By processing data closer to its source, edge computing offers unprecedented efficiency gains and has already seen rapid growth and widespread adoption. However, much of its potential hinges on advancements in efficiency, with industry leaders like ScaleFlux playing a key role in shaping the future of this technology. ScaleFlux’s innovative computational storage solutions have had a traceable impact on revolutionizing edge computing, underscoring the value of storage considerations when organizations choose to pivot to the edge.
(Milpitas, CA) August 26, 2024 - As businesses worldwide increasingly digitize every aspect of their operations, the amount of data being generated, processed, and consumed is projected to hit an unprecedented 180 billion terabytes by 2025. (1) This massive influx of data threatens to overwhelm both on-premises and cloud systems, resulting in network congestion, soaring energy costs, and expensive infrastructure upgrades. Edge computing has quickly emerged as a response to this data deluge. “As more data is generated, relying solely on centralized computing can create delays and inefficiencies. Edge computing addresses this by distributing processing closer to where data is generated, which helps in managing the load and ensuring quicker responses,” explains JB Baker, VP at ScaleFlux.
Such is the pace of adaption that 75% of enterprise-generated data will be created and processed at the edge by 2025. (2) A recent forecast shows that global spending on edge computing is expected to reach $232 billion by the end of the year — an increase of 15% over 2023. (3) But even as companies start to heavily invest in edge computing processing capabilities, they must not lose sight of the critical role that storage plays in this approach.
Edge computing: how it works, and how it will evolve
Edge computing brings computing resources like servers, storage, and networking closer to data sources. This approach enables data to be processed locally, reducing the amount of data transmitted to data centers by 60% to 90%. (4) Only specific data types, such as processed results, anomalous data, or complex data requiring further analysis are sent back from the frontiers.
Because of this, edge computers confer numerous advantages to businesses:
While the concept of edge computing has been around for decades, it has only gained prominence recently thanks to a convergence of timely technological developments. A major factor is the need for extremely fast networks to support a vast number of connected devices. Such a network infrastructure only became widely accessible with the arrival of 5G in 2019.
Another obstacle to earlier edge computing adoption was the limitations of storage devices. Compared to today's standards, early HDDs and SSDs offered relatively small storage and slower read and write speeds. Moreover, being connected to CPUs in data centers or servers prevented data from being processed on the edge. The rise of computational storage in the early 2020s was instrumental in advancing edge computing.
“The future of edge computing is deeply intertwined with innovations in storage and memory,” states JB Baker. “As storage and memory solutions evolve, so too will edge computing.”
Computational storage: the backbone of edge computing
A quick rundown of computational storage should make it abundantly clear as to why it is a cornerstone of edge computing. Conceptually, computational storage means combining embedded processing capabilities with a high data density (i.e., storage capacity per node) storage device. Unlike traditional storage solutions, computational storage takes on functions traditionally performed by the CPU. This enables the use of lower cost and lower power CPUs and distributes heat generation to aid in managing thermal dissipation.
Advancements in computational storage have consistently pushed the boundaries of edge computing, reinforcing the former’s foundational role. For example, computational storage has been typically enabled by a reprogrammable integrated circuit called a Field-Programmable Gate Array (FPGA), which allows for data filtering, transformation, analytics, compression, and encryption on the storage device.
However, industry leaders like ScaleFlux have recently demonstrated that using a custom-designed integrated circuit (SoC ASIC) can achieve these functions more cost-effectively, with lower power consumption, and with reduced software and hardware requirements.
The emergence of SoC ASICs unlocked a new frontier of edge computing possibilities. Their unique combination of high performance, low power consumption, and affordability makes them an ideal fit for the limited space, power, and cost budgets for edge servers.
The healthcare industry was also quick to pivot from FPGA to SoC ASIC; the latter’s longer battery life makes it a superior choice for remote monitoring devices, and it is easier to integrate with wearable devices as well.
In short, the expansion of edge computing is very much predicated on progress and capabilities of computational storage, as illustrated from the shift from FPGA to SoC ASIC technology. The implication is that efforts to implement edge computing for digital transformation must pay special care to the computational storage technology that underpins it. Choosing the right technology is crucial, as it affects not only the performance and efficiency of edge applications but also their scalability and reliability.
“The computational storage directly addresses several of the challenges and constraints faced in edge computing,” concludes JB Baker of ScaleFlux. “It’s crucial to look beyond ‘component-to-component' comparisons using traditional benchmarks and to look at the impact components can have at the system level to influence the features and capabilities of the entire solution.”
About ScaleFlux:
ScaleFlux is a company focused on enhancing data infrastructure efficiency and TCO through innovations in the storage and memory domains, offering products that integrate hardware and software for improved performance and scalability. ScaleFlux positions itself as a solution for data-intensive applications, aiming to transform data management and utilization in various industries. Their approach emphasizes ease of deployment, sustainability, and security enhancements, addressing the challenges of modern data centers, AI/ML, Cloud and Enterprise IT environments. For more information visit https://scaleflux.com/
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