AI/ML Systems Engineering Workbench Framework

K. Nyarko, Peter O. Taiwo, Chukwuemeka Duru, Emmanual Masa-Ibi
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Abstract

This paper presents the framework of a cloud-based Artificial Intelligence (AI) and Machine Learning (ML) workbench that provides services utilization and performance benchmarking. The framework promotes convenience by enabling a centralized platform for software developers and data scientists to perform federated search across various dataset repositories, choose problem domains, like Natural Language Processing, Speech and Computer Vision, and build/validate models. The benchmarking functionality of this framework helps users evaluate and compare performances of various solutions from multiple cloud service providers. The workbench framework consists of two primary layers. The Services layer which is rendered as an AI as a service (AIaaS) model, providing interfaces that connect users to vision, speech and natural language processing (NLP) services from various AI service providers. The Platform layer is an ML as a Service (MLaaS) model providing access to ML model training, tuning, inference and transfer learning tasks that are fulfillable on multiple cloud ML platforms with preset cloud-based compute instances. Benchmarking is provided on the workbench by comparing accuracy metrics on prediction and detection counts, F1 scores and ML training instances setup and completion time. By utilizing these performance benchmarking features, this framework can assist AI and ML practitioners in making informed judgments when selecting a cloud provider for specific activities. Additionally, it will increase the effectiveness and efficiency of data science training for both teachers and students.
AI/ML系统工程工作台框架
本文介绍了一个基于云的人工智能(AI)和机器学习(ML)工作台的框架,该工作台提供服务利用率和性能基准测试。该框架为软件开发人员和数据科学家提供了一个集中式平台,可以跨各种数据集存储库执行联合搜索,选择问题领域,如自然语言处理、语音和计算机视觉,以及构建/验证模型,从而提高了便利性。该框架的基准测试功能可帮助用户评估和比较来自多个云服务提供商的各种解决方案的性能。工作台框架由两个主要层组成。服务层呈现为AI即服务(AIaaS)模型,提供将用户连接到来自各种AI服务提供商的视觉、语音和自然语言处理(NLP)服务的接口。平台层是一个机器学习即服务(MLaaS)模型,提供对机器学习模型训练、调优、推理和迁移学习任务的访问,这些任务可以在多个云机器学习平台上通过预设的基于云的计算实例实现。通过比较预测和检测计数、F1分数和ML训练实例设置和完成时间的准确性指标,在工作台上提供基准测试。通过利用这些性能基准测试功能,该框架可以帮助AI和ML从业者在为特定活动选择云提供商时做出明智的判断。此外,它将提高教师和学生数据科学培训的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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