Food Delivery Multi-Factor Dataset

Food Delivery Multi-Factor Dataset

Datasets

Food Delivery Multi-Factor Dataset

File

Food Delivery Multi-Factor Dataset

Use Case

Food Dataset

Description

Explore the Food Delivery Time Dataset with features like traffic, weather, and distance to build precise delivery time prediction models.

Description:

The Food Delivery Time: A Multi-Factor Dataset is designed to revolutionize delivery time predictions by analyzing a wide range of influencing factors. From delivery personnel attributes to real-time environmental conditions, this dataset empowers researchers, data scientists, and businesses to create accurate machine learning models. Unlike existing datasets used by platforms like Blinkit, Zomato, and Swiggy, this resource captures the full complexity of food delivery scenarios.

Key Features of the Dataset

  1. Delivery Personnel Attributes
  • ID: A unique identifier for each delivery instance to maintain record distinction.
  • Delivery_person_ID: A unique identifier for each delivery person, enabling performance tracking.
  • Delivery_person_Age: Age of the delivery person, which may influence delivery efficiency.
  • Delivery_person_Ratings: Customer ratings reflecting service quality and performance.
  1. Geographical and Distance Metrics
  • Restaurant_latitude and longitude: GPS coordinates of the restaurant’s location.
  • Delivery_location_latitude and longitude: GPS coordinates of the delivery destination.
  • Distance (km): The calculated distance between the restaurant and the delivery location in kilometers.
  1. Environmental and Real-Time Factors
  • Type_of_order: Categories such as meal, snacks, drinks, and buffet, providing insights into preparation times.
  • Type_of_vehicle: Delivery vehicle types (e.g., scooter, motorcycle, cycle, EV scooter) to analyze their impact on speed and time.
  • Temperature: Ambient temperature during delivery, affecting efficiency.
  • Humidity: Atmospheric moisture levels that could influence travel conditions.
  • Precipitation: Rainfall or snowfall data for identifying weather disruptions.
  • Weather_description: A textual description of weather conditions like sunny, cloudy, or stormy.
  • Traffic_Level: Traffic congestion levels categorized as low, medium, or high.
  1. Target Variable
  • TARGET (Delivery Time in Minutes): The core variable to predict delivery time for each instance, crucial for training machine learning models.

Advantages of the Dataset

  1. Comprehensive Insights:
    • By integrating delivery personnel, environmental, and order-specific features, the dataset provides a 360-degree view of food delivery scenarios.
  2. Real-World Relevance:
    • Reflects realistic delivery challenges, such as weather disruptions and traffic congestion, for improved model accuracy.
  3. Diverse Applications:
    • Ideal for machine learning tasks such as time-series prediction, feature analysis, and optimization of delivery systems.
  4. Benchmarking for the Industry:
    • Enables businesses to refine logistics and enhance user satisfaction by reducing delivery times.
  5. Scalable Use:
    • Suitable for academic research, AI model development, and improving the operational efficiency of food delivery platforms.

Applications of the Food Delivery Time Dataset

  • Delivery Time Prediction Models: Develop predictive models to estimate delivery times based on various influencing factors.
  • Operational Optimization: Enhance logistics by identifying key variables that cause delays.
  • Environmental Impact Analysis: Understand how weather and traffic affect delivery efficiency.
  • Customer Experience Improvement: Use insights from ratings and engagement metrics to elevate service quality.

Why Choose This Dataset?

The Food Delivery Time: A Multi-Factor Dataset goes beyond basic variables, offering detailed attributes and real-world conditions for unparalleled insights. Whether you’re building predictive models, optimizing delivery systems, or conducting research, this dataset is a game-changer for food delivery logistics.

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