bio | website | |
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visits | member for | 2 years |
seen | Jul 25 '13 at 12:28 | |
stats | profile views | 16 |
Feb 7 |
awarded | Popular Question |
Jul 11 |
answered | Metis API through Fortran |
Jun 18 |
comment |
Metis API through Fortran
@HighPerformanceMark, aha ! now I get you, actually the allocation process is a part of METIS itself for allocating its own variables |
Jun 18 |
comment |
Metis API through Fortran
@HighPerformanceMark, the documentation includes no such thing as "stat" optional argument, there's an option array argument called options[METIS_OPTION_DBGLVL] |
Jun 18 |
revised |
Metis API through Fortran
edited title |
Jun 17 |
revised |
Metis API through Fortran
added 2 characters in body |
Jun 17 |
asked | Metis API through Fortran |
Jul 13 |
comment |
Very slow performance of cusparse csrsv_analysis
I'm basically bench-marking the GTX 550 Ti against an intel i7 950, as I mentioned before, the diagonal scaling preconditioned CG was faster on GPU rather than CPU, it was even slightly slower than a Xeon X5680 ! So, we're very interested in using Tesla GPUs, but I firstly need to find a way to accelerate the LU preconditioned CG algorithm. |
Jul 13 |
accepted | Very slow performance of cusparse csrsv_analysis |
Jul 13 |
comment |
cuSparse vs. cuBlas triangular solvers
@harrism, I really appreciate your to-the-point answers & comments, so I apologize if I unintentionally said something that makes you "not wanting to help", hope you'd clarify whether you meant my last comment was so shallow or what ? :) All I wanted to say is that a 25,000,000 elements matrix containing only 35,000 non-zeros must be performing plenty of unnecessary operations when using cuBlas, and if these operations are omitted by using sparse memory patterns, they would get faster, that's all I meant, but you sure have a point concerning the parallelization issues of such patterns. |
Jul 13 |
comment |
Very slow performance of cusparse csrsv_analysis
Among all CPU versions of the CG that I've tried for our problems, the LU preconditioned version was the fastest, the LU version on CPU is faster than the diagonal scaling version on GPU, so I'm interested in using CUDA to write an LU preconditioned CG solver, I keep wondering if there's a way to simply skip the analysis phase or tell it to pass a default one-leveled info structure ? |
Jul 13 |
awarded | Scholar |
Jul 12 |
comment |
cuSparse vs. cuBlas triangular solvers
I disagree with you, cuSparse was written to accelerate the sparse matrix operations, and converting a certain sparse matrix to dense format and then using cuBLAS should definitely be slower, cuSparse is more efficient when sparse matrices are involved |
Jul 12 |
awarded | Commentator |
Jul 12 |
comment |
Very slow performance of cusparse csrsv_analysis
So overall, I'm very interested in the following points: 1. is the Cholesky factorization now available in CuSparse ? which version ? 2. the diagonal scaling CG on GPU outperformed the CPU versions, while the LU & Cholesky versions were much slower, exclusively due to the analysis phase. 3. I'll give it a try with non preconditioned CG instead of triangular solver, and I'll let you know what happened. Thanks in advance @harrism |
Jul 12 |
comment |
Very slow performance of cusparse csrsv_analysis
2.3. I don't understand how would Dr. Maxim consider the speed up of the solve phase over MKL a triumph if he's using a 1300 $ Tesla C2050 against a 300 $ intel i7 950, I guess the comparison is unfair, besides, the speedup gain is acquired if the solve phase is repeated multiple times, which can be high in some cases, while the preconditioning is usually required to reduce the number of iterations |
Jul 12 |
comment |
Very slow performance of cusparse csrsv_analysis
2.2. It would be great to make such test and publish them. |
Jul 12 |
comment |
Very slow performance of cusparse csrsv_analysis
2.1. I read Dr. naumov's paper (research.nvidia.com/publication/…) which describes how to construct the LU or Cholesky factorization, but according to the latest documentation of cUSparse, there's no function to create the preconditioner, but please let me know if there's, It would be really helpful. |
Jul 12 |
comment |
Very slow performance of cusparse csrsv_analysis
1.2. I'm already bench marking my code against many powerful CPU versions (MKL, and other codes written in our company), the diagonal scaling preconditioned version of the CG was faster on GPU, while the LU preconditioned version was much slower. |
Jul 12 |
comment |
Very slow performance of cusparse csrsv_analysis
First of all, I'd like to thank you for your comprehensive answer, I've been impatiently waiting for this. Let me reply to you point by point as you did: 1.1. The point of using the LU or Cholesky preconditioning is minimizing the number of iterations, so the fewer number of iterations is a feature of the preconditioning and the solver should be optimized for such cases. |