data sharing and interoperability for decision …...2 outline •better decisions demand better...
TRANSCRIPT
![Page 1: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/1.jpg)
Data Sharing and Interoperability for Decision Support in Grazing
Copyright 2016
Peter Richardson, CEO Maia Technology
[email protected] 2016
![Page 2: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/2.jpg)
2
Outline
• Better decisions demand better data
• Interoperability and lessons from other industries
• Software trends relevant to Agriculture
• Towards an architecture for interoperability
![Page 3: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/3.jpg)
3
• Identify the outliers
• Codify best practice into decision support
• Accelerate into mainstream
A small number of innovative farmers are achieving significantly better results than the mainstream
Our mission:
![Page 4: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/4.jpg)
4
What is MaiaGrazin ?
• A grazing management tool that helps farmers achieve optimal production and minimise the impact of drought
![Page 5: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/5.jpg)
5
What is MaiaGrazing?
Overstocked! Understocked! Tracking…
![Page 6: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/6.jpg)
6
Leveraging data for decisions
Pasture Assessment
Grazing history
Livestock details
Rainfall
Paddock history
Forecasts/plans
![Page 7: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/7.jpg)
7
But more could be done
Laboratories
Satellite
Drones
Govt. datasets
Sensors
Eg. moisture
BOM
Soil maps
Pasture Assessment
Grazing history
Livestock details
Rainfall
Paddock history
Forecasts/plans
![Page 8: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/8.jpg)
8
Approaches to Interoperability
1. Ad-hoc point to point interfaces
![Page 9: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/9.jpg)
9
Approaches to Interoperability
1. Ad-hoc point to point interfaces
2. Single Vendor platform
![Page 10: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/10.jpg)
10
Approaches to Interoperability
1. Ad-hoc point to point interfaces
3. Agreed standard models and architecture
2. Single Vendor platform
![Page 11: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/11.jpg)
11
Example: Information in a Hospital
Patient Admin Pathology
Emergency
Radiology
ICU
PharmacyClinician(EMR)
Results
Alerts
Patient
Best of breed systems
Multiple vendors
Rarely a single platform
Infrastructure
Industry standards – HL7
Common infrastructure
Common models
Standard interfaces/APIs
Results
Alerts
Patient
![Page 12: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/12.jpg)
12
Monolithic platform
Microservices combined in an app
Industry is Moving to Microservices Architecture
VS
APIs
Delegated Authorisation
![Page 13: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/13.jpg)
13
MashupsTwitter Trends + Google Maps = Trendsmap
Real-time map of Twitter trends across the globe
![Page 14: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/14.jpg)
14
Infrastructure
PIC UserTag
NLIS
NVDLPA
Other..
Google maps
AuthorisationEtc..
Towards an Interoperability Architecture for Livestock Ag
• Each layer can be a profitable enterprise
• Apps can provide channels to market for data services
• Multiple business models are possible
Data ServicesGovt datasets
Soil Map BOMResearch/Commercial
PfS NRM HubOther.. Sensors
Application Platforms
CompetitorsCompetitorsOthers…
Simple Apps and Mashups
![Page 15: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/15.jpg)
15
An Interoperability Architecture for Livestock Ag
Requires:
1. Common information models and vocabulary
2. Ag-based Metadata standards and APIs
3. Standardised infrastructure building blocks
4. Consistent authorisation/access control
Overseas examples:• AgGateway – eBusiness (mainly cropping)• Open Ag Data Alliance (OADA) – REST APIs for farm data• American Farm Bureau Federation privacy principles for ag data (USA)• Farm data code of practice (NZ)• Farm data standards (NZ)
![Page 16: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/16.jpg)
16
Research
CRCs
CSIRO
Universities
Farmer/Industry Groups
MSAAWI
MLAAgronomists/Consultants
Data ServiceProviders
Government
BOM
State DPIs
Software vendors
Hardwarevendors
Technical ForumInfrastructureBld blocks
Stakeholder Group
Can we set up an Australian alliance of ag software/data companies?
• Is MLA the logical convenor of such a forum?
• Recent eNVD workshops a good example
![Page 17: Data Sharing and Interoperability for Decision …...2 Outline •Better decisions demand better data •Interoperability and lessons from other industries •Software trends relevant](https://reader034.vdocuments.us/reader034/viewer/2022050308/5f7010447aecbe69956d8a5b/html5/thumbnails/17.jpg)
Thank Youhttp://maiatechnology.com.au/