『Cutting Edge AI』のカバーアート

Cutting Edge AI

Cutting Edge AI

著者: Cutting Edge AI Team
無料で聴く

このコンテンツについて

Cutting Edge AI is your front-row seat to the transformation happening where artificial intelligence meets the physical world. As AI continues to move beyond the cloud, this podcast dives deep into the exciting, complex, and rapidly evolving world of Edge AI — intelligence embedded in the devices and systems around us.

エピソード
  • Before the Model: Mapping the Data Minefield in Edge AI
    2025/07/12

    This episode outlines significant data challenges inherent in Edge AI deployments, moving beyond controlled lab settings into real-world applications. It highlights issues such as collecting representative data that accurately reflects diverse operational conditions and managing sensor variability across different devices.

    It also addresses the high cost and time associated with data labeling, particularly for specialized tasks, and the problem of class imbalance where critical events are rare. Furthermore, it details how data drift can degrade model performance over time, the scarcity of relevant public datasets for niche edge cases, and the non-trivial nature of data preprocessing.

    Finally, the podcast discusses challenges posed by noisy or low-quality data, the complexity of data validation, limited dataset sizes common in edge scenarios, and constraints related to on-device storage.

    続きを読む 一部表示
    23 分
  • Edge AI Starts Under the Hood: What Every Developer Should Know About SoC Performance
    2025/07/05

    The episode examines the critical factors influencing machine learning (ML) performance on System-on-Chip (SoC) edge devices, moving beyond simplistic metrics like TOPS. It emphasizes that real-world ML efficacy hinges on a complex interplay of elements, including the SoC's compute and memory architectures, its compatibility with various ML model types, and the efficiency of data ingestion and pre/post-processing pipelines. Furthermore, the paper highlights the crucial roles of the software stack, power and thermal constraints, real-time behavior, and developer tooling in optimizing performance. Ultimately, it advocates for holistic performance evaluation using practical metrics like inferences per second and per watt, rather than just peak theoretical capabilities.

    続きを読む 一部表示
    23 分
  • Closing the Tooling Gap in Edge AI Development
    2025/06/22

    The podcast discusses the significant tooling gaps prevalent in the development and deployment of Edge AI systems, highlighting their complexity and resource-intensive nature. It explains that unlike cloud AI, Edge AI demands real-time responsiveness on resource-constrained hardware and emphasizes that building for the edge involves a comprehensive full-stack product rather than just model training.

    It then outlines specific challenges, such as difficulties in data collection and labeling, model optimization, hardware fragmentation, and deployment complexity.

    Finally, it presents Edge Impulse as an end-to-end platform that addresses these gaps through integration, automation, and a developer-first design, ultimately aiming to democratize Edge AI development.

    続きを読む 一部表示
    17 分

Cutting Edge AIに寄せられたリスナーの声

カスタマーレビュー:以下のタブを選択することで、他のサイトのレビューをご覧になれます。