| name | dpgen-simplify |
| description | Prepare, explain, validate, and run DP-GEN simplify workflows for reducing repeated or redundant DeepMD datasets. Use when the user wants to generate or modify `param.json` and `machine.json`, run `dpgen simplify param.json machine.json`, organize repeated simplify experiments, or inspect simplify outputs. |
| compatibility | Requires a runnable environment with Python and an activated DP-GEN runtime where `dpgen` is available in PATH for the outer simplify command. Real execution also requires DeePMD-kit and any backend-specific software required by the selected `fp_style`. For scheduler execution, each stage environment must be explicitly activated in `resources.source_list`. |
| license | LGPL-3.0-or-later |
| metadata | {"author":"hyb1109","version":"0.2.0","repository":"https://github.com/deepmodeling/dpgen"} |
DP-GEN Simplify
Use this skill when the user wants to prepare, explain, validate, or execute the dpgen simplify workflow.
This skill is for dataset simplification workflows where the user already has candidate data in DeepMD-compatible format and wants to reduce repeated or redundant structures through iterative selection.
Core Rule (Critical)
DP-GEN simplify always uses two parameter classes and therefore two JSON files:
- Workflow parameters ->
param.json
- Execution / machine parameters ->
machine.json
Run exactly:
dpgen simplify param.json machine.json
Environment boundary rule:
- Outer layer: run
dpgen simplify param.json machine.json in an activated environment where dpgen --version works.
- Inner layer: for scheduler stages, explicitly activate runtime in
resources.source_list on the server side.
Agent responsibilities
When using this skill, the agent should:
- confirm that the task is a simplify workflow
- check whether existing configs or templates are already available
- collect only the missing dataset, training, FP, and machine inputs
- generate or patch
param.json
- generate or patch
machine.json
- explain important simplify parameters in plain language when asked
- validate the workflow before execution
- provide the exact command for running simplify
- if requested, help structure repeated experiments
- after execution, summarize outputs and next inspection targets
Working policy
1. Ask only for missing inputs
Do not ask the user for everything if part of the configuration is already available.
If the user already provides:
- a partial
param.json
- a partial
machine.json
- a known training template
- a known cluster template
then patch those files instead of rebuilding everything from scratch.
2. Preserve the user's scientific choices
Do not silently change:
- descriptor family
- fitting net structure
- fp backend
- trust thresholds
type_map ordering
If a value looks scientifically questionable, explain the concern instead of silently replacing it.
3. Keep local and scheduler execution explicit
If the user wants local execution, produce local-friendly commands.
If the user wants scheduler execution, produce scheduler-friendly commands and keep queue, partition, and resource requests explicit.
Do not invent scheduler module names or executable paths.
4. Do not invent environment activation commands
If the user already has a working activation command such as:
conda activate ...
module load ...
source ...
reuse it exactly.
If execution is requested and the activation method is unknown, ask the user for the precise activation command.
Do not guess conda environment names, module names, or site-specific paths.
4.1 Outer launcher policy
Use an activated DP-GEN environment and verify with:
dpgen --version
Do not start simplify from a shell where dpgen is unavailable.
4.2 Outer vs inner runtime boundaries (critical)
Treat simplify execution as two separate environment layers:
- Outer layer: the shell that launches
dpgen simplify param.json machine.json (must have dpgen in PATH)
- Inner layer: stage tasks dispatched by DP-GEN (
train / model_devi / fp) on server/runtime side
Even if the outer layer is correct, inner stage tasks still need explicit runtime setup in machine.json.
Do not assume the outer shell environment will be inherited by dispatched stage jobs.
For scheduler-style execution, resources.source_list must explicitly activate the required runtime environment.
5. Prefer reproducible output layout
When generating a simplify workflow, keep files organized and predictable.
Recommended structure:
project/
├── param.json
├── machine.json
├── run.sh
├── logs/
└── summary/
For repeated experiments:
project/
├── base/
├── exp_01/
├── exp_02/
├── exp_03/
└── summary/
Minimum required inputs
Collect the following information before generating files.
Dataset information
pick_data
sys_configs
init_data_prefix
init_data_sys
sys_batch_size
- dataset format
type_map
mass_map if needed
labeled
Simplify controls
init_pick_number
iter_pick_number
model_devi_f_trust_lo
model_devi_f_trust_hi
model_devi_e_trust_lo / model_devi_e_trust_hi if energy trust is used
numb_models if not already specified
Training setup
train_backend if required by environment (for example pytorch)
default_training_param
- descriptor settings
- fitting network settings
- learning rate settings
- loss settings
- training step settings
FP setup
fp_style
- If data is already labeled (energy/force/virial available) and no re-labeling is requested, set
fp_style to none.
- if
fp_style != "none", collect matching FP runtime settings such as:
fp_task_max
fp_task_min
fp_params
- pseudopotential or backend file paths if required
Execution setup
For each stage train, model_devi, and fp, collect or preserve:
command
machine.batch_type
machine.context_type
machine.local_root
machine.remote_root
resources.number_node
resources.cpu_per_node
resources.gpu_per_node
resources.group_size
resources.source_list (required for scheduler jobs; use it to activate environment explicitly)
- any explicit queue / partition / custom scheduler flags if the user already uses them
Choose a runtime profile first, then fill the matching template:
- server-local Slurm:
assets/machine.template.server-local-slurm.json
- local machine -> remote Slurm via SSH:
assets/machine.template.ssh-remote-slurm.json
- pure local shell testing:
assets/machine.template.local-shell.json
How to build param.json
Construct param.json around these logical blocks:
- element and mass definitions
- data source and batch settings
- model ensemble count
- default DeePMD training parameters
- FP backend settings
- simplify pick settings
- trust thresholds
Key fields usually include:
type_map
mass_map
pick_data
init_data_prefix
init_data_sys
sys_batch_size
numb_models
default_training_param
fp_style
shuffle_poscar
fp_task_max
fp_task_min
fp_pp_path
fp_pp_files
fp_params
init_pick_number
iter_pick_number
model_devi_f_trust_lo
model_devi_f_trust_hi
If the user is doing grid experiments, keep a base template and derive variants from it.
Official reference example (QM7-style, adapted with path placeholders):
assets/param.example.qm7.from-official-docs.json
How to build machine.json
Construct machine.json with separate stage blocks for:
For each stage, keep the following explicit:
command
- machine or context configuration
- resources
- queue or partition if needed
- cpu and gpu counts
- custom scheduler flags
- environment activation commands
Do not merge all stages into one vague machine block.
Validation before run
Before execution, validate the workflow in this order:
- confirm outer-layer
dpgen is available:
dpgen --version
- validate JSON syntax:
python -m json.tool param.json
python -m json.tool machine.json
- verify required dataset paths exist
- verify stage commands match the selected software stack
- if
fp_style is none, do not require FP-specific backend settings
- only then run:
dpgen simplify param.json machine.json
Output contract
Always provide:
- final absolute paths to
param.json and machine.json
- the exact simplify command to run (
dpgen simplify param.json machine.json)
- a short pre-run checklist
- any unresolved required fields
- if execution was performed, the main output locations and next files to inspect
Guardrails
- Never merge workflow and machine parameters into one file.
- Never run
dpgen simplify before both JSON files are present.
- Never hardcode personal cluster, account, queue, or path settings as universal defaults.
- Never silently change the user's scientific choices.
- Keep
type_map ordering consistent with dataset typing.
- If required inputs are missing, stop and ask instead of guessing.
- If
fp_style is none, skip FP-specific prompts and keep FP-specific settings disabled or unset.
- If data is already labeled and the user does not request new labels, enforce
fp_style = "none" and do not require active FP runtime fields.
- Do not assume outer-shell activation is inherited by stage jobs; for scheduler execution, require explicit
source_list per stage.
- If the user already has working templates, patch them rather than overwriting them blindly.
References and bundled files
Use these bundled files:
assets/param.template.json
assets/param.example.qm7.from-official-docs.json
assets/machine.template.json
assets/machine.template.server-local-slurm.json
assets/machine.template.ssh-remote-slurm.json
assets/machine.template.local-shell.json
references/param-fields.md
references/machine-fields.md
references/workflow-notes.md
External references: