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Releases: acts-project/traccc

traccc Beta 0.6.0

03 Nov 23:01
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New version for ACTS workshop 2023

There are many changes since the last release:

  • Allows various detector types beyond the detray toy geometry
  • Provides A Partial chain example covering from seeding to track fitting
  • Ongoing work for the integration of clusterization to the full chain and ACTS geometry conversion

... and lots of minor refactoring and bug fixes

traccc Beta 0.5.0

22 Jun 16:58
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traccc Beta 0.5.0 Pre-release
Pre-release

Version of the code used for performance testing, after multiple performance fixes/improvements.

Includes a long list of developments, including a still unfinished track finding and performance measurement code additions.

traccc Beta 0.4.0

24 Apr 08:48
83dbbb6
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traccc Beta 0.4.0 Pre-release
Pre-release

Version of the code used for the CAT and CHEP results. Including a lot of changes since v0.3.0 in the areas of asynchronicity and code harmonization.

traccc Beta 0.3.0

17 Mar 15:41
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traccc Beta 0.3.0 Pre-release
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Version of the code actually used for the OpenLab tests instead of v0.2.0. Change(s) wrt. v0.2.0:

  • Taught the CI how to look for FP64 operations in PTX code;
  • Removed an FP64 operation from the Kalman fitter code;
  • Taught the multi-threaded throughput tests how to log their results into CSV files.

traccc Beta 0.2.0

10 Mar 08:43
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traccc Beta 0.2.0 Pre-release
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After a very long hiatus with tags/releases, this is to mark the code that we would use for a series of performance tests.

Changes wrt. v0.1.0 are too numerous to count. The code is very different than it was in the last tag...

traccc Beta 0.1.0

24 Jul 04:04
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traccc Beta 0.1.0 Pre-release
Pre-release

This is the first numbered release of the project.

This comes with the track reconstruction pipeline which includes the cell clusterization and seeding algorithm for CPU, CUDA and SYCL.
It has been tested for trackML dataset