Your AI teams are ready. Their data isn't.

Take your own data further — generate, anonymize, and simulate diverse datasets for testing, evals, and fine-tuning.

Start with a few Seed Samples

or

create them in the platform...
8
records
Original
Synthetic
Expected vs. generated distributions
Expected
Generated
10,247 records · schema valid · 4 operations

Works from your data — adding diversity while preserving structure and constraints.

DataFramer starts from your real samples and extends them faithfully — respecting the shape, rules, and relationships your models depend on.

Any textual dataset. Any format, any domain, any complexity — multi-format, multi-file, single-file, structured or unstructured, conversational, and more.
Platform Operations
G
GenerateSeed-based & seedless
A
AugmentExpand & transform
A
AnonymizePrivacy-safe output
S
SimulateEdge cases & scenarios

What's blocking your AI team?

Your data isn't enough?

Generate diverse, scaled datasets without starting from scratch.

G — Generate

Your real data is off-limits?

Anonymize or Augment it — structure intact, sensitive content removed, transformed to your needs.

A — Anonymize, Augment

Your data doesn't cover what your model will face?

Simulate the edge cases and scenarios your real data never captured.

S — Simulate

YOUR AI Data Layer. Deployed On our cloud or yours.

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 cost-efficient models at each step. Revise outputs automatically. Stop paying human annotators to fix what the pipeline should handle.

Open models Step-level model choice Reduced labeling cost Anthropic Open AI Google Gemini
03 — Pre-validated Datasets

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.