#CraftyDataViz Winners | Becoming A Data Scientist

Crafty Data Visualization Winners: Embarking on a Journey to Become a Data Scientist

Introduction:

Welcome to the #CraftyDataViz contest, where creativity and artistry meet data visualization! We were blown away by the beautiful and wacky homemade visualizations that were submitted. Our awesome judges had a tough time selecting the winners, as every entry was compelling and showcased the heart and creativity of the participants. We had three categories – Most Beautiful, Most Informational, and Most Fun – and the top selections truly impressed us. From Patti Shih’s stunning string representation of brain connectivity to Amy Cesal’s informative Play-Doh visualizations, each entry was a work of art. The winners will receive a prize from the Becoming a Data Scientist store. Thank you to everyone who participated, and we can’t wait to see what next year’s contest brings!

Full Article: Crafty Data Visualization Winners: Embarking on a Journey to Become a Data Scientist

Crafty DataViz Contest Results Revealed: Beautiful, Informative, and Fun Visualizations

A month ago, an impromptu #CraftyDataViz contest was posted, inviting participants to create homemade visualizations that were both beautiful and unconventional. The response was overwhelming, with participants showcasing their creativity and talent. After a series of difficult rounds of judging, the winners have finally been chosen.

Grateful Judges Appreciate Entrant’s Creativity and Hard Work

The contest’s panel of judges faced a tough task, as every single entry submitted was compelling in its own way. Karen Lopez, one of the judges, expressed her difficulty in selecting the winners, stating that she was blown away by the creativity put into each entry. Another judge, Natasha, commended all the participants, pointing out that every entry had its own unique appeal.

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Categories for Judging

The contest had three distinct categories for judging the entries. The first category was “Most Beautiful,” which required participants to present data in visually impressive ways. The second category, “Most Informational,” focused on the ability to effectively communicate information from the original visualization. Finally, the third category, “Most Fun,” aimed to create visualizations that brought a smile to the judges’ faces.

Most Beautiful Category Winner

Out of the numerous entries in the Most Beautiful category, Patti Shih’s submission stood out to the judges, comparing normal brain connectivity to connectivity “while tripping on magic mushrooms.” Patti recreated the original data visualization using string, enhancing its beauty with her choice of colors. The judges were impressed by how she sculpted layers with string, making the visualization even more visually appealing.

Honorable Mention – Most Beautiful Category

The runner-up in the Most Beautiful category was a twisted-metal tree representing a dendrogram of the students that Alli Torban’s mother had taught throughout her career. This entry showcased intricate craftsmanship and photography skills, serving both as a reminder of the possibility of showing tree-diagrams in 3D and as an artistic sculpture.

Most Informational Category Winner

Amy Cesal dominated the Most Informational category with two Play-Doh-based visualizations, both winning the most votes in the original round. The judges ultimately selected her “joy plot” (aka ridgeline plot) of the Perceptions of Probability as the winner due to its effectiveness in conveying the meaning of the original visualization. Cesal’s use of visually stunning Play-Doh colors captured the essence of joy plots, which are both fun and informative.

Honorable Mention – Most Informational Category

Amy Cesal’s second entry, focusing on birth time patterns, was also highly regarded in the Most Informational category. By creatively using Play-Doh on top of a 3D object, she added another dimension to the original data visualization, making it more understandable and visually appealing.

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Most Fun Category Winner

The Most Fun category received multiple top picks in the first round of judging. After careful deliberation, the judges selected Jon Schwabish’s daughter’s entry, which depicted her Halloween candy haul. The judges found this visualization to be particularly enjoyable, especially with the inclusion of the mysterious “MEGA” category.

Honorable Mentions – Most Fun Category

Awais Athar and Alli Torban’s entries also received special mention for their fun and interesting visualizations. The judges appreciated their creativity and unique approach to the contest.

Recognition and Appreciation for All Participants

While only a select few entries could be highlighted in this report, the judges expressed their gratitude and enthusiasm for every participant who took part in the #CraftyDataViz contest. The sheer number of impressive entries exceeded expectations, making the contest a truly remarkable event. All the winners will receive their choice of an item from the Becoming a Data Scientist store. The judges are looking forward to hosting another contest next year. To see all the incredible entries, visit the Twitter Moment dedicated to the contest.

Summary: Crafty Data Visualization Winners: Embarking on a Journey to Become a Data Scientist

About a month ago, I launched the #CraftyDataViz contest, hoping to receive some impressive and creative homemade visualizations. The response was overwhelming, and it was a tough task for our judges to select the winners. We had three categories – Most Beautiful, Most Informational, and Most Fun. Each entry showcased the participants’ passion and creativity. The top selections included Patti Shih’s string-based visualization, Alli Torban’s twisted-metal tree, and Amy Cesal’s Play-Doh creations. Jon Schwabish’s daughter’s Halloween candy haul emerged as the winner in the Most Fun category. Congratulations to the winners, and thank you to all who participated!

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