News

Microsoft's BitNet challenges industry norms with a minimalist approach using ternary weights that require just 400MB of ...
Memory requirements are the most obvious advantage of reducing the complexity of a model's internal weights. The BitNet b1.58 ...
Microsoft’s model BitNet b1.58 2B4T is available on Hugging Face but doesn’t run on GPU and requires a proprietary framework.
The BitNet b1.58 2B4T model was developed by Microsoft's General Artificial Intelligence group and contains two billion parameters – internal values that enable the model to ...
Microsoft researchers developed a 1-bit AI model that's efficient enough to run on traditional CPUs without needing ...
Microsoft researchers have developed — and released — a hyper-efficient AI model that can run on CPUs, including Apple's M2.
Explore the new AI model from Microsoft designed to run efficiently on a CPU, ensuring powerful performance without a GPU.
Bitnet works by simplifying the internal architecture of AI models. Instead of relying on full-precision or multi-bit ...
Microsoft’s new BitNet b1.58 model significantly reduces memory and energy requirements while matching the capabilities of ...
Microsoft Research has introduced BitNet b1.58 2B4T, a new 2-billion parameter language model that uses only 1.58 bits per ...