Skip to content

Booksellers & Trade Customers: Sign up for online bulk buying at trade.atlanticbooks.com for wholesale discounts

Booksellers: Create Account on our B2B Portal for wholesale discounts

RISC-V Parallel SIMD and MIMD: Programming and Processing

by Przemyslaw Bakowski
Sold out
₹2,090.00
Original price ₹2,090.00
Original price ₹2,090.00
₹2,090.00
Current price ₹2,090.00

Imported Edition - Ships in 18-21 Days

Free Shipping in India on orders above Rs. 500

Request Bulk Quantity Quote
+91
Book cover type: Paperback
  • ISBN13: 9798263249236
  • Binding: Paperback
  • Subject: N/A
  • Publisher: Independently Published
  • Publisher Imprint: Independently Published
  • Publication Date:
  • Pages: 126
  • Original Price: USD 20.0
  • Language: English
  • Edition: N/A
  • Item Weight: 241 grams
  • BISAC Subject(s): Programming / General

In this book, we present a series of examples in parallel programming and processing.
For each example, we measure execution time and analyze the resulting speedup across different
algorithms and execution modes.

In the introductory part, we outline the content, objectives, methodology, and overall organization of
the book. Each chapter is structured as a laboratory session containing a sequence of practical
examples.

Lab 1 introduces the essential elements of assembly programming on RISC-V.

Labs 2 and 3 focus on vector processing (SIMD). We begin with simple kernels-vector addition, dot
product, and matrix multiplication-then move to more demanding tasks such as π approximation and
a basic FFT filter. Serial baselines are written in C, while vectorized versions are implemented in
RISC-V assembly using the vector extension.

In Labs 4 and 5, we turn to image processing, starting with simple image negation and advancing to
color-space conversion. Each task is implemented both serially and with vectorization to quantify
potential speedups. Image I/O (decode/encode) is handled with OpenCV. We also explore dynamic
image generation using OpenGL, rendering directly into video memory. As with static images, we
record runtimes and evaluate speedups.

Lab 6 introduces OpenMP to leverage multicore (MIMD) parallelism with threads. We revisit several
workloads-π computation, matrix multiplication, and Mandelbrot rendering-and compare
performance across execution modes.

In Lab 7, we explicitly contrast scalar (SISD), vector (SIMD), and multicore (MIMD) implementations
using the π example. Finally, we demonstrate combined MIMD�SIMD approaches for π calculation
and matrix multiplication. In all cases, we report speedups as a function of problem size to highlight
scaling behavior and the practical benefits of each technique.

Trusted for over 49 years

Family Owned Company

Secure Payment

All Major Credit Cards/Debit Cards/UPI & More Accepted

New & Authentic Products

India's Largest Distributor

Need Support?

Whatsapp Us