uncertain event
A BDI Agent-Based Task Scheduling Framework for Cloud Computing
Yang, Yikun, Ren, Fenghui, Zhang, Minjie
Cloud computing is an attractive technology for providing computing resources over the Internet. Task scheduling is a critical issue in cloud computing, where an efficient task scheduling method can improve overall cloud performance. Since cloud computing is a large-scale and geographically distributed environment, traditional scheduling methods that allocate resources in a centralized manner are ineffective. Besides, traditional methods are difficult to make rational decisions timely when the external environment changes. This paper proposes a decentralized BDI (belief-desire-intention) agent-based scheduling framework for cloud computing. BDI agents have advantages in modelling dynamic environments because BDI agents can update their beliefs, change desires, and trigger behaviours based on environmental changes. Besides, to avoid communication stuck caused by environmental uncertainties, the asynchronous communication mode with a notify listener is employed. The proposed framework covers both the task scheduling and rescheduling stages with the consideration of uncertain events that can interrupt task executions. Two agent-based algorithms are proposed to implement the task scheduling and rescheduling processes, and a novel recommendation mechanism is presented in the scheduling stage to reduce the impact of information synchronization delays. The proposed framework is implemented by JADEX and tested on CloudSim. The experimental results show that our framework can minimize the task makespan, balance the resource utilization in a large-scale environment, and maximize the task success rate when uncertain events occur.
- North America > United States > North Carolina > Orange County > Chapel Hill (0.04)
- Asia > Taiwan > Taiwan Province > Taipei (0.04)
A Decentralized Multiagent-Based Task Scheduling Framework for Handling Uncertain Events in Fog Computing
Yang, Yikun, Ren, Fenghui, Zhang, Minjie
Fog computing has become an attractive research topic in recent years. As an extension of the cloud, fog computing provides computing resources for Internet of Things (IoT) applications through communicative fog nodes located at the network edge. Fog nodes assist cloud services in handling real-time and mobile applications by bringing the processing capability to where the data is generated. However, the introduction of fog nodes can increase scheduling openness and uncertainty. The scheduling issues in fog computing need to consider the geography, load balancing, and network latency between IoT devices, fog nodes, as well as the parent cloud. Besides, the scheduling methods also need to deal with the occurrence of uncertain events in real-time so as to ensure service reliability. This paper proposes an agent-based framework with a decentralized structure to construct the architecture of fog computing, while three agent-based algorithms are proposed to implement the scheduling, load balance, and rescheduling processes. The proposed framework is implemented by JADE and evaluated on the iFogSim toolkit. Experimental results show that the proposed scheduling framework can adaptively schedule tasks and resources for different service requests in fog computing and can also improve the task success rate when uncertain events occur.
- Oceania > Australia > New South Wales > Wollongong (0.04)
- Europe > United Kingdom > England > Greater London > London (0.04)
- Information Technology > Smart Houses & Appliances (0.48)
- Information Technology > Services (0.48)
Suicide Risk Modeling with Uncertain Diagnostic Records
Wang, Wenjie, Luo, Chongliang, Aseltine, Robert H., Wang, Fei, Yan, Jun, Chen, Kun
Motivated by the pressing need for suicide prevention through improving behavioral healthcare, we use medical claims data to study the risk of subsequent suicide attempts for patients who were hospitalized due to suicide attempts and later discharged. Understanding the risk behaviors of such patients at elevated suicide risk is an important step towards the goal of "Zero Suicide". An immediate and unconventional challenge is that the identification of suicide attempts from medical claims contains substantial uncertainty: almost 20\% of "suspected" suicide attempts are identified from diagnostic codes indicating external causes of injury and poisoning with undermined intent. It is thus of great interest to learn which of these undetermined events are more likely actual suicide attempts and how to properly utilize them in survival analysis with severe censoring. To tackle these interrelated problems, we develop an integrative Cox cure model with regularization to perform survival regression with uncertain events and a latent cure fraction. We apply the proposed approach to study the risk of subsequent suicide attempt after suicide-related hospitalization for adolescent and young adult population, using medical claims data from Connecticut. The identified risk factors are highly interpretable; more intriguingly, our method distinguishes the risk factors that are most helpful in assessing either susceptibility or timing of subsequent attempt. The predicted statuses of the uncertain attempts are further investigated, leading to several new insights on suicide event identification.
- North America > United States > Connecticut (0.24)
- North America > United States > Pennsylvania (0.04)
- North America > United States > Maryland > Prince George's County > Hyattsville (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
How Business Intelligence can Drive Better Decision-Making
Manufacturers that incorporate demand forecasting in their planning tools can accurately predict what lies ahead in terms of demand, optimal prices, and inventory. Business Intelligence (BI)--the driving force behind modern decision-making--helps to predict future economic volatility and uncertain events that may have a huge impact on supply chain if not forecasted well. As business leaders are struggling to derive insights from enterprise as well as market data, the solution to this challenge lies in effectively using BI tools. In order to capitalize on actionable insights from the available data, enterprises must get rid of their old-styled BI approach and adopt advanced BI tools. Since the traditional analytical tools do not provide enough insights, the key to effective decision-making lies in asking right questions.