Top 5 Disaster Recovery as a Service (DRaaS) Providers for 2024

Disaster Recovery as a Service (DRaaS) is crucial for businesses aiming to get back on track after a disruption, whether from a natural disaster or a cyberattack. Instead of tackling recovery alone, organizations can partner with cloud-based service providers to manage their disaster recovery plans. This guide compares top DRaaS solutions to help you find the right fit for your business needs.

Top DRaaS Providers

  1. NinjaOne

    • Target Market: Small to Large Enterprises
    • Key Features: Monitoring, patch management
  2. BDRSuite
    • Target Market: Medium-sized businesses
    • Key Features: 24/7 customer support, data redundancy, encryption

Comparing the Best DRaaS Solutions

Here’s a quick look at some top features of leading DRaaS options, including trial availability and overall ratings:

Provider Rating Free Trial DR Testing Dashboards & Reports Protection for Virtual Environments
Unitrends 4.3 30 days
Acronis 4.2 30 days
Druva 3.7 30 days
Arcserve 3.5 30 days Unclear Unclear
Zerto 3.5 14 days
Microsoft Azure 3.1 30 days
Kamatera 2.9 30 days

Highlights of Top Providers

Unitrends

  • Strengths: Offers comprehensive backup appliances that simplify data and server backup. It uses AI to predict potential outages and can back up a variety of environments, like storage and databases.
  • Pricing: Contact their sales for details.

Acronis Cyber Protect Cloud

  • Strengths: Designed mainly for managed service providers (MSPs). Provides advanced features, including automated failover testing and ransomware recovery.
  • Pricing: Pricing varies; reach out for specifics.

Druva Data Resiliency Cloud

  • Strengths: Tailored for organizations using numerous SaaS applications. Offers centralized data management and backups for platforms like Salesforce.
  • Pricing: Credit-based pricing for additional details.

Arcserve

  • Strengths: Known for robust data protection and DLP capabilities, Arcserve offers diverse backup options, focusing on deduplication.
  • Pricing: Contact for custom quotes.

Zerto

  • Strengths: Provides continuous file protection and is renowned for its clarity and ease of use across cloud and on-premises systems.
  • Pricing: Contact partners or resellers for pricing info.

Key Features to Look For in DRaaS

When selecting a DRaaS provider, prioritize these features:

  • File Protection: Ensure your solution protects both physical and virtual files against various types of data loss.
  • Encrypted Storage: Look for providers that offer strong encryption methods like AES-256 to keep your data secure.
  • Automated Failover: This feature ensures that when issues arise, your applications quickly switch to a backup server without manual intervention.
  • Failback Capabilities: After recovery, the process of returning to normal operations should be seamless and automated.
  • Ransomware Prevention: The right solution should have strong defenses against ransomware, allowing for timely restoration of clean data.

Every business has unique needs in disaster recovery. Spend time evaluating different providers, weighing features, pricing, and support, to find the best solution that enhances your operational resilience.

Unlock your business potential with our expert guidance. Get in touch now!

Robot-bot-chatbot-AI.jpg

A Jobseeker’s Handbook: Leveraging AI and Its Implications for Employers

tr_20241220-top-software-development-technologies.jpg

8 Key Software Development Technologies to Watch in 2025

cloud-money-finance-investment-savings-adobe.jpg

AWS Provides Hackney Council with a Minimum 22% Discount on Cloud Services via OGVA 2.0

tr_20241219-eu-guidance-ai-privacy-laws.jpg

EU Provides Guidance for AI Developers on Compliance with Privacy Regulations

IT-sustainability-think-tank-hero.jpg

IT Sustainability Think Tank: Insights from 2024 and Key Priorities for 2025

AdobeStock_210063189.jpg

NVIDIA Unveils New Mini Developer Kit for Generative AI

technology-digital-ai-binary-adobe.jpeg

Digital Ethics Summit 2024: Understanding the Socio-Technical Aspects of AI