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
- AI and machine learning are the future of Wi-Fi management: WBA report - Telecompetitor - February 22nd, 2026 [February 22nd, 2026]
- Machine learning streamlines the complexities of making better proteins - Science News - February 20th, 2026 [February 20th, 2026]
- WBA Publishes Guidance on Artificial Intelligence and Machine Learning for Intelligent Wi-Fi - ARC Advisory Group - February 20th, 2026 [February 20th, 2026]
- Machine learning-predicted insulin resistance is a risk factor for 12 types of cancer - Nature - February 20th, 2026 [February 20th, 2026]
- Exploring Machine Learning at the DOF - University of the Philippines Diliman - February 20th, 2026 [February 20th, 2026]
- AI and Machine Learning - Where US agencies are finding measurable value from AI - Smart Cities World - February 20th, 2026 [February 20th, 2026]
- Modeling visual perception of Chinese classical private gardens with image parsing and interpretable machine learning - Nature - February 16th, 2026 [February 16th, 2026]
- Analysis of Market Segments and Major Growth Areas in the Machine Learning (ML) Feature Lineage Tools Market - openPR.com - February 16th, 2026 [February 16th, 2026]
- Apple Makes One Of Its Largest Ever Acquisitions, Buys The Israeli Machine Learning Firm, Q.ai - Wccftech - February 1st, 2026 [February 1st, 2026]
- Keysights Machine Learning Toolkit to Speed Device Modeling and PDK Dev - All About Circuits - February 1st, 2026 [February 1st, 2026]
- University of Missouri Study: AI/Machine Learning Improves Cardiac Risk Prediction Accuracy - Quantum Zeitgeist - February 1st, 2026 [February 1st, 2026]
- How AI and Machine Learning Are Transforming Mobile Banking Apps - vocal.media - February 1st, 2026 [February 1st, 2026]
- Machine Learning in Production? What This Really Means - Towards Data Science - January 28th, 2026 [January 28th, 2026]
- Best Machine Learning Stocks of 2026 and How to Invest in Them - The Motley Fool - January 28th, 2026 [January 28th, 2026]
- Machine learning-based prediction of mortality risk from air pollution-induced acute coronary syndrome in the Western Pacific region - Nature - January 28th, 2026 [January 28th, 2026]
- Machine Learning Predicts the Strength of Carbonated Recycled Concrete - AZoBuild - January 28th, 2026 [January 28th, 2026]
- Vertiv Next Predict is a new AI-powered, managed service that combines field expertise and advanced machine learning algorithms to anticipate issues... - January 28th, 2026 [January 28th, 2026]
- Machine Learning in Network Security: The 2026 Firewall Shift - openPR.com - January 28th, 2026 [January 28th, 2026]
- Why IBMs New Machine-Learning Model Is a Big Deal for Next-Generation Chips - TipRanks - January 24th, 2026 [January 24th, 2026]
- A no-compromise amplifier solution: Synergy teams up with Wampler and Friedman to launch its machine-learning power amp and promises to change the... - January 24th, 2026 [January 24th, 2026]
- Our amplifier learns your cabinets impedance through controlled sweeps and continues to monitor it in real-time: Synergys Power Amp Machine-Learning... - January 24th, 2026 [January 24th, 2026]
- Machine Learning Studied to Predict Response to Advanced Overactive Bladder Therapies - Sandip Vasavada - UroToday - January 24th, 2026 [January 24th, 2026]
- Blending Education, Machine Learning to Detect IV Fluid Contaminated CBCs, With Carly Maucione, MD - HCPLive - January 24th, 2026 [January 24th, 2026]
- Why its critical to move beyond overly aggregated machine-learning metrics - MIT News - January 24th, 2026 [January 24th, 2026]
- Machine Learning Lends a Helping Hand to Prosthetics - AIP Publishing LLC - January 24th, 2026 [January 24th, 2026]
- Hassan Taher Explains the Fundamentals of Machine Learning and Its Relationship to AI - mitechnews.com - January 24th, 2026 [January 24th, 2026]
- Keysight targets faster PDK development with machine learning toolkit - eeNews Europe - January 24th, 2026 [January 24th, 2026]
- Training and external validation of machine learning supervised prognostic models of upper tract urothelial cancer (UTUC) after nephroureterectomy -... - January 24th, 2026 [January 24th, 2026]
- Age matters: a narrative review and machine learning analysis on shared and separate multidimensional risk domains for early and late onset suicidal... - January 24th, 2026 [January 24th, 2026]
- Uncovering Hidden IV Fluid Contamination Through Machine Learning, With Carly Maucione, MD - HCPLive - January 24th, 2026 [January 24th, 2026]
- Machine learning identifies factors that may determine the age of onset of Huntington's disease - Medical Xpress - January 24th, 2026 [January 24th, 2026]
- AI and Machine Learning - WEF expands Fourth Industrial Revolution Network - Smart Cities World - January 24th, 2026 [January 24th, 2026]
- Machine-learning analysis reclassifies armed conflicts into three new archetypes - The Brighter Side of News - January 24th, 2026 [January 24th, 2026]
- Machine learning and AI the future of drought monitoring in Canada - sasktoday.ca - January 24th, 2026 [January 24th, 2026]
- Machine learning revolutionises the development of nanocomposite membranes for CO capture - European Coatings - January 24th, 2026 [January 24th, 2026]
- AI and Machine Learning - Leading data infrastructure is helping power better lives in Sunderland - Smart Cities World - January 24th, 2026 [January 24th, 2026]
- How banks are responsibly embedding machine learning and GenAI into AML surveillance - Compliance Week - January 20th, 2026 [January 20th, 2026]
- Enhancing Teaching and Learning of Vocational Skills through Machine Learning and Cognitive Training (MCT) - Amrita Vishwa Vidyapeetham - January 20th, 2026 [January 20th, 2026]
- New Research in Annals of Oncology Shows Machine Learning Revelation of Global Cancer Trend Drivers - Oncodaily - January 20th, 2026 [January 20th, 2026]
- Machine learning-assisted mapping of VT ablation targets: progress and potential - Hospital Healthcare Europe - January 20th, 2026 [January 20th, 2026]
- Machine Learning Achieves Runtime Optimisation for GEMM with Dynamic Thread Selection - Quantum Zeitgeist - January 20th, 2026 [January 20th, 2026]
- Machine learning algorithm predicts Bitcoin price on January 31, 2026 - Finbold - January 20th, 2026 [January 20th, 2026]
- AI and Machine Learning Transform Baldness Detection and Management - Bioengineer.org - January 20th, 2026 [January 20th, 2026]
- A longitudinal machine-learning approach to predicting nursing home closures in the U.S. - Nature - January 11th, 2026 [January 11th, 2026]
- Occams Razor in Machine Learning. The Power of Simplicity in a Complex World - DataDrivenInvestor - January 11th, 2026 [January 11th, 2026]
- Study Explores Use of Automated Machine Learning to Compare Frailty Indices in Predicting Spinal Surgery Outcomes - geneonline.com - January 11th, 2026 [January 11th, 2026]
- Hunting for "Oddballs" With Machine Learning: Detecting Anomalous Exoplanets Using a Deep-Learned Low-Dimensional Representation of Transit... - January 9th, 2026 [January 9th, 2026]
- A Machine Learning-Driven Electrophysiological Platform for Real-Time Tumor-Neural Interaction Analysis and Modulation - Nature - January 9th, 2026 [January 9th, 2026]
- Machine learning elucidates associations between oral microbiota and the decline of sweet taste perception during aging - Nature - January 9th, 2026 [January 9th, 2026]
- Prognostic model for pancreatic cancer based on machine learning of routine slides and transcriptomic tumor analysis - Nature - January 9th, 2026 [January 9th, 2026]
- Bidgely Redefines Energy AI in 2025: From Machine Learning to Agentic AI - galvnews.com - January 9th, 2026 [January 9th, 2026]
- Machine Learning in Pharmaceutical Industry Market Size Reach USD 26.2 Billion by 2031 - openPR.com - January 9th, 2026 [January 9th, 2026]
- Noise-resistant Qubit Control With Machine Learning Delivers Over 90% Fidelity - Quantum Zeitgeist - January 9th, 2026 [January 9th, 2026]
- Machine Learning Models Forecast Parshwanath Corporation Limited Uptick - Real-Time Stock Alerts & High Return Trading Ideas -... - January 9th, 2026 [January 9th, 2026]
- Machine Learning Models Forecast Imagicaaworld Entertainment Limited Uptick - Technical Resistance Breaks & Outstanding Capital Returns -... - January 2nd, 2026 [January 2nd, 2026]
- Cognitive visual strategies are associated with delivery accuracy in elite wheelchair curling: insights from eye-tracking and machine learning -... - January 2nd, 2026 [January 2nd, 2026]
- Machine Learning Models Forecast Covidh Technologies Limited Uptick - Earnings Forecast Updates & Small Investment Trading Plans -... - January 2nd, 2026 [January 2nd, 2026]
- Machine Learning Models Forecast Sri Adhikari Brothers Television Network Limited Uptick - Stock Split Announcements & Rapid Wealth Accumulation -... - January 2nd, 2026 [January 2nd, 2026]
- Army to ring in new year with new AI and machine learning career path for officers - Stars and Stripes - December 31st, 2025 [December 31st, 2025]
- Army launches AI and machine-learning career path for officers - Federal News Network - December 31st, 2025 [December 31st, 2025]
- AI and Machine Learning Transforming Business Operations, Strategy, and Growth AI - openPR.com - December 31st, 2025 [December 31st, 2025]
- New at Mouser: Infineon Technologies PSOC Edge Machine Learning MCUs for Robotics, Industrial, and Smart Home Applications - Business Wire - December 31st, 2025 [December 31st, 2025]
- Machine Learning Models Forecast The Federal Bank Limited Uptick - Double Top/Bottom Patterns & Affordable Growth Trading - bollywoodhelpline.com - December 31st, 2025 [December 31st, 2025]
- Machine Learning Models Forecast Future Consumer Limited Uptick - Stock Valuation Metrics & Free Stock Market Beginner Guides - earlytimes.in - December 31st, 2025 [December 31st, 2025]
- Machine learning identifies statin and phenothiazine combo for neuroblastoma treatment - Medical Xpress - December 29th, 2025 [December 29th, 2025]
- Machine Learning Framework Developed to Align Educational Curricula with Workforce Needs - geneonline.com - December 29th, 2025 [December 29th, 2025]
- Study Develops Multimodal Machine Learning System to Evaluate Physical Education Effectiveness - geneonline.com - December 29th, 2025 [December 29th, 2025]
- AI Indicators Detect Buy Opportunity in Everest Organics Limited - Healthcare Stock Analysis & Smarter Trades Backed by Machine Learning -... - December 29th, 2025 [December 29th, 2025]
- Automated Fractal Analysis of Right and Left Condyles on Digital Panoramic Images Among Patients With Temporomandibular Disorder (TMD) and Use of... - December 29th, 2025 [December 29th, 2025]
- Machine Learning Models Forecast Gayatri Highways Limited Uptick - Inflation Impact on Stocks & Fast Profit Trading Ideas - bollywoodhelpline.com - December 29th, 2025 [December 29th, 2025]
- Machine Learning Models Forecast Punjab Chemicals and Crop Protection Limited Uptick - Blue Chip Stock Analysis & Double Or Triple Investment -... - December 29th, 2025 [December 29th, 2025]
- Machine Learning Models Forecast Walchand PeopleFirst Limited Uptick - Risk Adjusted Returns & Investment Recommendations You Can Trust -... - December 27th, 2025 [December 27th, 2025]
- Machine learning helps robots see clearly in total darkness using infrared - Tech Xplore - December 27th, 2025 [December 27th, 2025]
- Momentum Traders Eye Manas Properties Limited for Quick Bounce - Market Sentiment Report & Smarter Trades Backed by Machine Learning -... - December 27th, 2025 [December 27th, 2025]
- Machine Learning Models Forecast Bigbloc Construction Limited Uptick - MACD Trading Signals & Minimal Risk High Reward - bollywoodhelpline.com - December 27th, 2025 [December 27th, 2025]
- Avoid These 10 Machine Learning Project Mistakes - Analytics Insight - December 27th, 2025 [December 27th, 2025]
- Infleqtion Secures $2M U.S. Army Contract to Advance Contextual Machine Learning for Assured Navigation and Timing - Yahoo Finance - December 12th, 2025 [December 12th, 2025]
- A county-level machine learning model for bottled water consumption in the United States - ESS Open Archive - December 12th, 2025 [December 12th, 2025]
- Grainge AI: Solving the ingredient testing blind spot with machine learning - foodingredientsfirst.com - December 12th, 2025 [December 12th, 2025]
- Improved herbicide stewardship with remote sensing and machine learning decision-making tools - Open Access Government - December 12th, 2025 [December 12th, 2025]