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Digital transformation, IoT to drive cybersecurity spending to $134 billion annually

New data from Juniper Research (www.juniperresearch.com) has found that global business spend on cybersecurity solutions will grow by 33% over the next 4 years, reaching $134 billion annually by 2022. The research group ofound that nearly 70% of 2022 spend would originate from medium-sized businesses, as cybercriminals target “low-hanging fruit.”

In the context of strategies for financial services, mobile operators, enterprise and IoT service providers, the research highlighted that stakeholders’ digital transformation and IoT endeavors were key catalysts for increasing spend to defend assets from threats. Juniper anticipates that the cumulative cost of data breaches between 2017 and 2022 will reach $8 trillion, with variable per-business losses depending on the nature and scale of the attack.

Shipping company Maersk, for example, estimated the cost of NotPetya infecting its global network in 2017 at between $200 and $300 million. Juniper says, as a result, stakeholders must plan in terms of risk mitigation rather than prevention., It predicted that service providers in high-risk environments would be forced to restructure their networks to avoid potential compliance breaches, data theft or service outage.

“Once a single endpoint is breached, the big danger is lateral movement across the network. Layered networks, proper lifecycle management and user ‘least privilege’ approaches will prove key to containing serious breaches,” says research author Steffen Sorrell.

Meanwhile, the research found that securing the IoT, with 46 billion connected units anticipated in 2021, would require more forward-thinking. With devices ‘in the field’ for years at a time, adopting a cybersecurity strategy that is flexible enough to react to future demands would be essential.

It highlighted the fact that cybercriminals’ efforts soon render modern approaches less effective. For example, the Cerber family of ransomware has analysed how machine learning systems detect malware behaviour and applied evasion techniques as a result.

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