शुरू करने से पहले आपको क्या जानना चाहिए
आप शुरू करें

शुरू होता है 4 June 2026 15:27

समाप्त होता है 4 June 2026

00 दिन
00 घंटे
00 मिनट
00 सेकंड
course image

The More Data, the Better the AI, Isn't It?

Exploring data quality challenges in AI and deep learning, with insights on maintaining high-quality datasets for optimal algorithm performance in document data extraction.
MLCon | Machine Learning Conference via YouTube

MLCon | Machine Learning Conference

6076 कोर्स


39 minutes

वैकल्पिक अपग्रेड उपलब्ध है

Not Specified

अपनी गति से आगे बढ़ें

Conference Talk

वैकल्पिक अपग्रेड उपलब्ध है

अवलोकन

Exploring data quality challenges in AI and deep learning, with insights on maintaining high-quality datasets for optimal algorithm performance in document data extraction.

पाठ्यक्रम

  • Introduction to Data Quality in AI
  • Importance of Data Quality
    Overview of AI and Deep Learning
  • Understanding Data in AI Models
  • Types of Data: Structured vs. Unstructured
    Introduction to Document Data Extraction
  • Data Quality Dimensions
  • Accuracy and Completeness
    Consistency and Timeliness
    Relevance and Validity
  • Data Collection and Preparation
  • Sources of Data for AI
    Strategies for Data Cleaning
    Handling Missing and Noisy Data
  • Challenges in Document Data Extraction
  • Optical Character Recognition (OCR) Issues
    Data Annotation and Labeling Challenges
    Handling Complex and Unstructured Documents
  • Tools and Techniques for Ensuring Data Quality
  • Data Quality Assessment Frameworks
    Automation in Data Cleaning
    Use of AI to Improve Data Quality
  • Maintaining High-Quality Datasets
  • Continuous Monitoring and Validation
    Importance of Feedback Loops
    Data Governance and Best Practices
  • Impact of Data Quality on AI Performance
  • Real-World Case Studies
    How Data Quality Affects Model Accuracy and Bias
  • Future Trends in Data Quality for AI
  • Emerging Technologies in Data Quality Management
    The Role of Synthetic Data
  • Wrap-Up and Course Conclusion
  • Key Takeaways
    Discussion on Industry Applications and Ethics
    Final Q&A Session
  • Additional Resources and Further Reading

विषय

Conference Talks