Explore DeciLM 6B, a high-efficiency large language model that outpaces Llama 2 7B by 15 times. The model was generated using Deci's proprietary Neural Architecture Search-powered technology, AutoNAC. Delve into this powerful model's architecture, efficiency and performance.
Accurate detection of pedestrian lanes is a crucial criterion for vision-impaired people to navigate freely and safely. The current deep learning methods have achieved reasonable accuracy at this task. However, they lack practicality for real-time pedestrian lane detection due to non-optimal accuracy, speed, and model size trade-off. Hence, an optimized deep neural network (DNN) for pedestrian lane detection is required. Designing a DNN from scratch is a laborious task that requires significant experience and time. This paper proposes a novel neural architecture search (NAS) algorithm, named MSD-NAS, to automate this laborious task. The proposed method designs an optimized deep network with multi-scale input branches, allowing the derived network to utilize local and global contexts for predictions. The search is also performed in a large and generic space that includes many existing hand-designed network architectures as candidates. To further boost performance, we propose a Short-ter
Deci Steps into Generative AI Realm with Open-Source DeciCoder datanami.com - get the latest breaking news, showbiz & celebrity photos, sport news & rumours, viral videos and top stories from datanami.com Daily Mail and Mail on Sunday newspapers.