Energy companies are increasingly turning to data for insights to address challenges like the fluctuating demand for energy, unpredictable renewable sources, and the need for both short- and long-term forecasting. Operational efficiency is another ongoing battle, with aging infrastructure demanding constant maintenance and upgrades.
Traditional data analysis tools, while offering some benefits, often do not meet the complex needs of the energy sector. That’s why leading energy companies are looking to use visual data science to blend the best of both statistical and specialized tools.
Overcoming data science challenges in energy
Energy companies have massive volumes of data from diverse sources. To make use of this data, they need to make sure the information is comprehensive, accurate, and as relevant as possible to yield optimal insights. Historically companies have opted for analytics tools to do this work, which can fall into two main categories:
- Statistical data tools: These tools, ranging from spreadsheets to complex software like MATLAB and SAS, excel at finding patterns and trends. However, their complexity often necessitates specialized skills, limiting their accessibility within organizations. They can also create data silos and offer limited data connectivity, hindering collaboration and potentially leading to inaccurate results. Moreover, their restricted exploration capabilities and predefined analyses can stifle custom modeling and visualization.
- Specialty data tools: These tools, such as energy management systems and geographic information systems, cater to specific industry needs. However, they often require a “product guru” with specialized knowledge, limiting their use cases and flexibility. Their reliance on native data can necessitate additional processing, and their predefined workflows and proprietary models can restrict customization.
The visual data science revolution
A visual data science platform seeks to take the best aspects of these traditional tools and make them collaborative throughout the enterprise. It offers a more accessible, flexible, and democratized approach to data analysis, enabling energy companies to overcome the limitations of traditional tools. By empowering users to interact with data visually, explore it dynamically, and create custom models and visualizations, visual data science can drive better decision-making, improve operational efficiency, and ultimately lead to greater success in this complex and ever-changing industry.
Get started with Spotfire
Want to learn more about how you can overcome common data challenges in the energy sector? Check out this article, put together by Reuters Plus, which dives deeper into how visual data science outperforms traditional energy solutions.
To learn more about Spotfire for Energy, check out our additional resources.