CHALEARN
ChaLearn is a non-profit organization with comprehensive experience organizing academic challenges. ChaLearn is interested in all aspects of challenge organization, including data gathering procedures, evaluation protocols, and novel challenges scenarios.
CHALEARN
Social Links:
Industry:
Computer Non Profit
Address:
Berkeley, California, United States
Country:
United States
Website Url:
http://www.chalearn.org
Total Employee:
11+
Status:
Active
Contact:
+1 510 524 6211
Email Addresses:
[email protected]
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Official Site Inspections
http://www.chalearn.org
- Host name: pages-custom-16.weebly.com
- IP address: 199.34.228.100
- Location: San Francisco United States
- Latitude: 37.7642
- Longitude: -122.3993
- Metro Code: 807
- Timezone: America/Los_Angeles
- Postal: 94107
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