)
Compute nodes cost SU credits. Only allocate a compute node when:
- The task requires a GPU (model inference, predictions)
- The task requires significant CPU or memory (large-scale post-processing)
Do NOT allocate a compute node just to run ls, check paths, inspect files, or run quick scripts. Use ssh tacc "bash -l -c 'COMMAND'" for that.
Experiment Workflow
A typical experiment follows this sequence. Each step depends on the prior step completing successfully.
Step 1: Sync code to TACC
bash .claude/skills/tacc/scripts/sync # rsync (default, fast, no commit needed)
bash .claude/skills/tacc/scripts/sync --git # git push + pull (requires clean commit)
rsync (default): Directly pushes local files without requiring a git commit. Use for in-progress work.
git (--git): Use only when changes are committed and you want the remote to match a specific branch/commit.
Step 2: Check for existing compute nodes
ssh tacc "squeue -u \$USER -o '%.18i %.9P %.30j %.2t %.10M %.6D %.20R'"
Reuse a running node if one exists — each session has a minimum 15-minute charge.
Step 3: Allocate a compute node
Queues:
| Queue | Type | Time Limit | Use Case |
|-------|------|------------|----------|
| gg | CPU-only | — | CPU-only jobs (post-processing, evaluation) |
| gh-dev | GPU dev | 2 hours | Try first for GPU work |
| gh | GPU prod | — | Fallback if gh-dev has no nodes |
Do not allocate a CPU-only node (gg) for GPU work. The prediction step requires a GPU.
Single-node (default): Use idev to allocate an interactive node:
idev -p gh-dev -N 1 -n 1 -t 2:00:00
Then find the allocated node:
ssh tacc "squeue -u \$USER -h -t R -o '%N'"
Multi-node: Use srun directly — no idev needed (see Step 4).
Step 4: Run the experiment
Write all output to $SCRATCH/tmp unless instructed otherwise.
Single-node execution
After allocating a node with idev (Step 3), find the node name and run commands via cmd. Since cmd cds to the repo automatically, commands can use repo-relative paths directly:
NODE=$(ssh tacc "squeue -u \$USER -h -t R -o '%N'" | head -1)
ssh tacc "ssh $NODE ~/local/bin/genecad/cmd python scripts/predict.py ..."
For long-running single-node jobs, prefer sbatch over idev to survive SSH disconnects.
Multi-node execution with srun
Use srun to launch the same command across multiple nodes simultaneously. The cmd wrapper sets RANK=$PMIX_RANK and WORLD_SIZE=$SLURM_NNODES, so each node knows its rank and the total node count.
ssh tacc "bash -l -c '\
srun -p gh-dev -N 8 -n 8 --tasks-per-node 1 -t 2:00:00 \
--output \$SCRATCH/tmp/logs/<name>.log \
--error \$SCRATCH/tmp/logs/<name>.log \
~/local/bin/genecad/cmd python scripts/predict.py create_predictions \
--input ... --output-dir ...'" 2>&1 &
Important notes for multi-node srun:
- Always use
--tasks-per-node 1— each node runs one instance of the command. - Environment variables set before the
sruncall propagate to all nodes. - All nodes write to the same
--output/--errorlog file (interleaved). Use[rank=N]prefixes in log messages to distinguish nodes. srunblocks until all nodes finish. Run it in background (&) and monitor viatailon the log file.
Monitoring progress
ssh tacc "tail -20 \$SCRATCH/tmp/logs/<name>.log"
Step 5: Download results
rsync -Pz tacc:/remote/results/path local/results/path
Always use rsync instead of scp.
Step 6: Cancel the job
ssh tacc "scancel <jobid>"
Always cancel jobs when done. Idle jobs consume SU credits.
Environment
- Python env: standard venv at
$WORK/envs/ml-rel/bin/activate, sourced automatically by.bashrc - Do NOT use conda, mamba, or micromamba — they are not installed
- Modules loaded by
.bashrc:gcc/13.2.0,cuda/12.4,python3/3.11.8 .bashrcmust be sourced for all remote commands —cmdhandles this automatically
Troubleshooting
"No running compute node found"
Cause: No idev session is active, or the job expired.
Fix: Allocate a new node per Step 3 of the Experiment Workflow.
Node allocated on wrong queue (e.g., gg for GPU work)
Cause: gg is CPU-only. GPU predictions will fail or silently use CPU (extremely slow).
Fix: Cancel the job (scancel <jobid>) and allocate on gh-dev or gh.
File transfer fails with scp
Fix: Use rsync -Pz instead of scp.
Python environment not found / conda not found
Cause: .bashrc was not sourced, or agent tried to use conda.
Fix: Ensure all compute node commands go through cmd. Never use conda/mamba/micromamba.
Pre-commit pyrefly hook fails locally
Cause: pyrefly is not installed in the local dev environment.
Fix: uv pip install pyrefly
SSH timeout during long-running command
Cause: Command was run in foreground and SSH connection dropped. Fix: Always background long-running commands and redirect to a log file. Check progress by tailing the remote log.
Hallucinated or incorrect numbers in result summaries
Cause: Model generated numbers from memory instead of reading source data.
Fix: ALWAYS read raw result files (.stats, .tsv) before quoting any numbers. Never guess or recall numbers from earlier in the conversation.
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