MTech Projects
  • HOME
  • MTECH PROJECTS
    • COMPUTER SCIENCE
      • MTech Python Projects
        • Machine Learning Projects
        • Deep Learning Projects
        • Blockchain Projects
        • django Projects
      • MTech Java Projects
        • Cloud Computing Projects
        • Data Mining Projects
        • Mobile Computing Projects
        • Networking Projects
      • MTech NS2 Projects
        • Wireless Communication Projects
        • Vehicular Technology Projects
      • MTech Hadoop Projects
      • MTech Android Projects
    • ELECTRONICS
      • MTech DSP Projects
      • MTech DIP Projects
      • MTech VLSI Projects
      • MTech Communication Projects
    • ELECTRICAL
      • MTech Power Systems Projects
      • MTech Power Electronics Projects
      • MTech Control Systems Projects
    • OTHER
      • Chemical Projects
      • Mechanical Projects
      • All Other Projects
  • EMBEDDED KITS
    • MTech Embedded Kits
    • BTech Embedded Kits
  • PROJECTS+
  • PUBLISHING
    • Research Publishing
    • Authors Guidelines
    • Publishing Policy
  • CONTACT US

Contact Us

  • Street Number 4, Jawahar Nagar, RTC X Road, Hyderabad 500044
  • +91 9573777164
  • info@mtechprojects.com

Welcome to MTech Projects - Online Projects for MTech Students

  • My Account
  • Careers
  • Downloads
  • Blog
MTech Projects
  • Email Us
  • Phone Number
  • Open Hours
  • HOME
  • MTECH PROJECTS

    MTech Python Projects

    • Machine Learning Projects
    • Deep Learning Projects
    • Blockchain Projects
    • django Projects

    MTECH JAVA PROJECTS

    • Cloud Computing Projects
    • Data Mining Projects
    • Mobile Computing Projects
    • Networking Projects

    MTECH NS2 PROJECTS

    • Wireless Communication Projects
    • Vehicular Technology Projects
    • MTech Hadoop Projects
    • MTech Android Projects

    ELECTRONICS

    • MTech DSP Projects
    • MTech DIP Projects
    • MTech VLSI Projects
    • MTech Communication Projects

    ELECTRICAL

    • MTech Power Systems Projects
    • MTech Power Electronics Projects
    • MTech Control Systems Projects

    OTHER

    • Chemical Projects
    • Mechanical Projects
    • All Other Projects
  • EMBEDDED KITS
    • MTech Embedded Kits
    • BTech Embedded Kits
  • PROJECTS+
  • PUBLISHING
    • Research Publishing
    • Authors Guidelines
    • Publishing Policy
  • CONTACT US

Project Enquiry

  1. You are here:  
  2. Home
  3. MTech Deep Learning Projects
  4. Federated Reptile for Semi-supervised Multi-Tasking in Healthcare Applications Using Dynamic Neural Graphs
Details
Category: MTech Deep Learning Projects
By MTech Projects
MTech Projects
02.May
Hits: 11

Federated Reptile for Semi-supervised Multi-Tasking in Healthcare Applications Using Dynamic Neural Graphs

PROJECT TITLE :

Dynamic Neural Graphs Based Federated Reptile for Semi-supervised Multi-Tasking in Healthcare Applications

ABSTRACT:

AI healthcare applications are dependent on confidential electronic health records (EHRs), which are often dispersed across a network of symbiont institutions and have little to no labeling. It is difficult to train effective machine learning models on such data because of the challenges involved. As a solution to these problems, the work presented here proposes a federated learning framework that is based on dynamic neural graphs. A model agnostic meta-learning (MAML) algorithm known as Reptile is extended to work in a federated environment by the framework that has been proposed. This paper, however, proposes a dynamic variant of neural graph learning (NGL) to incorporate unlabeled examples in a supervised training setup. This is in contrast to the MAML algorithms that are already in existence. A meta-learning update is computed by Dynamic NGL by carrying out supervised learning on a labelled training example while simultaneously carrying out metric learning on the labelled or unlabelled neighborhood of the training example. This neighborhood of an example that has been labelled is determined in a dynamic manner by using local graphs that are constructed over the batches of training examples. The construction of each local graph involves determining the degree to which different embeddings produced by the model's current state are similar to one another. The incorporation of metric learning on the neighborhood transforms the nature of this framework into one that is only semi-supervised. The experimental results obtained using the MIMIC-III dataset, which is accessible to the general public, demonstrate how effective the proposed framework is for both single-task and multi-task environments, even when data decentralization is restricted and limited supervision is available.

Did you like this research project?

To get this research project Guidelines, Training and Code... Click Here

  • Driver Activity Monitoring with Deep CNN, Body Pose, and Body-Object Interaction Features
  • Choosing the Right Model for Scalable Time Series Forecasting in Transportation Networks
  • Using Virtual Network Architecture as the foundation, Space-Air-Ground Integrated Multi-domain Network Resource Orchestration is a DRL Method.
  • An Anchor Free Object Detector for Point Cloud, CenterNet3D
  • A Multi-Sensor Traffic Flow Forecasting Framework for Temporal Attention Based on Graphs
  • Magnetic resonance imaging's DeepSPIO Super Paramagnetic Iron Oxide Particle Quantification
  • A Time-Series Feature-Based Recursive Classification Model to Maximize Treatment Approaches for Improving COVID-19 Patients' Outcomes and Resource Allocations
  • Deep Hough Transform for Detecting Semantic Lines
  • For crack detection, BARNet stands for Boundary Aware Refinement Network.
  • Applications of Deep Learning-Based Vehicle Behavior Prediction for Autonomous Driving
Previous article: Convolutional neural networks can be trained efficiently with low-bitwidth weights and activations. Convolutional neural networks can be trained efficiently with low-bitwidth weights and activations. Next article: Deep Neural Networks for Driver Identification and Verification From Smartphone Accelerometers Deep Neural Networks for Driver Identification and Verification From Smartphone Accelerometers
COMPUTER SCIENCE PROJECTS ELECTRONICS PROJECTS ELECTRICAL PROJECTS EMBEDDED PROJECTS MECHANICAL PROJECTS

sell academic m.tech, btech and be projects online

sell academic m.tech, btech and be projects online

Academic Final Year Projects

QUICK LINKS

  • Python Projects List
  • Java Projects with Source Code in NetBeans
  • Android Projects Download
  • Core Java Projects
  • Simple Python Projects
  • Android Projects with Source Code in Android Studio
  • Segmentation in Image Processing
  • Python Projects with Database
  • Digital Signal Processing pdf
  • Image Processing Using Python
  • VLSI Projects for Final Year ECE
  • Power Electronic Projects
  • Power System Projects
  • VLSI Projects for MTech
  • Power System Projects using Matlab
  • Power Electronics and Drives
SUPPORT
+91 9573777164
9:00am - 6:00pm IST
info@mtechprojects.com

Navigate

  • ABOUT
  • TESTIMONIALS
  • FIND A DEALER
  • CAREERS

CONTACT

  • CONTACT
  • FAQ
  • RESOURCES
  • EMAIL US

Useful links

  • REFUND & RETURN POLICY
  • PRIVACY POLICIES

Support

  • FACEBOOK
  • TWITTER
  • PINTEREST
  • GOOGLE PLUS

Disclaimer : MTech Projects, is not associated or affiliated with IEEE, in any way. The mentioned IEEE Projects here are student projects inspired by ideas from IEEE publications, not projects conducted by or associated with IEEE.

Talk to us?

Copyright © 2026 MTech Projects. All Rights Reserved.