AI evaluation for teams that ship models to production
Project description
multivon-eval
Docs · Website · PyPI · Changelog · Benchmark vs DeepEval + RAGAS
AI evaluation for teams that ship models to production.
Why we exist — the credibility story
The three popular eval frameworks (multivon-eval, DeepEval, RAGAS) agree on a binary hallucination judgment only 56% of the time on the same dataset and labels. Cohen's κ = 0.03 — statistically indistinguishable from chance. If your CI gate flips on which framework you adopted, your "regression" is framework noise, not model quality. We ran this study and published the raw data in eval-framework-benchmark.
On the cross-distribution held-out test we hold ourselves to — Hallucination evaluator calibrated on HaluEval-QA, tested without re-tuning on HaluEval-Sum (n=60) — multivon-eval scores F1 0.830 [0.70–0.92]. The lower bound of our CI (0.71) clears DeepEval's upper bound (0.68) on the in-distribution comparison (F1 0.804 [0.71–0.88] vs 0.586 [0.48–0.68]). The full methodology + raw counts are in benchmarks/README.md Benchmark 4.
The release sequence 0.9.4 → 0.9.5 → 0.9.6 → 0.9.7 is the audit trail. A peer-review round caught a "held-out" claim in 0.9.4 that was actually in-distribution. 0.9.5 corrected the framing and added an actually-held-out test. 0.9.6 fixed three runtime blockers in the bootstrap template. 0.9.7 caught a threshold-vs-default mismatch that was inflating the held-out F1 from 0.830 (calibrated threshold 0.55) to 0.852 (init-time default 0.7). Four releases in eight hours. Every prior release left on PyPI as the historical record. The framework's discipline matches what we ask users to apply to their own systems — that is the pitch.
Run structured evals over your AI outputs — from simple string checks to LLM-as-judge scoring to agent trace validation — with a clean Python API, beautiful terminal reports, and CI/CD integration out of the box.
Quickstart — 30 seconds, no API key
pip install multivon-eval
python -m multivon_eval # runs a demo eval — no setup
multivon-eval init -t quickstart -d my-eval # scaffold your own (offline)
cd my-eval && python eval.py
That's it. The quickstart template uses only deterministic evaluators (NotEmpty, Contains, WordCount) so the first eval runs without an API key.
Pick your path
| You're… | Run this | Needs API key? |
|---|---|---|
| Brand new — just kicking the tires | python -m multivon_eval |
No (LLM judges activate if a key is set) |
| Beginner writing your first eval | multivon-eval init -t quickstart |
No — fully offline |
| Building an agent (hand-rolled or any framework) | multivon-eval init -t agent |
No for default eval, optional for richer judging |
| Building a LangGraph agent | multivon-eval init -t agent-langgraph |
Yes (or local Ollama via ChatOpenAI(base_url=...)) |
| Building an agent with the OpenAI Agents SDK | multivon-eval init -t agent-openai-sdk |
Yes (OpenAI) |
| Building a RAG / QA system | multivon-eval init -t rag |
Yes (or local Ollama) |
| Working a regulated domain | multivon-eval init -t regulated |
Yes (or local Ollama) |
| Multi-turn dialogue eval | multivon-eval init -t conversation |
Yes (or local Ollama) |
LLM-judge evaluators auto-activate when ANTHROPIC_API_KEY, OPENAI_API_KEY, or a local server (Ollama on :11434, LM Studio on :1234, or OPENAI_BASE_URL) is detected — but every template runs without one in some form.
What's new in 0.9.x
-
multivon-eval install-skills(new in 0.9.8) — one-command installer for the three bundled Claude Code skills (eval-bootstrap,eval-audit,eval-explain). The wheel ships them undermultivon_eval/_skills/; this CLI symlinks them into~/.claude/skills/sopip install -U multivon-evalautomatically propagates SKILL.md edits.multivon-eval install-skills # symlinks the three skills multivon-eval install-skills --dry-run # preview without touching anything multivon-eval install-skills --force # replace existing entries ls ~/.claude/skills/ # eval-audit eval-bootstrap eval-explain
See
multivon_eval/_skills/README.mdfor the full skill catalog and what each one does. Pairs withmultivon-eval bootstrap(whicheval-bootstrapwraps as a Claude Code workflow) and theeval-actionGitHub Action (whicheval-auditcomplements on the pre-PR side). -
Bootstrap CLI expansions —
--judge-provider ollama+--judge-provider litellmfor fully-local bootstrap (was cloud-only before 0.9.4).--judge-base-url(0.9.4) for vLLM / LM Studio / custom Ollama endpoints — injects a dummy API key when paired with--judge-provider openaiso OpenAI-shim servers Just Work.--validate(0.9.0) runs the N-shot judge-noise filter (auto.validate_adversarial_cases) on the generated seed cases — drops anything outside the (0.5, 1.0) hardness band. Adds ~$0.03 but removes 20–40% of synthetic noise.--validate-n-shotscontrols the rerun count for--validate(default 3).
-
multivon-eval doctor(new in 0.9.0) — preflight your setup. Reports detected API keys, local-judge availability (Ollama / LM Studio / OpenAI-compat base URL), Python + package versions,~/.multivon/writeability.--jsonfor CI consumers, exit codes0 / 1 / 2for hard/soft failures. -
Self-correction audit trail (0.9.4 → 0.9.7) — the four-release cadence that produced the F1 0.830 [0.70–0.92] held-out number is documented release-by-release in CHANGELOG.md. 0.9.5 corrected the "held-out" framing on a Faithfulness number that was actually in-distribution. 0.9.6 fixed three runtime blockers in the bootstrap-generated template. 0.9.7 caught a threshold-vs-default mismatch that inflated the held-out F1 from 0.830 (calibrated 0.55) to 0.852 (init-time default 0.7) — only the 0.830 figure is defensible as "held-out at the calibrated threshold." See
benchmarks/README.mdBenchmark 4 for the reproducibility note on resolving thresholds at runtime.
Carried forward from 0.8.x
-
multivon-eval bootstrap— cold-start eval generator. Describe your LLM product + hand over a JSONL of sample traces, get back a runnableEvalSuite+ 30 adversarial seed cases + thresholds calibrated from your data + a forwardableDISCOVERY_REPORT.md. ~60 seconds, ~$0.12 per run. PII / secrets redacted locally before any LLM call. Best documented path is the bootstrap guide.multivon-eval bootstrap --product PRODUCT.md --traces TRACES.jsonl --output ./eval-bootstrap/
-
multivon_eval.automodule — the programmatic primitives the bootstrap CLI composes:auto_evaluators(case)— pure-heuristic, infers the recommended evaluator set fromEvalCaseshape. 0 LLM cost, microseconds.generate_adversarial_cases(seed, mode, n)— LLM-generated stress cases across 10 named failure modes (ungrounded_claim,jailbreak,prompt_injection_direct/indirect,tool_injection,pii_leakage_invitation, etc.).validate_adversarial_cases(cases, baseline, n_shots=3)— N-shot judge-noise filter. Validated +0.80 mean failure-rate separation between weak vs strong baselines.
-
Reproducible head-to-head — multivon-eval F1 0.804 [0.71–0.88] vs DeepEval F1 0.586 [0.48–0.68] on HaluEval-QA, same N=100, same labels, same judge family. The lower bound of our CI clears DeepEval's upper bound. RAGAS errored on the same input. Run it yourself: eval-framework-benchmark.
Carried forward from 0.7.x
CaseResult.statusenum distinguishesjudge_error/model_error/evaluator_errorfrom quality failures.pass_rateexcludes errors from the denominator.- Per-evaluator error isolation — one judge outage no longer crashes the case.
- JUnit XML output +
multivon-eval view <report.json>HTML dashboard +multivon-eval initstarter templates +EvalReport.assert_budget(...)cost/latency gates.
See CHANGELOG.md for the complete release history.
The Multivon ecosystem
Five public + one early-access package, all built on a shared evaluation engine:
| Repo | What it is |
|---|---|
| multivon-eval (you are here) | Python SDK — 44 evaluators + bootstrap CLI + multivon_eval.auto |
| pdfhell | Adversarial PDFs that break AI document readers — procedural ground truth, not LLM-as-judge |
| multivon-mcp | MCP server exposing 22 evaluation tools to Claude / Cursor / Cline / OpenCode |
| eval-action | GitHub Action — run a suite on every PR, post a comment, gate the merge on regressions |
| eval-framework-benchmark | Reproducible head-to-head benchmark vs DeepEval + RAGAS |
| multivon-guard (early access) | Local proxy that catches LLM coding agents leaking secrets / PII before the request hits the wire. hello@multivon.ai. |
When NOT to use multivon-eval
| You want… | Use |
|---|---|
| To call evals from inside Claude Code via SKILL files | bundled Claude Code skills — multivon-eval install-skills |
| To call evals from Cursor / Cline / Claude Desktop mid-edit | multivon-mcp |
| To gate every PR on eval regressions automatically | eval-action |
| Adversarial PDF benchmarking with code-based ground truth | pdfhell |
| To see how multivon-eval stacks up against DeepEval / RAGAS | eval-framework-benchmark |
| Just to gate on a single LLM judge call without a suite | call Faithfulness(...).evaluate(case, output) directly — overkill to spin up an EvalSuite |
Three agent-facing surfaces, one engine. Claude Code skills run inside Claude Code; the MCP server runs alongside any MCP-compatible client (Cursor / Cline / Claude Desktop / OpenCode); the GitHub Action runs on every PR. All three call the same
multivon-evalevaluators against the same calibration table — they differ only in where the agent lives.
# pip install multivon-eval anthropic
# export ANTHROPIC_API_KEY=sk-ant-...
import anthropic
from multivon_eval import EvalSuite, EvalCase
client = anthropic.Anthropic()
def support_bot(prompt: str) -> str:
response = client.messages.create(
model="claude-haiku-4-5",
max_tokens=200,
messages=[{"role": "user", "content": prompt}],
)
return response.content[0].text
suite = EvalSuite("Support Bot Eval")
suite.add_check("Response explains how to resolve the issue")
suite.add_check("Tone is professional and not defensive", threshold=0.8)
suite.add_cases([
EvalCase(
input="How do I reset my password?",
context="Users can reset their password by clicking 'Forgot Password' on the login page.",
),
])
report = suite.run(support_bot)
─────────────────────── Support Bot Eval ───────────────────────
# Input Output Score Status Latency
1 How do I reset my pas... Click 'Forgot Passwor… 0.92 PASS 843ms
By Evaluator
Evaluator Avg Score Pass Rate
response_explains 0.92 100%
tone_is_profess… 0.88 88%
╭────────────────────────────────── Summary ───────────────────────────────────╮
│ Total: 1 Passed: 1 Failed: 0 │
│ Pass Rate: 100% [20%–100% 95% CI] Avg Score: 0.90 [0.82–0.96] │
╰──────────────────────────────────────────────────────────────────────────────╯
⚡ Power warning: 1 case(s) — minimum detectable change at 80% power is ~100%.
Add ≥291 cases to reliably detect a 10pp shift.
Why multivon-eval
Every team building AI products hits the same problem: how do you know if your model is getting better or worse?
| Feature | multivon-eval | DeepEval | RAGAS | Promptfoo |
|---|---|---|---|---|
Plain-English checks (add_check) |
✓ | — | — | — |
| Multi-run + flakiness detection | ✓ | — | — | — |
| CI on every report (Wilson + bootstrap) | ✓ | — | — | — |
| Multiple-comparison correction (BH) | ✓ | — | — | — |
| Power warning + dataset size guidance | ✓ | — | — | — |
| Judge calibration against human labels | ✓ | — | — | — |
| QAG scoring (binary questions, not 1-10) | ✓ | — | — | — |
| Agent-native evaluators (8 metrics) | ✓ | ✓ | partial | — |
| LangChain / LangSmith integration | ✓ | ✓ | ✓ | partial |
| Compliance audit trail (EU AI Act / NIST) | ✓ | — | — | — |
| Local PII detection (zero API calls) | ✓ | partial | — | — |
| HTML reports (self-contained, shareable) | ✓ | — | — | — |
| Local-first, no account needed | ✓ | ✓ | ✓ | ✓ |
| Synthetic data generation | ✓ | ✓ | ✓ | — |
| Open source (Apache 2.0) | ✓ | ✓ | ✓ | ✓ |
Comparison based on each project's public documentation as of June 2026 (last reviewed 2026-06-03; revisit every minor release). We host these benchmarks open: see
benchmarks/for code + datasets andbenchmarks/results/for the raw output JSON. Found something wrong? Open an issue — we'll fix it.
Numbers, not adjectives
Hallucination detection, HaluEval QA, N=100, claude-haiku-4-5 judge, human labels:
| Evaluator | Precision | False positives | F1 |
|---|---|---|---|
| multivon-eval (QAG) | 0.788 | 11 | 0.804 |
| DeepEval (GPT-4o-mini) | 0.456 | 49 | 0.586 |
| Simple LLM judge (1-10) | 0.617 | 31 | 0.763 |
| Keyword overlap | 0.605 | 15 | 0.523 |
Multi-judge agreement on the same task, N=50, all judges temperature=0:
| Judge | Accuracy vs human | Precision | F1 |
|---|---|---|---|
| gemini-2.5-flash | 0.860 | 0.950 | 0.844 |
| gpt-4o-mini | 0.820 | 0.900 | 0.800 |
| claude-haiku-4-5 | 0.800 | 0.895 | 0.773 |
| gpt-4o | 0.780 | 0.792 | 0.776 |
| claude-sonnet-4-6 | 0.720 | 0.720 | 0.720 |
Pairwise Cohen's κ across the 5 judges: 0.60–0.80 (substantial on most pairs). Calibration provenance + per-(judge × evaluator) thresholds ship in multivon_eval/_calibration_data/v2.json. gemini-2.5-flash leads on every metric in this run; claude-haiku-4-5 and gpt-4o-mini are close seconds with cheaper tokens. Pick by your latency / cost / sovereignty constraints — all three are first-class providers.
Cost / latency (benchmarks/results/cost_latency.json) — 50 HaluEval QA cases × 4 LLM-judge evaluators with claude-haiku-4-5, workers=1:
| Metric | Value |
|---|---|
| Cost per case (4 evaluators) | $0.00127 |
| Total cost for the run | $0.0635 |
| Judge calls per case | 17.1 (QAG produces 3 questions × 4 evaluators + verification) |
| Wall clock for 50 cases | 15 min |
| Linear extrapolation to 5,000 cases | $6.35 |
Cache hit speedup (benchmarks/results/reproducibility.json) — same suite, sequential reruns with set_cache(JudgeCache(...)) installed:
| Run | Wall clock | Judge calls |
|---|---|---|
| Rep 1 (cold) | 2.9 s | 4 |
| Rep 2 (hot) | 0 ms | 0 |
Cache speedup on the rep-1→rep-2 transition: 2,271×. Cache hits also produce identical scores by construction — flake-proof reruns. set_cache() auto-enables caching for every subsequent JudgeConfig; no need to thread cache=True through every evaluator.
What makes multivon-eval different
| What it is | One-line why | |
|---|---|---|
| QAG scoring | Binary yes/no questions instead of 1-10 ratings | Eliminates scale ambiguity, fully auditable — every score traces to specific questions that passed or failed |
| Plain-English checks | suite.add_check("Response explains the return policy") |
No evaluator class to pick, no prompt to craft. Questions auto-generated; pin them for reproducible CI |
| Bootstrap CLI | multivon-eval bootstrap (new in 0.8.0) |
Cold-start from product description + traces → tuned suite in 60s |
| Agent-native | Tool-call accuracy, plan quality, step faithfulness, task completion | Works with traces from any framework (LangChain, LlamaIndex, OpenAI Agents SDK, custom) |
| Four tiers | Deterministic / LLM-judge / agent-trace / conversation | Mix freely; pay for LLM calls only where they matter |
| Reliability + flakiness | suite.run(runs=5) + statistical significance |
Detect cases that pass sometimes and fail others; tells you regressions from noise |
| Statistical rigor | Wilson CIs, bootstrap, p10/p50/p90, power warnings, BH correction | NAACL 2025: single-run eval scores are unreliable. CIs ship by default |
| No cold-start | generate_from_file("docs/") synthesises cases |
No labeled data required to start |
| Local-first compliance | PIIEvaluator + SchemaEvaluator + ComplianceReporter |
Hash-chained audit trails, EU AI Act / NIST AI RMF mappings, EvalSuite.eu_ai_act_high_risk() factory |
| Experiment tracking | Experiment.record(report) + compare(a, b) |
p-values, CIs, McNemar across runs |
| Cache | set_cache(JudgeCache(...)) — once |
2,271× speedup on rep-2 (4 judge calls → 0), identical scores guaranteed |
Install
pip install multivon-eval
cp .env.example .env
# Add ANTHROPIC_API_KEY and/or OPENAI_API_KEY
Claude Code skills (optional)
If you use Claude Code, wire up the three bundled skills with one command:
multivon-eval install-skills # symlinks eval-bootstrap / eval-audit / eval-explain into ~/.claude/skills/
What each one does:
eval-bootstrap— auto-invoked when Claude Code detects an LLM-touching codebase without an eval directory. Wraps the bootstrap CLI in a Claude Code workflow that fills in the stub model from the project's existing call sites.eval-audit— auto-invoked between/reviewand/shipon diffs touching prompts / model calls / tool defs. Runs only the eval cases that stress the changed surface, blocks safety-class regressions.eval-explain— auto-invoked after/eval-bootstrap(and on phrases like "why did multivon pick X"). Answers in three sentences using the DISCOVERY_REPORT.md rationale.
Full details in multivon_eval/_skills/README.md. Run multivon-eval install-skills --help for the --dry-run / --force flags.
Core concepts
Three primitives, one runner:
from multivon_eval import EvalSuite, EvalCase, Faithfulness, NotEmpty
case = EvalCase(
input="What caused the 2008 financial crisis?",
expected_output="Subprime mortgage collapse...",
context="The 2008 crisis was triggered by widespread mortgage defaults...",
tags=["finance"],
)
suite = EvalSuite("My eval")
suite.add_cases([case])
suite.add_evaluators(NotEmpty(), Faithfulness(threshold=0.7))
# Serial / parallel / async / multi-run — pick what fits
report = suite.run(model_fn, fail_threshold=0.85)
report = suite.run(model_fn, workers=8)
report = suite.run(model_fn, runs=5) # flakiness detection
report = await suite.run_async(model_fn, concurrency=10)
report.save_json("results.json") # also save_csv, save_html, save_junit_xml
Agent cases use agent_trace=[AgentStep(...)] + expected_tool_calls=[...]. Conversation cases use conversation=[{"role": ..., "content": ...}]. Load existing datasets with load("cases.jsonl") or load("cases.csv").
ToolCallAccuracy three-shape semantics (0.9.0):
expected_tool_calls=Noneskips the case (no expectation set),expected_tool_calls=[]asserts "no tools should have been called" (and a non-empty trace fails), andexpected_tool_calls=[...]checks the trace contains the named calls in order. The skip variant is treated asskipped-passin the report, not0.0— see theintegrations/tracers (LangGraphTracer,OpenAIAgentsTracer,ManualTracer) for how each tracer populatesagent_trace.
Evaluators — 44 across 7 tiers
| Tier | Examples | Cost |
|---|---|---|
| Deterministic | NotEmpty, ExactMatch, Contains, RegexMatch, JSONSchemaEval, WordCount, BLEU, ROUGE, Latency, BERTScore, Levenshtein, ChrfScore |
Free, instant |
| LLM-judge (QAG) | Faithfulness, Hallucination, Relevance, Coherence, Toxicity, Bias, AnswerAccuracy, ContextPrecision, ContextRecall, CustomRubric, GEval, CheckEvaluator |
~$0.001 / case |
| Agent-trace | ToolCallAccuracy, ToolArgumentAccuracy, ToolCallNecessity, TrajectoryEfficiency, AgentMemoryEval, PlanQuality, TaskCompletion, StepFaithfulness |
LLM-judge subset |
| Compliance | PIIEvaluator (zero API calls, multi-jurisdiction), SchemaEvaluator (Pydantic + JSON Schema) |
Free |
| Conversation | ConversationRelevance, KnowledgeRetention, ConversationCompleteness, TurnConsistency |
LLM-judge |
| Multimodal | VQAFaithfulness, DocumentGrounding |
LLM-judge |
| Consistency | SelfConsistency |
LLM-judge |
Full reference + signatures + examples per evaluator: docs.multivon.ai/evaluators.
Compliance & privacy
For regulated industries (healthcare, finance, legal) where traces can't leave your environment.
PIIEvaluator— local regex-only detection across GDPR, CCPA, HIPAA, DPDP (India), PIPEDA jurisdictions. Email, phone, SSN, credit card (Luhn), passport, IBAN, Aadhaar (Verhoeff), PAN.redact=Truemasks in the report. Zero LLM calls.SchemaEvaluator— validates outputs against Pydantic models or JSON Schema with per-field failures. Based on StructEval (2025): GPT-4 fails complex structured extraction ~12% of the time even with explicit format instructions.ComplianceReporter— hash-chained NDJSON audit log (prev_hashlinked, SHA-256). Each result annotated with EU AI Act articles (9(2)(b), 10, 15) or NIST AI RMF subcategories.reporter.coverage(suite)surfaces uncovered controls before you ship.EvalSuite.eu_ai_act_high_risk()factory +for_regulated(jurisdiction="hipaa").
from multivon_eval import EvalSuite, ComplianceReporter
suite = EvalSuite.eu_ai_act_high_risk(jurisdiction="gdpr")
reporter = ComplianceReporter(output_dir="./audit", framework="eu-ai-act")
reporter.record(suite.run(model_fn, runs=5))
reporter.verify(suite.name) # tamper-evident chain check
Full reference: docs.multivon.ai/compliance — jurisdictions, Article mappings, audit-pack generation, sample-audit-pack download.
Statistical rigor
Backed by NAACL 2025: single-run eval scores are unreliable — variance is large enough to reverse model rankings.
Pass Rate: 80% [69%–89% 95% CI] Avg Score: 0.82 [0.74–0.90]
Score distribution p10:0.41 p50:0.88 p90:0.96
⚡ Power warning: 12 cases — minimum detectable change at 80% power is ~45%.
What ships by default in every report:
- Wilson 95% CI on pass rate · bootstrap 95% CI on avg score
- p10 / p50 / p90 percentiles — exposes bimodal distributions that
avg_scorehides - Power warning when your test set is too small to detect the shift you care about
runs_needed(delta=0.10)+min_detectable_effect(n=50)for sample-size sizing- Benjamini-Hochberg correction auto-applied in
exp.compare()for multi-evaluator runs - Judge calibration —
suite.calibrate(labeled_pairs)reports F1 vs human labels per evaluator. Shipped calibration table in_calibration_data/v2.jsonwith per-(judge × evaluator) thresholds (F1 0.66–1.00 range) - Judge reliability check —
JudgeConfig(reliability_check=True)flags non-determinism in the judge itself
Full reference: docs.multivon.ai/guides/statistical-rigor.
Synthetic dataset generation
No labeled data? Point generate_from_file() at your docs:
from multivon_eval import generate_from_file, generate_hallucination_pairs
cases = generate_from_file("docs/faq.md", n=20, task="qa")
cases = generate_from_file("docs/whitepaper.txt", n=10, task="summarization")
pairs = generate_hallucination_pairs(my_docs, n=20)
CLI: multivon-eval generate --from docs/faq.md --n 20 --task qa --output cases.jsonl.
For more sophisticated cold-start, the multivon-eval bootstrap CLI composes generation + heuristic anchoring + N-shot judge-noise filtering into one command — see What's new in 0.9.x above for the full flag set (including 0.9.4's --judge-base-url and 0.9.0's --validate) and the bootstrap guide. Run multivon-eval bootstrap --help for the canonical flag reference.
Experiment tracking
Record every run, compare across model / prompt versions, surface regressions before they ship. Stored locally in ~/.multivon/experiments/ — no cloud, no account.
from multivon_eval import Experiment
exp = Experiment("rag-pipeline")
run_a = exp.record(suite.run(old_model_fn), tags={"prompt_v": "2"})
run_b = exp.record(suite.run(new_model_fn), tags={"prompt_v": "3"})
exp.compare(run_a, run_b) # prints CIs + McNemar p + BH-corrected per-evaluator deltas
CLI: multivon-eval experiments list / history / compare.
Full reference: docs.multivon.ai/guides/experiments.
CLI
multivon-eval init -t <template> -d <dir> # scaffold a starter eval suite (templates: quickstart, agent, rag, regulated, conversation, agent-langgraph, agent-openai-sdk)
multivon-eval run eval.py # execute an eval file
multivon-eval report results.json # print a saved JSON report
multivon-eval view results.json [--open] # render the JSON as an HTML dashboard
multivon-eval compare a.json b.json # diff two reports, McNemar + BH-corrected per-evaluator deltas
multivon-eval generate --from docs/ --n 20 # synthetic case generation from a file/dir
multivon-eval bootstrap --product PRODUCT.md --traces TRACES.jsonl # cold-start a tuned suite
multivon-eval doctor [--json] # preflight: API keys, local judges, versions, dirs
multivon-eval install-skills [--dry-run] [--force] # symlink the three Claude Code skills
multivon-eval experiments list | history <name> | compare <run_a> <run_b>
multivon-eval attribution scan <repo> | diff <base> <head> # Phase 1 prompt-fingerprint diff
multivon-eval --help enumerates every flag. Each subcommand has its own --help with examples.
CI/CD integration
# eval.py
report = suite.run(model_fn, fail_threshold=0.85) # exits 1 if < 85% pass
# .github/workflows/eval.yml
- name: Run evals
run: python eval.py
env:
ANTHROPIC_API_KEY: ${{ secrets.ANTHROPIC_API_KEY }}
Architecture
EvalSuite.run(model_fn)
→ for each case: model_fn(case.input) → output
→ for each evaluator: deterministic | LLM-judge (QAG) | agent-trace | conversation
→ EvalReport (CaseResults + per-evaluator scores + CIs + rich terminal report)
→ save_json / save_csv / save_html / save_junit_xml
Judges: claude-haiku-4-5 by default (configurable via JUDGE_MODEL + JUDGE_PROVIDER). Local + self-hosted models supported via OPENAI_BASE_URL (Ollama, LM Studio, vLLM, any OpenAI-compatible server). Per-(judge × evaluator) thresholds calibrated against human-labeled benchmarks — see _calibration_data/v2.json for the shipped table with provenance.
Examples
| File | What it shows |
|---|---|
basic_eval.py |
Deterministic evaluators only — zero API cost, instant sanity check |
rag_eval.py |
Faithfulness + hallucination for RAG pipelines |
ci_eval.py |
CI/CD integration — fail_threshold exits 1 on regression |
check_eval.py |
add_check() — write criteria in English, no evaluator class needed |
agent_eval.py |
Agent tool call accuracy with ManualTracer — surfaces flaky tool selection |
Tests
pip install -e ".[dev]"
pytest tests/ -v
Roadmap
See ROADMAP.md for the full shipped + in-flight list. The headline open items: LlamaIndex / CrewAI tracers, pytest plugin, LiteLLM adapter, tiered cost optimizer, agent simulation. File an issue if you want one prioritized.
Contributing
Issues and PRs welcome.
Small changes (docs, bug fixes): open a PR directly. Large changes (new evaluators, architecture): open an issue first.
git clone https://github.com/multivon-ai/multivon-eval
cd multivon-eval
pip install -e ".[dev]"
pytest tests/
License
Apache 2.0 — built by Multivon
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