Player FM 앱으로 오프라인으로 전환하세요!
Data Labelling: The Secret Sauce Behind AI Models
Manage episode 439318156 series 2877567
Data labelling is a critical step in developing AI models, providing the foundation for accurate predictions and smart decision-making. Labelled data helps machine learning algorithms understand input data by assigning meaningful tags to raw data—such as images, text, or audio—ensuring that AI models can recognise patterns and make informed decisions.
AI models struggle to learn and perform tasks effectively without high-quality labelled data. Proper data labelling enhances model accuracy, reduces errors, and accelerates the time it takes to train AI systems. Whether you're working with natural language processing, image recognition, or predictive analytics, the success of your AI project hinges on the quality of your labelled data.
In this episode, Henry Chen, Co-founder and COO of Sapien, speaks to Paulina Rios Maya about the importance of data labelling in training AI models.
Key Takeaways:
- Data labelling converts raw data into structured data that machine learning models can recognise.
- Reducing bias and ensuring data quality are critical challenges in data labelling.
- Expert human feedback plays a crucial role in improving the accuracy of AI training data and refining AI models.
Chapters:
00:00 - Introduction and Background
01:07 - Data Labeling: Converting Raw Data into Useful Data
03:02 - Challenges in Data Labeling: Bias and Data Quality
07:46 - The Role of Expert Human Feedback
09:41 - Ethical Considerations and Compliance
11:09 - The Evolving Nature of AI Models and Continuous Improvement
14:50 - Strategies for Updating and Improving Training Data
17:12 - Conclusion
200 에피소드
Manage episode 439318156 series 2877567
Data labelling is a critical step in developing AI models, providing the foundation for accurate predictions and smart decision-making. Labelled data helps machine learning algorithms understand input data by assigning meaningful tags to raw data—such as images, text, or audio—ensuring that AI models can recognise patterns and make informed decisions.
AI models struggle to learn and perform tasks effectively without high-quality labelled data. Proper data labelling enhances model accuracy, reduces errors, and accelerates the time it takes to train AI systems. Whether you're working with natural language processing, image recognition, or predictive analytics, the success of your AI project hinges on the quality of your labelled data.
In this episode, Henry Chen, Co-founder and COO of Sapien, speaks to Paulina Rios Maya about the importance of data labelling in training AI models.
Key Takeaways:
- Data labelling converts raw data into structured data that machine learning models can recognise.
- Reducing bias and ensuring data quality are critical challenges in data labelling.
- Expert human feedback plays a crucial role in improving the accuracy of AI training data and refining AI models.
Chapters:
00:00 - Introduction and Background
01:07 - Data Labeling: Converting Raw Data into Useful Data
03:02 - Challenges in Data Labeling: Bias and Data Quality
07:46 - The Role of Expert Human Feedback
09:41 - Ethical Considerations and Compliance
11:09 - The Evolving Nature of AI Models and Continuous Improvement
14:50 - Strategies for Updating and Improving Training Data
17:12 - Conclusion
200 에피소드
모든 에피소드
×플레이어 FM에 오신것을 환영합니다!
플레이어 FM은 웹에서 고품질 팟캐스트를 검색하여 지금 바로 즐길 수 있도록 합니다. 최고의 팟캐스트 앱이며 Android, iPhone 및 웹에서도 작동합니다. 장치 간 구독 동기화를 위해 가입하세요.