Right now, your video content team might be working harder than they need to.
As media libraries grow and workflows scale, managing and finding content can feel like a full-time job in itself. But here’s the good news: That’s where metadata comes into play. And here’s the good news: With AI and machine learning, you can transform metadata from a time-draining technical task into a tool that accelerates your team’s creativity and success.
The hidden hurdles of video content management
Managing video content at scale presents unique challenges that can stifle creativity and efficiency.
As media libraries grow and businesses expand, so does the complexity of keeping assets organized, searchable, and accessible across teams.
The key challenges you’re likely facing include:
These issues can slow workflows to a frustrating halt. They also actively prevent teams from accessing the full value of their content libraries.
But there’s a smarter way forward — one that’s already transforming how leading teams manage their media.
Artificial intelligence (AI) simulates human intelligence, making it ideal for automating tasks. Machine learning (ML) helps systems learn over time, meaning ML models continuously improve through exposure to your team’s data. Essentially, these models get smarter as they gain access to more data, adapting to identify increasingly nuanced patterns, themes, and visuals.
Together, these tools turn manual, time-draining processes into seamless workflows. When used correctly, they can deliver:
By combining AI and ML, your team can leave repetitive tasks behind and focus on creativity and strategy.
But that’s not where the upgrades end.
How hybrid cloud media solutions enhance AI capabilities
Hybrid cloud environments are the ideal setup for leveraging AI in media management. They can provide even more flexibility and scalability when set up and used in the right way.
Here’s why the hybrid cloud is the perfect match for AI:
Hybrid cloud solutions amplify the power of AI, making it easier to implement advanced indexing, tagging, and search capabilities without overhauling existing infrastructure. These smart setups can also future-proof workflows, allowing teams to seamlessly integrate new tools, storage solutions, or AI capabilities as their needs evolve.
AI and ML are actively solving the challenges media teams face every day.
Want proof? Here are just a few quick examples.
Problem: “I need to find key moments in hours of footage.”
Solution: ML identifies scenes, categorizes them by theme or activity, and makes your video library searchable in seconds.
Problem: “I can’t search audio content.”
Solution: Speech-to-text AI transcribes dialogue, making it fully searchable without manual effort.
Problem: "I can’t keep track of my overflowing media library."
Solution: AI scales effortlessly with your library, generating consistent, accurate metadata for every asset.
Problem: “I’m wasting time hunting for specific visuals.”
Solution: AI recognizes faces, logos, and objects, delivering exactly what you’re looking for in moments.
AI and ML might just be the dynamic duo you didn’t know you needed — and before you know it, they’ll be solving your workflow headaches on a daily (or hourly) basis.
Whether you're navigating metadata challenges, scaling for seasonal demands, or optimizing workflows for distributed teams, the right hybrid cloud solution — bolstered by AI and ML — can make all the difference.
Ready to see for yourself?
Arthrex, a global leader in medical technology, used AI and hybrid cloud solutions to manage more than 1.4 million assets and scale its video production workflows. Learn how smarter metadata and automated tagging transformed Arthrex’s operations.