Categories
- All Categories
- Oracle Analytics and AI Learning Hub
- 34 Oracle Analytics and AI Sharing Center
- 22 Oracle Analytics and AI Lounge
- 275 Oracle Analytics and AI News
- 47 Oracle Analytics and AI Videos
- 16.1K Oracle Analytics and AI Forums
- 6.3K Oracle Analytics and AI Idea Labs
- Oracle Analytics and AI User Groups
- 99 Oracle Analytics and AI Trainings
- 16 Oracle Analytics and AI Challenge
- Find Partners
- For Partners
Real time - anomaly detection/predictive maintenance sample notebooks for energy and manufacturing
There are some sample notebooks in the repository below for energy and manufacturing. I've kept them very minimalist in the setup needed, so they can be run as is. That makes them easy to try out, get your hands dirty, learn quickly and learn.
The Energy example, processes streaming energy consumption data for:
- Real-time meter monitoring: Continuous tracking of consumption patterns
- Live peak demand detection: Streaming aggregations for demand management
- Anomaly detection: Real-time identification of unusual consumption patterns
- Grid optimization: Continuous data for operational decision-making
The Manufacturing example, processes streaming manufacturing data for:
- Real-time equipment monitoring: Continuous tracking of machine performance
- Live quality control: Streaming defect detection and yield analysis
- Production line optimization: Real-time bottleneck identification
- Predictive maintenance triggers: Continuous equipment health assessment
Obviously these are demonstration examples but with the ease that you can pick up and learning streaming, analytics and patterns they are very useful. Let me know what you think!
Cheers
David
Comments
-
Great work. Thanks for sharing
1 -
@David Allan-Oracle thanks for sharing these notebooks, both are excellent examples. I'm sure they will be applicable to a wide range of use cases :)
0

