Welcome to Knowledge Base!

KB at your finger tips

This is one stop global knowledge base where you can learn about all the products, solutions and support features.

Categories
All

Products-Morningstar Direct

Explore New Investment Opportunities with Morningstar Direct's Analytics Lab Data Science Tool

Unlock Deeper Insights with Analytics Lab

Morningstar Direct's Analytics Lab is a powerful data science tool designed to empower investors to delve into Morningstar data in a more profound and impactful way. By combining access to a wealth of data and research with JupyterLab, an open-source data-science tool, investors can conduct rigorous analyses using the Python programming language. This cutting-edge tool allows users to create customized interactive research that includes analytics, data visualizations, and research narratives, providing a platform to unlock new insights and opportunities for investment success.

Collaboration and Efficiency

Analytics Lab is built for collaboration, allowing colleagues with Morningstar Direct access to interact with and benefit from the interactive research created within the platform. While proficiency in Python is required to create custom analytics, users without Python skills can still engage with research from other users. Furthermore, Analytics Lab streamlines workflows by enabling the application of custom analytics across Morningstar Direct, facilitating the creation of personalized calculations in a secure and transparent system that integrates seamlessly into existing workflows.

User-Friendly and Powerful Data Processing

With user-friendly features like drag-and-drop capabilities, Analytics Lab simplifies the process of data discovery and code development, saving valuable time for investors. This tool automatically generates Python code from Direct datasets, lists, search criteria, custom portfolios, and performance reports, ensuring the accuracy and robustness of the code. Additionally, Analytics Lab offers powerful data processing capabilities at scale, delivering fast results whether users are running 10 lines of code or 10,000. Its hosted environment can dynamically scale based on computing needs, providing users with the computing power needed to handle complex calculations efficiently.

Experience the Future of Investment Analysis

Morningstar Direct's Analytics Lab represents the future of investment analysis, offering a comprehensive suite of data science tools and resources to enhance investment decision-making. By leveraging the capabilities of Analytics Lab, investors can gain a competitive edge in the market by uncovering hidden trends, identifying new opportunities, and sharing valuable insights with their team. Take advantage of the free trial of Morningstar Direct to experience the transformative power of Analytics Lab and revolutionize your investment strategy.

Morningstar Direct: Empowering Professional Investors Worldwide

Unpack Complexity and Drive Industry Insights

Morningstar Direct provides professional investors with a comprehensive suite of data and capabilities tailored to their unique needs. Whether you are working with managed products or seeking to contextualize the market trends, Morningstar Direct equips you with the tools to analyze and understand industry shifts effectively. The platform's expansive data and independent research enable you to unravel complexity and make informed decisions that are both clear and relevant to your investment strategies.

Read article

Empower Your Investment Success with the morningstar_data Python Package

Seamless Access to Morningstar Data

The morningstar_data Python package offers users seamless access to Morningstar data, providing the flexibility to utilize it within their preferred coding environments. This innovative solution allows individuals to save time, enhance value, and drive investor success to unprecedented levels. By empowering users with the ability to connect with Morningstar data in their favorite coding environments, this package revolutionizes the way investment data is accessed and utilized.

Read article