3Dwarrior
SOCIAL:
Filed under: 5nm, 5nm GPUs, Ada Lovelace, Ada Lovelace GPUs, Featured, GeForce, GeForce RTX, GeForce RTX 40, Hardware, News, nVidia, NVIDIA 5nm, NVIDIA 5nm GPUs, NVIDIA ADA Lovelace, NVIDIA Ada Lovelace GPUs, Nvidia GeForce, NVIDIA GeForce RTX, NVIDIA GeForce RTX 40, NVIDIA RTX, NVIDIA RTX 40, Report, RTX, RTX 40, Rumor, Sticky

NVIDIA Spends Big Money To Acquire TSMC’s 5nm Wafers For…

NVIDIA Spends Huge Dollars To Acquire TSMC's 5nm Wafers For Next-Gen GeForce RTX forty 'Ada Lovelace' GPUs

NVIDIA has allegedly gone on a big spending spree to get some of TSMC’s next-gen 5nm wafer supply for its following-gen GeForce RTX 40 ‘Ada Lovelace’ GPUs.

NVIDIA Goes on TSMC 5nm Paying Spree, Billions of Pounds Compensated To Obtain Wafers For GeForce RTX forty ‘Ada Lovelace’ GPUs

NVIDIA’s Ada Lovelace GPUs powering the following-era GeForce RTX 40 collection graphics card lineup are expected to utilize TSMC’s 5nm system node. Both AMD and NVIDIA are expected to benefit from the node for its up coming-gen lineup but it appears like NVIDIA is incredibly severe in earning sure they get adequate wafer supply for its lineup and as this sort of, they have compensated the Taiwanese semiconductor producer a number of Billions of dollars as an innovative payment for 5nm wafers.

According to business resources, TSMC’s needs for Apple, MediaTek, AMD and other 3 major consumers are comparatively reduced. They do not need to pay out far too much deposit in progress to stabilize output capacity. Customers like NVIDIA need to spend huge advance payments in advance if they want to obtain 5nm production orders.

through MyDrivers (Machine Translated)

MyDrivers experiences that NVIDIA has prepaid TSMC all around $one.sixty four Billion US in Q3 2021and will pay $1.seventy nine Billion US in Q1 2022. The full lengthy-phrase ‘Multi-Billion’ dollar offer is set to price tag NVIDIA an crazy $6.nine Billion US which is substantially increased than what they compensated final calendar year. NVIDIA will not just use this income to procure wafer offer from TSMC but also from Samsung but it seems like that the majority of the sum will be used on TSMC’s 5nm know-how.

NVIDIA GeForce RTX 4090 Graphics Card – Ada Lovelace Run AD102 Flagship GPU

Primarily based upon previous rumors, there have been whispers that NVIDIA would use TSMC’s N5 (5nm) system node for its Ada Lovelace GPUs. This includes the AD102 SKU also which will be an solely monolithic structure. Chatting about unique GPU configurations, the flagship AD102 GPU is reported to feature a clock speed as superior as two.five GHz (two.three GHz average increase). The specific tweet states that the GPU clock for Ada Lovelace ‘AD102’ could be 2.three GHz or better so let’s take that as a baseline and previously leaked specifications to determine out the place the effectiveness really should land.

The NVIDIA AD102 “ADA GPU” appears to have 18432 CUDA Cores dependent on the preliminary specs (which can modify), housed inside of one hundred forty four SM units. This is nearly 2 times the cores present in Ampere which was presently a enormous phase up from Turing. A two.three-two.five GHz clock velocity would give us up to 85 to 92 TFLOPs of compute overall performance (FP32). This is a lot more than 2 times the FP32 performance of the present RTX 3090 which packs 36 TFLOPs of FP32 compute electric power.

The 150% effectiveness bounce seems to be large but one really should keep in mind that NVIDIA already gave a major bounce in FP32 numbers this technology with Ampere. The Ampere GA102 GPU (RTX 3090) delivers 36 TFLOPs even though the Turing TU102 GPU (RTX 2080 Ti) supplied thirteen TFLOPs. Which is about a a hundred and fifty% boost in FP32 Flops but the authentic-earth gaming general performance increase for the RTX 3090 averaged at all-around fifty-60% quicker over the RTX 2080 Ti. So a person issue we should not forget is that Flops will not equivalent GPU gaming overall performance these times. On top of that, we will not know if 2.three-two.five GHz is the typical raise or the peak enhance with the previous indicating that there could be even higher compute prospective for AD102.

Aside from that, leaks have also said that the NVIDIA GeForce RTX 40 flagship would keep a 384-bit bus interface, similar to the RTX 3090. What is actually exciting is however that the leaker mentions G6X which usually means that NVIDIA is not going to be going to a new memory regular until finally after Ada Lovelace and benefit from the better pin-speeds of G6X of 21 Gbps for its up coming-era cards in advance of we see a newer regular (e.g. GDDR7). The card will attribute 24 GB of memory so we can both expect one-sided 16Gb DRAM or twin-sided 8Gb DRAM modules.

NVIDIA CUDA GPU (RUMORED) Preliminary:

GPU TU102 GA102 AD102
Architecture Turing Ampere Ada Lovelace
Process TSMC 12nm NFF Samsung 8nm 5nm
Graphics Processing Clusters (GPC) 6 7 twelve
Texture Processing Clusters (TPC) 36 42 seventy two
Streaming Multiprocessors (SM) 72 84 a hundred and forty four
CUDA Cores 4608 10752 18432
Theoretical TFLOPs 16.1 37.6 ~ninety TFLOPs?
Memory Kind GDDR6 GDDR6X GDDR6X
Memory Bus 384-bit 384-bit 384-bit
Memory Capacity 11 GB (2080 Ti) 24 GB (3090) 24 GB (4090?)
Flagship SKU RTX 2080 Ti RTX 3090 RTX 4090?
TGP 250W 350W 450-650W?
Release Sep. 2018 Sept. twenty 2022 (TBC)

The NVIDIA Ada Lovelace GPUs will electricity the following-generation GeForce RTX forty graphics cards that will go head-on with AMD’s RDNA three centered Radeon RX 7000 sequence graphics playing cards. You can find nevertheless some speculation about the use of MCM by NVIDIA. The Hopper GPU, which is mostly aimed at the Datacenter & AI section, is allegedly taping out shortly and will aspect an MCM architecture. NVIDIA is not going to be using an MCM style and design on its Ada Lovelace GPUs so they will keep the standard monolithic style and design.

Which subsequent-era GPUs are you hunting ahead to the most?

The submit NVIDIA Spends Major Income To Receive TSMC’s 5nm Wafers For Subsequent-Gen GeForce RTX 40 ‘Ada Lovelace’ GPUs by Hassan Mujtaba appeared initial on Wccftech.