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מתחיל 5 June 2026 16:16

נגמר 5 June 2026

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EINNET - Optimizing Tensor Programs with Derivation-Based Transformations

Join us for an insightful exploration into optimizing tensor programs specifically designed for deep neural networks. Utilizing derivation-based transformations, this approach promises to surpass existing optimization methods by leveraging an extended search space and the ability to automatically generate new operators. Delve into the forefr.
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15 minutes

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סקירה כללית

Join us for an insightful exploration into optimizing tensor programs specifically designed for deep neural networks. Utilizing derivation-based transformations, this approach promises to surpass existing optimization methods by leveraging an extended search space and the ability to automatically generate new operators.

Delve into the forefront of artificial intelligence advancements and enhance your understanding with our comprehensive coverage, accessible now on YouTube.

סילבוס

  • Introduction to Tensor Programs
  • Overview of Tensor Operations and Structures
    Importance in Deep Neural Networks
  • Basics of Program Optimization
  • Traditional Optimization Techniques
    Limitations of Current Optimizers
  • Derivation-Based Transformations
  • Concept and Theory
    Examples of Derivations in Tensor Programs
  • Search Space Exploration
  • Benefits of a Larger Search Space
    Techniques for Effective Exploration
  • Automatic Operator Creation
  • Understanding Novel Operator Generation
    Implementing Automatic Creation in Tensor Programs
  • Practical Examples and Case Studies
  • Transformations in Real-World Neural Networks
    Comparative Analysis with Existing Optimizers
  • Tools and Frameworks
  • Overview of Tools for Optimization
    Hands-on Practice with Optimization Software
  • Optimization Challenges and Solutions
  • Common Obstacles
    Innovative Approaches to Problem Solving
  • Future Directions in Tensor Program Optimization
  • Emerging Trends and Technologies
    Research Opportunities
  • Project and Evaluation
  • Designing a Tensor Program with Derivation-Based Transformations
    Performance Evaluation and Metrics
  • Conclusion and Course Wrap-Up
  • Summary of Key Concepts
    Next Steps for Learners in Tensor Optimization Technologies

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