Practical MATLAB deep learning: a projects-based approach
Gespeichert in:
Hauptverfasser: | , , |
---|---|
Format: | Buch |
Sprache: | English |
Veröffentlicht: |
New York, NY
Apress
[2022]
|
Ausgabe: | Second edition |
Schlagworte: | |
Beschreibung: | Harness the power of MATLAB for deep-learning challenges. Practical MATLAB Deep Learning, Second Edition, remains a one-of a-kind book that provides an introduction to deep learning and using MATLAB's deep-learning toolboxes. In this book, you’ll see how these toolboxes provide the complete set of functions needed to implement all aspects of deep learning. This edition includes new and expanded projects, and covers generative deep learning and reinforcement learning.Over the course of the book, you'll learn to model complex systems and apply deep learning to problems in those areas. Applications include:- Aircraft navigation- An aircraft that lands on Titan, the moon of Saturn, using reinforcement learning- Stock market prediction- Natural language processing- Music creation usng generative deep learning- Plasma control- Earth sensor processing for spacecraft- MATLAB Bluetooth data acquisition applied to dance physics You will:- Explore deep learning using MATLAB and compare it to algorithms- Write a deep learning function in MATLAB and train it with examples- Use MATLAB toolboxes related to deep learning- Implement tokamak disruption prediction 1. What is deep learning? – no changes except editoriala. Machine learning vs. deep learningb. Approaches to deep learningc. Recurrent deep learningd. Convolutional deep learning2. MATLAB machine and deep learning toolboxesa. Describe the functionality and applications of each toolboxb. Demonstrate MATLAB toolboxes related to Deep Learningc. Include the text toolbox generative toolbox and reinforcement learning toolboxd. Add more detail on each3. Finding Circles – no changes except editorial.4. Classifying movies – no changes except editorial.5. Tokamak disruption detection – this would be updated.6. Classifying a pirouette – no changes except editorial.7. Completing sentences - This would be revamped using the MATLAB Text Processing Toolbox.8. Terrain based navigation-The example in the original book would be changed to a regression approach that can interpolate position. We would switch to a terrestrial example applicable to drones.9. Stock prediction – this is a very popular chapter. We would improve the algorithm.10. Image classification – no changes except editorial.11. Orbit Determination – add inclination to the algorithm.12. Earth Sensors – a new example on how to use neural networks to measure roll and yaw from any Earth sensor.13. Generative deep learning example. This would be a neural network that generates pictures after learning an artist’s style.14. Reinforcement learning. This would be a simple quadcopter hovering control system. It would be simulation based although readers would be able to apply this to any programmable quadcopter. |
Beschreibung: | xix, 329 Seiten Illustrationen, Diagramme 669 grams |
ISBN: | 9781484279113 |
Internformat
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500 | |a Harness the power of MATLAB for deep-learning challenges. Practical MATLAB Deep Learning, Second Edition, remains a one-of a-kind book that provides an introduction to deep learning and using MATLAB's deep-learning toolboxes. In this book, you’ll see how these toolboxes provide the complete set of functions needed to implement all aspects of deep learning. This edition includes new and expanded projects, and covers generative deep learning and reinforcement learning.Over the course of the book, you'll learn to model complex systems and apply deep learning to problems in those areas. Applications include:- Aircraft navigation- An aircraft that lands on Titan, the moon of Saturn, using reinforcement learning- Stock market prediction- Natural language processing- Music creation usng generative deep learning- Plasma control- Earth sensor processing for spacecraft- MATLAB Bluetooth data acquisition applied to dance physics You will:- Explore deep learning using MATLAB and compare it to algorithms- Write a deep learning function in MATLAB and train it with examples- Use MATLAB toolboxes related to deep learning- Implement tokamak disruption prediction | ||
500 | |a 1. What is deep learning? – no changes except editoriala. Machine learning vs. deep learningb. Approaches to deep learningc. Recurrent deep learningd. Convolutional deep learning2. MATLAB machine and deep learning toolboxesa. Describe the functionality and applications of each toolboxb. Demonstrate MATLAB toolboxes related to Deep Learningc. Include the text toolbox generative toolbox and reinforcement learning toolboxd. Add more detail on each3. Finding Circles – no changes except editorial.4. Classifying movies – no changes except editorial.5. Tokamak disruption detection – this would be updated.6. Classifying a pirouette – no changes except editorial.7. Completing sentences - This would be revamped using the MATLAB Text Processing Toolbox.8. Terrain based navigation-The example in the original book would be changed to a regression approach that can interpolate position. We would switch to a terrestrial example applicable to drones.9. Stock prediction – this is a very popular chapter. We would improve the algorithm.10. Image classification – no changes except editorial.11. Orbit Determination – add inclination to the algorithm.12. Earth Sensors – a new example on how to use neural networks to measure roll and yaw from any Earth sensor.13. Generative deep learning example. This would be a neural network that generates pictures after learning an artist’s style.14. Reinforcement learning. This would be a simple quadcopter hovering control system. It would be simulation based although readers would be able to apply this to any programmable quadcopter. | ||
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700 | 1 | |a Ham, Eric |e Verfasser |4 aut | |
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Datensatz im Suchindex
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author | Paluszek, Michael 1954- Thomas, Stephanie Ham, Eric |
author_GND | (DE-588)1093613025 |
author_facet | Paluszek, Michael 1954- Thomas, Stephanie Ham, Eric |
author_role | aut aut aut |
author_sort | Paluszek, Michael 1954- |
author_variant | m p mp s t st e h eh |
building | Verbundindex |
bvnumber | BV048554185 |
ctrlnum | (OCoLC)1362873334 (DE-599)BVBBV048554185 |
edition | Second edition |
format | Book |
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id | DE-604.BV048554185 |
illustrated | Illustrated |
index_date | 2024-07-03T20:58:13Z |
indexdate | 2025-01-29T17:03:49Z |
institution | BVB |
isbn | 9781484279113 |
language | English |
oai_aleph_id | oai:aleph.bib-bvb.de:BVB01-033930482 |
oclc_num | 1362873334 |
open_access_boolean | |
owner | DE-29T |
owner_facet | DE-29T |
physical | xix, 329 Seiten Illustrationen, Diagramme 669 grams |
publishDate | 2022 |
publishDateSearch | 2022 |
publishDateSort | 2022 |
publisher | Apress |
record_format | marc |
spelling | Paluszek, Michael 1954- Verfasser (DE-588)1093613025 aut Practical MATLAB deep learning a projects-based approach Michael Paluszek, Stephanie Thomas, Eric Ham Second edition New York, NY Apress [2022] xix, 329 Seiten Illustrationen, Diagramme 669 grams txt rdacontent n rdamedia nc rdacarrier Harness the power of MATLAB for deep-learning challenges. Practical MATLAB Deep Learning, Second Edition, remains a one-of a-kind book that provides an introduction to deep learning and using MATLAB's deep-learning toolboxes. In this book, you’ll see how these toolboxes provide the complete set of functions needed to implement all aspects of deep learning. This edition includes new and expanded projects, and covers generative deep learning and reinforcement learning.Over the course of the book, you'll learn to model complex systems and apply deep learning to problems in those areas. Applications include:- Aircraft navigation- An aircraft that lands on Titan, the moon of Saturn, using reinforcement learning- Stock market prediction- Natural language processing- Music creation usng generative deep learning- Plasma control- Earth sensor processing for spacecraft- MATLAB Bluetooth data acquisition applied to dance physics You will:- Explore deep learning using MATLAB and compare it to algorithms- Write a deep learning function in MATLAB and train it with examples- Use MATLAB toolboxes related to deep learning- Implement tokamak disruption prediction 1. What is deep learning? – no changes except editoriala. Machine learning vs. deep learningb. Approaches to deep learningc. Recurrent deep learningd. Convolutional deep learning2. MATLAB machine and deep learning toolboxesa. Describe the functionality and applications of each toolboxb. Demonstrate MATLAB toolboxes related to Deep Learningc. Include the text toolbox generative toolbox and reinforcement learning toolboxd. Add more detail on each3. Finding Circles – no changes except editorial.4. Classifying movies – no changes except editorial.5. Tokamak disruption detection – this would be updated.6. Classifying a pirouette – no changes except editorial.7. Completing sentences - This would be revamped using the MATLAB Text Processing Toolbox.8. Terrain based navigation-The example in the original book would be changed to a regression approach that can interpolate position. We would switch to a terrestrial example applicable to drones.9. Stock prediction – this is a very popular chapter. We would improve the algorithm.10. Image classification – no changes except editorial.11. Orbit Determination – add inclination to the algorithm.12. Earth Sensors – a new example on how to use neural networks to measure roll and yaw from any Earth sensor.13. Generative deep learning example. This would be a neural network that generates pictures after learning an artist’s style.14. Reinforcement learning. This would be a simple quadcopter hovering control system. It would be simulation based although readers would be able to apply this to any programmable quadcopter. bicssc bisacsh Compilers (Computer programs) Artificial intelligence Makerspaces Computer science—Mathematics Programming languages (Electronic computers) Hardcover, Softcover / Informatik, EDV Thomas, Stephanie Verfasser aut Ham, Eric Verfasser aut Erscheint auch als Online-Ausgabe 978-1-4842-7912-0 |
spellingShingle | Paluszek, Michael 1954- Thomas, Stephanie Ham, Eric Practical MATLAB deep learning a projects-based approach bicssc bisacsh Compilers (Computer programs) Artificial intelligence Makerspaces Computer science—Mathematics Programming languages (Electronic computers) |
title | Practical MATLAB deep learning a projects-based approach |
title_auth | Practical MATLAB deep learning a projects-based approach |
title_exact_search | Practical MATLAB deep learning a projects-based approach |
title_exact_search_txtP | Practical MATLAB deep learning a projects-based approach |
title_full | Practical MATLAB deep learning a projects-based approach Michael Paluszek, Stephanie Thomas, Eric Ham |
title_fullStr | Practical MATLAB deep learning a projects-based approach Michael Paluszek, Stephanie Thomas, Eric Ham |
title_full_unstemmed | Practical MATLAB deep learning a projects-based approach Michael Paluszek, Stephanie Thomas, Eric Ham |
title_short | Practical MATLAB deep learning |
title_sort | practical matlab deep learning a projects based approach |
title_sub | a projects-based approach |
topic | bicssc bisacsh Compilers (Computer programs) Artificial intelligence Makerspaces Computer science—Mathematics Programming languages (Electronic computers) |
topic_facet | bicssc bisacsh Compilers (Computer programs) Artificial intelligence Makerspaces Computer science—Mathematics Programming languages (Electronic computers) |
work_keys_str_mv | AT paluszekmichael practicalmatlabdeeplearningaprojectsbasedapproach AT thomasstephanie practicalmatlabdeeplearningaprojectsbasedapproach AT hameric practicalmatlabdeeplearningaprojectsbasedapproach |