Wondershare Technology has announced the release of expanded capabilities for its Dr.Fone – Data Recovery (Android) utility version 10.9.0. The Android toolkit now includes the ability to recover WhatsApp data, messages, and media without a backup, including group conversations, starred messages, TV video, audio, and other data types. This further extends the product’s existing ability to retrieve data from internal storage, broken Android devices, and SD cards.
Recommended AI News: Fuze Introduces Partner-First Initiative to Deliver Superior Customer Experiences
“We are extremely proud of the Dr.Fone team for delivering these stellar features in record time,” said Allyn Liu, Senior Product Manager of Wondershare Dr.Fone. “We hope to continue to delight our loyal customers in the coming days with even more robust mobile data management capabilities to strengthen the Dr.Fone applications.”
Recommended AI News: Komprise Simplifies Global Data Management With Multisite Controls
Dr.Fone – Data Recovery (Android) is a powerful application for Android smartphones and tablets. The new features build on its ability to recover data from broken devices, memory cards, and internal storage under several conditions. Some of the key features include:
Recommended AI News: Comcast Business Partners with Versa Networks to Extend ActiveCore to Deliver SASE Services
The post Wondershare Expands the Data Recovery Capabilities for Dr.Fone Android appeared first on WebsiteHost.Review.
TL;DR Rising Densities Dictate Design: As rack densities surge to 50–100kW and beyond to support…
In January 2026, more than 230 US-based advocacy groups signed a letter urging the US…
TL;DR Edge AI optimizes real-time performance: While cloud data centers are ideal for training massive…
This guide is for IT teams, security leaders, and businesses looking to strengthen their cloud…
The global data center heat exchanger market was valued at USD 2.8 billion in 2025…
In ever-higher-density data center environments, unplanned downtime is costly. Whether it’s interrupting AI training workloads…