Thank you, Tao. For sharing our business and financial developments for the third quarter, we are strategically shifting our growth engine from scale to efficiency. Today, I'd like to highlight some innovative initiatives we have rolled out across businesses to advance this shift. First, in terms of our core business transaction services, externally, we see new demand from both buyers and sellers under the new norm for China housing market. Home sellers expect stronger marketing capabilities from us. Buyers are counting on us for customer-oriented insights to support their decision-making in areas such as timing, asset planning and listing comparisons. These trends place new requirements on our traditional agent skill model and agents who are great at supporting both buyers and sellers are extremely rare. Since midyear, we have been working to restructure our capabilities across both buyer and seller agents. In Shanghai, we piloted a seller and buyer agent specialization mechanism to enhance our marketing and operating excellence on the home sellers agent side first. The mechanism redefines organizational roles, commission structures and performance initiatives and offer supporting tech products. This in turn allowed buyer-side agents to prioritize quality listings and improve transaction conversion. The underlying logic is that high-quality home listings by engineers not ready made. They require skilled agents to mass market analytics, pricing, property staging, owner engagement and decision-making, precision marketing; second, inventory quality drives customer acquisition. Superior listings inherently attract more serious buyers, driving transaction speed and our brand reputation, which in turn attracts better talent to join us. Therefore, we did several things to implement this. First, we adjusted our organizational structure and incentive mechanisms. We shifted some senior agents into hybrid roles that combine management and home seller focused responsibilities, giving them the authorities to form and lead their own teams dedicated to listing management. Under the ACN commission allocation mechanism, we raised the selling agent share from 40% to over 50%. We are maximizing incentives for top-performing agents to focus on marketing high-quality home listings. This group of home seller focused agents can earn around 25% more than before, assuming our market share remains stable. To mitigate potential pressure on buyers' agents, we reduced the mandatory [indiscernible] commission split, raised the minimum commission for selling agents and offered extra incentives for selling high score listings. Second, we provided agents with systematic [indiscernible] and digitalized products to help them manage listings. In the past, homeowners relationship management, listing presentation and marketing relied on agents' personnel experience that made it hard to replicate and scale. We have built an AI-powered listing score system that captures and codifies the know-how required in 6 key areas: Home listing maintenance completeness; homeowner engagement depth; property condition, for example, renovation recency; listing cross-channel marketing performance; AI-powered pricing competitiveness; buyers' interest, for example, the listings online, offline viewings. These metrics have agents clearly understand what defines a high-quality listing and how to better present and market homes. Homebuyer agents can also focus on selling high score listings to drive better sales conversions. In terms of results, in September, high score listings accounted for more than 75% of transactions. Our average market coverage in Shanghai hit record high in Q3, increased 1.2 percentage points year-over-year and 2.6 percentage points quarter-over-quarter. The experience of homeowners looking to sell quickly also improved. Many homeowners reached out to us proactively to learn how to raise their listing scores. Buyers also naturally prefer high scoring listings, creating a positive cycle that benefits everyone involved. The home seller/buyer side agent specialization in Shanghai is an important initiative designed to meet the changing needs of our customers and marks a milestone in our shift from scale to efficiency. We will continue to track its progress and explore new initiatives on the homebuyers agent side. In addition, we tried innovative approaches to make our new business more efficient. For example, in our home rental business, Q2 marked the first time we excluded headquarter costs from breakeven at the city level and Q3 is expected to contribute over CNY 100 million in profits. Carefree rent, our decentralized long-term rental business, housing businesses inherently faces challenges, including relatively low average selling prices, nonstandardized products and services, extensive service coverage and high maintenance costs, traditionally requiring heavy manpower and variable cost investment for scaling and operating. This sector has struggled with economics of scale industry-wide with no established best practices yet. As newcomers, we embraced this as an opportunity to build an AI-native operation from inception, enabling parallel development of business capabilities, frontline operations and AI intelligence. Through our organizational restructuring, process optimization and AI strategy and products, we are pioneering an AI [indiscernible] efficiency, economically sustainable model. Early results demonstrate significant improvements, offering valuable insights for our other platform business. I'll walk you through 3 major AI-driven breakthroughs across different dimensions. First, AI has been fully integrated into our rental services business, enabling end-to-end intelligent decision-making and business operations. For rental unit sign-ups, AI now powers critical processes, including property lead identification, personnel management and deployment, property evaluation, pricing strategies and homeowner communication. For example, previously, personnel management and operational relied heavily on the various level with supervisors deciding which agent will be responsible for which area. Now through AI-driven grid management supported by our unique dynamic domain data and modeling capabilities, AI can make data-driven determinations. It evaluates factors such as the number and quality of property leads, local supply and demand relationships and personnel capabilities models. Based on this data set, it determines the optimal personnel assignments, regional coverage and organizational structure. AI can simulate up to 90,000 design scenarios per minute, automatically generating the most efficient staffing and operational strategies. This has greatly improved how we allocate our service personnel deployment, configuration and operational scope. We also use AI to guide and execute our core business strategies and that is helping us move forward fully intelligent operations. For rental unit sign-up, we rolled out AI-powered rental unit sign-up assistant that uses real-time data and algorithms to predict market demand, property inventory and price trends. It generates automated sign-up strategies and dynamic pricing recommendations, delivering tailored plans for each property through adaptive decision models as market conditions change, such as customer demand, property inventory and pricing. AI can guide our operations team to make timely adjustments. For example, when there is an oversupply of 3 bedroom units in a certain area, the system automatically triggers price controls and sign-up restrictions. When unit types are in short supply, AI reactivates dormant property leads. Our upcoming AI cloud bot will also automatically contact homeowners of these reactivated properties. In Ningbo, where we began pilot operations in August, our workforce decreased by 10%, while new rental sign-up units grew up 10% even in the off-peak season. For rental unit leasing, our AI inventory management system frequently monitors inventory and checks over managing high-risk or low maintenance properties. It dynamically adjusts pricing and targeted discounts while optimizing traffic to speed up leasing. In Q3, these capabilities accelerated the lease-out of 350,000 units across 11 cities with 90% price adjustment adoption. These efforts generated over RMB 100 million in nationwide cost savings. Second, we use AI and technology to solve the industry's long-standing problems with nonstandardization, enable high-quality, scalable growth. The home rental industry has several characteristics. Home listings are scattered and each home has different and complex internal conditions, making the products nonstandard. Service providers are many and their levels vary. So the workforce is also nonstandard. Market price fluctuates and traditional pricing relies on frontline staff's on-site judgment leading to nonstandard pricing. Operational processes are mostly offline and complex, making sales strategies and service execution nonstandard as well. There are the traditional constraints of the industry, but with the progress of AI, we see changes to achieve both standardization and personalization at the same time. At the property quality and risk assessment stage, we have achieved human AI integration with AI now leading the entire unit sign-up workflows. Our AI property evaluation assistant uses visual recognition and multimodel analysis to intelligently capture indoor features, assess property conditions and evaluate potential risks. It also incorporates market data to generate intelligent AI-driven pricing recommendations. Beyond analyzing photos, the system can interpret property attributes holistically, helping address challenges such as consistent product standards, varying personnel capabilities and pricing accuracy. In the homeowner communication phase, we launched the AI negotiation assistant. This tool packages AI-driven property assessment, dynamic pricing and competitive market data into tailored home sign-up strategies and negotiation scripts, helping our service providers communicate and negotiate with homeowners more effectively. This provides a more professional and friendly experience for our clients, equipping new service providers with the tools they need to grow quickly and learn how to address nonstandard sales issues. We piloted this future in Ningbo and unit sign-up productivity rose by over 10 percentage points in Q3 compared with Q2, ranking #1 nationwide. Third, we achieved a leap in efficiency by adopting different AI applications. During the sign-up stage, our AI reviews system has replaced manual reviews, enabling fully automated risk control. As of September, the AI review function cover 11 cities, processing each case in just 20 seconds on average, making a 60-fold efficiency gain, saving more than 33,000 work hours and intercepting more than 16,000 risky properties. In the leasing stage, we use AI to power content lead marketing, expanding lead generation while reducing labor needs. AI intelligently analyzes and identifies high-quality leads, enhancing leasing efficiency. The AI-driven operational system in our home rental services has enabled us to see the possibility of scalable, yet personalized services for previous fragmented nonstandardized demand, demonstrating the potential for traditional industries to overcome these economics of scale through technological innovation. We now integrate AI across our entire home rental services process and are replicating the system across 13 key cities. Only through continuous innovation can we navigate industry cycle. By implementing home buyer/seller agent specialization and AI-driven home rental operations. We have forged a new path that re-engineers workflows through technology and fuels scale through efficiency. Moving forward, we will deepen AI integration across business scenarios to advance both service providers' capabilities and consumer experiences. As China's housing service industry undergoes this next evolution, we are afforded a historical opportunity to further its transformation guided by our commitment to technology power, high-quality growth and its potential to unlock infinity possibilities for modern living services. This concludes my prepared remarks for today. Operator, we are now ready to take questions.