gpu-accelerated compute execution
Execute computationally intensive workloads on GPU hardware with on-demand provisioning. Users can select GPU resources for specific tasks and release them when complete, paying only for active compute time.
real-time collaborative notebook editing
Multiple users can simultaneously edit and execute Jupyter notebooks with live cursor tracking and synchronized cell outputs. Changes appear instantly across all connected collaborators.
jupyter kernel management
Select and manage different computational kernels (Python 2/3, R, Julia, etc.) for notebook execution. Switch kernels without restarting or recreating notebooks.
computational environment templates
Pre-configured software environments for common research and development tasks. Includes pre-installed libraries and tools for specific domains like data science, machine learning, and scientific computing.
latex document collaborative authoring
Create and edit LaTeX documents with real-time synchronization across multiple authors. Includes live preview rendering and integrated compilation with version history.
second-by-second resource billing
Pay for computational resources with granular per-second billing rather than hourly or monthly rates. Resources are automatically metered and billed only during active use.
multi-language computational environment
Execute code in multiple programming languages including Python, R, Julia, Octave, and others within the same cloud environment. Seamlessly switch between languages for different computational tasks.
file synchronization across devices
Automatically synchronize project files between the cloud environment and local devices. Changes made locally or in the cloud are reflected across all connected systems.
+4 more capabilities