PODCAST · technology
Talking Machines (But Chill)
by Joe Schlanger
AI is everywhere, and it’s moving fast. Keeping Up with AI is your go-to podcast for making sense of it all. We talk trends, tools, breakthroughs, and curveballs in plain language, so you can stay informed, curious, and one step ahead in an AI-powered world.
-
2
AI Scales Catastrophe Insurance Claims
Welcome to today’s episode, where we explore how artificial intelligence and drone technology are reshaping the insurance industry. From aerial imagery that makes property inspections safer and faster, to natural language processing that uncovers subrogation opportunities buried deep in claim files, insurers are shifting toward smarter, data‑driven decision‑making. These tools are reducing human error, fighting fraud, and accelerating recovery — all while lowering costs for carriers and policyholders. Let’s dive into how this digital transformation is redefining what modern claims handling looks like.
-
1
The Environmental Cost of Generative AI
Generative AI has a significant environmental footprint due to its high energy, water, and hardware demands. Training large models can consume several times more energy than typical computing tasks—sometimes enough to power over 100 homes for a year—while data centers also use substantial water for cooling. Rapid expansion often relies on fossil fuel-based electricity, increasing carbon emissions, and the production and frequent replacement of specialized GPUs contributes to electronic waste. Environmental impact varies by task, with image generation requiring more energy than simple text responses. Growing public concern has led experts to call for greater corporate responsibility, including renewable energy use, transparency, and smaller, more efficient AI models.
-
0
Fixing Agile for Machine Learning Development
Fixing Agile for Machine Learning explores why traditional Agile frameworks struggle in data science and AI—and what to do instead.Agile was built for predictable software delivery. Machine learning is anything but predictable. Models fail, data shifts, experiments dead-end, and “done” is never binary. When teams force ML work into classic Scrum rituals, the result is frustration, fake estimates, and broken trust with stakeholders.This podcast reframes Agile for the realities of machine learning. We dive into:Why user stories, velocity, and sprint commitments break down in MLHow to shift from delivery-centric planning to learning-centric executionRedefining “done” for experiments, models, and dataSeparating research from production without losing momentumMaking data quality, bias, and model risk first-class Agile concernsCommunicating uncertainty without losing stakeholder confidenceWhether you’re a product manager, Agile leader, data scientist, or executive trying to scale AI responsibly, this show offers practical guidance for building ML teams that learn faster, ship smarter, and stop pretending uncertainty can be planned away.
We're indexing this podcast's transcripts for the first time — this can take a minute or two. We'll show results as soon as they're ready.
No matches for "" in this podcast's transcripts.
No topics indexed yet for this podcast.
Loading reviews...
ABOUT THIS SHOW
AI is everywhere, and it’s moving fast. Keeping Up with AI is your go-to podcast for making sense of it all. We talk trends, tools, breakthroughs, and curveballs in plain language, so you can stay informed, curious, and one step ahead in an AI-powered world.
HOSTED BY
Joe Schlanger
CATEGORIES
Loading similar podcasts...