Fixstars Corporation announced the release of the July 2025 version of its AI workload performance optimization software, Fixstars AIBooster.
As organizations face escalating GPU infrastructure costs, the latest AIBooster release provides powerful new capabilities for visualizing infrastructure operating costs and optimizing AI workload performance. This helps business leaders and AI development teams to streamline their AI infrastructure operations and effectively manage costs.
Key Features and Enhancements:
Performance Observability:
- Two tailored dashboard views: Cost Analysis View for Business Leaders and Performance Analysis View for AI Developers.
- Unified monitoring and management across hybrid environments (cloud and on-premises).
- Manage AI workloads as jobs and visualize performance metrics on a per-job basis.
- Capability to collect and visualize metrics from Lustre, a distributed file system widely used in large-scale cluster environments.
- Enhanced GPU profiling feature, complementing the previously provided flame graph, to quickly identify performance bottlenecks.
Performance Intelligence:
- Automatic collection and visualization of hyperparameter tuning results, significantly accelerating the identification of optimal parameters.
- Automated tuning capabilities specifically designed for MMEngine and DeepSpeed frameworks.
- Automatic CPU Affinity optimization to further enhance performance
Fixstars remains dedicated to solving the operational challenges faced by organizations managing AI infrastructure through continued innovation and enhancement of AIBooster.
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