GSI Technology Introduces Python-Based Copperhead Compiler Suite to Unleash the Full Power of Gemini APU for Flexible AI and High-Performance Computing
10 August 2023 - 8:00PM
GSI Technology, Inc. (Nasdaq: GSIT), developer of the
Gemini® Associative Processing Unit (APU) for AI and
high-performance parallel computing (HPPC) and a leading provider
of high-performance memory solutions for the networking,
telecommunications, and military markets, today announced the
beta launch of its Copperhead compiler stack. This technology is
specifically designed to complement the Gemini APU, an innovative
compute-in-memory device engineered to excel in high-performance,
low-power applications such as search, generative AI retrieval,
HPPC, and more.
The Copperhead compiler suite, a Python-based tool, unlocks the
full potential of the Gemini APU's impressive capabilities,
including its associative, massively parallel, non-Von-Neumann
bit-processing. This tool empowers developers to create custom
frameworks at bit-level granularity, facilitating the simulation
and execution of new algorithms that will run at remarkable speeds
on currently available production APU hardware.
“GSI Technology, Inc. is proud to unveil the Copperhead Compiler
Suite for the Gemini APU, revolutionizing computing power and
bringing unprecedented advancements to the AI and HPPC industry,”
said Lee-Lean Shu, CEO and Chairman of GSI Technology. “Built upon
LPython, Copperhead's pioneering flexible framework innovation
combines Python's user-friendliness with APU performance at least
as fast as writing in C language. This empowers developers to
create algorithms tailored for a diverse spectrum of
applications.”
Copperhead seamlessly integrates LPython, a user-friendly
open-source compiler, combining the ease and familiarity of Python
programming with code performance comparable to C. Developers can
create optimum data frameworks to harness Gemini APU's unique
capabilities for their algorithms. The Copperhead suite also works
seamlessly with already available Gemini APU libraries, enabling
rapid application development. GSI will be open sourcing the
emulation tools of Copperhead to enable community development of
applications and libraries for the AI and HPPC markets.
Empowering Developers with Programmable
Frameworks: Gemini APU's bit-programmable microcode sets
it apart. Copperhead offers algorithm architects pure-Python
emulators and specialized DSLs, boosting innovation by allowing
easy experimentation with various data types.
Accelerated Performance: Copperhead empowers
programmers to prototype and debug APU application code exclusively
in Python. With optimized compilation and testing, applications
achieve impressive speeds on the device, often surpassing emulator
speeds by over 1,000 times. For example, Conway’s Game of Life
running at about 300FPS in emulation, runs at 13 million FPS on the
APU.
Leveraging Open Source Power: Open source plays
a pivotal role, enhancing both execution speed and development and
LPython's evolution benefits from contributions by open-source
developers. This approach fosters ongoing optimization and
development improvements.
Together, the Gemini APU and Copperhead Compiler Suite give
developers resources to create groundbreaking solutions,
representing a significant leap forward in utilizing the computing
power of the Gemini APU and enabling diverse applications to
thrive.
To learn more about GSI’s Gemini APU , visit
https://www.gsitechnology.com/compute
To learn more about LPython, visit
https://github.com/lcompilers/lpython
To get access to the Copperhead compiler suite, please email
apucompiler@gsitechnology.com
ABOUT GSI TECHNOLOGY
Founded in 1995, GSI Technology, Inc. is a leading
provider of semiconductor memory solutions. The Company recently
launched radiation-hardened memory products for extreme
environments in space and the Gemini® Associative Processing
Unit (APU), a memory-centric design that delivers significant
performance advantages for diverse AI applications. The Gemini APU
architecture removes the I/O bottleneck between the processors and
memory arrays by performing massive parallel searches directly in
the memory array where data is stored. The novel architecture
delivers performance-over-power ratio improvements compared to CPU,
GPU, and DRAM for applications like image detection, speech
recognition, e-commerce recommendation systems, and more. Gemini is
an ideal solution for edge applications with a scalable format,
small footprint, and low power consumption where rapid, accurate
responses are critical. For more information, please
visit www.gsitechnology.com.
Forward-Looking Statements
The statements contained in this press release that are not
purely historical are forward-looking statements within the meaning
of Section 21E of the Securities Exchange Act of 1934, as amended,
including statements regarding GSI Technology's expectations,
beliefs, intentions, or strategies regarding the future. All
forward-looking statements included in this press release are based
upon information available to GSI Technology as of the date hereof,
and GSI Technology assumes no obligation to update any such
forward-looking statements. Forward-looking statements involve a
variety of risks and uncertainties, including the effectiveness of
newly developed software programs and tools and customer adoption
of such programs and tools and related hardware products, any of,
which could cause actual results to differ materially from those
projected. Further information regarding these and other risks
relating to GSI Technology's business is contained in the Company's
filings with the Securities and Exchange Commission, including
those factors discussed under the caption "Risk Factors" in such
filings.
Contacts:
Investor RelationsHayden IRKim
Rogers385-831-7337Kim@HaydenIR.com
Media RelationsFinn Partners for GSI
TechnologyRicca Silverio(415) 348-2724gsi@finnpartners.com
CompanyGSI Technology, Inc.Douglas M.
SchirleChief Financial Officer408-331-9802
GSI Technology (NASDAQ:GSIT)
Historical Stock Chart
Von Dez 2024 bis Jan 2025
GSI Technology (NASDAQ:GSIT)
Historical Stock Chart
Von Jan 2024 bis Jan 2025