Lone Star Software Symposium: Austin - July 7 - 9, 2017 - No Fluff Just Stuff

Douglas Hawkins

Lone Star Software Symposium: Austin

Austin · July 7 - 9, 2017

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Douglas Hawkins

Lead Developer Java Performance Monitoring at Datadog

Douglas Hawkins has been passionately developing software for the past 20 years.
Throughout Doug's career, he has focused on creating performance intensive applications
in Java ranging from bioinformatics to financial exchanges.

After 10 years as a Java developer, Doug transitioned to working on Azul's Java Virtual Machine.
Today, Doug continues his interest in building performance tools for developers working on Datadog's Java Application Performance Monitoring.

While Doug's passion for developing software remains, his true passion is in sharing his
interest in low-level details and JVM performance with others.

Presentations

How (Not) To Measure and Profile Java Performance

Today, we all benefit from the sophistication of modern compilers and hardware, but that extra complexity can also make it difficult to reason about performance.

Java Performance Puzzlers

Everyone worries about performance but few of us have the time to truly understand it. Fortunately, our modern JVMs and CPUs are capable of some amazing performance tricks, but those same tricks only make reasoning about performance that much harder.

Java Performance Puzzlers - Part 2

Everyone worries about performance but few of us have the time to truly understand it. Fortunately, our modern JVMs and CPUs are capable of some amazing performance tricks, but those same tricks only make reasoning about performance that much harder.

Concurrency Concepts in Java

Unlike other languages, Java had a well-defined memory model from the very beginning, but over the years additional packages and low-level features have been added to make the most of today's hardware.

In this talk, we'll discuss concurrency in detail starting at the hardware up to Java's latest synchronization mechanisms and finally onto high-level concurrent collections.