The KickstartAI Podcast

Episode 10: Do we need AI tutors?

42 min · 30. sept. 2025
episode Episode 10: Do we need AI tutors? cover

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AI’s role in education is growing fast, but what does it really mean for students and teachers? In this episode, we interview Damian Ashworth, teacher and co-founder of BrainBite – a platform built around hyper-personalization and AI tutors that adapt content to each student’s level, pace, and interests. We dive into the benefits of AI tutors, the challenges and limitations still ahead, and what a hybrid future of human teachers and AI support might look like. Along the way, Damian reflects on what AI can (and can not) do for education, and offers advice for both educators and edtech startups.

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13 episoder

episode 2025 AI Rewind: The year of gradual progress? cover

2025 AI Rewind: The year of gradual progress?

In this year's roundup, Nic, Evertjan, and Cascha unpack the rollercoaster that 2025 was for AI. From the shockwave of DeepSeek R1 to the "gradual" progress of GPT-5 and Gemini 3.0, we break down the tech, the data, (and the drama).  We discuss why 2025 became the "Year of the Idea Guy" rather than the "Year of General Agents," analyze the Great Minds of AI (from Ilya’s return to research to Dario’s scaling maximalism), and look at what the betting markets say about the bubble bursting. Finally, we make our own predictions on what 2026 holds for the industry. We cover: The 2025 Timeline: A month-by-month breakdown of model releases (DeepSeek, o3, Claude 3.7, Gemini 3). The Pelican Benchmark: Visualizing progress through Simon Willison’s famous "Pelican on a bicycle" test. Highlights & Lowlights: The rise of agentic coding, the failure of general agents, and the "Information Obscurity" problem in AI labs. Great Minds in AI: A deep dive into the conflicting philosophies of Sutskever, Karpathy, LeCun, Sutton, Hassabis, and Amodei. Polymarkets & Predictions: What the crowd thinks about AGI, Tesla FSD, and the AI bubble, plus our team's predictions for 2026. Links & Resources Mentioned: Benchmarks & Data: ⁠METR Time-Horizon Benchmark⁠ [https://metr.org/] - Tracking the jump in capabilities. ⁠Epoch AI Capabilities Index⁠ [https://epoch.ai/latest] - Aggregated model progress ⁠The Pelican Benchmark (Simon Willison)⁠ [https://simonwillison.net/2025/Jun/6/six-months-in-llms/] - The evolution of SVGs. ⁠Epoch AI Data Center Sizes⁠ [https://epoch.ai/data-insights/data-center-sizes] - Visualizing the gigawatt scale. Interviews & Articles: ⁠Ilya Sutskever on Dwarkesh Podcast⁠ [https://www.dwarkesh.com/p/ilya-sutskever-2] - "The Return to Discovery". ⁠Andrej Karpathy on Dwarkesh Podcast⁠ [https://www.dwarkesh.com/p/andrej-karpathy] - The "Decade of Agents" and "Silent Collapse". ⁠Sam Altman: The Gentle Singularity⁠ [https://blog.samaltman.com/] - Referenced in discussion. ⁠Horses vs. Cars Analogy⁠ [https://andyljones.com/posts/horses.html] - Understanding adoption lag. Prediction Markets (Polymarket & Metaculus): ⁠Will the AI Bubble Burst?⁠ [https://polymarket.com/event/ai-bubble-burst-by]  ⁠Tesla Unsupervised FSD Timeline⁠ [https://polymarket.com/event/tesla-launches-unsupervised-full-self-driving-fsd-by?tid=1764933019807]  ⁠When will weakly general AI be announced?⁠ [https://www.metaculus.com/questions/3479/]

19. dec. 20251 h 5 min
episode AI for food security: merging data and policy cover

AI for food security: merging data and policy

How can AI support global food security in practice? In this episode, we speak with Marieke Meeske PhD researcher at Tilburg University’s Zero Hunger Lab, about how Natural Language Processing (NLP) is applied to food security analysis and policymaking. We cover her review of 60+ NLP use cases, from early warning systems to understanding public perceptions around food sustainability. We also explore why most AI solutions in this space struggle to move beyond the research stage, and what this “implementation gap” means for real-world impact. Finally, Marieke shares insights from her current work with the UN’s FAO, including the use of NLP to measure policy integration across climate, agriculture, and nutrition — helping identify gaps and misalignments in national food policies.

21. nov. 202537 min
episode Journalism in the GenAI era: What's changing? cover

Journalism in the GenAI era: What's changing?

In what ways is the rise of generative AI impacting journalism?  In this episode, we sit down with Andrii Degeler, founder of unzip.media and journalist-in-residence at Dealroom.co, to discuss what the AI shift means for newsroom workflows, the role of the journalist, and the evolving media business model. We also touch on the overarching themes of media trust and AI literacy. We unpack how newsrooms are experimenting with GenAI, the ethical questions around authorship and disclosure, the impact of Google’s AI overviews on publishers, and the sustainability of media business models in an AI driven-landscape.  Links and references: The new media literacy [https://unzip.media/the-new-media-literacy/] Generative AI and news reports 2025: How people think about AI's role in journalism and society [https://reutersinstitute.politics.ox.ac.uk/generative-ai-and-news-report-2025-how-people-think-about-ais-role-journalism-and-society#header--7] Business Insider reportedly tells journalists they can use AI to draft stories [https://www.theverge.com/news/779739/business-insider-ai-writing-stories] The Atlantic's AI strategy, explained by its CEO [https://unzip.media/the-atlantics-ai-strategy-explained-by-its-ceo/] Global Risks Report 2025 (World Economic Forum) [https://www.weforum.org/publications/global-risks-report-2025/]

23. okt. 202537 min
episode Episode 9: The unreadable scrolls: how AI helps solve an ancient mystery cover

Episode 9: The unreadable scrolls: how AI helps solve an ancient mystery

In this episode, we take a deep dive into the Vesuvius Challenge, which combines ancient history with AI to resurrect an ancient library that was buried in the ashes of Mount Vesuvius in 79 AD. Thought to be lost forever, these scrolls were completely turned to charcoal and are impossible to unroll without destroying them. We focus on how a team of three university students used a combination of machine learning, computer vision, and X-ray tomography to win the Grand Prize in 2023. We unpack this technical breakthrough, from using an optical flow segmentation algorithm to virtually unroll the scrolls, to training a TimeSformer model to detect the invisible, carbon-based ink. We also uncover the historical significance of the newly deciphered texts, which belong to the Epicurean philosopher Philodemus of Gadara. It's a journey into a world where AI is not only recovering a lost library but also creating a new methodology — a sort of "Rosetta Stone"— that could be used to decipher other ancient, fragile documents. The Vesuvius Challenge is ongoing, and there are still prizes to be won!  Links and references: Grand Prize 2023: https://scrollprize.org/grandprize [https://scrollprize.org/grandprize] Fragments: https://scrollprize.org/data_fragments [https://scrollprize.org/data_fragments] Segments: https://scrollprize.org/data_segments [https://scrollprize.org/data_segments] Scrolls: https://scrollprize.org/data_scrolls [https://scrollprize.org/data_scrolls] Open prizes: https://scrollprize.org/prizes [https://scrollprize.org/prizes]  Youseff's explanation of his winning ink detection setup: https://youssefnader.com/2024/02/06/the-ink-detection-journey-of-the-vesuvius-challenge/ [https://youssefnader.com/2024/02/06/the-ink-detection-journey-of-the-vesuvius-challenge/]

21. aug. 202547 min