Comparing APL and Python implementations Berkeley Admissions
4
Fisher's Iris Dataset 1936
5
Comparing APL and Python implementations Fisher's Iris Dataset
6
Google Trends Last 5 Years: Scotch
7
Comparing APL and Python implementations Google Trends: Scotch
8
Can You Do Data Science in APL? science ⌸ data
9
Beyond ⌸: Inverted Tables by Roger Hui
10
Dynamic Namespaces
11
Object-Oriented Programming: Data Namespace
12
Application Example: Microstructural Analysis of Metals
13
Conclusion: as an APLer, You Are a Data Scientist!
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Grab it
Explore data science applications in Dyalog APL through this 18-minute conference talk that demonstrates the language's powerful capabilities for data analysis. Learn how APL primitives can solve introductory data science problems, comparing implementations with Python using classic datasets like Berkeley Admissions (1973) and Fisher's Iris Dataset (1936). Discover advanced Dyalog features for library development, including inverted tables, dynamic namespaces, and object-oriented programming. Follow along as real-world applications in materials science and microstructural analysis of metals are presented, showcasing APL's practical value in scientific computing. Gain insights into how APL's concise syntax and powerful primitives make it an effective tool for data scientists, complete with downloadable presentation slides for further reference.
Dyalog APL for Data Science: From Basic Analysis to Materials Science Applications