Machine Learning

Automated Machine Learning

Accelerate ML Development with Intelligent Automation

Build high-quality machine learning models faster with AutoML. Automated feature engineering, model selection, and hyperparameter tuning reduce development time by 70% while maintaining production-grade accuracy.

100+
AutoML Projects
70%
Time Savings
94%+
Model Accuracy
4-6 weeks
Avg. Project Time

What is AutoML?

Automation of the machine learning pipeline

Automated Machine Learning (AutoML) automates the repetitive and time-consuming tasks in the ML development process. Instead of manually trying different algorithms, features, and parameters, AutoML systems intelligently search the space of possibilities to find optimal solutions.

AutoML covers multiple stages of the ML pipeline: automated data preprocessing handles missing values and encoding; automated feature engineering discovers and creates predictive features; automated model selection evaluates dozens of algorithms; and automated hyperparameter tuning finds optimal configurations through Bayesian optimization or genetic algorithms.

Our AutoML services combine the power of automation with human expertise. We configure AutoML systems for your specific problem, interpret results, ensure business alignment, and prepare models for production deployment. This hybrid approach delivers faster results than pure manual development while maintaining the quality and business relevance that pure automation cannot guarantee.

Key Metrics

70% reduction
Development Time
Vs. manual development
94%+ baseline
Model Accuracy
Competitive with expert models
1000+ configurations
Experiments Run
Systematic search
4-10 weeks
Time to Production
End-to-end delivery

Why Choose DevSimplex for AutoML?

Speed without sacrificing quality or control

We have delivered over 100 AutoML projects, reducing development time by an average of 70% while achieving 94%+ model accuracy. Our approach combines automation efficiency with expert oversight to ensure models are not just accurate, but also interpretable, fair, and ready for production.

AutoML is powerful but requires expertise to use effectively. We configure search spaces appropriately for your data and problem type. We interpret results to ensure selected models make business sense. We validate that automated feature engineering creates meaningful, maintainable features. We ensure fairness and compliance requirements are met.

Our AutoML implementations are production-ready from day one. We do not just find good models; we deliver deployable solutions with proper monitoring, documentation, and retraining pipelines. This end-to-end approach means you get the speed benefits of AutoML with the reliability of expert-built systems.

Requirements

What you need to get started

Structured Data

required

Tabular data with defined features and target variable.

Business Objective

required

Clear definition of prediction goal and success metrics.

Data Quality

required

Reasonably clean data, though AutoML handles some preprocessing.

Compute Resources

recommended

Cloud or on-premises compute for AutoML experimentation.

Domain Context

recommended

Business context to validate and interpret AutoML results.

Common Challenges We Solve

Problems we help you avoid

Long Development Cycles

Impact: Traditional ML takes months of manual experimentation.
Our Solution: AutoML parallelizes experimentation, evaluating hundreds of configurations simultaneously to find optimal solutions in days.

Skill Gaps

Impact: Limited ML expertise constrains model development.
Our Solution: AutoML democratizes ML development while our experts ensure production-grade results.

Suboptimal Models

Impact: Manual selection often misses better algorithm choices.
Our Solution: Systematic search across algorithms and parameters finds combinations humans would never try.

Feature Engineering Bottleneck

Impact: Manual feature creation is time-consuming and hit-or-miss.
Our Solution: Automated feature engineering generates and evaluates thousands of features to find the most predictive signals.

Your Dedicated Team

Who you'll be working with

ML Engineer

Configures AutoML, validates results, prepares deployment.

5+ years in ML engineering

Data Scientist

Interprets results, ensures business alignment.

5+ years in applied data science

Data Engineer

Prepares data pipelines, implements feature stores.

4+ years in data engineering

MLOps Engineer

Deploys models, sets up monitoring.

4+ years in ML infrastructure

How We Work Together

Rapid projects complete in 4-10 weeks from data to deployed model.

Technology Stack

Modern tools and frameworks we use

H2O AutoML

Open-source AutoML

Auto-sklearn

Sklearn-based AutoML

TPOT

Genetic algorithm AutoML

Google AutoML

Cloud AutoML platform

Optuna

Hyperparameter optimization

Feature Tools

Automated feature engineering

Value of AutoML

AutoML delivers faster time to value with lower development costs.

70% faster
Development Time
Vs. traditional ML
50% lower
Development Cost
Per model delivered
5-15% better
Model Performance
Through systematic search
3x faster
Time to Production
From concept to deployment

Why We're Different

How we compare to alternatives

AspectOur ApproachTypical AlternativeYour Advantage
Development SpeedDays to weeksMonths of manual work70% faster delivery
Algorithm CoverageDozens of algorithms testedLimited manual selectionFind best algorithm for your data
Feature EngineeringAutomated feature generationManual feature creationDiscover non-obvious signals
Production ReadinessExpert-validated deployable modelsAutoML output without validationProduction-grade quality

Ready to Get Started?

Let's discuss how we can help transform your business with automated machine learning (automl) services.