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Title | bayesloop - Probabilistic programming |
Description | features bayesloop is a probabilistic programming framework to facilitate model selection, parameter inference and forecasting with time-varying |
Keywords | N/A |
WebSite | bayesloop.com |
Host IP | 192.30.252.153 |
Location | United States |
Site | Rank |
US$296,286
Last updated: 2023-05-14 20:48:10
bayesloop.com has Semrush global rank of 35,723,285. bayesloop.com has an estimated worth of US$ 296,286, based on its estimated Ads revenue. bayesloop.com receives approximately 34,187 unique visitors each day. Its web server is located in United States, with IP address 192.30.252.153. According to SiteAdvisor, bayesloop.com is safe to visit. |
Purchase/Sale Value | US$296,286 |
Daily Ads Revenue | US$274 |
Monthly Ads Revenue | US$8,205 |
Yearly Ads Revenue | US$98,459 |
Daily Unique Visitors | 2,280 |
Note: All traffic and earnings values are estimates. |
Host | Type | TTL | Data |
bayesloop.com. | A | 299 | IP: 192.30.252.153 |
bayesloop.com. | NS | 300 | NS Record: shades07.rzone.de. |
bayesloop.com. | NS | 300 | NS Record: docks10.rzone.de. |
bayesloop.com. | MX | 300 | MX Record: 5 smtpin.rzone.de. |
Toggle navigation Menu bayesloop APPLICATIONS FEATURES GETTING STARTED bayesloop A probabilistic programming framework that facilitates model selection, parameter inference and forecasting with time-varying parameters. learn more... learn more... learn more... Need help to analyze a particular data set or need a custom extension to bayesloop’s functionality? Contact us! features In contrast to MCMC methods and the Variational Bayes approach, bayesloop uses a discrete, regular grid to represent parameter distributions. Computing the model evidence for hypothesis testing then reduces to a simple sum over all lattice points on this grid! By inferring parameter distributions sequentially, time step by time step, bayesloop effectively breaks down one high-dimensional inference problem into many low-dimensional ones. This efficient approach can be employed for both retrospective and online analyses! bayesloop serves a specific niche of statistical models: We focus on well-known, simple |
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Domain Name: BAYESLOOP.COM Registry Domain ID: 1987233248_DOMAIN_COM-VRSN Registrar WHOIS Server: whois.cronon.net Registrar URL: http://www.cronon.net Updated Date: 2021-12-15T08:24:23Z Creation Date: 2015-12-14T18:25:59Z Registry Expiry Date: 2022-12-14T18:25:59Z Registrar: Cronon AG Registrar IANA ID: 141 Registrar Abuse Contact Email: abuse-domains@cronon.net Registrar Abuse Contact Phone: +4930398020 Domain Status: ok https://icann.org/epp#ok Name Server: DOCKS10.RZONE.DE Name Server: SHADES07.RZONE.DE DNSSEC: unsigned >>> Last update of whois database: 2021-12-27T07:50:53Z <<< |