The post Ray’s Disaggregated Hybrid Parallelism Boosts Multimodal AI Training by 30% appeared on BitcoinEthereumNews.com. Iris Coleman Dec 10, 2025 01:06 Ray’s innovative disaggregated hybrid parallelism significantly enhances multimodal AI training efficiency, achieving up to 1.37x throughput improvement and overcoming memory challenges. In a significant advancement for artificial intelligence training, Ray has introduced a disaggregated hybrid parallelism approach that accelerates the training of multimodal AI models by 30%, according to Anyscale. This development addresses the complexities and computational challenges of training models that process diverse data types such as text, images, and audio. Challenges in Multimodal AI Training Multimodal AI models, unlike traditional homogeneous large language models, consist of specialized modules with varying computational and memory needs. Vision-Language Models (VLMs), for example, integrate a vision encoder with a large language model (LLM). This integration results in architectural complexities, particularly when dealing with high-resolution images and long sequences. Traditional techniques like tensor parallelism and DeepSpeed ZeRO3 often fall short, resulting in inefficiencies and potential out-of-memory errors. Ray’s Innovative Approach Ray’s disaggregated hybrid parallelism leverages the flexibility of its universal framework, enabling tailored parallelization strategies for each module within a multimodal model. By utilizing Ray’s actor-based architecture, developers can allocate resources independently, optimizing for the unique requirements of each module. This results in a more efficient orchestration of complex workloads, as demonstrated with the Qwen-VL 32B model. Benchmarking and Performance In tests conducted with the Qwen-VL 32B model, Ray’s approach showed up to a 1.37x improvement in throughput compared to traditional methods. The strategy combined sequence parallelism for the vision encoder with tensor parallelism for the LLM, effectively managing memory and computational demands across different modules. This method not only improved speed but also enabled the training of sequences up to 65,000 tokens long, surpassing the capabilities of DeepSpeed ZeRO3 which encountered memory issues at 16,000 tokens. Future Prospects… The post Ray’s Disaggregated Hybrid Parallelism Boosts Multimodal AI Training by 30% appeared on BitcoinEthereumNews.com. Iris Coleman Dec 10, 2025 01:06 Ray’s innovative disaggregated hybrid parallelism significantly enhances multimodal AI training efficiency, achieving up to 1.37x throughput improvement and overcoming memory challenges. In a significant advancement for artificial intelligence training, Ray has introduced a disaggregated hybrid parallelism approach that accelerates the training of multimodal AI models by 30%, according to Anyscale. This development addresses the complexities and computational challenges of training models that process diverse data types such as text, images, and audio. Challenges in Multimodal AI Training Multimodal AI models, unlike traditional homogeneous large language models, consist of specialized modules with varying computational and memory needs. Vision-Language Models (VLMs), for example, integrate a vision encoder with a large language model (LLM). This integration results in architectural complexities, particularly when dealing with high-resolution images and long sequences. Traditional techniques like tensor parallelism and DeepSpeed ZeRO3 often fall short, resulting in inefficiencies and potential out-of-memory errors. Ray’s Innovative Approach Ray’s disaggregated hybrid parallelism leverages the flexibility of its universal framework, enabling tailored parallelization strategies for each module within a multimodal model. By utilizing Ray’s actor-based architecture, developers can allocate resources independently, optimizing for the unique requirements of each module. This results in a more efficient orchestration of complex workloads, as demonstrated with the Qwen-VL 32B model. Benchmarking and Performance In tests conducted with the Qwen-VL 32B model, Ray’s approach showed up to a 1.37x improvement in throughput compared to traditional methods. The strategy combined sequence parallelism for the vision encoder with tensor parallelism for the LLM, effectively managing memory and computational demands across different modules. This method not only improved speed but also enabled the training of sequences up to 65,000 tokens long, surpassing the capabilities of DeepSpeed ZeRO3 which encountered memory issues at 16,000 tokens. Future Prospects…

Ray’s Disaggregated Hybrid Parallelism Boosts Multimodal AI Training by 30%

2025/12/11 02:08


Iris Coleman
Dec 10, 2025 01:06

Ray’s innovative disaggregated hybrid parallelism significantly enhances multimodal AI training efficiency, achieving up to 1.37x throughput improvement and overcoming memory challenges.

In a significant advancement for artificial intelligence training, Ray has introduced a disaggregated hybrid parallelism approach that accelerates the training of multimodal AI models by 30%, according to Anyscale. This development addresses the complexities and computational challenges of training models that process diverse data types such as text, images, and audio.

Challenges in Multimodal AI Training

Multimodal AI models, unlike traditional homogeneous large language models, consist of specialized modules with varying computational and memory needs. Vision-Language Models (VLMs), for example, integrate a vision encoder with a large language model (LLM). This integration results in architectural complexities, particularly when dealing with high-resolution images and long sequences. Traditional techniques like tensor parallelism and DeepSpeed ZeRO3 often fall short, resulting in inefficiencies and potential out-of-memory errors.

Ray’s Innovative Approach

Ray’s disaggregated hybrid parallelism leverages the flexibility of its universal framework, enabling tailored parallelization strategies for each module within a multimodal model. By utilizing Ray’s actor-based architecture, developers can allocate resources independently, optimizing for the unique requirements of each module. This results in a more efficient orchestration of complex workloads, as demonstrated with the Qwen-VL 32B model.

Benchmarking and Performance

In tests conducted with the Qwen-VL 32B model, Ray’s approach showed up to a 1.37x improvement in throughput compared to traditional methods. The strategy combined sequence parallelism for the vision encoder with tensor parallelism for the LLM, effectively managing memory and computational demands across different modules. This method not only improved speed but also enabled the training of sequences up to 65,000 tokens long, surpassing the capabilities of DeepSpeed ZeRO3 which encountered memory issues at 16,000 tokens.

Future Prospects

The success of Ray’s disaggregated hybrid parallelism in enhancing AI training efficiency paves the way for its application across larger GPU clusters and diverse hardware setups. Its ability to adapt to various multimodal architectures highlights its potential for broader implementation in AI development.

For those interested in exploring this innovative approach, Ray’s implementation is available for experimentation and feedback on their GitHub repository.

Image source: Shutterstock

Source: https://blockchain.news/news/rays-disaggregated-hybrid-parallelism-boosts-multimodal-ai-training

Sorumluluk Reddi: Bu sitede yeniden yayınlanan makaleler, halka açık platformlardan alınmıştır ve yalnızca bilgilendirme amaçlıdır. MEXC'nin görüşlerini yansıtmayabilir. Tüm hakları telif sahiplerine aittir. Herhangi bir içeriğin üçüncü taraf haklarını ihlal ettiğini düşünüyorsanız, kaldırılması için lütfen service@support.mexc.com ile iletişime geçin. MEXC, içeriğin doğruluğu, eksiksizliği veya güncelliği konusunda hiçbir garanti vermez ve sağlanan bilgilere dayalı olarak alınan herhangi bir eylemden sorumlu değildir. İçerik, finansal, yasal veya diğer profesyonel tavsiye niteliğinde değildir ve MEXC tarafından bir tavsiye veya onay olarak değerlendirilmemelidir.

Ayrıca Şunları da Beğenebilirsiniz

Another Nasdaq-Listed Company Announces Massive Bitcoin (BTC) Purchase! Becomes 14th Largest Company! – They’ll Also Invest in Trump-Linked Altcoin!

Another Nasdaq-Listed Company Announces Massive Bitcoin (BTC) Purchase! Becomes 14th Largest Company! – They’ll Also Invest in Trump-Linked Altcoin!

The post Another Nasdaq-Listed Company Announces Massive Bitcoin (BTC) Purchase! Becomes 14th Largest Company! – They’ll Also Invest in Trump-Linked Altcoin! appeared on BitcoinEthereumNews.com. While the number of Bitcoin (BTC) treasury companies continues to increase day by day, another Nasdaq-listed company has announced its purchase of BTC. Accordingly, live broadcast and e-commerce company GD Culture Group announced a $787.5 million Bitcoin purchase agreement. According to the official statement, GD Culture Group announced that they have entered into an equity agreement to acquire assets worth $875 million, including 7,500 Bitcoins, from Pallas Capital Holding, a company registered in the British Virgin Islands. GD Culture will issue approximately 39.2 million shares of common stock in exchange for all of Pallas Capital’s assets, including $875.4 million worth of Bitcoin. GD Culture CEO Xiaojian Wang said the acquisition deal will directly support the company’s plan to build a strong and diversified crypto asset reserve while capitalizing on the growing institutional acceptance of Bitcoin as a reserve asset and store of value. With this acquisition, GD Culture is expected to become the 14th largest publicly traded Bitcoin holding company. The number of companies adopting Bitcoin treasury strategies has increased significantly, exceeding 190 by 2025. Immediately after the deal was announced, GD Culture shares fell 28.16% to $6.99, their biggest drop in a year. As you may also recall, GD Culture announced in May that it would create a cryptocurrency reserve. At this point, the company announced that they plan to invest in Bitcoin and President Donald Trump’s official meme coin, TRUMP token, through the issuance of up to $300 million in stock. *This is not investment advice. Follow our Telegram and Twitter account now for exclusive news, analytics and on-chain data! Source: https://en.bitcoinsistemi.com/another-nasdaq-listed-company-announces-massive-bitcoin-btc-purchase-becomes-14th-largest-company-theyll-also-invest-in-trump-linked-altcoin/
Paylaş
BitcoinEthereumNews2025/09/18 04:06