It’s now crucial for organisations to have robust data backup and recovery systems to withstand the emerging cyberthreats. Artificial intelligence (AI) and machine learning (ML) have emerged as powerful new tools in the field, transforming the way organisations approach data backup.
The growth in the global market for AI in data backup is driven by the increasing adoption of cloud-based backup solutions. These solutions leverage AI algorithms to automate and optimise backup and recovery processes.
As businesses continue to generate more data, effective data backup and recovery strategies have become increasingly critical. Let’s look at how AI and ML technologies can make data backup solutions more efficient:
Automated backups: One key benefit of AI and ML in data backup us their ability to automate repetitive and time-consuming backup tasks, freeing up IT resources to focus on more strategic initiatives. This can ensure that data backups are frequently taken and stored in secure locations, which not only improves productivity, but also reduces the risk of human error, improving data quality and accuracy.
Predictive analytics: Another advantage of AI and ML in data backup is their ability to identify and mitigate potential data loss risks before they occur. By historical data patterns and predicting future trends, these technologies can proactively identify areas of vulnerability and implement measures to prevent data loss.
Intelligent disaster recovery: AI and ML technologies can help with the intelligent recovery of data by, for example, switching to a disaster recovery site when a primary site fails. They can determine which backup copy is unaffected by a cyberattack to use for restoration and they can prioritise which data set needs to be restored first. In the event of a disaster, this can help minimise downtime and speed up recovery time.
Regardless of the data backup technology used, the data must be securely stored. Because backed-up data can be stored in a variety of storage devices, data storage systems play a critical role in the backup infrastructure. The AI-driven storage market “is projected to reach $162.5 billion by 2031, growing at a CAGR of 26.7% from 2022 to 2031,” according to Allied Market Research.
The importance of AI in data storage systems
Storage systems with AI capabilities support real-time monitoring of multiple storage devices and help manage them efficiently with limited human intervention. Here are the top five reasons why they are crucial for organisations today:
- In backup storage devices, AI helps predict and remediate potential hardware faults before they occur to prevent downtime and device failures.
- The predictive capabilities of an AI system help detect anomalies, such as insufficient storage capacity and improper configuration of storage devices, which helps administrators provide effective resource planning.
- An AI-powered data deduplication system can significantly reduce the amount of storage required for backups by identifying and eliminating redundant data, helping to lower hardware costs.
- Using machine learning algorithms, AI can automate data classification and retrieval, making it easier to identify the most critical files and restore them quickly.
- AI helps businesses stay compliant with industry regulations by providing automated compliance monitoring and reporting tools.
However, it’s important to note that AI-driven backup systems require significant hardware resources, such as high-performance CPUs and GPUs, to support the computation requirements of the AI algorithms. This is a one-time investment that enables organisations to reap the overall benefits of AI.
Businesses that embrace AI in their data management and storage systems are more likely to gain a competitive advantage as they leverage the power of data to drive business growth and innovation. Overall, the rise of AI and ML in data backup presents a significant opportunity for organisations to improve their data resilience and ensure business continuity in an increasingly data-driven world.