SlideShare a Scribd company logo
Mastering AI
Workflows
with FME
con terra GmbH
The Peak of Data
and AI 2025
2025
The
Peak
of
Data
and
AI
Mark
Döring
Head of Data Integration Project Services
con terra GmbH
1. Introduction
2. Geo AI at con terra
3. General Approach
4. Project Example KINoPro
5. Conclusion
Agenda
Geo:AI is a Machine Learning
technology, which enables the
caption and analysis of complex
patterns and structures in
spatial data.
2025
The
Peak
of
Data
and
AI
Geo:AI at con terra
2025
The
Peak
of
Data
and
AI
Geo:AI at con terra
Geo:AI at con terra
2025
The
Peak
of
Data
and
AI
Setup of a „typical“ Geo:AI Project
Data Pre-processing
AI-Methods
Integration and Operation
Visualization and Application
2025
The
Peak
of
Data
and
AI
Integration in existing processes and infrastructures
2025
The
Peak
of
Data
and
AI
Setting it all together
• GeoAI Connector for FME
• Connecting to an external Python interpreter
• No version conflicts of Python modules
• Maintenance of AI runtime is separate from FME
• Use the AI Model within FME Workflows
FME GeoAI Connector
2025
The
Peak
of
Data
and
AI
Integrating every Step
2025
The
Peak
of
Data
and
AI
Model Integration
2025
The
Peak
of
Data
and
AI
Geo:AI meets Nature
2025
The
Peak
of
Data
and
AI
Project - KINoPro
Künstliche Intelligenz zur
NonnenfalterPrognose
● Research Project of TU Dresden and con terra GmbH
● Data from state forestries Brandenburg and Saxony
● Climate Change Influence
● Trees struggling with dry and hot weather
● Forest pests adapt faster than plants
● Irregular population growth/appearence
● Forestry personnel needs to be managed more efficiently
● New prediction models are necessary
2025
The
Peak
of
Data
and
AI
Approach - Overview
|
Monitoring of Nun
Moth / Black
Arches using
traps
GeoAI-Mod
ell
Influencing
Factors
Data
Research
Web Application
Data
Preparation
and
Preprocessing
Validation and survey for
additional parameters
Predicting insect populations
Challenges
Prediction made more difficult by climate change
Diverse parameters
○ land cover classification, elevation, slope,
trapposition and orientation, air and soil moisture…
○ 6,000 data points, data from 70 weeks per point
○ Heterogeneous data formats (Excel, ASCII grids,
GeoTIFFs, netCDF ...)
○ Spatial correlation of traps is critical
Data Preprocessing with FME
ASCII Grids
netCDF
Gridded Binary
Esri Geodatabase
AI-Algorithms
Data Preprocessing Generating Geo Data
Data Preprocessing with FME
ASCII Grids
netCDF
Gridded Binary
Esri Geodatabase
AI-Algorithms
Data Preprocessing Generating Geo Data
Easy-to-Use Integration of ML-Algorithms
Library Algorithms Custom Transformers
Learnings
● Artificial neural network learns
correlations between specialized
data, weather influences and
previous year's data
● FME can predict insects
populations approx. 5 months in
advance
● Identification of high-risk regions
and arches populations
● Reduction of traps and less traffic
in the forest
● Less chemical distribution and use
● Optimized operational planning
2025
The
Peak
of
Data
and
AI
Recap: Harnessing Data
Integration
Use this slide to:
● Reaffirm your objective
● What the audience learned
● Outline next steps if any
2025
The
Peak
of
Data
and
AI
“FME was an AI Playground
and becomes a Geo:AI
Solution”
2025
The
Peak
of
Data
and
AI
ThankYou
Mark Döring
con terra GmbH
m.doering@conterra.de
2025
The
Peak
of
Data
and
AI
“You can use this slide to
include a quote as well.”
— Attribution Name, Relevant Title
2025
The
Peak
of
Data
and
AI
Recap: Harnessing Data
Integration
Use this slide to:
● Reaffirm your objective
● What the audience learned
● Outline next steps if any
2025
The
Peak
of
Data
and
AI

More Related Content

PDF
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
PDF
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
PDF
Integrating GeoAI Models in FME
PDF
Complex Data Preparation and Preprocessing for Predicting Forest Pests with G...
PDF
FME as an Orchestration Tool with Principles From Data Gravity
PDF
FME as an Orchestration Tool - Peak of Data & AI 2025
PDF
From Field to Digital Twin: Leveraging FME for Efficient Data Ingestion in Di...
PDF
Using FME to Develop Self-Service CAD Applications for a Major UK Police Force
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Igniting Next Level Productivity with AI-Infused Data Integration Workflows
Integrating GeoAI Models in FME
Complex Data Preparation and Preprocessing for Predicting Forest Pests with G...
FME as an Orchestration Tool with Principles From Data Gravity
FME as an Orchestration Tool - Peak of Data & AI 2025
From Field to Digital Twin: Leveraging FME for Efficient Data Ingestion in Di...
Using FME to Develop Self-Service CAD Applications for a Major UK Police Force

Similar to Mastering AI Workflows with FME by Mark Döring (20)

PDF
Connecting Data and Intelligence: The Role of FME in Machine Learning
PDF
Automating ArcGIS Content Discovery with FME
PDF
Breaking Barriers & Leveraging the Latest Developments in AI Technology
PDF
Automating ArcGIS Content Discovery with FME: A Real World Use Case
PDF
Unlocking FME Flow’s Potential: Architecture Design for Modern Enterprises
PPTX
FME Around the World
PDF
No-Code Workflows for CAD & 3D Data: Scaling AI-Driven Infrastructure
PDF
FME 2022.0: Driving Data Decisions, Fueling Innovation
PDF
Streamlining Metadata Automation with ArcGIS and FME
PDF
The Latest Advances in Generative AI_ Exploring New Technology for Data Integ...
PDF
FME:23 for the Enterprise - A Deep Dive into Key New Features
PDF
Using FME to Help the Field Help You - Peak of Data & AI
PDF
Leveraging Generative AI: Exploring New Technology for Data Integration
PDF
FME World Tour 2015 - Around the World - Ken Bragg
PDF
Elevate Your Enterprise with FME 23.1
PDF
Unveiling FME 2019
PDF
FME Around the World (FME Trek Part 1): Ken Bragg - Safe Software FME World T...
PDF
FME Driven Metadata & Data Governance
PDF
Marrying FME & ArcGIS: Automating GIS Workflows for Maximum Efficiency
PDF
Bridging CAD, IBM TRIRIGA & GIS with FME: The Portland Public Schools Case
Connecting Data and Intelligence: The Role of FME in Machine Learning
Automating ArcGIS Content Discovery with FME
Breaking Barriers & Leveraging the Latest Developments in AI Technology
Automating ArcGIS Content Discovery with FME: A Real World Use Case
Unlocking FME Flow’s Potential: Architecture Design for Modern Enterprises
FME Around the World
No-Code Workflows for CAD & 3D Data: Scaling AI-Driven Infrastructure
FME 2022.0: Driving Data Decisions, Fueling Innovation
Streamlining Metadata Automation with ArcGIS and FME
The Latest Advances in Generative AI_ Exploring New Technology for Data Integ...
FME:23 for the Enterprise - A Deep Dive into Key New Features
Using FME to Help the Field Help You - Peak of Data & AI
Leveraging Generative AI: Exploring New Technology for Data Integration
FME World Tour 2015 - Around the World - Ken Bragg
Elevate Your Enterprise with FME 23.1
Unveiling FME 2019
FME Around the World (FME Trek Part 1): Ken Bragg - Safe Software FME World T...
FME Driven Metadata & Data Governance
Marrying FME & ArcGIS: Automating GIS Workflows for Maximum Efficiency
Bridging CAD, IBM TRIRIGA & GIS with FME: The Portland Public Schools Case
Ad

More from Safe Software (20)

PDF
Getting Started with Data Integration: FME Form 101
PDF
Peak of Data & AI Encore- AI for Metadata and Smarter Workflows
PDF
Peak of Data & AI Encore - Real-Time Insights & Scalable Editing with ArcGIS
PDF
Infrastructure planning and resilience - Keith Hastings.pptx.pdf
PDF
Notification System for Construction Logistics Application
PDF
Building Real-Time Digital Twins with IBM Maximo & ArcGIS Indoors
PDF
Transforming Utility Networks: Large-scale Data Migrations with FME
PDF
Peak of Data & AI Encore AI-Enhanced Workflows for the Real World
PDF
Automating Feature Enrichment and Station Creation in Natural Gas Utility Net...
PDF
FME in Overdrive - Peak of Data & AI 2025
PDF
Powering GIS with FME and VertiGIS - Peak of Data & AI 2025
PDF
Pipeline Industry IoT - Real Time Data Monitoring
PDF
FME in Overdrive: Unleashing the Power of Parallel Processing
PDF
Fiber to the People! By Deutsche Telekom
PDF
Governing Geospatial Data at Scale: Optimizing ArcGIS Online with FME in Envi...
PDF
Enhancing Environmental Monitoring with Real-Time Data Integration: Leveragin...
PDF
Introducing and Operating FME Flow for Kubernetes in a Large Enterprise: Expe...
PDF
5 Things to Consider When Deploying AI in Your Enterprise
PDF
Automating Feature Enrichment and Station Creation in Natural Gas Utility Net...
PDF
ArcGIS Utility Network Migration - The Hunter Water Story
Getting Started with Data Integration: FME Form 101
Peak of Data & AI Encore- AI for Metadata and Smarter Workflows
Peak of Data & AI Encore - Real-Time Insights & Scalable Editing with ArcGIS
Infrastructure planning and resilience - Keith Hastings.pptx.pdf
Notification System for Construction Logistics Application
Building Real-Time Digital Twins with IBM Maximo & ArcGIS Indoors
Transforming Utility Networks: Large-scale Data Migrations with FME
Peak of Data & AI Encore AI-Enhanced Workflows for the Real World
Automating Feature Enrichment and Station Creation in Natural Gas Utility Net...
FME in Overdrive - Peak of Data & AI 2025
Powering GIS with FME and VertiGIS - Peak of Data & AI 2025
Pipeline Industry IoT - Real Time Data Monitoring
FME in Overdrive: Unleashing the Power of Parallel Processing
Fiber to the People! By Deutsche Telekom
Governing Geospatial Data at Scale: Optimizing ArcGIS Online with FME in Envi...
Enhancing Environmental Monitoring with Real-Time Data Integration: Leveragin...
Introducing and Operating FME Flow for Kubernetes in a Large Enterprise: Expe...
5 Things to Consider When Deploying AI in Your Enterprise
Automating Feature Enrichment and Station Creation in Natural Gas Utility Net...
ArcGIS Utility Network Migration - The Hunter Water Story
Ad

Recently uploaded (20)

PPTX
20250228 LYD VKU AI Blended-Learning.pptx
PDF
Review of recent advances in non-invasive hemoglobin estimation
PDF
MIND Revenue Release Quarter 2 2025 Press Release
PPTX
MYSQL Presentation for SQL database connectivity
PDF
Machine learning based COVID-19 study performance prediction
PPTX
ACSFv1EN-58255 AWS Academy Cloud Security Foundations.pptx
PPTX
Digital-Transformation-Roadmap-for-Companies.pptx
PDF
Reach Out and Touch Someone: Haptics and Empathic Computing
PDF
Dropbox Q2 2025 Financial Results & Investor Presentation
PDF
Chapter 3 Spatial Domain Image Processing.pdf
PPTX
KOM of Painting work and Equipment Insulation REV00 update 25-dec.pptx
DOCX
The AUB Centre for AI in Media Proposal.docx
PDF
KodekX | Application Modernization Development
PPTX
Effective Security Operations Center (SOC) A Modern, Strategic, and Threat-In...
PDF
Agricultural_Statistics_at_a_Glance_2022_0.pdf
PDF
How UI/UX Design Impacts User Retention in Mobile Apps.pdf
PPTX
VMware vSphere Foundation How to Sell Presentation-Ver1.4-2-14-2024.pptx
PDF
Encapsulation theory and applications.pdf
PDF
cuic standard and advanced reporting.pdf
PPTX
Cloud computing and distributed systems.
20250228 LYD VKU AI Blended-Learning.pptx
Review of recent advances in non-invasive hemoglobin estimation
MIND Revenue Release Quarter 2 2025 Press Release
MYSQL Presentation for SQL database connectivity
Machine learning based COVID-19 study performance prediction
ACSFv1EN-58255 AWS Academy Cloud Security Foundations.pptx
Digital-Transformation-Roadmap-for-Companies.pptx
Reach Out and Touch Someone: Haptics and Empathic Computing
Dropbox Q2 2025 Financial Results & Investor Presentation
Chapter 3 Spatial Domain Image Processing.pdf
KOM of Painting work and Equipment Insulation REV00 update 25-dec.pptx
The AUB Centre for AI in Media Proposal.docx
KodekX | Application Modernization Development
Effective Security Operations Center (SOC) A Modern, Strategic, and Threat-In...
Agricultural_Statistics_at_a_Glance_2022_0.pdf
How UI/UX Design Impacts User Retention in Mobile Apps.pdf
VMware vSphere Foundation How to Sell Presentation-Ver1.4-2-14-2024.pptx
Encapsulation theory and applications.pdf
cuic standard and advanced reporting.pdf
Cloud computing and distributed systems.

Mastering AI Workflows with FME by Mark Döring