SlideShare a Scribd company logo
www.agricolus.com
a.cruciani@agricolus.comAndrea Cruciani – co-founder & CEO
L’agricoltura del futuro tra dati
satellitari, IoT e dati sul campo
The field at
the centre of
the system
Coordinating
Agricultural
activity
Monitoring
productivity
Preventing
diseases
IoT
Forecast Models
Scouting Satellites / UAVs
Decision
Support
Systems
A complete agronomic platform
Cloud Computing
Dati
satellitari
Dati SAPR
Osservazioni
dirette e di
laboratorio
Sensori
Meteo
Farmers
Engagement
Shapefile
CSVREST
Interoperabilità
GEO-DATA
Dati
ISOBUS
WEB
Mobile
ISOBUS
Analisi spaziale
ReportPrescriz.VigoriaSuoloResa
Pest
monitoring
Dal campo
direttamente al
sistema
Dal campo
direttamente al
sistema
Dal campo
direttamente al
sistema Dal sistema
direttamente al
campo
Dal sistema
direttamente al
campo e viceversa
Realtà Aumentata
Comandi vocali
Advanced daily
farm management
Marketing
R&D
Data Analysts
GIS – Remote Sensing
Andrea Cruciani
CEO
Antonio Natale
COO
Diego Guidotti
R&D
board of directors
Scientific and Technical Partners
Università degli
Studi di Perugia
EU Projects, accelerators & awards
H2020 - Phase 1
Helpdesk
Multidisciplinary team: R&D + industrial know-how
Software dev
Agronomists
Business Development
Operations
User eXperience
Data usage for agriculture
IoT Data sources
IoT weather station data
IoT data feeds our analysis tools
statistical analysis
machine learning
deterministic models:
• crop models
• pest models
Nutrient balance
Pest Modeling - olive fruit fly
Remote Sensing
Multispectral remote sensing
resolutions
a. 30 mt
b. 10 mt
c. 2 mt
Remote sensing data feeds
geospatial analysis
Scouting
Field data collection
Agricolus’ international
large scale experiences
1. Striacosta albicosta
An Early warning system in Agricolus with these features:
• Monitoring: Agricolus monitor the trappings and the field scouting; data can be shared with other farms
• Modelling: The model can be used to pre-alert farmers defining a date when begin the fields scouting to
detect the egg presence; after collecting some traps data in Ontario we can validate and calibrate the
model to local condition;
2. Vomitoxin
Monitoring: monitoring the crop and the residues, perform statistical and geospatial analysis on monitoring
data;
Corn phenology: the models estimates the main crop stages according with crop varieties FAO class; the crop
phenology can be used to estimate the risk of infection for Fusarium, Aspergillus, Penicillum;
Canada - Ontario pilot
Pilot – University and TFP (technical and financial partners)
45 km2 - paddy plot
• Ground-truth data from mobile applications
• Multispectral data from Sentinel2A and Sentinel 2B
• Synthetic Aperture Radar (SAR) data from Sentinel1A and Sentinel1B
• Crop growth modeling
Upscaling perspective
Rice Monitoring at Country Level involving
• Local, Regional and
National Governments
• Statistics offices
• Agricultural Direction
Mali – agricultural statistic framework
a.cruciani@agricolus.com
Andrea Cruciani - CEO
Making precision farming easier
for EU and worldwide
farmers
• Up to 20 % fertilizers and treatment savings
(return on in investment in 2 years)
• Improve and certify trasparence on production
quality «from farm to fork»
• Interacts with farm machineries

More Related Content

What's hot

GeoSpatial Aided Applications: farmer usage and administration data control, ...
GeoSpatial Aided Applications: farmer usage and administration data control, ...GeoSpatial Aided Applications: farmer usage and administration data control, ...
GeoSpatial Aided Applications: farmer usage and administration data control, ...
Big Data Grapes
 
Data, Digital Agriculture & Devices
Data, Digital Agriculture & Devices Data, Digital Agriculture & Devices
Data, Digital Agriculture & Devices
Walton Institute
 
Data analytics for agriculture
Data analytics for agricultureData analytics for agriculture
Data analytics for agriculture
Data Portal India
 
Precision Agriculture with Sensors and Technologies from IoT - INForum 2016
Precision Agriculture with Sensors and Technologies from IoT - INForum 2016Precision Agriculture with Sensors and Technologies from IoT - INForum 2016
Precision Agriculture with Sensors and Technologies from IoT - INForum 2016
José Camacho
 
The climate analogues approach: Concepts and application
The climate analogues approach: Concepts and applicationThe climate analogues approach: Concepts and application
The climate analogues approach: Concepts and application
CCAFS | CGIAR Research Program on Climate Change, Agriculture and Food Security
 
Agriculture Drones: Drones In The Field
Agriculture Drones: Drones In The FieldAgriculture Drones: Drones In The Field
Agriculture Drones: Drones In The Field
Dronefly
 
Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...
Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...
Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...
International Food Policy Research Institute (IFPRI)
 
IoT in agri-food
IoT in agri-foodIoT in agri-food
IoT in agri-food
Sjaak Wolfert
 
Agriculture
AgricultureAgriculture
Agriculture
Drone Research
 
AgroConnect PPS Smart Farming project and FIspace
AgroConnect PPS Smart Farming project and FIspaceAgroConnect PPS Smart Farming project and FIspace
AgroConnect PPS Smart Farming project and FIspace
Sjaak Wolfert
 
IoT in Agriculture
IoT in AgricultureIoT in Agriculture
IoT in Agriculture
Tibbo
 
Presentation01 copy
Presentation01   copyPresentation01   copy
Presentation01 copy
mohsinmughal963
 
Suciu_Blackseacom2016
Suciu_Blackseacom2016Suciu_Blackseacom2016
Suciu_Blackseacom2016
Accelerate Project
 
A mind map for ICT in agriculture
A mind map for ICT in agricultureA mind map for ICT in agriculture
A mind map for ICT in agriculture
Simone Sala
 
Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...
Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...
Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...
PRBETTER
 
EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...
EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...
EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...
CAPIGI
 
Use of ICT in Agriculture field
Use of ICT in Agriculture fieldUse of ICT in Agriculture field
Use of ICT in Agriculture field
ihedce
 
Smart Farming in Germany and Uzbekistan
Smart Farming in Germany and UzbekistanSmart Farming in Germany and Uzbekistan
Smart Farming in Germany and Uzbekistan
Ozodbek Kuchkarov
 
Willa Leong: Farm Date Ownership
Willa Leong: Farm Date OwnershipWilla Leong: Farm Date Ownership
Willa Leong: Farm Date Ownership
Nevada County Tech Connection
 
Aplication of remote sensing in Foodie
Aplication of remote sensing in FoodieAplication of remote sensing in Foodie
Aplication of remote sensing in Foodie
Karel Charvat
 

What's hot (20)

GeoSpatial Aided Applications: farmer usage and administration data control, ...
GeoSpatial Aided Applications: farmer usage and administration data control, ...GeoSpatial Aided Applications: farmer usage and administration data control, ...
GeoSpatial Aided Applications: farmer usage and administration data control, ...
 
Data, Digital Agriculture & Devices
Data, Digital Agriculture & Devices Data, Digital Agriculture & Devices
Data, Digital Agriculture & Devices
 
Data analytics for agriculture
Data analytics for agricultureData analytics for agriculture
Data analytics for agriculture
 
Precision Agriculture with Sensors and Technologies from IoT - INForum 2016
Precision Agriculture with Sensors and Technologies from IoT - INForum 2016Precision Agriculture with Sensors and Technologies from IoT - INForum 2016
Precision Agriculture with Sensors and Technologies from IoT - INForum 2016
 
The climate analogues approach: Concepts and application
The climate analogues approach: Concepts and applicationThe climate analogues approach: Concepts and application
The climate analogues approach: Concepts and application
 
Agriculture Drones: Drones In The Field
Agriculture Drones: Drones In The FieldAgriculture Drones: Drones In The Field
Agriculture Drones: Drones In The Field
 
Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...
Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...
Sahar Zayan (ARC) • 2019 IFPRI Egypt - WB “Innovations for Agricultural Devel...
 
IoT in agri-food
IoT in agri-foodIoT in agri-food
IoT in agri-food
 
Agriculture
AgricultureAgriculture
Agriculture
 
AgroConnect PPS Smart Farming project and FIspace
AgroConnect PPS Smart Farming project and FIspaceAgroConnect PPS Smart Farming project and FIspace
AgroConnect PPS Smart Farming project and FIspace
 
IoT in Agriculture
IoT in AgricultureIoT in Agriculture
IoT in Agriculture
 
Presentation01 copy
Presentation01   copyPresentation01   copy
Presentation01 copy
 
Suciu_Blackseacom2016
Suciu_Blackseacom2016Suciu_Blackseacom2016
Suciu_Blackseacom2016
 
A mind map for ICT in agriculture
A mind map for ICT in agricultureA mind map for ICT in agriculture
A mind map for ICT in agriculture
 
Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...
Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...
Better Hackathon 2020 - WFP - Enhancing Agricultural Mapping With BETTER Pipe...
 
EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...
EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...
EGNOS in Precision Agriculture: an affordable entry Technology for a wide Ran...
 
Use of ICT in Agriculture field
Use of ICT in Agriculture fieldUse of ICT in Agriculture field
Use of ICT in Agriculture field
 
Smart Farming in Germany and Uzbekistan
Smart Farming in Germany and UzbekistanSmart Farming in Germany and Uzbekistan
Smart Farming in Germany and Uzbekistan
 
Willa Leong: Farm Date Ownership
Willa Leong: Farm Date OwnershipWilla Leong: Farm Date Ownership
Willa Leong: Farm Date Ownership
 
Aplication of remote sensing in Foodie
Aplication of remote sensing in FoodieAplication of remote sensing in Foodie
Aplication of remote sensing in Foodie
 

Similar to Andrea Cruciani, Agricolus

APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...
APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...
APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...
Sjaak Wolfert
 
Smart farm initiative2
Smart farm initiative2Smart farm initiative2
Smart farm initiative2
Pisuth paiboonrat
 
artificialintelligenceinagriculture-bydr-201028091539.pptx
artificialintelligenceinagriculture-bydr-201028091539.pptxartificialintelligenceinagriculture-bydr-201028091539.pptx
artificialintelligenceinagriculture-bydr-201028091539.pptx
SajibChowdhury18
 
Ai in farming
Ai in farmingAi in farming
Ai in farming
Vitaliy Pak
 
Large ICT-projects in Agri-Food in Europe
Large ICT-projects in Agri-Food in EuropeLarge ICT-projects in Agri-Food in Europe
Large ICT-projects in Agri-Food in Europe
Sjaak Wolfert
 
IoT in Agriculture
IoT in AgricultureIoT in Agriculture
IoT in Agriculture
Bappa Chowdhury
 
Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...
Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...
Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...
Sjaak Wolfert
 
Big data in precision agriculture
Big data in precision agriculture Big data in precision agriculture
Big data in precision agriculture
Self
 
Dr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision Agriculture
Dr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision AgricultureDr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision Agriculture
Dr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision Agriculture
Dr Dev Kambhampati
 
Zhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdf
Zhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdfZhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdf
Zhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdf
AKADEMIYA2063
 
Pitch competition 2020
Pitch competition 2020Pitch competition 2020
Pitch competition 2020
Samir Moreno
 
STCppt.pptx
STCppt.pptxSTCppt.pptx
STCppt.pptx
prathameshnaukarkar
 
Digital innovation for sustainable food systems
Digital innovation for sustainable food systemsDigital innovation for sustainable food systems
Digital innovation for sustainable food systems
Sjaak Wolfert
 
APPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTURE
APPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTUREAPPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTURE
APPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTURE
SREENIVASAREDDY KADAPA
 
Digital Agriculture Services for Cotton - Information Brochure
Digital Agriculture Services for Cotton - Information BrochureDigital Agriculture Services for Cotton - Information Brochure
Digital Agriculture Services for Cotton - Information Brochure
Anthony Willmott
 
Agriculture Pitchdeck
Agriculture PitchdeckAgriculture Pitchdeck
Agriculture Pitchdeck
Chris Hamby
 
Data out, knowledge in: - dumb and smart phones for research and extension de...
Data out, knowledge in: - dumb and smart phones for research and extension de...Data out, knowledge in: - dumb and smart phones for research and extension de...
Data out, knowledge in: - dumb and smart phones for research and extension de...
Technical Centre for Agricultural and Rural Cooperation ACP-EU (CTA)
 
IoT and Big Data in Agri-Food Business
IoT and Big Data in Agri-Food BusinessIoT and Big Data in Agri-Food Business
IoT and Big Data in Agri-Food Business
Sjaak Wolfert
 
ICRISAT at Godan secretariat
ICRISAT at Godan secretariatICRISAT at Godan secretariat
ICRISAT at Godan secretariat
ICRISAT
 
field level indicator system.
field level indicator system.field level indicator system.
field level indicator system.
vishnupriya cd
 

Similar to Andrea Cruciani, Agricolus (20)

APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...
APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...
APPLICATION OF BIG DATA IN ENHANCING EFFECTIVE DECISION MAKING IN AGRICULTURA...
 
Smart farm initiative2
Smart farm initiative2Smart farm initiative2
Smart farm initiative2
 
artificialintelligenceinagriculture-bydr-201028091539.pptx
artificialintelligenceinagriculture-bydr-201028091539.pptxartificialintelligenceinagriculture-bydr-201028091539.pptx
artificialintelligenceinagriculture-bydr-201028091539.pptx
 
Ai in farming
Ai in farmingAi in farming
Ai in farming
 
Large ICT-projects in Agri-Food in Europe
Large ICT-projects in Agri-Food in EuropeLarge ICT-projects in Agri-Food in Europe
Large ICT-projects in Agri-Food in Europe
 
IoT in Agriculture
IoT in AgricultureIoT in Agriculture
IoT in Agriculture
 
Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...
Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...
Fostering Business and Software Ecosystems for large-scale Uptake of IoT in F...
 
Big data in precision agriculture
Big data in precision agriculture Big data in precision agriculture
Big data in precision agriculture
 
Dr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision Agriculture
Dr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision AgricultureDr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision Agriculture
Dr Dev Kambhampati | USDA- On the Doorsteps of IT Age: Precision Agriculture
 
Zhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdf
Zhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdfZhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdf
Zhe Guo - Africa Agriculture Watch (AAgWa) Launch Event.pdf
 
Pitch competition 2020
Pitch competition 2020Pitch competition 2020
Pitch competition 2020
 
STCppt.pptx
STCppt.pptxSTCppt.pptx
STCppt.pptx
 
Digital innovation for sustainable food systems
Digital innovation for sustainable food systemsDigital innovation for sustainable food systems
Digital innovation for sustainable food systems
 
APPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTURE
APPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTUREAPPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTURE
APPLICATION OF INFORMATION AND COMMUNICATION TOOLS (ICTs) IN MODERN AGRICULTURE
 
Digital Agriculture Services for Cotton - Information Brochure
Digital Agriculture Services for Cotton - Information BrochureDigital Agriculture Services for Cotton - Information Brochure
Digital Agriculture Services for Cotton - Information Brochure
 
Agriculture Pitchdeck
Agriculture PitchdeckAgriculture Pitchdeck
Agriculture Pitchdeck
 
Data out, knowledge in: - dumb and smart phones for research and extension de...
Data out, knowledge in: - dumb and smart phones for research and extension de...Data out, knowledge in: - dumb and smart phones for research and extension de...
Data out, knowledge in: - dumb and smart phones for research and extension de...
 
IoT and Big Data in Agri-Food Business
IoT and Big Data in Agri-Food BusinessIoT and Big Data in Agri-Food Business
IoT and Big Data in Agri-Food Business
 
ICRISAT at Godan secretariat
ICRISAT at Godan secretariatICRISAT at Godan secretariat
ICRISAT at Godan secretariat
 
field level indicator system.
field level indicator system.field level indicator system.
field level indicator system.
 

More from Data Driven Innovation

Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...
Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...
Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...
Data Driven Innovation
 
La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...
La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...
La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...
Data Driven Innovation
 
How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...
How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...
How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...
Data Driven Innovation
 
Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...
Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...
Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...
Data Driven Innovation
 
CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...
CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...
CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...
Data Driven Innovation
 
Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)
Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)
Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)
Data Driven Innovation
 
Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...
Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...
Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...
Data Driven Innovation
 
Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...
Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...
Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...
Data Driven Innovation
 
I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...
I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...
I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...
Data Driven Innovation
 
Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...
Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...
Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...
Data Driven Innovation
 
Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)
Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)
Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)
Data Driven Innovation
 
WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...
WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...
WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...
Data Driven Innovation
 
CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)
CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)
CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)
Data Driven Innovation
 
Big Data Confederation: toward the local urban data market place (Renzo Taffa...
Big Data Confederation: toward the local urban data market place (Renzo Taffa...Big Data Confederation: toward the local urban data market place (Renzo Taffa...
Big Data Confederation: toward the local urban data market place (Renzo Taffa...
Data Driven Innovation
 
Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...
Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...
Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...
Data Driven Innovation
 
Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...
Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...
Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...
Data Driven Innovation
 
Reusing open data: how to make a difference (Vittorio Scarano, Università di ...
Reusing open data: how to make a difference (Vittorio Scarano, Università di ...Reusing open data: how to make a difference (Vittorio Scarano, Università di ...
Reusing open data: how to make a difference (Vittorio Scarano, Università di ...
Data Driven Innovation
 
Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)
Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)
Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)
Data Driven Innovation
 
Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)
Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)
Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)
Data Driven Innovation
 
Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...
Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...
Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...
Data Driven Innovation
 

More from Data Driven Innovation (20)

Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...
Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...
Integrazione della mobilità elettrica nei sistemi urbani (Stefano Carrese, Un...
 
La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...
La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...
La statistica ufficiale e i trasporti marittimi nell'era dei big data (Vincen...
 
How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...
How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...
How can we realize the Mobility as a Service (Maas) (Andrea Paletti, London S...
 
Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...
Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...
Il DTC-Lazio e i dati del patrimonio culturale (Maria Prezioso, Università To...
 
CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...
CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...
CHNet-DHLab: Servizi Cloud a supporto dei beni culturali (Fabio Proietti, INF...
 
Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)
Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)
Progetto EOSC-Pillar (Fulvio Galeazzi, GARR)
 
Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...
Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...
Una infrastruttura per l’accesso al patrimonio culturale: il Progetto del Por...
 
Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...
Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...
Utilizzo dei Big data per l’analisi dei flussi veicolari e della mobilità (Ma...
 
I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...
I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...
I dati personali nell'analisi comportamentale della mobilità di dipendenti e ...
 
Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...
Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...
Estrarre valore dai dati: tecnologie per ottimizzare la mobilità del futuro (...
 
Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)
Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)
Le piattaforme dati per la mobilità nelle città italiane (Marco Mena, EY)
 
WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...
WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...
WiseTown, un ecosistema di applicazioni e strumenti per migliorare la qualità...
 
CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)
CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)
CityOpenSource as a civic tech tool (Ilaria Vitellio, CityOpenSource)
 
Big Data Confederation: toward the local urban data market place (Renzo Taffa...
Big Data Confederation: toward the local urban data market place (Renzo Taffa...Big Data Confederation: toward the local urban data market place (Renzo Taffa...
Big Data Confederation: toward the local urban data market place (Renzo Taffa...
 
Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...
Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...
Making citizens the eyes of policy makers: a sweet spot for hybrid AI? (Danie...
 
Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...
Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...
Dall'Agenda Digitale alla Smart City: il percorso di Roma Capitale verso il D...
 
Reusing open data: how to make a difference (Vittorio Scarano, Università di ...
Reusing open data: how to make a difference (Vittorio Scarano, Università di ...Reusing open data: how to make a difference (Vittorio Scarano, Università di ...
Reusing open data: how to make a difference (Vittorio Scarano, Università di ...
 
Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)
Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)
Gestire i beni culturali con i big data (Sandro Stancampiano, Istat)
 
Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)
Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)
Data Governance: cos’è e perché è importante? (Elena Arista, Erwin)
 
Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...
Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...
Data driven economy: bastano i dati per avviare una start up? (Gabriele Anton...
 

Recently uploaded

How To Control IO Usage using Resource Manager
How To Control IO Usage using Resource ManagerHow To Control IO Usage using Resource Manager
How To Control IO Usage using Resource Manager
Alireza Kamrani
 
一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理
一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理
一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理
ywqeos
 
REUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptx
REUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptxREUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptx
REUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptx
KiriakiENikolaidou
 
一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理
zsafxbf
 
一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理
一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理
一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理
asyed10
 
一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理
一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理
一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理
actyx
 
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
oaxefes
 
Digital Marketing Performance Marketing Sample .pdf
Digital Marketing Performance Marketing  Sample .pdfDigital Marketing Performance Marketing  Sample .pdf
Digital Marketing Performance Marketing Sample .pdf
Vineet
 
Module 1 ppt BIG DATA ANALYTICS_NOTES FOR MCA
Module 1 ppt BIG DATA ANALYTICS_NOTES FOR MCAModule 1 ppt BIG DATA ANALYTICS_NOTES FOR MCA
Module 1 ppt BIG DATA ANALYTICS_NOTES FOR MCA
yuvarajkumar334
 
DSSML24_tspann_CodelessGenerativeAIPipelines
DSSML24_tspann_CodelessGenerativeAIPipelinesDSSML24_tspann_CodelessGenerativeAIPipelines
DSSML24_tspann_CodelessGenerativeAIPipelines
Timothy Spann
 
一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理
一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理
一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理
hqfek
 
ML-PPT-UNIT-2 Generative Classifiers Discriminative Classifiers
ML-PPT-UNIT-2 Generative Classifiers Discriminative ClassifiersML-PPT-UNIT-2 Generative Classifiers Discriminative Classifiers
ML-PPT-UNIT-2 Generative Classifiers Discriminative Classifiers
MastanaihnaiduYasam
 
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
9gr6pty
 
原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理
原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理 原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理
原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理
tzu5xla
 
Experts live - Improving user adoption with AI
Experts live - Improving user adoption with AIExperts live - Improving user adoption with AI
Experts live - Improving user adoption with AI
jitskeb
 
社内勉強会資料_Hallucination of LLMs               .
社内勉強会資料_Hallucination of LLMs               .社内勉強会資料_Hallucination of LLMs               .
社内勉強会資料_Hallucination of LLMs               .
NABLAS株式会社
 
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Marlon Dumas
 
[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024
[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024
[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024
Vietnam Cotton & Spinning Association
 
一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理
一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理
一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理
uevausa
 
一比一原版(UO毕业证)渥太华大学毕业证如何办理
一比一原版(UO毕业证)渥太华大学毕业证如何办理一比一原版(UO毕业证)渥太华大学毕业证如何办理
一比一原版(UO毕业证)渥太华大学毕业证如何办理
bmucuha
 

Recently uploaded (20)

How To Control IO Usage using Resource Manager
How To Control IO Usage using Resource ManagerHow To Control IO Usage using Resource Manager
How To Control IO Usage using Resource Manager
 
一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理
一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理
一比一原版(lbs毕业证书)伦敦商学院毕业证如何办理
 
REUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptx
REUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptxREUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptx
REUSE-SCHOOL-DATA-INTEGRATED-SYSTEMS.pptx
 
一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理一比一原版莱斯大学毕业证(rice毕业证)如何办理
一比一原版莱斯大学毕业证(rice毕业证)如何办理
 
一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理
一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理
一比一原版美国帕森斯设计学院毕业证(parsons毕业证书)如何办理
 
一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理
一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理
一比一原版斯威本理工大学毕业证(swinburne毕业证)如何办理
 
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
一比一原版卡尔加里大学毕业证(uc毕业证)如何办理
 
Digital Marketing Performance Marketing Sample .pdf
Digital Marketing Performance Marketing  Sample .pdfDigital Marketing Performance Marketing  Sample .pdf
Digital Marketing Performance Marketing Sample .pdf
 
Module 1 ppt BIG DATA ANALYTICS_NOTES FOR MCA
Module 1 ppt BIG DATA ANALYTICS_NOTES FOR MCAModule 1 ppt BIG DATA ANALYTICS_NOTES FOR MCA
Module 1 ppt BIG DATA ANALYTICS_NOTES FOR MCA
 
DSSML24_tspann_CodelessGenerativeAIPipelines
DSSML24_tspann_CodelessGenerativeAIPipelinesDSSML24_tspann_CodelessGenerativeAIPipelines
DSSML24_tspann_CodelessGenerativeAIPipelines
 
一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理
一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理
一比一原版爱尔兰都柏林大学毕业证(本硕)ucd学位证书如何办理
 
ML-PPT-UNIT-2 Generative Classifiers Discriminative Classifiers
ML-PPT-UNIT-2 Generative Classifiers Discriminative ClassifiersML-PPT-UNIT-2 Generative Classifiers Discriminative Classifiers
ML-PPT-UNIT-2 Generative Classifiers Discriminative Classifiers
 
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
一比一原版(uob毕业证书)伯明翰大学毕业证如何办理
 
原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理
原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理 原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理
原版一比一爱尔兰都柏林大学毕业证(UCD毕业证书)如何办理
 
Experts live - Improving user adoption with AI
Experts live - Improving user adoption with AIExperts live - Improving user adoption with AI
Experts live - Improving user adoption with AI
 
社内勉強会資料_Hallucination of LLMs               .
社内勉強会資料_Hallucination of LLMs               .社内勉強会資料_Hallucination of LLMs               .
社内勉強会資料_Hallucination of LLMs               .
 
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
Discovering Digital Process Twins for What-if Analysis: a Process Mining Appr...
 
[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024
[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024
[VCOSA] Monthly Report - Cotton & Yarn Statistics May 2024
 
一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理
一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理
一比一原版加拿大渥太华大学毕业证(uottawa毕业证书)如何办理
 
一比一原版(UO毕业证)渥太华大学毕业证如何办理
一比一原版(UO毕业证)渥太华大学毕业证如何办理一比一原版(UO毕业证)渥太华大学毕业证如何办理
一比一原版(UO毕业证)渥太华大学毕业证如何办理
 

Andrea Cruciani, Agricolus

  • 1. www.agricolus.com a.cruciani@agricolus.comAndrea Cruciani – co-founder & CEO L’agricoltura del futuro tra dati satellitari, IoT e dati sul campo
  • 2.
  • 3. The field at the centre of the system Coordinating Agricultural activity Monitoring productivity Preventing diseases
  • 4.
  • 5.
  • 6. IoT Forecast Models Scouting Satellites / UAVs Decision Support Systems A complete agronomic platform
  • 7. Cloud Computing Dati satellitari Dati SAPR Osservazioni dirette e di laboratorio Sensori Meteo Farmers Engagement Shapefile CSVREST Interoperabilità GEO-DATA Dati ISOBUS WEB Mobile ISOBUS Analisi spaziale ReportPrescriz.VigoriaSuoloResa Pest monitoring Dal campo direttamente al sistema Dal campo direttamente al sistema Dal campo direttamente al sistema Dal sistema direttamente al campo Dal sistema direttamente al campo e viceversa Realtà Aumentata Comandi vocali
  • 9. Marketing R&D Data Analysts GIS – Remote Sensing Andrea Cruciani CEO Antonio Natale COO Diego Guidotti R&D board of directors Scientific and Technical Partners Università degli Studi di Perugia EU Projects, accelerators & awards H2020 - Phase 1 Helpdesk Multidisciplinary team: R&D + industrial know-how Software dev Agronomists Business Development Operations User eXperience
  • 10. Data usage for agriculture
  • 11.
  • 12.
  • 15. IoT data feeds our analysis tools statistical analysis machine learning deterministic models: • crop models • pest models
  • 17. Pest Modeling - olive fruit fly
  • 20. Remote sensing data feeds geospatial analysis
  • 24. 1. Striacosta albicosta An Early warning system in Agricolus with these features: • Monitoring: Agricolus monitor the trappings and the field scouting; data can be shared with other farms • Modelling: The model can be used to pre-alert farmers defining a date when begin the fields scouting to detect the egg presence; after collecting some traps data in Ontario we can validate and calibrate the model to local condition; 2. Vomitoxin Monitoring: monitoring the crop and the residues, perform statistical and geospatial analysis on monitoring data; Corn phenology: the models estimates the main crop stages according with crop varieties FAO class; the crop phenology can be used to estimate the risk of infection for Fusarium, Aspergillus, Penicillum; Canada - Ontario pilot
  • 25. Pilot – University and TFP (technical and financial partners) 45 km2 - paddy plot • Ground-truth data from mobile applications • Multispectral data from Sentinel2A and Sentinel 2B • Synthetic Aperture Radar (SAR) data from Sentinel1A and Sentinel1B • Crop growth modeling Upscaling perspective Rice Monitoring at Country Level involving • Local, Regional and National Governments • Statistics offices • Agricultural Direction Mali – agricultural statistic framework
  • 26. a.cruciani@agricolus.com Andrea Cruciani - CEO Making precision farming easier for EU and worldwide farmers • Up to 20 % fertilizers and treatment savings (return on in investment in 2 years) • Improve and certify trasparence on production quality «from farm to fork» • Interacts with farm machineries