0 ratings
Getting Started with Streamlit for Data Science: Create and deploy Streamlit web applications from scratch in Python
Create and deploy Streamlit web applications from scratch in Python
Getting Started with Streamlit for Data Science: Create and deploy Streamlit web applications from scratch in Python
제품번호 #: 39044117

Getting Started with Streamlit for Data Science: Create and deploy Streamlit web applications from scratch in Python

제품번호 #: 39044117

KRW 49449

Price Details

Excluding Shipping & Custom charges ( Shipping and custom charges will be calculated on checkout )

*All items will import from 미국

0 ratings 리뷰 작성
재고
미국 USA 스토어에서 가져옴
지금 주문하시면 도착 예정일 수요일, 7월 15
Our Top Logistics Partners
  • fedex
  • dhl
Create and deploy Streamlit web applications from scratch in Python
U-Care 보증:
없음
요금제 선택
fast shipping

Fast
Shipping

free return

Free
Return*

secure packaging

Secure Packaging

100% original products

100% Original Products

pci-dss

PCI DSS Compliance

iso certified

ISO 27001 Certified


paypal payment
visa payment
mastercard payment
bank transfer payment
l. pay payment
culture voucher payment
cashbee payment
toss pay payment
kakao pay payment
lg pay payment
samsung pay payment
credit cards korea payment
happy money payment
teencash payment
t-money payment
book gift voucher payment
egg money payment
mobiamo payment
payco payment
Note: Step Down Voltage Transformer required for using electronics products of 미국 store (110-120). Recommended power converters 지금 구매.

What Stands Out

User-Friendly Framework
Streamlit simplifies the creation of interactive web apps, making it accessible for data scientists with minimal web development experience, thus enhancing productivity and ease of deployment.
Rapid Prototyping
This product facilitates quick iteration of data apps, enabling users to visualize and share insights faster than traditional methods, which accelerates the data science workflow.
Comprehensive Documentation
Getting Started with Streamlit offers extensive guides and examples, empowering users to fully leverage Streamlit’s capabilities while minimizing the learning curve, making it ideal for both beginners and experienced developers.

제품 세부 정보

Get started with Streamlit for data science. Learn how to create and deploy web applications from scratch in Python. Shop now at Ubuy South Korea KW.
Item Weight1.2 lbs (540 grams)

Who Should Buy?

Suitable For
  • Aspiring Data Scientists

    Ideal for beginners looking to learn how to build web applications using Python for data visualization.

  • Data Analysts

    Perfect for professionals who want to present data insights interactively without deep web development knowledge.

  • Educators and Trainers

    Useful for instructors aiming to create engaging, interactive teaching materials that visualize complex data concepts.

Not Suitable For
  • Advanced Developers

    Not suitable for experienced developers seeking in-depth technical insights or advanced customization options in web development.

  • Non-Technical Users

    Users with no programming knowledge may struggle with understanding Python and web application development concepts.

  • Large Scale Applications

    Not intended for building complex, enterprise-level applications requiring extensive features beyond simple data visualization.

제품 설명

Getting Started with Streamlit for Data Science: Create and deploy Streamlit web applications from scratch in Python

질문이 있으십니까? 채팅하기

고객 질문 및 답변

  • 의문: What is Streamlit and why is it used in data science?

    답변: Streamlit is an open-source app framework specifically designed for machine learning and data science projects. It allows users to create interactive web applications using only Python, making it accessible for developers and data scientists who may not have extensive web development experience. Streamlit transforms scripts into shareable web apps with minimal effort, allowing for real-time data visualization. For instance, a data scientist can display interactive dashboards that auto-update based on changing datasets, enhancing stakeholder engagement and decision-making.
  • 의문: How can I install Streamlit for my Python projects?

    답변: To install Streamlit, you can use pip, the Python package manager. Simply open your command line and execute 'pip install streamlit'. Ensure you have Python installed on your machine, as Streamlit requires it to operate. After installation, you can start a new project by creating a Python file and running 'streamlit run [your_file_name].py'. This is particularly useful for launching quick prototypes or visualizations without needing a comprehensive web development setup.
  • 의문: What are the main features of Streamlit?

    답변: Streamlit boasts several key features, including easy integration with popular data science libraries like Pandas and NumPy, automatic front-end generation, and interactive widgets, such as sliders and buttons. These features empower users to create dynamic and responsive applications that can evolve based on user input. For example, you can create a machine learning model training app where users adjust parameters and instantly see the impacts on model performance in real-time.
  • 의문: Can I deploy my Streamlit applications?

    답변: Yes, Streamlit applications can be deployed in several environments, including Streamlit Sharing, AWS, and Heroku. Streamlit Sharing is a user-friendly option for rapidly deploying applications without extensive infrastructure management. Once deployed, teams can collaboratively access the app, making it an ideal choice for ongoing projects and presentations. For example, a data team can share their analytics app with stakeholders, allowing them to explore insights directly from their web browsers.
  • 의문: Is Streamlit compatible with other data visualization libraries?

    답변: Absolutely! Streamlit works seamlessly with various data visualization libraries, including Matplotlib, Seaborn, Plotly, and Altair. You can combine these libraries to enhance your application’s visual appeal and functionality. For instance, you may use Plotly for interactive graphs and Matplotlib for static images, which can both be displayed in one app to cater to different analysis needs, adding depth to your data storytelling.
  • 의문: What types of projects are ideal for Streamlit?

    답변: Streamlit is perfect for a wide range of projects, particularly those involving data visualization, machine learning model deployment, and data exploration. It's particularly useful for creating dashboards, data analytics applications, or even simple prototypes to test concepts. For example, a financial analyst might use Streamlit to develop a real-time stock market analysis tool that updates as new data comes in, allowing stakeholders to make informed decisions quickly.
  • 의문: Does Streamlit require a high level of programming expertise?

    답변: No, Streamlit is designed to be user-friendly and does not require extensive programming skills. Even those with basic Python knowledge can utilize Streamlit effectively. The clear syntax and straightforward API allow newcomers to develop web applications without needing to delve into front-end web technologies like HTML or CSS. For example, a beginner can create a simple data exploration app using just Python knowledge, making it an excellent learning tool.
  • 의문: How does Streamlit handle data privacy?

    답변: Streamlit is designed to run locally initially, meaning your data remains on your machine until you decide to deploy it. When sharing applications, you have full control over which data is included. Streamlit also allows you to configure how user input is handled, ensuring that sensitive information can be managed securely. For instance, many organizations can develop internal tools using Streamlit without exposing critical data to unauthorized users.
  • 의문: What are some best practices when using Streamlit?

    답변: Best practices for using Streamlit include keeping your code clean and modular, utilizing caching to boost performance, and deploying only necessary data and visualizations. Additionally, leveraging Streamlit's capability for layout customization can improve user experience significantly. For example, segmenting complex applications into tabs or sections can help users navigate data more effectively, ensuring clarity and engagement while exploring the app.
  • 의문: Where can I buy Getting Started with Streamlit for Data Science in South Korea?

    답변: You can purchase 'Getting Started with Streamlit for Data Science: Create and Deploy Streamlit Web Applications from Scratch in Python' from Ubuy in South Korea. Ubuy provides a convenient platform to obtain this book, enabling you to kick-start your journey into building interactive applications with Streamlit and enhancing your data science skills.

Expert Systems Editorial Review

"Getting Started with Streamlit for Data Science" is a comprehensive and easy-to-follow guide for anyone looking to create and deploy Streamlit web applications from scratch using Python. The book offers clear explanations of complex concepts and allows readers to quickly start developing their own impressive apps. One of the standout features of this book is its ability to cater to both beginners and experienced Streamlit users. The author provides detailed explanations of the code, making it accessible even for those with limited technical knowledge. At the same time, the book offers valuable insights and techniques for more advanced users to create sophisticated apps with state, themes, and layout. Readers who already have experience working with Streamlit will also find value in this book. The author introduces new concepts and techniques that enhance the overall understanding and usage of Streamlit, making it a great resource for learners of all levels. Overall, "Getting Started with Streamlit for Data Science" is a perfect guide for anyone looking to explore the capabilities of Streamlit and create powerful web applications. With its clear explanations, insightful tips, and useful examples, this book is a must-read for both beginners and experienced users.

Customer Reviews & Ratings

5.0
1 고객 평가
  • 5 점
    100%
  • 4 점
    0%
  • 3 점
    0%
  • 2 점
    0%
  • 1 점
    0%

이 제품 리뷰하기

다른 고객들과 의견을 공유하세요.

장점

  • Easy-to-follow explanations, suitable for beginners
  • Covers a wide range of topics, including state and themes
  • Valuable for both beginners and experienced Streamlit users
  • Provides useful examples for hands-on learning

단점

  • No mention of potential challenges or limitations of Streamlit

Platform Trust & Buyer Confidence

trustpilot logo
4.3/5 9,000 + reviews
Read reviews
MT
Mohd
Verified buyer

“The product received very good packaging & safe…Thank You”

16 June 2026 · via Trustpilot
SJ
Shawati
Verified buyer

“Accurate delivery timing given”

16 June 2026 · via Trustpilot
YB
Youcef
Verified buyer

“Not madly expensive like I thought, and much quicker than promised.”

15 June 2026 · via Trustpilot
LM
Leila
Verified buyer

“Never dealt with Ubuy before, but everything worked out great. Seamless cross border purchasing and shipping. Thanks!”

6/7/2026 · via Trustpilot
KA
Kwame
Verified buyer

“The process was smooth, with clear communication and timelines. This was my 1st purchase and I am really impressed. I will definitely be coming back.”

12 June 2026 · via Trustpilot
보안 결제 Global Delivery Easy Returns Genuine Products

Product Price History

중요 정보

  • 제한 사항: 국제 배송되는 제품의 경우 제조업체 보증이 유효하지 않을 수 있으며, 제조업체 서비스 옵션을 사용하지 못하거나 제품 설명서, 지침 및 안전 경고가 대상 국가 언어로 표시되지 않을 수 있으며, 제품(및 첨부 자료)은 도착 국가 표준, 사양 및 라벨링 요구 사항에 따라 설계되지 않을 수 있으며, 제품은 목적지 국가 전압 및 기타 전기 표준을 준수하지 않을 수 있습니다(가능한 경우 어댑터 또는 변환기 사용 필요). 수령인은 제품을 도착 국가로 합법적으로 수입할 수 있는지 확인할 책임이 있습니다. Ubuy 또는 그 제휴사에서 주문할 때, 수령인은 기록 수입자로서 도착 국가의 모든 법률과 규정을 준수해야 합니다.
  • Ubuy는 글로벌 검색 엔진이므로 Ubuy에 나열된 모든 제품이 판매용은 아닙니다. 제품은 수출/무역 규정을 따릅니다.