scispace - formally typeset
Search or ask a question

Answers from top 9 papers

More filters
Papers (9)Insight
Docker in Docker and Sibling Docker, which run everything within containers, both help scientists easily deploy our platform on any clouds in a few minutes.
We find that the framework is suitable for implementation on a mobile robot for its envisioned purpose.
Book ChapterDOI
01 Jan 2017
10 Citations
If I have not emphasized this enough, the magic happens because we can count on the Docker engine to work the same way no matter our underlying hardware (or virtual hardware) and operating system.
Docker therefore provides the advantage of being easily applicable on diverse architectures, virtualizing the necessary environment and including libraries as well as applications in a standardized way.
With a lot of advantages, Docker is a very good fit to implementing microservices architecture.
Remarkably, Docker container has more advantages than virtual machine in terms of data intensive application and computing ability, especially the overhead of Docker is trivial.
Docker is a light weight alternative to the usual virtualization technology achieving notable better performance.
Based on our evaluation and experiment Docker provides fast deployment, small footprint and good performance which make it potentially a viable Edge Computing platform.
verify the superiority of the Docker technology.

See what other people are reading

What is the current market demand for EOT cranes in the project's location?
4 answers
The current market demand for Electric Overhead Travelling (EOT) cranes is driven by the need for intelligent, lightweight, efficient, and automatic cranes in various industries. Traditional cranes lack advanced automation and sensor technologies, leading to inefficiencies in fulfilling service requests, potentially impacting project timelines and costs. To address the complexity of EOT crane operations and associated risks, a virtual prototype-based simulator has been developed for operator training, enhancing efficiency and cost-effectiveness. The implementation of wireless remote control systems for EOT cranes has become crucial, replacing hazardous wired pendant controls and improving safety in automation industries. Additionally, the application of variable voltage variable frequency drives in crane control systems offers advantages like precise positioning, energy savings, and increased motor life.
Whats the Sample/data; Method/estimation technique used?
5 answers
The sample/data and estimation techniques used in research vary based on the field. In social sciences, health science, and survey research, sample size, sampling method, and technique are crucial. For quantifying saponin contents in plants, methods like colorimetric, biological, HPTLC, and HPLC are employed. In the context of digital social media, sample-based estimation methodologies are utilized to compute confidence intervals for mean content size, aiding in machine learning and decision-making for big data. Analyzing cloud service reviews involves sentiment analysis and machine learning algorithms like k-NN, Naive Bayes, Random Tree, and Random Forest. When predicting forest inventory attributes using LiDAR, sample selection methods and estimation techniques significantly impact efficiency, with variable probability selection methods and sample-derived estimators proving more effective.
What is generative artificial intelligence definition?
5 answers
Generative artificial intelligence (AI) refers to AI systems capable of autonomously producing new content like text, images, audio, and video. It plays a crucial role in the metaverse's development, offering innovative content creation methods and enhancing user experiences. The generative AI market is rapidly expanding, with projections indicating substantial growth from 1.5 billion dollars in 2021 to 6.5 billion dollars by 2026, showcasing its increasing importance and applications across various industries. However, challenges such as copyright concerns exist, with ongoing lawsuits highlighting issues related to attribution, compensation, and legal implications for using generative AI systems. Trust and control over generative AI artifacts are vital for user acceptance, especially when deployed at scale. Overall, generative AI democratizes AI usage, revolutionizing innovation management by facilitating tasks like exploration, ideation, and prototyping, potentially transforming work processes and innovation outcomes.
How is python used in data analysis of gut microbe related diseases?
4 answers
Python is utilized in the data analysis of gut microbe-related diseases through machine learning (ML) techniques. ML models trained on gut microbiome data can aid in predictive diagnostics of inflammatory bowel diseases (IBD) like Crohn's disease and ulcerative colitis. The ever-evolving "omics" technologies combined with Python-based ML algorithms enable the extraction of relevant information from microbiome data to combat gastrointestinal diseases. Machine learning, particularly in Python, is crucial for analyzing high-dimensional gut microbiome data to identify biomarkers and improve disease diagnostic accuracy. Python-based ML approaches, including deep learning methods, are employed for non-invasive colorectal cancer detection using sequence-based gut microbiome data, addressing limitations through normalization techniques and feature selection. Python, in conjunction with ML algorithms, is well-suited for analyzing gut microbiome data to predict phenotypes and develop personalized therapies for human diseases.
What are the current trends and developments in cloud computing technology?
5 answers
Current trends and developments in cloud computing technology include the evolution towards multi-tenant architectures like Kubernetes to efficiently manage resources. Industry executives are closely monitoring disruptive technologies such as Blockchain, IoT, AI/AR, Edge computing, and Green cloud computing to stay competitive in the hyperconnected world. Cloud computing's popularity stems from its ability to provide remote access, simplify IT infrastructure, and enhance processing capabilities, making it a focal point for academia, IT, and education sectors. The advancements in cloud computing are driven by the need for increased productivity, profitability, and market share, with various sectors leveraging cloud services for diverse reasons. Additionally, future trends in cloud computing are expected to integrate intelligent machine learning techniques and new technologies to address security challenges and enhance efficiency.
Is histopathology the gold standard for training AI in medicin??
4 answers
Histopathology serves as the gold standard for disease diagnosis in medicine. Recent advancements in AI, particularly deep learning, have enabled the detection of intricate molecular patterns within histopathology slides, showcasing the potential for automated approaches to aid pathologists in decision-making. Despite the significant progress in AI capabilities, the integration of AI in clinical practices and histopathological diagnosis has faced challenges, partly due to the opacity of end-to-end AI systems. However, the adoption of AI in digital pathology has the potential to revolutionize the field by enhancing the accuracy and efficiency of pathological evaluations. AI-based analysis of histological slides through digital scanning has shown promise, especially when considering variations in staining color tones and magnification levels for training AI models.
Is histopathology a reliable gold standard for training AI in medicin?
5 answers
Histopathology serves as a reliable gold standard for training AI in medicine due to its crucial role in disease diagnosis and prognosis. The integration of AI in digital pathology has shown significant advancements, enhancing the accuracy of histopathological interpretation. AI-based analysis of histological slides, particularly using deep learning algorithms, has demonstrated promising results in detecting complex molecular patterns for disease diagnosis. However, challenges such as resource limitations in developing-country laboratories hinder the widespread adoption of AI in histopathology. To optimize AI model performance, training algorithms with diverse staining color tones and multi-scaled image datasets is recommended for consistent and remarkable predictions of pathological lesions. Overall, histopathology remains a fundamental pillar for training AI models in medicine, with ongoing research focusing on enhancing AI's role in pathology practice.
What is Model driven software engineering?
5 answers
Model-Driven Software Engineering (MDSE) is an approach that leverages models as primary artifacts throughout the software development lifecycle. It aims to enhance productivity, quality, and maintainability by focusing on models that abstract from implementation details. MDSE techniques involve creating models that represent different aspects of a software system, enabling automated transformations to generate code, documentation, and other artifacts. By utilizing MDSE, developers can streamline the development process, improve communication among stakeholders, and increase the reusability of software components. Additionally, MDSE can be integrated with other technologies like Artificial Intelligence (AI) to further enhance the software engineering process. Overall, MDSE plays a crucial role in modern software development by emphasizing the use of models to drive the creation of software systems efficiently and effectively.
What is autonomous system and routing?
4 answers
An autonomous system refers to a system that operates independently without direct human intervention, as seen in the deployment of computational techniques and machine data integration for scheduling and routing on the shop floor. Routing, on the other hand, involves determining the most efficient path for vehicles or material to reach their destinations, whether it's autonomously routing delivery vehicles based on business rules and comparison scores, or optimizing routes for autonomous vehicles using artificial intelligence to consider various factors like vehicle capabilities and predicted movements of objects. Additionally, research explores achieving system optimal flows in transportation networks through average travel time equilibrium for future autonomous vehicles, ensuring fairness and efficiency in routing decisions.
How does a reconnaissance survey contribute to the design process in architecture?
4 answers
A reconnaissance survey plays a crucial role in the architecture design process by providing essential data for decision-making. It involves conducting detailed measurements at the early stages of a construction project to understand the geological conditions of the site, ensuring the quality of construction and smooth operation. Additionally, innovative technologies like laser scanners and BIM have revolutionized survey practices, shifting the focus from traditional drawings to data-driven approaches. Furthermore, the use of digital surveys and photogrammetric modeling aids in documenting and reconstructing historical architectural artifacts, offering valuable insights into the evolution of structures. By integrating these surveying techniques, architects can enhance their understanding of existing architectures and leverage this knowledge to inform their design decisions effectively.
What is Open BIM in construction?
5 answers
Open BIM in construction refers to a collaborative approach that integrates new technologies into project development processes, facilitating specialized work and information transmission in a standard digital format. It aims to enhance productivity and efficiency by utilizing Building Information Modeling (BIM) methodologies, which involve creating digital models integrating all information relevant to the life cycle of structures like tunnels, bridges, and buildings. Open BIM also leverages government data to improve work efficiency and productivity in BIM-based design projects, emphasizing the importance of data utilization and creating new values through data reprocessing. Additionally, Open BIM is utilized in the infrastructure sector to address the complexity of civil works and provide opportunities for advancements in computer modeling and tool development.