Difference between revisions of "Lumi/pilot"

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(Model Architectures)
(Software Support)
 
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Multi-GPU and multi-node training must be possible. In the NVIDIA world, [https://docs.nvidia.com/deeplearning/nccl/user-guide/docs/overview.html NCCL] and [https://github.com/horovod/horovod Horovod] are used for this.  
 
Multi-GPU and multi-node training must be possible. In the NVIDIA world, [https://docs.nvidia.com/deeplearning/nccl/user-guide/docs/overview.html NCCL] and [https://github.com/horovod/horovod Horovod] are used for this.  
In the AMD world? No idea.
+
In the AMD world? [https://pytorch.org/blog/pytorch-for-amd-rocm-platform-now-available-as-python-package/ MIOpen & RCCL] ?
  
 
= Data: Norwegian =
 
= Data: Norwegian =

Latest revision as of 10:34, 10 August 2022

Very Large Language Models in the Nordics (VLLMN)

Norbert.png

In the summer of 2022, the shared LUMI supercomputer will (likely) open for trial usage of its vast gpu partition. NLPL partners in Finland (Turku and Helsinki) and Norway (Oslo) are coordinating their efforts towards the creation of very large-scale (neural) language models for multiple Nordic languages. This work is part of the Nordic Language Modeling (NorLM) initiative.

Model Architectures

Prioritized:

  • NorBERT 3 on the concatenation of NorBERT1/NorBERT2 corpora (base and large versions)
  • Separate BERT-base models for Bokmål and Nynorsk
  • T5 on the NorBERT3 corpus: at least the unsupervised denoising objective stage

Less prioritized:

  • GPT-2/3
  • Ablations with BERT
  • ELECTRA
  • (separate Bokmål and Nynorsk models)
  • RoBERTa
  • Large language models with linguistically motivated inductive biases (linked to David Samuel PhD topic); one example is Google's ETC.

Software Support

See the links above for particular model's requirements.

In general, we rely on Python (>=3.9) and its SciPy stack.

We definitely will require fully functional GPU-enabled installations of PyTorch (1.11) and TensorFlow (preferably, both 1.15.5 and 2.8.2).

Multi-GPU and multi-node training must be possible. In the NVIDIA world, NCCL and Horovod are used for this. In the AMD world? MIOpen & RCCL ?

Data: Norwegian

  • Collaboration with the National Library (Colossal Norwegian Corpus): we now have the public part of it (/cluster/projects/nn9851k/corpora/NCC on Saga)
  • Extracting the Norwegian part from the C4 dataset: /cluster/projects/nn9851k/corpora/c4 on Saga
  • Additional news collections from MediaFutures SFI (Lilja?)