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Jun 5, 2020 - Python
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Jun 7, 2020 - JavaScript
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Jun 7, 2020 - JavaScript
Capture the Flag
May 06, 2020 - June 12, 2020 • Online
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Jun 7, 2020 - C++
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Jun 7, 2020 - Dockerfile
Pixel Art Tools
Creating pixel art for fun or animated sprites for a game? The digital artist in you will love these apps and tools!
Sider
Sider checks code using custom rules based on project specific knowledge and cumulative team experiences. On each pull request, Sider automatically alerts developers on previously documented issues and key information relevant to the changed code.
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Jun 5, 2020 - Java
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Jun 7, 2020 - Python
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May 29, 2020 - Java
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Contributing.md doesn't doesn't appear to contain any actual guidlines, and the link only leads back to the same document: Java/CONTRIBUTING.md.
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I think "outputs [-1]" and "outputs [0]" are equivalent (reversed) in this line of code, but the former (89%) works better than the latter (86%). Why?
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Apr 29, 2020 - Jupyter Notebook
There are some interesting algorithms in simulation from Physics, Chemistry, and Engineering especially regarding Monte Carlo simulation: Heat Bath algorithm, Metro-Police algorithm, Markov Chain Monte Carlo, etc.
Skill Set Challenge!
Hudson & Thames has provided the following skillset challenge to allow potential researchers to gauge if they have the required skil
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Jun 7, 2020 - Python
CodeScene
CodeScene identifies and prioritizes technical debt based on how the organization works with the code.
- Prioritize development hotspots and get a Code Health measure on the hotspots.
- Integrates with GitHub checks to supervise hotspots in pull requests.
- Explore the efficiency of your organization with respect to Conway’s Law.
- Detect sub-systems with low team autonomy that become productivity bottlenecks.
- Measure the off-boarding risk when a key developer leaves the project.

Right now, the integration test use the movie dataset. This is an issue because this dataset is unnessecarily big for testing purpose and thus drastically slows down running the test suite. I suggest we use a smaller dataset (< 100 entries) to improve our CI time.