Abstract:
In the framework of many pizza businesses in Bangladesh, this thesis examines the
crucial problems of food waste. The study adopts a broad strategy to enhance demand
forecasting by combining machine learning techniques with data-driven insights. In
addition to conducting in-depth interviews with restaurant operators and sales
personnel and distributing questionnaires intended to understand customer tastes and
behavior, the research comprises the methodical gathering of sales statistics from
numerous pizza shops. Through the use of several machine learning models and
extensive data preparation, the research seeks to identify the best model for the
intricate characteristics of Bangladesh's restaurant business. Using real-world pizza
restaurants as a case study, machine learning models are applied in a practical way.
Their performance is closely examined in comparison to sales data, and their effects
on decreasing food waste and increasing operational efficiency are assessed. The
expected results are intended to be both a possible benchmark for comparable
situations around the world and a source of useful information for Bangladesh's
restaurant industry. This thesis offers a thorough methodology, a thorough analysis,
and a thorough discussion in an effort to go beyond simply presenting a data-driven
solution. The goal is to provide insightful information that will direct future
investigations into the fields of operational optimization and food waste reduction.
The research hopes to promote sustainable practices in the restaurant industry by
addressing these important factors
Description:
Supervised by
Prof. Dr. A.R.M Harunur Rashid,
Department of Production and Mechanical Engineering(MPE),
Islamic University of Technology (IUT)
Board Bazar, Gazipur-1704, Bangladesh
This thesis is submitted in partial fulfillment of the requirement for the degree of Bachelor of Science in Industrial and Production Engineering, 2024