Hello..
About how to beat Moore’s Law and about Energy efficiency..
I am a white arab and i am an inventor of many scalable algorithms and algorithms, and now i will talk about: "How to beat Moore’s Law ?" and more about: "Energy efficiency"..
How to beat Moore’s Law ?
I think with the following discovery, Graphene can finally be used in
CPUs, and it is a scale out method, read about the following discovery
and you will notice it:
New Graphene Discovery Could Finally Punch the Gas Pedal, Drive Faster CPUs
Read more here:
https://www.extremetech.com/computing/267695-new-graphene-discovery-could-finally-punch-the-gas-pedal-drive-faster-cpus
The scale out method above with Graphene is very interesting, and here
is the other scale up method with multicores and parallelism:
Beating Moore’s Law: Scaling Performance for Another Half-Century
Read more here:
https://www.infoworld.com/article/3287025/beating-moore-s-law-scaling-performance-for-another-half-century.html
Also read the following:
"Also Modern programing environments contribute to the problem of software bloat by placing ease of development and portable code above speed or memory usage. While this is a sound business model in a commercial environment, it does not make sense where IT resources are constrained. Languages such as Java, C-Sharp, and Python have opted for code portability and software development speed above execution speed and memory usage, while modern data storage and transfer standards such as XML and JSON place flexibility and readability above efficiency.
The Army can gain significant performance improvements with existing hardware by treating software and operating system efficiency as a key performance parameter with measurable criteria for CPU load and memory footprint. The Army should lead by making software efficiency a priority for the applications it develops. Capability Maturity Model Integration (CMMI) version 1.3 for development processes should be adopted across Army organizations, with automated code analysis and profiling being integrated into development. Additionally, the Army should shape the operating system market by leveraging its buying power to demand a secure, robust, and efficient operating system for devices. These metrics should be implemented as part of the Common Operating Environment (COE)."
And about improved Algorithms:
Hardware improvements mean little if software cannot effectively use the resources available to it. The Army should shape future software algorithms by funding basic research on improved software algorithms to meet its specific needs. The Army should also search for new algorithms and techniques which can be applied to meet specific needs and develop a learning culture within its software community to disseminate this information."
Read the following:
https://smallwarsjournal.com/jrnl/art/overcoming-death-moores-law-role-software-advances-and-non-semiconductor-technologies
More about Energy efficiency..
You have to be aware that parallelization of the software
can lower power consumption, and here is the formula
that permits you to calculate the power consumption of
"parallel" software programs:
Power consumption of the total cores = (The number of cores) * (
1/(Parallel speedup))^3) * (Power consumption of the single core).
Also read the following about energy efficiency:
Energy efficiency isn’t just a hardware problem. Your programming
language choices can have serious effects on the efficiency of your
energy consumption. We dive deep into what makes a programming language
energy efficient.
As the researchers discovered, the CPU-based energy consumption always
represents the majority of the energy consumed.
What Pereira et. al. found wasn’t entirely surprising: speed does not
always equate energy efficiency. Compiled languages like C, C++, Rust,
and Ada ranked as some of the most energy efficient languages out there,
and Java and FreePascal are also good at Energy efficiency.
Read more here:
https://jaxenter.com/energy-efficient-programming-languages-137264.html
RAM is still expensive and slow, relative to CPUs
And "memory" usage efficiency is important for mobile devices.
So Delphi and FreePascal compilers are also still "useful" for mobile
devices, because Delphi and FreePascal are good if you are considering
time and memory or energy and memory, and the following pascal benchmark
was done with FreePascal, and the benchmark shows that C, Go and Pascal
do rather better if you’re considering languages based on time and
memory or energy and memory.
Read again here to notice it:
https://jaxenter.com/energy-efficient-programming-languages-137264.html
Thank you,
Amine Moulay Ramdane.