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Victoria Napolitano Created Musical Fashion Show Featuring Mademoiselle French Collection

The show featured fashion, musical performances, and a $20,000 custom gown donation to Chances for Children and The Animal Fund




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Valiant Eagle Inc. (OTC:PSRU) Creates XMG, A Holding Company For 24+ New TV Channels

Valiant Eagle Inc. (OTC:PSRU) is pleased to announce the launch of its new wholly-owned subsidiary, Xavier Media Group (XMG).




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Actor-Director-Producer, Carl Gilliard Makes the Best of the Challenging Times Creates Six-Episode Series, Two Degrees: The Series

Veteran actor, Carl Gilliard develops six-episode series starring Carl Gilliard, LaTonya Black Gilliard, as well as appearances from a host of notables, including Kym Whitley, Bill Duke, Kellita Smith, Michael Beach, and Wendy Raquel Robinson.




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Take The Lead and Luminary Partner to Create "The Power to Take The Lead" Workshop Series for Women

Skills-Building Sessions To Offer Attendees Leadership and Career Advancement Tools




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WWF-Australia Partners with Eyewear Retailer VisionDirect to Create Wildlife Saving Sunglasses

Reef fishing net transformed from "dangerous" to "desirable" ReefCycle sunglasses




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Largest Aircraft Association & Mühle-Glashütte Create Unique Pilot Watch

Mühle-Glashütte launches a new limited-edition watch to honor 80 years of the world's largest aviation organization, AOPA




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Which Face is Real? Applying StyleGAN to Create Fake People

This post explains using a pre-trained GAN to generate human faces, and discusses the most common generative pitfalls associated with doing so.




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How to Create an Entrepreneurial Economy

Daniel Isenberg, professor of management practice at Babson College and author of the HBR article "The Big Idea: How to Start an Entrepreneurial Revolution."




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How One CEO Creates Joy at Work

Richard Sheridan, CEO of Menlo Innovations, says it took him years to learn what really mattered at work and how to create that kind of workplace culture. As a company leader today, he works hard to make sure both his job — and the jobs of his employees — are joyful. That doesn't mean they are happy 100% of the time, he argues, but that they feel fulfilled by always putting the customer first. Sheridan is the author of "Chief Joy Officer: How Great Leaders Elevate Human Energy and Eliminate Fear."




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National nonprofit creates online early childhood development community

Verint Community Cloud helps Ounce of Prevention Fund accelerate launch of online community amid the COVID-19 pandemic




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CMS Creates Pathways to Success for ACOs Starting July 1, 2019

The Centers for Medicare & Medicaid Services (CMS) is taking a new direction with the Medicare Shared Savings Program, established by the Affordable Care Act. The new ruling, called Pathways to Success, is meant to encourage Medicare’s Accountable Care Organizations… Read More

The post CMS Creates Pathways to Success for ACOs Starting July 1, 2019 appeared first on Anders CPAs.




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Delegation of work: To constantly firefight or create a vision for the future

The biggest cause of such fires is non-delegation of tasks to responsible people with clearly defined accountability. When you delegate, you have to allow time for people to step up and demonstrate their abilities.




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How MSMEs can create a win-win relationship with their customers

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Dr Norman Swan, the Art Gallery of New South Wales – and Australian kids – create Together In Art Kids

“The stories that children will tell through their art will be incredibly moving as well as funny and we at the ABC are proud to be partnering on this project.”




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POKE ME: Government, get out of skilling. Motivate the bureaucracy to create the right ecosystem instead

What we need before Skill India is perhaps a Skill Government mission. And what’s more, in this Budget season, a visionary leader can do this without much fund allocation.




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OPDAT-Created Courtroom Security Manual Presented in Malaysia

On March 4, in Kuala Lumpur, Malaysia, the country’s first Manual on Courtroom Security in Terrorism Cases was presented to the Chair of Malaysia’s National Judicial Security Committee (NJSC) for consideration and adoption.




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Snow Creates Traffic, School Closings On Wednesday

Snow continued into early Wednesday morning with a dusting to 1 inch around Baltimore, and higher amounts northwest of Baltimore City.




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How to Create Content Access Levels in WordPress

Content access levels refer to sets of content permission allowing you to decide which content your members could or couldn’t see. It helps deliver premium content to your members and customers easily. You can also ask users to pay and upgrade their member levels to view restricted content. Membership plugins instantly come to mind when...




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Grand Canyon National Park Tourism Creates Over $467 Million in Economic Benefit

Grand Canyon National Park Tourism Creates Over $467 Million in Economic Benefit https://www.nps.gov/grca/learn/news/grand-canyon-national-park-tourism-creates-over-467-million-dollars-in-economic-benefit.htm




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Tourism to Grand Canyon National Park Creates $454 million in Economic Benefit

A new National Park Service (NPS) report shows that over 4.4 million visitors to Grand Canyon National Park in 2012 spent $454 million in communities near the park. That spending supported 6,010 jobs in the local area. https://www.nps.gov/grca/learn/news/tourism-to-grand-canyon-national-park-creates-454-million-in-economic-benefit.htm




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Tourism to Grand Canyon National Park creates $476 million in Economic Benefit Report shows visitor spending supports 6,238 jobs in local economy

A new National Park Service (NPS) report shows that 4,564,841 visitors to Grand Canyon National Park in 2013 spent $476,194.8 million in communities near the park. That spending supported 6,238 jobs in the local area. https://www.nps.gov/grca/learn/news/tourism-to-grand-canyon-national-park-creates-476-million-dollars-in-economic-benefit-report-shows-visitor-spending-supports-6238-jobs-in-local-economy.htm




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Tourism to Grand Canyon National Park Creates $509 Million in Economic Benefits

A new National Park Service (NPS) report shows that over 4.7 million visitors to Grand Canyon National Park in 2014 spent $509 million in communities near the park. https://www.nps.gov/grca/learn/news/grand-canyon-tourism-creates-509-million.htm




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Tourism to Grand Canyon National Park Creates $584 Million in Economic Benefits

A new National Park Service (NPS) report shows that 5.5 million visitors to Grand Canyon National Park in 2015 spent $584 million in communities near the park. https://www.nps.gov/grca/learn/news/tourism-economic-benefits-2015.htm




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Tourism to Grand Canyon National Park Creates $904 Million in Economic Benefits

A new National Park Service (NPS) report shows that 5,969,811 visitors to Grand Canyon National Park in 2016 spent $648,170,900 in communities near the park. https://www.nps.gov/grca/learn/news/econ-benefit-2016.htm




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Tourism to Grand Canyon National Park Creates Economic Benefits

A national park service report shows that more than 6.2 million visitors to Grand Canyon National Park in 2017 supported the local economy. https://www.nps.gov/grca/learn/news/2017-gcnp-economic-benefit.htm




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Tourism to Grand Canyon National Park Creates Economic Benefit

A new National Park Service (NPS) report shows that the 6.3 million visitors to Grand Canyon National Park in 2018 spent $947 million in communities near the park. That spending supported 12,558 jobs in the local area and had a cumulative benefit to the local economy of $1.2 billion. https://www.nps.gov/grca/learn/news/grand-canyon-economic-benefit.htm




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The cheat afternoon tea you can create at home that the kids will love too

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How to Create a Full Split-Screen Layout with Unique Toggles in Divi

Split Screen layouts are a great way to add design to your Divi website that is beautifully balanced and unconventional. With Divi’s new position options, we can create a split-screen layout design using two adjacent Divi sections. This opens the door for building even more unique split-screen layouts using the Divi Builder. In this tutorial, […]

The post How to Create a Full Split-Screen Layout with Unique Toggles in Divi appeared first on Elegant Themes Blog.




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Prescribed Fires Are Not Created Equal: Fire Season and Severity Effects In Ponderosa Pine Forests of The Southern Blue Mountains

In the mid-1990s, forest managers on the Malheur National Forest were concerned about their prescribed fire program. Although they have only a few weeks of acceptable conditions available in the spring and fall, they were worried that spring-season prescribed burning might be exacerbating black stain root disease and having negative effects on understory plants.




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40 jobs could be created as plans for new Lidl store get green light

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NI dad creates book aimed at explaining grief and loss to children

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iHeartMedia/Orlando Creates Online 'Education Fair'

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Online business exchange creates community, makes critical connections to meet needs during COVID-19 pandemic

DALLAS, April 29, 2020 — As the shortage of many goods, resources and services grows during the ongoing COVID-19 pandemic, the American Heart Association, the leading nonprofit organization focused on a world of healthier lives for all, has launched ...




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How to Create A Comic Book Text Effect

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This Art Collective Creates Concepts That Have Emerged From The Coronavirus Pandemic

The Coronavirus is changing our relation to each other and affecting our perception of reality. This virus is very democratic:...





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Collaboration creates Camp-in-a-Bag kits for mentoring program

“I pledge my Head to clearer thinking, my Heart to greater loyalty, my Hands to larger service, and my Health to better living, for my club, my community, my country, and my world.”...




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How to Use apply_filters() and do_action() to Create Extensible WordPress Plugins

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How to Create a WordPress Intranet for Your Organization

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Collaboration creates Camp-in-a-Bag kits for mentoring program

“I pledge my Head to clearer thinking, my Heart to greater loyalty, my Hands to larger service, and my Health to better living, for my club, my community, my country, and my world.” — 4-H pledge

The Johnson County 4-H program is living up to these words, teaming up with Big Brothers Big Sisters of Johnson County to assemble Camp-in-a-Bag kits for the youngest “Littles” enrolled in the BBBS mentoring program.

Big Brothers Big Sisters creates one-on-one opportunities between adult volunteer mentors and at-risk youths ages 6 to 18. Known as “Bigs” and “Littles,” they meet for at least six hours a month for 18 months. But those in-person outings to movies, museums, restaurants, recreational activities and new adventures, as well as monthly events and school-based programs organized by the agency, are on hold during the COVID-19 pandemic.

So the kits became an outreach outlet.

“I was thinking about ways that we would be able to connect with our Littles, to let them know that we’re thinking about them,” said Dina Bishara, program specialist for Big Brothers Big Sisters of Johnson County. “And also in a very small way, to try to fill that gap that so many kids are experiencing right now. They’re used to the structure and activity of school and extracurricular activities and playing with friends.”

The bags contain more than six hours of STEAM — science, technology, engineering, arts and math — activities, from the pieces needed for building gliders and balloon flyers, to conducting scientific experiments, planting seeds, choosing healthy snacks and writing down their thoughts.

Those activities also reflect the other contributing partners: Johnson County Master Gardeners, Johnson County Extension and Outreach’s Pick a Better Snack program, O’Brien Family McDonalds and Forever Green Garden Center.

“(We wanted to) just give them something really fun and also educational and engaging, to help them spend time with their siblings, if they have them, and get their parents involved, if possible — and just really keep them connected to that learning and the fun, but also to Big Brothers Big Sisters,” Bishara said. “Camp-in-a-Bag helps us structure things in an intentional and thoughtful way.”

Partnering with 4-H, known for its summer camps, fairs and educational programs, “was a really great way to make sure that the activities we were including were really robust, so it was not going to be a hodgepodge, throw-some-things-in-a-bag,” Bishara added. “We really needed to be deliberate about it, to have the directions nicely laid out.”

The first wave is being distributed to 20 elementary-age children, and officials are hoping to expand the project.

“Funding is always a question,” Bishara said. “We would love to expand to 20 or 40 for more. ... We’d sure like to be able to target the kits to a little older kids, who have different interests.”

Bishara and Kate Yoder, who works with 4-H out of the Iowa State University Extension office in Johnson County, are eager to continue their collaborative efforts.

“It really great,” Yoder said. “When you work together, things comes together and amazing things happen. I’m excited to see what the future holds — what partnerships we can build on and grow.”

Comments: (319) 368-8508; diana.nollen@thegazette.com

To help

• What: Big Brothers Big Sisters Camp-in-a-Bag kit contributions

• Contact: Email Dina Bishara at dina@bbbsjc.org




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TrailBuddy: Using AI to Create a Predictive Trail Conditions App

Viget is full of outdoor enthusiasts and, of course, technologists. For this year's Pointless Weekend, we brought these passions together to build TrailBuddy. This app aims to solve that eternal question: Is my favorite trail dry so I can go hike/run/ride?

While getting muddy might rekindle fond childhood memories for some, exposing your gear to the elements isn’t great – it’s bad for your equipment and can cause long-term, and potentially expensive, damage to the trail.

There are some trail apps out there but we wanted one that would focus on current conditions. Currently, our favorites trail apps, like mtbproject.com, trailrunproject.com, and hikingproject.com -- all owned by REI, rely on user-reported conditions. While this can be effective, the reports are frequently unreliable, as condition reports can become outdated in just a few days.

Our goal was to solve this problem by building an app that brought together location, soil type, and weather history data to create on-demand condition predictions for any trail in the US.

We built an initial version of TrailBuddy by tapping into several readily-available APIs, then running the combined data through a machine learning algorithm. (Oh, and also by bringing together a bunch of smart and motivated people and combining them with pizza and some of the magic that is our Pointless Weekends. We'll share the other Pointless Project, Scurry, with you soon.)

The quest for data.

We knew from the start this app would require data from a number of sources. As previously mentioned, we used REI’s APIs (i.e. https://www.hikingproject.com/data) as the source for basic trail information. We used the trails’ latitude and longitude coordinates as well as its elevation to query weather and soil type. We also found data points such as a trail’s total distance to be relevant to our app users and decided to include that on the front-end, too. Since we wanted to go beyond relying solely on user-reported metrics, which is how REI’s current MTB project works, we came up with a list of factors that could affect the trail for that day.

First on that list was weather.

We not only considered the impacts of the current forecast, but we also looked at the previous day’s forecast. For example, it’s safe to assume that if it’s currently raining or had been raining over the last several days, it would likely lead to muddy and unfavorable conditions for that trail. We utilized the DarkSky API (https://darksky.net/dev) to get the weather forecasts for that day, as well as the records for previous days. This included expected information, like temperature and precipitation chance. It also included some interesting data points that we realized may be factors, like precipitation intensity, cloud cover, and UV index. 

But weather alone can’t predict how muddy or dry a trail will be. To determine that for sure, we also wanted to use soil data to help predict how well a trail’s unique soil composition recovers after precipitation. Similar amounts of rain on trails of very different soil types could lead to vastly different trail conditions. A more clay-based soil would hold water much longer, and therefore be much more unfavorable, than loamy soil. Finding a reliable source for soil type and soil drainage proved incredibly difficult. After many hours, we finally found a source through the USDA that we could use. As a side note—the USDA keeps track of lots of data points on soil information that’s actually pretty interesting! We can’t say we’re soil experts but, we felt like we got pretty close.

We used Whimsical to build our initial wireframes.

Putting our design hats on.

From the very first pitch for this app, TrailBuddy’s main differentiator to peer trail resources is its ability to surface real-time information, reliably, and simply. For as complicated as the technology needed to collect and interpret information, the front-end app design needed to be clean and unencumbered.

We thought about how users would naturally look for information when setting out to find a trail and what factors they’d think about when doing so. We posed questions like:

  • How easy or difficult of a trail are they looking for?
  • How long is this trail?
  • What does the trail look like?
  • How far away is the trail in relation to my location?
  • For what activity am I needing a trail for?
  • Is this a trail I’d want to come back to in the future?

By putting ourselves in our users’ shoes we quickly identified key features TrailBuddy needed to have to be relevant and useful. First, we needed filtering, so users could filter between difficulty and distance to narrow down their results to fit the activity level. Next, we needed a way to look up trails by activity type—mountain biking, hiking, and running are all types of activities REI’s MTB API tracks already so those made sense as a starting point. And lastly, we needed a way for the app to find trails based on your location; or at the very least the ability to find a trail within a certain distance of your current location.

We used Figma to design, prototype, and gather feedback on TrailBuddy.

Using machine learning to predict trail conditions.

As stated earlier, none of us are actual soil or data scientists. So, in order to achieve the real-time conditions reporting TrailBuddy promised, we’d decided to leverage machine learning to make predictions for us. Digging into the utility of machine learning was a first for all of us on this team. Luckily, there was an excellent tutorial that laid out the basics of building an ML model in Python. Provided a CSV file with inputs in the left columns, and the desired output on the right, the script we generated was able to test out multiple different model strategies, and output the effectiveness of each in predicting results, shown below.

We assembled all of the historical weather and soil data we could find for a given latitude/longitude coordinate, compiled a 1000 * 100 sized CSV, ran it through the Python evaluator, and found that the CART and SVM models consistently outranked the others in terms of predicting trail status. In other words, we found a working model for which to run our data through and get (hopefully) reliable predictions from. The next step was to figure out which data fields were actually critical in predicting the trail status. The more we could refine our data set, the faster and smarter our predictive model could become.

We pulled in some Ruby code to take the original (and quite massive) CSV, and output smaller versions to test with. Now again, we’re no data scientists here but, we were able to cull out a good majority of the data and still get a model that performed at 95% accuracy.

With our trained model in hand, we could serialize that to into a model.pkl file (pkl stands for “pickle”, as in we’ve “pickled” the model), move that file into our Rails app along with it a python script to deserialize it, pass in a dynamic set of data, and generate real-time predictions. At the end of the day, our model has a propensity to predict fantastic trail conditions (about 99% of the time in fact…). Just one of those optimistic machine learning models we guess.

Where we go from here.

It was clear that after two days, our team still wanted to do more. As a first refinement, we’d love to work more with our data set and ML model. Something that was quite surprising during the weekend was that we found we could remove all but two days worth of weather data, and all of the soil data we worked so hard to dig up, and still hit 95% accuracy. Which … doesn’t make a ton of sense. Perhaps the data we chose to predict trail conditions just isn’t a great empirical predictor of trail status. While these are questions too big to solve in just a single weekend, we'd love to spend more time digging into this in a future iteration.



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How to Create an Online Ordering Page for Restaurants with WooCommerce

Until recently it was something normal for any restaurant to have a well-maintained website. Even so, it seems that for many restaurants this was something difficult to achieve. In these difficult times, for many restaurant owners and other businesses in this field, owning just a simple website is no longer enough. If you still want to remain in business you […]




create

TrailBuddy: Using AI to Create a Predictive Trail Conditions App

Viget is full of outdoor enthusiasts and, of course, technologists. For this year's Pointless Weekend, we brought these passions together to build TrailBuddy. This app aims to solve that eternal question: Is my favorite trail dry so I can go hike/run/ride?

While getting muddy might rekindle fond childhood memories for some, exposing your gear to the elements isn’t great – it’s bad for your equipment and can cause long-term, and potentially expensive, damage to the trail.

There are some trail apps out there but we wanted one that would focus on current conditions. Currently, our favorites trail apps, like mtbproject.com, trailrunproject.com, and hikingproject.com -- all owned by REI, rely on user-reported conditions. While this can be effective, the reports are frequently unreliable, as condition reports can become outdated in just a few days.

Our goal was to solve this problem by building an app that brought together location, soil type, and weather history data to create on-demand condition predictions for any trail in the US.

We built an initial version of TrailBuddy by tapping into several readily-available APIs, then running the combined data through a machine learning algorithm. (Oh, and also by bringing together a bunch of smart and motivated people and combining them with pizza and some of the magic that is our Pointless Weekends. We'll share the other Pointless Project, Scurry, with you soon.)

The quest for data.

We knew from the start this app would require data from a number of sources. As previously mentioned, we used REI’s APIs (i.e. https://www.hikingproject.com/data) as the source for basic trail information. We used the trails’ latitude and longitude coordinates as well as its elevation to query weather and soil type. We also found data points such as a trail’s total distance to be relevant to our app users and decided to include that on the front-end, too. Since we wanted to go beyond relying solely on user-reported metrics, which is how REI’s current MTB project works, we came up with a list of factors that could affect the trail for that day.

First on that list was weather.

We not only considered the impacts of the current forecast, but we also looked at the previous day’s forecast. For example, it’s safe to assume that if it’s currently raining or had been raining over the last several days, it would likely lead to muddy and unfavorable conditions for that trail. We utilized the DarkSky API (https://darksky.net/dev) to get the weather forecasts for that day, as well as the records for previous days. This included expected information, like temperature and precipitation chance. It also included some interesting data points that we realized may be factors, like precipitation intensity, cloud cover, and UV index. 

But weather alone can’t predict how muddy or dry a trail will be. To determine that for sure, we also wanted to use soil data to help predict how well a trail’s unique soil composition recovers after precipitation. Similar amounts of rain on trails of very different soil types could lead to vastly different trail conditions. A more clay-based soil would hold water much longer, and therefore be much more unfavorable, than loamy soil. Finding a reliable source for soil type and soil drainage proved incredibly difficult. After many hours, we finally found a source through the USDA that we could use. As a side note—the USDA keeps track of lots of data points on soil information that’s actually pretty interesting! We can’t say we’re soil experts but, we felt like we got pretty close.

We used Whimsical to build our initial wireframes.

Putting our design hats on.

From the very first pitch for this app, TrailBuddy’s main differentiator to peer trail resources is its ability to surface real-time information, reliably, and simply. For as complicated as the technology needed to collect and interpret information, the front-end app design needed to be clean and unencumbered.

We thought about how users would naturally look for information when setting out to find a trail and what factors they’d think about when doing so. We posed questions like:

  • How easy or difficult of a trail are they looking for?
  • How long is this trail?
  • What does the trail look like?
  • How far away is the trail in relation to my location?
  • For what activity am I needing a trail for?
  • Is this a trail I’d want to come back to in the future?

By putting ourselves in our users’ shoes we quickly identified key features TrailBuddy needed to have to be relevant and useful. First, we needed filtering, so users could filter between difficulty and distance to narrow down their results to fit the activity level. Next, we needed a way to look up trails by activity type—mountain biking, hiking, and running are all types of activities REI’s MTB API tracks already so those made sense as a starting point. And lastly, we needed a way for the app to find trails based on your location; or at the very least the ability to find a trail within a certain distance of your current location.

We used Figma to design, prototype, and gather feedback on TrailBuddy.

Using machine learning to predict trail conditions.

As stated earlier, none of us are actual soil or data scientists. So, in order to achieve the real-time conditions reporting TrailBuddy promised, we’d decided to leverage machine learning to make predictions for us. Digging into the utility of machine learning was a first for all of us on this team. Luckily, there was an excellent tutorial that laid out the basics of building an ML model in Python. Provided a CSV file with inputs in the left columns, and the desired output on the right, the script we generated was able to test out multiple different model strategies, and output the effectiveness of each in predicting results, shown below.

We assembled all of the historical weather and soil data we could find for a given latitude/longitude coordinate, compiled a 1000 * 100 sized CSV, ran it through the Python evaluator, and found that the CART and SVM models consistently outranked the others in terms of predicting trail status. In other words, we found a working model for which to run our data through and get (hopefully) reliable predictions from. The next step was to figure out which data fields were actually critical in predicting the trail status. The more we could refine our data set, the faster and smarter our predictive model could become.

We pulled in some Ruby code to take the original (and quite massive) CSV, and output smaller versions to test with. Now again, we’re no data scientists here but, we were able to cull out a good majority of the data and still get a model that performed at 95% accuracy.

With our trained model in hand, we could serialize that to into a model.pkl file (pkl stands for “pickle”, as in we’ve “pickled” the model), move that file into our Rails app along with it a python script to deserialize it, pass in a dynamic set of data, and generate real-time predictions. At the end of the day, our model has a propensity to predict fantastic trail conditions (about 99% of the time in fact…). Just one of those optimistic machine learning models we guess.

Where we go from here.

It was clear that after two days, our team still wanted to do more. As a first refinement, we’d love to work more with our data set and ML model. Something that was quite surprising during the weekend was that we found we could remove all but two days worth of weather data, and all of the soil data we worked so hard to dig up, and still hit 95% accuracy. Which … doesn’t make a ton of sense. Perhaps the data we chose to predict trail conditions just isn’t a great empirical predictor of trail status. While these are questions too big to solve in just a single weekend, we'd love to spend more time digging into this in a future iteration.



  • News & Culture

create

Video Tutorial: How to Create an Embroidered Patch Design in Illustrator

In today’s Adobe Illustrator tutorial I’m going to take you through the process of creating a colourful embroidered patch, based on the kinds of designs associated with National Parks. The artwork will incorporate a landscape scene at sunset, which helps to keep the design simple with a silhouette graphic and a warm colour palette. Stick […]

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How to Create a CSS-Tricks Custom Scrollbar

Chris Coyier of CSS-Tricks is an amazing engineer and blogger. He’s not only creative but has always had the drive to put his thoughts to work, no matter how large. He also has a good eye for the little things that can make CSS-Tricks or your site special. One of those little things is his […]

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20 Minute Tut! Create Your Own Customized Chalkboard Text Vector

In this Chalkboard Text Vector tutorial, I’ll show you how to create a chalkboard vector effect with some gradients, a bristle brush, and some freebies from Vector Mill! This chalkboard text vector effect tutorial is relatively simple and can be applied to many other Illustrator projects. Use this effect for logo creation, back to school backgrounds, […]

The post 20 Minute Tut! Create Your Own Customized Chalkboard Text Vector appeared first on Vectips.



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How to – Create a Location Pin Icon

Welcome back to another Illustrator based tutorial, in which we’re going to learn how to create a location pin icon, using nothing more than a couple of basic shapes that we’re going to adjust here and there. So, assuming you already have the software running in the background, bring it up and let’s jump straight […]

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How To Create A Retro Sunburst Vector In 10 Minutes or Less!

In today’s tutorial, we will find out how to create vector sunbursts by using Transform effect and stroked paths. The techniques described here allow you to edit previously-created sunbursts that can result in an infinite number of variations. Have fun learning in our vector tutorial! Tutorial Details Program: Adobe Illustrator CS5 – CC Difficulty: Beginner […]

The post How To Create A Retro Sunburst Vector In 10 Minutes or Less! appeared first on Vectips.




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How to Create a Wood Block Printing Text Effect

Let’s go old school with recreating a time honored printing technique in Adobe Illustrator. With a modified photo texture, we’ll quickly edit any text to look like a wood block printing text effect, ready for whatever your digital needs may be! Tutorial Details: Wood Block Printing Text Effect Program: Adobe Illustrator CS6 – CC 2015 […]

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How to – Create a Pair of Reading Glasses Icon

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