Edge AI

A solution for the ever-growing amount of data in manufacturing and process industries.

Benefits

The benefits of edge AI include:

    • Intelligence

    • AI applications are more powerful and flexible than conventional applications that can respond only to inputs that the programmer had anticipated. In contrast, an AI neural network is not trained how to answer a specific question, but rather how to answer a particular type of question, even if the question itself is new. Without AI, applications couldn’t possibly process infinitely diverse inputs like texts, spoken words or video.
    • Real-time insights

    • Since edge technology analyzes data locally rather than in a faraway cloud delayed by long-distance communications, it responds to users’ needs in real time.
    • Reduced cost

    By bringing processing power closer to the edge, applications need less internet bandwidth, greatly reducing networking costs.

    • Increased privacy

    • AI can analyze real-world information without ever exposing it to a human being, greatly increasing privacy for anyone whose appearance, voice, medical image or any other personal information needs to be analyzed. Edge AI further enhances privacy by containing that data locally, uploading only the analysis and insights to the cloud. Even if some of the data is uploaded for training purposes, it can be anonymized to protect user identities. By preserving privacy, edge AI simplifies the challenges associated with data regulatory compliance.
    • High availability

    • Decentralization and offline capabilities make edge AI more robust since internet access is not required for processing data. This results in higher availability and reliability for mission-critical, production-grade AI applications.
  • Persistent improvement

    • AI models grow increasingly accurate as they train on more data. When an edge AI application confronts data that it cannot accurately or confidently process, it typically uploads it so that the AI can retrain and learn from it. So the longer a model is in production at the edge, the more accurate the model will be.

Example of Edge AI

What Are Examples of Edge AI Use Cases?

AI is the most powerful technology force of our time. We’re now at a time where AI is revolutionizing the world’s largest industries.

Across manufacturing, healthcare, financial services, transportation, energy and more, edge AI is driving new business outcomes in every sector, including:

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    Intelligent forecasting in energy: For critical industries such as energy, in which discontinuous supply can threaten the health and welfare of the general population, intelligent forecasting is key. Edge AI models help to combine historical data, weather patterns, grid health and other information to create complex simulations that inform more efficient generation, distribution and management of energy resources to customers.

  • Predictive maintenance in manufacturing: Sensor data can be used to detect anomalies early and predict when a machine will fail. Sensors on equipment scan for flaws and alert management if a machine needs a repair so the issue can be addressed early, avoiding costly downtime.

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    AI-powered instruments in healthcare: Modern medical instruments at the edge are becoming AI-enabled with devices that use ultra-low-latency streaming of surgical video to allow for minimally invasive surgeries and insights on demand.

  • Smart virtual assistants in retail: Retailers are looking to improve the digital customer experience by introducing voice ordering to replace text-based searches with voice commands. With voice ordering, shoppers can easily search for items, ask for.