1 / 54

Monte Carlo Simulation and its Efficient Implementation

Monte Carlo Simulation and its Efficient Implementation. Robert Tong. 28 January 2010. Introduction to NAG. Founded in 1970 as a co-operative project in UK Operates as a commercial, not-for-profit organization Worldwide operations Oxford & Manchester, UK Chicago, US Tokyo, Japan

oakes
Télécharger la présentation

Monte Carlo Simulation and its Efficient Implementation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Monte Carlo Simulation and its Efficient Implementation Robert Tong 28 January 2010

  2. Introduction to NAG Founded in 1970 as a co-operative project in UK Operates as a commercial, not-for-profit organization Worldwide operations Oxford & Manchester, UK Chicago, US Tokyo, Japan Taipei, Taiwan Over 3,000 customer sites worldwide Staff of ~100, over 50% technical, over 25 PhDs £7m+ financial turnover

  3. Portfolio Numerical Libraries Highly flexible for use in many computing languages, programming environments, hardware platforms and for high performance computing methods Connector Products for Excel, MATLAB and Maple and Giving users of the Excel and mathematical software packages MATLAB and Maple access to NAG’s library of highly optimized and often superior numerical routines and allowing easy integration NAG Fortran Compiler and GUI based Windows Compiler: Fortran Builder Visualization and graphics software Build data visualization applications with NAG’s IRIS Explorer Consultancy services

  4. Outline Why use Monte Carlo simulation? Higher order methods and convergence GPU acceleration The need for numerical libraries

  5. Why use Monte Carlo methods? Essential for high dimensional problems – many degrees of freedom For applications with uncertainty in inputs In finance Important in risk modelling Pricing/hedging derivatives

  6. The elements of Monte Carlo simulation Derivative pricing Simulate a path of asset values Compute payoff from path Compute option value Numerical components Pseudo-random number generator Discretization scheme

  7. In the past Faster solution has been provided by increasing processor speeds Want a quicker solution? Buy a new processor Present Multi-core/Many-core architectures, without increased processor clock speeds A major challenge for existing numerical algorithms The escalator has stopped... or gone into reverse! Existing codes may well run slower on multi-core The demand for ever increasing performance

  8. Ways to improve performance in Monte Carlo simulation Use higher order discretization Keep low order (Euler) discretization – make use of multi-core potential e.g. GPU (Graphics Processing Unit) Use high order discretization on GPU Use quasi-random sequence (Sobol’, …) and Brownian Bridge Implement Sobol’ sequence and Brownian Bridge on GPU

  9. Higher order methods – 1(work by Kai Zhang, University of Warwick, UK)

  10. Higher order methods – 2

  11. Numerical example – 1

  12. Numerical example – 1a

  13. Numerical example – 1b

  14. Numerical example – 2a

  15. Numerical example – 2b

  16. GPU acceleration Retain low order Euler discretization Use multi-core GPU architecture to achieve speed-up

  17. The Emergence of GPGPU Computing Initially – computation carried out by CPU (scalar, serial execution) CPU evolves to add cache, SSE instructions, ... GPU added to speed graphics display – driven by gaming needs multi-core, SIMT, limited flexibility CPU and GPU move closer CPU becomes multi-core GPU becomes General Purpose (GPGPU) – fully programmable

  18. Current GPU architecture – e.g. NVIDIA Tesla

  19. Tesla – processing power SM – Streaming Multiprocessor 8 X SP - Streaming Processor core 2 X Special Function Unit MT – Multithreaded instruction fetch and issue unit Instruction cache Constant cache (read only) Shared memory (16 Kb, read/write) C1060 – adds double precision 30 double precision cores 240 single precision cores

  20. Tesla C1060 memory (from: M A Martinez-del-Amor et al. (2008) based on E Lindholm et al. (2008))

  21. Programming GPUs – CUDA and OpenCL • CUDA (Compute Unified Device Architecture, developed by NVIDIA) • Extension of C to enable programming of GPU devices • Allows easy management of parallel threads executing on GPU • Handles communication with ‘host’ CPU • OpenCL • Standard language for multi-device programming • Not tied to a particular company • Will open up GPU computing • Incorporates elements of CUDA

  22. First step – obtaining and installing CUDA FREE download from http://www.nvidia.com/object/cuda_learn.html See: Quickstart Guide Require: CUDA capable GPU – GeForce 8, 9, 200, Tesla, many Quadro Recent version of NVIDIA driver CUDA Toolkit – essential components to compile and build applications CUDA SDK – example projects Update environment variables (Linux default shown) PATH /usr/local/cuda/bin LD_LIBRARY_PATH /usr/local/cuda/lib CUDA compiler nvcc works with gcc (Linux) MS VC++ (Windows)

  23. Host (CPU) – Device (GPU) Relationship • Application program initiated on Host (CPU) • Device ‘kernels’ execute on GPU in SIMT (Single Instruction Multiple Thread) manner • Host program • Transfers data from Host memory to Device (GPU) memory • Specifies number and organisation of threads on Device • Calls Device ‘kernel’ as a C function, passing parameters • Copies output from Device back to Host memory

  24. Organisation of threads on GPU SM (Streaming Multiprocessor) manages up to 1024 threads Each threadis identified by an index Threads execute as Warps of 32 threads Threads are grouped in blocks (user specifies number of threads per block) Blocks make up a grid

  25. Memory hierarchy On device can Read/write per-thread Registers Local memory Read/write per-block shared memory Read/write per-grid global memory Read only per-grid constant memory On host (CPU) can Read/write per-grid Global memory Constant memory

  26. CUDA terminology ‘kernel’ – C function executing on the GPU __global__ declares function as a kernel Executed on the Device Callable only from the Host void return type __device__ declares function that is Executed on the Device Callable only from the Device

  27. Application to Monte Carlo simulation Monte Carlo paths lead to highly parallel algorithms Applications in finance e.g. simulation based on SDE (return on asset) drift + Brownian motion Requires fast pseudorandom or Quasi-random number generator Additional techniques improve efficiency: Brownian Bridge, stratified sampling, …

  28. Random Number Generators:choice of algorithm Must be highly parallel Implementation must satisfy statistical tests of randomness Some common generators do not guarantee randomness properties when split into parallel streams A suitable choice: MRG32k3a (L’Ecuyer)

  29. MRG32k3a: skip ahead Generator combines 2 recurrences: Each recurrence of form (M Giles, note on implementation) Precompute in operations on CPU,

  30. MRG32k3a: modulus Combined and individual recurrences Can compute using double precision divide – slow Use 64 bit integers (supported on GPU) – avoid divide Bit shift – faster (used in CPU implementations) Note: speed of different possibilities subject to change as NVIDIA updates floating point capability

  31. MRG32k3a: memory coalescence GPU performance limited by memory access Require memory coalescence for fast transfer of data Order RNG output to retain consecutive memory accesses is stored at sequential ordering (Implementation by M Giles)

  32. MRG32k3a: single – double precision L’Ecuyer’s example implementation in double precision floating point Double precision on high end GPUs – but arithmetic operations much slower in execution than single precision GPU implementation in integers – final output cast to double Note: output to single precision gives sequence that does not pass randomness tests

  33. MRG32k3a: GPU benchmarking – double precision GPU – NVIDIA Tesla C1060 CPU – serial version of integer implementation running on single core of quad-core Xeon VSL – Intel Library MRG32k3a ICC – Intel C/C++ compiler VC++ – Microsoft Visual C++

  34. MRG32k3a: GPU benchmarking – single precision Note: for double precision all sequences were identical For single precision GPU and CPU identical GPU and VSL differ max abs err 5.96E-008 Which output preferred? use statistical tests of randomness

  35. LIBOR Market Model on GPU Equally weighted portfolio of 15 swaptions each with same maturity, but different lengths and different strikes

  36. Numerical Libraries for GPUs The problem The time-consuming work of writing basic numerical components should not be repeated The general user should not need to spend many days writing each application The solution Standard numerical components should be available as libraries for GPUs

  37. NAG Routines for GPUs

  38. nag_gpu_mrg32k3a_uniform

  39. nag_gpu_mrg32k3a_uniform

  40. nag_gpu_mrg32k3a_uniform

  41. Example program: generate random numbers on GPU ...// Allocate memory on Host host_array = (double *)calloc(N,sizeof(double)); // Allocate memory on GPU cudaMalloc((void **)&device_array, sizeof(double)*N);// Call GPU functions // Initialise random number generator nag_gpu_mrg32k3a_init(V1, V2, offset); // Generate random numbers nag_gpu_mrg32k3a_uniform(nb, nt, np, device_array);// Read back GPU results to hostcudaMemcpy(host_array,gpu_array,sizeof(double)*N,cudaMemcpyDeviceToHost);...

  42. NAG Routines for GPUs

  43. nag_gpu_mrg32k3a_next_uniform

  44. nag_gpu_mrg32k3a_next_uniform

  45. Example program – kernel function __global__ void mrg32k3a_kernel(int np, FP *d_P){ unsigned int v1[3], v2[3]; int n, i0; FP x, x2 = nanf(""); // initialisation for first point nag_gpu_mrg32k3a_stream_init(v1, v2, np); // now do points i0 = threadIdx.x + np*blockDim.x*blockIdx.x; for (n=0; n<np; n++) { nag_gpu_mrg32k3a_next_uniform(v1, v2, x); } d_P[i0] = x; i0 += blockDim.x; }

  46. Library issues: Auto-tuning Performance affected by mapping of algorithm to GPU via threads, blocks and warps Implement a code generator to produce variants using the relevant parameters Determine optimal performance Li, Dongarra & Tomov (2009)

  47. Working with Fixed Income Research & Strategies Team (FIRST) NAG mrg32k3a works well in BNP Paribas CUDA “Local Vol Monte-Carlo” Passes rigorous statistical tests for randomness properties (Diehard, Dieharder,TestU01) Performance good Being able to match the GPU random numbers with the CPU version of mrg32k3a has been very valuable for establishing validity of output Early Success with BNP Paribas

  48. BNP Paribas Results – local vol example

  49. “The NAG GPU libraries are helping us enormously by providing us with fast, good quality algorithms. This has let us concentrate on our models and deliver GPGPU based pricing much more quickly.” And with Bank of America Merrill Lynch

  50. “Thank you for the GPU code, we have achieved speed ups of x120” In a simple uncorrelated loss simulation: Number of simulations 50,000 Time taken in seconds 2.373606 Simulations per second 21065 Simulated default rate 311.8472 Theoretical default rate 311.9125 24 trillion numbers in 6 hours “A N Other Tier 1” Risk Group

More Related