--- language: en license: mit tags: - mobility - telecommunications - synthetic-data - 5g - network-optimization datasets: - mobility-pattern --- # Mobility Pattern Dataset ![Mobility Pattern Visualization](mobility_pattern.png) ## Dataset Description - **Repository:** [mobility-prediction/dataset](https://huggingface.co/datasets/unifyair/mobility_data) - **Paper:** N/A - **Point of Contact:** hello@unifyair.com ### Dataset Summary This dataset contains synthetic mobility patterns and network performance metrics for 100 users over a 3-day period. The data simulates realistic user movement patterns in a cellular network environment, including various mobility types, signal strengths, and network conditions. ### Supported Tasks and Leaderboards - **Task 1:** Mobility Pattern Prediction - **Task 2:** Network Performance Optimization - **Task 3:** Handover Decision Making ### Languages English ## Dataset Structure ### Data Instances Each data instance represents a single measurement point for a user, containing: - Timestamp - User ID - Spatial coordinates (x, y) - Velocity and heading - Connected cell information - Signal strength - Handover information - Pattern type - Network conditions ### Data Fields - `timestamp`: DateTime - Time of measurement - `user_id`: String - Unique identifier for each user - `x`: Float - X-coordinate in meters - `y`: Float - Y-coordinate in meters - `velocity`: Float - Movement speed in m/s - `heading`: Float - Direction of movement in radians - `connected_cell`: String - ID of the currently connected cell tower - `signal_strength`: Float - Signal strength in dBm - `handover_needed`: Boolean - Whether a handover is needed - `handover_target`: String - Target cell for handover if needed - `pattern_type`: String - Type of mobility pattern ('commuter', 'random_walk', 'stationary', 'high_mobility') - `network_load`: Float - Network congestion level (0-1) - `sinr`: Float - Signal to Interference plus Noise Ratio - `throughput_mbps`: Float - Network throughput in Mbps - `device_type`: String - UE capability category - `handover_latency`: Float - Handover latency in milliseconds - `handover_success`: Boolean - Whether the handover was successful ### Data Splits The dataset is provided as a single split containing 3 days of continuous data. ## Dataset Creation ### Curation Rationale This synthetic dataset was created to facilitate research in mobility prediction and network optimization. It simulates realistic user movement patterns and network conditions that would be encountered in a real cellular network environment. ## Considerations for Using the Data ### Social Impact of Dataset This dataset can be used to: - Develop and test mobility prediction algorithms - Optimize network resource allocation - Improve handover decision making - Train machine learning models for network optimization