Early access now open

The data bottleneck
is the AI bottleneck.

DataFramer removes it.

Platform Operations
G
GenerateSeed-based & seedless
A
AugmentExpand & transform
A
AnonymizePrivacy-safe output
S
SimulateEdge cases & scenarios
Seed documents
Expected vs. Generated Distributions
Expected
Generated

Trusted infrastructure. On our cloud or yours.

01

Your eval suite is thinner than you think.

A handful of real samples doesn't cover distributions, edge cases, or the scenarios your model will actually face in production.

02

Real data is off the table.

Privacy reviews, compliance constraints, and customer data agreements mean the data you need most is the data you can't use.

03

Labeling is slow and expensive.

Manual annotation doesn't scale. Neither does waiting two sprints for a dataset your team needs this week.

DataFramer gives your team the data it needs — on its terms.

Why DataFramer

Built for data that's actually complex

01 — Control

Control the shape
of your data

Analyze seed samples and define exactly what you need — distributions, edge cases, formats, regions, device types, time periods. Your data should reflect your world, not just your history.

Seed analysis Custom distributions Scenario weighting
Diversity ×100
Edge case density 15%
Regional variance (any data property really) 4 regions
Output volume 50,000 records
Optimized
$0.06 / sample
↓ 82% vs. alternatives
Revisions
Automatic
upto 5x
Labeling saved
74%
avg across workflows
Model choices
Dozen+
selectable per job
02 — Cost

Generate more.
Spend less.

Choose your model at each step. Revise outputs automatically. Stop paying human annotators to fix what the pipeline should handle.

OSS model support Step-level model choice Anthropic Open AI Google Gemini Reduced labeling cost
03 — Evaluation

Know your data works
before it ships

DataFramer enforces your constraints, structures, and file types at scale. Then lets you validate — compare against expectations or chat directly with your dataset before it touches your model.

Distribution comparison Chat with your data Pre-pipeline validation
Distribution match — 96.4% Pass
Schema validity — 100% Pass
Edge case coverage — 82% Review
"Show me records where age > 80... and gender is 'female'"
Use Cases

The problems DataFramer was built for

Eval dataset — coverage breakdown
Normal cases
60%
Edge cases
25%
Rare events
10%
Boundary tests
5%
Total records generated 50,000
01 — Evaluation

Eval datasets that actually
test your model

Expand seed data, generate edge cases, and build evaluation sets that reflect real-world distributions — at the volume your model deserves to be tested against.

Seed expansion Edge case generation Real-world distributions
02 — Privacy

When you can't touch
the real data

Anonymize, simulate, or synthesize compliant alternatives without sacrificing the structural fidelity your workflows depend on.

HIPAA / GDPR ready PII removal Structural fidelity preserved
Patient record — anonymization
Name Sarah Mitchell → [REDACTED]
DOB 1978-04-12 → [SYNTHETIC]
MRN MRN-004821 → [SYNTHETIC]
Diagnosis T2 Diabetes preserved
Data types handled
Long-form documents & PDFs DOCX · PDF
Nested & hierarchical records JSON · XML
Temporal Scenarios & Encounters CSV · Parquet
Multi-file & high-token samples Any format
03 — Complexity

Testing & Training data at the complexity
your model needs

Long-form documents, nested hierarchies, multi-file samples, financial statements, multi-turn conversations, legal contracts — DataFramer handles the data types that generic tools can't.

Multi-format High-token support Nested structures

One platform. Generation, anonymization, transformation, simulation.

High-volume input expansion and high-volume output — not just samples.

Nested structures, multi-format, multi-file. Complex data, handled.

Human review built in — for the workflows that need it.

Your next dataset shouldn't take a sprint.

DataFramer is built for teams who move fast and need data infrastructure that keeps up.