OpenAI-Based Agent for Realty Complaint Resolution
Transforming property management efficiency by deploying an intelligent AI agent for automated ticket creation and real-time complaint resolution.
Client
A leading luxury property developer in the United States with a diverse portfolio across North America.
Problem Statement
Manual, unstructured complaint management led to delayed resolutions, low transparency, and poor resident experience.
Industry
Quick Summary
- Deployed an AI-powered agent leveraging NLP and LLMs for automated complaint categorization and resolution.
- Enabled seamless integration with existing property management systems for ticket automation.
- Applied structured questioning and retrieval-augmented generation (RAG) for accurate root-cause identification.
- Achieved 40% faster complaint processing and 25% higher resident satisfaction across managed properties.
Client Profile
The client is a premier U.S.-based real estate developer managing luxury residential and commercial properties across major metropolitan and suburban markets. The organization prioritizes premium living experiences supported by efficient, tech-enabled resident services.
Challenges: Operational Bottlenecks in Complaint Resolution
- Manual Work Order Creation: Despite using a property management system, there was no automated mechanism to generate work orders, leading to delays in issue resolution.
- Unstructured Complaint Handling: There was no intelligent system in place to receive, understand, and assess complaints, limiting the ability to prioritize urgent issues effectively.
- No Resident Communication Loop: Residents received no status updates on their maintenance tickets, impacting transparency and eroding trust in the service process.
QBurst Solution: Intelligent Complaint Resolution Agent
We developed a comprehensive AI-powered agent leveraging NLP to process resident complaints, identify root causes, and automate resolution.
- LLMs for Information Extraction: Used NLP models to extract relevant information from resident inputs; open source and cloud-based LLMs to identify key entities, workflows, and attributes from SOPs.
- Agentic RAG for Document-Based Responses: Deployed agentic RAG (Retrieval-Augmented Generation) to generate responses using categorized documents and images.
- Structured Questioning System: Designed a rule-based system to ask targeted questions, identify root cause, and assess complaint severity.
- Auto-Generation of Bot Logic: Automatically generated bot logic from root cause flow diagrams using internal organizational knowledge ensuring a precise approach to issue resolution.
- Utilization of Troubleshooting Document Corpus: Fine-tuned LLAMA3 models on a structured corpus of troubleshooting guides for smarter issue resolution.
- Integration with Ticketing System: Automated ticket creation and routing through seamless integration with the client's support platform.
- Continuous Learning and Improvement: Applied reinforcement learning and feedback loops to enhance agent accuracy and adaptability over time.
Technical Highlights
- Used LLAMA3 to understand user intent and extract information
- Implemented RAG workflow to answer questions directly from categorized SOPs and visual references
- Implemented RASA for rule-based conversation logic to augment LLMs
- Built a document extraction module using OpenAI to autogenerate predefined conversation flow
- Used a multi-agent architecture to aggregate several agent logic into a single point of entry
- Built on AWS and orchestrated with LangChain for scalable performance and seamless workflow integration
- Integrated with Yardi for complaint management
Measurable Improvements
- Efficient Complaint Handling: Automating complaint reception and ticket generation reduced processing time by 40%, enhancing operational efficiency.
- Cost Savings: Reduced manual intervention translated into leaner operations and lower support costs.
- Improved Satisfaction: Timely and accurate issue resolution led to a 25% increase in positive feedback and a noticeable boost in resident trust and retention.
- Data-Driven Insights: Generated valuable data for informed decision-making and process improvements.
- Scalable & Standardized Operations: The modular solution ensured consistent and fair complaint resolution across high-volume property portfolios.
Client Profile
Challenges
QBurst Solution
Technical Highlights
Measurable Improvements
