Swmm Modeling Memory
/install swmm-modeling-memory
SWMM Modeling Memory
Part of Agentic SWMM — install the project first for the executable toolchain (aiswmm CLI, SWMM solver, MCP servers).
What this skill provides
- A downstream memory layer for audited Agentic SWMM runs.
- Deterministic summaries of repeated assumptions, QA issues, failures, missing evidence, and run-to-run differences.
- Run-level
memory_summary.jsoncards that compress audit artifacts into reusable next-run context. - Project/case-level memory groups that keep Tod Creek, Tecnopolo, TUFLOW, Generate_SWMM_inp, acceptance, and other cases separate.
- Summaries of deterministic SWMM-specific diagnostics when
model_diagnostics.jsonis present. - Human-readable lessons learned from previous audit records.
- Controlled skill update proposals that require human review and benchmark verification.
This skill does not run SWMM, build SWMM models, modify existing skills, or claim autonomous self-improvement.
Agentic SWMM is not only an automation workflow. It is a memory-informed, verification-first modeling system that can learn from audited modeling history through controlled skill refinement.
When to use this skill
Use this skill after swmm-experiment-audit has produced run-level artifacts such as:
experiment_provenance.jsoncomparison.jsonexperiment_note.mdmodel_diagnostics.jsonwhen available
Use it when:
- multiple audited runs exist,
- the user wants lessons learned across runs,
- the user asks for recurring failure patterns or QA issues,
- the user wants evidence-informed skill refinement proposals.
The proposals may point to relevant workflow skills such as end-to-end orchestration, audit reporting, QA verification, model building, or result parsing. They are not accepted changes.
Output contract
The script writes these files to the selected modeling-memory output directory:
modeling_memory_index.jsonmodeling_memory_index.mdrun_memory_summaries.jsonproject_memory_index.mdprojects/\x3Cproject-key>/project_memory.jsonprojects/\x3Cproject-key>/project_memory.mdlessons_learned.mdskill_update_proposals.mdbenchmark_verification_plan.md
The script also writes memory_summary.json beside each audited run by default. The JSON index and run summaries are the machine-readable source. The Markdown files are human-readable and can be copied to Obsidian with --obsidian-dir.
CLI
python3 skills/swmm-modeling-memory/scripts/summarize_memory.py \
--runs-dir runs \
--out-dir memory/modeling-memory
To refresh only the aggregate output without writing run-level cards (only
available via direct script invocation — aiswmm memory does not expose
this flag):
python3 skills/swmm-modeling-memory/scripts/summarize_memory.py \
--runs-dir runs \
--out-dir memory/modeling-memory \
--no-run-summaries
With optional Obsidian export:
python3 skills/swmm-modeling-memory/scripts/summarize_memory.py \
--runs-dir runs \
--out-dir memory/modeling-memory \
--obsidian-dir "/path/to/Obsidian/Agentic SWMM/05_Modeling_Memory"
Safety rules
- Read existing audit artifacts only.
- Tolerate partial and failed runs.
- Do not modify any existing
SKILL.mdfiles. - Do not modify benchmark behavior or audit output formats.
- Do not write outside
--out-dir, audited run directories under--runs-dir, or the optional--obsidian-dir. - Treat SWMM-specific diagnostics as deterministic audit evidence only; do not infer model errors from free-text notes.
- Treat skill update proposals as proposals only.
- Accept real skill refinements only after human review and benchmark verification.
Audit-end auto-trigger (M2)
aiswmm audit fires an auto-trigger after every successful audit that calls
summarize_memory.py in the background to refresh lessons_learned.md and
(unless --no-rag is given) rebuild the RAG corpus. This means
lessons_learned.md can be written by two paths:
- Automatic —
agentic_swmm/memory/audit_hook.pyvia the M2 hook afteraiswmm auditsucceeds. - Manual —
aiswmm memory --runs-dir runsor directpython3 skills/swmm-modeling-memory/scripts/summarize_memory.py.
Set AISWMM_SKIP_MEMORY=1 in the environment to suppress the auto-trigger
(useful for CI or benchmark runs where memory mutation is unwanted). Pass
--no-memory to aiswmm audit for the same effect on a single run.
The auto-trigger uses add_negative_lesson / NegativeLessonMd.update from
agentic_swmm/memory/negative_lessons_markdown.py, which increments
evidence_count and updates last_seen_utc on duplicate lesson names rather
than clobbering the existing entry. Manual summarize_memory.py runs use the
same merge logic.
Relationship to swmm-experiment-audit
swmm-experiment-audit records evidence for one run.
swmm-modeling-memory reads many audited runs and turns repeated evidence patterns into reusable project memory.
The intended controlled loop is:
- Run SWMM or attempt a workflow.
- Audit the run (
aiswmm audit); the M2 hook refresheslessons_learned.mdautomatically. - Preserve an Obsidian-compatible experiment note.
- Summarize modeling memory across audited runs (manual
aiswmm memorycall when a full refresh is needed). - Extract recurring failure patterns.
- Generate a skill update proposal.
- Review the proposal as a human.
- Verify with existing benchmarks before accepting any skill change.
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install swmm-modeling-memory - After installation, invoke the skill by name or use
/swmm-modeling-memory - Provide required inputs per the skill's parameter spec and get structured output
What is Swmm Modeling Memory?
Read historical Agentic SWMM experiment audit artifacts and summarize repeated assumptions, QA issues, failures, missing evidence, run-to-run differences, le... It is an AI Agent Skill for Claude Code / OpenClaw, with 39 downloads so far.
How do I install Swmm Modeling Memory?
Run "/install swmm-modeling-memory" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Swmm Modeling Memory free?
Yes, Swmm Modeling Memory is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Swmm Modeling Memory support?
Swmm Modeling Memory is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Swmm Modeling Memory?
It is built and maintained by Zhonghao Zhang (@zhonghao1995); the current version is v0.7.3.