Trevor Hastie was born in South Africa in 1953. He received his
university education from Rhodes University, South Africa (BS),
University of Cape Town (MS), and Stanford University (Ph.D Statistics 1984).
His first employment was with the South African Medical Research Council
in 1977, during which time he earned his MS from UCT. In 1979 he spent a year interning
at the London School of Hygiene and Tropical Medicine, the Johnson Space Center in Houston Texas,
and the Biomath department at Oxford University. He joined the Ph.D program at Stanford University in 1980.
After graduating from Stanford in 1984, he returned to South Africa
for a year with his earlier employer SA Medical Research Council.
He returned to the USA in March 1986 and joined the
statistics and data analysis research group at what was then AT&T Bell
Laboratories in Murray Hill, New Jersey. After eight years at Bell Labs,
he returned to Stanford University in 1994 as Professor in Statistics
and Biostatistics. In 2013 he was named the John A. Overdeck Professor
of Mathematical Sciences, and in 2018 was elected to the National
Academy of Sciences.
His main research contributions have been in applied statistics;
he has published over 200 articles and written five books in this area: "Generalized Additive Models"
(with R. Tibshirani, Chapman and Hall, 1991), "Elements of Statistical
Learning" (with R. Tibshirani and J. Friedman, Springer 2001; second
edition 2009), "An Introduction to Statistical Learning, with
Applications in R" (with G. James, D. Witten and R. Tibshirani,
Springer 2013) and "Statistical Learning with Sparsity" (with R. Tibshirani and M. Wainwright, Chapman and Hall, 2015) and
"Computer Age Statistical Inference" (with Bradley Efron, Cambridge
2016). He has also made contributions in statistical
computing, co-editing (with J. Chambers) a large software library on
modeling tools in the S language ("Statistical Models in S",
Wadsworth, 1992), which form the foundation for much of the
statistical modeling in R. His current research focuses on applied
statistical modeling and prediction problems in biology and genomics,
medicine and industry.