Highlights from Shiny in Production (2025)

R-bloggersMonday, November 3, 2025 at 11:59:00 PM
Highlights from Shiny in Production (2025)

Highlights from Shiny in Production (2025)

In October 2025, Jumping Rivers hosted the fourth edition of the "Shiny In Production" conference in Newcastle, bringing together speakers from around the world to discuss the application of Shiny technology. The event focused on how Shiny, utilized in both Python and R programming languages, has effectively addressed real-world data challenges. Attendees shared insights and experiences demonstrating Shiny's positive impact in production environments. This conference highlighted the growing importance and versatility of Shiny in data-driven projects. The discussions underscored Shiny's role in enabling more efficient and interactive data analysis and visualization. Overall, the event showcased Shiny's effectiveness as a tool for tackling complex data problems across various industries.

— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended Readings
Master Python Web Scraping with 5 Real-World Projects
PositiveArtificial Intelligence
A new repository has been launched that offers a comprehensive guide to mastering Python web scraping through five real-world projects. This resource is perfect for anyone looking to enhance their skills in data extraction, API interaction, and data visualization. By providing hands-on experience, it empowers learners to tackle practical challenges and improve their programming capabilities, making it a valuable tool for both beginners and advanced users.
Similarities Between a Stored Procedure in SQL and a Function in Python
NeutralArtificial Intelligence
This article explores the similarities between stored procedures in SQL and functions in Python, highlighting how both serve as reusable units of code designed for efficiency. Understanding these parallels is important for developers who work across different programming environments, as it can enhance their ability to modularize and reuse logic effectively.
Production-Grade Python Logging Made Easier with Loguru
PositiveArtificial Intelligence
Loguru is revolutionizing Python logging by simplifying the process of capturing and managing logs in production environments. This is crucial because logs are essential for diagnosing issues when applications fail. Unlike the standard logging module, which requires extensive setup and customization, Loguru streamlines logging, making it more accessible for developers. This improvement not only saves time but also enhances the reliability of applications by ensuring that developers can easily track and understand application behavior.
Automating Blog Posting with Python on Dev.to
PositiveArtificial Intelligence
This article discusses how to automate blog posting on Dev.to using Python and its API. It provides a simple guide to generating an API key, using requests to post content, and enjoying the benefits of automated publishing.
Efficient Solvers for SLOPE in R, Python, Julia, and C++
PositiveArtificial Intelligence
A new suite of packages has been released for R, Python, Julia, and C++ that efficiently tackles the Sorted L-One Penalized Estimation (SLOPE) problem. These packages utilize a hybrid coordinate descent algorithm to fit generalized linear models and support various loss functions, making them fast and memory-efficient.
PyDPF: A Python Package for Differentiable Particle Filtering
NeutralArtificial Intelligence
PyDPF is a new Python package designed for differentiable particle filtering, a method used in time series analysis to estimate hidden states from observations. It addresses the challenges of specifying system parameters, which are often unknown, making it easier to apply particle filtering in complex real-world data scenarios.
El otro Java + Script, o cómo hacer scripting con Java
PositiveArtificial Intelligence
Java has evolved significantly beyond just being a language for large enterprise applications. With modern versions, we can now create simple and executable scripts quickly, similar to languages like Python or Bash.
NumPy for Absolute Beginners: A Project-Based Approach to Data Analysis
PositiveArtificial Intelligence
This article introduces beginners to NumPy through a project-based approach, focusing on building a high-performance sensor data pipeline. It highlights how to leverage Python's scientific computing capabilities for efficient data analysis.