logo
episode-header-image
Jan 2024
44m 32s

SE Radio 599: Jason C. McDonald on Quant...

se-radio@computer.org
About this episode

Jason C. McDonald, author of the book Dead Simple Python, speaks with host Samuel Taggart about leveraging quantified tasks to improve estimation, particularly across projects. They discuss the origin of the concept and its relationship with story points, and Jason offers examples to show how quantified tasks can capture nuances in software tasks that are often lost with story points. He also points to the ability to compare them across projects as a major advantage of quantified tasks. Among other topics, they consider also how to use quantified tasks to analyze the stability of a codebase. Brought to you by IEEE Computer Society and IEEE Software magazine.

Up next
Aug 20
SE Radio 682: Duncan McGregor and Nat Pryce on Refactoring from Java to Kotlin
Duncan McGregor and Nat Pryce, co-authors of Java to Kotlin: Refactoring Guidebook, speak with host Giovanni Asproni about their hands-on experiences migrating Java codebases. The episode starts by highlighting Kotlin’s seamless interoperability with Java, allowing teams to incre ... Show More
57m 23s
Aug 12
SE Radio 681: Qian Li on DBOS Durable Execution/Serverless Computing Platform
Qian Li of DBOS, a durable execution platform born from research by the creators of Postgres and Spark, speaks with host Kanchan Shringi about building durable, observable, and scalable software systems, and why that matters for modern applications. They discuss database-backed p ... Show More
52m 17s
Aug 6
SE Radio 680: Luke Hinds on Privacy and Security of AI Coding Assistants
Luke Hinds, CTO of Stacklok and creator of Sigstore, speaks with SE Radio's Brijesh Ammanath about the privacy and security concerns of using AI coding agents. They discuss how the increased use of AI coding assistants has improved programmer productivity but has also introduced ... Show More
45m 37s
Recommended Episodes
Jul 2020
Nora Jones on Resilience Engineering, Mental Models, and Learning from Incidents
In this podcast, Nora Jones, Co-Founder and CEO at Jeli and co-author of O’Reilly’s “Chaos Engineering: System Resiliency in Practice”, sat down with InfoQ podcast co-host Daniel Bryant. Topics discussed included: chaos engineering and resilience engineering, planning and running ... Show More
36 m
Sep 2020
Vertafore's Chad Hawkinson on Cloud Data Security and Streamlining Workflows
Joining Cindi today is Chad Hawkinson, the Chief Product and Data Officer at Vertafore, the leader in creating modern insurance technology. A seasoned data and analytics guru, Chad has seen first-hand the profound impact data-driven insights can have on customers’ success.  On th ... Show More
53m 58s
Jan 2022
Thomas Huckle and Tobias Neckel, "Bits and Bugs: A Scientific and Historical Review of Software Failures in Computational Science" (SIAM, 2019)
A true understanding of the pervasive role of software in the world demands an awareness of the volume and variety of real-world software failures and their consequences. No more thorough survey of these events may be available than Thomas Huckle and Tobias Neckel's Bits and Bugs ... Show More
1h 4m
Mar 2022
Bayesian Machine Learning with Ravin Kumar (Ep. 191)
This is one episode where passion for math, statistics and computers are merged. I have a very interesting conversation with Ravin,  data scientist at Google where he uses data to inform decisions. He has previously worked at Sweetgreen, designing systems that would benefit team ... Show More
31m 12s
Sep 2020
Marcello La Rocca on Algorithms and Data Structures
Q McCallum (Senior Content Advisor at Formulatedby, the company behind Data Science Salon) met up with Marcello La Rocca, someone who compiled his extensive knowledge of algorithms into a rather hefty book on the topic.  In this episode, the author of Algorithms and Data Structur ... Show More
1h 2m
Mar 2021
Matt Godbolt: Software Testing, Performance Tuning, and Code Handoff for Data Scientists
Data scientists and ML engineers write a lot of code: building data pipelines, wiring up models, and sometimes translating concepts from research papers into algorithms.  Once in a while, that code runs into performance problems.  These can be painful to debug when you don't come ... Show More
1h 8m