The Llama, Cohere and the Gemma model both no longer cache the triangular causal mask unless static cache is used. This was reverted by #29753, which fixes the BC issues w.r.t speed , and memory consumption, while still supporting compile and static cache. Small note, fx is not supported for both models, a patch will be brought very soon!
New model addition
Cohere open-source model
Command-R is a generative model optimized for long context tasks such as retrieval augmented generation (RAG) and using external APIs and tools. It is designed to work in concert with Cohere's industry-leading Embed and Rerank models to provide best-in-class integration for RAG applications and excel at enterprise use cases. As a model built for companies to implement at scale, Command-R boasts:
Strong accuracy on RAG and Tool Use
Low latency, and high throughput
Longer 128k context and lower pricing
Strong capabilities across 10 key languages
Model weights available on HuggingFace for research and evaluation
Llava next is the next version of Llava, which includes better support for non padded images, improved reasoning, OCR, and world knowledge. LLaVA-NeXT even exceeds Gemini Pro on several benchmarks.
Compared with LLaVA-1.5, LLaVA-NeXT has several improvements:
Increasing the input image resolution to 4x more pixels. This allows it to grasp more visual details. It supports three aspect ratios, up to 672x672, 336x1344, 1344x336 resolution.
Better visual reasoning and OCR capability with an improved visual instruction tuning data mixture.
Better visual conversation for more scenarios, covering different applications.
Better world knowledge and logical reasoning.
Along with performance improvements, LLaVA-NeXT maintains the minimalist design and data efficiency of LLaVA-1.5. It re-uses the pretrained connector of LLaVA-1.5, and still uses less than 1M visual instruction tuning samples. The largest 34B variant finishes training in ~1 day with 32 A100s.*
LLaVa-NeXT incorporates a higher input resolution by encoding various patches of the input image. Taken from the original paper.
MusicGen Melody is a single stage auto-regressive Transformer model capable of generating high-quality music samples conditioned on text descriptions or audio prompts. The text descriptions are passed through a frozen text encoder model to obtain a sequence of hidden-state representations. MusicGen is then trained to predict discrete audio tokens, or audio codes, conditioned on these hidden-states. These audio tokens are then decoded using an audio compression model, such as EnCodec, to recover the audio waveform.
Through an efficient token interleaving pattern, MusicGen does not require a self-supervised semantic representation of the text/audio prompts, thus eliminating the need to cascade multiple models to predict a set of codebooks (e.g. hierarchically or upsampling). Instead, it is able to generate all the codebooks in a single forward pass.
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Bumps transformers from 4.36.0 to 4.39.1.
Release notes
Sourced from transformers's releases.
... (truncated)
Commits
cbe58b4
Release: v4.39.1056df1d
[SuperPoint
] Fix doc example (#29816)e49ebae
[cleanup
] vestiges of causal mask (#29806)dc8b789
Correct llava mask & fix missing setter forvocab_size
(#29389)f4364a6
style post patcha2a9516
path llava-next0788481
[BC 4.37 -> 4.38
] for Llama family, memory and speed (#29753)74f2900
re-make pre-release for cherry picked commits1a79db7
make fix copies9ca7ac9
Add LLaVa-1.6, bis (#29586)Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting
@dependabot rebase
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