Designed for industrial machines and processes
Turbomechanica® is Mechademy's big data platform specifically designed for industrial machines and processes. It integrates state-of-the-art deep learning and machine learning algorithms with proprietary physics-based performance models that empower plant personnel with domain rich predictive and prescriptive alerts to maximize equipment life and uptime.
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Proprietary physics-based performance models
These models compare the performance of equipment to the baseline performance established during testing or field operation. By continuously monitoring and comparing the actual performance to the expected performance, the platform provides early detection of impending faults with a high degree of accuracy.
- Extensive asset library
- OEM agnostic performance models
- Drag and drop functionality allows fast, customizable equipment setup
- Real gas equations of state for performance accuracy
- State-of-the-art diagnostics engine provides prescriptive insights

Domain informed machine learning & deep learning
The platform utilizes deep learning and machine learning models that are trained on historical plant data or simulated data. These models analyze vast amounts of data to identify patterns, correlations, and potential failure modes.
- Domain-informed use cases and feature engineering
- Model building at scale using AutoEDA and AutoML
- Model drift and data drift detection
- Hybrid models using simulation-based transfer learning
- Integrations with popular DL (PyTorch, TensorFlow, and Keras) and ML (scikit-learn, XGBoost, PySpark and more) frameworks
- End to end lifecycle management of models (MLOps)

Sophisticated orchestration to enable state-of-the-art diagnostics
The Turbomechanica platform uses a unique orchestration strategy that allows the seamless flow of data between physics and machine learning models. This allows the use of physics/ML generated synthetic sensors within models.
- Significantly expanded scope of early fault detection
- Richer insights into fault causality
- Hybrid physics + ML digital twins
- Use of physics generated dimensionless parameters allows better transferability of ML models
Predict machine failure, receive actionable insights and prescriptive alerts to minimize downtime





Discover the Power of Turbomechanica®
Our platform utilizes data from multiple (tens or even hundreds of) sources to identify anomalies and flag sub-optimal operations based on the underlying relationships among variables.
15X ROI
Identify potential issues months in advance, reducing downtime, maintenance, and operational costs
10-20% Higher Efficiency
Increase equipment uptime, energy efficiency, and asset lifetime
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