Project H uses the power of the design process to catalyze communities and public education from within.
We are a team of designers and builders engaging in our own backyards to improve the quality of life for all. Our six-tenet design process (There is no design without (critical) action; We design WITH, not FOR; We document, share and measure; We start locally and scale globally; We design systems, not stuff; We build) results in simple and effective design solutions that empower communities and build collective creative capital.
Our specific focus is the re-thinking of environments, products, experiences, and curricula for K-12 education institutions in the US, including design/build Studio H high school program in the Bertie County School District, North Carolina.
WE BELIEVE DESIGN CAN CHANGE THE WORLD.
Printable Resources * Enquiry/Problem-Based Learning * Deep, surface and strategic approaches to learning * Personal Learning Styles * Life long learning and self-directed learning * Curriculum and Course design * Generic objectives and transferable skills * Small group (including tutorials) & large group teaching * Practicals and Demonstrators / Teaching Assistants * Supervising postgraduates * Flexible learning / flexible delivery: Including teaching with new technologies * Learning journals and logs, Reflective Diaries
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