| name | kermt-infer |
| description | Run predictions with a finetuned KERMT checkpoint on a SMILES-only CSV. The skill validates that the input ckpt has task FFN heads (refuses pretrain ckpts with a redirect to kermt-finetune), validates the CSV, prepares the data (clean + rdkit_2d features), then launches main.py predict inside the kermt container (blocking, minutes-scale). |
| license | Apache-2.0 |
| compatibility | Requires docker, nvidia-container-toolkit, and a CUDA-capable NVIDIA GPU. Designed for Claude Code, Codex, and Nemotron. |
| metadata | {"owner":"evax@nvidia.com","classification":"workflow-skill","risk_tier":"skill"} |
kermt-infer
Run predictions with a finetuned KERMT checkpoint on a SMILES-only CSV. The
skill is the workflow orchestrator: validate ckpt, validate CSV, prepare data,
launch the runner blocking, return the predictions CSV.
Hardware requirements
- GPUs: 1 (single-GPU). Multi-GPU inference is not currently supported.
- VRAM: ≥ 4 GB for the default
batch_size 32.
- Disk: a few hundred MB per run (cleaned CSV + features + predictions).
- Driver / CUDA: any host supporting CUDA 12.6 (the kermt image base).
Inputs
Required:
--ckpt <path> — finetuned checkpoint (must have task FFN heads). The
validator refuses pretrain ckpts with a redirect to kermt-finetune.
--csv <path> — SMILES-only CSV. First column is smiles; other columns
are ignored.
Optional:
--batch-size N — override the configured default (32).
--seed N — random seed for inference (deterministic featurization paths).
--gpus 0 — single GPU id (default 0). Multi-GPU rejected.
--from-prepare <dir> — skip the prepare step and reuse an existing
prepare_data.json in <dir>.
Workflow
Let $KERMT_REPO be the path to your kermt repo checkout, and assume
kermt-setup has built kermt:latest.
-
Pre-flight: ensure container + system probe.
$KERMT_REPO/agent/scripts/kermt_container.sh check_system
Refuse to proceed on ok: false.
-
Compute run directory.
RUN_DIR=$KERMT_REPO/runs/infer_$(date -u +%Y-%m-%dT%H-%M-%SZ)
-
Validate the checkpoint.
$KERMT_REPO/agent/scripts/kermt_container.sh run --ckpt <user-ckpt> -- \
"python agent/scripts/check_checkpoint.py --mode inference --ckpt /ckpt"
Parse the JSON. Abort on ok: false. The validator rejects pretrain ckpts
(has_task_ffn: false) with a redirect to kermt-finetune.
-
Validate the data.
$KERMT_REPO/agent/scripts/kermt_container.sh run --data <user-csv> -- \
"python agent/scripts/check_data.py --mode inference --csv /data/<basename>"
Abort on ok: false.
-
Prepare the data.
$KERMT_REPO/agent/scripts/kermt_container.sh run --data <user-csv> --run-dir $RUN_DIR -- \
"python agent/scripts/prepare_data.py --mode inference \\
--csv /data/<basename> --out /runs/data"
Outputs land at $RUN_DIR/data/prepare_data.json with clean_csv +
clean_npz paths (rdkit_2d_normalized features).
-
Launch the runner (blocking).
$KERMT_REPO/agent/scripts/kermt_container.sh run \\
--ckpt <user-ckpt> --run-dir $RUN_DIR -- \\
"python agent/scripts/run_inference.py \\
--ckpt /ckpt \\
--prepare-manifest /runs/data/prepare_data.json \\
--out /runs \\
[--gpus 0 --batch-size N --seed N]"
Returns the predictions CSV path on success.
-
Report to the user. Output a short summary:
- Predictions:
$RUN_DIR/out/predictions.csv (smiles + per-target columns)
- Manifest:
$RUN_DIR/run.json (cmd_replay + image digest + applied args)
- Log:
$RUN_DIR/logs/inference.log
- Row count: molecules predicted across targets
Hard rules
- Never modify the user's ckpt. The runner symlinks the ckpt into a
unique
<out>/ckpt_link/ subdir so main.py predict --checkpoint_dir
picks it up; the source file stays untouched.
- Arch comes from the ckpt, never from CLI/defaults. The runner records
the validator's arch block in
run.json but does not pass arch flags into
main.py predict — predict reads them from the loaded ckpt's saved_args.
- Single-GPU only. Multi-GPU inference is not currently supported.
- Echo applied defaults. The
args_applied field of run.json records
every flag's value + source (user / default-config). Surface a short
summary of any default-filled flag.
Common errors
inference requires a finetuned ckpt with task FFN heads → ckpt is a
pretrain ckpt; use kermt-finetune first.
prepare_data manifest reports ok=False → check the manifest errors for
the failed step (typically clean_smiles or save_features).
could not convert string to float: '<value>' from save_features or main.py
predict → input CSV has a non-numeric passthrough column (e.g. a 'split'
label). The prep step now strips the CSV to SMILES-only at inference; if
this error still surfaces, the CSV is being read by a runner that bypassed
prepare_data. Re-run via the skill, not main.py directly.
--gpus '0,1' is single-GPU only → pass a single id.
Replayability
The run.json cmd_replay field is a single-line command that re-runs the
inference with the same inputs. To replay inside the kermt container:
$(jq -r .cmd_replay $RUN_DIR/run.json)
If ok_to_replay: false (dirty kermt repo worktree at launch time), pin
the commit via repo.commit and git checkout it first.