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Im Folgenden finden Sie eine Aufstellung der zur Verfügung stehenden Themen. Die angegebene Literatur versteht sich als Startlektüre und weitere Literatur sollte selbstständig recherchiert wertden.

Themenblock 1: Data Science und Machine Learning

  1. Data Science and Machine Learning (English)
  2. Distributed Machine Learning (English)
  3. Model Management and Deployment

Themenblock 2: Deep Learning and AI

  1. Deep Learning: Convolutional Neural Networks
  2. Deep Learning: Natural Language Processing and Transformer Models
  3. AutoML
  4. Reinforcement Learning
  5. Deep Learning Frameworks: Caffe, Torch/PyTorch, Tensorflow, CNTK, MXNet
  6. Visualizing AI
    • Li, M., Zhao, Z., & Scheidegger, C. (2020). Visualizing Neural Networks with the Grand Tour. Distill, 5(3), e25.
    • Smith, E. M., Smith, J., Legg, P., & Francis, S. Visualising state space representations of LSTM networks. Presented at Workshop on Visualization for AI Explainability
    • Görtler, J., Kehlbeck, R., & Deussen, O. (2019). A Visual Exploration of Gaussian Processes. Distill, 4(4), e17
  7. Explainable AI

Themenblock 3: Emerging Topics

  1. Quantum Machine Learning
  2. AI Domain-specific Architectures
  3. Security and Privacy in Machine Learning
  4. Machine Learning for Crypto-Analysis
  5. Fault management based on machine learning (English)
    • Velasco, Luis, and Danish Rafique. "Fault management based on machine learning." 2019 Optical Fiber Communications Conference and Exhibition (OFC). IEEE, 2019
    • Mulvey, David, et al. "Cell fault management using machine learning techniques." IEEE Access 7 (2019): 124514-124539
    • Ferreira, Vinicius C., et al. "Fault detection and diagnosis for solar-powered wireless mesh networks using machine learning." 2017 IFIP/IEEE Symposium on Integrated Network and Service Management (IM). IEEE, 2017
  6. Deep Learning for Systems
  7. Knowledge Graphs