Was Sie vorher wissen sollten
bevor Sie beginnen

Beginnt 5 June 2026 10:41

Endet 5 June 2026

00 Tage
00 Stunden
00 Minuten
00 Sekunden
course image

Secure Numerical Computing is Hard: Lessons from 10 Years of Open Data Science and the Long Road Ahead

Explore key security challenges and lessons learned from a decade of open data science, focusing on enterprise adoption of ML/AI technologies and emerging threats in numerical computing.
OpenSSF via YouTube

OpenSSF

6076 Kurse


35 minutes

Optionales Upgrade verfügbar

Not Specified

Lernen Sie in Ihrem eigenen Tempo

Free Video

Optionales Upgrade verfügbar

Übersicht

Explore key security challenges and lessons learned from a decade of open data science, focusing on enterprise adoption of ML/AI technologies and emerging threats in numerical computing.

Lehrplan

  • Introduction to Secure Numerical Computing
  • Overview of Numerical Computing
    Importance of Security in Numerical Computing
    Course Objectives and Outcomes
  • History and Evolution of Open Data Science
  • Milestones in Open Data Science Over the Past Decade
    Key Technologies in Open Data Science
    Significant Lessons Learned
  • Fundamentals of Security in Numerical Computing
  • Basic Security Principles
    Common Vulnerabilities in Numerical Algorithms
    Strategies for Vulnerability Mitigation
  • Enterprise Adoption of ML/AI Technologies
  • Case Studies of Successful Enterprise ML/AI Implementations
    Barriers to Adoption and How to Overcome Them
    Security Concerns in Enterprise ML/AI
  • Emerging Threats in Numerical Computing
  • Threat Landscape in AI and Numerical Computing
    Specific Security Threats in Data Science Workflows
    Real-world Examples of Security Breaches
  • Securing Machine Learning Pipelines
  • Secure Development Practices for ML/AI
    Protecting Data Integrity and Confidentiality
    Tools and Frameworks for Secure ML/AI Deployment
  • Privacy-Preserving Techniques in Numerical Computing
  • Introduction to Privacy-Preserving Computing
    Techniques: Differential Privacy, Homomorphic Encryption
    Privacy Challenges in Data Science
  • Regulatory and Ethical Considerations
  • Overview of Data Protection Regulations (GDPR, CCPA)
    Ethical Implications in Data Science and AI
    Best Practices for Ethical Data Science
  • Future Directions and Research Opportunities
  • Emerging Trends in Secure Numerical Computing
    Areas for Further Research and Development
    The Future of Open Data Science and Security
  • Conclusion
  • Summary of Key Concepts
    Q&A and Discussions
    Final Thoughts and Resources for Further Study

Fachgebiete

Data Science