Tag: technology

Hackathon Diaries #4 FaceFinder: Face Recognition Application

Hackathon Diaries #4 FaceFinder: Face Recognition Application

Hey there tech enthusiasts. Welcome to the fourth edition of Hackathon Diaries, where we present to you the latest and greatest innovations created by the brilliant minds at INT. Hackathon 2023. Hold on to your hats because this time we’re taking things up a notch with our cutting-edge solution, FaceFinder. It’s all about securing today for a safer tomorrow, and we’re thrilled to share all the exciting details with you. FaceFinder Picture this: You arrive at your workplace, but instead of fumbling around with keys or access cards, you just stand in front of the gate and let FaceFinder work its magic.  It is an application to open gates securely and automatically through facial recognition technology. It facilitates users to upload/register images of their faces, which can be used to recognise them. The stored image in the database will be used to verify any new entry request. It grants access to matching, otherwise,  the gate won’t open and physical intervention will be needed. The Techie  V Sweta Working Flowchart But let’s get into the nitty-gritty of how it all works. Our brilliant tech-savvy superstar has designed an innovative flowchart that seamlessly integrates various tools to make FaceFinder a robust and reliable solution.  Tech Stack We’re talking about:  ASP.NET Core at the backend Azure Cognitive Service Computer Vision and Face API for detecting and recognising people Azure Storage account to store all your pretty faces And of course, Entity Framework Core is there to make sure everything is stored in our trusty SQL server Now, let’s talk benefits Enhanced Security: Using facial recognition technology to open gates can enhance the security of the premises by ensuring access to only authorised individuals Convenience: With this application, users can open gates without having to manually unlock them Efficiency: Automatic gate opening saves time and effort for individuals who frequently access the premises Enhanced User Experience: The intuitive UI/UX of the application makes it hassle-free for users accessing the gateway Cost Savings: Reduces the need for security personnel, thereby cutting costs associated with staffing and training. It also eliminates the requirement for physical access controls such as keys or access cards, which can be expensive to produce and maintain. Potential Challenges Of The Prototype and The Future Opportunities But we’re not going to shy away from potential challenges. FaceFinder has a few limitations, like being unable to recognise identical twins, finding it difficult to identify individuals with facial injuries, and struggling to identify those wearing a cap or scarf.  Hey, we’re not giving up on these. We’re already working on ways to improve FaceFinder, such as implementing IoT devices, maintaining a block list to restrict specific individuals, initiating breaching alerts, enhancing scalability, reducing response time, and exploring more use cases. So, there you have it. FaceFinder is the future of secure and convenient gate access, and we’re excited to take this technology to new heights. Stay tuned for more exciting developments from Hackathon Diaries.

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Addressing drug shortages with advanced analytics

Addressing drug shortages with advanced analytics

Drug shortages have become a part and parcel of modern healthcare systems due to several reasons. While there is a sizeable economic impact of drug shortages for manufacturers and pharmacies alike, there are widespread community and social disadvantages as well. Pharmacies or clinics running out of medicine stocks are representatives of a scenario that is often witnessed worldwide and with frightening consequences.  For example, Europe is already seeing shortages of commonly-used medicines. A survey by the Pharmaceutical Group of the European Union (EU) had 100% of 29 member nations reporting shortages of medicines amongst community pharmacists. 76% also stated how shortages had worsened than the earlier year (the survey was implemented between 14th November and 31st December 2022). The UK is also witnessing HRT shortages according to reports, while hospitals in the U.S. are also reporting issues with procurement for liquid ibuprofen, while ADHD diagnoses have gone up in the U.S. as well, leading to shortages of vital drugs for the same. Mexico is witnessing chronic shortages and unfulfilled prescriptions and supply fluctuations and disruptions have been seen widely throughout Asia too.  What are the reasons for medicine shortages?  Wondering about the reason for drug shortages? There are quite a few that can be noted in this context:  Higher seasonal illness outbreaks in the aftermath of COVID-19, leading to skyrocketing average annual demand for medicines that is higher than normal in several categories.  The inability of pharmaceutical companies to meet such unprecedented demand, with excess capacity restricted for cost control.  Global supply chain impact along with higher energy costs and inflation have impacted global drug manufacturers who have to contend with pricing measures.  Stockpiling by customers due to sudden drug shortages.  Over-prescribing by the system.  Reports estimate that the National Health Service in the UK loses a whopping 300 million pounds annually owing to partially-used or unused medication which cannot be reused or recycled.  Lack of systems for forecasting and identifying supply shortages, while ensuring proper inventory management.  Drug Shortage Solutions That May Work  There are a few drug shortage solutions that may be effective for combating and reducing shortages.  Data and analytics are enabling better access towards medicines worldwide while enabling superior supply and demand management for individual patients and pharmacies alike.  Real-time pharmacy, hospital, and clinical data will enable a proper understanding of the demand for specific drugs/medical products.  Leveraging electronic and public health records for enabling healthcare stakeholders to report demand figures for drugs, without revealing confidential patient data.  Opportunities for better inventory and supply chain management with AI (artificial intelligence) and machine learning (ML).  Generic entities may leverage smarter technologies for lowering manufacturing costs by up to 20% while enhancing production. Smarter and connected factories with proper insights and data analysis can enable higher savings and reliable deliveries.  Companies may look at higher procurement of local active ingredients while depending on go-to nations for the same. Boosting supply and production levels, along with harnessing real-time data analytics will enable tackling this scenario.  Supervised machine learning and analytics models can help in forecasting/predicting shortages for most drugs used throughout various categories, price points, and age groups.  Modelling can enable healthcare stakeholders to understand more about the issues behind drug shortages while analytics can also help predict demand for specific drugs based on historical data and current trends.  Pharmacies and other players may not have access to data on the supply side, although they have demand-side information. They will be able to gain more visibility into the supply chains of manufacturers with an integrated information-sharing system.  Data analytics-driven insights for optimizing orders and eventually lowering the effect of drug shortages on pharmaceutical and healthcare operations.  Systems for tracking and reporting drug shortages, including aspects like the frequency, drugs involved, period, causes, duration, managing strategies, impacts, and future shortages too.  Real-time identification and tracking of patients receiving shorter supplies of drugs by hospitals, clinics, and pharmacies. Immediate patient identification regulations for capturing present drug utilization across multiple categories.  Real-time identification and addressing situations along with finding out drugs in shorter supply. Predictive abilities enable higher time for researching material for alternative agents or making suitable arrangements for drug acquisition from other sites or facilities.  Once supply levels normalize for a drug, pharmacists and healthcare stakeholders may discontinue their surveillance regulations without waiting for technical assistance. Real-time data-filtering and reporting abilities are leveraged for viewing drug usage trends and prescription patterns throughout healthcare systems. These insights may enable higher standardization of drug management across institutions, while also facilitating better training of clinicians for lowering care variations.  Advanced data analytics will help address drug shortages and enable better inventory management simultaneously. However, suitable implementation, technological integration, and awareness are necessary for the same.  FAQs How can advanced analytics be used to address drug shortages? Advanced analytics can be deployed for tackling drug shortages through real-time tracking and surveillance of prescription trends and drug demand, forecasting shortages, and enabling better drug supply management.  What are the benefits of using advanced analytics to address drug shortages? Advanced analytics goes a long way towards helping tackle drug shortages, enabling forecasting future demand and shortages, identifying patterns for better management, and also enabling better global medicine access.  What are the challenges of using advanced analytics to address drug shortages? Challenges include technological integration, legacy systems integration, awareness regarding best practices, quality data generation, and more.  What are the best practices for implementing advanced analytics for drug shortage management? Best practices include unified and integrated public databases, suitable data modelling systems, suitable protocols for data security and privacy, and swift reporting mechanisms for demand and shortages.

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Overcoming Data Silos In Healthcare For Better Outcomes

Data silos in healthcare are a pressing problem for healthcare providers, hospitals, and industry stakeholders due to diverse reasons. Healthcare players now have to contend with big data silos while working out a fine balance between tapping opportunities that arise with more actionable intelligence and insights, while managing increasing technical complexities. The healthcare sector is known for the sheer depth of these data silos, presenting multifarious challenges or obstacles for providers. It begins with medicine R&D patient records and more. Eliminating data silos will contribute towards a win-win proposition for all stakeholders including patients, healthcare service providers, policymakers, and so on. There are however concerns relating to data security with a more complicated data landscape and rapidly evolving threats. The need of the hour is proper healthcare analytics with an emphasis on accompanying privacy-by-design framework, security analytics, encryption, multi-factor authentication, and other techniques. Interoperability is another aspect worth considering. This is the scope of data exchange and interpretation across various IT software applications, systems, and devices. Without proper guiding frameworks for interoperability, data exchange may turn confusing, time-consuming, and complex, hindering information flow and patient care alike. Data complexity has to be reduced by eliminating silos for service providers, doctors, and patients. Challenges for Interoperability There are several hurdles towards interoperability though. While eliminating data silos is possible with big data in healthcare analytics, there are several issues for providers even today. The present interoperability framework is a makeshift system for most healthcare industry players. 93% of hospitals and other healthcare systems make records available online for patients and this has increased from 27% in 2012, as per the Sharing Data, Saving Lives: The Hospital Agenda for Interoperability report in 2019. 88% of hospitals also share their data with ambulatory care as per these reports. However, the critical challenges include the fact that while 90% of hospitals are deploying certified IT solutions, several out-of-the-box options are muddling data exchange owing to silos. Other issues include concerns relating to privacy and security along with restrictions pertaining to the present HIEs (health information exchanges) and also the absence of any compatible linguistic or technical standards for making sure that shared data stays intact and relevant. The Need to Develop Superior Infrastructure A key hurdle towards extensive interoperability is the absence of suitable technology-driven infrastructure. While most providers use EHR (electronic health records) platforms, many of these were not developed keeping data exchange at the forefront. At the same time, health information exchanges were implemented for electronic leveraging of healthcare data and also in a secure manner. Yet, many of them cannot finish total data exchange in a reliable manner through varying source technologies or healthcare systems. A few HIEs also do not facilitate access to patient data which is counterproductive to the actual reasons for their implementation.  This report also mentioned how 97% of hospitals were already using certified EHRs, thereby making the case stronger for doing away with data silos. There is a need for proper systemic infrastructure for recording and transferring vital information securely throughout the ecosystem. Other aspects like APIs (application programming interfaces) are also vital for health data sharing. Accessible, open and FHIR (Fast Healthcare Interoperability Resources) standards-based APIs are seen as some of the best ways to quickly scale up interoperability. More than half of developers of technological solutions will have to ensure access to electronic health data via public and standard APIs in the near future. This should rise further in the current decade.  At the same time, big data in healthcare analytics is steadily attaining higher sophistication and refinement en route towards fusing with better governance and regulatory systems to tap better intelligence and operational efficiencies, along with keeping data silos at bay. Ensuring Greater Security Across The Ecosystem There have to be mechanisms in place for healthcare stakeholders with regard to relying on the accuracy and relevance of the shared healthcare data along with ensuring compliance and security at multiple levels. Privacy issues are still a concern in this space. IT developers and vendors should be able to integrate privacy and security protocols and needs for each infrastructural layer including APIs and third-party applications.  This technological infrastructure should have verification methods for information requests and their authorisation, while each entity which has access to patient information will have responsibility for securing and using data respectively. With more connected health IT systems, there will be growing cyber-security threats and one system’s vulnerabilities may lead to all connected systems getting exposed as a result. This will be an ongoing resolution for healthcare players, with regard to building data privacy and security standards, while complying with regulatory aspects seamlessly. Third-party security layers may also be possible through testing, identifying threats, and evaluation of technological upgrades.  In the end, eliminating silos is a vital task for the global healthcare industry today. Developing big data analytics techniques for penetrating deeper into available data is a key priority for several healthcare players. They are using these technologies for understanding the connections between applications, SSL certificate installation, server functions, and more. Machine and wire data is being analysed and gathered for insights while helping organisations zero in on blockage points which lead to these data silos. Integration of disparate systems across the sector is also vital for accomplishing interoperability at a bigger scale.  FAQs What are data silos in healthcare? Data silos naturally form across several data categories and departments have stored information. These make information inaccurate and inaccessible while hindering effective sharing due to blockages. What are the challenges of data silos in healthcare? The challenges include barriers to sharing critical patient and healthcare data across systems, providers, and the entire network. This impedes quicker decisions and end-consumer fulfilment at multiple levels. At the same time, silos prevent a holistic view of the entire framework for providers. What are the benefits of overcoming data silos in healthcare? The benefits include more accessible and usable data throughout multiple systems and stakeholders along with better collaboration across departments and improved decision-making.

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Digital Behavior Analytics in Insurance

Why Digital Behaviour Analytics Should Be A Top Priority For The Insurers

Behaviour analytics in insurance is steadily gaining ground, with the steady evolution of consumer demands and an increasing focus on more flexibility and personalisation of offerings. User behaviour analytics is crucial for helping insurance companies meet varying and evolving requirements better while gaining invaluable insights in the process. Predominant user behaviour analytics software tools enable data analytics in a more specific form for the prediction and understanding of the habits of consumers.  How Behaviour Analytics In Insurance Are Beneficial And Other Vital Aspects   Predictive analytics of consumer behaviour enables diverse use cases for insurers, ranging from customised services to taking measures to combat fraud. Insurers usually use predictive analytics customer behaviour for gaining newer insights into consumer habits and offering more personalised services including things like recommendations, cross-selling new offerings, and lower premiums for safer drivers or healthy customers, or even healthy living tips for reducing claims in the future.  These are only a few examples of the usage of behaviour analytics in insurance.  Not for nothing has the user behaviour analytics market witnessed growth by leaps and bounds. This technology can be spread throughout the entire value chain by insurance companies and it is fast becoming a priority.  Along with smoother implementation and the right software tools, the importance of proper behavioural analytics security is also a focus point for insurance companies.  This is important since there is a huge volume of confidential data that is being gathered and analysed across segments. Hence, ensuring proper security is necessary at multiple levels.  Customers are now looking for more customised experiences with their insurers. 1/5th of insurance buyers reportedly state how their insurers do not provide any personalisation although 80% of them want the same.  This has been outlined in a DataArt report that takes information from Youbiquity Finance. At the same time, 77% of people surveyed in the report stated that they were eager to exchange behavioural information for getting customised services.  Some More Reasons And Use Cases For Behavioural Analytics In Insurance  The biggest reason for leveraging behavioural analytics in insurance is that customers are now looking for more flexibility, control, transparency, and customisation according to industry experts.  They want a scenario where their insurance costs are reflective of their specific behaviours and wish to tailor their insurance plans to their lifestyles.  For instance, if a consumer is medically in prime condition, then he/she will want this aspect to be reflected in premiums for policies.  Automotive insurance has been a great hunting ground for testing behavioural analytics for many insurance companies. Telematics devices in vehicles have helped generate data which is enabling price reductions and other benefits.  Life insurance is another category where customers are looking at evolving coverage amounts and controllable tenures.  Behavioural analytics is already helping people re-evaluate their requirements on a regular basis. Insurance companies will be able to tap these analytics to identify higher-risk consumers while meeting market requirements.  Global trends indicate how 5% of patients account for almost half of spending on healthcare. Hence, predictive analytics will play a crucial role in helping insurance companies identify risk factors for patients before these cases turn problematic.  These analytics can also enable firms to evaluate the regular activities of policyholders and responses in order to judge the various risks faced by them.  This will help in the removal of activities that might otherwise lead to premium increases for policies. Insurance companies can also move towards a more advisory role that is tailored toward the interests of the consumer. These analytics may also help prevent the occurrence of claims in many cases.  Behavioural analytics has been successful with regard to reducing losses, understanding customer interactions and networks within the ecosystem, and propensity modeling. It has also helped cross-sell various offerings along with up-selling whenever the time is ripe. It has also enabled insurance companies to swiftly offer assistance to customers at the time of claims and in other scenarios as well.  Hence, these benefits make a compelling case for the usage of user behaviour analytics by insurance firms.  FAQs What is digital behaviour analytics? Digital behaviour analytics is a specific form of data analytics that measures the user habits of consumers. It tracks consumer activity and interactions, along with their behavioural patterns in order to identify their needs, risks, and offer them more personalised solutions.  Why is digital behaviour analytics important for insurers? Insurers benefit from using digital behaviour analytics, since they can identify high-risk customers and instances while combating fraud and lowering claims and losses. They can also personalise their products and recommendations for consumers, giving them tailored solutions for various needs. At the same time, insurers can use these analytics to cross-sell/up-sell along with adopting an advisory role for customers.  What types of data can be analysed using digital behaviour analytics? Various types of data can be analysed through digital behaviour analytics. This includes customer interactions and activities throughout social media platforms and on the internet, along with their activity across various sites and applications. In-store, web-browsing, survey, advertising, and customer service data can also be analysed, to name a few sources. 

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Hackathon Diaries #1

Hackathon Diaries #1 V2V (Vein to Vein) Monitoring

The grand INT. Hackathon 2023 enticed all innovators, problem solvers, and tech enthusiasts amongst us to take part to grab the chance to showcase their skills, collaborate with their colleagues, and bring their creative ideas to life. 

A plethora of innovative ideas came up in the areas of Web 3.0, AI/ML, and other related tech fields. This blog will showcase one such project, which grabbed the eyeballs of the jury members and the audience.

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