Cloudly and the LF Connectivity community are excited to announce the release of Maveric v1.0—now available on GitHub: 🔗 Download Maveric v1.0.0
This release marks a major milestone: Maveric now includes all the components needed to function as a true RAN Digital Twin, enabling proactive, AI-powered optimization for Mobility Robustness Optimization (MRO), Coverage and Capacity (CCO), and Energy Savings.
Modern mobile networks are too complex for static tuning. Operators need dynamic, data-driven systems that simulate, predict, and optimize network behavior under real-world constraints—without disrupting live service.
Maveric v1.0 delivers just that.
Whether you’re solving dropped calls, minimizing interference, or reducing power consumption, Maveric now has the full stack of simulation, analytics, and AI-ready modules needed to support digital twin–driven operations.
This version consolidates months of development across multiple areas of the RAN lifecycle:
Maveric now supports simulation and optimization for the following key domains:
Test and tune handover strategies using both heuristic methods and reinforcement learning. Fine-tune critical parameters such as hysteresis and time-to-trigger (TTT) to minimize dropped calls, ping-pong handovers, and radio link failures all within a safe, high-fidelity simulation environment.
Simulate signal quality, interference, and user density across varied environments using real-time telemetry and high-resolution terrain data. Optimize antenna tilt, azimuth, and transmit power to minimize dead zones and interference. Evaluate configuration impacts through both real and synthetic scenarios for precise, data-driven tuning.
Simulate off-peak traffic to identify power-saving opportunities using a modular Energy App powered by reinforcement learning. The system dynamically turns cell sectors on/off and adjusts antenna tilts based on time-of-day traffic patterns, balancing energy efficiency with QoS (Quality of services). It leverages a Bayesian Digital Twin RF model for fast, localized simulations, enabling efficient multi-day training cycles decoupled from backend delays.
Load Balancing
Balance network traffic dynamically using a modular reinforcement learning pipeline designed for Coverage and Capacity Optimization (CCO). This application adjusts cell antenna tilts hourly based on multi-day traffic patterns to optimize load distribution, coverage, and service quality. It uses a pre-trained Bayesian Digital Twin RF model for fast local simulations, ensuring efficient training without relying on live backend systems.
Traffic Load Generation
Simulate realistic multi-day UE traffic demand across a configurable mobile network using Maveric’s Traffic Load Simulation Framework. By leveraging Voronoi tessellation from cell tower coordinates, the framework dynamically allocates UEs based on spatial-temporal weights, capturing movement patterns like residential-to-commercial transitions. This synthetic dataset supports network analysis, ML model training, and coverage optimization.
With Maveric v1.0, we’ve evolved from focused mobility optimization through our MRO engine to a comprehensive AI-native Digital Twin platform purpose-built to simulate, learn from, and intelligently optimize radio access networks across coverage, capacity, mobility, and energy dimensions.Operators and researchers now have the tools to:
This is open-source infrastructure that helps you operate like the most advanced carriers without the cost and complexity.
Dive into the code, run the examples, and start optimizing:
📖 Maveric GitHub README
We’re actively collaborating with partners to integrate Maveric with real-world data sources — including mobile apps, field surveys, and live RAN telemetry — to ground simulations in operational reality. Looking ahead, planned enhancements include:
Let us know how you’re using Maveric—or how we can help tailor it to your deployment.
👉 Contact Cloudly | Contribute on GitHub