Accepting audits · Feb 2026

Your models should tune themselves.

We plug into data teams drowning in hyperparameter tuning and pipeline plumbing — and hand back production-ready AutoML workflows that cut experiment cycles from weeks to hours.

ML Engineers · Series BHeads of Data ScienceCTOs with AI roadmaps
Explore Benchmark Data
South Asian woman professional
Black man tech professional
Latino man engineering lead
47 data teams audited · avg 14× speedup
Bayesian Optimization·Automated Feature Stores·ML CI/CD Pipelines·Hyperparameter Tuning·Production AutoML·Pipeline Drift Detection·Model Versioning·Shadow Deployment·Experiment Tracking·Databricks Cost Reduction·Bayesian Optimization·Automated Feature Stores·ML CI/CD Pipelines·Hyperparameter Tuning·Production AutoML·Pipeline Drift Detection·Model Versioning·Shadow Deployment·Experiment Tracking·Databricks Cost Reduction·
// current state

Your team is maintaining infrastructure, not building models.

ERR_GRIDSEARCH_TIMEOUT

Manual Grid Search

Your team is running 400-trial exhaustive sweeps on a single machine. The experiment queue is 3 weeks long. Two engineers quit.

3 wksavg queue time
WARN_PIPELINE_DRIFT

Pipeline Drift

The model that scored 94% in staging scores 71% in production. Nobody knows why. The feature store and the training script diverged 6 months ago.

−23ppstaging→prod gap
ERR_SHADOW_IT_MODEL

Shadow IT Models

Three notebooks, a cron job, and a Slack bot are your AI roadmap. One senior engineer is the single point of failure.

1 SPOFengineer dependency
autofit.init() → applying fixes
// autofit method

Production-ready AutoML, handed back in days.

autofit.optimize()

Bayesian Optimization

Optuna-powered search with pruning. We find better hyperparameters in 40 trials than your team finds in 4,000. Every search is logged, reproducible, and version-controlled.

40×fewer trials needed
autofit.store()

Automated Feature Stores

Feast-backed feature pipelines with point-in-time correctness. Training and serving share the same feature definitions. Pipeline drift becomes structurally impossible.

0training-serving skew
autofit.deploy()

ML CI/CD Pipelines

Every model change triggers automated retraining, evaluation, shadow deployment, and canary rollout. Your notebook becomes a production system in one sprint.

1 sprintnotebook → prod
median result across 47 client engagements
1×
faster to production
experiment cycles: weeks → hours
// benchmark_comparison.csv

Explore the benchmark data

Sort by latency, accuracy, or cost. All numbers from real production workloads.

sort by:
approachP95 Latency (ms)Val Accuracy (%)Cost / 1k inf ($)Setup Days
Autofit Bayesian Pipelineautofit
1896.4$0.421d
Optuna (manual setup)
2995.1$0.858d
Vertex AI AutoML
3894.1$2.15d
AutoML (H2O AutoML)
4593.8$1.23d
SageMaker Autopilot
5292.7$3.47d
Manual Grid Search (SKLearn)
31291.2$4.814d
Random Search + MLflow
18789.4$2.912d

These numbers are from real client workloads. Yours will vary — but not by much.

// client_outcomes.json

ML teams who stopped tuning by hand

$8.4k/mocloud savings

"We were running 600-trial grid searches on a 32-core box and still missing our weekly model refresh SLA. Autofit moved us to Bayesian search in 4 days. We now run 50 trials and hit better val accuracy. The Databricks bill dropped $8,400/month."

DatabricksMLflowXGBoost
South Asian woman with dark hair in professional setting
Priya Nair
Head of Data Science · Fieldline Analytics
1 sprintnotebook → prod

"I was the single point of failure for our entire ML stack. Three notebooks and a cron job. Autofit delivered a proper CI/CD pipeline with shadow deployment in one sprint. I slept through a Saturday for the first time in 14 months."

PyTorchSageMakerAirflow
Black man in his 30s with short beard in a tech office
Marcus Webb
Senior ML Engineer · Cartage (Series B)
6 daysaudit to production

"Our CTO asked why the AI roadmap was three notebooks. I didn't have a good answer. Autofit audited our pipeline on a Tuesday, delivered a feature store design on Thursday, and we had our first automated retraining job in production by the following Friday."

Scikit-learnVertex AIFeast
Latino man in his 40s smiling in office environment
Tomás Herrera
Director of Engineering · Vento SaaS

trusted by data teams at

Fieldline AnalyticsCartageVento SaaSAxon DataMeridian MLStackflow
// autofit.start()

Stop tuning by hand.
Start shipping models.

One free audit. No commitment. We'll tell you exactly where your pipeline is bleeding time and money — before you pay us anything.

No phone required
Results in 24h
Zero commitment
Free · No commitment