auto-differentiation/xad-py
High-Performance Automatic Differentiation for Python
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Fast, easy automatic differentiation in C++
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Latest capture 2026-06-19 22:39
1 capture since 2026-06-19
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Frameworks, package managers, ecosystems, and dependency manifests found during catalog scans.
Scanned 2026-06-19 22:39
CMakeLists.txt
c-cpp ecosystem,
1 dependency
samples/CMakeLists.txt
c-cpp ecosystem,
1 dependency
src/CMakeLists.txt
c-cpp ecosystem,
0 dependencies
test/CMakeLists.txt
c-cpp ecosystem,
0 dependencies
samples/adj_1st/CMakeLists.txt
c-cpp ecosystem,
0 dependencies
samples/adjvec_1st/CMakeLists.txt
c-cpp ecosystem,
0 dependencies
samples/checkpointing/CMakeLists.txt
c-cpp ecosystem,
0 dependencies
samples/external_function/CMakeLists.txt
c-cpp ecosystem,
0 dependencies
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