Dr. Luigi Capodieci
CTO
SPIE Involvement:
Conference Program Committee | Author | Editor | Instructor
Publications (47)

Proceedings Article | 22 February 2021 Presentation
Proceedings Volume 11614, 1161407 (2021) https://doi.org/10.1117/12.2585319

Proceedings Article | 20 March 2019 Presentation + Paper
Yacoub Kureh, Vito Dai, Luigi Capodieci
Proceedings Volume 10962, 1096207 (2019) https://doi.org/10.1117/12.2516583
KEYWORDS: Clouds, Manufacturing, Mirrors, Visualization, Computer aided design, Data analysis, Distance measurement, Design for manufacturability, Integrated circuits, Shape analysis

Proceedings Article | 16 October 2017 Presentation
Proceedings Volume 10451, 104510B (2017) https://doi.org/10.1117/12.2282885
KEYWORDS: Photomasks, Machine learning, Optical proximity correction, Analytics, Manufacturing, Silicon, Data modeling, Systems modeling, Data processing, Design for manufacturing

Proceedings Article | 16 March 2016 Paper
Proceedings Volume 9781, 97810B (2016) https://doi.org/10.1117/12.2219358
KEYWORDS: Photomasks, Manufacturing, Lithography, Double patterning technology, Metals, Image classification, Library classification systems, Design for manufacturing, Design for manufacturability, Overlay metrology, Optical proximity correction, 193nm lithography

Proceedings Article | 26 March 2015 Paper
Proceedings Volume 9427, 94270Q (2015) https://doi.org/10.1117/12.2086904
KEYWORDS: Manufacturing, Metals, Design for manufacturing, Raster graphics, Image classification, Data modeling, Statistical analysis, Design for manufacturability, Current controlled current source, Optimization (mathematics)

Showing 5 of 47 publications
Proceedings Volume Editor (4)

Conference Committee Involvement (15)
DTCO and Computational Patterning IV
25 February 2025 | San Jose, California, United States
DTCO and Computational Patterning III
26 February 2024 | San Jose, California, United States
DTCO and Computational Patterning II
27 February 2023 | San Jose, California, United States
Design-Technology Co-optimization XV
22 February 2021 | Online Only, California, United States
Design-Process-Technology Co-optimization for Manufacturability XIV
26 February 2020 | San Jose, California, United States
Showing 5 of 15 Conference Committees
Course Instructor
SC1209: Data Analytics and Machine Learning in Semiconductor Manufacturing: Applications for Physical Design, Process and Yield Optimization
This course provides an introduction to methodologies and techniques in Data Analytics and Machine Learning, with specific applications to semiconductor manufacturing, from physical design characterization to process and yield optimization. While the growth of (Big) Data Analytics and Machine Learning continues to increase across virtually every industrial sector, the semiconductor space has seen only a modest adoption. This course aims at lowering the entry barrier, by providing both foundational and practical skills for semiconductor engineers and practitioners. Following a comprehensive survey of the state-of-the-art and current developments in Data Analytics and Machine Learning, the course describes how functional interactions and data information flows in the Design-to-Manufacturing chain can be enhanced by analytics algorithmic methodologies. Quantitative definitions of physical design space coverage and process space learning are introduced as the unifying abstraction, allowing for the construction of a computational application framework. Design-Technology-Co-Optimization (DTCO) is then extended with the novel paradigm of DFM-as-Search. Examples from this new DFM computational toolkit, are used to demonstrate how the advanced IC technology nodes (14, 10, 7 and 5nm) not only benefit from, but actually require the use of a new class of correlation extraction algorithms for heterogeneous data sets.
SC540: Applying Optical Proximity Correction and Design for Manufacturability to Product Designs
Optical proximity correction (OPC) is now a requirement for advanced semiconductor manufacturing. OPC alters the designed layout to compensate for systematic patterning distortions and/or to implement process latitude improving methods. Accurate and practical model-based OPC implementation is needed with essentially all lithography resolution enhancement techniques (RET) on complex real world designs. This practical example-oriented class will prepare attendees to implement manufacturable rule and model-based OPC on their product designs and introduce them to optimized OPC, design & process solution methods known as lithographic Design for Manufacturability (DFM).
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