Ultimate Integración de PyTorch Solutions for Everyone

Discover all-in-one Integración de PyTorch tools that adapt to your needs. Reach new heights of productivity with ease.

Integración de PyTorch

  • AI development platform for prototyping, training, and deployment.
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    What is Lightning AI?
    Lightning AI is a comprehensive platform that integrates your favorite machine learning tools into a cohesive interface. It supports the entire AI development lifecycle, including data preparation, model training, scaling, and deployment. Designed by the creators of PyTorch Lightning, this platform provides robust capabilities for collaborative coding, seamless prototyping, scalable training, and effortless serving of AI models. The cloud-based interface ensures zero setup and a smooth user experience.
    Lightning AI Core Features
    • Collaborative coding environment
    • Seamless prototyping
    • Scalable model training
    • Effortless model deployment
    • Zero setup cloud interface
    Lightning AI Pro & Cons

    The Cons

    The Pros

    Simplifies AI model development and scaling
    Supports robust experimentation and visualization
    Accelerates workflow for AI researchers and developers
    Lightning AI Pricing
    Has free planYES
    Free trial detailsFree tier includes 1 free active Studio with 15 free monthly credits equivalent to ~50 GPU hours; free active Studio runs 24/7 with 4-hour restarts, no credit card required
    Pricing modelFreemium
    Is credit card requiredNo
    Has lifetime planNo
    Billing frequencyMonthly

    Details of Pricing Plan

    Free

    0 USD
    • 15 monthly Lightning credits
    • 1 free active Studio, 4-hour restarts
    • Single GPU Studios (T4, L4, L40S)
    • Up to 2 concurrent GPUs
    • Unlimited background execution
    • 32 core CPU Studios
    • Persistent storage (50 GB limit)
    • Multiplayer live collaboration
    • Community support via Discord

    Pro

    30 USD
    • 360 annual Lightning credits included
    • 1 free active Studio, run 24/7
    • Multi-GPU Studios (T4, L4, L40S)
    • Single GPU A100, H100, H200s
    • Up to 6 concurrent GPUs
    • 64 core CPU Studios
    • Persistent storage (200 GB limit)
    • Distributed data prep (up to 4 machines)
    • Reserve machines for jobs
    • Community support via Discord

    Teams

    119 USD
    • 600 annual Lightning credits included
    • Full-node A100, H100, H200s
    • Multi-node training
    • Up to 12 concurrent GPUs
    • Use via AWS marketplace
    • 96 core CPU Studios
    • Persistent storage (2 TB limit)
    • Real-time cost controls
    • Community support via Discord

    Enterprise

    USD
    • Full-node B200s
    • Priority GPU Access (Lightning Cloud)
    • Unlimited concurrent GPUs
    • Use your cloud credits (AWS, GCP)
    • Deploy in your own VPC
    • Unlimited multi-node training
    • Role-based access controls
    • Enterprise AI Hub add-on
    • SOC 2 (type 2) compliance
    • SAML/SSO
    • Custom resource tagging
    • Bring your own images
    • 99.95% uptime SLA
    • Dedicated Slack support channel
    • Dedicated machine learning engineer
    Discount:Pro plan: 40% off ($30/month billed annually); Teams plan: 15% off ($119/user/month billed annually)
    For the latest prices, please visit: https://lightning.ai
  • NeuralABM trains neural-network-driven agents to simulate complex behaviors and environments in agent-based modeling scenarios.
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    What is NeuralABM?
    NeuralABM is an open-source Python library that leverages PyTorch to integrate neural networks into agent-based modeling. Users can specify agent architectures as neural modules, define environment dynamics, and train agent behaviors using backpropagation across simulation steps. The framework supports custom reward signals, curriculum learning, and synchronous or asynchronous updates, enabling the study of emergent phenomena. With utilities for logging, visualization, and dataset export, researchers and developers can analyze agent performance, debug models, and iterate on simulation designs. NeuralABM simplifies combining reinforcement learning with ABM for applications in social science, economics, robotics, and AI-driven game NPC behaviors. It provides modular components for environment customization, supports multi-agent interactions, and offers hooks for integrating external datasets or APIs for real-world simulations. The open design fosters reproducibility and collaboration through clear experiment configuration and version control integration.
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