Podcast thumbnail for HSAC Pod

by Harvard Sports Analytics Collective

4.6(7 reviews)
14 episodes
Updated Daily
Accepts GuestsHas SponsorsLocation 🇺🇸

Podcast Overview

The Harvard Sports Analytics Collective is a group of undergraduate students dedicated to the quantitative and statistical analysis of sports. We break down the numbers and advanced metrics behind all your favorite teams and players bringing useful insights to the game.

Language

🇺🇲

Publishing Since

2/1/2021

1 verified contact email on file for HSAC Pod

Pitch yourself as a guest, propose sponsorships, or reach out directly to the host.

Recent Episodes

Episode thumbnail for Super Bowl LVI Preview - Rams vs Bengals

February 8, 2022

Super Bowl LVI Preview - Rams vs Bengals

<p>On this episode,&nbsp;<a href="https://twitter.com/david_arkow" rel="noreferrer noopener" target="_blank">David Arkow</a>, Shiv Chandra, and <a href="https://twitter.com/ElliotKChin" title="Elliot Chin">Elliot Chin</a> dissect the key matchups between the Los Angeles Rams and Cincinnati Bengals and make their Super Bowl predictions.</p>

Episode thumbnail for NFL Playoff Recap

February 3, 2022

NFL Playoff Recap

<p>On this episode,&nbsp;<a href="https://twitter.com/david_arkow" rel="ugc noopener noreferrer" target="_blank">David Arkow</a>, Shiv Chandra, and <a href="https://twitter.com/ElliotKChin">Elliot Chin</a> recap the first three rounds of the NFL playoffs and discuss the most exciting games and player performances. Check out our website at&nbsp;<a href="http://harvardsportsanalysis.org/" rel="ugc noopener noreferrer" target="_blank">harvardsportsanalysis.org</a>&nbsp;and follow us on Twitter&nbsp;<a href="https://twitter.com/harvard_sports?lang=en" rel="ugc noopener noreferrer" target="_blank">@Harvard_Sports</a>.</p>

Episode thumbnail for NFL Playoff Preview

January 13, 2022

NFL Playoff Preview

<p>The Harvard Sports Analytics Collective (HSAC) is a group of undergraduate students dedicated to the quantitative and statistical analysis of sports. On this episode,&nbsp;<a href="https://twitter.com/david_arkow" rel="ugc noopener noreferrer" target="_blank">David Arkow</a>, Shiv Chandra, and Elliot Chin recap the dramatic regular season finale, discuss player awards, preview Wild Card weekend, and make their playoff predictions. Check out our website at&nbsp;<a href="http://harvardsportsanalysis.org/" rel="ugc noopener noreferrer" target="_blank">harvardsportsanalysis.org</a>&nbsp;and follow us on Twitter&nbsp;<a href="https://twitter.com/harvard_sports?lang=en" rel="ugc noopener noreferrer" target="_blank">@Harvard_Sports</a>.</p>

14 total episodes available

Deep-dive analytics for HSAC Pod

Frequently asked questions

Have a different question and can't find the answer you're looking for? Reach out to our support team by sending us an email and we'll get back to you as soon as we can.

What is HSAC Pod?

The Harvard Sports Analytics Collective is a group of undergraduate students dedicated to the quantitative and statistical analysis of sports. We break down the numbers and advanced metrics behind all your favorite teams and players bringing useful insights to the game.

How often does this podcast release new episodes?

This podcast updates daily.

Where can I listen to this podcast?

This podcast is available on 4 platforms including Apple Podcasts, Spotify, and more. You can also use the RSS feed directly.

Does this podcast accept guests?

Yes, this podcast regularly features guests.

Legal Disclaimer

Pod Engine is not affiliated with, endorsed by, or officially connected with any of the podcasts displayed on this platform. We operate independently as a podcast discovery and analytics service.

All podcast artwork, thumbnails, and content displayed on this page are the property of their respective owners and are protected by applicable copyright laws. This includes, but is not limited to, podcast cover art, episode artwork, show descriptions, episode titles, transcripts, audio snippets, and any other content originating from the podcast creators or their licensors.

We display this content under fair use principles and/or implied license for the purpose of podcast discovery, information, and commentary. We make no claim of ownership over any podcast content, artwork, or related materials shown on this platform. All trademarks, service marks, and trade names are the property of their respective owners.

While we strive to ensure all content usage is properly authorized, if you are a rights holder and believe your content is being used inappropriately or without proper authorization, please contact us immediately at hey@podengine.ai for prompt review and appropriate action, which may include content removal or proper attribution.

By accessing and using this platform, you acknowledge and agree to respect all applicable copyright laws and intellectual property rights of content owners. Any unauthorized reproduction, distribution, or commercial use of the content displayed on this platform is strictly prohibited.