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Arduino, Raspberry Pi Ou FPGA?
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Arduino, Raspberry Pi Ou FPGA?
1.
Arduino, Raspberry Pi
ou FPGA?
2.
Pedro Henrique (@phinfonet)
Software Developer at 203 pixels Computer Engineering Student http://github.com/ phinfonet
3.
Micro controlador AVR
Aceita programas de até 32KB Programação em C/C++ ou Assembly
4.
Uso intenso de
I/O Automação
5.
Micro Processador ARM
Open Hardware Resolução de tarefas computacionais
6.
Consegue rodar sistemas
operacionais completos Suporte a diversas linguagens de programação Tamanho reduzido
7.
FPGA Field Programmable
Gate Array Flip-flops Prototipagem de circuitos elétricos Programado em VHDL
8.
FPGA Simula Diversas
Arquiteturas de processador (AVR,ARM,INTEL,POWER PC,ETC…) Computação de alto desempenho Baixo consumo de energia Paralelismo
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