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Design of English Teaching Resource Sharing and Remote Classroom Platform Based on Cloud Computing Technology

  
22. Sept. 2025

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COVER HERUNTERLADEN

Introduction

The core concept of cloud computing is to use the network to unify the management and scheduling of a large number of computing resources, and to form an integrated and effective pool of computing resources, so as to provide the corresponding services according to the user’s needs [1-2]. The “cloud” is the network that provides computing resources with unlimited scalability, which can be accessed at any time, expanded at any time, and called according to demand [3-4]. Cloud computing can provide computing resources with infinity from the user demand, users do not need to prepare the plan or budget needed for computing capacity, greatly reducing the resource base construction investment [5-6]. Shared teaching resource base constructed based on cloud computing has the advantages of stable and fast, standardization, high security of resources as well as easy and friendly operation of resource base [7-8].

The advent of the big data era and the promotion of cloud computing technology have given teaching resource libraries a distinctive shared character [9-10]. Relying on cloud computing technology, integrating information technology and curriculum to establish a shared teaching resource base is an inevitable trend in the development of education informatization [11-12]. English as a course to cultivate students’ comprehensive use of English, the improvement of its teaching quality can not be obtained from the classroom alone, we should make full use of all kinds of teaching resources, and jointly establish a shared teaching resource base to provide students with a richer platform for learning and use, so that students can enjoy a more high-quality, rich, diversified and personalized independent learning services, and improve students’ comprehensive use of English. The quality of English teaching can be improved only when students are able to enjoy more high-quality, rich, diversified and personalized independent learning services and improve their comprehensive use of English [13-15]. Based on cloud computing technology, it can truly realize this educational goal, provide a better platform for English teaching, cultivate more highly skilled talents, and provide a lifelong learning platform for students [16-17].

The construction of a service-oriented intelligent foreign language teaching platform has become a major trend in international English teaching and an inevitable trend in China’s English teaching reform [18-19]. The intelligent English teaching platform can break the traditional English teaching mode, realize the sharing of resources and information, and enable teachers and students to have more communication opportunities, in which teachers can improve their English teaching level, thus, improving the overall English teaching level in China [20-21].

Around the technical characteristics and connotations of cloud computing, many researchers have analyzed the benefits of cloud computing technology for the field of education, which involves a number of aspects, including the contribution of teaching and learning resources, the cost of education, the effectiveness of teaching and learning, and knowledge management. Literature [22] examines the practical effects and advantages of cloud computing in education, discussing in detail from the perspectives of cost, resource virtualization, and user concepts, and concludes that cloud computing empowers education to bring teachers and students a more economical and efficient mode of teaching. Literature [23] systematically reviewed the research related to collaborative learning models based on cloud computing, revealing that cloud computing technology tools are used in collaborative learning models by providing sharing, editing, and interactive services, and the study provides important references for scholars and researchers in the field of education to understand how cloud computing technology can be introduced into the field of education. Literature [24] focuses on the cutting-edge applications and potential challenges of cloud computing technology in the education field, and puts forward some optimization suggestions, which makes a positive contribution to the further development of cloud computing technology in the education field. Literature [25] examines the current status of cloud computing technology application in colleges and universities based on the relevant literature of empirical research, points out that cloud computing technology is very broadly applied in the field of teaching and management in colleges and universities, and provides a detailed discussion of the advantages and potential optimization points demonstrated by cloud computing technology. Literature [26] conducted a teaching experiment to explore the performance of cloud computing technology services in knowledge management practices and the association between knowledge management practice expectations and the perceived usefulness of cloud computing services, and the results of the study showed that the perceived usefulness of cloud computing technology is significantly associated with knowledge creation, discovery, storage and sharing.

Literature [27] conceptualized an English smart teaching model with virtual reality technology as the core logic, and verified it with experimental classes, which clarified that the proposed smart teaching model effectively makes up for the shortcomings of the traditional English classroom, provides more interesting teaching resources and materials, and has a positive impact on the improvement of students’ English knowledge and skills. Literature [28] analyzed the FiF Smart Learning Platform launched by Leshan Normal College in China, which fully promotes the reform of university English teaching classification and grading, and promotes the improvement of students’ English learning efficiency. Literature [29] combines the Internet of Things technology to build a smart classroom that integrates teaching, resource sharing, and learning interaction into one platform, and evaluates it based on the fuzzy hierarchical evaluation method, confirming the superior performance of the proposed smart classroom. Literature [30] aims to broaden the access to English teaching resources and improve the teaching efficiency of the English online platform, introduces machine learning algorithms to optimize the online English teaching platform, establishes new system functional modules and logical structure, and identifies the optimized English teaching platform through mathematical and experimental analysis methods, which confirms that the optimized English teaching meets the needs of actual teaching. Literature [31] discusses the connotation of AI technology and the value played by integrating English teaching, and analyzes in detail the construction and application of the English intelligent teaching platform with AI technology as the underlying architecture from four dimensions, which further promotes the informatization and intelligent construction of English teaching. The above study explores the construction process and the demonstrated value of the English intelligent informatization teaching platform based on virtual reality, artificial intelligence, Internet of Things and other information intelligence technologies, which promotes the modern construction and development of English teaching.

In this paper, we first establish a digital English teaching resources database, integrate different types of English teaching resources to form a unified resource pool. After that, cloud computing technology is used to schedule resources to achieve rapid response and efficient utilization. Finally, on the basis of the resource structure of the cloud platform, the educational application service module, the resource layer, and the audit teaching resource module, a framework for constructing a resource sharing authentication is constructed to realize the safe sharing of English teaching resources. On this basis, the performance of the platform is analyzed, and it is applied in actual teaching to test its effectiveness.

Teaching resource sharing and teleclassroom platform design
Methods of sharing digital English teaching resources
Establishment of a database of digitized English language teaching resources

In this paper, we propose a network teaching resource management system based on network environment, which integrates the positioning information of various communication and transmission interfaces to generate a complete data collection and upload it to the digital teaching resource library [32]. Users can download the data to the cloud through the data transfer [33] function of cloud computing, and the data transfer function of the data can be expressed as follows: a(s)=w2s2+q

Where a is the time required to upload data from the cloud, w is the caching factor used for platform operation, s is the rate of data transfer, and q is the amount of information uploaded at one time. On this basis, it is assumed that each module of each cloud platform has the same data-aware environment, but different data types have their own characteristics. When performing resource attribute segmentation, set an attribute parameter associated with digital textbook materials. Then there are: r2=(1e11)1+e11(k11+e21)2

In the formula, r represents the association between the attribute parameters and the cloud data; k11 represents the cognitive coefficient of the characteristics of this data; e11,e21 represents the amount of data carried by the cloud at different moments. Constructing a specific relationship expression makes the degree of association between different attribute parameters and cloud data clearer, and realizes the establishment of digital English teaching resources database.

Integration of English language teaching resources

In constructing the integration model of quality teaching resources, this paper uses cloud computing technology as a parallel computing framework for information resources in the constructing model.

Data Access and Mining When accessing these digital English teaching resources storage databases, Extensible Markup Language (XML) [34] is used to mine the information resources contained in the requests. As a universal data description language, XML can effectively describe and store various types of teaching resources, facilitating subsequent processing and analysis.

Data Detection and Processing In the process of establishing an integrated model of digital English teaching resources, the standardization of data information is crucial. Therefore, this paper carries out strict detection of data information. When there is data information in the model that does not meet the specification, these data will be returned to the teaching resources database for secondary analysis and mining to ensure the quality and accuracy of the data. Only when the data information meets the specification, the integrated model of digital English teaching resources will directly output the corresponding information for users to use.

Establishment of a shared database of English language teaching resources

In this paper, the database for constructing a secure sharing platform for English teaching resources includes three parts: the teaching resources database, the user information database and the learning sign-in database. The English teaching resources database is mainly used to store information such as teaching resources of English courses. The user information database is mainly used to store data including the name, email address and personal profile of registered users, and administrators can manage the data after logging into the system for identity authentication. Different modularized teaching resources are constructed, and the data information is transformed into the form of database management platform records, so as to realize the internal sharing between information resources, and this mode is used as the interaction interface between the program and the database. The location information of each communication and transmission interface is summarized to form a complete set of data sets and uploaded to the platform cloud. The data is uploaded to the cloud by utilizing the data transfer function in the cloud. The expression of its information data transfer function is: a(s)=w2s2+q

Where: a represents the length of time experienced by the data uploaded to the cloud; w represents the buffer coefficient of the platform operation; s represents the data transmission speed; q represents the amount of data uploaded on a single occasion. It is assumed that each module of cloud computing in the platform has the same data sensing conditions and different types of data have different properties. When segmenting the resource attributes, it is necessary to set an attribute parameter, and the expression of the relationship between this attribute parameter and the cloud data is: r2=(1e11)1+e11(k11+e21)2

Where: r denotes the relationship between the attribute parameters and the data in the cloud; k0 denotes the attribute-awareness coefficient of the data, and e11,e21 denotes the total amount of data that can be carried by the cloud at different moments.

Teaching Resource Sharing and Remote Classroom Platform Construction
Shared platform business process design

The business process of the platform is the uploading and downloading process of teaching resources, and user identity authentication is set up in the login interface of the platform.

After successful login, the user enters the half-platform teaching resource sharing space, and completes the uploading and downloading of teaching resources in the space. Platform resource uploading is only for the platform administrator, ordinary student users are not authorized to upload teaching resources on the platform, so when users send upload resource service requests to the platform, the platform will check the user information. In order to distinguish between the two kinds of users, the platform divides the users into two kinds, S**** and A**** , in which the user beginning with S is a senior user, i.e., a user who has the authority to upload teaching resources, and the user beginning with A is an ordinary user, and the platform recognizes the user’s identity and examines whether the user has the authority to upload teaching resources. The identification process is expressed by the following formula: f=N=1SNP

Where: f indicates the user identity authority level; N indicates the number of platform user identity authority levels; SN indicates the N th user identity authority level code; P indicates the first user identity information code, which is utilized to identify the user identity authority. In order to avoid duplication of teaching resources on the platform, duplication verification of uploaded teaching resources on the platform is designed, and the duplication rate of teaching resources is calculated by comparing the uploaded teaching resources with the resources in the cloud database with the following formula: q=e/ω¯

Where: q denotes the duplication rate of teaching resources to be uploaded; e denotes the number of keywords in the uploaded teaching resources that are consistent with the keywords in the platform’s cloud database; ω¯ denotes the total number of keywords in the uploaded teaching resources.

The correlation coefficient between the keywords and the teaching resource files is calculated with the following formula: k=n=1yn(m+a)/g

Where: k indicates the correlation coefficient between the keywords and the teaching resource files; n indicates the number of teaching resource files in the cloud data array of the platform; yn indicates the n th teaching resource file; m indicates the name of the teaching resource file and the semantic value; a indicates the semantic value of the content of the original file of the College of Teaching and Learning; and g indicates the semantic value of the keywords in the front. According to the size of the correlation coefficient value, the teaching resource files are sorted, and according to the order of arrangement, the original files of the teaching college are displayed on the platform display interface, and the lower right end of each file is designed as a down compare port, through which the user can down compare the teaching resource files on the surface, thus realizing the sharing of teaching resources.

Architecture of the open sharing platform for teaching resources

The schematic diagram of the architecture of the open sharing platform for teaching resources is shown in Fig. 1. The platform is structured on a cloud computing platform, with (1) a service layer, which is responsible for providing users with a direct entrance to the sharing service, and users can access the sharing platform at any time through computers and mobile devices. (2) Management layer, responsible for providing the level of platform management functions, the cloud computing provider manages and maintains hardware devices and software storage and computing and other functions. (3) Resource layer, the key part of realizing the function of integrating teaching resources, where each school uploads its own teaching resources to the platform’s cloud resource pool to realize virtual storage through a unified interface.

Figure 1.

Architecture diagram of the open sharing platform of teaching resources

Construction of Cloud Computing-based Distance Learning Resources Sharing Platform
Cloud platform resource architecture design

The main task of resource integration is to transfer the high-quality English teaching resources stored in the original platform to the cloud platform and to complete the resource information according to the resource structure of the cloud platform. Since the traditional distance learning resource sharing platform adopts certain information maintenance means during the construction, it is not difficult to synchronize the existing English teaching resources to the cloud platform, and the completion of the complementary information on the cloud platform can be continued to display the teaching on the cloud platform.

Education application service design

The educational application service design part mainly includes 4 parts, namely, educational storage service, remote classroom service, faculty management service and educational portal service.

Educational Storage Service. The educational storage service constructed by the remote teaching resources sharing platform centralizes the storage of high-quality English teaching resources in the Hadoop storage cluster, so that English teaching resources can be read and used quickly and conveniently.

Remote Classroom Service. Teachers can release course-related arrangements and play course teaching videos through computer networks, so that students can study remotely at any time and place through network terminal devices, and test the learning effect in time with the help of online exams.

Academic management services. Teaching management services help schools, educational institutions and other units to effectively realize the information management of educational and teaching activities, the use of educational and teaching knowledge management tools, educators, educated people for the implementation of effective management of the course.

Education portal service. It provides centralized services mainly for educational units, standardizes the management of educational websites within educational units, and reduces management and R&D costs.

Resource management

The distance learning resource sharing platform [35-36] specifically includes two parts: physical resources and resource pool. This layer mainly uses the virtual technology of cloud computing to centrally manage the platform hardware equipment, establish a virtualized hardware resource pool, and provide shared services such as storage, computing, and data resources. Physical resources are composed of computer network infrastructure equipment, servers, databases, etc. of major universities, key educational institutions, and training institutions.

Auditing the Teaching Resources Module

When the entire distance learning resource sharing platform module starts to run, first of all, you need to click on the ID value of the resource contained in the resources field value in the resource review page, and at the same time, utilize the get-all within the request to open the platform storage system, from which you need to find the teaching resources for review. After that, the get-by-id method within Resource is utilized to get the basic information related to the teaching resource. Finally, the old and new information is integrated and centrally reviewed to obtain the review results, which are kept by the storage terminal.

Building an authentication framework for secure sharing

In this paper, firstly, cloud computing technology is adopted to realize data sharing, and secondly, Byzantine fault-tolerant consistency algorithm is utilized to construct the identity authentication system of digital teaching resources under the premise of ensuring data security. In this architecture, virtual data are treated like ordinary nodes, while other nodes may contain invalid data or suffer from malicious attacks, and the total number of nodes in the framework |R| Eq: |R|=3f+m

Where, f is the virtualized data node and m is the number of invalid nodes.

The master node of the authentication architecture performs hash value checking instantly when a user makes a request to share data with other users.

The program is denoted as: M=Hi(KG)n

Where M is the data that has passed the hash value verification, Hi is the hash value of data i , K is the source area of the data sharing request, and G is the number of nodes traversed by the data verification. Through the hash value test, to determine whether the data on the request side is real, valid, so as to ensure the security and reliability of the data.

Performance analysis of the resource-sharing teleclassroom platform

In order to test the performance of the shared professional practice teaching resource platform in colleges and universities, this paper carries out numerical simulation of the design platform and compares the design platform with the blockchain-based resource sharing platform and the Internet-based resource sharing platform. The platform test uses AliCloud Hadoop to build a cloud storage environment, in which 1 cluster is set up with 4 hosts. Hosts 1, 2, and 3 have the same disk memory, physical storage, and swap space, which are 1.0 TB, 125.6 GB, and 82.5 GB, respectively; while these three parameters of host 4 are 2.5 TB, 157.8 GB, and 112.4 GB, which are different from hosts 1, 2, and 3.

In order to objectively evaluate the sharing performance of the design platform, two scenarios are set up: Scenario 1, which controls the number of resource demanders from 1 to 10 with a fixed number of professional practice teaching resource providers; and Scenario 2, which controls the number of resource providers from 1 to 10 with a fixed number of professional practice teaching resource demanders. In these two test scenarios, three platforms are used to share professional practice teaching resources, and the number of operations per second of each platform is analyzed during the resource sharing process, so as to judge the sharing efficiency of the platforms.

Time test for sharing of platform resources

The test results of the shared professional practice teaching resources platform in colleges and universities are shown in Figure 2. The number of operations per second required when sharing resources on the control group platform grows exponentially with the increase in the number of resource demanders, indicating that the more people share professional practice teaching resources, the lower the sharing efficiency of the platform. The number of operations per second required when sharing resources on the cloud computing platform has been in a more stable state and will not be affected by changes in the number of people sharing resources. It shows that the cloud computing-based university shared professional practice teaching resources platform can effectively shorten the matching and selection time in the process of resource sharing, thus enhancing the sharing efficiency of the platform.

Figure 2.

The test of the Shared professional practice teaching resource platform

Performance Test on Classification of Teaching Resources

In order to verify the reasonable effectiveness of the design scheme of the teaching resource sharing platform proposed in this paper, simulation experiments are conducted to compare with the traditional 2 methods in terms of classification accuracy and teaching resource sharing efficiency. The experiment was realized on Windows 7 with Internet InformationServer 10 and above as server and SOL Server 2017 was selected for the resource server. Categorization of Instructional Resources Accuracy Design Experiment. Two hundred teaching resources were selected and categorized into five categories: listening, speaking, reading, writing, and science, with a total of 40 teaching materials in each category. The method of this paper was utilized to validate with 2 traditional methods in terms of classification accuracy.

The classification results of the three methods on 200 teaching resources are shown in Table 1. It can be seen that for the same number of classified objects, the average classification accuracy of this paper’s method on teaching resources is as high as 99%, which is significantly higher than that of the blockchain platform (89.5%) and the Internet platform (94%), indicating that the classification algorithm of this paper is optimal. The higher the classification accuracy, the greater the promotion role in resource sharing at a later stage.

Three methods of classification of 200 teaching resources

Research method Class Class 1 Class 2 Class 3 Class 4 Class 5
Cloud computing remote resource sharing platform The number of resources that are properly classified 40 40 39 40 39
Accuracy(%) 100 100 97.5 100 97.5
Average accuracy(%) 99
Block chain platform The number of resources that are properly classified 34 37 37 36 35
Accuracy(%) 85 92.5 92.5 90 87.5
Average accuracy(%) 89.5
Internet platform The number of resources that are properly classified 38 35 39 40 36
Accuracy(%) 95 87.5 97.5 100 90
Average accuracy(%) 94

In order to ensure the fairness of the experiment, the sharing operation is carried out on 200 teaching resources that have been categorized, and only the time from the beginning of the search to the end of the sharing is selected as the basis for judgment, and a total of 10 experiments are carried out.The results of the comparison of the efficiency of the sharing of teaching resources of the three methods are shown in Fig. 3. It can be seen that when sharing teaching resources using the method of this paper, the average time is 1.004s, while the blockchain platform method takes 3.044s, and the Internet platform method takes 3.562s, which indicates that the method of this paper greatly improves the efficiency of resource sharing after integrating classification and sharing.

Figure 3.

Three methods teaching resource sharing efficiency comparison results

Platform performance with different number of experiments

In order to verify the effectiveness and performance of the Java-based computer network teaching resource sharing system, this paper designs a specific simulation experiment environment. This environment limits the maximum number of concurrent connections to 500.Meanwhile, this paper simulates 100 clients, each configured with a 2-core CPU and 8 GB of RAM running Windows 7.In terms of network, this paper adopts the Cloud Platform Remote Resource Sharing System, which is set up with a bandwidth of 200 Mbps, a latency of 5 ms, and a packet loss of 0.1% to simulate a real network environment. In this paper, the performance of the designed system is quantitatively tested under different number of experiments.

The performance of the platform under different number of experiments is shown in Table 2. Analyzing the experimental results, it can be observed that in Experiment No. 1, when the server CPU usage is 75%, memory occupancy is 80%, and there are 103 clients and 363 concurrent connections, the system has an average response time of 1.03 s and a throughput of 80 MB/s. This indicates that the system performs well under lighter server load and network conditions. In contrast, the data for experiment number 3 shows that under a heavier server load (81% CPU utilization and 86% memory usage) and when the number of clients increased to 75 and the number of concurrent connections reached 336, even though the network conditions (bandwidth of 200 Mbps, latency of 5 ms, and packet loss of 0.1%) remained unchanged, the average response time increased to 2.24 seconds and the throughput decreased to 60 MB/s. This indicates that the increase in server load significantly affects the system performance.

Performance of platform performance under different experimental times

Performance performance 1 2 3 4 5 6 7 8 9 10
Server CPU utilization(%) 75 63 81 68 77 80 61 64 75 63
Server memory occupancy(%) 80 68 86 73 82 85 66 69 80 68
Number of clients 103 66 75 52 55 65 83 91 103 66
Concurrent link number 363 236 336 389 265 276 261 471 363 236
Network broadband (Mbps) 200 200 200 200 200 200 200 200 200 200
Network delay(ms) 5 5 5 5 10 20 50 5 5 50
Packet loss(%) 1 3 0 1 5 1 5 0 1 1
Resource size(MB) 15 15 120 15 15 120 15 120 15 15
Resource type Picture Text Video Audio frequency Picture Text Video Audio frequency Picture Text
Average response time (s) 1.03 1.18 2.24 0.75 1.89 5.58 2.17 1.72 1.13 2.18
Effectiveness of the application of the English language teaching platform

In the course of this study, two classes of sophomore English majors in a university in City A were selected for the experiment. The experimental class was taught using the resource-sharing remote classroom platform proposed in this paper, and the control class was taught using the traditional teaching mode. The experimental process lasted for three months. At the end of the experiment, a questionnaire survey was conducted on the experimental and control classes with exactly the same questions. There were 57 and 55 questionnaires in the control class and the experimental class, respectively, and the effective recovery rate of the questionnaires was 100%.

Pre-test analysis
Results of the survey on interest in learning

The survey statistical results of the experimental pre-test of learning interests of the experimental and control classes are shown in Table 3. The results show that in the results of the experimental pre-test, the results of the learning interest survey of the students in the two classes on the three questions I like to take English classes, I will feel happy in English classes, and I will take the initiative to communicate in English are very close to each other, and there is almost no difference.

The results of the experiment before the experiment

Question Options Proportion of the comparison class(%) The proportion of the experimental class(%)
I like English class Coincidence 41 43
General 38 37
Discrepancy 21 20
I’ll be happy with English lessons Coincidence 37 37
General 40 42
Discrepancy 23 21
I will actively communicate in English Coincidence 16 18
General 43 39
Discrepancy 41 43
Results of the learning initiative survey

The results of the students’ learning initiative survey are shown in Table 4. The results show that there is very little difference in the students’ satisfaction with the results of the survey on learning initiative with regard to the three questions of I am willing to actively participate in all the activities in English class, I am willing to spend more time on English learning after class, and I can take the initiative to complete my English homework. Specifically, the percentages of students in the control class who chose to conform to the descriptions of the above three questions were 32%, 32% and 38% respectively; the corresponding percentages of students in the experimental group chose to conform to the descriptions were 31%, 34% and 37% respectively. And the percentage of students in both classes for the other options is similar to that of the conforming option. Obviously, there is no significant difference in the results of the survey on learning initiative between the students of the two classes before the beginning of the experiment.

Study the results of the previous survey

Question Options Proportion of the comparison class(%) The proportion of the experimental class(%)
I am willing to actively participate in all activities in English class Coincidence 32 31
General 32 34
Discrepancy 36 35
I would like to spend more time in English learning Coincidence 32 34
General 35 36
Discrepancy 33 30
I can do my homework in English Coincidence 38 37
General 35 29
Discrepancy 27 34
Results of the Learning Effectiveness Survey

The results of the students’ learning efficiency survey are shown in Table 5. In the results of the students’ survey on learning efficiency, there are very small differences in their satisfaction with the three questions: my concentration in English class, compared with the previous semester, I think my English learning efficiency has improved, and compared with the previous semester, I have made progress in listening, speaking, reading, writing, and so on. Specifically, the percentage of students in the control class who chose to conform to the descriptions of the above three questions was 32%, 8% and 11% respectively; the corresponding percentage of students in the experimental group chose to conform to the descriptions of the above three questions was 31%, 7% and 10% respectively. And the percentage of students in both classes for the other options is similar to that of the conforming option. Obviously, there is no significant difference between the results of the two classes of students on the study efficiency survey before the beginning of the experiment.

The results of the survey of the study efficiency experiment

Question Options Proportion of the comparison class(%) The proportion of the experimental class(%)
My attention is focused on my English class Coincidence 32 31
General 40 39
Discrepancy 28 30
I think my English learning efficiency has improved compared to the school period Coincidence 8 8
General 84 85
Discrepancy 8 7
I have made progress in listening, speaking, reading and writing compared to my school period Coincidence 11 10
General 80 79
Discrepancy 9 11
Pre-test independent samples t-test group statistics

Based on the above statistical results, this paper uses SPSS software to conduct independent samples T-test on the questionnaire survey pre-test data. The statistical results of the independent sample t-test group of the questionnaire pre-test are shown in Table 6. The mean values of the students’ responses to the nine questions in the control group ranged from 1.8611 to 2.7888, and those in the experimental group ranged from 1.8768 to 2.7819. It can be seen that the difference between the questionnaire results of the control class and the experimental class is not obvious, and the subsequent experiment can be carried out normally.

Test group statistics for independent sample test

Investigation problem Experimental object Mean value Standard deviation Standard error mean
I like English class Control group 1.8964 0.6799 0.1848
Experimental group 1.8768 0.5965 0.1896
I would like to spend more time in English learning Control group 1.8611 0.727 0.1494
Experimental group 1.8802 0.6089 0.1373
I will actively communicate in English Control group 1.9884 0.6773 0.1018
Experimental group 1.9763 0.7408 0.1023
I am willing to actively participate in all activities in English class Control group 1.9275 0.8518 0.1441
Experimental group 1.9423 0.7664 0.1437
I would like to spend more time in English learning Control group 2.7888 0.4699 0.1387
Experimental group 2.7819 0.5504 0.1483
I can do my homework in English Control group 1.9214 0.5002 0.1545
Experimental group 1.9085 0.6999 0.1541
My attention is focused on my English class Control group 1.9328 0.55 0.1155
Experimental group 2.0349 0.8545 0.1089
I think my English learning efficiency has improved compared to the school period Control group 2.0668 0.592 0.2518
Experimental group 2.0587 0.8089 0.1298
I have made progress in listening, speaking, reading and writing compared to my school period Control group 2.0751 0.6466 0.1738
Experimental group 2.0751 0.8045 0.1788
Post-test analysis
Findings from the Learning Interests Experiment Posttest Survey

At the end of the experiment on resource sharing remote classroom teaching with the assistance of cloud computing technology for the experimental class, this paper conducts a post-test of the questionnaire for the experimental class and the control class, and the content of the post-test form is exactly the same as the content of the pre-test. The results of the experimental post-test survey on the learning interests of the students in the two classes are shown in Table 7. The results show that the percentage of students in the control class who chose the compliant options for the three questions I like to take English classes, I will have fun in English classes, and I will take the initiative to communicate in English were 43%, 37%, and 19%, respectively; and in the experimental class it was 65%, 62%, and 37%. The percentage of students in the experimental class who chose the non-compliant option for the three questions in the results of the survey on learning interest decreased by 8%, 25% and 15% respectively compared to the control class. It can be seen that after adopting the teaching method proposed in this paper, the experimental class students’ interest in learning English improved significantly compared with the control class students.

The results of the study of the students’ interest in the two classes

Question Options Proportion of the comparison class(%) The proportion of the experimental class(%)
I like English class Coincidence 43 65
General 35 21
Discrepancy 22 14
I’ll be happy with English lessons Coincidence 37 62
General 24 24
Discrepancy 39 14
I will actively communicate in English Coincidence 19 37
General 42 39
Discrepancy 39 24
Learning Initiative Experiment Post-test Findings

The results of the post-experimental survey on students’ learning initiative in both classes are shown in Table 8. The results show that students in the two classes varied greatly in their satisfaction with the three questions in the learning initiative survey results, namely, I am willing to actively participate in all activities in English class, I am willing to spend more time on English learning after class, and I can take the initiative to complete my English homework. Specifically, the percentages of students in the control class who chose to conform to the descriptions of the above three questions were 30%, 35% and 38%, respectively; the corresponding percentages of students in the experimental group chose to conform to the descriptions were 62%, 52% and 52%, respectively. The percentages of students in the experimental class who chose not to conform to the three question options of the learning initiative survey results were 24%, 9% and 8% less than those of the control class, respectively. Obviously, after adopting the teaching method proposed in this paper, the students in the experimental class showed a significant improvement in their English learning initiative than the students in the control class.

The results of the experimental results of the two students’ learning initiative

Question Options Proportion of the comparison class(%) The proportion of the experimental class(%)
I am willing to actively participate in all activities in English class Coincidence 30 62
General 35 27
Discrepancy 35 11
I would like to spend more time in English learning Coincidence 35 52
General 35 27
Discrepancy 30 21
I can do my homework in English Coincidence 38 52
General 32 26
Discrepancy 30 22
Results of the Learning Effectiveness Survey

The results of the post-test findings on students’ learning efficiency in both classes are shown in Table 9. The results show that the students’ satisfaction with the results of the learning efficiency survey varied greatly with regard to the three questions: my concentration in English class, compared with the previous semester, I think my English learning efficiency has improved, and compared with the previous semester, I have made progress in listening, speaking, reading, and writing. Specifically, the percentages of students in the control class who chose to conform to the descriptions of the above three questions were 32%, 11% and 14%, respectively; the corresponding percentages of students in the experimental group who chose to conform to the descriptions of the above three questions were 53%, 47% and 54%, respectively. The percentage of students in the experimental class who chose average in the three question options of the learning efficiency survey results was 13%, 33% and 41% less than that of the control class, respectively. Obviously, after adopting the teaching method proposed in this paper, there is a significant increase in the learning efficiency initiative of the students in the experimental class compared to the control class.

The survey of students’ learning efficiency in two classes

Question Options Proportion of the comparison class(%) The proportion of the experimental class(%)
My attention is focused on my English class Coincidence 32 53
General 40 27
Discrepancy 28 20
I think my English learning efficiency has improved compared to the school period Coincidence 11 47
General 80 47
Discrepancy 9 6
I have made progress in listening, speaking, reading and writing compared to my school period Coincidence 14 54
General 80 39
Discrepancy 6 7
Post-test independent samples t-test group statistics

Based on the above statistical results, this paper uses SPSS software to conduct independent samples t-test on the questionnaire post-test data. In the questionnaire, the scores represented by the three options are 1, 2, and 3, which shows that when the numbers are smaller, the interest, initiative, and efficiency of learning are higher. The statistical results of the independent samples t-test group for the post-test of the questionnaire are shown in Table 10. The results show that overall, there is a significant difference in the mean values of the nine questions related to students’ English learning. Therefore, summarizing the above analysis, it can be concluded that resource-sharing remote classroom teaching assisted by cloud computing technology for the experimental class can improve students’ learning interest, learning initiative, and learning efficiency.

Survey results of the survey of independent samples

Investigation problem Experimental object Mean value Standard deviation Standard error mean
I like English class Control group 1.8734 0.8772 0.1255
Experimental group 1.5783 0.7502 0.1283
I would like to spend more time in English learning Control group 1.8326 0.7245 0.1116
Experimental group 1.5534 0.7248 0.1202
I will actively communicate in English Control group 2.2845 0.9698 0.1202
Experimental group 1.8451 0.8277 0.1223
I am willing to actively participate in all activities in English class Control group 2.0438 0.8124 0.1319
Experimental group 1.5436 0.8551 0.1239
I would like to spend more time in English learning Control group 1.9385 0.7829 0.1281
Experimental group 1.7759 0.8995 0.1321
I can do my homework in English Control group 1.8604 0.8186 0.1137
Experimental group 1.7224 0.8006 0.1231
My attention is focused on my English class Control group 1.9582 0.8423 0.1301
Experimental group 1.7674 0.8130 0.1271
I think my English learning efficiency has improved compared to the school period Control group 2.0701 0.7704 0.1205
Experimental group 1.6886 0.8817 0.1232
I have made progress in listening, speaking, reading and writing compared to my school period Control group 1.9049 0.7639 0.0988
Experimental group 1.5547 0.8939 0.1011
Conclusion

In this paper, with the support of cloud computing technology, we constructed a platform for sharing teaching resources and remote classroom, and certified the constructed framework to realize the safe sharing of English teaching resources in remote classroom teaching and apply it in actual teaching.

The English teaching resources sharing and remote classroom platform proposed in this paper can improve the realization of teaching resources classification accuracy, and the teaching resources sharing platform plays a stable and high efficiency; And the system can still maintain stable operation under high concurrent access scenarios, the user experience is good, the classification and recommendation function of teaching resources has received positive feedback from users, and the teacher-student interaction mechanism also effectively promotes the enhancement of the teaching effect, which realizes the optimization of the system performance.

The application of the English teaching resources sharing and remote classroom platform proposed in this paper to English classroom teaching in colleges and universities can increase the experimental class students’ interest in learning English, learning initiative and learning efficiency by 18%-25%, 14%-32% and 21%-40% respectively. And the independent sample T-test results of the pre- and post-survey data of the questionnaire survey show that there is a significant difference between the experimental group and the control group in terms of English learning (P<0.05), and the mean value of the experimental group is better than that of the control group, which indicates that the application of the English Teaching Resources Sharing and Remote Classroom Platform proposed in this paper can stimulate the initiative of students in learning, improve the efficiency of students in learning, and improve the learning performance of the students significantly.

Sprache:
Englisch
Zeitrahmen der Veröffentlichung:
1 Hefte pro Jahr
Fachgebiete der Zeitschrift:
Biologie, Biologie, andere, Mathematik, Angewandte Mathematik, Mathematik, Allgemeines, Physik, Physik, andere