On Tue, 8 Aug 2023, 10:45 Tilman Bayer, <haebw...@gmail.com> wrote:
> > Hi Chris, > > On Mon, Aug 7, 2023 at 11:51 AM Chris Albon <cal...@wikimedia.org> wrote: > >> Hi Tilman, >> >> Most of the work is still very experimental. We have hosted a few LLMs on >> Lift Wing already (StarCoder for example) but they were just running on >> CPU, far too slow for real use cases. But it proves that we can easily host >> LLMs on Lift Wing. We have been pretty quiet about it while we focus on the >> ORES migration, but it is our next big project. More soon hopefully! >> > Understood. Looking forward to learning more later! > > >> Where we are now is that we have budget for a big GPU purchase (~10-20 >> GPUs depending on cost), the question we will try to answer after the ORES >> migration is complete is: what GPUs should we purchase? We are trying to >> balance our strong preference to stay open source (i.e. AMD mROC) in a >> world dominated by a single closed source vendor (i.e. Nvidia). In >> addition, do we go for a few expensive GPUs better suited to LLMs (A1000, >> H100, etc) or a mix of big and small? We will need to figure out all this. >> > I see. On that matter, what do you folks make of the recent announcements > of AMD's partnerships with Hugging Face and Pytorch[5]? (which, I > understand, came after the ML team had already launched the aforementioned > new AMD explorations) > > "Open-source AI: AMD looks to Hugging Face and Meta spinoff PyTorch to > take on Nvidia [...] > Both partnerships involve AMD’s ROCm AI software stack, the company’s > answer to Nvidia’s proprietary CUDA platform and application-programming > interface. AMD called ROCm an open and portable AI system with > out-of-the-box support that can port to existing AI models. [...B]oth AMD > and Hugging Face are dedicating engineering resources to each other and > sharing data to ensure that the constantly updated AI models from Hugging > Face, which might not otherwise run well on AMD hardware, would be > “guaranteed” to work on hardware like the MI300X. [...] AMD said PyTorch > will fully upstream the ROCm software stack and “provide immediate ‘day > zero’ support for PyTorch 2.0 with ROCm release 5.4.2 on all AMD Instinct > accelerators,” which is meant to appeal to those customers looking to > switch from Nvidia’s software ecosystem." > > > In their own announcement, Hugging Face offered further details, including > a pretty impressive list of models to be supported:[6] > > > "We intend to support state-of-the-art transformer architectures for > natural language processing, computer vision, and speech, such as BERT, > DistilBERT, ROBERTA, Vision Transformer, CLIP, and Wav2Vec2. Of course, > generative AI models will be available too (e.g., GPT2, GPT-NeoX, T5, OPT, > LLaMA), including our own BLOOM and StarCoder models. Lastly, we will also > support more traditional computer vision models, like ResNet and ResNext, > and deep learning recommendation models, a first for us. [..] We'll do our > best to test and validate these models for PyTorch, TensorFlow, and ONNX > Runtime for the above platforms. [...] We will integrate the AMD ROCm SDK > seamlessly in our open-source libraries, starting with the transformers > library." > > > Do you think this may promise too much, or could it point to a possible > solution of the Foundation's conundrum? > In any case, this seems to be an interesting moment where many in AI are > trying to move away from Nvidia's proprietary CUDA platform. Most of them > probably more for financial and availability reasons though, given the > current GPU shortages[7] (which the ML team is undoubtedly aware of > already; mentioning this as context for others on this list. See also > Marketwatch's remarks about current margins[5]). > > Regards, Tilman > > > [5] > https://archive.ph/2023.06.15-173527/https://www.marketwatch.com/amp/story/open-source-ai-amd-looks-to-hugging-face-and-meta-spinoff-pytorch-to-take-on-nvidia-e4738f87 > [6] https://huggingface.co/blog/huggingface-and-amd > [7] See e.g. > https://gpus.llm-utils.org/nvidia-h100-gpus-supply-and-demand/ (avoid > playing the song though. Don't say I didn't warn you) > > >> I wouldn't characterize WMF's Language Team using CPU as because of AMD, >> rather at the time we didn't have the budget for GPUs so Lift Wing didn't >> have any. Since then we have moved two GPUs onto Lift Wing for testing but >> they are pretty old (2017ish). Once we make the big GPU purchase Lift Wing >> will gain a lot of functionality for LLM and similar models. >> >> Chris >> >> On Sun, Aug 6, 2023 at 9:57 PM Tilman Bayer <haebw...@gmail.com> wrote: >> >>> On Thu, Aug 3, 2023 at 7:16 AM Chris Albon <cal...@wikimedia.org> wrote: >>> >>>> Hi everybody, >>>> >>>> TL;DR We would like users of ORES models to migrate to our new open >>>> source ML infrastructure, Lift Wing, within the next five months. We are >>>> available to help you do that, from advice to making code commits. It is >>>> important to note: All ML models currently accessible on ORES are also >>>> currently accessible on Lift Wing. >>>> >>>> As part of the Machine Learning Modernization Project ( >>>> https://www.mediawiki.org/wiki/Machine_Learning/Modernization), the >>>> Machine Learning team has deployed a Wikimedia’s new machine learning >>>> inference infrastructure, called Lift Wing ( >>>> https://wikitech.wikimedia.org/wiki/Machine_Learning/LiftWing). Lift >>>> Wing brings a lot of new features such as support for GPU-based models, >>>> open source LLM hosting, auto-scaling, stability, and ability to host a >>>> larger number of models. >>>> >>> >>> This sounds quite exciting! What's the best place to read up on that >>> planned support for GPU-based models and open source LLMs? (I also saw in >>> the recent NYT article[1] that the team is "in the process of adapting A.I. >>> models that are 'off the shelf; — essentially models that have been made >>> available by researchers for anyone to freely customize — so that >>> Wikipedia’s editors can use them for their work.") >>> >>> I'm aware of the history[2] of not being able to use NVIDIA GPUs due to >>> their CUDA drivers being proprietary. It was mentioned recently in the >>> Wikimedia AI Telegram group that this is still a serious limitation, >>> despite some new explorations with AMD GPUs[3] - to the point that e.g. the >>> WMF's Language team has resorted to using models without GPU support (CPU >>> only).[4] >>> It sounds like there is reasonable hope that this situation could change >>> fairly soon? Would it also mean both at the same time, i.e. open source >>> LLMs running with GPU support (considering that at least some >>> well-known ones appear to require torch.cuda.is_available() == True for >>> that)? >>> >>> Regards, Tilman >>> >>> [1] >>> https://www.nytimes.com/2023/07/18/magazine/wikipedia-ai-chatgpt.html >>> [2] >>> https://techblog.wikimedia.org/2020/04/06/saying-no-to-proprietary-code-in-production-is-hard-work-the-gpu-chapter/ >>> [3] https://phabricator.wikimedia.org/T334583 etc. >>> [4] >>> https://diff.wikimedia.org/2023/06/13/mint-supporting-underserved-languages-with-open-machine-translation/ >>> or https://thottingal.in/blog/2023/07/21/wikiqa/ (experimental but, I >>> understand, written to be deployable on WMF infrastructure) >>> >>> >>>> >>>> With the creation of Lift Wing, the team is turning its attention to >>>> deprecating the current machine learning infrastructure, ORES. ORES served >>>> us really well over the years, it was a successful project but it came >>>> before radical changes in technology like Docker, Kubernetes and more >>>> recently MLOps. The servers that run ORES are at the end of their planned >>>> lifespan and so to save cost we are going to shut them down in early 2024. >>>> >>>> We have outlined a deprecation path on Wikitech ( >>>> https://wikitech.wikimedia.org/wiki/ORES), please read the page if you >>>> are a maintainer of a tool or code that uses the ORES endpoint >>>> https://ores.wikimedia.org/). If you have any doubt or if you need >>>> assistance in migrating to Lift Wing, feel free to contact the ML team via: >>>> >>>> - Email: m...@wikimedia.org >>>> - Phabricator: #Machine-Learning-Team tag >>>> - IRC (Libera): #wikimedia-ml >>>> >>>> The Machine Learning team is available to help projects migrate, from >>>> offering advice to making code commits. We want to make this as easy as >>>> possible for folks. >>>> >>>> High Level timeline: >>>> >>>> **By September 30th 2023: *Infrastructure powering the ORES API >>>> endpoint will be migrated from ORES to Lift Wing. For users, the API >>>> endpoint will remain the same, and most users won’t notice any change. >>>> Rather just the backend services powering the endpoint will change. >>>> >>>> Details: We'd like to add a DNS CNAME that points ores.wikimedia.org >>>> to ores-legacy.wikimedia.org, a new endpoint that offers a almost >>>> complete replacement of the ORES API calling Lift Wing behind the scenes. >>>> In an ideal world we'd migrate all tools to Lift Wing before >>>> decommissioning the infrastructure behind ores.wikimedia.org, but it >>>> turned out to be really challenging so to avoid disrupting users we chose >>>> to implement a transition layer/API. >>>> >>>> To summarize, if you don't have time to migrate before September to >>>> Lift Wing, your code/tool should work just fine on >>>> ores-legacy.wikimedia.org and you'll not have to change a line in your >>>> code thanks to the DNS CNAME. The ores-legacy endpoint is not a 100% >>>> replacement for ores, we removed some very old and not used features, so we >>>> highly recommend at least test the new endpoint for your use case to avoid >>>> surprises when we'll make the switch. In case you find anything weird, >>>> please report it to us using the aforementioned channels. >>>> >>>> **September to January: *We will be reaching out to every user of ORES >>>> we can identify and working with them to make the migration process as easy >>>> as possible. >>>> >>>> **By January 2024: *If all goes well, we would like zero traffic on >>>> the ORES API endpoint so we can turn off the ores-legacy API. >>>> >>>> If you want more information about Lift Wing, please check >>>> https://wikitech.wikimedia.org/wiki/Machine_Learning/LiftWing >>>> >>>> Thanks in advance for the patience and the help! >>>> >>>> Regards, >>>> >>>> The Machine Learning Team >>>> _______________________________________________ >>>> Wikitech-l mailing list -- wikitech-l@lists.wikimedia.org >>>> To unsubscribe send an email to wikitech-l-le...@lists.wikimedia.org >>>> >>>> https://lists.wikimedia.org/postorius/lists/wikitech-l.lists.wikimedia.org/ >>> >>> _______________________________________________ >>> Wikitech-l mailing list -- wikitech-l@lists.wikimedia.org >>> To unsubscribe send an email to wikitech-l-le...@lists.wikimedia.org >>> >>> https://lists.wikimedia.org/postorius/lists/wikitech-l.lists.wikimedia.org/ >> >> _______________________________________________ >> Wikitech-l mailing list -- wikitech-l@lists.wikimedia.org >> To unsubscribe send an email to wikitech-l-le...@lists.wikimedia.org >> >> https://lists.wikimedia.org/postorius/lists/wikitech-l.lists.wikimedia.org/ > > _______________________________________________ > Wikitech-l mailing list -- wikitech-l@lists.wikimedia.org > To unsubscribe send an email to wikitech-l-le...@lists.wikimedia.org > https://lists.wikimedia.org/postorius/lists/wikitech-l.lists.wikimedia.org/
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