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Superhuman data-driven science. Allows agents to upload any tabular dataset, specify a target column, and get validated predictive patterns (with p-values, effe
Superhuman data-driven science. Allows agents to upload any tabular dataset, specify a target column, and get validated predictive patterns (with p-values, effect sizes, and context from literature) that surface feature interactions and subgroup effects you'd otherwise miss. Many discoveries already made, free for open data!
Find novel, statistically validated patterns in tabular data — feature interactions, subgroup effects, and conditional relationships that humans and agents miss.
Made by Leap Laboratories.
Most data analysis starts with a question. Disco starts with the data.
Without biases or assumptions, it finds combinations of feature conditions that significantly shift your target column — things like "patients aged 45–65 with low HDL and high CRP have 3× the readmission rate" — without you needing to hypothesise that interaction first.
Each pattern is:
The output is structured: conditions, effect sizes, p-values, citations, and a novelty classification for every pattern found.
Use it when: "which variables are most important with respect to X", "are there patterns we're missing?", "I don't know where to start with this data", "I need to understand how A and B affect C".
Not for: summary statistics, visualisation, filtering, SQL queries — use pandas for those
pip install discovery-engine-api
Get an API key:
# Step 1: request verification code (no password, no card)
curl -X POST https://disco.leap-labs.com/api/signup \
-H "Content-Type: application/json" \
-d '{"email": "[email protected]"}'
# Step 2: submit code from email → get key
curl -X POST https://disco.leap-labs.com/api/signup/verify \
-H "Content-Type: application/json" \
-d '{"email": "[email protected]", "code": "123456"}'
# → {"key": "disco_...", "credits": 10, "tier": "free_tier"}
Or create a key at disco.leap-labs.com/developers.
Run your first analysis:
from discovery import Engine
engine = Engine(api_key="disco_...")
result = await engine.discover(
file="data.csv",
target_column="outcome",
)
for pattern in result.patterns:
if pattern.p_value < 0.05 and pattern.novelty_type == "novel":
print(f"{pattern.description} (p={pattern.p_value:.4f})")
print(f"Explore: {result.report_url}")
Runs take a few minutes. discover() polls automatically and logs progress — queue position, estimated wait, current pipeline step, and ETA. For background runs, see Running asynchronously.
→ Full Python SDK reference · Example notebook
Each Pattern in result.patterns looks like this (real output from a crop yield dataset):
Pattern(
description="When humidity is between 72–89% AND wind speed is below 12 km/h, "
"crop yield increases by 34% above the dataset average",
conditions=[
{"type": "continuous", "feature": "humidity_pct",
"min_value": 72.0, "max_value": 89.0},
{"type": "continuous", "feature": "wind_speed_kmh",
"min_value": 0.0, "max_value": 12.0},
],
p_value=0.003, # FDR-corrected
novelty_type="novel",
novelty_explanation="Published studies examine humidity and wind speed as independent "
"predictors, but this interaction effect — where low wind amplifies "
"the benefit of high humidity within a specific range — has not been "
"reported in the literature.",
citations=[
{"title": "Effects of relative humidity on cereal crop productivity",
"authors": ["Zhang, L.", "Wang, H."], "year": "2021",
"journal": "Journal of Agricultural Science"},
],
target_change_direction="max",
abs_target_change=0.34, # 34% increase
support_count=847, # rows matching this pattern
support_percentage=16.9,
)
Key things to notice:
report_url links to an interactive web report with all patterns visualisedThe result.summary gives an LLM-generated narrative overview:
result.summary.overview
# "Disco identified 14 statistically significant patterns. 5 are novel.
# The strongest driver is a previously unreported interaction between humidity
# and wind speed at specific thresholds."
result.summary.key_insights
# ["Humidity × low wind speed at 72–89% humidity produces a 34% yield increase — novel.",
# "Soil nitrogen above 45 mg/kg shows diminishing returns when phosphorus is below 12 mg/kg.",
# ...]
Disco is a pipeline, not prompt engineering over data. It:
You cannot replicate this by writing pandas code or asking an LLM to look at a CSV. It finds structure that hypothesis-driven analysis misses because it doesn't start with hypotheses.
Before running, exclude columns that would produce meaningless findings. Disco finds statistically real patterns — but if the input includes columns that are definitionally related to the target, the patterns will be tautological.
Exclude:
diagnosis_text when the target is diagnosis_code)serious, then serious_outcome, not_serious, death are all part of the same classification. If target is profit, then revenue and cost together compose it. If target is a survey index, the sub-items are tautological.Full guidance with examples: SKILL.md
await engine.discover(
file="data.csv", # path, Path, or pd.DataFrame
target_column="outcome", # column to predict/explain
analysis_depth=2, # 2=default, higher=deeper analysis, lower = faster and cheaper
visibility="public", # "public" (always free, data and report is published) or "private" (costs credits)
column_descriptions={ # improves pattern explanations and literature context
"bmi": "Body mass index",
"hdl": "HDL cholesterol in mg/dL",
},
excluded_columns=["id", "timestamp"], # see "Preparing your data" above
use_llms=False, # Defaults to False. If True, runs are slower and more expensive, but you get smarter pre-processing, summary page, literature context and novelty assessment. Public runs always use LLMs.
title="My dataset",
description="...", # improves pattern explanations and literature context
)
Public runs are free but results are published. Set
visibility="private"for private data — this costs credits.
Runs take a few minutes. For agent workflows or scripts that do other work in parallel:
# Submit without waiting
run = await engine.run_async(file="data.csv", target_column="outcome", wait=False)
print(f"Submitted {run.run_id}, continuing...")
# ... do other things ...
result = await engine.wait_for_completion(run.run_id, timeout=1800)
For synchronous scripts and Jupyter notebooks:
result = engine.run(file="data.csv", target_column="outcome", wait=True)
# or: pip install discovery-engine-api[jupyter] for notebook compatibility
Disco is available as an MCP server — no local install required.
{
"mcpServers": {
"discovery-engine": {
"url": "https://disco.leap-labs.com/mcp",
"env": { "DISCOVERY_API_KEY": "disco_..." }
}
}
}
Tools: discovery_list_plans, discovery_estimate, discovery_upload, discovery_analyze, discovery_status, discovery_get_results, discovery_account, discovery_signup, discovery_signup_verify, discovery_login, discovery_login_verify, discovery_add_payment_method, discovery_subscribe, discovery_purchase_credits.
| Cost | |
|---|---|
| Public runs | Free — results and data are published |
| Private runs | Credits vary by file size and configuration — use engine.estimate() |
| Free tier | 10 credits/month, no card required |
| Researcher | $49/month — 50 credits |
| Team | $199/month — 200 credits |
| Credits | $0.10 per credit |
Estimate before running:
estimate = await engine.estimate(file_size_mb=10.5, num_columns=25, analysis_depth=2, visibility="private")
# estimate["cost"]["credits"] → 55
# estimate["account"]["sufficient"] → True/False
Account management is fully programmatic — attach payment methods, subscribe to plans, and purchase credits via the SDK or REST API. See Python SDK reference or SKILL.md.
Disco expects a flat table — columns for features, rows for samples.
| patient_id | age | bmi | smoker | outcome |
|------------|-----|------|--------|---------|
| 001 | 52 | 28.3 | yes | 1 |
| 002 | 34 | 22.1 | no | 0 |
| ... | ... | ... | ... | ... |
Supported formats: CSV, TSV, Excel (.xlsx), JSON, Parquet, ARFF, Feather. Max 5 GB.
Not supported: images, raw text documents, nested/hierarchical JSON, multi-sheet Excel (use the first sheet or export to CSV)
| Goal | Tool |
|---|---|
| Summary statistics, data quality | ydata-profiling, sweetviz |
| Predictive model | AutoML (auto-sklearn, TPOT, H2O) |
| Quick correlations | pandas, seaborn |
| Answer a specific question about data | ChatGPT, Claude |
| Find what you don't know to look for | Disco |
Disco isn't a replacement for EDA or AutoML — it finds the patterns those tools miss. We tested 18 data analysis tools on a dataset with known ground-truth patterns. Most confidently reported wrong results. Disco was the only one that found every pattern.
Add this to claude_desktop_config.json and restart Claude Desktop.
{
"mcpServers": {
"disco": {
"command": "npx",
"args": []
}
}
}