IniciGrupsConversesMésTendències
Cerca al lloc
Aquest lloc utilitza galetes per a oferir els nostres serveis, millorar el desenvolupament, per a anàlisis i (si no has iniciat la sessió) per a publicitat. Utilitzant LibraryThing acceptes que has llegit i entès els nostres Termes de servei i política de privacitat. L'ús que facis del lloc i dels seus serveis està subjecte a aquestes polítiques i termes.

Resultats de Google Books

Clica una miniatura per anar a Google Books.

Data Science from Scratch: First Principles…
S'està carregant…

Data Science from Scratch: First Principles with Python (edició 2015)

de Joel Grus (Autor)

MembresRessenyesPopularitatValoració mitjanaConverses
279594,853 (3.86)Cap
Data science libraries, frameworks, modules, and toolkits are great for doing data science, but they're also a good way to dive into the discipline without actually understanding data science. In this book, you'll learn how many of the most fundamental data science tools and algorithms work by implementing them from scratch. If you have an aptitude for mathematics and some programming skills, author Joel Grus will help you get comfortable with the math and statistics at the core of data science, and with hacking skills you need to get started as a data scientist. Today's messy glut of data h… (més)
Membre:allenclong
Títol:Data Science from Scratch: First Principles with Python
Autors:Joel Grus (Autor)
Informació:O'Reilly Media (2015), Edition: 1, 330 pages
Col·leccions:La teva biblioteca, Data & Analytics
Valoració:
Etiquetes:Cap

Informació de l'obra

Data Science from Scratch: First Principles with Python de Joel Grus

  1. 00
    Doing Data Science: Straight Talk from the Frontline de Cathy O'Neil (ccatalfo)
    ccatalfo: In a similar vein this book talks about the practice of data science from a down to earth perspective that newcomers to the field will feel welcomed by.
Cap
S'està carregant…

Apunta't a LibraryThing per saber si aquest llibre et pot agradar.

No hi ha cap discussió a Converses sobre aquesta obra.

Es mostren totes 5
I read this prior to beginning an MSc in Data Science and found it to be a great introduction to data science, starting out with the very basics before moving into more general ML techniques and finishing up with some of the more complex topics such as MapReduce. Not an in-depth textbook by any means, but I do not think that is the purpose of this book, moreover to give the reader a well-rounded idea of the field. ( )
  tompinder | Jan 5, 2024 |
This is a very basic into topics in statistics and machine learning built around functioning code to perform (some of!) the tasks and algorithms discussed.

As an introduction it seemed very solid. I was looking for something a little more in depth, so this was not really the book I was looking for. What am I looking for? Something that bridges between a working knowledge of e.g. some methods in scikit learn to e.g. coding those methods, from scratch. Gradient descent and PCA are covered, but the book stops precisely at 'more interesting'/complex methods e.g. ridge regression/Lasso, and never even touches on e.g. ICA.

So, 3-ish stars for me. Maybe 4 stars if you are getting your feet wet for the first time. ( )
  dcunning11235 | Aug 12, 2023 |
Great summary overview of both Python and statistical concepts and techniques. ( )
  deldevries | Feb 6, 2023 |
As bibliotecas, estruturas, módulos e kits de ferramentas do data science são ótimas para desempenhá-lo mas, também, são uma ótima forma de mergulhar na disciplina sem ter, de fato, que entender data science. Neste livro, você aprenderá como os algoritmos e as ferramentas mais essenciais de data science funcionam ao implementá-los do zero.Se você tiver aptidão para matemática e alguma habilidade para programação, o autor Joel Grus lhe ajudará a se sentir confortável com matemática e estatística nos fundamentos de data science. Você precisará iniciar como um cientista de dados com habilidades de hackers. Atualmente, a grande massa de dados contém respostas para perguntas que ninguém nunca pensou em perguntar. Este guia fornece o conhecimento para desenterrar tais respostas.Obtenha um curso intensivo em Python;Aprenda o básico de álgebra linear, estatística e probabilidade ― e entenda como e quando eles são usados em data science;Colete, explore, limpe, mude e manipule dados;Vá fundo nos princípios do aprendizado de máquina;Implemente modelos como k-vizinhos mais próximos, Naive Bayes, regressão logística e linear, árvores de decisão, redes neurais e agrupamentos;Explore sistemas recomendados, processamento de linguagem natural, análise de rede, MapReduce e bases de dados. DEPOIMENTO:“Joel lhe leva em uma jornada desde a curiosidade sobre dados até a completa compreensão de algoritmos que todo cientista de dados deveria ter.”―Rohit Sivaprasad, Cientista de Dados na Soylent
  JefersonMello | Jun 1, 2021 |
Ambitious, but uneven, made me think of the 'how to draw an owl' meme at part. The most interesting aspect might have been the author's functional Python. The "For Further Exploration" sections have some really interesting links. ( )
  encephalical | Feb 9, 2017 |
Es mostren totes 5
Sense ressenyes | afegeix-hi una ressenya
Has d'iniciar sessió per poder modificar les dades del coneixement compartit.
Si et cal més ajuda, mira la pàgina d'ajuda del coneixement compartit.
Títol normalitzat
Títol original
Títols alternatius
Data original de publicació
Gent/Personatges
Llocs importants
Esdeveniments importants
Pel·lícules relacionades
Epígraf
Dedicatòria
Primeres paraules
Citacions
Darreres paraules
Nota de desambiguació
Editor de l'editorial
Creadors de notes promocionals a la coberta
Llengua original
CDD/SMD canònics
LCC canònic

Referències a aquesta obra en fonts externes.

Wikipedia en anglès (1)

Data science libraries, frameworks, modules, and toolkits are great for doing data science, but they're also a good way to dive into the discipline without actually understanding data science. In this book, you'll learn how many of the most fundamental data science tools and algorithms work by implementing them from scratch. If you have an aptitude for mathematics and some programming skills, author Joel Grus will help you get comfortable with the math and statistics at the core of data science, and with hacking skills you need to get started as a data scientist. Today's messy glut of data h

No s'han trobat descripcions de biblioteca.

Descripció del llibre
Sumari haiku

Debats actuals

Cap

Cobertes populars

Dreceres

Valoració

Mitjana: (3.86)
0.5
1
1.5
2 2
2.5
3 4
3.5 1
4 9
4.5 1
5 5

Ets tu?

Fes-te Autor del LibraryThing.

 

Quant a | Contacte | LibraryThing.com | Privadesa/Condicions | Ajuda/PMF | Blog | Botiga | APIs | TinyCat | Biblioteques llegades | Crítics Matiners | Coneixement comú | 204,727,478 llibres! | Barra superior: Sempre visible