Massively Parallel LDPC Decoding on GPU

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MASSIVELY PARALLEL LDPC DECODING ON GPU

Vivek Tulsidas BhatPriyank Gupta

“Workload Partitioning” Priyank

Motivation and LDPC introduction. Analysis of the sequential algorithm and

build up to the parallelization strategy. Lessons Learned : Part 1

Vivek Parallelization strategy Results and Discussion Lessons Learned : Part 2 Conclusion

Motivation FEC codes used extensively in various

applications to ensure reliability in communication.

Current trends in application show demands in increased data rates.

Considering Shannon Limit, low complexity encoders-decoders necessary.

Enter LDPC : Low-Density Parity Check.

LDPC : Quick Overview

Iterative approach. Inherently data-parallel Computationally

expensive. Therefore, perfect

candidate for operations that can be parallelized.

Our Initial Approach

Parallel Code Flow

Found Codeword or Max Iter. Report Results

Likelihood Ratio Initialization

Probability Ratio Initialization

Likelihood Ratio Recomputation

Probability Ratio Recomputation

Next Guess Calculation

No Yes

Analysis of Sequential Code

Sparse Matrix Representation

typedef struct /* Representation of a sparse matrix */{ int n_rows; /* Number of rows in the matrix */ int n_cols; /* Number of columns in the matrix */

mod2entry *rows; /* Ptr to array of row headers */ mod2entry *cols; /* Ptr to array of column headers */

mod2block *blocks; /* Allocated Blocks*/ mod2entry *next_free; /* Next free entry */

} mod2sparse;

typedef struct /* Structure representing a non-zero entry, or the header for a row or column */

{ int row, col; /* Row and column indexes */

mod2entry *left, *right, /* Pointers to adjacent entry in row */ *up, *down; /* and column, or to headers. Free */ /* entries are linked by 'left'.*/

double pr, lr; /* Probability and likelihood ratios - not used */ /* by the mod2sparse module itself */} mod2entry;

Likelihood Ratio Computation

LR_estimator = 1 (initial)Forward Transition:

element_LR(nth) = LR_estimator(nth)LR_estimator(n+1th) = LR_estimator(nth) *2/element_PR(n+1th) - 1

Reverse Transition:temp = element_LR(nth) * LR_estimator(nth)element_LR (n-1th) = (1-temp) / (1+temp)LR_estimator(n-1th) = LR_estimator(nth) *2/element_PR(n-1th) - 1

1 0 0 1 1 1 00 1 0 1 1 0 10 0 1 0 1 1 1

Probability Ratio Computation

1 0 0 1 1 1 00 1 0 1 1 0 10 0 1 0 1 1 1

PR_estimator(nth) = Likelihood_Ratio (nth) (initial) Top-Down Transition:

element_PR(nth) = PR_estimator(nth) PR_estimator(n+1th) = PR_estimator(nth) * element_LR(nth)

Bottom-Up Transition:element_PR (n-1th) = element_PR (nth) * PR_estimator(nth) PR_estimator(n-1th) = PR_estimator(nth) * element_LR(nth)

Lessons Learned : Part 1

"entities must not be multiplied beyond necessity"

Parallelization Strategy

Transformation

Codeword i

Likelihood Ratio Computation

Probability Ratio Recomputation

Next Guess Calculation

Found Codeword or Max Iter.

No YesReport Results

Codeword i-2 Codeword i-1 Codeword i+1 Codeword i+2

Use 1-D arrays

BSC Channel Data (N , M-bit codewords read at a time)

BSC Data Array with N codewords aligned

Likelihood ratio for all the MN bits

Bit Probabilities for MN bits

Decoded Blocks (N M-bit codewords)

Each thread does the computation for one-bit. So for N M-bit codewords, we would need MN threads for the Likelihood ratio, Probability Ratio and Decoded Block related computations

Likelihood Ratio Computation : Revisited

1 0 0 1 1 1 00 1 0 1 1 0 10 0 1 0 1 1 1

Likelihood Ratio Estimator calculation for Forward and Reverse Estimation done on the host before the launch of the Likelihood ratio kernel.

Note: Illustration for just one codeword. This is done for N codewords at a time.

Likelihood Ratio Estimator : Reverse Estimation

Likelihood Ratio Estimator : Forward Estimation

Probability Ratio Computation : Revisited

1 0 0 1 1 1 00 1 0 1 1 0 10 0 1 0 1 1 1

Likewise for the Probability Ratio Computation, only this time operations are done on a column basis

Probability Ratio Estimator : Top Down Transition

Probability Ratio Estimator : Bottom-Up Transition

Salient Features of our implementation Usage of efficient sparse matrix representation

of standard Parity-Check matrix. Simplistic Mathematical model for likelihood

ratio and probability ratio computation. Dedicated data structure for likelihood ratio and

probability ratio kernels. Code is easily customizable for different code

rates. Supports larger number of code words without

any major change to the program architecture.

Experimental SetupCPU GPU1 GPU2

Platform Intel Core 2 Duo

NVidia GeForce 8400 GS

NVidiaGeForce GT120

Clock Speed (Memory Clock)

2.6GHz 900MHz 500MHz

Memory 4GB 512MB 512MBCUDA Toolkit Version

-NA- 2.3 2.2

Programming Environment

Linux Visual Studio

Linux

Results (1/3) Tested extensively for code rate of (3,7) on

BSC channel with error probability of 0.05. Optimal execution configuration :

numThreadsPerBlock = 256, numBlocks = 7* Mul_factor where mul_factor is evaluated depending on the number of code words to be decoded

mul_factor = num_codewords / numThreadsPerBlock Bit error rate is evaluated by comparing

percentage change with respect to original source file.

Results (2/3) : Software Execution Time

Results (3/3) : Bit Error Rate Curve

Lessons Learned : Part 2 High occupancy does not guarantee better performance. Although GPU implementation provides considerable speedup, its

BER results are not attractive (in fact worse than CPU based implementation)

Absence of a double-precision floating point unit in GPU impacted the results. Probability ratio and Likelihood ratio computations are based on double-precision arithmetic.

Reliability? Random Bit Flips ? Could be catastrophic depending on the application for which LDPC decoding is being used.

Other programming paradigms : OpenMP ? Not as attractive in terms of speedup compared to GPU, but better BER curve.

Case for built-in ECC features within GPU architecture : NVIDIA Fermi architecture!

Future Work Trying this for AWGN channel for

different error probabilities. How does this perform on better GPU

architectures ? Tesla ? Fermi ? Any other parallelization strategies ?

CuBLAS routines for sparse matrix computations on GPU ?

Acknowledgement

We would like to thank Prof. Ali Akoglu and Murat Arabaci (OCSL Lab) for guiding us throughout the course of this project.

References Gabriel Falcao, Leonel Sousa, Vitor Silva,

“How GPUs can outperform ASICs for Fast LDPC Decoding”, ICS’09.

Gabriel Falcao, Leonel Sousa, Vitor Silva, “ Parallel LDPC Decoding on the Cell/B.E. Processor”, HiPEAC 2009.

Gregory M. Striemer, Ali Akoglu, “An Adaptive LDPC Engine for Space Based Communication Systems”.

Questions : Ask!

Backup Slides

Code Transformation: Likelihood ratio Init Kernel

Code Transformation: Initprp Decode Kernel

Code Transformation: Likelihood Ratio Kernel

Code Transformation: Probability Ratio Kernel

Code Transformation: Next Guess Kernel