• Title/Summary/Keyword: 플로러닝

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Development of the Program for Nature Experience Activity based on Flow-learning (플로러닝기반 자연체험활동 프로그램 개발)

  • Youn Ju Baek;Dong Yub Lee
    • The Journal of the Convergence on Culture Technology
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    • v.9 no.1
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    • pp.119-128
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    • 2023
  • This study was conducted to present an alternative instructional model through natural experience activities by developing a natural experience activity program that can learn and feel how to recognize and act on nature based on flow learning. In order to achieve the purpose of the study, a nature experience program, which consists of four stages of meeting nature, exploring nature, playing with nature and sharing emotions, was developed based on the main procedures of each stage of the ADDlE instructional design model. Through the research process, activities and precautions for each stage of the nature experience activity program were presented, and major educational implications were discussed based on the developed program. The nature experience program developed through the study can provide teachers with a basic direction for nature experience activities along with changing their perception of how to do nature experience activities, and infants are expected to become learners who freely feel, experience nature and make up their own knowledge through the nature experience program.

Comparison of Deep Learning Frameworks: About Theano, Tensorflow, and Cognitive Toolkit (딥러닝 프레임워크의 비교: 티아노, 텐서플로, CNTK를 중심으로)

  • Chung, Yeojin;Ahn, SungMahn;Yang, Jiheon;Lee, Jaejoon
    • Journal of Intelligence and Information Systems
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    • v.23 no.2
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    • pp.1-17
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    • 2017
  • The deep learning framework is software designed to help develop deep learning models. Some of its important functions include "automatic differentiation" and "utilization of GPU". The list of popular deep learning framework includes Caffe (BVLC) and Theano (University of Montreal). And recently, Microsoft's deep learning framework, Microsoft Cognitive Toolkit, was released as open-source license, following Google's Tensorflow a year earlier. The early deep learning frameworks have been developed mainly for research at universities. Beginning with the inception of Tensorflow, however, it seems that companies such as Microsoft and Facebook have started to join the competition of framework development. Given the trend, Google and other companies are expected to continue investing in the deep learning framework to bring forward the initiative in the artificial intelligence business. From this point of view, we think it is a good time to compare some of deep learning frameworks. So we compare three deep learning frameworks which can be used as a Python library. Those are Google's Tensorflow, Microsoft's CNTK, and Theano which is sort of a predecessor of the preceding two. The most common and important function of deep learning frameworks is the ability to perform automatic differentiation. Basically all the mathematical expressions of deep learning models can be represented as computational graphs, which consist of nodes and edges. Partial derivatives on each edge of a computational graph can then be obtained. With the partial derivatives, we can let software compute differentiation of any node with respect to any variable by utilizing chain rule of Calculus. First of all, the convenience of coding is in the order of CNTK, Tensorflow, and Theano. The criterion is simply based on the lengths of the codes and the learning curve and the ease of coding are not the main concern. According to the criteria, Theano was the most difficult to implement with, and CNTK and Tensorflow were somewhat easier. With Tensorflow, we need to define weight variables and biases explicitly. The reason that CNTK and Tensorflow are easier to implement with is that those frameworks provide us with more abstraction than Theano. We, however, need to mention that low-level coding is not always bad. It gives us flexibility of coding. With the low-level coding such as in Theano, we can implement and test any new deep learning models or any new search methods that we can think of. The assessment of the execution speed of each framework is that there is not meaningful difference. According to the experiment, execution speeds of Theano and Tensorflow are very similar, although the experiment was limited to a CNN model. In the case of CNTK, the experimental environment was not maintained as the same. The code written in CNTK has to be run in PC environment without GPU where codes execute as much as 50 times slower than with GPU. But we concluded that the difference of execution speed was within the range of variation caused by the different hardware setup. In this study, we compared three types of deep learning framework: Theano, Tensorflow, and CNTK. According to Wikipedia, there are 12 available deep learning frameworks. And 15 different attributes differentiate each framework. Some of the important attributes would include interface language (Python, C ++, Java, etc.) and the availability of libraries on various deep learning models such as CNN, RNN, DBN, and etc. And if a user implements a large scale deep learning model, it will also be important to support multiple GPU or multiple servers. Also, if you are learning the deep learning model, it would also be important if there are enough examples and references.

MLOps workflow language and platform for time series data anomaly detection

  • Sohn, Jung-Mo;Kim, Su-Min
    • Journal of the Korea Society of Computer and Information
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    • v.27 no.11
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    • pp.19-27
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    • 2022
  • In this study, we propose a language and platform to describe and manage the MLOps(Machine Learning Operations) workflow for time series data anomaly detection. Time series data is collected in many fields, such as IoT sensors, system performance indicators, and user access. In addition, it is used in many applications such as system monitoring and anomaly detection. In order to perform prediction and anomaly detection of time series data, the MLOps platform that can quickly and flexibly apply the analyzed model to the production environment is required. Thus, we developed Python-based AI/ML Modeling Language (AMML) to easily configure and execute MLOps workflows. Python is widely used in data analysis. The proposed MLOps platform can extract and preprocess time series data from various data sources (R-DB, NoSql DB, Log File, etc.) using AMML and predict it through a deep learning model. To verify the applicability of AMML, the workflow for generating a transformer oil temperature prediction deep learning model was configured with AMML and it was confirmed that the training was performed normally.

Effects of a Walking Program Applying Flow Learning on Nature-friendly Attitude and Empathy Ability of Young Children (플로러닝을 적용한 산책 프로그램이 유아의 자연친화적 태도와 공감능력에 미치는 영향)

  • Park, Ji Eun;Kwon, Yeon Hee
    • Korean Journal of Childcare and Education
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    • v.16 no.1
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    • pp.99-114
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    • 2020
  • Objective: This study aimed to investigate the effects of a walking program developed by applying the flow learning method in order to improve children's attitude toward nature and their empathy ability among other five-year-olds. Methods: A total of 49 five-year-olds attending classes at two kindergartens located in B city participated in this study. There were 24 children in the comparative group and 25 children in the experimental group. Before and after the program, all participants individually took a child's nature-friendly attitude test and rated their empathy ability with a teacher. Using the SPSS 25.0 version program, data were analyzed by conducting means, standard deviation, t-test, and ANCOVA(Analysis of Covariance). Results: Children who participated in the walking program using flow learning showed significantly higher nature-friendly attitudes than those of the comparative group. And empathy abilities in the experimental group were higher than in the comparative group in all areas. Conclusion/Implications: The results of this study suggest that a walking program applying flow learning is effective in improving young children's nature-friendly attitude and their empathy abilities.

Research on language numerlization and data matching through natural language processing and tensorflow (자연어 처리와 텐서플로를 통한 언어표현 수치화 및 데이터 매칭에 대한 연구)

  • Kim, Eunjin;Kim, Jihye;Kim, Chihun;Bae, Chaeeun;Kim, Youngjong
    • Proceedings of the Korea Information Processing Society Conference
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    • 2019.05a
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    • pp.571-572
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    • 2019
  • 일상생활에서 사람들은 각자 자신의 맞춤형 생활을 원한다. 특히 쇼핑이나 강의 등 직접 사용한 자의 후기에 따라 구매를 하는 경우에는 선택이 중요하다. 따라서 이 연구를 통해 머신러닝의 속성 범주화로 사용자에게 꼭 맞는 제품과 강의를 연결 할 수 있도록 한다.

Image Classification of Damaged Bolts using Convolution Neural Networks (합성곱 신경망을 이용한 손상된 볼트의 이미지 분류)

  • Lee, Soo-Byoung;Lee, Seok-Soon
    • Journal of Aerospace System Engineering
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    • v.16 no.4
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    • pp.109-115
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    • 2022
  • The CNN (Convolution Neural Network) algorithm which combines a deep learning technique, and a computer vision technology, makes image classification feasible with the high-performance computing system. In this thesis, the CNN algorithm is applied to the classification problem, by using a typical deep learning framework of TensorFlow and machine learning techniques. The data set required for supervised learning is generated with the same type of bolts. some of which have undamaged threads, but others have damaged threads. The learning model with less quantity data showed good classification performance on detecting damage in a bolt image. Additionally, the model performance is reviewed by altering the quantity of convolution layers, or applying selectively the over and under fitting alleviation algorithm.

Development of Heat Demand Forecasting Model using Deep Learning (딥러닝을 이용한 열 수요예측 모델 개발)

  • Seo, Han-Seok;Shin, KwangSup
    • The Journal of Bigdata
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    • v.3 no.2
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    • pp.59-70
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    • 2018
  • In order to provide stable district heat supplying service to the certain limited residential area, it is the most important to forecast the short-term future demand more accurately and produce and supply heat in efficient way. However, it is very difficult to develop a universal heat demand forecasting model that can be applied to general situations because the factors affecting the heat consumption are very diverse and the consumption patterns are changed according to individual consumers and regional characteristics. In particular, considering all of the various variables that can affect heat demand does not help improve performance in terms of accuracy and versatility. Therefore, this study aims to develop a demand forecasting model using deep learning based on only limited information that can be acquired in real time. A demand forecasting model was developed by learning the artificial neural network of the Tensorflow using past data consisting only of the outdoor temperature of the area and date as input variables. The performance of the proposed model was evaluated by comparing the accuracy of demand predicted with the previous regression model. The proposed heat demand forecasting model in this research showed that it is possible to enhance the accuracy using only limited variables which can be secured in real time. For the demand forecasting in a certain region, the proposed model can be customized by adding some features which can reflect the regional characteristics.