I built a scenario for a hybrid machine learning infrastructure, leveraging Apache Kafka as a scalable central nervous system. The public cloud is used for training analytic models at an extreme scale (e.g. using TensorFlow and TPUs on Google Cloud Platform (GCP) via Google ML Engine. The predictions (i.e. model inference) are executed on-premise at the edge in a local Kafka infrastructure (e.g. leveraging Kafka Streams or KSQL for streaming analytics). This post focuses on the on-premise deployment. I created a Github project with a KSQL UDF for sensor analytics. It leverages the new API features of KSQL to build UDF/UDAF functions easily with Java to do continuous stream processing on incoming events.
I guess you came to this post by searching similar kind of issues in any of the search engine and hope that this resolved your problem. If you find this tips useful, just drop a line below and share the link to others and who knows they might find it useful too.
Stay tuned to my blog, twitter or facebook to read more articles, tutorials, news, tips & tricks on various technology fields. Also Subscribe to our Newsletter with your Email ID to keep you updated on latest posts. We will send newsletter to your registered email address. We will not share your email address to anybody as we respect privacy.
Stay tuned to my blog, twitter or facebook to read more articles, tutorials, news, tips & tricks on various technology fields. Also Subscribe to our Newsletter with your Email ID to keep you updated on latest posts. We will send newsletter to your registered email address. We will not share your email address to anybody as we respect privacy.
This article is related to
iot,machine learning,hybrid cloud,mqtt,apache kafka,proxy,sensor,connected cars,udf,ksql
iot,machine learning,hybrid cloud,mqtt,apache kafka,proxy,sensor,connected cars,udf,ksql
No comments:
Post a Comment