ExLibris header image
SFX Logo
Title: Machine Learning in Python: Main Developments and Technology Trends in Data Science, Machine Learning, and Artificial Intelligence
Source:

Information (2078-2489) [2078-2489] Raschka, Sebastian yr:2020


Collapse list of basic services Basic
Sorry, no full text available...
Please use the document delivery service (see below)  
Holding information
Holdings in library search engine ALBERT GO
Document delivery
Request document via Library/Bibliothek GO
Users interested in this article also expressed an interest in the following:
1. Carlos, Ruth C. "Data Science: Big Data, Machine Learning, and Artificial Intelligence." Journal of the American College of Radiology 15.3 Pt B (2018): 497-498. Link to SFX for this item
2. "Data Science, Machine learning and big data in Digital Journalism: A survey of state-of-the-art, challenges and opportunities." Expert systems with applications 221: 119795-. Link to SFX for this item
3. "Introductory data science across disciplines, using Python, case studies, and industry consulting projects." Teaching statistics. 43.S1. Link to SFX for this item
4. Sanchez Pinto, Yuan N. "Big Data and Data Science in Critical Care." Chest. 154.5: 1239-1248. Link to SFX for this item
5. "Data science and machine learning, mathematical and statistical methods." International journal of epidemiology. 49.6: 2096-2096. Link to SFX for this item
6. Ozgur, C. "MatLab vs. Python vs. R." Journal of data science : JDS. 15.3: 355-372. Link to SFX for this item
7. Pal, Sankar K. "Data science, big data and granular mining." Pattern recognition letters 67.P2 (2015): 109-112. Link to SFX for this item
8. Pal, M. "Extreme Learning Machine Based Modeling of Resilient Modulus of Subgrade Soils." Geotechnical and geological engineering 32.2 (2014): 287-296. Link to SFX for this item
9. Jifa, Zhang u. "Data, DIKW, Big Data and Data Science." Procedia computer science 31.C (2014): 814-821. Link to SFX for this item
10. Skitka, Linda J. "Accountability and automation bias." International journal of human-computer studies 52.4 (2000): 701-717. Link to Full Text for this item Link to SFX for this item
11. Provost, F. "Data Science and its Relationship to Big Data and Data-Driven Decision Making." Big data 1.1 (2013): 51-59. Link to SFX for this item
12. Kauermann, G. "Statistics, data science, and big data." Wirtschafts- und Sozialstatistisches Archiv. 10.2: 141-150. Link to SFX for this item
13. Knapp, Maureen M. "Big Data." Journal of electronic resources in medical libraries 10.4 (2013): 215-222. Link to SFX for this item
14. Huppenkothen, D. "Hack weeks as a model for data science education and collaboration." Proceedings of the National Academy of Sciences of the United States of America 115.36: 8872-8877. Link to SFX for this item
15. George, G. "Big data and data science methods for management research." Academy of Management Journal 59.5 (2016): 1493-1507. Link to Full Text for this item Link to SFX for this item
16. Skitka, Linda J. "Does automation bias decision-making?" International journal of human-computer studies 51.5 (1999): 991-1006. Link to Full Text for this item Link to SFX for this item
17. Aven, T. "A conceptual framework for linking risk and the elements of the data–information–knowledge–wisdom (DIKW) hierarchy." Reliability engineering & systems safety 111 (2013): 30-36. Link to SFX for this item
18. Fricke, M. "The knowledge pyramid: a critique of the DIKW hierarchy." Journal of information science 35.2 (2009): 131-142. Link to Full Text for this item Link to SFX for this item
19. "MatLab vs. Python vs. R." Journal of data science : JDS. 15.3. Link to SFX for this item
20. Teschendorff, Andrew E. "Avoiding common pitfalls in machine learning omic data science." Nature Materials 18.5 (2018): 422-427. Link to SFX for this item
View More...
View Less...
Select All Clear All

Expand list of advanced services Advanced