Hydra is a C++14 compliant and header only framework designed to perform common data analysis tasks on massively parallel platforms. Hydra provides a collection of containers and algorithms commonly used in HEP data analysis, which can deploy transparently OpenMP, CUDA and TBB enabled devices, allowing the user to re-use the same code across a large range of available multi-core CPU and accelerators. The framework design is focused on performance and precision. The core algorithms follow as close as possible the implementations widely used in frameworks like ROOT and libraries like GSL. Currently Hydra supports: Generation of phase-space Monte Carlo samples with any number of particles in the final states. Sequential decays, calculatio...
Hydra is a chip multiprocessor (CMP) with integrated support for thread-level speculation. Thread-le...
In high energy physics (HEP) a core component of analysis of data collected at the Large Hadron Coll...
Hydra 2.4.0 Update Thrust to version 1.9.6 (merged with variadic-tuple fork from @andrewcorrigan ) ...
Hydra is a C++14 compliant and header only framework designed to perform common data analysis tasks ...
Hydra is a C++11 compliant and header only framework designed to perform commom data analysis tasks ...
Hydra is a C++14 compliant and header only framework designed to perform common data analysis tasks ...
This release: 1) Adding more counter based PRNGs, with periods of 2^64, 2^128 and 2^256. 2) TestU01 ...
Hydra 2.2.1 Release highlights New functors and implementations (hydra/functions): ArgusSh...
CHANGE LOG Hydra 2.3.1 Interfaces to FFTW and CuFFT for performing 1D real-real complex-real and ...
The ATLAS Collaboration is releasing a new set of recorded and simulated data samples at a centre-of...
Multicore CPUs are now found in desktops, servers and supercomputers but many existing parallel perf...
Hydra is an adaptive particle-particle, particle-mesh plus smoothed particle hydrodynamics code deve...
With the expected large increase in the amount of available data in LHC Run 3, now more than ever HE...
The ATLAS Collaboration is releasing a new set of recorded and simulated data samples at a centre-of...
Hydra 2.5.0 Eigen is not being distributed with Hydra anymore. Eigen will remain an dependency fo...
Hydra is a chip multiprocessor (CMP) with integrated support for thread-level speculation. Thread-le...
In high energy physics (HEP) a core component of analysis of data collected at the Large Hadron Coll...
Hydra 2.4.0 Update Thrust to version 1.9.6 (merged with variadic-tuple fork from @andrewcorrigan ) ...
Hydra is a C++14 compliant and header only framework designed to perform common data analysis tasks ...
Hydra is a C++11 compliant and header only framework designed to perform commom data analysis tasks ...
Hydra is a C++14 compliant and header only framework designed to perform common data analysis tasks ...
This release: 1) Adding more counter based PRNGs, with periods of 2^64, 2^128 and 2^256. 2) TestU01 ...
Hydra 2.2.1 Release highlights New functors and implementations (hydra/functions): ArgusSh...
CHANGE LOG Hydra 2.3.1 Interfaces to FFTW and CuFFT for performing 1D real-real complex-real and ...
The ATLAS Collaboration is releasing a new set of recorded and simulated data samples at a centre-of...
Multicore CPUs are now found in desktops, servers and supercomputers but many existing parallel perf...
Hydra is an adaptive particle-particle, particle-mesh plus smoothed particle hydrodynamics code deve...
With the expected large increase in the amount of available data in LHC Run 3, now more than ever HE...
The ATLAS Collaboration is releasing a new set of recorded and simulated data samples at a centre-of...
Hydra 2.5.0 Eigen is not being distributed with Hydra anymore. Eigen will remain an dependency fo...
Hydra is a chip multiprocessor (CMP) with integrated support for thread-level speculation. Thread-le...
In high energy physics (HEP) a core component of analysis of data collected at the Large Hadron Coll...
Hydra 2.4.0 Update Thrust to version 1.9.6 (merged with variadic-tuple fork from @andrewcorrigan ) ...