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X-WR-CALNAME;VALUE=TEXT:The Summer Training Workshop on Spatiotemporal Innovation 2024
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SUMMARY:The Summer Training Workshop on Spatiotemporal Innovation 2024
DESCRIPTION:<p align="center" style="border:none; margin-top:12.0pt; margin-right:0in; margin-bottom:8.0pt; margin-left:0in; text-align:center">	<strong>The Summer Training Workshop on Spatiotemporal Innovation</strong></p><p align="center" style="border:none; text-align:center">	<span><span><span style="color:#010101">July 16-19, 2024 </span></span></span></p><p align="center" style="border:none; text-align:center">	<a data-url="https://www.youtube.com/watch?v=ze00xTmUCAo" href="https://www.youtube.com/watch?v=ze00xTmUCAo" target="_blank" title="">Watch the Testimonials for the 2024 Summer Workshop on Youtube</a></p><p align="center" style="border:none; text-align:center">	<a data-url="https://www.youtube.com/watch?v=mYq9Fp0V6jE" href="https://www.youtube.com/watch?v=mYq9Fp0V6jE" target="_blank" title="">Watch the Testimonials for the 2023 Summer Workshop on Youtube</a></p><p style="border:none">	<span><span style="color:#4c4c4c">Sponsored by the Spatial Data Lab, </span></span><span><span style="color:black">this hands-on workshop is to promote replicable and expandable spatiotemporal science with advanced methodology and technology. With a focus on geospatial analytics and GeoAI analytics, the workshop will discuss methodology, functions, workflow-based tools for spatiotemporal data analysis as well as case studies for their applications across different fields, including public health, business, social media, remote sensing, and environment. The workshop will offer an excellent opportunity for participants to network, collaborate, and further develop their leadership knowledge and skills. </span></span></p><p style="border:none">	<strong>Topics (4 days)</strong></p><p>	<strong>I: Visual Programming for Data Science with KNIME</strong><br><strong><em>1. An overview of GeoAI and replicable spatiotemporal data analysis <br>2. An Introduction to KNIME </em></strong><br>- Basic functions of KNIME<br>- Open data access with KNIME <br>- Online Data Analysis and Visualization<br><em><strong>3. Hands-on practice: Build a prototype workflow with KNIME</strong></em></p><p>	<strong>II: Spatial Data Analysis with KNIME Extensions</strong><br><em><strong>4. Geospatial Analytics for KNIME </strong></em><br>- Nodes for spatial analysis<br>- Nodes for spatial data visualization<br>- Spatial Modelling with KNIME<br><strong><em>5. Exploratory Spatial Data Analysis </em></strong><br>- An overview of ESDA <br>- Spatial Weights<br>- Spatial Cluster Analysis (DBSCAN, SOM, SKATER, REDCAP, etc.)<br>- Spatial Autocorrelation<br>- Spatial Interpolation<br>- Hot Spot Analysis <br>- Spatial Dimensionality Reduction (GWPCA, GW Kernel PCA, Multidimensional Scaling with Spatial Constraints)<br><em><strong>6. Spatial Autoregressive Models </strong></em><br>- OLS with Spatial Test<br>- Spatial Autoregressive Models (SLM, SEM, SDM)<br>- Spatial Varying Models<br>- Multilevel Spatial Models<br>- Generalized Spatial Two/Three-Stage Least Squares<br>- Spatial Panel Data Models<br><em><strong>7. Hands-on practice: Implement ESDA and Spatial Statistics in KNIME</strong></em></p><p>	<strong>III: Introduction to AI Models</strong><br><strong><em>8. Introduction to Basic AI Models in KNIME</em></strong><br>- Introduction to AI Models: Machine Learning and Deep Learning<br>- Linear Regression Learner<br>- Logistic Regression Learner<br>- Decision Tree for Classification and Regression<br>- Text processing<br><strong><em>9. Advanced Machine Learning Models in KNIME </em></strong><br>- Support Vector Machine(SVM)-model<br>- Random Forest<br>- XGBoost Tree Ensemble Learner <br>- XGBoost Linear Model Learner<br>- Multiple Layer Perceptron (Neural Network)<br><em><strong>10. Advanced Deep Learning Models </strong></em><br>- Configuring Python environment for Deep Learning models in KNIME<br>- Convolutional Neural Network<br>- Long Short-Term Memory <br>- Graph Neural Network<br><em><strong>11. Hands-on practice: Evaluate the Performance of Machine Learning Models</strong></em></p><p>	<strong>IV: Introduction to GeoAI models</strong><br><strong><em>12. Machine Learning in GeoAI Models</em></strong><br>- Configuring R environment <br>- GeoAI: Spatially Explicit Artificial Intelligence <br>- Geographically Weighted AI Models (GW Random Forest, GW Support Vector Regression)<br><strong><em>13. Deep Learning in Advanced GeoAI Models</em></strong><br>- GW Extreme Learning Model(GWELM)<br>- GW Artificial Neural Network(GWANN)<br>- Spatial Autoencoders<br>- Spatial Embeddings<br>- Reinforcement Learning<br>- Deep Neural Network Models (GW Convolutional Neural Network, Graph Neural Network for Spatial Weight)<br><strong><em>14. Hands-on practice: An Exemplary Case Study using GRF and GWANN</em></strong></p><p>	<strong>V: GeoAI Applications</strong><br>- GeoAI for Healthcare Accessibility: Evaluating Commercial Dominants of Public Health with GRF<br>- GeoAI for Service Area Delimitation: Hospital Service Area Delimitation with GNN<br>- GeoAI for Remote Sensing: <br>- Introduction to KNIME GeoImage extension: Carbon Density Estimates<br>- GeoAI for Land Use /Land Cover: Classification techniques in LULC <br>- GeoAI for Social Media: Twitter Sentiment Analysis with KNIME </p><p>	<strong>VI. An Integration of Tools for Spatial Data Analysis based on KNIME Platform</strong><br>- KNIME + QGIS, ArcGIS, STATA, Google Earth Engine（Geemap）<br>- KNIME Business Hub</p><p style="border:none; margin-bottom:0in">	<strong>Requirement:</strong></p><p style="border:none">	<span><span style="color:black">It is desirable that applicants have a background in geographic analysis. </span></span><span>All<span style="color:black"> participants </span>are<span style="color:black"> expected to complete a group project and make a presentation on their </span>group’s<span style="color:black"> research. Those who complete the program and participate in </span>a<span style="color:black"> group project will receive a certificate. Those outstanding participants will be invited to join the research team of the Spatial Data Lab project.</span></span></p><p style="border:none">	<strong>Application: </strong></p><p style="border:none">	<span><span style="color:black">To apply, please submit your application, including your CV and the abstract of your research </span></span><span>via this form:<span style="color:black"> <a href="https://harvard.az1.qualtrics.com/jfe/form/SV_2aFjGNAa1AVcFQG">https://harvard.az1.qualtrics.com/jfe/form/SV_2aFjGNAa1AVcFQG</a> before April 1, 2024. Application will be open until all seats are filled. Detailed agenda and lodging information will be sent to </span>the <span style="color:black">accepted applicants later. Participants are responsible for their own travel and lodging expenses. Please visit </span></span><a href="http://spatialdatalab.org"><span><span style="color:#0563c1">http://spatialdatalab.org</span></span></a><span><span style="color:black"> for more </span></span><span>information<span style="color:black"> or contact </span></span><a href="mailto:spatialdatalab@lists.fas.harvard.edu"><span><span style="color:#0563c1">spatialdatalab@lists.fas.harvard.edu</span></span></a> <span>for<span style="color:black"> questions.</span></span></p><p style="border:none">	<strong>Registration Fee: </strong></p><p style="border:none">	<span><span style="color:black">•             $2,980 registered/paid before 0:</span></span><span>00 am<span style="color:black"> ET, May 1, 2024</span></span></p><p style="border:none">	<span><span style="color:black">•             $3,680 registered/paid after </span></span><span>0:00 am ET,<span style="color:black"> May 1, 2024</span></span></p><p align="left" style="border:none; text-align:left">	<strong>Location: </strong></p><p align="left" style="border:none; text-align:left">	<span><span style="color:black">The onsite event will </span></span><span>take place at </span><span><span><span style="color:#010101">1730 Cambridge Street, Cambridge MA 02138 (</span></span></span><a href="https://www.google.com/maps/place/Cgis%20South,%201730%20Cambridge%20St,%20Cambridge,%20MA%2002138/@42.3750154,-71.1131476,17z/data=!3m1!4b1!4m6!3m5!1s0x89e37744397bb925:0xcf4f795206016674!8m2!3d42.3750154!4d-71.1131476!16s/g/1xg5tpnp"><span><span><span style="color:#1155cc">map</span></span></span></a><span><span><span style="color:#010101">). </span></span></span></p><p>	<strong>Frequently Asked Questions &amp; Answers:</strong></p><p>	<strong>Q: Is any prior experience expected or required?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> Background in geographic analysis and Python programming is preferred but not required. </span></span></p><p>	<strong>Q: How big is the workshop?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> The onsite workshop can host up to 30 participants. </span></span></p><p>	<strong>Q: What software will I need for the workshop?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> The workshop will primarily rely on KNIME, an open-source software which can be downloaded from </span></span><a href="http://knime.com"><span><span style="color:#0563c1">http://knime.com</span></span></a><span><span style="color:black"> and installed on personal computers. The instructions and some sample case studies will be sent </span></span><span>to accepted participants<span style="color:black"> two weeks before the workshop.</span></span></p><p>	<strong>Q: Must I attend the workshop in person or will a remote option be available?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> While we acknowledge the benefits of in-person instruction, we will be offering an option for remote synchronous attendance over Zoom, as well as recorded sessions for later review.</span></span></p><p>	<strong>Q: Is this workshop free?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> It is free to apply, but if you are admitted, you must pay the registration fee to attend. We don’t offer scholarships and cannot waive the registration fee for this workshop.</span></span></p><p>	<strong>Q: How much is the registration fee? </strong></p><p>	<strong>A:</strong><span><span style="color:black"> It is $2,980 before May 1, 2024 and $3,680 after May 1, 2024.</span></span><span> <span style="color:black">The registration will cover: (1) complimentary access to the recorded workshop presentations and PPTs; (2) data and workflows for </span>all assignments in this<span style="color:black"> workshop.</span></span></p><p>	<strong>Q: How to pay the registration fee?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> The payment instruction will be sent to those applicants once accepted.</span></span></p><p>	<strong>Q: Does this course provide sponsorship for a US visa?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> If you are admitted to this workshop, you will receive an acceptance letter from Harvard’s Center for Geographic Analysis. There is no other "visa sponsorship" we will provide beyond the acceptance letter. </span></span></p><p>	<strong>Q: When will I hear the admission decision once I submit my application?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> The decision is expected to be made in mid-April 2024.</span></span></p><p>	<strong>Q: How to stay connected with my classmates/alums after taking this workshop?</strong></p><p>	<strong>A:</strong><span><span style="color:black"> Upon completing this workshop, all participants are added to a <em>Spatial Data Lab</em> mailing list. Those outstanding participants will be invited to join the research team of the Spatial Data Lab project.</span></span></p>
LOCATION:1730 Cambridge Street, Cambridge MA 02138, Cambridge, MA
STATUS:CONFIRMED
DTSTART:20240716T130000Z
DTEND:20240719T200000Z
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