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Open-source model portability and replacement benchmark: measure which model delivers an acceptable outcome at the lowest cost, latency, and operational risk.

Project description

ModelSwapBench

Open-source model portability testing for real AI workflows.

Run the same workflow across local, open-weight, self-hosted, and hosted models. Measure quality, latency, policy compliance, and cost per successful outcome before you commit to a vendor.

Status: v0.1.0-alpha — usable and fully offline-capable. APIs may change before 1.0.


Why it exists

Teams are told a cheaper or local model "can't replace" their expensive hosted model — but rarely with evidence tied to the actual workflow. ModelSwapBench answers the real question:

Can a cheaper, local, open-weight, or alternative-provider model replace my current model without breaking my workflow — and what does it cost per successful outcome?

It is a decision-support tool for model replacement, not a leaderboard, not a foundation-model laboratory, and not proof that one model is universally better.

Anti-lock-in by design

  • Provider-neutral benchmark definitions in plain YAML/JSON you own and edit.
  • Portable JSON, CSV, Markdown, and HTML reports; raw results always exportable.
  • Standard HTTP provider interfaces; OpenAI-compatible local endpoints; Ollama; Forge.
  • No mandatory hosted service, account, cloud database, or telemetry.
  • Replaceable model adapters, evaluators, and pricing registries.
  • Everything runs local-first; hosted providers are opt-in per suite.

Architecture

benchmark.yaml ─► config (typed, validated) ─► runner ─► providers ─► models
                                                  │
                                     evaluators ◄─┘ (deterministic, evidence-based)
                                                  │
             scoring / economics / replacement ◄──┘
                                                  │
        storage (SQLite index + files) ◄──────────┤──► reports (md/json/csv/html)
                                                  │
                          reproducibility manifest

Five-minute offline example (no downloads, no credentials)

git clone https://github.com/sekacorn/ModelSwapBench.git
cd ModelSwapBench
python -m venv .venv
# Windows:
.venv\Scripts\python -m pip install -e ".[dev]"
# Linux/macOS:
.venv/bin/python -m pip install -e ".[dev]"

modelswapbench doctor
modelswapbench validate examples/support-ticket-triage/benchmark.yaml
modelswapbench run examples/support-ticket-triage/benchmark.yaml
modelswapbench report latest --format markdown
modelswapbench compare latest

The first example runs entirely with the deterministic provider — no paid model credentials and no model downloads required.

Run against a real local model (Ollama)

ollama pull qwen2.5:3b
# Edit a suite so a model uses: provider: ollama, model: qwen2.5:3b, deployment: local
modelswapbench run examples/support-ticket-triage/benchmark.yaml

No model is ever pulled automatically, and there is no silent hosted fallback.

Benchmark YAML

name: support-ticket-triage
version: "1.0"
baseline_model: hosted-baseline
models:
  - {alias: local-candidate, provider: ollama, model: qwen2.5:3b, deployment: local}
  - {alias: hosted-baseline, provider: deterministic, model: baseline-fixture, deployment: test}
cases:
  - id: duplicate-billing
    input: {message: "I was charged twice and need help."}
    expected: {category: billing, escalation_required: true}
evaluators: [json_parse, json_schema, field_match, forbidden_content]
constraints: {minimum_success_rate: 0.80, maximum_cost_per_success_usd: 0.05}
replacement: {baseline: hosted-baseline, candidates: [local-candidate], maximum_quality_drop: 0.05}

Print the full JSON Schema any time: modelswapbench schema.

Cost per successful outcome

The primary economic metric is:

cost_per_success = total_cost / successful_cases

Zero successful cases is handled safely (reported as "n/a", never a divide error). Cost can be computed as zero-marginal (token/API pricing) or estimated compute (electricity, GPU amortization, cloud-GPU-equivalent) from an operator-supplied profile. Estimates are always clearly labeled as estimates.

Replacement recommendations

A candidate is recommended only when every required gate passes. The decision is transparent and always carries its evidence — failures are never hidden behind an aggregate score. Possible outcomes: recommended replacement · recommended with conditions · suitable as first-stage model with escalation · not recommended · insufficient evidence.

Cascade strategy

Run a cheap/local model first and escalate only failing or low-confidence cases to a stronger model. Reports escalation rate, combined success, and combined cost per success — see examples/cascade-routing.

Privacy

  • Local providers allowed by default; hosted providers denied by default.
  • Benchmark data never leaves the machine unless you pass --allow-hosted and set privacy.allow_hosted_providers: true, after an explicit warning.
  • No telemetry, no uploads; raw outputs stored locally; secrets redacted from logs and reports; API keys are read from environment variables and never written out.

Evaluators

exact_match · contains / forbidden_content · regex · json_parse · json_schema · field_match · tool_selection · policy_compliance · citation · latency · cost · optional rubric (keyword heuristic; never the sole evaluator; judge-model mode on the roadmap).

CLI

doctor · init · validate · schema · models · providers · run · compare · report · runs list|show · reproduce · clean · pricing show|validate|set · examples list.

Exit codes: 0 success · 1 constraints failed · 2 invalid input · 3 provider unavailable · 4 partial run · 5 internal error.

Output formats

Markdown (human report), JSON (full machine record), CSV (per-model summary), and self-contained HTML. Raw model outputs and evaluator evidence are stored per run.

Reproducibility

Every run writes a manifest (suite hash, package/Forge/Python versions, platform, models, execution params, seed, git commit). modelswapbench reproduce RUN_ID re-runs the recorded suite and warns on version drift rather than pretending the run is identical.

Known limitations

  • Results are evidence for a replacement decision, not proof one model is best.
  • Cost figures are estimates, not measured billing.
  • Deterministic providers simulate behavior; only Ollama / OpenAI-compatible runs reflect real models.
  • Small case counts yield low-confidence decisions.
  • The Forge adapter exercises the provider layer, not full agent orchestration (roadmap).

Roadmap

v0.1 deterministic + Ollama + Forge + OpenAI-compatible providers, YAML suites, deterministic evaluators, cost/latency/reliability metrics, replacement decisions, cascade analysis, JSON/CSV/Markdown reports, offline tests. v0.2 richer hosted adapters, compute-cost profiler, statistical confidence, variance analysis, CI regression gates, HTML dashboards. v0.3 benchmark registries, signed manifests, distributed execution, richer tool-use evaluation.

Contributing

See CONTRIBUTING.md, ARCHITECTURE.md, and docs/. Issues and PRs welcome.

License

MIT — Copyright (c) 2026 sekacorn. See LICENSE. Dependency licenses are listed in docs/dependency-licenses.md.

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