MicroFlow is an open-source, Rust-based TinyML framework that enables efficient deployment of neural networks on highly resource-constrained embedded devices, including 8-bit microcontrollers with only 2kB of RAM.
This paper presents a novel system-level High-Level Synthesis (HLS) Design Space Exploration (DSE) approach, called EtoE-DSE, that accommodates end-to-end (EtoE) latency and variable timing constraints for complex multi-component application-specific embedded systems.
인텔 Myriad X 임베디드 SoC에서 AI와 고전적인 컴퓨터 비전 기술을 결합하여 위성 자세 추정 및 추적 문제를 해결하는 단일 칩 솔루션을 제안한다.
데이터 수집률 감소가 마이크로컨트롤러에서 TinyML 모델의 성능에 미치는 영향을 분석하여, 자원 제한적 환경에서 효율적인 TinyML 모델 구현을 위한 방안을 제시한다.
The ElasticAI-Workflow, consisting of the ElasticAI-Creator toolchain and the Elastic Node hardware platform, enables deep learning developers without FPGA expertise to create and deploy energy-efficient deep learning accelerators on embedded devices.
적은 수의 레이블 데이터로도 효과적인 객체 분류를 수행할 수 있는 FPGA SoC 기반의 적은 샘플 학습 플랫폼을 제안한다.
FPGA SoCに組み込み型Few-Shot Learningシステムを実装するための、オープンソースのエンドツーエンドパイプラインPEFSLを提案する。
This paper presents an end-to-end open-source pipeline for deploying a few-shot learning platform for real-time object classification on FPGA SoCs, enabling rapid adaptation to new tasks with minimal resources.
OpTC, an end-to-end toolchain, automatically compresses, converts, and generates C code for deploying various types of neural networks on AURIX TC3xx microcontrollers, enabling efficient execution on resource-constrained embedded devices.
The proposed Hybrid High-Level Synthesis (H-HLS) methodology integrates state-based high-level synthesis (SB-HLS) and performance-driven high-level synthesis (PD-HLS) to enable the design and optimization of application-specific embedded systems with explicit and precise timing specifications.