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Human-evaluation infrastructure for AI quality. 25,000+ blind human reviews by 200+ verified reviewers across 58 AI models — query the data via five MCP tools (
Human-evaluation infrastructure for AI quality. 25,000+ blind human reviews by 200+ verified reviewers across 58 AI models — query the data via five MCP tools (get_model_scores, compare_models, get_flags, check_content, get_latest).

Pluralistic human evaluation infrastructure for AI in production. Available via Python SDK, MCP server, ChatGPT GPT action, and REST API.
Get human feedback on your AI in 3 lines of Python:
from grandjury import GrandJury
gj = GrandJury() # reads GRANDJURY_API_KEY from env
gj.trace(name="chat", input=prompt, output=response, model="gpt-4o")
Then open your Jupyter notebook:
df = gj.results() # traces with human votes — as a DataFrame
print(f"Pass rate: {df['pass_rate'].mean():.1%}")
We're building trust infrastructure for next-generation AI — autonomous agents, production systems, decision-support tools — where ongoing human evaluation isn't a phase but a continuous layer. Diverse human judgment, captured live, in context.
AI evaluation is usually a single number. We capture it as a continuous datastream instead — pluralistic, multi-reviewer, multi-context, from real production traffic. This open R&D community works on what that richer signal can do.
Presenting at Berkeley RDI's Agentic AI Summit, Aug 1–2 2026.
Underneath that work, six research streams. Anyone curious is welcome — researchers, engineers, designers, contributors of any background. Join whichever pulls you; we don't filter by credentials.
Preference-optimization methods are mature (binary, pairwise, multi-objective variants) but assume a single label per training example. Pluralistic, multi-reviewer, open-vocabulary feedback doesn't fit that shape cleanly. The open question: how do we represent pluralistic signal as training data without collapsing its diversity? And what aggregation rule across dimensions respects safety constraints — where trade-offs between dimensions are unacceptable?
A public, opinionated, actively maintained index of AI safety and production-evaluation tools, frameworks, and papers. Most existing curated indices in this space rot fast — staleness sets in within months as the field moves and links break. We curate with a deliberate maintenance discipline; adjacent communities amplify and contribute updates. The artifact is the index, but the durable value is keeping it current.
Quality-routing systems exist that predict which model best serves a given query. Their training data is typically constructed synthetically or sourced from standardized academic benchmarks. We provide the missing layer: pluralistic, multi-reviewer, domain-tagged production feedback as the substrate for routing decisions. Empathy is the first use case — a subjective dimension where standardized benchmarks underperform.
How do live production signals drive immediate guardrail updates, user apologies, and human handoff for dangerous content — folding continuous red-teaming feedback into the production pipeline rather than batching it for the next retraining cycle? Includes the design question of upstream filtering (centralized blocking at the platform) vs. downstream slicing (user-context-dependent filtering closer to deployment).
What richer signal can reviewers submit beyond binary verdict + categorical tags, and what does an AI user see as a result? The two ends of one pipeline. Input side: pre-defined attribute ratings versus open-vocabulary contextual tags — the schema choice determines what downstream systems can ingest. Output side: live, multi-dimensional, third-party-attested representations of how an AI is actually behaving — beyond static vendor documentation or single-dimensional comparison rankings.
How does live pluralistic evaluation surface inside the tools where developers and workflows already touch AI output? Categories of integration surface: LLM observability platforms, workflow-automation systems, agent IDEs, dashboards, communications and alerting, notebooks, documentation embeds. Each integration ships into its own developer community.
The application is a small pull request to this repo.
/challenges/<your-github-handle>.md (see TEMPLATE.md). We'll notify you by email.Full walkthrough in CONTRIBUTING.md.
Most AI evaluation pipelines use LLMs to judge LLMs. That inherits the same biases, conventions, and blind spots as the models being evaluated — and tends to produce eval pipelines with ~0% disagreement, which is the diagnostic for "not measuring quality, just confirming assumptions" (essay).
HumanJudge uses real human reviewers who blind-evaluate AI outputs across structured benchmarks (marketing, healthcare, end-of-life conversations, cultural fluency, code review, and more) and write their reasoning. Reviewers earn XP, get credentialing letters, and stay anonymous to the reader by default.
The data is queryable via this SDK, the MCP server, a ChatGPT GPT action, and a REST API.
| Surface | Install | Docs |
|---|---|---|
| Python SDK | pip install grandjury |
docs/pulse/python-sdk |
| Claude Desktop MCP | Add https://api.humanjudge.com/mcp as a custom connector |
docs/pulse/claude-desktop |
| Claude Code MCP | Add to .mcp.json (remote, no install) |
docs/pulse/claude-code |
| ChatGPT GPT | Search "HumanJudge" in the GPT Store | docs/pulse/chatgpt |
| REST API | n/a | humanjudge.com/docs |
HumanJudge connects your AI to a community of human reviewers who evaluate your model's outputs. GrandJury is the Python SDK — it sends traces and retrieves human evaluation results.
Write path: Log AI calls from your app → traces appear in your developer dashboard. Read path: Fetch evaluation results (votes, pass rates, reviewer feedback) into DataFrames for analysis.
pip install grandjury
Optional performance dependencies:
pip install grandjury[performance] # msgspec, pyarrow, polars
Go to humanjudge.com/projects/new, register your AI, and copy the secret key.
export GRANDJURY_API_KEY=gj_sk_live_...
from grandjury import GrandJury
gj = GrandJury() # zero-config — reads from env
# Option A: Direct call
gj.trace(name="chat", input="What is ML?", output="Machine learning is...", model="gpt-4o")
# Option B: Decorator — auto-captures input/output/latency
@gj.observe(name="chat", model="gpt-4o")
def call_llm(prompt: str) -> str:
return openai.chat(prompt)
# Option C: Context manager
with gj.span("chat", input=prompt) as s:
response = call_llm(prompt)
s.set_output(response)
Once reviewers vote on your traces:
# Trace-level summary
df = gj.results()
# trace_id | input | output | model | pass_count | flag_count | total_votes | pass_rate
# Individual votes with reviewer identity
df_votes = gj.results(detail='votes')
# trace_id | voter_id | voter_name | verdict | flag_category | feedback | created_at
# Filter by benchmark
df_benchmark = gj.results(evaluation='marketing-benchmark')
# Export
df.to_parquet('evaluation_results.parquet')
Works on both live platform data and offline datasets:
# Auto-fetch from platform
gj.analytics.vote_histogram()
gj.analytics.population_confidence(voter_list=[...])
# Or pass your own data
import pandas as pd
df = pd.read_csv("my_votes.csv")
gj.analytics.vote_histogram(df)
gj.analytics.votes_distribution(df)
List and enroll your model in open benchmarks programmatically:
# Browse available benchmarks
benchmarks = gj.benchmarks.list()
# Enroll with endpoint config
gj.benchmarks.enroll(
benchmark_id="...",
model_id="...",
endpoint_config={
"endpoint": "https://api.myapp.com/v1/chat/completions",
"apiKey": "sk-...",
"request_template": '{"model":"gpt-4o","messages":[{"role":"user","content":"{{prompt}}"}]}',
"response_path": "choices[0].message.content"
}
)
All analytics methods work on both platform data (gj.results(detail='votes')) and offline data (pandas/polars/CSV/parquet):
| Method | Description |
|---|---|
gj.analytics.evaluate_model() |
Decay-adjusted scoring |
gj.analytics.vote_histogram() |
Vote time distribution |
gj.analytics.vote_completeness() |
Completeness per voter |
gj.analytics.population_confidence() |
Confidence metrics |
gj.analytics.majority_good_votes() |
Threshold analysis |
gj.analytics.votes_distribution() |
Votes per inference |
gj.results() only returns traces with at least 1 human vote (privacy gate)gj = GrandJury(
api_key=None, # reads GRANDJURY_API_KEY from env if not provided
base_url="https://grandjury-server.onrender.com",
timeout=5.0,
)
# Write
gj.trace(name, input, output, model, latency_ms, metadata, gj_inference_id)
await gj.atrace(...) # async version (requires httpx)
gj.observe(name, model, metadata) # decorator
gj.span(name, input, model, metadata) # context manager
# Read
gj.results(detail=None, evaluation=None) # returns DataFrame or list[dict]
# Browse
gj.models.list()
gj.models.get(model_id)
gj.benchmarks.list()
gj.benchmarks.enroll(benchmark_id, model_id, endpoint_config)
# Analytics
gj.analytics.evaluate_model(...)
gj.analytics.vote_histogram(data=None, ...)
gj.analytics.vote_completeness(data=None, voter_list=None, ...)
gj.analytics.population_confidence(data=None, voter_list=None, ...)
gj.analytics.majority_good_votes(data=None, ...)
gj.analytics.votes_distribution(data=None, ...)
See CONTRIBUTING.md for development setup, testing, and PR guidelines.
See LICENSE. Patent application US 63/825,484 covers aspects of the platform.
Run in your terminal:
claude mcp add humanjudge -- npx Yes, HumanJudge MCP is free — one-click install via Unyly at no cost.
No, HumanJudge runs without API keys or environment variables.
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
Open HumanJudge on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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