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Geospatial FM
Wilfred Waters
98 episodes
1 week ago
Obsessed with geospatial foundation models, broadcasting in geospatial and compounding via publicly listed geospatial equities.
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Science
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All content for Geospatial FM is the property of Wilfred Waters and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Obsessed with geospatial foundation models, broadcasting in geospatial and compounding via publicly listed geospatial equities.
Show more...
Science
https://d3t3ozftmdmh3i.cloudfront.net/staging/podcast_uploaded_nologo/7397960/7397960-1749922528381-5b2cf5ecb19b5.jpg
GeoRiskAI
Geospatial FM
1 hour 22 minutes 21 seconds
1 month ago
GeoRiskAI

Arham Ansari confronts some challenges that most of us in the liberal democratic Western world do not. For example, in a small town near Delhi in northern India he only has 8-10hrs of power per day. There had also been a blackout the whole 3 days prior to the first day of recording the episode. India is not a wealthy country and he cannot afford to pay for expensive cloud computing/storage services to handle the large volumes of data required to train a flood prediction service on decades of records about 100+ parameters. This sharpens our appreciation of what he has achieved.


Arham is a civil engineering graduate applying for jobs in India’s public service. Whilst cramming for entrance exams, he has applied some of his knowledge to the risks of heat waves, floods and landslides. He has grouped those solutions under GeoRiskAI. I appreciated his candor on LinkedIn about learning the ropes. For example he admitted to making his flood predictions 24% less accurate after correcting the inputs. It is good to see openness about the learning process on LinkedIn where people are usually posting glitzy, perfect demos.


If you’re looking for a determined individual with the intellect required to make meaningful progress against the challenge of flood prediction, I recommend reaching out to him.

Geospatial FM
Obsessed with geospatial foundation models, broadcasting in geospatial and compounding via publicly listed geospatial equities.