Épisodes

  • Episode 028: Building the Dataset: From Chaos to Order
    Dec 7 2025

    Realistically, you can't build any model of behavior-environment relations if you can't (a) find the data you need and (b) integrate those data into a usable database.

    In this episode of The Behavioral Data Science Podcast, we discuss the many considerations and decisions one needs to make. And, we do so by discussing a seven-year-long project Jake has been working on to build a usable database of all open-source articles published within five behavior-analytic journals.

    Voir plus Voir moins
    1 h et 7 min
  • Episode 027: Operationalizing Behavior in the Wild
    Nov 23 2025

    Crucial to any behavioral data science project is identifying either (a) what behavior you want to analyze and how you'll get the data; or (b) what data you can get and what behaviors those data allow you to analyze well.

    In this episode, we chat about these decisions in the context of the literally wild behavior of birds at backyard feeders.

    For the interested, here's a link to the backyard ecology dashboard referenced during the episode: https://david-j-cox.github.io/backyard-ecology/

    Voir plus Voir moins
    1 h et 2 min
  • Episode 026: From Hot Take to Testable Question
    Nov 16 2025

    In each episode of Season 3, we take a claim from a news story, paper, or hot topic, and walk through how a behavioral data scientist would think about it: clarify the question, identify the operant and respondent principles potentially at play, design the data pipelines, choose the models, and turn the resulting insights into data-based behavior-change tools.


    In this episode, we take on the claim that "late-night screen time disrupts sleep and leads teens to be more depressed".

    Voir plus Voir moins
    1 h et 14 min
  • Episode 025: Reflections on LLMs and AI with Dr. Garrison
    Sep 28 2025

    As we close out Season 2 and our emphasis on LLMs, we had the distinct privilege of chatting with Dr. Elizabeth Garrison. She is one of the few people in the world with domain expertise spanning behavior analysis (BCBA) and artificial intelligence (PhD).

    In this episode, we reflect on the state of AI research and industry work pre-ChatGPT and post-ChatGPT release, the shift in academic AI research when the transformer architecture became broadly available, and the differences between academia and industry in both behavior science and AI.

    Voir plus Voir moins
    1 h et 8 min
  • Episode 024: Are we in an AI bubble?
    Sep 6 2025

    "Bubbles" are an economic phenomenon characterized by a rapid increase in asset prices that far exceed the asset's underlying fundamental value, driven by speculative buying and herd behavior rather than intrinsic worth.

    In this episode, Jake and David ask, "Are we in an AI bubble?". And, if so, what might this mean for both individuals and organizations as they navigate the current AI strategic landscape?

    Voir plus Voir moins
    1 h et 7 min
  • Episode 023: Your Brain on LLMs
    Aug 31 2025

    In this episode, Jake and David discuss the burgeoning area of research looking at how interacting with LLMs impacts our skills and abilities in good and bad ways. As with most things in life, the effects are not black-and-white. And, we discuss strategies and tactics we can all engage in to try to get the benefits without the drawbacks.

    Voir plus Voir moins
    1 h et 14 min
  • Episode 022: The Ethics of LLMs that Few Talk About
    Aug 9 2025

    Conversations around AI ethics often focus on a suite of incredibly important topics such as data security and privacy, model bias, model transparency, and explainability. However, each time we use large AI models (e.g., diffusion models, LLMs), we reinforce a host of additional potentially unethical practices that are needed to build and maintain these systems.

    In this episode, Jake and David discuss some of these unsavory topics, such as human labor costs and environmental impact. Although it's a bit of a downer, it's crucial for each of us to acknowledge how our behavior impacts the larger ecosystem and recognize our role in perpetuating these practices.

    Voir plus Voir moins
    1 h et 11 min
  • Episode 021: Explainable AI and LLMs
    Aug 3 2025

    "Explainable AI", aka XAI, refers to a suite of techniques to help AI system developers and AI system users understand why inputs to the system resulted in the observed outputs.

    Industries such as healthcare, education, and finance require that any system using mathematical models or algorithms to influence the lives of others is transparent and explainable.

    In this episode, Jake and David review what XAI is, classical techniques in XAI, and the burgeoning area of XAI techniques specific to LLM-driven systems.

    Voir plus Voir moins
    1 h et 13 min
adbl_web_global_use_to_activate_DT_webcro_1694_expandible_banner_T1