Skip to main content

How to Extract Meaning and Value from M2M Data

Mobile network service providers are going to be inundated with machine-to-machine (M2M) data. Extracting meaning and value from that mass of raw information is a huge undertaking. Analytics software platforms and professional services are part of the solution.

ABI Research forecasts that the M2M analytics industry will grow a robust 53.1 percent over the next 5 years -- from $1.9 billion in 2013 to $14.3 billion in 2018.

The ABI forecast includes revenue segmentation for the five components that together enable analytics to be used in M2M services: including data integration, data storage, core analytics, data presentation, and associated professional services.

"Analytics will play a critical role in the evolution of M2M, serving as the foundation for an increasing number of M2M business cases," said Aapo Markkanen, senior analyst at ABI Research.

In essence, such analytics-driven business cases will be about making previously opaque physical assets part of the digital data universe. M2M has thus a very synergetic relationship with the wider big data space, with growth in one industry driving also growth in the other.

Significantly, the actual value of M2M data can vary greatly by the depth of delivered analysis. At the moment, most enterprises with relevant data assets are trying to migrate from descriptive and diagnostic insights to predictive analytics.

Mastering the predictive phase could then ultimately lead to the final, prescriptive phase of analytics.

Predictive analytics is becoming one of the hottest areas in the M2M value chain. Of today’s analytics establishment, SAP and IBM have woken up to the opportunity reasonably early.

Of the younger companies, Splunk is an example of a firm that could develop into a true Internet of Things powerhouse if it plays its cards right.

Given the far-reaching possibilities of machine learning, ABI says they're also expecting a major impact from players that successfully apply it to industrial settings. Mtell appears to be making strides in this field, and going forward Grok will also be one to watch.

Popular posts from this blog

AI-Driven Data Center Liquid Cooling Demand

The rapid evolution of artificial intelligence (AI) and hyperscale cloud computing is fundamentally reshaping data center infrastructure, and liquid cooling is emerging as an indispensable solution. As traditional air-cooled systems reach their physical limits, the IT industry is under pressure to adopt more efficient thermal management strategies to meet growing demands, while complying with stringent environmental regulations. Liquid Cooling Market Development The latest ABI Research analysis reveals momentum in liquid cooling adoption. Installations are forecast to quadruple between 2023 and 2030. The market will reach $3.7 billion in value by the decade's end, with a CAGR of 22 percent. The urgency behind these numbers becomes clear when examining energy metrics: liquid cooling systems demonstrate 40 percent greater energy efficiency when compared to conventional air-cooling architectures, while simultaneously enabling ~300-500 percent increases in computational density per rac...