Go back

Engineering Of Additive Manufacturing Features For Data Driven Solutions Sources Techniques Pipelines And Applications(1st Edition)

Authors:

Mutahar Safdar ,Guy Lamouche ,Padma Polash Paul ,Gentry Wood ,Yaoyao Fiona Zhao

Free engineering of additive manufacturing features for data driven solutions sources techniques pipelines and
12 ratings
Cover Type:Hardcover
Condition:Used

In Stock

Shipment time

Expected shipping within 2 Days
Access to 30 Million+ solutions Free
Ask 50 Questions from expert AI-Powered Answers
7 days-trial

Total Price:

$0

List Price: $14.07 Savings: $14.07(100%)
Access to 30 Million+ solutions
Ask 50 Questions from expert AI-Powered Answers 24/7 Tutor Help Detailed solutions for Engineering Of Additive Manufacturing Features For Data Driven Solutions Sources Techniques Pipelines And Applications

Price:

$9.99

/month

Book details

ISBN: 3031321537, 978-3031321535

Book publisher: Springer

Get your hands on the best-selling book Engineering Of Additive Manufacturing Features For Data Driven Solutions Sources Techniques Pipelines And Applications 1st Edition for free. Feed your curiosity and let your imagination soar with the best stories coming out to you without hefty price tags. Browse SolutionInn to discover a treasure trove of fiction and non-fiction books where every page leads the reader to an undiscovered world. Start your literary adventure right away and also enjoy free shipping of these complimentary books to your door.

Book Summary: This book is a comprehensive guide to the latest developments in data-driven additive manufacturing (AM). From data mining and pre-processing to signal processing, computer vision, and more, the book covers all the essential techniques for preparing AM data. Readers willl explore the key physical and synthetic sources of AM data throughout the life cycle of the process and learn about feature engineering techniques, pipelines, and resulting features, as well as their applications at each life cycle phase. With a focus on featurization efforts from reviewed literature, this book offers tabular summaries for major data sources and analyzes feature spaces at the design, process, and structure phases of AM to uncover trends and insights specific to feature engineering techniques. Finally, the book discusses current challenges and future directions, including AI/ML/DL readiness of AM data.Whether you're an expert or newcomer to the field, this book provides a broader summary of the status and future of data-driven AM technology.