Arquivos do curso online sobre a estatística voltada para ciência de dados e aprendizado de máquina.

Overview

Estatistica para Ciência de Dados e Machine Learning

Arquivos do curso online sobre a estatística voltada para ciência de dados e aprendizado de máquina. Onde armazenarei todos os códigos e testes que fiz durante esse curso.

Espero que com ele eu crie uma base sólida nesse assunto para que eu possa aprofundar cada vez mais. 😋

link do curso aqui

Pelo que vi do curso e do que eu tenho aplicado, eu estou bem contente em entender os tipos de amostragens e como eles são implementados no Python. O curso do Guanabara me deu uma base sólida e que facilita bastante o meu aprendizado. 😁

Quando envolve um código no Python, eu busco entender como funciona cada parte. No meio disso vi que te uma forma melhor do que a de criar um novo arquivo e ir testando. Agora que descobri sobre a anaconda e o debug, irei utilizá-los para entender códigos grandes. E fiquei na cabeça de usar esse "sistema" na parte de machine learning. Será que vai ser útil lá? Veremos. 🤨

Owner
Renan Barbosa
Um programador iniciante de Python estudando Data Science!
Renan Barbosa
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