Triage.AI
AI-based chatbot and management system to optimize emergency call centers, specifically 911 hotlines, by answering, assisting, triaging, and streamlining call center processes.
In times of disaster, the 911 emergency response system serves as a vital link between the general population and emergency services. 911 emergency response systems are yet struggling to successfully and efficiently respond to emergency calls due to a number of issues, despite how important they are.
Challenges
High call volume is one of the main issues facing 911 emergency response systems. Long wait times for callers and more stress for dispatchers are common in many towns as a result of 911 dispatch centres being overloaded with calls. The Toronto 911 dispatch centre has had delays of up to 10 minutes, and the daily target of pick-up times was not met every single day last year.
Numerous causes, including population expansion, a rise in the need for emergency services, and an increase in non-emergency calls, have contributed to this high call volume. According to the Toronto Audit Documents, more than 57% of emergency calls are not emergencies but rather a mixture of abandoned, pocket-dialled, and non-police matter calls.
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Lack of resources is another significant issue affecting 911 emergency response systems. 911 dispatch centres struggle to serve the requirements of the community because they are frequently understaffed and underpaid. Due to a lack of resources, callers may have to wait longer and run the risk of making mistakes and miscommunications. 911 emergency response systems also frequently experience issues with out-of-date equipment and a lack of investment in new technologies.
The lack of skilled dispatchers represents yet another significant obstacle. The emergency response system relies heavily on 911 dispatchers, yet there is a scarcity of skilled dispatchers in many communities. For current dispatchers, this may result in more stress and burnout as well as a larger likelihood of mistakes and misunderstandings. The shortage of trained dispatchers can also result in increased wait times for callers, as there are not enough trained dispatchers available to take calls.
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Consequences
Response times have been delayed as a result of these difficulties. This might be particularly problematic when there is a need for speed in an emergency, and a greater chance of mistakes and misunderstandings is another result of these difficulties. Dispatchers might not have the time or resources to adequately analyze the situation and give appropriate information to emergency services when 911 dispatch centres are overloaded with a high volume of calls. Additionally, understaffed and underpaid 911 dispatch centres might not have the tools necessary to adequately train and support dispatchers, which can result in mistakes and misunderstandings.
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The 911 emergency response system is a critical component of public safety, but it is facing a number of challenges that are impacting its ability to effectively and efficiently respond to emergency calls
To overcome these challenges, communities must invest in new technology and resources. There is a need for more effective systems to identify and prioritize emergency calls and to improve the overall efficiency and effectiveness of the 911 emergency response system.
My solution is an AI-based chatbot prototype and management system for 911 emergency response systems. The chatbot is designed to answer, assist, triage, and streamline call center processes until a real dispatcher becomes available. The chatbot is able to understand natural language, collect relevant information from the caller, adapt to different emergencies and extract information in a simple user interface that could be usable by dispatch officers.
The chatbot is built using a combination of technologies such as Twilio for handling voice calls, and ChatGPT to respond to the caller and extract relevant information such as the caller's location, the nature of the emergency and any relevant details about the situation.
Once the chatbot has gathered all the necessary information, it sends information to the frontend to be displayed in a user-friendly interface for the dispatch officer. The dispatch officer can then use this information to make informed decisions and provide appropriate assistance to the caller.
Overall, this solution aims to improve the efficiency and effectiveness of 911 emergency response systems by reducing wait times for callers, improving the accuracy of information provided to emergency services and reducing the risk of errors and miscommunication.
My solution serves individuals in the Greater Toronto Area (GTA) who rely on 911 emergency response systems in times of crisis. The solution aims to directly and meaningfully improve the lives of individuals who may be experiencing an emergency situation and need immediate assistance in the area. This includes individuals who may be experiencing a medical emergency, a fire, a crime, or any other situation that requires immediate attention.
The target population for this solution specifically includes individuals in the GTA of all ages, genders, and socioeconomic backgrounds. However, certain populations such as residents living in high-population density areas, or neighborhoods with high poverty rates or a large population of elderly or disabled individuals in the GTA, may be more likely to experience a lack of resources and an increased risk of errors and miscommunication.
Having witnessed stories of the inadequate service provided by the 911 emergency response system in the GTA, I realized that currently, these populations are underserved by 911 emergency response systems. They may experience long wait times when trying to access emergency services, which can be particularly problematic in emergency situations where every second counts. Additionally, they may experience an increased risk of errors and miscommunication, which can lead to a delay in response times or an inappropriate response to the emergency situation.
My solution addresses these needs by using AI and natural language processing technology to improve the efficiency and effectiveness of 911 emergency response systems in the GTA. My solution can serve as an original pilot for the system in the area, as the chatbot is designed to answer, assist, triage, and streamline call center processes until a real dispatcher becomes available. The chatbot is able to understand natural language, collect relevant information from the caller, adapt to different emergencies, and extract information in a simple user interface that could be usable by dispatch officers, and hence has the potential to leave a meaningful impact on this audience.
I am well-positioned to deliver this solution to individuals in the Greater Toronto Area (GTA) because of my unique skills, background, and experiences. My experiences and understanding of those Triage.AI serves stems from my own life, volunteer, and work experiences.
I have volunteered in underserved communities such as soup kitchens and old age homes, and have seen the lack of resources firsthand. This experience has given me a firsthand understanding of the challenges facing individuals in underserved communities and has motivated me to find solutions that address these challenges.
Additionally, as a resident of the GTA, I have experience with the poor emergency response timings in the area. I have seen emergency situations occurring frequently while travelling on the subway and have heard from friends and family about their experiences with the 911 emergency response system. Furthermore, I reached out to dispatchers to gain a deeper understanding of the situation and analyzed the Toronto audit documents. These resources have given me a more in-depth understanding of the issues facing the 911 emergency response system in the GTA.
In terms of my ability to carry out this project, I have been a programmer for the last 5 years and have a range of skills including frontend, backend, and machine learning development. I have been following tutorials and courses to gain the basic skills necessary to build this project and have the necessary experience and knowledge to effectively develop this platform.
With the help of my mentors that have a deep understanding of the technical aspects of this project and have a range of experience in the field of AI, frontend development, backend development, and machine learning, I believe I am well positioned to carry out this project.
I have taken several steps to understand the needs of the population I want to serve. Specifically, I have conducted research with potential users by studying articles and Toronto Emergency Audit documents to better understand the current challenges facing the 911 emergency response system in the GTA. Additionally, I reached out to dispatch officers to understand the issue firsthand, which has given me a deeper understanding of the challenges facing the 911 emergency response system and the needs of the population I want to serve.
Furthermore, during the development process, I opened up to my LinkedIn network, family and friends for feedback and usability statistics. This has allowed me to receive feedback from a diverse group of individuals and gather insights into the needs of the population I want to serve. This feedback was invaluable in the development of my solution and allowed me to address the specific needs of the population I want to serve.
Overall, these steps have allowed me to gain a deep understanding of the challenges facing the 911 emergency response system in the GTA and the needs of the population I want to serve. This understanding has been essential in the design and development of my solution and has allowed me to create a solution that addresses the specific needs of the population I want to serve.
- Other: Addressing an unmet social, environmental, or economic need not covered in the four dimensions above.
- Prototype: A venture or organization building and testing its product, service, or business model
My solution is innovative because it uses AI and natural language processing technology to improve the efficiency and effectiveness of 911 emergency response systems in the Greater Toronto Area (GTA). The use of a chatbot to answer, assist, triage, and streamline call center processes until a real dispatcher becomes available is a new and significantly improved approach to the problem of inadequate emergency response systems.
This solution is catalytic because it has the potential to change the market for 911 emergency response systems. By using AI and natural language processing technology, my solution is able to understand and respond to calls in a human-like manner, which can greatly improve the efficiency and effectiveness of emergency response systems. This can lead to faster response times and a higher level of accuracy in emergency situations, which can ultimately save lives.
Additionally, this solution can enable broader positive impacts from others in this space by providing a model for other emergency response systems to follow. By implementing similar solutions, other emergency response systems can also improve their efficiency and effectiveness, which can lead to faster response times and a higher level of accuracy in emergency situations. This can ultimately make a positive impact on communities around the world, as it can save lives and improve the overall quality of emergency response services.
Impact goals:
Reduce the average response time for 911 calls in the Greater Toronto Area (GTA) by 50% within the next year. This goal will be achieved by implementing my AI-based chatbot and robust management system to answer, assist, triage and streamline call center processes until a real dispatcher becomes available.
Increase the percentage of calls that are successfully triaged and sent to the appropriate emergency response team by 20% within the next year. This goal will be achieved by implementing natural language processing technology that can understand the nature of the emergency and direct the call to the appropriate response team.
Improve the accuracy of emergency response services by 30% within the next year. This goal will be achieved by implementing machine learning algorithms that can extract relevant information from the caller and display it in a simple user interface that can be used by dispatch officers.
Reduce the number of abandoned 911 calls by 50% within the next year. This goal will be achieved by implementing a user-friendly interface that can guide the caller through the process of providing relevant information and by providing the caller with real-time updates on the status of their call.
Increase the number of successful emergency response outcomes by 25% within the next year. This goal will be achieved by implementing a system that can quickly and accurately triage calls and provide relevant information to the emergency response team, which will ultimately result in faster response times and a higher level of accuracy in emergency situations.
The core technology that powers my solution is a combination of AI, natural language processing, and machine learning integrated with Twilio and React.
Twilio is used to handle the calls and generate a phone number that is compatible with my application. When a user calls that endpoint, the chatbot powered by AI and natural language processing is prompted to respond. The chatbot is designed to understand the caller’s speech, identify keywords and phrases, and direct the call to the appropriate response team, thus reducing the average response time for 911 calls and increasing the accuracy of emergency response services.
Machine learning algorithms are used to extract relevant information from the caller and store it in a simple user interface. The front-end is built using React which displays all the information in a digestible manner for the dispatch officers.
All these technologies are integrated and used in conjunction with each other to create a powerful and efficient 911 emergency response system that can quickly and accurately triage calls and provide relevant information to the emergency response team, which will ultimately result in faster response times and a higher level of accuracy in emergency situations.
- Artificial Intelligence / Machine Learning
- Software and Mobile Applications
My solution, the 911 Dispatch Bot, is currently in the prototype phase and has yet to be accepted and implemented by the Toronto dispatch system. However, my goal is to have it reach as many people as possible in the Greater Toronto Area, specifically the 1.1 million people who make 911 calls annually in this area. I believe that this innovative solution has the potential to significantly improve emergency response times and increase the accuracy of emergency services for the community. Once implemented, it could be a game-changer for the emergency services in the region, helping to save lives and improve the overall quality of emergency services. I am dedicated to making this happen and will work tirelessly to get the solution implemented and make a real impact on the community.
- Difficulty in gaining exposure and establishing connections with key decision makers within 911 emergency services and government agencies, which may impede the implementation and adoption of the 911 Dispatch Bot.
- Despite having a functional prototype and the necessary technical expertise, the ability to successfully pitch the solution to emergency services and government agencies to assess its potential market viability and secure funding for implementation remains a significant barrier.
- lack of funding for the implementation and maintenance of the 911 Dispatch Bot. The cost of developing and implementing the technology, as well as the ongoing costs of maintaining and updating it, may be prohibitive for the organization.
- Another barrier is the technical complexity of the solution. The 911 Dispatch Bot is a highly technical solution that requires a significant level of expertise in AI, natural language processing, and machine learning. This could make it difficult to integrate greater features requested by the emergency response team.
- The 911 Dispatch Bot may face cultural barriers, such as resistance to change and skepticism about the effectiveness of AI in emergency services. This could make it difficult to gain support and buy-in from stakeholders, including emergency responders and the public.
- There may be legal and regulatory barriers that need to be overcome in order to implement the 911 Dispatch Bot. This includes: obtaining the necessary licenses and permissions from government agencies and complying with data privacy and security laws.
N/A
My business model for the 911 Dispatch Bot is focused on providing value to emergency services and government agencies by improving the efficiency and effectiveness of emergency response. Triage.AI's key customers are 911 emergency services and government agencies, specifically in the Greater Toronto Area.
The product we provide is an AI-based chatbot prototype and management system that can answer, assist, triage and streamline call center processes until a real dispatcher becomes available.
We plan to generate revenue through a subscription-based model, where emergency services and government agencies pay a monthly or annual fee to use and access the 911 Dispatch Bot. This revenue will be used to cover the costs of maintaining and updating the technology.
In terms of impact, our solution addresses the needs of the population by improving emergency response times, and increasing the accuracy of emergency services. This will directly and meaningfully improve the lives of the 1.1 million people who make 911 calls annually in the Greater Toronto Area.
My path to financial sustainability for the AI-based chatbot prototype and management system for 911 emergency services is through a subscription-based model. I plan to offer my solution to government agencies, emergency services, and other organizations that manage emergency hotlines. These organizations will pay a monthly or yearly subscription fee to access and use our chatbot and management system.
Additionally, I plan to explore partnerships with other companies in the emergency response and technology fields to expand the reach and impact of our solution. These partnerships could take the form of joint ventures, licensing agreements, or other mutually beneficial arrangements.
I also plan to explore grant opportunities and seek funding from impact investors who are interested in supporting innovative solutions that can improve emergency response times and save lives. I will keep an eye out for opportunities to participate in accelerator programs and pitch competitions that can provide funding and mentorship to help me bring this solution to market.
It's worth noting that I will also be monitoring the feedback and usage statistics of my stakeholders in order to constantly improve and offer new features that they would be willing to pay for. This will help me in determining the pricing structure for our services.