The Best Tools for Visualizing AI Data

The best tools for visualizing AI data are notebooks and dashboards. Visualizing, exploring, and interacting with data is often most interesting when it’s all the same metric for comparison at the end. That’s why tools that can produce this kind of imagery are ideal.

Having created visuals using a variety of tools, here are four graphics tools that I’ve found useful. Each tool supports various output types — multiple charts with one picture, graphics that wrap around, and straight lines. They are all excellent.

What Is Machine Learning (ML)?

Let’s start by outlining the scope of machine learning.

  • Machine learning aims to make a system that learns — making decisions without being explicitly programmed to do so.
  • ML is a sub-field of computer science — it sits under AI because it’s about making machines capable of learning.
  • ML involves algorithms that can perform machine learning tasks — say, automatically tagging images and then extracting the objects within the pictures.
  • ML algorithms can be applied to any domain — the fields covered by machine learning include vision (processing images to extract objects and labels), language processing (analyzing text to extract facts), decision making (making predictions based on data), and robotics (trying to develop robots capable of learning).

Machine learning (ML) data is used to generate and refine machine learning algorithms, so it’s critical to understand the data. The data can be extracted from any source — data collected from sensors, video recordings, or human actions.

Now, let’s turn to the best tools for visualizing machine learning (ML) data.

Pandas

Pandas is a Python library to work with a wide range of data sources. It’s ideal for working with data stored in data warehouses, various data sources, or structured and unstructured datasets.

Pandas come with a wide range of functions — like random-forest, bias-variance models, binary classification, and inverse problems — that you can use to work with your data.

Pandas has various functions, including makes labels, random-forest, logistic regression, random-suffix, gradient descent, and linear regression. The Pandas library includes a general-purpose data science tool, also called Pandas.

Available in the Mac App Store and for Windows.

Pandas is open-source, so if you find it a useful tool, contribute back!

Elasticsearch

Echo is a web service that helps make it easier to gather and analyze unstructured data. It allows companies to collect data about their customers, employees, or anyone else on the Internet to quickly analyze the data.

  • Echo stores data in Amazon S3 (and you can access data stored in other storage systems, like your laptop).
  • Echo offers two data pipelines: DataPipeline and DiscoveryPipeline.
  • DataPipeline is a data pipeline system for visualizing and analyzing unstructured data.
  • DataPipeline lets you map and populate Elasticsearch with data, then filter the data to generate insights.
  • When it comes time to make more sense of your data, you can export your data in various formats to analyze it further.

Available on AWS.

StatsD

StatsD is a tool that can help you manage servers, but you can also use it to power various visualization tools.

  • StatsD runs in the background, listening for HTTP requests, and sending events to the front-end.
  • When something happens, it sends the events over the network to a series of Graphite servers, where they are logged.
  • Graphite collects events from StatsD and displays them in a variety of ways.
  • If you find that StatsD has become a bit too busy to handle your requests, you can force it to send fewer events.

Available in the Mac App Store and for Windows.

FlowingData

FlowingData is an open-source data visualization tool that makes it easier to understand large data sets — like posts, tweets, and other web content.

  • FlowingData helps you make sense of the complex data in a variety of ways.
  • It comes with a wide range of visualization tools, like pie charts, line graphs, scatters diagrams, heatmaps, and more.
  • FlowingData lets you search the data, find insights, and see what other people have found.

Available in the Mac App Store and for Windows.

Why Would a Company Want to Visualize AI Data?

Companies can use AI for two primary purposes: to improve customer experience and to generate insight into business processes. Businesses can find many different uses for AI data visualization—one that resonates with me is the ability to visualize the flow of AI-derived information within a company. A visitor to your website can see the places where they are most likely to interact with your company. If you have a machine-learning toolset in your company, a visitor can see where they are most likely to see an event result, such as a sales order. That, in turn, creates a great learning environment for the business to understand how users interact with its product.

Similarly, a business can use AI to model user data at the edge and onboard that data. This use case allows companies to see how customers use your product on their devices so that you can more efficiently predict what will happen next. These patterns, derived from machine learning, can then be used to train your business to improve performance.

Do AI users typically expect the dashboards to be visual or textual? How can dashboards best suit different needs?

Dashboards are usually visual, but some AI practitioners prefer to use textual dashboards. The main reason is that one would like to see what the AI software outputs look like before the system converts them to graphical form. A textual representation can offer a more granular look at the data than a visual representation does. In these cases, you may opt for a textual diagram.

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What Does the Future Hold for Visualizing AI Data?

Over the next decade, the use of AI will increase and provide better and more accurate results. Expect more dashboards that let users compare their predictions to the products and see how well the system could predict the future. Dashboards will also show more accurate results due to the improved accuracy of the AI software and the deep learning methods being used.