Version 6.24 (2026/05/15)
Highlight: Sensitivity Analysis Section
A new section that describes Dakota’s sensitivity analysis capabilities has been added to the User Manual.
Enabling / Accessing: Visit Sensitivity Analysis.
Highlight: JSON-format Input Files
In addition to the existing freeform input file format, Dakota now accepts JSON-format input files. The schema and other usage tips are described in the JSON Input Reference section. JSON input provides a foundation for more structured, tool-friendly workflows, and is a stepping stone toward more capable Python bindings.
The capability is experimental, and we appreciate your bug
reports. To fall back to the old input file reader, run Dakota
with the -parser nidr command line argument.
Enabling / Accessing: Write a JSON format input file and use the
-json command line argument (e.g. dakota -json dakota_in.json).
Highlight: Robustness enhancements for multifidelity sampling
All multifidelity sampling estimators that involve numerical solutions for sample allocations (MFMC, ACV, parameterized ACV, and MLBLUE) now include analytic derivatives of all accuracy and cost metrics, rendering these allocations more accurate and numerically robust.
Enabling / Accessing: no additional specification is required, as all numerical solutions have been promoted to analytic gradients.
Documentation: multifidelity sampling methods that support/require
numerical solutions are described at
multifidelity_sampling,
approximate_control_variate, and
multilevel_blue.
Improvements by Category
Interfaces, Input/Output
The pyprepro function is now available in the dakota.interfacing module.
UQ Methods
Enhancements to numerical solutions within multifidelity Monte Carlo (MFMC) implementation: fix any remaining model order dependencies when using the default reorder-on-the-fly approach (
auto_reorder), and add an option to enable solutions for a specified model ordering by enforcing ordered sample allocations through linear constraints (fixed_order).
Sensitivity Analysis
The
binnedapproach to variance-based decomposition now works with discrete variables.
Miscellaneous Enhancements and Bugfixes
Fix issue with trilinos that prevented re-configuration in the same build directory
Deprecated and Changed
Dakota’s NIDR (New Input Deck Reader) is being deprecated and replaced with a newly written input parser. For this release, NIDR is available as a fallback. Use the command line argument
-parser legacyto use it.
Compatibility
The schema for JSON input files is defined by Pydantic models, which are located at python/dakota/spec/ in the source tree. To update Dakota’s input grammar, Python >=3.9 and Pydantic >=2.12 are required.

