William Mattingly
Introduction to Python for Humanists
57,99 €
inkl. MwSt.
Versandkostenfrei*
Versandfertig in über 4 Wochen
Melden Sie sich
hier
hier
für den Produktalarm an, um über die Verfügbarkeit des Produkts informiert zu werden.
William Mattingly
Introduction to Python for Humanists
- Broschiertes Buch
This book will introduce digital humanists at all levels of education to Python. It provides background and guidance on learning the Python computer programming language. It is designed so that those experienced in Python can teach from it, and those interested in being self-taught can use it.
Andere Kunden interessierten sich auch für
- Hui LinPractitioner's Guide to Data Science78,99 €
- L. Ashok Kumar (India PSG College of Technology)Deep Learning Approach for Natural Language Processing, Speech, and Computer Vision174,99 €
- S. SumathiMachine Learning for Decision Sciences with Case Studies in Python150,99 €
- Paola ZuccolottoBasketball Data Science194,99 €
- Luis Torgo (University of Porto, Portugal University of Porto, PortData Mining with R65,99 €
- Knowledge Guided Machine Learning141,99 €
- Harry G. PerrosAn Introduction to IoT Analytics65,99 €
-
-
-
This book will introduce digital humanists at all levels of education to Python. It provides background and guidance on learning the Python computer programming language. It is designed so that those experienced in Python can teach from it, and those interested in being self-taught can use it.
Produktdetails
- Produktdetails
- Chapman & Hall/CRC The Python Series
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 340
- Erscheinungstermin: 26. Juli 2023
- Englisch
- Abmessung: 175mm x 254mm x 27mm
- Gewicht: 770g
- ISBN-13: 9781032378374
- ISBN-10: 1032378379
- Artikelnr.: 67401390
- Chapman & Hall/CRC The Python Series
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 340
- Erscheinungstermin: 26. Juli 2023
- Englisch
- Abmessung: 175mm x 254mm x 27mm
- Gewicht: 770g
- ISBN-13: 9781032378374
- ISBN-10: 1032378379
- Artikelnr.: 67401390
William Mattingly is a 2022 Harry Frank Guggenheim Distinguished Scholar and a 2022-2023 ACLS Grantee for his work as co-principal investigator and lead developer for the Bitter Aloe Project which examines testimonies of violence from South Africa's Truth and Reconciliation Commission. He is currently the Postdoctoral Fellow for the Analysis of Historical Documents at the Smithsonian Institution's Data Science Lab. Mattingly currently works on two projects at the Smithsonian. The first is based at the United States Holocaust Memorial Museum (USHMM), where he is developing a robust pipeline of machine learning image classification and natural language processing (NLP) models to automate the cataloging of millions of images. At the Smithsonian, he is working on a project connected to the American Women's History Initiative. Here, he is developing machine learning and heuristic pipelines with spaCy, a Python NLP library. This pipeline will identify women in Smithsonian documents and automatically extract knowledge about them so that we can better understand the influential role women played at the Smithsonian.
Part I. The Basics of Python. Chapter 1. Introduction to Python. Chapter 2.
Data and Data Structures. Chapter 3. Loops and Logic. Chapter 4. Formal
Coding: Functions, Classes, and Libraries. Chapter 5. Working with External
Data. Chapter 6. Working with Data on the Web. Part II. Data Analysis with
Pandas. Chapter 7. Introduction to Pandas. Chapter 8. Working with Data in
Pandas. Chapter 9. Searching for Data. Chapter 10. Advanced Pandas. Part
III. Natural Language Processing with spaCy. Chapter 11. Introduction to
spaCy. Chapter 12. Rules-Based spaCy. Chapter 13. Solving a Domain-Specific
Problem: A Case Study with Holocaust NER. Chapter 14. Topic Modeling:
Concepts and Theory. Chapter 15. Text Analysis with BookNLP. Chapter 16.
Social Network Analysis. Part IV. Designing an Application with Streamlit.
Chapter 17. Introduction to Streamlit. Chapter 18. Advanced Streamlit
Features. Chapter 19. Building a Database Query Application. Part V.
Conclusion. Chapter 21. Conclusion.
Data and Data Structures. Chapter 3. Loops and Logic. Chapter 4. Formal
Coding: Functions, Classes, and Libraries. Chapter 5. Working with External
Data. Chapter 6. Working with Data on the Web. Part II. Data Analysis with
Pandas. Chapter 7. Introduction to Pandas. Chapter 8. Working with Data in
Pandas. Chapter 9. Searching for Data. Chapter 10. Advanced Pandas. Part
III. Natural Language Processing with spaCy. Chapter 11. Introduction to
spaCy. Chapter 12. Rules-Based spaCy. Chapter 13. Solving a Domain-Specific
Problem: A Case Study with Holocaust NER. Chapter 14. Topic Modeling:
Concepts and Theory. Chapter 15. Text Analysis with BookNLP. Chapter 16.
Social Network Analysis. Part IV. Designing an Application with Streamlit.
Chapter 17. Introduction to Streamlit. Chapter 18. Advanced Streamlit
Features. Chapter 19. Building a Database Query Application. Part V.
Conclusion. Chapter 21. Conclusion.
Part I. The Basics of Python. Chapter 1. Introduction to Python. Chapter 2.
Data and Data Structures. Chapter 3. Loops and Logic. Chapter 4. Formal
Coding: Functions, Classes, and Libraries. Chapter 5. Working with External
Data. Chapter 6. Working with Data on the Web. Part II. Data Analysis with
Pandas. Chapter 7. Introduction to Pandas. Chapter 8. Working with Data in
Pandas. Chapter 9. Searching for Data. Chapter 10. Advanced Pandas. Part
III. Natural Language Processing with spaCy. Chapter 11. Introduction to
spaCy. Chapter 12. Rules-Based spaCy. Chapter 13. Solving a Domain-Specific
Problem: A Case Study with Holocaust NER. Chapter 14. Topic Modeling:
Concepts and Theory. Chapter 15. Text Analysis with BookNLP. Chapter 16.
Social Network Analysis. Part IV. Designing an Application with Streamlit.
Chapter 17. Introduction to Streamlit. Chapter 18. Advanced Streamlit
Features. Chapter 19. Building a Database Query Application. Part V.
Conclusion. Chapter 21. Conclusion.
Data and Data Structures. Chapter 3. Loops and Logic. Chapter 4. Formal
Coding: Functions, Classes, and Libraries. Chapter 5. Working with External
Data. Chapter 6. Working with Data on the Web. Part II. Data Analysis with
Pandas. Chapter 7. Introduction to Pandas. Chapter 8. Working with Data in
Pandas. Chapter 9. Searching for Data. Chapter 10. Advanced Pandas. Part
III. Natural Language Processing with spaCy. Chapter 11. Introduction to
spaCy. Chapter 12. Rules-Based spaCy. Chapter 13. Solving a Domain-Specific
Problem: A Case Study with Holocaust NER. Chapter 14. Topic Modeling:
Concepts and Theory. Chapter 15. Text Analysis with BookNLP. Chapter 16.
Social Network Analysis. Part IV. Designing an Application with Streamlit.
Chapter 17. Introduction to Streamlit. Chapter 18. Advanced Streamlit
Features. Chapter 19. Building a Database Query Application. Part V.
Conclusion. Chapter 21. Conclusion.