TECHNICAL INFOMATION INSTITUTE CO.,LTD Official site

[Book] How to Advance AI Machine Learning with Limited Data (No. 2269)

【Available for preview】 ☆ No need for a large amount of training data! Data augmentation through generative AI, transfer learning, and multi-task learning!

Book Title: How to Advance AI and Machine Learning with Limited Data, and Develop Explainable AI --------------------- ☆ Why did AI come to that answer! What are the grounds for judgment and reliability! --------------------- ■ Key Points of Each Chapter Chapter 1 ★ Analytical methods based on types/models! ★ How to accurately measure model performance! Chapter 2 ★ Identifying truly necessary data and recognizing missing data! ★ The impact of data missingness on decision-making! Chapter 3 ★ How to properly document experimental records! ★ How to appropriately accumulate and manage research data! Chapter 4 ★ Simply repeating learning does not lead to improved prediction accuracy! ★ Data augmentation methods that take advantage of hallucinations in generative AI! Chapter 5 ★ Reducing development costs through shortened learning time, rapid model updates! ★ How to achieve advanced language processing capabilities through performance improvement!! Chapter 6 ★ Ensuring fairness, explainability, and transparency in AI and machine learning! Chapter 7 ★ Considerations when using data for machine learning! ★ To realize trustworthy AI!

"Approaches to AI and Machine Learning with Limited Data, Improving Accuracy, and Developing Explainable AI" Book Homepage

basic information

■ Table of Contents Chapter 1: Types and Methods of AI (Artificial Intelligence) / Machine Learning Chapter 2: Data Processing, Cleansing, and Feature Selection Chapter 3: Data Collection, Storage, and Database Construction Chapter 4: Methods for Training and Utilizing Machine Learning and AI with Limited Data Chapter 5: Improving Accuracy of Machine Learning and AI and Reducing Training Time Chapter 6: Explainable AI / Black Box Analysis Techniques and Their Implementation and Utilization in Business Chapter 7: Fairness, Quality Assurance, and Reliability Evaluation --------------------- ● Publication Date: October 31, 2024 ● Format: A4, 389 pages ● Authors: 55 individuals ● ISBN: 978-4-86798-048-4 ---------------------

Price information

88,000 yen (including tax) [shipping included] Various discount programs are available. Please contact us.

Price range

P2

Delivery Time

P2

Model number/Brand name

2269 AI and Machine Learning

Applications/Examples of results

For more details, please contact us.

[Book] How to Advance AI and Machine Learning with Limited Data, Improve Accuracy, and Develop Explainable AI (No. 2269)

PRODUCT

News about this product(1)

Recommended products

Distributors

The Technical Information Association is engaged in the work of shaping information for engineers and researchers. We research what kind of information engineers and researchers active in fields such as "research and development," "materials," "electronics," and "pharmaceuticals/medical devices" need, and we create products such as seminars, books, and correspondence courses!