A New ERA in Machine Learning
Probabilistic Intelligience
PI Probaligence gmbh
Customized innovation in machine learning
Stochos
In the realm of advancing machine learning, STOCHOS stands out as an exceptional machine learning approach that not only pushes the boundaries of technology but also pioneers groundbreaking solutions for companies across all industries. Focusing on internally developed probabilistic machine learning methods, Bayesian optimization, sensitivity analyses, and experimental design, we at PI Probaligence have earned a reputation as a trailblazer in efficiency and applicability.
The strength of STOCHOS lies in the remarkable sample efficiency of its solutions. By delivering accurate and reliable results even with limited datasets, it optimizes resource utilization and accelerates innovation cycles for companies. This approach empowers companies to make data-driven decisions without heavy reliance on extensive expert knowledge.
PI Probaligence envisions a future where companies can reap the benefits of machine learning effortlessly. By developing solutions that are not only powerful but also user-friendly, PI Probaligence provides a platform for data-driven innovation, leading the way for companies to embrace an era of data-driven excellence.
we created a new approach to Machine Learning
Deep Infinite Mixture of Gaussian Processes
Navigating machine learning challenges requires selecting the right algorithm and understanding diverse data, from numerical values like chemical formulations to complex entities like FEM simulations or 3D material properties.
The DIM-GP (Deep Infinite Mixture of Gaussian Processes) algorithm addresses this challenge by enabling users, even those with limited expertise, to efficiently address a variety of advanced technological problems. In contrast to other algorithms, DIM-GP is designed to handle vast datasets with minimal hardware requirements. Its notable capability, however, lies in constructing highly accurate models from limited data points—an essential feature given the high costs and scarcity of real experiments and simulations.
To complement DIM-GP, a suite of algorithms for optimized experimentation, efficient optimization, and sensitivity analysis has been seamlessly integrated into the Stochos software package. This integration ensures a cohesive collaboration of algorithms, collectively pushing the boundaries of what is achievable in the field.
Our Famous optimizer
Optimizer PI-BO
Our proprietary Bayesian optimizer PI-BO is a probabilistic model-based optimization technique used to optimize complex, expensive, and noisy objective functions. It’s particularly useful when the evaluation of the objective function is time-consuming or resource-intensive.
Bayesian optimization is particularly effective in scenarios where the objective function is expensive to evaluate, and the goal is to minimize the number of evaluations needed to find the optimum. And furthermore it can also be utilized to generate a digital twin in the most efficient way.
new tool released
Multi Fidelity
Multi-fidelity refers to the utilization of models or simulations with varying levels of accuracy or computational expense. This approach involves employing a combination of low-fidelity, less accurate, and computationally inexpensive models alongside high-fidelity, more accurate, and computationally expensive models. By integrating information from models with different fidelity levels, the goal is often to strike a balance between accuracy and computational efficiency in tasks such as optimization, uncertainty quantification, or surrogate modeling. This allows for more efficient exploration and exploitation of the solution space in complex problems.
User-friendly Interface
WebApp STOCHOS
The WebApp for Stochos offers a variety of powerful tools, covering tasks like improving performance, analyzing what matters, and ensuring reliability. These tools are carefully designed to seamlessly integrate with DIM-GP for top-notch results.
Our aim is to make these advanced tools user-friendly, so you can benefit from them without needing expert knowledge. Plus, everything is built in Python, making it easy to integrate into your existing software and workflows
Easy to use GUI for our WebApp Stochos
Demo Video
Length: 1.15min
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A New Era in Machine Learning
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