A cluster is the course of action of partition of a prearranged set of data into displace cluster. This is done in such a pattern that the same cluster is alike and data belong to different set is different. The main task of clustering are explorative data mining, and a common technique learning, pattern recognition image analysis, information retrieval, and Bioinformatics. Optimization is the process of finding the most cost effective or highest beneficial alternatives under the given constraints by maximizing desired factors and minimizing undesired ones. The Bee Colony Optimization algorithm is a population based swarm intelligent family, it has to solved local optima problem and overwrite the demerit of Particle swarm optimization algorithms. BCO are inspired by the principles of natural biological behaviour and circulated communal behaviour of social colonies has shown superiority in production with complex optimization problems. In this thesis, Fuzzy Bee Colony Optimization(FBCO) was wished-for that algorithm furnished incredibly shining effect match up to with other active algorithms such as Fuzzy C- Means and Fuzzy Particle Swarm Optimization.