×
What ‘GDDR7’ is and why it promises performance gains for AI
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

The rise of GDDR7 memory in AI inference: GDDR7, the latest graphics memory solution, is set to revolutionize AI inference with its exceptional bandwidth and low latency capabilities, making it ideal for AI-powered edge and endpoint devices.

  • GDDR7 offers a performance roadmap of up to 48 Gigatransfers per second (GT/s) and memory throughput of 192 GB/s per device, significantly outperforming previous generations.
  • This new memory standard is expected to be utilized in the next generation of GPUs and accelerators for AI inference workloads.

AI training vs. inference requirements: While AI training demands high memory bandwidth and capacity, inference prioritizes throughput speed and low latency, especially for real-time applications.

  • AI training models are growing in size and complexity at a rate of 10X per year, necessitating enormous amounts of data and specialized silicon solutions.
  • Inference engines need to process various media types, including text, images, speech, music, and video, often in real-time scenarios.

GDDR7’s bandwidth advantage: The new memory standard offers exceptional bandwidth capabilities, making it particularly suitable for demanding AI inference workloads.

  • At a data rate of 32 GT/s and a 32-bit wide interface, a GDDR7 device can deliver 128 GB/s of memory bandwidth.
  • This performance is more than double that of memory solutions like LPDDR5T, positioning GDDR7 as a top choice for AI applications.

Technical advancements in GDDR7: The latest iteration of GDDR memory introduces several key improvements over its predecessor, GDDR6.

  • GDDR7 employs three-bit pulse amplitude modulating (PAM3) encoding, allowing for a 50% increase in data transmission compared to GDDR6 at the same clock speed.
  • The JEDEC specification for GDDR7 allows for future expansion of data rates up to 48 GT/s, with initial devices expected to run at around 32 GT/s.
  • Enhanced reliability features include on-die ECC with real-time reporting, data poison, error check and scrub, and command address parity with command blocking (CAPARBLK).
  • GDDR7 uses four 10-bit channels (8 bits data, 2 bits error reporting), compared to GDDR6’s two 16-bit channels.

Rambus GDDR7 Controller IP: This controller is designed to leverage the full potential of GDDR7 memory in high-performance applications.

  • The controller supports GDDR7 performance of up to 40 GT/s and 160 GB/s of available bandwidth per memory device.
  • It offers compatibility with all GDDR7 link features, including PAM3 and NRZ signaling, CRC with retry for reads and writes, data scramble, data poison, clamshell mode, and DQ logical remap.
  • The controller accepts commands using AXI or a simple local interface and supports all low-power modes.

Implications for AI acceleration: The advent of GDDR7 memory is poised to significantly impact the development and deployment of AI inference solutions.

  • As AI inference models grow in size and sophistication, the demand for more powerful AI accelerators and GPUs in edge servers and client PCs increases.
  • GDDR7’s combination of high bandwidth and low latency makes it an excellent choice for keeping these inference processors and accelerators supplied with data efficiently.
  • This advancement in memory technology is likely to enable more complex and responsive AI applications at the edge, potentially opening up new use cases and improving existing ones.
GDDR7 Memory Supercharges AI Inference

Recent News

How AI is addressing social isolation and loneliness in aging populations

AI chatbots and virtual companions are being tested as tools to combat isolation, though experts emphasize they should complement rather than replace human relationships.

Breaking up Big Tech: Regulators struggle to manage AI market concentration

Regulators worldwide struggle to check tech giants' growing power as companies rapidly consolidate control over AI and digital markets.

How mathematicians are incorporating AI assistants into their work

AI tools are helping mathematicians develop and verify complex proofs, marking the most significant change in mathematical research methods since computer algebra systems.