Enhancing airport operations through cloud-native technology, AI … – Airport Technology
Through its portfolio, Airport management software company AeroCloud strives to provide customers with a crystal ball, managing airports in real-time as well as predicting passenger flow and gate optimisation.
The company is developing a reputation for introducing new technology and being customer centric when offering solutions.
George Richardson, CEO of AeroCloud, has spoken with Airport Technology about the companys strategy, challenges and opportunities in the sector, and the importance of business models.
Jasleen Mann: How and when was AeroCloud founded?
George Richardson: AeroCloud was founded in Macclesfield in the North West of England in 2019 by myself and my co-founder and our CTO, Ian Forde-Smith. He has worked in the airport sector his entire career, and I was a retired racing driver, having driven competitively for 10 years.
I was excited at the prospect of bringing together Ians extensive sector and technical knowledge and my commercial mindset to create solutions that enable the airport sector to seize on the benefits of the cloud.
We built a matchbox business plan designed to compete with and displace one of five legacy operators in the airport space. Were a typical David and Goliath story and its been a tremendous journey since we first launched.
Were forever grateful that our first customers at Northwest Florida Beaches International Airport and Tampa International Airport trusted in us. And to our investors for taking the time to understand the airport technology sector and subsequently getting as excited as we are about the unforeseen potential we can bring to airports as a SaaS company.
JM: What are AeroClouds key areas of focus?
GR: AeroCloud is an intelligent management platform designed for the airport sector and the only cloud-native player in this space. The platform enables everything from faster passenger processing times to improved self-service check-in and bag drop and facilitates, increased communication between stakeholders to deal with real-time fluctuations in processes to ensure that airports work better and communicate with their customers.
We recently also launched an industry-first computer vision solution for airports that offers kerb to gate insights for the first time. AeroCloud Optic uses computer vision to intelligently, anonymously and accurately track passengers as they move through an airport. The real-time monitoring of passengers triggers alerts in response to operational bottlenecks such as extended wait times at security, which can then be immediately addressed.
The AI and machine learning algorithms also allow airport staff to identify trends and predict future scenarios to inform more accurate decision-making and long-term planning. This enables better resource management and enhanced retail opportunities for concession partners, which in turn improves the airports passenger experience.
JM: What are the challenges in this area?
GR: Airports are fast-moving complex domains, requiring smooth coordination of multiple factors in a high-pressure environment from security to passengers and airlines. A lack of synergy between these different factors can affect an airports performance in some instances, operates at only around 66% capacity.
We want to solve problems the aviation industry has struggled with for decades due to the reliance on on-site legacy technology, which isnt fit for purpose because its clunky, needs on-site maintenance, and doesnt take advantage of the latest technological innovations enabled through the cloud.
JM: What opportunities have you embraced?
GR: We have put in so much hard work to ensure that what we bring to the market is revolutionary for our sector, leveraging new technologies and practices to solve issues that have existed for decades.
We have also created an innovative ecosystem of evangelical customers, and meaning we invite them to tell our product team their problems. We then collaborate with them to find solutions and that informs the features that we create and deliver. This means that we remain customer centric across every business area, from product design and development through to customer support.
Our mission is to be the largest provider of airport operation automation software for the small to medium-sized airport market globally. In February 2023, we successfully raised $12.6million in Series A funding after we were able to demonstrate our commitment to and progress against this goal.
Indeed, when commenting on the motivation behind investing in AeroCloud, one of our new investors, Liz Christo at Stage 2 Capital, said In only a small time, AeroCloud has become the definitive operating software for small to medium-sized airports. With this new funding, we plan to deliver on our bold ambitions to expand our business, employ local people in the North West where we were founded, and continue to displace our competitors.
JM: What is the importance of democratisation of data across airports?
GR: Coordination and communication are key to operational management. Yet in many airports, most stakeholders are in the dark about the current state of play. Data is not readily accessible and many third parties might never see it beyond periodical reports.
Putting data in the hands of all relevant parties helps them understand how their services are performing and how that impacts the airport operations as a whole. That is why we offer unlimited licenses to our cloud-based platform. We dont want airports to have to choose who has access to data nor reduce its potential in supporting better operational decision-making.
JM: How does the companys strategy differ to competitors?
GR: The opportunity, we think, is a $20 billion market in which legacy players dominate; AeroCloud is the only 100% cloud-native supplier, and we are shaking up the status quo.
We can centralise all an airports operational data and flight data in about 48 hours. Our data also operates in real-time and is up to 30% more accurate than our competitors. When airports require updates or issues fixed, we deliver these via the cloud, saving resourcing and money unlike our legacy competitors who have to send a technician on site.
We also enable unlimited licenses per customer so an airports entire stakeholder base can access to the platform at no extra cost. This means AeroCloud can be used on any device wherever an airports team is based, whether thats onsite or remote that ensures the platform is more secure than legacy systems which are often run on centrally located stack servers.
JM: How do airport business models now compare to pre-pandemic models?
GR: Even before the 2020 Covid-19 pandemic, which caused escalating passenger processing times and labour shortages, these issues were difficult to manage, particularly for small and medium-sized airports that dont have the budgets and capacities that their larger peers do. As travel returns to pre-pandemic levels, airports have struggled with adjusting to heightened demand, affecting operations worldwide.
And while it is a difficult time still for many of their airports as they whole industry faces due to the debts that arose during the pandemic, it is the time when they need to invest in improving the operational efficiencies of their airports to help them boost passenger experience and revenue in the long-term.
JM: What are the implications of the 80:20 rule?
GR: The 80:20 rule requires airlines to use 80% of their take-off and landing slots or risk losing them to a competitor the following year. The rule was relaxed during the pandemic after IATA highlighted the changing schedules that many airlines were facing.
From an airport perspective, the reintroduction of this rule will necessitate a seamless journey of passengers through the terminal so that they arrive to their gate on time and support airlines to leave within their allotted timing slot.
Read more:
Enhancing airport operations through cloud-native technology, AI ... - Airport Technology
- Ultrabroadband and band-selective thermal meta-emitters by machine learning - Nature - July 4th, 2025 [July 4th, 2025]
- Machine Learning is Surprisingly Good at Simulating the Universe - Universe Today - July 4th, 2025 [July 4th, 2025]
- Machine learning-assisted multi-dimensional transcriptomic analysis of cytoskeleton-related molecules and their relationship with prognosis in... - July 4th, 2025 [July 4th, 2025]
- Machine learning combined with multi-omics to identify immune-related LncRNA signature as biomarkers for predicting breast cancer prognosis - Nature - July 4th, 2025 [July 4th, 2025]
- Comprehensive machine learning analysis of PANoptosis signatures in multiple myeloma identifies prognostic and immunotherapy biomarkers - Nature - July 4th, 2025 [July 4th, 2025]
- Enhancing game outcome prediction in the Chinese basketball league through a machine learning framework based on performance data - Nature - July 4th, 2025 [July 4th, 2025]
- A novel double machine learning approach for detecting early breast cancer using advanced feature selection and dimensionality reduction techniques -... - July 4th, 2025 [July 4th, 2025]
- Machine learning for Parkinsons disease: a comprehensive review of datasets, algorithms, and challenges - Nature - July 4th, 2025 [July 4th, 2025]
- Cervical cancer prediction using machine learning models based on routine blood analysis - Nature - July 4th, 2025 [July 4th, 2025]
- Enhancing anomaly detection in IoT-driven factories using Logistic Boosting, Random Forest, and SVM: A comparative machine learning approach - Nature - July 4th, 2025 [July 4th, 2025]
- Predicting car accident severity in Northwest Ethiopia: a machine learning approach leveraging driver, environmental, and road conditions - Nature - July 4th, 2025 [July 4th, 2025]
- Sensormatic Solutions Adds Machine Learning to Shrink Analyzer - Ink World magazine - July 4th, 2025 [July 4th, 2025]
- Exploring the link between the ZJU index and sarcopenia in adults aged 2059 using NHANES and machine learning - Nature - July 4th, 2025 [July 4th, 2025]
- Combining multi-parametric MRI radiomics features with tumor abnormal protein to construct a machine learning-based predictive model for prostate... - July 2nd, 2025 [July 2nd, 2025]
- New insight into viscosity prediction of imidazolium-based ionic liquids and their mixtures with machine learning models - Nature - July 2nd, 2025 [July 2nd, 2025]
- Implementing partial least squares and machine learning regressive models for prediction of drug release in targeted drug delivery application -... - July 2nd, 2025 [July 2nd, 2025]
- Advanced analysis of defect clusters in nuclear reactors using machine learning techniques - Nature - July 2nd, 2025 [July 2nd, 2025]
- Machine learning analysis of kinematic movement features during functional tasks to discriminate chronic neck pain patients from asymptomatic controls... - July 2nd, 2025 [July 2nd, 2025]
- Enhanced machine learning models for predicting three-year mortality in Non-STEMI patients aged 75 and above - BMC Geriatrics - July 2nd, 2025 [July 2nd, 2025]
- Modeling seawater intrusion along the Alabama coastline using physical and machine learning models to evaluate the effects of multiscale natural and... - July 2nd, 2025 [July 2nd, 2025]
- A comprehensive study based on machine learning models for early identification Mycoplasma pneumoniae infection in segmental/lobar pneumonia - Nature - July 2nd, 2025 [July 2nd, 2025]
- Identifying ovarian cancer with machine learning DNA methylation pattern analysis - Nature - July 2nd, 2025 [July 2nd, 2025]
- High-isolation dual-band MIMO antenna for next-generation 5G wireless networks at 28/38 GHz with machine learning-based gain prediction - Nature - July 2nd, 2025 [July 2nd, 2025]
- Sony and AMD want to focus on machine learning for the PS6 - Instant Gaming News - July 2nd, 2025 [July 2nd, 2025]
- How Machine Learning is Reshaping the Future of Sports Betting? - London Daily News - July 2nd, 2025 [July 2nd, 2025]
- An interpretable machine learning model for predicting depression in middle-aged and elderly cancer patients in China: a study based on the CHARLS... - July 2nd, 2025 [July 2nd, 2025]
- These Eight Projects Showcase the Power of Machine Learning on the Edge - Hackster.io - June 29th, 2025 [June 29th, 2025]
- Build Custom AI Tools for Your AI Agents that Combine Machine Learning and Statistical Analysis - MarkTechPost - June 29th, 2025 [June 29th, 2025]
- Check out these essential tips and trends for SEO in 2025 as AI and machine learning loom large - EdTech Innovation Hub - June 29th, 2025 [June 29th, 2025]
- Using machine learning to predict the severity of salmonella infection - Open Access Government - June 28th, 2025 [June 28th, 2025]
- How AI and machine learning are transforming drug discovery - Pharmaceutical Technology - June 28th, 2025 [June 28th, 2025]
- Capturing the complexity of human strategic decision-making with machine learning - Nature - June 26th, 2025 [June 26th, 2025]
- A framework to evaluate machine learning crystal stability predictions - Nature - June 24th, 2025 [June 24th, 2025]
- Machine learning revealed giant thermal conductivity reduction by strong phonon localization in two-angle disordered twisted multilayer graphene -... - June 24th, 2025 [June 24th, 2025]
- How AI and Machine Learning Are Powering the Next Generation of Pump Maintenance - Robotics Tomorrow - June 24th, 2025 [June 24th, 2025]
- Actuate Therapeutics Reports Positive Biomarker and Machine Learning Data from Phase 2 Elraglusib Trial in First-Line Treatment of Metastatic... - June 24th, 2025 [June 24th, 2025]
- Texas A&M Researchers Introduce a Two-Phase Machine Learning Method Named ShockCast for High-Speed Flow Simulation with Neural Temporal Re-Meshing -... - June 22nd, 2025 [June 22nd, 2025]
- Machine learning method helps bring diagnostic testing out of the lab - Medical Xpress - June 22nd, 2025 [June 22nd, 2025]
- Sebi proposes five-point rulebook for responsible use of AI, machine learning - The New Indian Express - June 22nd, 2025 [June 22nd, 2025]
- HAPIR: a refined Hallmark gene set-based machine learning approach for predicting immunotherapy response in cancer patients - Nature - June 20th, 2025 [June 20th, 2025]
- Machine learning boosts accuracy of point-of-care disease detection - News-Medical - June 20th, 2025 [June 20th, 2025]
- How AI and Machine Learning Are Transforming Food Poisoning Outbreak Detection - Food Poisoning News - June 20th, 2025 [June 20th, 2025]
- Evo 2 machine learning model enlists the power of AI in the fight against diseases - Medical Xpress - June 20th, 2025 [June 20th, 2025]
- Machine learning can predict which babies will be born with low birth weights - Medical Xpress - June 20th, 2025 [June 20th, 2025]
- Development and Validation of a Machine Learning Model for Identifying Novel HIV Integrase Inhibitors - Cureus - June 20th, 2025 [June 20th, 2025]
- IIT launches new online certificate programme in data science and machine learning for working profession - Times of India - June 20th, 2025 [June 20th, 2025]
- Calgary startup tackles referee abuse with microphones and machine learning - Yahoo - June 20th, 2025 [June 20th, 2025]
- New machine learning program accurately predicts who will stick with their exercise program - AOL.com - June 20th, 2025 [June 20th, 2025]
- Machine learning and generative AI: What are they good for in 2025? - MIT Sloan - June 4th, 2025 [June 4th, 2025]
- Researchers use machine learning to improve gene therapy - Stanford Report - June 4th, 2025 [June 4th, 2025]
- Machine learning for workpiece mass prediction using real and synthetic acoustic data - Nature - June 4th, 2025 [June 4th, 2025]
- Analyzing the Effect of Linguistic Similarity on Cross-Lingual Transfer: Tasks and Input Representations Matter - Apple Machine Learning Research - June 4th, 2025 [June 4th, 2025]
- Machine learning models for predicting severe acute kidney injury in patients with sepsis-induced myocardial injury - Nature - June 4th, 2025 [June 4th, 2025]
- A machine learning approach to carbon emissions prediction of the top eleven emitters by 2030 and their prospects for meeting Paris agreement targets... - June 4th, 2025 [June 4th, 2025]
- Augmentation of wastewater-based epidemiology with machine learning to support global health surveillance - Nature - June 4th, 2025 [June 4th, 2025]
- Analysis of a nonsteroidal anti inflammatory drug solubility in green solvent via developing robust models based on machine learning technique -... - June 4th, 2025 [June 4th, 2025]
- Your DNA Is a Machine Learning Model: Its Already Out There - Towards Data Science - June 4th, 2025 [June 4th, 2025]
- Development and validation of a risk prediction model for kinesiophobia in postoperative lung cancer patients: an interpretable machine learning... - June 4th, 2025 [June 4th, 2025]
- Predicting long-term patency of radiocephalic arteriovenous fistulas with machine learning and the PREDICT-AVF web app - Nature - June 4th, 2025 [June 4th, 2025]
- How Machine Learning and Cascade Learning Open Doors of Advanced Automation - Supply & Demand Chain Executive - June 4th, 2025 [June 4th, 2025]
- New Hydrogenation Reaction Mechanism for Superhydride Revealed by Machine Learning - Asia Research News | - June 4th, 2025 [June 4th, 2025]
- AI experiences rapid adoption, but with mixed outcomes Highlights from VotE: AI & Machine Learning - S&P Global - June 4th, 2025 [June 4th, 2025]
- IIPE introduces online M.Tech in Data Science and Machine Learning for working professionals - India Today - June 4th, 2025 [June 4th, 2025]
- Introducing Windows ML: The future of machine learning development on Windows - Windows Blog - May 19th, 2025 [May 19th, 2025]
- Settlement strategies and their driving mechanisms of Neolithic settlements using machine learning approaches: a case study in Zhejiang Province -... - May 19th, 2025 [May 19th, 2025]
- MyWear revolutionizes real-time health monitoring with comparative analysis of machine learning - Nature - May 19th, 2025 [May 19th, 2025]
- Leveraging stacking machine learning models and optimization for improved cyberattack detection - Nature - May 19th, 2025 [May 19th, 2025]
- Predicting land suitability for wheat and barley crops using machine learning techniques - Nature - May 10th, 2025 [May 10th, 2025]
- AI and Machine Learning - Ribeiro Preto adopts Optibus to optimise public bus system - Smart Cities World - May 10th, 2025 [May 10th, 2025]
- Childrens Hospital Los Angeles Leads Development of First Machine Learning Tool to Predict Risk of Cisplatin-Induced Hearing Loss - Business Wire - May 10th, 2025 [May 10th, 2025]
- Google is using machine learning to help Android users avoid unwanted and dangerous notifications - BetaNews - May 10th, 2025 [May 10th, 2025]
- London School of Emerging Technology (LSET) Concludes International Workshop on Emerging AI & Machine Learning Innovation - Barchart.com - May 10th, 2025 [May 10th, 2025]
- Thermal performance, entropy generation, and machine learning insights of AlO-TiO hybrid nanofluids in turbulent flow - Nature - May 10th, 2025 [May 10th, 2025]
- Predicting the efficacy of bevacizumab on peritumoral edema based on imaging features and machine learning - Nature - May 10th, 2025 [May 10th, 2025]
- How AI and machine learning are supercharging video conferencing tools - European CEO - May 10th, 2025 [May 10th, 2025]
- The need for a risk-based approach to AI and machine learning in healthcare - Health Tech World - May 10th, 2025 [May 10th, 2025]
- Integrated bioinformatics, machine learning, and molecular docking reveal crosstalk genes and potential drugs between periodontitis and systemic lupus... - May 10th, 2025 [May 10th, 2025]
- Adversarial Machine Learning in Detecting Inauthentic Behavior on Social Platforms - AiThority - May 10th, 2025 [May 10th, 2025]
- Exploring crop health and its associations with fungal soil microbiome composition using machine learning applied to remote sensing data - Nature - May 10th, 2025 [May 10th, 2025]
- Trust-based model and machine learning improve forest fire detection system - International Fire & Safety Journal - May 10th, 2025 [May 10th, 2025]