# Assignment-A3.IV (Job Scheduling) """ THIS CODE HAS BEEN TESTED AND IS FULLY OPERATIONAL. Problem Statement: Implement Greedy search algorithm for any of the following application: IV. Job Scheduling Problem Code from ArtificialIntelligence (SPPU - Third Year - Computer Engineering - Content) repository on KSKA Git: https://git.kska.io/sppu-te-comp-content/ArtificialIntelligence """ # BEGINNING OF CODE def job_scheduling(): jobs = [] total = int(input("Total jobs to add:\t")) # Take input for jobs print("\n", "-"*10, "JOBS", "-"*10, "\n") for i in range(total): print(f"JOB {i+1} ->") job_id = int(input(f"ID for job {i+1}:\t\t")) deadline = int(input(f"Deadline for job {i+1}:\t")) profit = int(input(f"Profit for job {i+1}:\t")) jobs.append((job_id, deadline, profit)) # Index 0 for job_id; Index 1 for deadline; Index 2 for profit print(f"\nAdded {total} jobs.") print("-"*27, "\n") # Initialize jobs.sort(key=lambda x: x[2], reverse=True) # Sort jobs by profit; Using index 2 to access profit max_deadline = max(job[1] for job in jobs) # Highest deadline; Using index 1 to access deadline slots = [0] * (max_deadline + 1) total_profit = 0 # Scheduling jobs using greedy strategy for job in jobs: for i in range(job[1], 0, -1): if slots[i] == 0: slots[i] = job[0] total_profit += job[2] break # Print scheduled jobs print("Scheduled Jobs:", end=" ") for i in range(1, len(slots)): if slots[i] != 0: print(slots[i], end=" ") print(f"\nTotal Profit: {total_profit}\n") job_scheduling() # END OF CODE