Galileo: Driving Intelligent Experimentation With AI-First Automation

We deploy Galileo-powered intelligence frameworks that accelerate data science experimentation and production readiness.

AI models often fail due to poor data curation, error analysis, and lack of explainability. Galileo solves this—but it needs strategic configuration and integration.

Our Approach

Experiment Management

Set up Galileo to monitor data drift, bias, and model errors.

Data Curation

Automate labeling, outlier detection, and version control.

Integration

Embed Galileo with MLOps stacks for transparent AI governance.

Visualization

Build dashboards for root-cause analysis and continuous improvement.

Key Differentiators

AI Quality Framework

Detects blind spots and accelerates retraining.

Model Debugging at Scale

Automates error isolation and labeling correction.

Explainable ML

Provides insights into how models behave under real data.

MLOps Native

Seamlessly integrates with TensorFlow, PyTorch, and SageMaker.

Expert Resources at INT.

Our 20+ Galileo experts empower data science teams with better control, visibility, and performance.

  • AI quality engineers and model debugging specialists
  • Data scientists configuring Galileo for NLP and vision workflows
  • MLOps experts embedding Galileo into CI/CD pipelines
  • Visualization engineers building interpretable dashboards
case study

Enabled an enterprise ML team to reduce model bias and accelerate retraining cycles using Galileo.

Featured

40%

faster model iteration speed

25%

improvement in model accuracy after three training cycles
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