Inteligencia de datos recién aceptada MS.

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

Smart management information systems (SMIS): Concept, evolution,

research hotspots and applications

Changyong Liang1,2, Xiaoxiao Wang1,2, Dongxiao Gu1,2,*, Pengyu Li1, Hui Chen1, Zhengfei Xu1

(1. School of Management, Universidad Tecnológica de Hefei, Hefei 230009, Porcelana;

2. MOE Philosophy and Social Science Laboratory for Data Science and Smart Social Governance, Hefei

University of Technology, Hefei 230009, Porcelana)

Abstracto: Management information system (MIS), a human-computer system that deeply

integrates next-generation information technology and management services, has become the

nerve center of society and organizations. With the development of next-generation information

tecnología, MIS has gradually entered the smart period. Sin embargo, research on smart management

information systems (SMIS) is still limited, lacking systematic summarization of its conceptual

definition, evolution, research hotspots, and typical applications. Por lo tanto, this paper defines the

conceptual characteristics of SMIS, provides an overview of the evolution of SMIS, examines

research focus areas using bibliometric methods, and elaborates on typical application practices of

SMIS in fields such as health care, elderly care, manufacturing, and transportation. Además,

we discuss the future development directions of SMIS in four key areas: smart interaction, smart

Toma de decisiones, efficient resource allocation, and flexible system architecture. These discussions

provide guidance and a foundation for the theoretical development and practical application of

SMIS.

Palabras clave: smart management information system, next-generation information technology,

human-computer integration, collaborative decision making, personalized knowledge services

1

Introducción

En 1967, Professor Gordon B. Davis of the University of Minnesota established the discipline

of Management Information Systems (hereafter referred to as MIS). En 1985, he and Professor

Margrethe H. Olsen defined MIS as an integrated human-computer system that provides

information to support organizations’ operations, management, and decision-making [1]. During

the era of economic development dominated by the information industry, the widespread adoption

of next-generation information technology has accelerated the growth of the digital economy and

* Autor correspondiente: Dongxiao Gu, Email address: gudongxiao@hfut.edu.cn

This work was supported by the National Natural Science Foundation of China (grant number: 72131006,
72071063, 72271082); Anhui Provincial Key R&D Programme (conceder número: 2020i01020003).

© 2023 Academia China de Ciencias. Publicado bajo una atribución Creative Commons 4.0 Internacional (CC
BY 4.0) licencia.

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

/

.

t

/

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

.

t

/

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

brought significant changes to both the organization and society. Como consecuencia, organizaciones

operate in complex and uncertain environments. As a fundamental tool for modern organizational

operaciones, MIS deeply integrates next-generation information technology and management

services. Driven by social needs, economic development, and next-generation information

tecnología, MIS has entered a new development period. To cope with the complex and evolving

external environment and meet the dynamic needs of users, MIS has gradually shifted towards

smart solutions that support organizations in adapting to external changes, integrating internal and

external resources, and providing users with personalized solutions.

en este documento, we define MIS in the smart period as Smart Management Information Systems

(hereafter referred to as SMIS). SMIS is a human-computer integration system that can

dynamically perceive environmental information, deeply analyze the potential needs of users, y

provide personalized and scenario-based management services. Based on network communication

technology and next-generation information technology, the system continuously acquires massive

amounts of heterogeneous data from multiple sources through ongoing interactions with users and

the environment. It dynamically identifies users’ behavioral characteristics and personalized needs,

extracting knowledge from the accumulated data. Through learning processes, the system

strengthens its self-monitoring, self-diagnosis, self-correction, and self-organization capabilities. Él

autonomously identifies the operational status of the organization, responds to and adapts to the

dynamic external environment, and facilitates real-time sharing and coordination of internal

resources. Además, the system can independently or collaboratively assist the organization in

complex activities such as prediction, control, and decision-making, enhancing management

services and fostering user value creation within a distributed human-machine collaborative

symbiosis system. The system exhibits high agility, flexibilidad, openness, adaptability,

self-organization, non-linearity, emergence, and robust interactivity.

Actualmente, research on SMIS primarily focuses on integrating next-generation information

technology with the management domain. Some studies explore the smart features of MIS and

investigate technological approaches to enhance its smart functions [2-4]. Además, Jussupow

et al. [5] and Cheng et al. [6] examine how SMIS improves management processes and decisions

across various domains, such as business, healthcare, and public administration. Además, alguno

researchers focus on the enhancement of the smart functions of organizational production and

service systems by emerging technologies such as big data and the Internet of Things (IoT), cual

are used to solve the problems of dynamic perception, smart decision-making, and system agility

[7-9]. These researches establish a vital theoretical foundation for the development of SMIS,

fostering its smart, integración, and personalization. Sin embargo, the current research on SMIS is still

in the initial stage, lacking a comprehensive overview of the evolution and typical applications of

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

/

/

t

.

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

.

/

t

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

SMIS. Además, the research hotspots and future development directions of SMIS are not yet

clear.

The remainder of the paper is organized as follows: Sección 2 summarizes the evolution of

SMIS and analyzes the characteristics of each period. Sección 3 utilizes bibliometric methods to

summarize and analyze the research hotspots of SMIS in recent years. Sección 4 presents notable

industry examples to illustrate the application prospects of SMIS. The future research directions

for SMIS are summarized in Section 5. Finalmente, this paper is concluded in Section 6.

2 Evolution of SMIS

MIS has undergone significant development since its origins in scientific computing and

transaction processing in the 1970s [10]. With the widespread application of information

tecnología, MIS has become an indispensable tool in people’s work and life, playing a significant

role as a nerve center in society and organizations. Under the interaction of computer-related

technologies and the development need of enterprises, MIS progresses from the initial period of

simple applications to the current period of deep integration. MIS transitions from centralized

application systems that perform independent and basic tasks to intelligent and comprehensive

service providers, gradually entering the smart period with the advent of next-generation

information technology. Cifra 1 illustrates the evolution of SMIS.

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

t

/

/

.

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

/

.

t

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Cifra 1. The evolution of SMIS

2.1 Start-up period: 1950s~1970s

The start-up period of MIS can be traced back to the 1950s to the 1970s. En 1954, IBM

released the first computer capable of floating-point calculations, which prompted many

Simple transaction processing servicesService modelSystem-oriented servicesMulti-system integration serviceIntegrated system integration servicesElectronic data processingFeaturesSystematization of business processingIntelligent information managementIntelligent human-computer interactionSingle machine centralizedSystem architectureLocal distributedWide-area openInternet of everythingJob-level applicationsApplication scopeDepartmental applicationsInter-enterprise applicationsInter-industry applicationsRarely appliedApplication levelProactive applicationWidely usedDeeply appliedData processing system, transaction processing systemRepresentative systemsMaterial requirements planning, decision support systemEnterprise resource planning, supply chain managementInternet hospital, intelligent transportation system1950s~1970s1970s~1990s1990s~2010s2010s~nowStart-up periodDevelopment periodPopularization periodIntegration period

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

companies to automate employee payroll calculations and process simple data in batches [11].

During this period, MIS was based on high-level programming languages and document

management technologies to process departmental data within organizations. This led to the

achievement of electronic data processing and the emergence of information systems that could

handle repetitive transactions in administration. These systems allow for the management of

centralized documents, significantly enhancing the efficiency and accuracy of transaction

Procesando. Además, as the data required for calculations could also be utilized to generate

reports for managers, computer-based management information systems become an unintended

consequence of the automation of computing operations.

2.2 Development period: 1970s~1990s

During the 1970s to 1990s, MIS experienced significant development driven by database

tecnología, data communication, and computer networks. This period marks the expansion of MIS

from single applications designed for specific positions to interdepartmental applications within

enterprises. En 1971, Gorry and Scott-Morton [12] proposed an MIS framework (refer to Figure 2)

to identify the types of information required for management at all levels. In this period, MIS

forms a distributed, component-based, and service-oriented system technology architecture, y

provides managers with integrated services for operations and supervision, decision support

services, and other related systems, facilitating the transformation from operational control to

management control. As a result, the comprehensiveness, systematicity, and timeliness of

management information processing improved. Además, MIS that emerged during this period

include Material Requirements Planning (MRP), Decision Support Systems (DSS), and Customer

Relationship Management (CRM).

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

/

t

/

.

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

/

.

t

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Cifra 2. The framework of MIS proposed by Gorry and Scott-Morton

StructuredSemi-structuredUnstructuredOperational controlManagement controlStrategic planningAccounts receivable order entry inventory controlBudget analysis – engineered costs forecasting – short termTanker fleet mix warehouse and factory locationProduction schedulingVariance analysis overall budgetCash management pert/cost systemsBudget preparation sales and production planningMergers and acquisitions new product planning

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

2.3 Popularization period: 1990s~2010s

At the end of the 20th century, the development of technologies such as the Internet and

cloud computing led to the emergence of new applications like e-commerce and social media. Este

development expands the application scope of MIS beyond the boundaries of enterprises,

propelling MIS into a period of globalization and popularization. During this period, la decisión

support systems evolved to encompass support for group decision-making and embedded artificial

intelligence technologies. MIS transitions towards intelligent information systems with enhanced

capabilities for knowledge innovation and solving unstructured affairs. These systems achieve

integrado

information management, a multidimensional service model, y

intelligent

computer-aided management with human-computer coordination. Gradually, MIS acquires the

characteristics of intelligence and self-organization, and provides organizations with integrated

services for strategic management and other collaborative system integration [13]. Cifra 3

illustrates an open architecture of cloud-based MIS [14].

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

.

t

/

/

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

/

.

t

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Cifra 3. An open architecture of cloud-based MIS

2.4 Integration period: 2010s~present

En 2008, IBM proposed the concept of the “Smart Planet,” advocating for the development of

wisdom across all industries to enhance the overall knowledge of human society globally [15]. Como

a crucial tool for the functioning of contemporary society, the explosive growth of data, el

complexity of the external environment, and the diverse and personalized user needs necessitate

SaaSPaaSIaaSThree cloud service modelsServiceBusiness serviceInformation serviceDevelopment servicePlatform serviceStorage serviceTest serviceComputing serviceAccess serviceEnterprise service busGeneral event frameworkMessage and data flow controlMessage engineService invocation frameworkService invocation frameworkInteractive serviceProcess Process engineBusiness process supportManagement services (Service governance &Security management)

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

the evolution of MIS towards the smart period. The next-generation information technology,

including mobile Internet, big data, artificial intelligence, and IoT, has enabled advanced smart

sintiendo, interacción, control, colaboración, and decision-making. This technological development

significantly enhances organizations’ abilities to acquire, proceso, and apply data resources,

providing the technical foundation for the smart development of MIS. SMIS, which is developed

on the basis of the intelligent management information system combined with next-generation

information technology, can continuously interact with the environment and users and obtain

real-time environmental status information and dynamic user needs. It adapts to environmental

changes and facilitates cross-domain, cross-organizational, and cross-departmental multi-channel

resource sharing and collaborative allocation based on user needs, and makes independent or

assisted managerial decisions, which significantly improves organizational management efficiency

and decision-making agility. Por eso, we propose a distributed SMIS architecture based on the

cloud-edge-terminal, as shown in Figure 4.

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

.

t

/

/

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

t

.

/

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Cifra 4. The architecture of SMIS

Data storageSmart cloud Compute ServerDataInformationKnowledgeResource allocationTask schedulingSmart edgeData centerStrategy libraryCase librarySolution libraryFeature libraryModel libraryMethodology libraryCustomized SolutionsPersonalized SolutionsStandardized SolutionsSmart terminalInformation interactionData acquisitionCommand commuicationText recognitionImage recognitionGesture recognitionSpeech recognitionFacial recognitionStandardized solution deliveryCustomized solution deliveryPersonalized solution deliveryPersonalized SolutionsCustomized solutionsLocal standardized solutionsGlobal standardized solutionsCustomized solutionsPersonalized SolutionsProcessor / MemoryMarketingProcessor / MemoryPersonnelProcessor / MemoryFinanceProcessor / MemoryOtherDataInformationKnowledgeDataInformationKnowledge

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

3 Research hotspots of SMIS

With the continuous development and application of SMIS, a series of studies on SMIS have

been conducted in the academic community. en este documento, we employ bibliometric analysis to

analyze the relevant literature on SMIS in recent years. Además, we utilize Citespace software to

visualize the results and provide valuable insights into the current trends and directions of SMIS

investigación.

3.1 Data source

This paper is based on the Web of Science repository, specifically the Web of Science Core

Collection. The citation indexes selected for this study are the Science Citation Index Expanded

and the Social Sciences Citation Index. The publication date range for the literature search is set

from January 1, 2010, to May 1, 2023. The following search formula was used: (TS=

(“Management Information System*”) O (TS= (“Information System*”) AND TS=( “Smart”))

O (TS= (“Information System*”) AND TS=(“Intelligent”) ) O (TS= (“Information System*”)

AND TS= (“Big Data”)) O (TS= (“Information System*”) AND TS= (“Internet of Things”)) O

(TS= (“Information System*”) AND TS= (“Cloud Computing”)) AND DT=(Article) Y

LA=(Inglés). We manually exclude the literature records with non-relevant and duplicate topics,

and finally collect 4261 relevant literature records.

3.2 Research hotspots

en este documento, we extract keywords from related literature and use Citespace 6.1 R6 software

to reveal the research hotspots of SMIS. The following parameter settings are used in Citespace:

Years Per Slice = 1, Node Types = Keyword. Además, we choose the critical pathfinder

algorithm to simplify the network and highlight key nodes, and merge similar words such as

Internet of Things (IoT) and Geographic Information Systems (GIS). Mesa 1 presenta el

compilation of the top 20 keywords based on their co-occurrence frequency in related literature.

Además, Cifra 5 illustrates the co-occurrence network of keywords in related literature from

2010 a 2023. These visual representations provide a clear understanding of the research trends

and interrelationships among keywords in SMIS.

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

.

t

/

/

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

/

.

t

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

Mesa 1. Frequency Ranking Statistics of Top 20 Keywords for the research of SMIS

Key words

grandes datos

internet of things

information systems

cloud computing

geographic information system

smart city

aprendizaje automático

artificial intelligence

data mining

industria 4.0

intelligent transportation systems

big data analytics

management information systems

health information system

aprendizaje profundo

data analytics

information technology

smart card

remote sensing

driver information systems

Co-occurrence

Link strength

Year of first appearance

266

223

221

219

139

103

92

84

65

61

57

51

47

43

43

42

35

34

28

27

0.20

0.22

0.29

0.21

0.13

0.06

0.05

0.07

0.06

0.03

0.08

0.06

0.02

0.02

0.04

0.03

0.03

0.03

0.02

0.03

2014

2011

2010

2010

2012

2016

2014

2011

2012

2017

2010

2016

2010

2013

2017

2015

2013

2013

2010

2015

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

t

.

/

/

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

.

t

/

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Cifra 5. The keyword co-occurrence mapping of SMIS

Mesa 1 reveals that the keywords with a high frequency are big data, IoT, información

sistemas, and cloud computing. These keywords are interconnected and belong to next-generation

information technology. Big data, IoT, and cloud computing are significant research drivers in

SMIS. Information systems serve as the main research focus in the field. This aligns with the

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

objective of this paper, which aims to explore the development of SMIS in the context of

next-generation information technology. Además, another category of keywords with high

co-occurrence frequency includes machine learning, artificial intelligence, data mining, and deep

aprendiendo. These keywords represent the technical and methodological aspects of research in SMIS.

Cifra 5 illustrates that most keywords are interconnected, indicating that published papers in

SMIS often cover multiple topics. Combining with Table 1, we can find that the research content

of most of these papers is related to SMIS, mainly using different techniques and methods or

applied in different research areas. Además, keywords with high co-occurrence frequency,

such as geographic information systems, intelligent transportation systems, health information

sistemas, Industria 4.0, and driver information systems, represent the application research fields of

SMIS.

Además, we employ a literature review approach to synthesize the literature related to

SMIS over the last three years (2021-2023). Los resultados se muestran en la tabla. 2.

From Table 2, we can find that research on SMIS in the last three years has predominantly

utilized next-generation information technology, such as big data, IoT, blockchain, and cloud

computing. The application areas of SMIS have been explored in various fields, including smart

city, smart healthcare, smart manufacturing, smart transportation, and smart information systems.

Drawing on the results obtained from the bibliometric analysis, we elaborate on the research

hotspots for SMIS in the domains of smart medical management, smart manufacturing

management, and smart transportation management.

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

/

.

t

/

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

/

t

.

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

Mesa 2. The focus of research related to SMIS from 2021 a 2023

Referencias

Chatterjee et al. [16]

Anthony Jnr [17]

Focus areas

Smart city

Smart city

Focus of attention

Key technologies

Data protection model

IoT, grandes datos

Digital transformation

Zekić-Sušac et al. [18]

Smart city

Intelligent system

Machine learning

Hanen and Thierry [19]

Smart medical

Medical information systems

AI,

conocimiento

management, big data,

data mining

Soni and Singh [20]

Smart medical

Privacy-preserving

Sensors,

wearable

authentication,

telecare

componentes

medicine information systems

Dwivedi et al. [21]

Smart medical

Smart healthcare system

Internet of Medical

Zhang and Ming [22]

Smart manufacturing

Smart

manufacturing

IT

information systems

Zuo [23]

Smart manufacturing

smart manufacturing system

Blockchain

Beverungen et al. [24]

Smart manufacturing

Smart platforms

IT

Abdel-Basset et al. [25]

Smart transportation

Smart transportation systems

IoT, Internet of Vehicle

Things (IoMT)

Ali et al. [26]

Smart transportation

(IoV), blockchain

Grande

datos

análisis,

cloud computing

Wu et al. [27]

Smart transportation

Intelligent

network

slicing

Industrial IoT (IIoT)

Sinulingga et al. [28]

Smart

información

Supervisión

management

Análisis de los datos

Berdik et al. [29]

Smart

información

Information systems protection

Blockchain

sistemas

information system

management

sistemas

Alzoubi et al. [30]

Smart

información

Intelligent information systems

BLE Beacon

sistemas

Gaurav et al. [31]

Smart

información

Business information systems

IoT, aprendizaje automático

Lv and Li [32]

Smart

información

Intelligent management system

IoT, grandes datos

sistemas

sistemas

The first research hotspot is smart healthcare and elderly care management.

Researchers have developed IoT-based enterprise health information systems [33]. Research in

medical informatics focuses on data mining and machine learning in the technical dimension, y

elderly care in the health service dimension [34]. In the context of smart healthcare, Gu et al. [35]

proposed a healthcare reasoning knowledge generation method with an evaluation mechanism that

facilitates the generation of knowledge-based solutions for new decision problems. This method

describes a healthcare decision case as a set of (𝑥, 𝑦) vectores, where 𝑥 = (𝑥1, 𝑥2, . . . , 𝑥𝑛)

represents a vector of feature attributes, 𝑦 ∈ 𝑌 , and 𝑌 represents a discrete variable

corresponding to a class. The class values (conclusion or scenario class knowledge) of historical

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

/

.

/

t

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

.

t

/

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

cases in the case knowledge base are known. Given a new problem, the problem can be

transformed into an unsolved target case with unknown class values. The variable-weighted

heterogeneous value difference distance algorithm enables the generation of inferential knowledge

to provide decision-makers with knowledge references.

2
Específicamente, WHVDM(𝑡, 𝑟)= (∑ 𝑤𝑖𝑑𝑖

𝑛
𝑖=1

1/2

(𝑡, 𝑟))

, dónde

2(𝑡, 𝑟) = {

𝑑𝑖

𝑣𝑑𝑚𝑖(𝑡, 𝑟), 𝑖𝑓 𝑥𝑖 𝑖𝑠 𝑑𝑖𝑠𝑐𝑟𝑒𝑡𝑒
𝑑𝑖𝑓𝑓2(𝑥𝑡,𝑖, 𝑥𝑟,𝑖), 𝑖𝑓 𝑥𝑖 𝑖𝑠 𝑐𝑜𝑛𝑡𝑖𝑛𝑢𝑜𝑢𝑠

, (1)

where 𝑣𝑑𝑚𝑖(𝑡, 𝑟) is the value difference matrix (VDM), its value is calculated according to

Ecuación (2):

𝑣𝑑𝑚𝑖(𝑡, 𝑟) = ∑ (𝑝𝑟(𝑦 = 𝑎|𝑥𝑖 = 𝑥𝑡,𝑖) − 𝑝𝑟(𝑦 = 𝑎|𝑥𝑖 = 𝑥𝑟,𝑖))2

𝑎∈𝑌

, (2)

where y represents the conclusion class variable, and Y represents the domain of variable y.

The term 𝑑𝑖𝑓𝑓2(𝑥𝑡,𝑖, 𝑥𝑟,𝑖) corresponds to a component of the traditional Euclidean distance and

represents the squared distance between the target case t and the historical case r on continuous

atributos, as shown in Equation (3):

𝑑𝑖𝑓𝑓2(𝑥𝑡,𝑖, 𝑥𝑟,𝑖) = (𝑥𝑡,𝑟 − 𝑥𝑟,𝑖)2. (3)

This algorithm is applied to distance measures in cases involving discrete and continuous

variables, thereby emphasizing the relative importance of case attributes. Además, in a study on

content analysis and health support using artificial intelligence algorithms for online health

communities, Gu et al. [36] develop an intelligent method for identifying psychological cognitive

changes based on natural language processing (NLP) técnicas. This method aids in determining

whether patients have experienced any psychological cognitive changes. Cifra 6 illustrates the

architecture of the model.

yo

D
oh
w
norte
oh
a
d
mi
d

F
r
oh
metro
h

t
t

pag

:
/
/

d
i
r
mi
C
t
.

metro

i
t
.

mi
d
tu
d
norte

/

i

t
/

yo

a
r
t
i
C
mi

pag
d

F
/

d
oh

i
/

i

/

.

/

t

1
0
1
1
6
2
d
norte
_
a
_
0
0
2
3
1
2
1
5
6
5
0
6
d
norte
_
a
_
0
0
2
3
1
pag
d

.

/

t

i

F

b
y
gramo
tu
mi
s
t

t

oh
norte
0
7
S
mi
pag
mi
metro
b
mi
r
2
0
2
3

Cifra 6. A model based on NLP for identifying mental cognitive changes

Inteligencia de datos recién aceptada MS.
https://doi.org/10.1162/dint_a_00231

In terms of smart healthcare information systems for elderly groups, the concept of a smart

elderly service supply chain has been proposed in academia [37, 38]. With the development of

technologies such as the IoT, cloud computing, and big data, a smart elderly service system has

been established [39]. This system aims to provide daily services and health support for the elderly.

Sin embargo, before providing services to the elderly, it is crucial to uncover their implicit service

needs from their actual behavioral data. To gather behavioral data from the elderly, various

sensing devices are utilized. One widely used sensing device for real-time healthcare applications

in daily life is the Wireless Body Sensor Network (WBSN) [40, 41]. Hussain et al. [42] propose a

human sensor network that detects abnormal vital physiological parameters. The decision-making

process is carried out by the sensor nodes. Events (mi) are defined based on threshold values for

these parameters. Por ejemplo, a healthcare system (S) can be defined with three parameters, 𝐸1,

𝐸2, and𝐸3, como sigue:

𝑆 = (𝐸1, 𝐸2, 𝐸3). (4)

If the parameter values are interdependent, and we denote the thresholds for 𝐸1, 𝐸2, and 𝐸3

as 𝐸1𝑡ℎ, 𝐸2𝑡ℎ, and 𝐸3𝑡ℎ, respectivamente, we can define the data collection function as

𝑓(𝑆𝑔) = {

𝑓(𝐸1)
𝑓(𝐸1, 𝐸2)
𝑓(𝐸1, 𝐸2, 𝐸3)

𝑖𝑓 𝐸1 < 𝐸1𝑡ℎ 𝑖𝑓 𝐸1 ≥ 𝐸1𝑡ℎ 𝑎𝑛𝑑 𝐸2 < 𝐸2𝑡ℎ 𝑖𝑓 𝑜𝑡ℎ𝑒𝑟𝑤𝑖𝑠𝑒 . (5) This event-driven data collection approach minimizes the utilization of communication resources and significantly reduces overhead. Furthermore, Su and Chiang [43] introduce the development and general architecture of the Intelligent Aging-in-place Home Care Web Services Platform (IAServ). This platform operates in a cloud computing environment and offers personalized healthcare services to support a cost-effective and highly satisfying approach to elderly care. The architecture of IAServ is depicted in Figure 7. Figure 7. The architecture of IAServ l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / / . t 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t / . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 The second research hotspot is smart manufacturing management. Predictive manufacturing systems [44], event-driven manufacturing information systems [45], and data-driven intelligent manufacturing systems have gained prominence [46]. Additionally, researchers introduce a novel manufacturing paradigm known as cloud manufacturing. This paradigm combines emerging technologies such as cloud computing, IoT, service-oriented technologies, and high-performance computing [47]. Figure 8 depicts the architecture of a cloud manufacturing service system based on cloud computing and IoT technologies [48]. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i . t / / 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t / . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Figure 8. A cloud manufacturing service system architecture Cloud computing, a robust system with extensive computational capabilities, can store and aggregate relevant resources. It can be dynamically configured to provide personalized services to users [49]. The technical foundation of cloud computing lies in loose coupling, where the infrastructure is logically or physically separated through technologies like virtualization. Cloud computing operates on a client-server model, where the client or cloud user is loosely connected to the server or cloud provider with minimal data or control dependencies. However, data dependencies are crucial in high-performance computing and can be formalized in the following format[50]: Users are categorized into user sets 𝑈𝑠𝑒𝑡1, 𝑈𝑠𝑒𝑡2, …, 𝑈𝑠𝑒𝑡𝑚 (𝑚 ≥ 1), while providers are categorized into provider sets 𝑃𝑠𝑒𝑡1, 𝑃𝑠𝑒𝑡2 , …, 𝑃𝑠𝑒𝑡𝑛 (𝑛 ≥ 1). The user set 𝑈𝑠𝑒𝑡𝑖 and provider set 𝑃𝑠𝑒𝑡𝑗 are loosely coupled, represented as 𝑆𝑒𝑡(𝑈𝑠𝑒𝑡𝑖, 𝑃𝑠𝑒𝑡𝑗). The three attributes are defined as follows: Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 Independent user set: 𝑈𝑠𝑒𝑡𝑖 ∩ 𝑈𝑠𝑒𝑡𝑗 = 𝜑(0 ≤ 𝑖, 𝑗 ≤ 𝑚, 𝑖 ≠ 𝑗). (6) Independent provider set: 𝑃𝑠𝑒𝑡𝑖 ∩ 𝑃𝑠𝑒𝑡𝑗 = 𝜑(0 ≤ 𝑖, 𝑗 ≤ 𝑚, 𝑖 ≠ 𝑗). (7) Independent loosely coupled (cloud subscriber connected to cloud provider) set: 𝑆𝑒𝑡(𝑈𝑠𝑒𝑡𝑖1, 𝑃𝑠𝑒𝑡𝑗1) ∩ 𝑆𝑒𝑡(𝑈𝑠𝑒𝑡𝑖2, 𝑃𝑠𝑒𝑡𝑗2) = 𝜑. (8) IoT plays a critical role in bridging the physical environment of manufacturing with the computing platforms and decision algorithms in cyberspace. Edge computing, a complement to cloud computing, focuses on big data analysis in IoT. It effectively addresses issues such as high latency and performance bottlenecks in cloud computing by offloading computation and storage tasks from remote cloud servers to local edge servers [51]. The selection algorithm for edge computing servers can be outlined as follows [52]: 𝑇𝑡𝑎𝑠𝑘(𝑥, 𝑒𝑠𝑐) = 𝑇𝑡𝑟𝑎𝑛𝑠(𝑥, 𝑒𝑠) + 𝑇𝑞𝑢𝑒(𝑥, 𝑒𝑠) + 𝑇𝑝𝑟𝑜𝑐𝑒𝑠𝑠(𝑥, 𝑒𝑠) + 𝑇𝑟𝑒(𝑥, 𝑒𝑠), (9) where 𝑇𝑡𝑟𝑎𝑛𝑠 represents the time taken to send task 𝑥 to the edge server (ES), 𝑇𝑞𝑢𝑒 represents the time spent in the queue, 𝑇𝑝𝑟𝑜𝑐𝑒𝑠𝑠 represents the processing time, and 𝑇𝑟𝑒 represents the time taken to receive the task. The third research hotspot is smart transportation management. Researchers make significant advancements by developing intelligent transportation systems that leverage IoT and big data approaches to address challenges such as parking and route planning [53, 54]. These systems transform the existing transportation infrastructure into smart transportation systems with Vehicle-to-Everything (V2X) [55]. V2X enables vehicles to connect with various entities. In this context, V stands for the vehicle, and X encompasses objects that interact with the vehicle to exchange information. The current X primarily includes vehicles, pedestrians, roadside infrastructure, and networks. The information exchange modes of V2X interactions include Vehicle-to-Vehicle (V2V) communication between vehicles; Vehicle-to-Infrastructure (V2I) communication between vehicles and roadside infrastructure; Vehicle-to-Pedestrian (V2P) communication between vehicles and pedestrians; Vehicle-to-Network (V2N) communication between vehicles and the network. Figure 9 illustrates the concept of a smart transportation system [56]. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i . t / / 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . t / i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 Figure 9. The conceptual diagram of a smart transportation system V2V enables vehicle-to-vehicle communication and data sharing through the device-to-device (D2D) protocol in Cellular-Vehicle-to-Everything (C-V2X), leveraging cellular networks. This communication facilitates effective path planning and helps reduce fuel consumption. Xiao et al. [57] propose an optimization algorithm to address energy efficiency issues related to multiplexing cellular user resources in D2D-based C-V2X. The algorithm aims to optimize the following problem: max 𝐸𝑒 = max ∑ ∑ 𝑀 𝑚=1 𝑀 𝑚=1 2 ( 𝑀 𝐵 log2(1+𝑆𝐼𝑁𝑅𝑚) 0 +𝜂𝜌𝑘,𝑚𝑝𝑚 𝑝𝑚 𝑑 −𝐸𝑚) , (10) 𝑠. 𝑡. 𝑆𝐼𝑁𝑅𝑚 ≥ 𝛾𝑚 ∀𝑚 (10a) 𝑆𝐼𝑁𝑅𝑘 ≥ 𝛾𝑘 ∀𝑘 (10b) 𝑑 ≤ 𝑝𝑡𝑜𝑡𝑎𝑙 ∀𝑚, (10c) 0 ≤ 𝑝𝑚 where 𝑆𝐼𝑁𝑅𝑘 represents the signal-to-noise ratio for the 𝑘 cellular user (C-UE) at the base station (BS), 𝑆𝐼𝑁𝑅𝑚 represents the signal-to-noise ratio for the 𝑘 C-UE user at the BS, and 2 𝑀 0 + 𝜂𝜌𝑘,𝑚𝑝𝑚 𝑝𝑚 𝑑 − 𝐸𝑚 represents the power loss of the 𝑚 pair of vehicular users (V-UE). Equation (10a) and (10b) impose constraints on the 𝑆𝐼𝑁𝑅 for V-UE and C-UE users, respectively, while Equation (10c) restricts the maximum power for V-UE users. The variable 𝑝𝑡𝑜𝑡𝑎𝑙 represents the maximum transmit power allowed for the 𝑚 pair of V-UE users. According to the analysis of the core technologies employed in popular research fields of SMIS, we can find that an increasing number of technologies and methods have been introduced to facilitate the continuous development of SMIS. Moreover, the application areas of SMIS have expanded significantly, resulting in the emergence of various SMIS, such as smart healthcare l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / t . / 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t / . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 information systems, smart elderly information systems, smart manufacturing management systems, and smart transportation management systems. These systems exhibit human-like features, including self-organization, self-adaptation, and self-evolution, enabling them to provide users with smart analysis, management, and decision-making services across diverse scenarios. 4 Typical Applications of SMIS Based on the analysis of research hotspots in the academic community and the review of the current application of SMIS, we focus on four prominent practical applications: smart healthcare management system, smart elderly care management system, smart manufacturing management system, and smart transportation management system. 4.1 Smart healthcare management system Smart healthcare has experienced rapid development since IBM introduced the concept in 2009. Healthcare information systems play a crucial role in hospital management and patient care, serving as integrated systems that support the comprehensive information needs of various stakeholders, including hospitals, patients, clinical services, ancillary services, and financial management [58]. The smart healthcare information system, integrating technologies like 5G, blockchain, IoT, and artificial intelligence, addresses the limitations of decentralized traditional healthcare systems, fragmented medical information, and resource disparities. It offers various scenario-based applications and personalized services, including one-stop consultation, electronic health record management, telemedicine, and intelligent prediction and analysis. These services facilitate enhanced interconnectivity, real-time information sharing, and business collaboration among patients, healthcare professionals, healthcare institutions, and healthcare devices. Harman, a wholly-owned subsidiary of Samsung Electronics Co., Ltd., unveiled the Harman Intelligent Healthcare Platform, a new comprehensive digital health platform designed to help healthcare and life sciences enterprises in their journey towards personalized customer-centric services. Harman Intelligent Healthcare Platform leverages artificial intelligence and machine learning modules to improve customer experience and engagement through predictive analytics and actionable insights on data harnessed from disparate sources. The key modules of the Harman Intelligent Healthcare Platform are depicted in Figure 10 [59]. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / . / t 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . / t i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 Figure 10. The key modules of the Harman Intelligent Healthcare Platform 4.2 Smart elderly care management system The concept of smart elderly care was formally introduced by the Life Trust of the United Kingdom in 2012. It means that people can build an IoT system and information platform for family, community, and institutional elderly care through various modern scientific and technological means, such as the Internet and cloud computing [60]. Smart elderly care, guided by the needs of the elderly and facilitated by the smart elderly care platform, utilizes intelligent products to connect both the supply and demand sides [61, 62]. It brings together the elderly, community, medical personnel, medical institutions, government, and service organizations to provide convenient, efficient, IoT-enabled, connected, and smart elderly care services. Hengfeng Information is an exceptional information technology service provider specializing in smart city solutions in China. Leveraging technologies such as the Internet, mobile Internet, IoT, and cloud computing, the company has developed an innovative “Internet + community home care services” platform. This platform has successfully established a comprehensive home care model. This model combines a “care center + service site + call center + shopping mall for the elderly + alliance merchants” approach [63]. The platform of Internet + community home care services developed by Hengfeng Information is shown in Figure 11. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / / . t 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . t / i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / / t . 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t / . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Figure 11. The platform of Internet + community home care services 4.3 Smart manufacturing management system With the introduction of Germany’s Industry 4.0, enterprises have embraced the establishment of industrial Internet enterprise-level manufacturing platforms to facilitate their operations’ digital, networked, and intelligent transformation. This transformation is supported by intelligent manufacturing management information systems, ultimately enabling the realization of green and intelligent manufacturing practices. Smart manufacturing, further advancement of intelligent manufacturing, signifies the integrated application of next-generation information technology in the manufacturing industry. Through the utilization of technologies such as the IoT, active perception, and scene intelligence, smart manufacturing explores user needs, enables large-scale personalized customization, facilitates accurate supply chain management, and implements whole lifecycle management, thereby promoting a more intelligent approach to manufacturing management. Haier, a prominent Chinese home appliance industry player, has established an integrated, digital, and intelligent service platform known as the Cloud of Smart Manufacture Operation Platform (COSMOPlat) [64]. COSMOPlat serves as a catalyst for the comprehensive upgrade of Emergency assistanceHome CareDoor magnetsEmergency buttonsHuman activity detectorsHome Care GatewayVideoSensor MattressHealth managementGlucoseCardiologyOxygenTemperatureHeart rateBlood pressureHome care service platform call centerRecords managementHome careEmergency assistanceHealth managementLife careService supervisionElderly care partnersHousekeeping servicesCatering serviceMall for the elderlyHealthcare servicesAccompanying Doctor Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 Chinese manufacturing by accelerating its transition towards a more advanced and efficient model. The architecture of COSMOPlat is depicted in Figure 12. Figure 12. The architecture of COSMOPlat 4.4 Smart transportation management system Smart transportation originated from the smart earth proposed by IBM in 2008 and the smart city proposed in 2010. It is developed by integrating intelligent transportation systems with emerging technologies such as the IoT, cloud computing, and the mobile Internet. The smart transportation system addresses the need for real-time traffic monitoring, public vehicle management, travel information services, and vehicle-assisted control. It enables collaborative interactions among humans, vehicles, and roads, significantly enhancing transportation efficiency, improving the transportation environment, and playing a crucial role in optimizing traffic operations and providing intelligent public travel services. Baidu, a leading autonomous high-tech enterprise in China, has developed the “Baidu ACE (Autonomous Driving, Connected Road, Efficient Mobility)” vehicle-road mobility engine. This innovative solution utilizes artificial intelligence, big data, autonomous driving technologies, vehicle-road collaboration, high-precision maps, and other information technologies to advance road infrastructure and promote smart infrastructure, smart transportation equipment, and convenient travel services [65]. The architecture of the Baidu ACE traffic engine is depicted in Figure 13. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i . / t / 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . t / i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 EnterpriseResourceFace to faceUserNew industrial ecosystemResource allocationModel transformationQuality improvement...... Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 Figure 13. The architecture of the Baidu ACE Based on the aforementioned practical application cases, SMIS has yielded significant accomplishments in smart healthcare, smart elderly care, smart manufacturing, and smart transportation. Moreover, applications are growing in areas such as smart communities [66] and smart tourism [67]. These successful application practices demonstrate the substantial potential for the development and wide-ranging application prospects of SMIS. 5 Development directions of SMIS SMIS actively senses and adapts to changes in the external environment using multiple sensors, engaging in real-time interactions with users to collect multimodal data. It extracts knowledge and user preferences from vast data, providing customized smart solutions tailored to their specific requirements. To facilitate smart decision-making services, SMIS optimizes and allocates processes and resources across domains, organizations, and departments. This requires the development of an open and flexible architecture capable of integrating diverse systems on a larger scale. In light of these considerations, this paper identifies four key areas for the future development directions of SMIS: smart interaction, smart decision-making, efficient resource allocation, and flexible system architecture. These aspects are interconnected and supported by a flexible architecture, as illustrated in Figure 14. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i t / / . 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t / . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 ACE: 1 (Digital base) +2 (Smart engine) +N (Ecological application)Ecological applicationSmart engineDigital baseDigitalIntelligent information controlSmart parkingTraffic managementSmart busSmart freightSmart carSmart taxiAutonomous parkingPark speciesNetworkedAutomatedApollo Self-drivingVehicle-Road CollaborationCarRoad CloudMap Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / . / t 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t / . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Figure 14. The research framework for the development directions of SMIS 5.1 Dynamic perception and human-computer interaction mechanisms in complex and open environments In the era of economic globalization, organizations face a rapidly changing market environment, requiring real-time interaction with the environment to gather information on its current state. Similarly, organizations need to engage with users directly to understand their needs and incorporate them into SMIS operations to enable effective human-machine collaboration. To achieve dynamic perception, SMIS should consider various sources such as user feedback, environmental conditions, and targeted data in order to gain comprehensive insights into stakeholder interactions in multimodal scenarios. This exploration of data characteristics and understanding of state change patterns enable the development of dynamic perception mechanisms for multiple scenarios. Advancements in information technology have enabled the virtual synergy of human behavior and the fusion of nature and human society, ushering in a new era of data [68]. Consequently, when interacting with users and the environment, SMIS needs to acquire and analyze massive amounts of heterogeneous big data from various sources within and outside the system. This involves identifying implicit user needs, adapting to changes in the external environment, promptly responding to user needs, and providing comprehensive service support. Such actions facilitate the synergistic symbiosis of the human-machine. Environmental dataUser dataMachine-environment collaborationHuman-computer-environment collaborationHuman-computer interactionKnowledge/DemandSmart decisionKnowledge serviceSmart solutionEnvironmental dataUser dataHuman-computer-environment collaborationSmart interactionSmart decision serviceOpen and flexible system architectureApplication orchestrationSystem securityProcess managementSystem flow optimizationResource scheduling and configurationResource allocation Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 For instance, in smart healthcare, SMIS can integrate and analyze big data features and knowledge requirements within complex medical scenarios such as diagnosis, treatment, prediction, warning, and rehabilitation. By employing knowledge semantic dynamic modeling methods based on heterogeneous health big data from multiple sources and interpretable machine learning, along with large-scale user collaborative modeling methods for cross-organizational multi-level task requirements, SMIS can achieve highly reliable and interpretable collaborative knowledge reasoning. This approach supports decision-making efficiency and service quality by leveraging healthcare expert experiences and incorporating patient feedback interventions. 5.2 Smart collaborative decision-making and personalized knowledge service model for users’ implicit needs SMIS leverages emerging technologies such as big data, artificial intelligence, and deep learning to enable smart decision-making and scenario-based services. It provides smart decision-making support to users by employing multi-agent learning mechanisms in complex and dynamic environments. Current advancements in this area include multi-agent reinforcement learning based on populations [69], information systems supporting organizational creativity [70], and medical-assisted decision support systems [71]. Future research can explore smart group modeling and adaptive decision models to enhance the capabilities of SMIS. Addressing users’ implicit needs, SMIS should develop personalized knowledge service models to recommend knowledge service solutions using digital twin technology. This approach enhances the system’s knowledge service capabilities and improves user satisfaction. For instance, during major public health emergencies, cross-organizational health data resources from hospitals, public health institutions, and communities can be utilized. A collaborative knowledge inference method based on a multi-case base can generate medical knowledge maps rapidly and dynamically construct cross-organizational case bases. This enables disease risk identification and collaborative decision-making among multiple medical and defense bodies by leveraging joint data and knowledge. Moreover, it facilitates the integration, smart analysis, and active service of medical and health data, and public health monitoring data. This technical support is valuable for dynamic disease monitoring and intelligent collaborative decision-making in the context of medical and defense collaboration. Additionally, in medical prevention and coordination, the personalized knowledge needs of various stakeholders, such as disease control personnel, doctors, and patients at different levels, can be analyzed in dynamic medical prevention and coordination task scenarios. Furthermore, mechanisms for matching the needs with service resources can be explored. This can involve the development of knowledge recommendation methods based on machine reasoning and natural l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i t / . / 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . t / i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 language understanding, as well as multi-grain knowledge matching and retrieval methods. The goal is to provide personalized, dynamic, and smart knowledge services to individuals involved in disease prevention and control. 5.3 Cross-organizational scenario-based approach to system process optimization and resource allocation SMIS plays a crucial role in providing smart decision-making and scenario-based services. To achieve smart decision-making goals and deliver scenario-based services effectively, SMIS needs to optimize process modeling and allocate resources efficiently. This requires the establishment of a flexible system process model and the exploration of methods for customizing and reusing personalized process modules. Furthermore, there is a need to address the demand for flexible and personalized modeling of cross-organizational business processes. Regarding resource allocation, it is essential to study cross-domain, cross-organizational, and cross-departmental resource scheduling models and methods that incorporate smart and intelligence. This research can significantly enhance the efficiency and effectiveness of resource allocation. Given the diverse characteristics of resources in the human-computer system, such as varying sizes, distributions, and dynamics, applying self-organization theory can provide insights into the multi-level resource interaction mechanism across the value chain. Moreover, it can facilitate the development of dynamic self-organization methods for resources to pursue multiple objectives and tasks. By analyzing resource management scenarios and resource optimization goals in complex and dynamic environments, it becomes possible to explore self-adaptive mechanisms for resource allocation, scheduling, and organization. Additionally, research on resource scheduling methods, based on deep reinforcement learning, can address the dynamic needs of multiple subjects and various grain sizes. This not only enables effective interaction and collaboration among multiple subjects within the system process model but also caters to users’ personalized and dynamic needs at different levels. 5.4 Open and flexible management information system architecture and governance system To ensure rapid processing and response to internal and external needs, the architecture of MIS needs to evolve from a traditional centralized structure to a distributed and flexible one. This involves building the system as a distributed and adaptive scheduling multi-subject architecture with reconfigurable real-time tasks. Flexible access system architectures capable of supporting diverse requirements and facilitating agile service creation have already been developed [72]. Additionally, middleware platforms based on OpenStack have been employed to facilitate and orchestrate the offloading process [73]. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / / t . 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d / . t i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 Regarding system architecture, SMIS can adopt an object-oriented approach to plan system functions and achieve flexibility within management information systems. This can be accomplished through the personalized configuration of functional modules and the utilization of multi-agent configuration methods. Hence, SMIS can effectively monitor and manage system functions, processes, and operational status, while also enhancing the system to adapt to environmental changes and individual user needs. Furthermore, the open and flexible architecture of SMIS places greater emphasis on the system’s governance. In terms of SMIS governance, blockchain technology can be explored to establish mechanisms for data quality control, system security protection, and user privacy protection. These mechanisms ensure the continuous and stable operation of the system. 6 Conclusion As an important tool for assisting organizations in management and decision-making, SMIS plays a crucial role in society and organizations. This paper begins by presenting the evolution of SMIS based on previous research and defines the different periods of SMIS, highlighting how management information systems have evolved into the smart period. Next, by analyzing literature related to SMIS over the past decade, the paper summarizes the research hotspots in SMIS and identifies the healthcare, elderly care, manufacturing, and transportation fields as prominent areas where SMIS is widely and maturely applied. Furthermore, the paper examines typical application cases of SMIS, showcasing the significant development potential of SMIS. Lastly, the paper outlines the future development directions of SMIS, focusing on four key aspects: smart human-computer interaction, smart decision-making services, efficient resource allocation, and flexible system architecture. SMIS is capable of addressing complex and ambiguous user needs in real-time, providing users with smart analysis, management, and decision-making services. In future research, it is important to explore diverse human-machine partnerships to enhance the human-like capabilities of SMIS. By leveraging these partnerships, SMIS can deliver more smart and personalized services tailored to the unique requirements of different positions and users in various roles. Additionally, there should be a focus on cross-platform integration of SMIS to enable seamless resource integration and collaboration across domains, organizations, and departments. This cross-platform integration will facilitate the efficient utilization of resources and promote cooperation among different entities. To further advance SMIS, it is crucial to conduct in-depth case studies and experimental research. These studies will provide valuable insights into the practical implementation and impact of SMIS in real-world scenarios. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / . t / 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t . / i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 References [1] [2] [3] [4] [5] [6] [7] [8] [9] [10] [11] [12] [13] [14] [15] [16] [17] Davis G B, Olsen M H. Management information systems: Conceptual foundations, structure, and development. London: McGraw-Hill, 1985. Liu J, Toubia O, Hill S. Content-based model of web search behavior: An application to TV show search. Management Science, 2021, 67(10): 6378-6398. Haki K, Beese J, Aier S, et al. The evolution of information systems architecture: An agent-based simulation model. MIS Quarterly, 2020, 44(1): 155-184. Karahanna E, Xu S X, Xu Y, et al. The needs–affordances–features perspective for the use of social media. MIS Quarterly, 2018, 42(3): 737–756. Jussupow E, Spohrer K, Heinzl A, et al. Augmenting medical diagnosis decisions? An investigation into physicians’ decision-making process with artificial intelligence. Information Systems Research, 2021, 32(3): 713-735. Cheng Z, Pang M-S, Pavlou P A. Mitigating traffic congestion: The role of intelligent transportation systems. Information Systems Research, 2020, 31(3): 653-674. Andronie M, Lăzăroiu G, Iatagan M, et al. Sustainable cyber-physical production systems in big data-driven smart urban economy: A systematic literature review. Sustainability, 2021, 13(2): 751. Wang J, Lim M K, Zhan Y, et al. An intelligent logistics service system for enhancing dispatching operations in an IoT environment. Transportation Research Part E: Logistics and Transportation Review, 2020, 135: 101886. Ali M A M, Basahr A, Rabbani M R, et al. Transforming business decision making with Internet of Things (IoT) and Machine Learning (ML). In 2020 International Conference on Decision Aid Sciences and Application (DASA), 2020: 674-679. Shu J, Liang C, Lu W, et al. Literature review on enterprises cloud-based reengineering of management information system. Journal of the China Society for Scientific and Technical Information, 2015, 34(5): 549-560. (in Chinese) IBM. https://www.ibm.com/ibm/history/history/year_1954.html. Gorry G A, Scott-Morton M S. A framework for management information systems. Sloan Management Review, 1989, 30(3): 49-61. Ravi S, Gregory H, Qilong Z. Artificial intelligence and machine learning in cybersecurity: Applications, challenges, and opportunities for mis academics. Communications of the Association for Information Systems, 2022, 51(1): 179-209. Shen K, Liang C, Zhao S. Open architecture of MIS based on cloud. Computer Technology and Development, 2014, 24(10): 21-25. (in Chinese) IBM. https://www.ibm.com/ibm/history/ibm100/us/en/icons/smarterplanet/. Chatterjee S, Kar A K, Mustafa S Z. Securing IoT devices in smart cities of India: from ethical and enterprise information system management perspective. Enterprise Information Systems, 2021, 15(4): 585-615. Anthony Jnr B. Managing digital transformation of smart cities through enterprise architecture – A review and research agenda. Enterprise Information Systems, 2021, 15(3): Archives: Available Available Smarter Planet, 1954, 2008. 1954. IBM at: at: l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / / t . 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . / t i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 [18] [19] [20] [21] [22] [23] [24] [25] [26] 299-331. Zekić-Sušac M, Mitrović S, Has A. Machine learning based system for managing energy efficiency of public sector as an approach towards smart cities. International Journal of Information Management, 2021, 58: 102074. Hanen I, Thierry V. Smart systems for E-Health. Springer International Publishing, 2021. Soni M, Singh D K. Privacy-preserving authentication and key-management protocol for health information systems. CRC Press, 2021. Dwivedi R, Mehrotra D, Chandra S. Potential of Internet of Medical Things (IoMT) applications in building a smart healthcare system: A systematic review. Journal of Oral Biology and Craniofacial Research, 2022, 12(2): 302-318. Zhang X, Ming X. An implementation for Smart Manufacturing Information System (SMIS) from an industrial practice survey. Computers & Industrial Engineering, 2021, 151: 106938. Zuo Y. Making smart manufacturing smarter – A survey on blockchain technology in Industry 4.0. Enterprise Information Systems, 2021, 15(10): 1323-1353. Beverungen D, Kundisch D, Wünderlich N. Transforming into a platform provider: Strategic options for industrial smart service providers. Journal of Service Management, 2021, 32(4): 507-532. Abdel-Basset M, Moustafa N, Hawash H, et al. Federated intrusion detection in blockchain-based smart transportation systems. IEEE Transactions on Intelligent Transportation Systems, 2022, 23(3): 2523-2537. Ali M H, Jaber M M, Abd S K, et al. Big data analysis and cloud computing for smart transportation system integration. Multimedia Tools and Applications, 2022. [28] [30] [29] [27] Wu Y, Dai H N, Wang H, et al. A survey of intelligent network slicing management for industrial IoT: Integrated approaches for smart transportation, smart energy, and smart factory. IEEE Communications Surveys & Tutorials, 2022, 24(2): 1175-1211. Sinulingga M, Djati P, Thamrin S, et al. Antecedents and consequences of smart management information system for supervision to improve organizational performance. International Journal of Membrane Science and Technology, 2023, 10(2): 816-824. Berdik D, Otoum S, Schmidt N, et al. A survey on blockchain for information systems management and security. Information Processing & Management, 2021, 58(1): 102397. Alzoubi H M, Alshurideh M, Ghazal T M. Integrating BLE Beacon technology with intelligent information systems IIS for operations’ performance: A managerial perspective. In Proceedings of the International Conference on Artificial Intelligence and Computer Vision (AICV2021), 2021: 527-538. Gaurav A, Gupta B B, Panigrahi P K. A comprehensive survey on machine learning approaches for malware detection in IoT-based enterprise information system. Enterprise Information Systems, 2023, 17(3): 2023764. Lv X, Li M. Application and research of the intelligent management system based on Internet of Things technology in the era of Big Data. Mobile Information Systems, 2021, 2021: 6515792. Dhillon A, Singh A, Vohra H, et al. IoTPulse: Machine learning-based enterprise health information system to predict alcohol addiction in Punjab (India) using IoT and fog computing. Enterprise Information Systems, 2022, 16(7): 1820583. [32] [31] [33] l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i t / / . 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d / t . i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 [34] [35] [36] [37] [38] [39] [40] [41] [42] [43] [44] [45] [46] [47] [48] [49] [50] [51] Gu D, Li J, Li X, et al. Visualizing the knowledge structure and evolution of big data research in healthcare informatics. International Journal of Medical Informatics, 2017, 98: 22-32. Gu D, Liang C, Zhao H. A case-based reasoning system based on weighted heterogeneous value distance metric for breast cancer diagnosis. Artificial Intelligence in Medicine, 2017, 77: 31-47. Gu D, Li M, Yang X, et al. An analysis of cognitive change in online mental health communities: A textual data analysis based on post replies of support seekers. Information Processing & Management, 2023, 60(2): 103192. You-Yu D, Guanlong L. Construction and evaluation of China elderly care service smart supply chain system. medRxiv, 2023: 23291093. Qin S, Zhang M, Hu H, et al. Smart elderly care: An intelligent e-procurement system for elderly supplier selecting. Systems, 2023, 11(5): 251. Lin Q, Zhang D, Ni H, et al. An integrated service platform for pervasive elderly care. In 2012 IEEE Asia-Pacific Services Computing Conference, 2012: 165-172. Bettini C, Brdiczka O, Henricksen K, et al. A survey of context modelling and reasoning techniques. Pervasive and Mobile Computing, 2010, 6(2): 161-180. Rachuri K K, Efstratiou C, Leontiadis I, et al. METIS: Exploring mobile phone sensing offloading for efficiently supporting social sensing applications. In 2013 IEEE International Conference on Pervasive Computing and Communications (PerCom), 2013: 85-93. Hussain A, Wenbi R, da Silva A L, et al. Health and emergency-care platform for the elderly and disabled people in the Smart City. Journal of Systems and Software, 2015, 110: 253-263. Su C-J, Chiang C-Y. IAServ: An intelligent home care web services platform in a cloud for aging-in-place. International Journal of Environmental Research and Public Health, 2013, 10(11): 6106-6130. Lee J, Lapira E, Bagheri B, et al. Recent advances and trends in predictive manufacturing systems in big data environment. Manufacturing Letters, 2013, 1(1): 38-41. Theorin A, Bengtsson K, Provost J, et al. An event-driven manufacturing information system architecture for Industry 4.0. International Journal of Production Research, 2017, 55(5): 1297-1311. Tao F, Qi Q, Liu A, et al. Data-driven smart manufacturing. Journal of Manufacturing Systems, 2018, 48: 157-169. Zhang L, Luo Y, Tao F, et al. Cloud manufacturing: A new manufacturing paradigm. Enterprise Information Systems, 2014, 8(2): 167-187. Tao F, Cheng Y, Xu L D, et al. CCIoT-CMfg: Cloud computing and Internet of Things-based cloud manufacturing service system. Ieee Transactions on Industrial Informatics, 2014, 10(2): 1435-1442. Qian L, Luo Z, Du Y, et al. Cloud computing: An overview. In Cloud Computing, 2009: 626-631. Gong C, Liu J, Zhang Q, et al. The characteristics of cloud computing. In 2010 39th International Conference on Parallel Processing Workshops, 2010: 275-279. Dai H-N, Wang H, Xu G, et al. Big data analytics for manufacturing internet of things: l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i / / . t 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d / . t i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 [52] [53] [54] [55] [56] [57] [58] [59] [60] [61] [62] [63] [64] [65] [66] Opportunities, challenges and enabling technologies. Enterprise Information Systems, 2020, 14(9-10): 1279-1303. Li X, Wan J, Dai H N, et al. A hybrid computing solution and resource scheduling strategy for edge computing in smart manufacturing. Ieee Transactions on Industrial Informatics, 2019, 15(7): 4225-4234. Saarika P S, Sandhya K, Sudha T. Smart transportation system using IoT. In 2017 International Conference On Smart Technologies For Smart Nation (SmartTechCon), 2017: 1104-1107. Jan B, Farman H, Khan M, et al. Designing a smart transportation system: An internet of things and big data approach. IEEE Wireless Communications, 2019, 26(4): 73-79. Tang V W s, Cao Y Z J. An intelligent car park management system based on wireless sensor networks. In 2006 First International Symposium on Pervasive Computing and Applications, 2006: 65-70. Aamir M, Masroor S, Ali Z A, et al. Sustainable framework for smart transportation system: A case study of Karachi. Wireless Personal Communications, 2019, 106(1): 27-40. Xiao H, Zuo Q, Zhu D, et al. Resource allocation algorithm in D2D-enabled C-V2V vehicle cooperative communication. Journal of University of Electronic Science and Technology of China, 2021, 50(5): 689-696. (in Chinese) Liang C, Gu D, Tao F, et al. Influence of mechanism of patient-accessible hospital information system implementation on doctor–patient relationships: A service fairness perspective. Information & Management, 2017, 54(1): 57-72. Harman. Accelerate insights-driven decisions at the point of care with HARMAN Intelligent at: https://services.harman.com/platforms/intelligent-healthcare-platform. Liang C, Hong W, Ma Y. Universal elderly care: A new development model of smartelderly care in the new era. Journal of Beijing Institute of Technology (Social Sciences Edition), 2022, 24(06): 116-124. (in Chinese) Lu Y H, Lin C C. The study of smart elderly care system. In 2018 Eighth International Conference on Information Science and Technology (ICIST), 2018: 483-486. Ransing R S, Rajput M. Smart home for elderly care, based on Wireless Sensor Network. In 2015 International Conference on Nascent Technologies in the Engineering Field (ICNTE), 2015: 1-5. Information H. at: care https://www.i-hengfeng.com/detail.html?code=providing&level1_code=solutions&isMan y=1. (in Chinese) Haier. COSMOPlat Industrial https://www.haier.com/haier-ecosystem/cosmoplat/.(in Chinese) intelligent Baidu. Baidu Apollo transportation 2021. https://www.smartcity.team/news/apollo_ace2/.(in Chinese) Aggarwal S, Chaudhary R, Aujla G S, et al. Blockchain for smart communities: Applications, challenges and opportunities. Journal of Network and Computer Applications, 2019, 144: 13-48. transportation white paper - ACE Available intelligent at: 2023. Available 2023. Available Healthcare solutions, Available Platform, platform, Internet elderly engine Smart 2023. 2.0, at: l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i . / / t 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d t . / i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3 Data Intelligence Just Accepted MS. https://doi.org/10.1162/dint_a_00231 [67] [68] [69] [70] [71] [72] Gretzel U, Sigala M, Xiang Z, et al. Smart tourism: foundations and developments. Electronic Markets, 2015, 25(3): 179-188. Trček D, Trobec R, Pavešić N, et al. Information systems security and human behaviour. Behaviour & Information Technology, 2007, 26(2): 113-118. Jaderberg M, Czarnecki W M, Dunning I, et al. Human-level performance in 3D multiplayer games with population-based reinforcement learning. Science, 2019, 364(6443): 859-865. Olszak C M, Bartuś T, Lorek P. A comprehensive framework of information system design to provide organizational creativity support. Information & Management, 2018, 55(1): 94-108. Gu D, Su K, Zhao H. A case-based ensemble learning system for explainable breast cancer recurrence prediction. Artificial Intelligence in Medicine, 2020, 107: 101858. Kani J I, Yoshino M, Asaka K, et al. Flexible access system architecture (FASA) to support diverse requirements and agile service creation. Journal of Lightwave Technology, 2018, 36(8): 1510-1515. [73] Merlino G, Dautov R, Distefano S, et al. Enabling workload engineering in edge, fog, and cloud computing through OpenStack-based middleware. ACM Trans Internet Technol, 2019, 19(2): 1-22. l D o w n o a d e d f r o m h t t p : / / d i r e c t . m i t . e d u d n / i t / l a r t i c e - p d f / d o i / i t / / . 1 0 1 1 6 2 d n _ a _ 0 0 2 3 1 2 1 5 6 5 0 6 d n _ a _ 0 0 2 3 1 p d . / t i f b y g u e s t t o n 0 7 S e p e m b e r 2 0 2 3Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen
Inteligencia de datos recién aceptada MS. imagen

Descargar PDF