For every business, improving customer experience and automating workflows remain ongoing priorities. That’s why, as your zero-headaches software development partner, we think ahead and fix problems before they hit your inbox. With product recognition solutions, you can find missing items, streamline stock management, and get more reliable data to draw your business processes upon without extra stress.
We eliminate errors in inventory management with precise product identification, ensuring accurate stock levels.
We automate product cataloguing so your team can skip the manual entry and focus on what truly matters – driving your business forward.
We minimise the risk of human error by using AI-driven recognition for consistent product information.
We help you track products across stores and the supply chain, making loss prevention a lot easier.
We catch defects and mislabelled items automatically, so your quality control stays tight without extra stress.
With Altamira, you get zero-headache software that keeps your shelves in order and store operations running smoothly.
As a rule, product recognition solutions are widely used in retail for two main purposes:
Computer vision-powered apps help you check if products are placed correctly on shelves, making it easier to follow the store’s plan and move toward a more digital retail setup.
Computer vision systems make shopping faster and easier for customers while helping retailers cut costs.
Computer vision makes stock audits faster and more accurate, giving you real-time updates on inventory and missing items.
We don’t stretch projects into “phases.” We ship usable AI solutions for business fast, test in real data, and scale what works.
We build AI inside your infrastructure, not on top of it. Your systems. Your data. Your rules.
We use AI daily. We know what works because we’ve already broken it, fixed it, and scaled it ourselves.
Clients see 4× faster delivery and up to 30% cost reduction once AI-powered business solutions go live. Efficiency stops being a KPI, it becomes your default setting.
What we do: Interview stakeholders, review data flows, check system access, and score use cases by impact vs. effort. What you get: A short decision brief: target workflow, success metric, data needs, and risk flags.
What we do: Build a working pilot against real data: a copilot, agent, or model plugged into a safe slice of your stack. What you get: A demo you can click, latency/accuracy numbers, and a rollout plan.
What we do: Wire the pilot into production: APIs, auth, permissions, logs, and monitoring. What you get: A deployed feature or workflow that people actually use – with audit trails and alerts.
What we do: Expand to new teams/use cases, tune prompts/models, and train your people. What you get: Dashboards, SOPs, and a clean handover – or we keep running it with you.
AI in computer vision refers to the implementation of artificial intelligence techniques to enable computers and systems to derive meaningful information from digital images, videos, and other visual inputs. It involves training machines to interpret and understand the visual world in a way that mimics human vision, using deep learning models and neural networks.
Yes, computer vision solutions utilise AI techniques, particularly machine learning algorithms, to interpret visual data. However, not all AI involves computer vision. AI can be applied in other domains like speech recognition, analytics, and language translation. Get in touch to discover more!
Yes, AI computer vision can predict outcomes based on visual data analysis. By training on large datasets, these systems can identify patterns and make predictions, such as forecasting trends, detecting potential defects in manufacturing, or anticipating movements in autonomous vehicles.
AI recognition refers to the ability of AI systems to identify and understand patterns, objects, speech, text, or data. Computer vision often involves recognizing and interpreting visual elements in images or videos, such as facial recognition, product recognition, object detection, and scene analysis. Contact us to learn how AI recognition can benefit your business.
AI can significantly facilitate product development by analysing market trends, customer preferences, and feedback. It can also streamline the design process through predictive modeling, automate testing and quality control with precision, and enhance customisation and personalisation of products based on consumer data analysis. For example, by integrating AI product recognition technology, retail stores can swiftly identify items for inventory management and enhance customer shopping experiences. Contact us to learn more!
Visual recognition AI is a technology that enables computers to identify and process visual data from the world around them. This includes identifying objects, faces, scenes, and activities in images and videos. It’s widely used in various applications, from security surveillance to healthcare diagnostics and consumer applications like photo tagging. For example, the latest advancements in computer vision recognition have significantly improved the accuracy of automated facial recognition systems used in security applications.