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Java, Go, and Node.js On-premises data centers invest in higher capacity servers since they provide more flexibility in the long run, while the procurement price of hardware is only one of many cost factors. Java, Go, and Node.js Java Virtual Machine (JVM)-based languages are predominant.
Our audience is particularly strong in the software (20% of respondents), computer hardware (4%), and computer security (2%) industries—over 25% of the total. The most widely used and popular languages, like Python ($150,000), SQL ($144,000), Java ($155,000), and JavaScript ($146,000), were solidly in the middle of the salary range.
The technique is called data-parallel computing , and many IMDGs (like ScaleOut StateServer Pro ®) provide APIs that make it easy to use in languages like Java, C#, and C++. This would enable the application to avoid bottlenecks and harness the IMDG’s scalable computing power to boost performance.
The technique is called data-parallel computing , and many IMDGs (like ScaleOut ComputeServer ®) provide APIs that make it easy to use in languages like Java, C#, and C++. This would enable the application to avoid bottlenecks and harness the IMDG’s scalable computing power to boost performance.
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