"Alan: Sure, yep, so one of the things that we felt like on MI350 in this timeframe, that it's going into the market and the current state of AI... we felt like that FP6 is a format that has potential to not only be used for inferencing, but potentially for training. And so we wanted to make sure that the capabilities for FP6 were class-leading relative to... what others maybe would have been implementing, or have implemented. And so, as you know, it's a long lead time to design hardware, so we were thinking about this years ago and wanted to make sure that MI350 had leadership in FP6 performance. So we made a decision to implement the FP6 data path at the same throughput as the FP4 data path. Of course, we had to take on a little bit more hardware in order to do that. FP6 has a few more bits, obviously, that's why it's called FP6. But we were able to do that within the area of constraints that we had in the matrix engine, and do that in a very power- and area-efficient way.
the main question is going to be software stack. NVIDIA is already shipping NVFP4 kernels and perf is looking good. It took a really long time after MI300X's that the FP8 kernels were OK (not even good, compared to almost perfect FP8 support in NVIDIA side of things).
I will doubt that they will be able to reach %60-70 of the FLOPs in majority of the workloads (unless they hand craft and tune a specific GEMM kernel for their benchmark shape). But would be happy to be proven wrong, and go buy a bunch of them
"We've been negotiating a $2M contract to get AMD on MLPerf, but one of the sticking points has been confidentiality. Perhaps posting the deliverables on X will help legal to get in the spirit of open source!"
"Contract is signed! No confidentiality, AMD has leadership that's capable of acting. Let's make this training run happen, we work in public on our Discord.
It still amazes me that George/Tinycorp somehow seems to get AMD on board every time, and being blissfully unaware that they are a very small player. See for example top comment here [0].
Don't get me wrong, I think it's impressive what he achieved so far, and I hope tiny can stay competitive in this market.
That top comment doesn't seem to have engaged completely with the context here. AMD fumbled trillions of dollars of value creation by mis-identifying what their hardware was for. Or perhaps it is more correct to say by being too dogmatic about what their hardware is for. They weren't in a position to be picky. They had a choice - they could continue making trillion-dollar mistakes until their board got sacked and the exec team replaced. Or they could maybe listen to some of the people who were technically correct regardless of their size in the market.
George is just some dude and I doubt AMD paid him much attention anywhere through this saga, but AMD had screwed up to the point where he could give some precise commentary about how they'd managed to duck and weave to avoid the overwhelming torrent of money trying to rush in and buy graphics hardware. They should make some time in their busy schedules to talk with people like that.
People get on board with George Hotz because they share the frustration of using ROCm on consumer GPUs, where the experience has been insultingly dreadful to the point where I decided to postpone buying new AMD GPUs for at least a decade.
I'm not quite sure why he decided to pivot to datacenter GPUs where AMD has shown at least some commitment to ROCm. The intersection between users of tinygrad and people who use MI350s should essentially be George himself and no one else.
Most of those willing to work with AMD are very small players (with some notable exceptions). They are likely hopeful that the small players will grow.
Does this also ship only in x8 batches? I really liked MI300 and could afford
one of them for my research, but they only come in batches of x8 in a server rack, so I decided to buy an RTX Pro 6000.
These ppl are very loud online, but they don't make decisions for hyperscalers which are biggest spenders on AI chips.
AMD is doing just fine, Oracle just announced an AI cluster with up to 131,072 of AMD's new MI355X GPUs.
AMD needs to focus on bringing rack-scale mi400 as quickly as possible to market, rather than those hobbyists always find something to complain instead of spending money.
we're talking about the majority of open source developers (I'm one of them). if researchers don't get access to hardware X, they write their paper using hardware Y (Nvidia). AMD isn't doing fine because most low level research on AI is done purely on CUDA.
So nVidia has a huge software lead because of open source developers like you? Or because people employed by nVidia write closed source high performance drivers and kernels? Or because the people employed by Meta and Google that wrote Torch and Tensorflow built it on nVidia?
I am really sympathetic to the complaints. It would just be incredibly useful to have competition and options further down the food chain. But the argument that this is a core strategic mistake makes no sense to me.
Nit: just writing Torch/TF isn't what made the difference. Having them adopted by a huge audience outside those orgs is, and that's bottlenecked on the hardware platform choice.
AMD has demonstrably not even acknowledged that they needed to play catch-up for a significant chunk of the last 20 years. The mistake isn't a recent one.
Look at China. A couple of years ago people thought people in China weren't doing good AI research, but the thing is, there's good AI research from basically everywhere-- even South America. You can't assume that institutions can spend >$250k on computational resources.
Neither their revenue nor their market share in the space looks like just fine. What exactly in trailing the market for years is “just fine”?
AMD is very far behind, and their earnings are so low that even with a nonsensical pe ratio they’re still less than a tenth of nvidia. No, they are not doing anywhere near fine.
Are hobbyists the reason for this? I’m not sure. However, what AMD is doing is clearly failing.
A big chunk of NVidia's current price is a reflection of lacking meaningful competition. So straight comparison isn't quite fair: if AMD started to do better, the gap would shrink from both ends.
When you design software for N customers, where N is very small, and you expect to hold each customers' hand individually, the software is basically guaranteed to be hot garbage that doesn't generalize or actually work except in exactly the use cases you supported (there are exceptions to this, but it requires having exceptional software engineers and leaders that care about doing things correctly and not just closing the next ticket, and in my experience, they are extremely rare).
If you design software for N00000 customers, it can't be shit, because you can't hold the hands of that many people, it's just not possible. By intending to design software for a wide variety of users, it forces you to make your software not suck, or you'll drown in support requests that you cannot possibly handle.
Honestly, if they "don't have the resources to satisfy N00000 customers", they better get them. That will teach them in the hard way to work differently.
> These ppl are very loud online, but they don't make decisions for hyperscalers which are biggest spenders on AI chips.
this guy gets it - absolutely no one cares about the hobby market because it's absolutely not how software development is done (nor is it how software is paid for).
The hobby market should be considered as a pipeline to future customers. It doesn't mean AMD should drop everything and cater specifically to them, but they'd be foolish to ignore them altogether.
Water is wet. Please check the history of their software stack and why it always was superior to alternatives when they didn't have a lot more money than ATI/AMD. The reason they power hyperscalers is because they catered to enthusiasts and academy researchers attempting to use their GPUs for general purpose computations in early 2000s, since GeForce 3. Then they used that experience to build CUDA which simply worked, and quickly gained mindshare. People have used their software for all imaginable purposes, which was a major factor behind their improvements and eventually becoming market leaders as killer applications for GPGPU have been found (simulation and then AI). This experience is not replicable even with dogfooding, which AMD also doesn't seem to do.
no we're not broke! we constantly write grants and receive funding from various sources. guess what hardware we recommend the University to purchase? it's 99.9% Nvidia, and sometimes Mac Studio just to play with MLX.
It has gone through many boom and busy cycles. If you go far back enough, it was very well funded. In particular, I recall reading about the US government investing 1 to 2 billion dollars during the Cold War into AI research to translate Russian into English. It had some very impressive demos on preselected Russian texts that had justified the investments. However, it failed to yield results on arbitrary texts. The translation problem has only been mostly solved in recent years.
A number of people want to purchase their own hardware, not rent cloud hardware. I recently purchased a RTX PRO 6000 for the same reason, despite having the option of renting a B200 VM for $1.49 an hour from DeepInfra until the end of June.
True, but as time goes on, it will become a wider and wider gap between what is deployed in DC’s and what you can run at home.
We see it now with 8x UBB and it will get worse with direct liquid cooling and larger power requirements. Mi300x is 700w. Mi355 is 1200w. Mi450 will be even more.
Certainly amd should make some consumer grade stuff, but they won’t stop on the enterprise side either. Your only option to get super computer level compute, will be to rent it.
The higher power requirements of datacenter GPUs are mostly from running hardware well past a reasonable point on the efficiency curve to eke slightly higher generational increases in performance. Nvidia for example has three versions of the RTX PRO 6000. One runs at 600W while the other two run at 300W. The main differences are the power target and the cooling solutions. If I recall correctly, the performance difference between them is less than 20%, despite a 50% reduction in power consumption, for what is effectively the same hardware. This can be confirmed by changing the power target of the 600W version to 300W and benchmarking the before and after. Plenty of people have made similar observations of AMD’s hardware.
That said, I am confident that Nvidia will continue serve those of us who want our own hardware.
Your comment does not make much sense to me. The 355x and 300x are two different chips, not binned versions of one another. The RTX PRO 6000 has fp4/fp6 support too, so there is no need to use datacenter exclusive hardware to get that.
If MI350 employs CDNA, which is based on the VEGA (GCN) architecture, does that imply that MI400, when introduced next year, will skip the 2020 GCN and directly transition to RDNA 5 equivalent?
There will be no RDNA 5, but a unified UDNA, replacing both CDNA and RDNA.
AMD has not disclosed how they will achieve the unification, but it is far more likely that the unified architecture will be an evolution of CDNA 4, i.e. an evolution of the old GCN, than an evolution of RDNA, because basing the unified architecture on CDNA/GCN, will create less problems in software porting than basing it on RDNA 4 or 3. The unified architecture will probably take some features from RDNA only when they are hard to emulate on CDNA.
While the first generation of RDNA has been acclaimed for having a good performance increase in games over the previous GCN-based Vega, it is not clear how much of that performance increase was due to RDNA being better for games and how much to the fact that the first RDNA GPUs happened to have double-width vector pipelines in comparison with the previous GCN GPUs, thus double throughput per clock cycle and per CU (32 FP32 operations/cycle vs. 16 FP32 operations/cycle).
It is possible that RDNA was not really a better architecture, but omitting some of the hardware that was rarely used in games from GCN allowed the implementation of the wider pipelines that were more useful for games. So RDNA was a better compromise for the technology available at that time, not necessarily better in other circumstances.
I heard the opposite. The next is gfx13 and that it is more like RDNA with more bolted on. Which makes sense given the version numbers. MI350 is still gfx943 or gfx950. RX 9070 XT is gfx1201.
The identification of the AMD GPU architectures has always been extremely confusing, with tons of different names meaning the same thing and with some names, like GCN, used for several very different things.
The table linked by you is good for revealing the meaning of a part of the many AMD code names.
On the consumer side, almost certainly not. Nvidia is a HUGE brand name, it doesn't matter how good and cheap AMD makes their consumer GPUs, people will buy Nvidia GPUs for the brand and prebuilts will stick with Nvidia for the name.
For AI chips... also probably not, unless AMD can compete with CUDA (or CUDA becomes irrelevant)
Actually both Xbox and Playstation use AMD GPUs; and so does the Steam Deck. So there's that.
For the narrow niche of gaming PCs, I think there are a lot of kids buying what they can afford and getting creative about what works. AMD isn't doing horrible in that market either.
And for AI, CUDA is already becoming less relevant. Most of the big players use chips by their own designs: Google has its TPUs, Amazon has some in house designs, Apple has it's own CPU/GPU line and doesn't even support anything nvidia at this point, MS do their own thing for Azure, etc.
You are basically making the Intel will stay big because Intel is big for Nvidia. Except of course that stopped being true for Intel. They are still largish. But a lot of data centers are transitioning to ARM CPUs. They lost Apple as a customer. And there are now some decent windows laptops using ARM CPUs as well.
People learning on their laptops, into their way of becoming future researchers, care about what software they can get, regardless of closed system proprietary game consoles, and hyperscalers server farms.
> On the consumer side, almost certainly not. Nvidia is a HUGE brand name, it doesn't matter how good and cheap AMD makes their consumer GPUs, people will buy Nvidia GPUs for the brand and prebuilts will stick with Nvidia for the name.
I think that AMD could do it, but they choose not to. If you look at their most recent lineup of cards (various SKUs of 9070 and 9060), they are not so much better than Nvidia at each price point that they are a must buy. They even released an outright bad card a few weeks ago (9060 8 GB). I assume that the rationale is that even if they could somehow dominate the gamer market, that is peanuts compared to the potential in AI.
Not for me, I was burned twice buying laptops with AMD only to battle with their software, and even the FOSS drivers on GNU/Linux weren't that great versus the Windows experience.
While on Windows it has been hit and miss with their SDKs and shader tooling, anyone remembers RenderMonkey?
Ten years ago nobody would belive that AMD would have over double Intel's market cap in 2025. And at least somewhat surprised that nVidia would be about 10x that.
the only way for them to have any chance at catch up is to fire all the software VPs and all SW middle management, and 90% of the engineers and build the software team from ground up.
cause the team they have the last decade is clearly retarded.
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