- ホームページ /
- 書籍 /
- パソコン、テクノロジー /
- Programming /
- Software Design, Testing & Engineering /
- Coding Theory /
- Python for Data Science: A step-by-step Pytho...
Python for Data Science: A step-by-step Python Programming Guide to Master Big Data, Analysis, Machine Learning, and Artificial Intelligence
JPY 3395
Price Details
Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )
*All items will import from アメリカ
QTY:
Ubuyはお客様のセキュリティとプライバシーの保護に努めています。当社の高度な決済セキュリティシステムは、AES(高度暗号化標準)およびSSL(セキュアソケットレイヤー)プロトコルを使用して送信中の情報を暗号化することで機密性を確保しています。お客様の決済情報は第三者の販売者と共有されることはなく、100%安全に保護されています。
This is the book you need to understand and master the fundamentals and importance of data science technologies to kick start your business or take it to the next level.
Fast
Shipping
Free
Return*
安全な梱包
100%本物
PCI DSS 準拠
ISO 27001 保証
この商品の利点
製品詳細
- Step-by-step guide to Python programming for data science
- Covers big data analytics, machine learning, and artificial intelligence
- Explains 12 popular machine learning algorithms in easy-to-understand language
- Provides comprehensive overview of Python functions, methods, and keywords for advanced coding
- Discusses historical development and current trends in big data and data mining
- Filled with real-life examples and names of tools for practical implementation
| Item Weight | 2 lbs (910 grams) |
どんな人にお勧めですか?
-
Beginners in Programming
Ideal for those new to coding, as it simplifies complex Python concepts through guided tutorials and exercises.
-
Data Science Enthusiasts
Perfect for individuals looking to start a career in data science or improve their skill set in data analysis.
-
Machine Learning Learners
Great resource for users wanting to understand and implement machine learning algorithms using Python effectively.
-
Advanced Programmers
Seasoned developers may find the content too basic and not challenging enough for their advanced skill levels.
-
Specialized Data Scientists
Professionals focused on niche areas of data science might not find the broad coverage detailed enough for their needs.
-
Non-Technical Users
Individuals without any technical background may struggle with programming concepts and find the material overwhelming.
製品説明書
Python for Data Science: A step-by-step Python Programming Guide to Master Big Data, Analysis, Machine Learning, and Artificial Intelligence
顧客の質問と回答
-
質問:
What is the focus of the book 'Python for Data Science'?
答え: The book 'Python for Data Science' primarily focuses on teaching readers how to use Python programming for various data science applications, including big data analysis, machine learning, and artificial intelligence. With step-by-step guidance, it walks through essential libraries and frameworks that are integral to performing data analysis and building predictive models. This comprehensive approach empowers users, whether beginners or advanced, to develop practical skills in handling and interpreting complex data sets, making it an ideal resource for both academic and professional growth in the field of data science. -
質問:
Who is this book suitable for?
答え: 'Python for Data Science' is suitable for a diverse range of readers, from beginners embarking on their programming journey to data enthusiasts looking to deepen their understanding of Python. It's especially beneficial for students studying computer science, data science, machine learning, and related fields, as well as industry professionals seeking to enhance their data analytics capabilities. The structured guidance and practical examples provided in the book equip readers with the skills necessary to leverage Python for real-world data science challenges effectively. -
質問:
What are the key topics covered in this guide?
答え: The guide covers a variety of key topics that are essential for mastering data science through Python. These include foundational programming concepts, data manipulation and analysis with libraries like Pandas, visualization techniques using Matplotlib, and machine learning principles through Scikit-learn. Additionally, it explores complex topics such as natural language processing and artificial intelligence applications. This comprehensive coverage ensures that readers can develop a robust understanding of the tools and techniques necessary to succeed in a data-driven world. -
質問:
How does this book help in learning Machine Learning?
答え: 'Python for Data Science' includes dedicated sections that delve into machine learning concepts, providing a clear framework for understanding how algorithms work and how to implement them using Python. Through practical coding examples, readers learn how to preprocess data, train models, and evaluate their performance. By working through these examples, learners can grasp the intricacies of different machine learning methods and their practical applications in real-life scenarios, such as predictive analytics or classification tasks, enabling them to apply these skills in their own projects. -
質問:
Can I use this book alongside other learning resources?
答え: Absolutely! 'Python for Data Science' can be an excellent companion to other learning resources, such as online courses, video tutorials, or interactive coding platforms. It solidifies concepts introduced in those resources and offers a comprehensive text for reference. By cross-referencing the examples and exercises in the book with other platforms, readers can reinforce their understanding and gain practical programming experience, which is crucial in solidifying their data science skills and knowledge. -
質問:
Does this guide provide practical exercises for hands-on learning?
答え: Yes, 'Python for Data Science' includes numerous practical exercises that allow readers to apply what they have learned in real-world contexts. These hands-on activities are designed to challenge users and deepen their understanding of Python in data science. By working through these exercises, readers can enhance their programming skills, become proficient in using data manipulation libraries, and build a portfolio of projects, which can be useful for academic purposes or job applications. -
質問:
Are there any prerequisites to understanding this book's content?
答え: While prior programming knowledge can be beneficial, 'Python for Data Science' is designed to be accessible for beginners. It introduces essential Python programming concepts at the beginning of the book, allowing readers with no experience to gradually build their skills. Those with a basic understanding of programming fundamentals will find it advantageous, but the book is structured to accommodate all learners, focusing on clarity and gradual progression through the material, making it a user-friendly guide. -
質問:
What additional resources complement this guide?
答え: In addition to the content of 'Python for Data Science', readers can benefit from supplementary materials such as Python documentation, online programming communities, and relevant data-related datasets available on platforms like Kaggle. Engaging with these resources enhances the learning experience, allowing readers to practice and apply their newly acquired skills. Furthermore, exploring additional literature in data science, coding forums, and video tutorials can provide broader insights and advanced techniques to build a well-rounded understanding. -
質問:
How important is Python for a career in data science?
答え: Python is crucial for a career in data science due to its versatility, readability, and a vast ecosystem of libraries and frameworks. 'Python for Data Science' equips readers with the know-how to harness Python effectively, enabling them to tackle various data challenges ranging from data cleaning to complex predictive modeling. As businesses increasingly rely on data-driven decision-making, proficiency in Python not only enhances career prospects but also positions professionals at the forefront of innovative solutions in data analytics and artificial intelligence. -
質問:
Where can I buy 'Python for Data Science' in Japan?
答え: You can purchase 'Python for Data Science: A step-by-step Python Programming Guide to Master Big Data, Analysis, Machine Learning, and Artificial Intelligence' through Ubuy in Japan. Ubuy offers a user-friendly platform where you can find this book along with various other educational and programming resources. With Ubuy's expansive selection and efficient service, acquiring this valuable guide for enhancing your data science skills is made convenient.
Coding Theory Editorial Review
Python for Data Science is a great resource for anyone looking to learn Python for data analysis, machine learning, and artificial intelligence. It is written in an easy to follow manner and provides a good understanding of essential concepts required for Python for Data Science. Industry-recognized tools and mathematical concepts that are actually used by data scientists are also covered in the book. The given data is very detailed and includes code to help readers understand how to get the code running.
お客様のレビュー&評価
-
5 星
100%
-
4 星
0%
-
3 星
0%
-
2 星
0%
-
1 星
0%
この商品のレビュー
お考えをお聞かせください
長所
- Easy to follow
- Provides a good understanding of essential concepts
- Covers industry-recognized tools and mathematical concepts
- Detailed explanation with code provided
短所
- Lacks real details of actual implementation with no context examples
Product Price History
重要な情報
- 注意:国際運送の商品に関して、製造会社保障は無効になる可能性、アフターサービスは受けれない可能性、取説や安全情報は発送先の言語になっていない可能性ある。商品とその付属品は配送先の国の規格、仕様、ラベル表示法などに適応していない可能性があります。また、配送先の国の電力企画に適応しいない(アダプタや変換器を必要とする)可能性があります。ご注文の商品は配送先の国に輸入することは合法なのかを確認するのは購入者の責任になります。Ubuyからご購入の際、受け取り者は正式な輸入者となり、配送先の全ての法律やルールに遵守する必要があります。
- Ubuyはグローバル検索エンジンのためリストにある全ての商品が購入できないことがあります。商品は輸出規制、貿易規制があります。
JPY 3395
今すぐ注文すると 頃に届きます Monday, 6月 29
This item is not restrict in my country.(Please click on above link if this item is not restrict in your country, So our team will review and allow.)
QTY:
Ubuyはお客様のセキュリティとプライバシーの保護に努めています。当社の高度な決済セキュリティシステムは、AES(高度暗号化標準)およびSSL(セキュアソケットレイヤー)プロトコルを使用して送信中の情報を暗号化することで機密性を確保しています。お客様の決済情報は第三者の販売者と共有されることはなく、100%安全に保護されています。
特徴と利点
- No background in coding language required
- Learn the nuances of 12 popular machine learning algorithms
- Explicit list of all built-in Python functions, methods, and keywords
- Learn how Python programming is used in development and testing
- Dig deep into big data and data mining process
- Master the Scikit-Learn library