To get AI systems off the ground, training data must be voluminous and accurately labeled and annotated. With AI becoming a growing enterprise priority, data science teams are under tremendous pressure to deliver projects but frequently are challenged to produce training data at the required scale and quality. Nearly eight out of 10 organizations engaged in AI and machine learning said that projects have stalled, according to a Dimensional Research’s Artificial Intelligence and Machine Learning Projects Obstructed by Data Issues. The majority (96%) of these organizations said they have run into problems with data quality, data labeling necessary to train AI, and building model confidence.
- Tech Advances Cause BigLaw Firm to Offer Buyout to All Legal Secretaries
- The Seven Patterns of AI
- Does Peer Review or Bibliometrics Better Predict Scholarly Impact?
- Maintaining Scholarly Integrity in the Age of Bibliometrics
- Gorsuch’s A Republic, If You Can Keep It
- Are Concurring Opinions Justifiable?
- First Law Prof Rankings of Citations in Non-Law Journals
- The Rise of the Big Four Accounting Firms Move into Legal Services
- The Judicial Demand for Explainable Artificial Intelligence
- Buying Machine Learning Algorithms
Just in case you don't get it: The views expressed are solely those of the blog post author and should not be attributed to anyone else, meaning they do not necessarily represent the views of any organization that the post author is affiliated with or with the views of any other author who publishes on this blog.
- 226,558 hits