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DESCRIPTION:Title: GeoAI for GIS Professionals: From AI Assistants to Spatial Analysis\n\nDescription: <div>This four-session workshop provides GIS professionals with practical literacy in artificial intelligence applications for spatial analysis and data management. The course takes a broad, yet accessible approach to GeoAI: covering AI assistants for workflow optimization, automated data processing, and traditional machine learning/deep learning applications. Participants will gain hands-on experience with contemporary AI tools while developing critical understanding of ethical considerations and appropriate use cases.</div><div><br></div><div><b>Target Audience</b><div><ul><li>Current GIS Professionals seeking to integrate AI into their workflows</li><li>GIS Certificate Program alumni and current students</li><li>Spatial data scientists and analysts</li><li>Anyone working with geographic data who wants to understand AI applications</li></ul></div><div><span style="white-space:pre"></span><b>Prerequisites: </b>Intermediate exposure with hands-on application components. Assumes basic GIS knowledge but no programming or AI background required.</div><div><b><br></b></div><div><b>Topics Covered</b></div><div><ul><li>Defining GeoAI</li><li>Overview of the three GeoAI paradigms:</li><ul><li>AI assistants for GIS workflows</li><li>AI for spacial data processing and automation</li><li>Traditional GeoAI (machine learning/deep learning for spatial analysis)</li></ul><li>Ethical considerations in GeoAI applications</li><ul><li>Bias in training data algorithms&nbsp;</li><li>Privacy concerns with spatial data</li><li>Transparency and explainability</li><li>Responsible AI deployment</li></ul><li>Survey of available AI assistants (ChatGPT, Claude, Gemini, GitHub, Copilot)</li><li>Use cases and limitations</li><li>Overview of AI assistants within the ArcGIS ecosystem and how they support everyday GIS work</li><li>Effective prompt engineering for spatial analysis and GIS-specific tasks</li><li>Using AI assistants for:</li><ul><li>Code generation and debugging (Python, R, ArcPy, Arcade)</li><li>Metadata and documentation creation</li><li>Research synthesis and literature review</li><li>Report writing and interpretation of spatial results</li></ul><li>Strategies for integrating AI assistants into existing GIS workflows</li><li>Critical evaluation of AI-generated outputs and limitations</li><li>Hands-on practice designing prompts for common GIS tasks</li><li>AI Assistants in the Esri Ecosystem</li><ul><li>ArcGIS Online and Map Viewer assistants</li><li>Arcade Assistant</li><li>Item Details Assistant</li><li>ArcGIS Pro Assistants</li></ul><li>Automated geocoding and address parsing</li><li>Data cleaning and standardization with AI</li><li>Natural language processing for spatial text data</li><li>Large language models for qualitative spacial data analysis</li><li>Automated map labeling and annotation</li><li>Integration with existing GIS pipelines (ArcGIS Pro, QGIS, R/Python)</li><li>Quality control and validation workflows</li><li>Hands-on practice: Processing spatial datasets with AI tools</li><li>Introduction to spacial learning concepts</li><li>Common GeoAI applications:</li><ul><li>Image classification and object detection</li><li>Land cover/land use classification</li><li>Predictive spatial modeling</li><li>Change detection</li></ul><li>Overview of deep learning for spatial data</li><li>Available tools and platforms (ArcGIS Pro ML tools, Google Earth Engine, cloud platforms)</li><li>Understanding model outputs and accuracy assessment</li><li>When to use (or not use) machine learning for spatial analysis</li><li>Case studies and practical examples</li></ul></div><div><b>Learning Outcomes</b></div><div><ul><li>Participants will be able to categorize different GenAI (LLMs), GeoAI approaches and articulate ethical considerations for deployment in their organizations.</li><li>Participants will be able to design effective prompts for GIS tasks, use AI assistants to accelerate common workflows, and critically evaluate AI-generated outputs for accuracy and reliability.</li><li>Participants will be able to identify appropriate use cases for AI-assisted data processing nd implement basic automation workflows.</li><li>Participants will be able to identify appropriate applications for spacial machine learning and understand the workflow from data preparation to model deployment.</li></ul></div><div><b>Teaching Methodology</b></div><div><b><br></b></div><div><span style="white-space:pre"></span>The course will be taught online through a combination of lectures, demonstrations, and hands-on exercises. Students will work on individual guided projects to apply what they have learned in the course to real-world problems. The course will also include group discussions and peer review to encourage collaboration and critical thinking.</div><div><br></div><div><h3 class="center-hm" style="box-sizing: inherit; font-optical-sizing: auto; font-variation-settings: &quot;wdth&quot; 100; margin: 0px 0px 1rem; padding: 0px; text-rendering: optimizelegibility; line-height: 1.2;"><b><font size="3">Hardware Requirements&nbsp;</font></b></h3><p style="box-sizing: inherit; margin: 0px 0px 1rem; padding: 0px; line-height: 1.5; text-rendering: optimizelegibility;"><font face="Times New Roman">Windows operating system on laptop or desktop&nbsp;<span style="box-sizing: inherit; line-height: inherit;"><b>required&nbsp;</b></span>to participate in class. ArcGIS Pro will not work on Apple or Linux operating systems, nor on tablets or mobile devices.</font></p><p class="subhead-hm" style="box-sizing: inherit; margin: 0px 0px 0.5rem; padding: 0px; line-height: 1.2; text-rendering: optimizelegibility; font-optical-sizing: auto; font-variation-settings: &quot;wdth&quot; 100;"><font face="Times New Roman">RECOMMENDED HARDWARE</font></p><ul style="box-sizing: inherit; margin: 0px 0px 1rem 1.25rem; padding: 0px; list-style-position: outside; line-height: 1.6; list-style-type: square;"><li style="box-sizing: inherit; margin: 0px 0px 0.5em; padding: 0px;"><font face="Times New Roman">Windows 10 or 11 (64-bit)</font></li><li style="box-sizing: inherit; margin: 0px 0px 0.5em; padding: 0px;"><font face="Times New Roman">Intel i5 or AMD equivalent (4+ cores)</font></li><li style="box-sizing: inherit; margin: 0px 0px 0.5em; padding: 0px;"><font face="Times New Roman">32 GB RAM (minimum 8 GB)</font></li><li style="box-sizing: inherit; margin: 0px 0px 0.5em; padding: 0px;"><font face="Times New Roman">500 GB SSD storage</font></li><li style="box-sizing: inherit; margin: 0px 0px 0.5em; padding: 0px;"><font face="Times New Roman">Dedicated graphics card (not integrated)</font></li></ul></div><div></div></div>\n\nSchedule: Every week on Wednesday, starting on 08/5/26 and ending on 08/26/26.\n\nLocation: Synchronous Online Classes held online following set schedule.  VA  
LOCATION:Synchronous Online, Classes held online following set schedule., , VA, 
SUMMARY:Class: GeoAI for GIS Professionals: From AI Assistants to Spatial Analysis
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