Data Science x Public Health
Resource allocation models are supposed to help public health systems distribute scarce resources more intelligently. They promise better targeting, more efficient deployment, and stronger impact under constraint. But what if the model is optimizing inside a system whose deepest constraints should never have been treated as fixed? In this episode, we break down why resource allocation models often fail in practice, how optimization can normalize structural scarcity, and why better public health modeling has to question the system—not just distribute within it. 👉 Enjoyed the episode? Follow the show to get new episodes automatically. If you found the content helpful, consider leaving a rating or review—it helps support the podcast. For business and sponsorship inquiries, email us at: 📧 contact@bjanalytics.com Youtube: https://www.youtube.com/@BJANALYTICS [https://www.youtube.com/@BJANALYTICS] Instagram: https://www.instagram.com/bjanalyticsconsulting/ [https://www.instagram.com/bjanalyticsconsulting/] Twitter/X: https://x.com/BJANALYTICS [https://x.com/BJANALYTICS] Threads: https://www.threads.com/@bjanalyticsconsulting [https://www.threads.com/@bjanalyticsconsulting]
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