Conformal Prediction Framework
- Project
- 18022 IVVES
- Description
- Small memory and energy footprint
- Works on top of any machine learning model of Ekkono’s SDK
- Aids towards validation of evolving systems
- Confidence bounds are guaranteed to contain the correct output value with some pre-defined probability
- Necessary for sensitive and high-risk applications
- Contact
- Ekkono Solutions
- Rikard@ekkono.ai
- Technical features
Input(s):
- Regression datasets
Main feature(s):
- Machine Learning framework for constructing predictive models that can estimate the confidence of their own predictions
- Used on top of machine learning models, as built-in quality assurance
- Good for safety-critical systems
Output(s):
- Model predictions in the form of confidence intervals
- Integration constraints
The framework is part of the Ekkono SDK:
- Modeling: .NET 2.0+ or Python 3.7+ (Windows, macOS, or Linux)
- Deployment: C++17 (or C++14 with included MPark.Variant), delivered as source to be compiled by the customer
- Integration will be done through Ekkono’s C++ API of the compiled library
- Targeted customer(s)
Data Scientists, machine learning engineers, and software developers that want to run machine learning and conformal prediction on any type of device.
- Conditions for reuse
Commercial license
- Confidentiality
- Public
- Publication date
- 28-11-2022
- Involved partners
- Ekkono Solutions (SWE)