- Pagina inicial /
- Livros /
- Computadores e Tecnologia /
- Programming /
- Software Design, Testing & Engineering /
- Structured Design /
- Graph Data Science with Python and Neo4j: Han...
Graph Data Science with Python and Neo4j: Hands-on Projects on Python and Neo4j Integration for Data Visualization and Analysis Using Graph Data ...
MZN 2486
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from EUA
QTY:
A Ubuy trabalha arduamente para proteger a sua segurança e privacidade. O nosso sistema avançado de segurança de pagamentos garante a confidencialidade ao encriptar as suas informações durante a transmissão, utilizando os protocolos AES (Normas de Encriptação Avançada) e SSL (Camada de Sockets Seguros). Os seus dados de pagamento estão 100% seguros, pois não partilhamos os seus dados de pagamento com vendedores terceiros.
Unlock new, actionable insights from your data with Graph Data Science with Python and Neo4j.
Fast
Shipping
Devolução
gratuita*
Embalagem Segura
Produtos 100% Originais
Certificação PCI DSS
Certificação ISO 27001
O que se Destaca
Detalhes do produto
| Item Weight | 1 lbs (450 grams) |
Quem Deverá Comprar?
-
Data Scientists
Ideal for data scientists looking to enhance skills in graph data analysis using Python and Neo4j.
-
Data Analysts
Beneficial for analysts wishing to visualize and manipulate complex datasets with graph structures.
-
Developers
Great for developers interested in integrating graph databases into applications for data-rich environments.
-
Beginners
Not suitable for beginners without prior knowledge of Python or database management concepts.
-
Non-Technical Users
May not benefit non-technical users who lack experience in programming or data science principles.
-
Casual Learners
Not ideal for individuals seeking light, introductory content rather than hands-on, project-based learning.
DESCRIÇÃO DO PRODUTO
Graph Data Science with Python and Neo4j: Hands-on Projects on Python and Neo4j Integration for Data Visualization and Analysis Using Graph Data ... (Graph & Big Data Analytics Applied Path)
Perguntas e Respostas dos Clientes
-
pergunta:
What is the main focus of the book 'Graph Data Science with Python and Neo4j'?
Resposta: The primary focus of this book is to teach readers how to integrate Python with Neo4j for data visualization and analysis specifically within the realm of graph data science. By engaging with hands-on projects, readers can grasp complex concepts through practical applications. This approach not only enhances understanding but also gives you the skills to implement graph algorithms and create visualizations that reveal insightful patterns in your data. -
pergunta:
Who is the target audience for this book?
Resposta: This book is designed for data scientists, software developers, students, and analytics professionals interested in leveraging graph databases and data science techniques. It caters to individuals with a basic understanding of Python and statistics and offers a structured approach to applying these skills in real-world scenarios. By focusing on hands-on projects, the book helps bridge the gap between theory and practice, making it ideal for anyone looking to deepen their knowledge in graph data science. -
pergunta:
What programming skills do I need to start this book?
Resposta: To effectively engage with 'Graph Data Science with Python and Neo4j', you should have a foundational understanding of Python programming. Familiarity with basic data manipulation and visualization using libraries such as Pandas and Matplotlib is also beneficial. These skills will allow you to fully participate in the hands-on projects found within the book. As you progress, you will also learn how to utilize Neo4j's query language, Cypher, expanding your skill set even further. -
pergunta:
What types of projects can I expect to work on?
Resposta: The book includes a range of hands-on projects that cover various applications of graph data science. These may include social network analysis, recommendation systems, fraud detection, and more. Each project is designed to provide a practical context for applying the theoretical concepts discussed in the text. By working through these projects, you’ll gain valuable experience in using graph databases for real-world data challenges. -
pergunta:
How does this book integrate Python and Neo4j?
Resposta: The integration of Python and Neo4j in this book is facilitated through detailed examples and practical exercises that demonstrate how to use the Neo4j Python Driver in data science projects. You will learn how to leverage Python for data manipulation, visualization, and running queries in Neo4j. This seamless integration allows you to build powerful applications that can analyze and visualize complex data sets effectively. -
pergunta:
Does this book cover data visualization techniques?
Resposta: Yes, the book thoroughly covers data visualization techniques tailored for graph data. Through hands-on projects, you’ll learn to create visual representations of graph data, helping you to uncover insights that traditional tabular data formats may obscure. By understanding how to visualize data effectively, you will enhance your storytelling capabilities, allowing stakeholders to grasp complex data relationships at a glance. -
pergunta:
Can this book help in preparing for data science interviews?
Resposta: Absolutely! 'Graph Data Science with Python and Neo4j' equips you with practical, hands-on experience that can enhance your resume and interview preparation for data science roles. Familiarity with graph databases and the ability to analyze complex datasets are increasingly sought-after skills. By working through the projects, you will build a portfolio of tangible work that demonstrates your problem-solving skills in data science, which is valuable during an interview. -
pergunta:
What prerequisites should I have before starting this book?
Resposta: Before diving into 'Graph Data Science with Python and Neo4j', you should have a basic understanding of Python programming, some familiarity with data analysis concepts, and an interest in graph theory. While the book starts with introductory content, having these skills will help you follow along more comfortably. Additionally, understanding statistical basics can enhance your ability to interpret data insights as you progress through the topics. -
pergunta:
What makes this book different from other data science books?
Resposta: The distinct feature of 'Graph Data Science with Python and Neo4j' is its specific focus on graph data science, an area that many data science books overlook. The combination of practical projects, theoretical discussions, and the integration of two powerful tools—Python and Neo4j—provides a unique learning experience. This specialization allows readers to explore graph databases in-depth, making it a valuable resource for those specifically interested in this field. -
pergunta:
Where can I buy 'Graph Data Science with Python and Neo4j'?
Resposta: You can purchase 'Graph Data Science with Python and Neo4j: Hands-on Projects on Python and Neo4j Integration for Data Visualization and Analysis Using Graph Data ...' from Ubuy in Mozambique. Ubuy offers a variety of options for obtaining this book, making it easier for customers in Mozambique to access valuable resources for their learning and professional development. Explore Ubuy’s platform for additional details and purchasing options.
Structured Design Editorial Review
Avaliações e Classificações dos Clientes
-
5 Estrela
0%
-
4 Estrela
100%
-
3 Estrela
0%
-
2 Estrela
0%
-
1 Estrela
0%
Avaliar este produto
Partilhe as suas ideias com outros clientes
Histórico de preços do produto
Informação importante
- Limitações: para produtos expedidos internacionalmente, tenha em atenção que qualquer garantia do fabricante pode não ser válida; opções de serviço do fabricante podem não estar disponíveis; manuais de produtos, instruções e avisos de segurança podem não estar nas línguas do país de destino; os produtos (e materiais que o acompanham) pode não ter sido concebido em conformidade com as normas, especificações e requisitos de rotulagem do país de destino; e os produtos podem não estar em conformidade com a voltagem e outras normas elétricas do país de destino (requerendo assim o uso de um adaptador ou conversor caso seja apropriado). O destinatário é responsável por garantir que o produto pode ser legalmente importado para o país de destino. Quando encomenda à Ubuy ou aos seus afiliados, o destinatário é o importador de registo e deve estar em conformidade com todas as leis e regulamentos do país de destino.
- Nem todos os produtos listados na Ubuy estão à venda, uma vez que a Ubuy é um motor de busca global. Os produtos estão sujeitos a leis de exportação/comércio.
MZN 2486
Encomende já e receba por volta de Quarta-feira, Julho 08
Este artigo não está restrito no meu país. (Clique no link acima se este artigo não estiver restrito no seu país, para que a nossa equipa o analise e permita.)
QTY:
A Ubuy trabalha arduamente para proteger a sua segurança e privacidade. O nosso sistema avançado de segurança de pagamentos garante a confidencialidade ao encriptar as suas informações durante a transmissão, utilizando os protocolos AES (Normas de Encriptação Avançada) e SSL (Camada de Sockets Seguros). Os seus dados de pagamento estão 100% seguros, pois não partilhamos os seus dados de pagamento com vendedores terceiros.
Recursos e benefícios
- Comprehensive guide integrating Python and Neo4j for graph data science.
- Hands-on approach to solving real-world challenges with interconnected data.
- Focus on practical application with detailed explanations and examples.
- Explore advanced analytics and machine learning techniques.
- Utilizes cutting-edge integrations with Large Language Models like ChatGPT.
- Includes access to a dedicated GitHub repository for code examples.