Code for calculating sample sizes for A/B tests based on power analysis.
-
Updated
Jun 7, 2018 - Python
Code for calculating sample sizes for A/B tests based on power analysis.
Kernel-based Design of Experiments
python experiment management toolset
Python package for design of experiments
Discrete Event Simulation | Queue Modeling | Bayesian Optimization | Full Factorial Design. "Design and Operation of Individualized Single-use Systems: Car-T Cell Therapy". Modeling Single-use systems using stochastic optimization techniques.
Design of Experiments and Analysis
Python library for Design and Analysis of Experiments
Sequential design of adsorption simulation for small molecule adsorption in a MOF
Web app for experimental design.
Open-source constructor of surrogates and metamodels
automizes your doe simulations or experiments
Catalog of all regular fractional factorial designs from Chen, Sun and Wu (1993) and Xu (2009)
This code will run the analysis for a 2k Factorial design of experiments test with 1 to 26 variable parameters of interest.
A tool for the analysis of datasets obtained by performing experiments according to a Design of Experiments (DoE) approach.
Simple implementation of Latin Hypercube Sampling.
Object-Orientated Derivative-Free Optimisation
Python package for flexible generation of D-optimal experimental designs
Generate and characterize designs with four-and-two-level (FATL) factors.
Simulation and Analysis Tool for TAP Reactor Systems
Autonomously driving equation discovery, from the micro to the macro, from laptops to supercomputers.
Add a description, image, and links to the design-of-experiments topic page so that developers can more easily learn about it.
To associate your repository with the design-of-experiments topic, visit your repo's landing page and select "manage topics."