AI product design services
AI-Native Product Design and Development Services

Build AI-Native Products That Adapt.
AI-native products need to be accurate, fast, scalable, secure and bias-free. Whether you’re building new products / services, where AI is critical to its core functioning; or integrating AI into critical processes that transform experiences for your customers; you need to design AI-native solutions that are holistic in nature (not just solving for specific use-cases in patches); with a deep consideration for speed, scale, security and agility in mind. AI that doesn’t adapt in a rapidly changing business environment, can become outdated very soon and the investments you make may go futile.
At Codewave, we design and develop holistic AI-native solutions—be it an AI-first product or AI-enabled process automation; where AI is the very core of your product / service / process, maximizing value / business impact.
We use tools like TensorFlow and PyTorch to develop deep learning models that power your product’s performance—whether you need predictive capabilities, personalized user experiences, or automated workflows. From the ground up, we make sure your product is built for speed, scale and security.
Our deployment process is straightforward. We ensure that by using AWS SageMaker, your AI models can grow as needed, and FastAPI keeps your product running smoothly with low-latency APIs. Plus, by integrating Edge AI, your product can deliver personalized, real-time experiences to users wherever they are.

See our impact in action:
>98%
Model Accuracy
<50ms
Inference Latency (Responsiveness of AI models)
30% faster
Model Training
>98%
Deployment Success Rate
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AI-Native Product Design and Development
We build AI-powered products that can handle over 1 million requests per second, driving automation, adaptability, and rapid business growth with high-performance systems and services.
Traditional design thinking, which starts with user empathy, may not always be ideal for building AI-native solutions. Instead, we may need to anticipate future needs—sometimes before users even realize them. AI can introduce innovations that change behaviors, and designing around these ‘unknown’ needs requires a balance of empathy and foresight. We recommend starting with rapid prototyping and testing user behavior to iterate on the solution and unlock new possibilities.
That said, to create a product MOAT that sets you apart from competitors, we combine user research and business impact mapping. We must understand your users, observe their behaviors, and visualize how your AI will shift those behaviors. By mapping user journeys, we’ll spot key moments and touchpoints that maximize value and delight. We’ll also define the business success criteria—the KPIs, and targets to ensure your product meets both user and business goals.
This is not just for building new products, but also for improving your existing AI-native products. Using rapid experimentation and validation, we can prioritize features for maximum user value & business impact.
The core principle of AI-native UX/UI design is Adaptiveness—creating dynamic, responsive interfaces that evolve in real-time based on user interactions. Unlike traditional, one-size-fits-all designs, AI-powered UX/UI is not static; it continuously listens and adjusts, optimizing user experiences and becoming more intuitive over time. For instance, instead of a fixed hamburger menu, the most used item could be the first menu.
For AI-native products, tools like Runway ML track heatmaps and session data, enabling highly adaptive user interfaces and experiences. By analyzing user activity, the product can dynamically highlight frequently used features and adjust layouts to reflect individual preferences. We can also monitor interactions and task completion rates, identifying friction points—such as drop-offs or navigation issues—that inform the UI’s dynamic adjustments. For example, if a commonly accessed feature like “settings” is buried in a menu, the UI can automatically reposition it to a more visible location, enhancing usability.
We diagnose critical processes in your business that directly impact KPIs, analyze the size and complexity of your data, and assess whether custom AI models can simplify workflows and achieve desired outcomes. Our goal is to identify areas where AI can predict, automate, and simplify decision-making, all of which are crucial for business growth.
For instance, fraud detection is an area where your business may need improvement. We build a custom AI solution that identifies unusual spending patterns in banking transactions, flagging potential fraud in real time. This reduces financial risks and enhances security, all while ensuring legitimate user activity remains uninterrupted.
Tools like Hugging Face fine-tune LLMs to deliver context-aware recommendations, PyTorch enables deep learning models to predict failures, minimizing business downtime risks, and TensorFlow provides real-time customer sentiment analysis, helping businesses swiftly adjust and refine marketing strategies.
Our approach to AI-native product development uses MLOps to automate the entire model lifecycle—from development to deployment—ensuring scalable, high-performance AI that operates efficiently in production.
Kubeflow orchestrates pipelines, automating data preprocessing, model training, and deployment across multiple environments. MLflow tracks model performance and versioning, ensuring reproducibility and continuous improvement. TensorFlow Serving powers real-time model deployment, delivering low-latency predictions as the product scales.
For example, an AI-driven logistics service continuously analyzes traffic and delivery patterns, dynamically adjusting routes in real time to reduce transit times and fuel costs, ultimately boosting operational efficiency with every delivery.
We help you craft a Data Strategy that gives you a competitive advantage, ensuring your data pipelines are optimized to process and store critical information, always ready for actionable insights. Our approach ensures your Data Infrastructure scales effortlessly, empowering your business to grow without limits.
Apache Kafka ingests event data from multiple sources—customer interactions, IoT devices, and more—enabling real-time data processing. We store this data in Snowflake, a versatile cloud warehouse designed for fast, accurate analytics. Airflow automates ETL workflows to keep the data pipeline efficient and responsive.
For example, a retail chain tracks inventory in real time. Demand data is processed instantly, and Supply recommendations are dynamically adjusted to prevent shortages.
We design AI-native products that run efficiently on the Edge and embedded devices. Edge AI enables fast, real-time data processing, analytics, and automation directly on the device, reducing dependency on the cloud.
TensorFlow Lite executes model inference on mobile CPUs for rapid object detection and speech recognition. The Qualcomm AI Engine accelerates neural computations on edge devices like cameras and wearables. AWS IoT Greengrass ensures secure, local data processing.
For example, a smart security system leverages Edge AI for instant threat detection, analyzing video feeds directly on the device and triggering alarms within milliseconds—without needing to send data to the cloud.
Our AI-native product development ensures fairness, transparency, and compliance at every stage—from concept to product. We implement responsible AI frameworks to prevent biases and protect user rights.
IBM Watson OpenScale monitors model decisions, identifying biases in credit scoring and hiring algorithms. Microsoft’s Responsible AI Toolbox evaluates fairness metrics, ensuring AI-driven UX personalization remains unbiased. AWS Control Tower enforces GDPR and CCPA compliance, safeguarding user data.
For example, a fintech app can use our framework to design fair loan approval processes, flag potential biases, and ensure AI-driven financial products are trustworthy and user-centric.
Making Your AI-Native Product Succeed With AI
Our AI solutions keep your AI-native product sharp. Automated drift detection runs every 24 hours, ensuring >90% personalization accuracy. Your product adapts fast, stays relevant, and delivers value—effortlessly.
Uizard converts low-fidelity sketches into interactive prototypes, automating layout structuring and component placement. Framer’s Auto Layout dynamically adjusts UI elements based on viewport sizes, ensuring fluid responsiveness. AI-driven design models refine typography, spacing, and visual hierarchy in real time.
In practice, a designer sketches a basic homepage layout, and the AI generates a complete, responsive version for desktop and mobile. The AI adjusts layout elements based on user behavior and screen size, all in minutes.
Hotjar's AI heatmaps capture detailed user interactions, analyzing click patterns and scroll depth to pinpoint areas of interest. Heap's AI-powered event tracking automatically logs every user interaction, eliminating manual tagging and ensuring accurate data capture for every touchpoint.
For example, AI notices that users frequently abandon the signup process at a specific form field and flags it for review. The design team can then optimize that section, instantly improving completion rates.
We use DataRobot to build regression models to forecast revenue shifts based on seasonal demand and competitor movements. H2O.ai’s time-series algorithms predict supply chain disruptions, helping you adjust inventory before shortages impact sales.
For example, an e-commerce platform detects an upcoming surge in demand for smartwatches. AI recommends stock adjustments and dynamic pricing, boosting sales while preventing inventory shortages.
Test.ai applies machine learning to simulate user interactions, instantly flagging functional bugs like broken checkout flows or login failures. Applitools’ visual AI scans pixel-level UI variations across devices, maintaining platform consistency.
For example, AI quickly identifies a bug on a product page during testing and flags it for immediate attention. This allows the QA team to resolve the bug before deployment, ensuring smoother and faster product releases.
Dynamic Yield analyzes session data to tailor product recommendations—like suggesting running shoes if a user browses fitness gear. Algolia’s relevance algorithms adjust search results based on past clicks, query patterns, and device context, ensuring high-intent results.
For example, a user browses a few smartphones and accessories, and AI instantly adjusts recommendations to their preferences. As they interact more, the system refines the suggestions in real-time.
Cloudflare’s AI-powered load balancer monitors real-time traffic patterns, rerouting requests to the fastest available server. AWS Auto Scaling dynamically provisions compute instances based on CPU, memory, and network utilization, preventing bottlenecks and downtime.
For example, AI automatically reallocates resources to handle the extra load during a traffic surge. This adjustment keeps the system running smoothly and without user delays.
AI that works as hard as you do.
Your Industry, Our Focus
We serve 15+ industries and have partnered with 400+ businesses worldwide. From healthcare to finance, we build AI-driven products that solve your real business challenges.
Healthcare | Design AI models for predictive diagnostics and personalized treatment plans. Develop NLP algorithms to process clinical notes for faster insights. Examples: Identify early sepsis risk with EHR patterns; Analyze radiology images with CNNs for cancer detection. |
Transportation | Develop AI solutions for route optimization and autonomous navigation. Integrate computer vision for real-time traffic monitoring. Examples: Optimize delivery routes with historical GPS data; Enable driver-assist features using object detection models. |
Energy | Build predictive maintenance models for power grids. Use AI to analyze sensor data for energy efficiency insights. Examples: Forecast equipment failure from IoT data; Optimize energy distribution with demand prediction algorithms. |
Retail | Create recommendation engines for personalized shopping experiences. Apply sentiment analysis to customer reviews. Examples: Suggest products based on browsing history; Adjust inventory using sales pattern forecasts. |
Insurance | Develop fraud detection models using anomaly detection techniques. Use AI to automate claims processing. Examples: Identify suspicious claims with behavioral analytics; Predict policy risks with historical data models. |
Agriculture | Design crop monitoring tools with AI-driven satellite image analysis. Apply machine learning for yield prediction. Examples: Detect pest infestations via NDVI changes; Forecast harvest outcomes based on weather patterns. |
Education | Create adaptive learning platforms with AI-driven content customization. Develop models for student performance prediction. Examples: Identify struggling learners with quiz results; Recommend personalized study materials using behavioral analytics. |
We transform companies!
Codewave is an award-winning company that transforms businesses by generating ideas, building products, and accelerating growth.
What to expect
What to expect working with us.







Make your products think smarter.
Frequently asked questions
AI product design and development involves creating intelligent systems that learn and adapt using machine learning, NLP, and computer vision. It’s about building products that can make decisions and automate tasks with minimal manual input.
AI helps businesses process massive datasets, identify patterns, and automate complex workflows. This leads to faster decisions, better customer experiences, and optimized operations without relying on guesswork or time-consuming manual processes.
Healthcare benefits from diagnostic algorithms, finance uses AI for fraud detection, and retail relies on recommendation engines. Manufacturing applies predictive maintenance, while logistics optimizes routes with AI-driven forecasting models.
Traditional software follows pre-defined rules, while AI models learn from data to improve over time. AI can adapt to new patterns automatically, making it more flexible and effective for dynamic, real-time applications.
Timelines depend on model complexity, data availability, and integration requirements. A simple chatbot might take 4–6 weeks, while an advanced predictive analytics system could take several months to train, test, and deploy.
We focus on understanding your workflows first, then design models that deliver actionable insights. Our AI product design services combine human-centered design with machine learning models that continuously learn and adapt as your data evolves.
We build scalable, adaptive AI systems using open-source frameworks like TensorFlow and PyTorch. Our strength lies in crafting solutions that simplify complex processes and deliver measurable outcomes without disrupting your operations.
We work with machine learning, deep learning, computer vision, and NLP. Our models use advanced techniques like CNNs for image recognition and LSTMs for sequential data processing, ensuring high performance and accuracy.
Yes, we create customized AI products for sectors like healthcare, retail, and finance. Our solutions include diagnostic models for healthcare, demand forecasting for retail, and risk management tools for financial services.
We implement automated model retraining pipelines and track performance using MLOps tools. This ensures our AI models stay accurate, responsive, and aligned with evolving business needs and data patterns.
Absolutely. We use APIs and custom connectors to integrate AI with your current tech stack. Our team ensures smooth integration with platforms like Salesforce, SAP, and custom-built applications.
We offer continuous model monitoring, performance audits, and optimization. Our team provides regular updates to keep the AI models efficient and relevant as your data landscape and business needs grow.