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Join Ads Marketplace to earn through podcast sponsorships.
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Earn rewards and recurring income from Fan Club membership.
Get the answers and support you need.
Resources and guides to launch, grow, and monetize podcast.
Stay updated with the latest podcasting tips and trends.
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Podcast interviews, best practices, and helpful tips.
The step-by-step guide to start your own podcast.
Create the best live podcast and engage your audience.
Tips on making the decision to monetize your podcast.
The best ways to get more eyes and ears on your podcast.
Everything you need to know about podcast advertising.
The ultimate guide to recording a podcast on your phone.
Steps to set up and use group recording in the Podbean app.
Summary of https://arxiv.org/pdf/2410.05229
This research paper investigates the mathematical reasoning capabilities of large language models (LLMs) and finds that their performance is not as robust as previously thought.
The authors introduce a new benchmark called GSM-Symbolic, which generates variations of math problems to assess the models' ability to generalize and handle changes in question structure.
The results show that LLMs struggle to perform true logical reasoning, often exhibiting a high degree of sensitivity to minor changes in input.
The authors also find that LLMs often blindly follow irrelevant information in the questions, suggesting that their reasoning process is more like pattern matching than true conceptual understanding.
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