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Tracking Elephant Clusters

Feb 18, 2022
26:27
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1
Introduction
00:00 • 2min
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2
Is There a Repository of Animal Movement Data?
01:46 • 2min
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3
Identifying Locations of Interest for Elephants
03:40 • 2min
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4
How Do You Get the Local Temperature?
05:38 • 2min
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5
Using Deb Scanning to Cluster Elephants
07:16 • 5min
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6
Astrato Is a Cloud Native, Next Generation Solution for Intelligent Data Analytics
12:43 • 4min
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7
Is Camans the Poster Child for Clustering Algorithm?
16:18 • 3min
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8
The Elephant Data Doesn't Have to Conform to Geography
19:21 • 2min
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9
Is There an Opportunity to Do Good With Data?
20:57 • 3min
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10
Data Science Journey - Is This Just a Stepping Stone?
24:16 • 2min
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In today’s episode, Gregory Glatzer explained his machine learning project that involved the prediction of elephant movement and settlement, in a bid to limit the activities of poachers. He used two machine learning algorithms, DBSCAN and K-Means clustering at different stages of the project. Listen to learn about why these two techniques were useful and what conclusions could be drawn.

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Thanks to our sponsor, Astrato

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