Cortical.io
- Title
- cortical.io
- Meta Description
- cortical.io's approach is inspired by the latest findings on the way the human cortex works. Our technology, the Cortical Engine for Processing Text, breaks with traditional methods based on pure word count statistics or linguistic rule engines. Its central component, cortical.io's Retina, encodes words in the same way as sensorial information is fed into the brain, using a SDR (sparse-distributed representation). While traditional systems are based on counting words, cortical.io's Retina uses a substantially finer-grained representation for every word: 16,000 semantic features are captured for every term. The Retina then generates semantic fingerprints of language elements like words, sentences, or whole documents. These semantic fingerprints help to identify the meaning behind natural language and allow direct computational comparison between any pieces of text.
- Meta Keywords
- The Cortical Engine for Processing Text,semantics,Natural Language Processing,Semantic Fingerprint,Language intelligence,Retina API,CEPT API,CEPT Systems,Keyword extraction,Keyword generation,Word disambiguation,Enterprise search,document classification,semantic processing,social media filter,SaaS,Text analytics,Artificial intelligence,Machine Learning,Neurocomputing,Computational neuroscience,Big Data,Cognitive Computing,Deep Learning,Neural Networks,Predictive analytics,Numenta,Sparse Distributed Representations,Hierarchical Temporary Memory,Cortical Learning Algorithms
Server | GitHub.com |
Content-Type | text/html; charset=u |
Last-Modified | Wed, 04 Nov 2015 07: |
Access-Control-Allow-Origin | * |
Expires | Wed, 04 Nov 2015 14: |
Cache-Control | max-age=600 |
Content-Encoding | gzip |
X-GitHub-Request-Id | 17EB2716:592C:9BC8A3 |
Accept-Ranges | bytes |
Via | 1.1 varnish |
Age | 0 |
Connection | keep-alive |
X-Served-By | cache-atl6225-ATL |
X-Cache | MISS |
X-Cache-Hits | 0 |
X-Timer | S1446645808.565529,V |
Vary | Accept-Encoding |
X-Fastly-Request-ID | 2ea47e203cb6757d62f1 |