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  • Artificial intelligence-Congresses.  (1)
  • Electronic commerce.  (1)
  • Signal processing.  (1)
  • 1
    Keywords: E-business. ; Electronic commerce. ; E-commerce. ; Sustainable development. ; Study Skills. ; Educational technology. ; Ecosystems.
    Description / Table of Contents: Digitization of Financial Markets: A Literature Review on White-collar crimes -- Intervention of Chatbots –Recruitment Made Easy!!!! -- Affecting attributes to use food ordering app by young consumers -- Exploring influencing factors for m payment apps uses in the Indian context -- Modelling Enablers of Customer-Centricity in Convenience Food Retail -- Emotion AI: Integrating Emotional Intelligence with Artificial Intelligence in the digital workplace -- Factors affecting online grocery shopping in Indian culture -- A Study on Role of Digital Technologies & Employee Experience -- Driving employee engagement in today’s dynamic workplace: A literature review -- Is Online Teaching Learning Process An Effective Tool For Academic Advancement.
    Type of Medium: Online Resource
    Pages: 1 Online-Ressource(X, 474 p. 297 illus., 211 illus. in color.)
    Edition: 1st ed. 2021.
    ISBN: 9783030662189
    Series Statement: Advances in Science, Technology & Innovation, IEREK Interdisciplinary Series for Sustainable Development
    Language: English
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  • 2
    Keywords: Artificial intelligence-Congresses. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (886 pages)
    Edition: 1st ed.
    ISBN: 9789811533693
    Series Statement: Lecture Notes in Networks and Systems Series ; v.121
    DDC: 004.6
    Language: English
    Note: Intro -- Preface -- Contents -- About the Editors -- Communication and Network Technologies -- State of the Art: A Review on Vehicular Communications, Impact of 5G, Fractal Antennas for Future Communication -- 1 Introduction -- 1.1 Vehicular Network Architecture (VNA) -- 1.2 Vehicular Communication Applications (VCA) -- 2 Communications -- 3 Existing Proposals -- 4 Fractal Antennas -- 5 Conclusion -- References -- Energy Enhancement of TORA and DYMO by Optimization of Hello Messaging Using BFO for MANETs -- 1 Introduction -- 1.1 MANET's Route Selection Process -- 1.2 Routing Protocols -- 2 Literature Review -- 3 Problem Formulation and Major Issues -- 4 Proposed Protocol Optimization Using BFOA -- 4.1 Introduction to BFOA -- 4.2 Bacteria Foraging Optimization Algorithm (BFOA) -- 5 Results and Comparison -- 5.1 Implementation Results -- 5.2 Comparisons -- 5.3 Optimization Results -- 6 Result and Conclusion -- References -- Horseshoe-Shaped Multiband Antenna for Wireless Application -- 1 Introduction -- 2 Horseshoe Fractal Design Methodology -- 3 Simulation Setup -- 4 Conclusion -- References -- A Review Paper on Performance Analysis of IEEE 802.11e -- 1 Introduction -- 1.1 Medium Access Control Layer -- 1.2 Distributed Coordination Function (DCF) -- 1.3 Enhanced Distributed Coordination Function (EDCF) -- 2 Literature Review -- 3 Conclusions -- References -- Voice-Controlled IoT Devices Framework for Smart Home -- 1 Introduction -- 2 Related Work -- 3 Proposed Model -- 3.1 Hardware Design -- 3.2 System Software -- 4 Analysis -- 5 Conclusion -- References -- Comprehensive Analysis of Social-Based Opportunistic Routing Protocol: A Study -- 1 Introduction -- 2 Research Contributions -- 3 Simulation Setup And Description -- 3.1 ONE (Opportunistic Network Environment) Simulator -- 3.2 Mobility Model and Real-World Traces. , 3.3 Simulation Parameter for Different Movement Model -- 4 Simulation Result -- 5 Conclusion and Future Direction -- References -- An Efficient Delay-Based Load Balancing using AOMDV in MANET -- 1 Introduction -- 2 Related Work -- 3 Delay-Based Load Balancing in MANET -- 4 Experimental Results -- 4.1 Packet Delivery Ratio -- 4.2 Delay -- 4.3 Throughput -- 4.4 Packet Loss Ratio -- 4.5 Normalized Routing Load -- 5 Conclusion -- References -- Metaheuristic-Based Intelligent Solutions Searching Algorithms of Ant Colony Optimization and Backpropagation in Neural Networks -- 1 Introduction -- 2 Swarm Intelligence and Problems Solving -- 2.1 Metaheuristic Algorithms -- 2.2 Ant Colony Optimization Search Algorithm -- 2.3 Neural Networks -- 2.4 Related Works -- 3 Methodology -- 3.1 Mathematical Model of NN Tuning -- 3.2 Algorithm of Tuning Model -- 4 Discussion of Results -- 5 Conclusion -- References -- Evaluating Cohesion Score with Email Clustering -- 1 Introduction -- 2 Related Works -- 2.1 Comparison Table -- 3 Proposed Cohesion Evaluation-Based Cluster System -- 3.1 Problem Formulation -- 3.2 Architecture -- 4 Experimental Setup -- 4.1 Dataset -- 4.2 Evaluation Measure -- 5 Result Analysis and Discussion -- 6 Conclusion -- References -- Congestion Control for Named Data Networking-Based Wireless Ad Hoc Network -- 1 Introduction -- 2 Related Work -- 2.1 Congestion Control for NDN in General -- 2.2 Congestion Control for NDN-Based MANET -- 3 Contribution of This Study -- 4 Standbyme Congestion Control as Suggested Solution -- 4.1 Local Congestion Detection -- 4.2 Hop-by-hop Congestion Notification -- 4.3 Multiple Strategy Congestion Avoidance -- 5 Testbed Design and Facility -- 5.1 Experiment Design and Analysis of Result -- 6 Conclusion and Future Work -- 6.1 Conclusion -- References. , A Comparative Review of Various Techniques for Image Splicing Detection and Localization -- 1 Introduction -- 1.1 Need for Image Forgery Detection -- 1.2 Types of Image Forgery -- 1.3 Image Forgery Detection Techniques -- 2 Methodology -- 3 Literature Survey -- 3.1 Comparative Analysis of the Existing Splicing Localization Techniques -- 4 Conclusion -- References -- Analysis and Synthesis of Performance Parameter of Rectangular Patch Antenna -- 1 Introduction -- 2 Micro Strip Antenna Design -- 3 Experimental Result -- 4 Code for Simulation -- 5 Conclusion -- References -- Advanced Computing Technologies and Latest Electrical and Electronics Trends -- Fog Computing Research Opportunities and Challenges: A Comprehensive Survey -- 1 Introduction -- 2 Working of the System -- 2.1 Fog Nodes -- 2.2 Cloud Platform -- 3 Recent Surveys on Fog Computing -- 4 Application of Fog Computing -- 5 Emerging Challenges -- 6 Advantages/Benefits of Fog Computing -- 7 Fog Computing Simulators -- 8 Conclusion and Future Scope -- References -- IIGPTS: IoT-Based Framework for Intelligent Green Public Transportation System -- 1 Introduction -- 1.1 Motivation -- 1.2 Research Contributions -- 1.3 Organization of the paper -- 2 Related Work -- 3 IIGPTS: System components and architecture -- 3.1 System Components -- 3.2 Architecture of IIGPTS -- 4 Performance Evaluation of IIGPTS -- 4.1 Experimental Setup -- 4.2 Simulation Results -- 5 Conclusions and Future Work -- References -- Integrating the AAL CasAware Platform Within an IoT Ecosystem, Leveraging the INTER-IoT Approach -- 1 Introduction -- 2 Interoperability of IoT Artifacts -- 3 CasAware Project Overview -- 3.1 CasAware Architecture -- 3.2 CasAware Integration-Motivating Scenario -- 4 INTER-IoT Project Overview -- 5 Integrating CasAware into INTER-IoT -- 6 Concluding Remarks -- References. , An IoT-Based Solution for Smart Parking -- 1 Introduction -- 2 Background and Related Work -- 3 Proposal and Construction of the Proposed Parking Solution -- 3.1 System Design -- 3.2 System Calibration -- 4 System Evaluation, Demonstration, and Validation -- 5 Conclusion and Future Works -- References -- Online Monitoring of Solar Panel Using I-V Curve and Internet of Things -- 1 Introduction -- 2 Contribution -- 3 Methodologies -- 4 Hardware Descriptions -- 5 Software Description and IoT Implementation -- 6 Conclusion and Future Scope -- References -- Classification of Chest Diseases Using Convolutional Neural Network -- 1 Introduction -- 2 Related Works -- 2.1 Visual Cortex's Receptive Fields -- 2.2 CNN Architecture Origin -- 2.3 Recognition of Image by CNNs Trained Using Gradient Descent -- 2.4 CNN for Lung Nodule Detection -- 3 Convolutional Neural Network -- 4 Methods -- 4.1 Dataset and Preprocessing -- 4.2 Preprocessing Class Labels -- 4.3 CNN Classification Model -- 5 Conclusion -- References -- Age and Gender Prediction Using Convolutional Neural Network -- 1 Introduction -- 2 Machine Learning -- 3 Related Work and Data -- 4 Methodology -- 4.1 Convolutional Neural Network -- 5 Methods for Proposed Work -- 5.1 Data Collection -- 5.2 Dataset Formation -- 5.3 CNN Formation -- 5.4 Training and Testing -- 6 Implemented Work -- 7 Results -- 8 Conclusion -- References -- Vision-Based Human Emotion Recognition Using HOG-KLT Feature -- 1 Introduction -- 2 Related Works -- 3 Proposed Methodology -- 3.1 Extraction of Histogram of Oriented Gradient Feature -- 3.2 Kanade-Lucas-Tomasi (KLT) Feature -- 3.3 Random Forest (RF) Classifier -- 3.4 Support Vector Machine (SVM) -- 4 Results and Analysis -- 4.1 Performance Evaluation Metrics -- 4.2 GEMEP Dataset -- 4.3 Experimental Results on Random Forest Classifiers -- 5 Conclusion -- References. , An Analysis of Lung Tumor Classification Using SVM and ANN with GLCM Features -- 1 Introduction -- 2 Tumor Types -- 3 Methodology -- 3.1 Segmentation Method -- 3.2 Feature Extraction -- 3.3 Classification of Extracted Tumor -- 4 Proposed Work -- 4.1 Segmentation -- 4.2 Feature Extraction -- 4.3 Tumor Classification -- 5 Conclusions and Future Work -- References -- Lane Detection Models in Autonomous Car -- 1 Introduction -- 1.1 Property of Road -- 2 Related Work -- 2.1 Mapping from an Image to Affordance -- 2.2 Mapping from Affordance to Action -- 3 Implementation -- 3.1 The Open Racing Vehicle Simulator Evaluation -- 3.2 Qualitative Assessment -- 3.3 Comparison with Baselines -- 4 Visualization -- 5 Conclusions -- References -- Various Noises in Medical Images and De-noising Techniques -- 1 Introduction -- 2 De-noising Techniques -- 3 Methods for De-noising an Image -- 4 Results of Comparison of De-noising Algorithms -- 5 Removing Salt and Pepper Noise -- 6 Removing Speckle Noise -- 7 De-noising Results for Synthetic Data -- 8 Conclusion -- References -- Debunking Online Reputation Rumours Using Hybrid of Lexicon-Based and Machine Learning Techniques -- 1 Introduction -- 2 Related Work -- 3 The Proposed ReputeCheck Model -- 3.1 Data Collection -- 3.2 Pre-processing -- 3.3 Feature Engineering -- 3.4 Classification -- 4 Results -- 5 Conclusion -- References -- A Novel Approach for Optimal Digital FIR Filter Design Using Hybrid Grey Wolf and Cuckoo Search Optimization -- 1 Introduction -- 2 Design Model of FIR -- 3 Hybrid Grey Wolf and Cuckoo Search Optimization -- 4 Simulation Results -- 4.1 Low-Pass Filter -- 4.2 High-Pass Filter -- 4.3 Band-Pass Filter -- 4.4 Band-Stop Filter -- 5 Analysis of Simulation Result -- 6 Conclusion -- References -- Quasi-opposition-Based Multi-verse Optimization Algorithm for Feature Selection -- 1 Introduction. , 1.1 Structuring of the Paper.
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  • 3
    Keywords: Machine learning. ; Signal processing. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (389 pages)
    Edition: 1st ed.
    ISBN: 9781000487817
    DDC: 006.31
    Language: English
    Note: Cover -- Half Title -- Title Page -- Copyright Page -- Table of Contents -- Preface -- Editors -- Contributors -- 1. Introduction to Signal Processing and Machine Learning -- 1.1 Introduction -- 1.2 Basic Terminologies -- 1.2.1 Signal Processing -- 1.2.1.1 Continuous and Discrete Signals -- 1.2.1.2 Sampling and Quantization -- 1.2.1.3 Change of Basis -- 1.2.1.4 Importance of Time Domain and Frequency Domain Analyses -- 1.2.2 Machine Learning -- 1.3 Distance-Based Signal Classification, Nearest Neighbor Classifier, and Hilbert Space -- 1.3.1 Distance-Based Signal Classification -- 1.3.1.1 Metric Space -- 1.3.1.2 Normed Linear Space -- 1.3.1.3 Inner Product Space -- 1.3.2 Nearest Neighbor Classification -- 1.3.3 Hilbert Space -- 1.4 Fusion of Machine Learning in Signal Processing -- 1.5 Benefits of Adopting Machine Learning in Signal Processing -- 1.6 Conclusion -- References -- 2. Learning Theory (Supervised/Unsupervised) for Signal Processing -- 2.1 Introduction -- 2.1.1 Signal Processing -- 2.2 Machine Learning -- 2.2.1 Why Do We Need ML for Signal Processing? -- 2.2.2 Speaker ID - A Utilization of ML Calculations in Sign Handling -- 2.2.3 Discourse and Audio Processing -- 2.2.4 Discourse Recognition -- 2.2.5 Listening Devices -- 2.2.6 Independent Driving -- 2.2.7 Picture Processing and Analysis -- 2.2.8 Wearables -- 2.2.9 Information Science -- 2.2.10 Wireless Systems and Networks -- 2.3 Machine Learning Algorithms -- 2.4 Supervised Learning -- 2.5 Unsupervised Learning -- 2.6 Semi-Supervised Learning -- 2.7 Reinforcement Learning -- 2.8 Use Case of Signal Processing Using Supervised and Unsupervised Learning -- 2.8.1 Features and Classifiers -- 2.8.2 Linear Classifiers -- 2.8.3 Decision Hyperplanes -- 2.8.4 Least Squares Methods -- 2.8.5 Mean Square Estimation -- 2.8.6 Support Vector machines -- 2.8.7 Non-Linear Regression. , 2.8.8 Non-Linearity of Activation Functions -- 2.8.8.1 Sigmoid Function -- 2.8.8.2 Rectified Linear Unit (ReLU) -- 2.8.9 Classification -- 2.8.9.1 Linear Classification -- 2.8.9.2 Two-Class Classification -- 2.8.9.3 Geometrical Interpretation of Derivatives -- 2.8.9.4 Multiclass Classification: Loss Function -- 2.8.10 Mean Squared Error -- 2.8.11 Multilabel Classification -- 2.8.12 Gradient Descent -- 2.8.12.1 Learning Rate -- 2.8.13 Hyperparameter Tuning -- 2.8.13.1 Validation -- 2.8.14 Regularization -- 2.8.14.1 How Does Regularization Work? -- 2.8.15 Regularization Techniques -- 2.8.15.1 Ridge Regression (L2 Regularization) -- 2.8.16 Lasso Regression (L1 Regularization) -- 2.8.17 K-Means Clustering -- 2.8.18 The KNN Algorithm -- 2.8.19 Clustering -- 2.8.20 Clustering Methods -- 2.9 Deep Learning for Signal Data -- 2.9.1 Traditional Time Series Analysis -- 2.9.2 Recurrence Domain Analysis -- 2.9.3 Long Short-Term Memory Models for Human Activity Recognition -- 2.9.4 External Device HAR -- 2.9.5 Signal Processing on GPUs -- 2.9.6 Signal Processing on FPGAs -- 2.9.7 Signal Processing is coming to the Forefront of Data Analysis -- 2.10 Conclusion -- References -- 3. Supervised and Unsupervised Learning Theory for Signal Processing -- 3.1 Introduction -- 3.1.1 Supervised Learning -- 3.1.2 Unsupervised Learning -- 3.1.3 Reinforcement Learning -- 3.1.4 Semi-Supervised Learning -- 3.2 Supervised Learning Method -- 3.2.1 Classicfiation Problems -- 3.2.2 Regression Problems -- 3.2.3 Examples of Supervised Learning -- 3.3 Unsupervised Learning Method -- 3.3.1 Illustrations of Unsupervised Learning -- 3.4 Semi-Supervised Learning Method -- 3.5 Binary Classification -- 3.5.1 Different Classes -- 3.5.2 Classification in Preparation -- 3.5.2.1 Logistic Regression Model -- 3.5.2.2 Odds Ratio -- 3.5.2.3 Logit Function -- 3.5.2.4 The Sigmoid Function. , 3.5.2.5 Support Vector Machines -- 3.5.2.6 Maximum Margin Lines -- 3.6 Conclusion -- References -- 4. Applications of Signal Processing -- 4.1 Introduction -- 4.2 Audio Signal Processing -- 4.2.1 Machine Learning in Audio Signal Processing -- 4.2.1.1 Spectrum and Cepstrum -- 4.2.1.2 Mel Frequency Cepstral Coefficients -- 4.2.1.3 Gammatone Frequency Cepstral Coefficients -- 4.2.1.4 Building the Classifier -- 4.3 Audio Compression -- 4.3.1 Modeling and Coding -- 4.3.2 Lossless Compression -- 4.3.3 Lossy Compression -- 4.3.4 Compressed Audio with Machine Learning Applications -- 4.4 Digital Image Processing -- 4.4.1 Fields Overlapping with Image Processing -- 4.4.2 Digital Image Processing System -- 4.4.3 Machine Learning with Digital Image Processing -- 4.4.3.1 Image Classification -- 4.4.3.2 Data Labelling -- 4.4.3.3 Location Detection -- 4.5 Video Compression -- 4.5.1 Video Compression Model -- 4.5.2 Machine Learning in Video Compression -- 4.5.2.1 Development Savings -- 4.5.2.2 Improving Encoder Density -- 4.6 Digital Communications -- 4.6.1 Machine Learning in Digital Communications -- 4.6.1.1 Communication Networks -- 4.6.1.2 Wireless Communication -- 4.6.1.3 Smart Infrastructure and IoT -- 4.6.1.4 Security and Privacy -- 4.6.1.5 Multimedia Communication -- 4.6.2 Healthcare -- 4.6.2.1 Personalized Medical Treatment -- 4.6.2.2 Clinical Research and Trial -- 4.6.2.3 Diagnosis of Disease -- 4.6.2.4 Smart Health Records -- 4.6.2.5 Medical Imaging -- 4.6.2.6 Drug Discovery -- 4.6.2.7 Outbreak Prediction -- 4.6.3 Seismology -- 4.6.3.1 Interpreting Seismic Observations -- 4.6.3.2 Machine Learning in Seismology -- 4.6.4 Speech Recognition -- 4.6.5 Computer Vision -- 4.6.6 Economic Forecasting -- 4.7 Conclusion -- References -- 5. Dive in Deep Learning: Computer Vision, Natural Language Processing, and Signal Processing -- 5.1 Deep Learning: Introduction. , 5.2 Past, Present, and Future of Deep- Learning -- 5.3 Natural Language Processing -- 5.3.1 Word Embeddings -- 5.3.1.1 Word2vec -- 5.3.2 Global Vectors for Word Representation -- 5.3.3 Convolutional Neural Networks -- 5.3.4 Feature Selection and Preprocessing -- 5.3.4.1 Tokenization -- 5.3.4.2 Stop Word Removal -- 5.3.4.3 Stemming -- 5.3.4.4 Lemmatization -- 5.3.5 Named Entity Recognition -- 5.4 Image Processing -- 5.4.1 Introduction to Image Processing and Computer Vision -- 5.4.1.1 Scene Understanding -- 5.4.2 Localization -- 5.4.3 Smart Cities and Surveillance -- 5.4.4 Medical Imaging -- 5.4.5 Object Representation -- 5.4.6 Object Detection -- 5.5 Audio Processing and Deep Learning -- 5.5.1 Audio Data Handling Using Python -- 5.5.2 Spectrogram -- 5.5.3 Wavelet- Based Feature Extraction -- 5.5.4 Current Methods -- 5.5.4.1 Audio Classification -- 5.5.4.2 Audio Fingerprinting -- 5.5.4.3 Feature Extraction -- 5.5.4.4 Speech Classification -- 5.5.4.5 Music Processing -- 5.5.4.6 Natural Sound Processing -- 5.5.4.7 Technological Tools -- 5.6 Conclusion -- References -- 6. Brain-Computer Interfacing -- 6.1 Introduction to BCI and Its Components -- 6.1.1 BCI Components -- 6.2 Framework/Architecture of BCI -- 6.3 Functions of BCI -- 6.3.1 Correspondence and Control -- 6.3.2 Client State Checking -- 6.4 Applications of BCI -- 6.4.1 Healthcare -- 6.4.1.1 Prevention -- 6.4.1.2 Detection and Diagnosis -- 6.4.1.3 Rehabilitation and Restoration -- 6.4.2 Neuroergonomics and Smart Environment -- 6.4.3 Neuromarketing and Advertisement -- 6.4.4 Pedagogical and Self-Regulating Oneself -- 6.4.5 Games and Entertainment -- 6.4.6 Security and Authentication -- 6.5 Signal Acquisition -- 6.5.1 Invasive Techniques -- 6.5.1.1 Intracortical -- 6.5.1.2 ECoG and Cortical Surface -- 6.5.2 Noninvasive Techniques -- 6.5.2.1 Magneto-encephalography (MEG). , 6.5.2.2 fMRI (functional Magnetic Resonance Imaging) -- 6.5.2.3 fNIRS (functional Near-Infrared Spectroscopy) -- 6.5.2.4 EEG (Electroencephalogram) -- 6.6 Electrical Signal of BCI -- 6.6.1 Evoked Potential (EP) or Evoked Response -- 6.6.2 Event-Related Desynchronization and Synchronization -- 6.7 Challenges of BCI and Proposed Solutions -- 6.7.1 Challenges of Usability -- 6.7.2 Technical Issues -- 6.7.3 Proposed Solutions -- 6.7.3.1 Noise Removal -- 6.7.3.2 Disconnectedness of Multiple Classes -- 6.8 Conclusion -- References -- 7. Adaptive Filters and Neural Net -- 7.1 Introduction -- 7.1.1 Adaptive Filtering Problem -- 7.2 Linear Adaptive Filter Implementation -- 7.2.1 Stochastic Gradient Approach -- 7.2.2 Least Square Estimation -- 7.3 Nonlinear Adaptive Filters -- 7.3.1 Volterra-Based Nonlinear Adaptive Filter -- 7.4 Applications of Adaptive Filter -- 7.4.1 Biomedical Applications -- 7.4.1.1 ECG Power-Line Interference Removal -- 7.4.1.2 Maternal-Fetal ECG Separation -- 7.4.2 Speech Processing -- 7.4.2.1 Noise Cancelation -- 7.4.3 Communication Systems -- 7.4.3.1 Channel Equalization in Data Transmission Systems -- 7.4.3.2 Multiple Access Interference Mitigation in CDMA -- 7.4.4 Adaptive Feedback Cancellation in Hearing Aids -- 7.5 Neural Network -- 7.5.1 Learning Techniques in ANN -- 7.6 Single and Multilayer Neural Net -- 7.6.1 Single-Layer Neural Networks -- 7.6.2 Multilayer Neural Net -- 7.7 Applications of Neural Networks -- 7.7.1 ECG Classicafition -- 7.7.1.1 Methodology -- 7.7.2 Speech Recognition -- 7.7.2.1 Methodology -- 7.7.3 Communication Systems -- 7.7.3.1 Mobile Station Location Identification Using ANN -- 7.7.3.2 ANN-Based Call Handoff Management Scheme for Mobile Cellular Network -- 7.7.3.3 A Hybrid Path Loss Prediction Model based on Artificial  Neural Networks -- 7.7.3.4 Classification of Primary Radio Signals. , 7.7.3.5 Channel Capacity Estimation Using ANN.
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