Big Data and Analytics News & Reviews - Page 46
More Big Data and Analytics News
Amazon's AWS Lambda is the biggest and best-known example of serverless computing, whose days ahead are enticing to more than a few IT managers.
The most important big data trend in 2018 will involve greater integration with artificial intelligence (AI), data science and machine learning, but metadata management and global data fabrics will also play a key role.
Experts believe we might see things like machine-learning-assisted storage and de-archiving becoming commonplace during the coming calendar year.
The same machine learning technology powering many of Google's apps and services finds a new use helping astrophysicists find new planets orbiting distant stars.
Enterprises are beginning to realize that cloud, artificial intelligence and DevOps are not a threat to security, but are in fact the best way to reduce risk. DevSecOps will become a hot new "thing."
Heap automatically captures, validates and connects all types of customer data, giving companies in various sectors the ability to discover meaningful customer insights in order to drive better business decisions.
Chris Preimesberger
|
Updated
This is one of the most fun and interesting #eWEEKchats of the year, offering an opportunity to predict the IT future for 2018.
DT may be a cliche, but there's no getting around the fact that the term is very relevant. Enterprises are indeed rethinking and re-tooling their IT systems, because they have to do so.
Company claims that this is the first object storage package to combine a full enterprise-class NAS feature set and scale-out performance--all inside the data center.
After gaining support from other IT heavyweights, including AWS, the ONNX AI framework interoperability format is ready to get to work.
The new version of Virtual Instruments infrastructure performance monitoring and analytics platform may signal the beginning of an app-centric IPM era.
German company gets help for data ingestion, cleansing and preparation to allow its data science team to more efficiently spend its time on generating insights and analytics rather than formatting tables.