Data Analysis Portfolio

Dive into our data analysis portfolio to discover part of the projects we developed for worldwide clients.

Interested in getting a custom data analytics offer for your business? Send us a request by using the contact form.

Predictive models for rental car prices  

Relying on a dataset of car hire pricing information from Australia, we built predictive models that can forecast prices and the number of available cars at a given point in time.

Data Analysis Portfolio Roweb
Data Analysis Portfolio Roweb
Data Analysis Portfolio Roweb

Data Analytics based on a custom CRM (WHISE)

Contrary to popular belief, Lorem Ipsum is not simply random text. It has roots in a piece of classical Latin literature from 45 BC, making it over 2000 years old. Richard

Coming soon in our Data Analysis Portfolio

Data Analytics Services

We're preparing to launch soon several intelligent software designed by our Data Analytics team so customers can interact live on the platform with our specialist.

We are also going to offer our customers the opportunity to process their data and test the usefulness of our products. (The references to these products will also be available in our Data Analysis Portfolio

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Want to be the first to know when these products will be officially launched and available in our Data Analysis Portfolio?

Leave us your contact information, and we'll get back to you with news about the launch of these products.

Interested to find out what kind of insights you can obtain for your company/ products/ industry?

Check out some insights examples:

Finance and Banking

Insurance

Telecommunications

Real Estate

Tourism and Hospitality

eCommerce

HOW CAN YOU USE DATA ALALYTICS IN

Finance and Banking

Credit Risk Assessment:

Traditional credit scoring models have limitations in assessing creditworthiness. Machine learning can analyze vast and diverse data sources—transaction history, social media activity, and more—to provide more accurate credit risk assessments. Models like gradient boosting, neural networks, or ensemble methods can improve credit decision-making.

Fraud Detection:

Financial institutions face constant threats from fraudulent activities. Machine learning models excel in detecting anomalies and patterns in transactions, enabling the identification of potential fraudulent activities. Techniques like anomaly detection, supervised learning, and network analysis can enhance fraud detection systems.

Algorithmic Trading and Investment Strategies:

Machine learning algorithms can analyze market trends, historical data, and other factors to develop more sophisticated trading strategies. Reinforcement learning, neural networks, and natural language processing (NLP) techniques are used to make informed trading decisions and optimize investment portfolios.

Customer Service and Personalization:

Machine learning enables banks and financial institutions to offer personalized customer experiences. Chatbots driven by natural language processing (NLP) can handle customer queries, while recommendation engines use customer behavior data to suggest tailored financial products and services.

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HOW CAN YOU USE DATA ALALYTICS IN

Insurance

Risk Assessment and Underwriting:

Machine learning algorithms can analyze diverse data sources—including customer information, historical claims data, telematics, and external data like weather patterns or socio-economic trends—to assess risks more accurately. This helps insurers create better pricing policies and make informed underwriting decisions.

Fraud Detection:

Insurance fraud is a substantial issue affecting the industry. Machine learning models excel at detecting anomalies in claims data, identifying suspicious patterns, and flagging potential fraud cases. Techniques like anomaly detection, predictive modelling, and network analysis aid in fraud prevention.

Claims Processing and Automation:

Machine learning can streamline claims processing by automating certain tasks, such as document processing, damage assessment, and claim verification. Optical Character Recognition (OCR) combined with machine learning algorithms can extract information from documents, accelerating claim settlements.

Predictive Analytics for Risk Mitigation:

Machine learning models can predict and mitigate risks by analyzing patterns in data related to policyholders, weather events, market trends, and more. Predictive analytics helps insurers proactively manage risks, prevent losses, and improve overall portfolio performance.

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HOW CAN YOU USE DATA ALALYTICS IN

Telecommunications

Network Optimization and Management:

Machine learning models can analyze network traffic patterns, predict network congestion, and optimize routing. They help in dynamic network optimization, predictive maintenance, resource allocation, and improving network performance and reliability.

Predictive Maintenance for Infrastructure:

Machine learning algorithms can analyze data from sensors and devices in the telecommunications infrastructure to predict potential failures or maintenance needs. Predictive maintenance minimizes downtime, enhances service availability, and reduces maintenance costs.

Customer Churn Prediction and Retention:

Machine learning models can analyze customer data, usage patterns, and behaviour to predict potential churn. By identifying factors contributing to churn, telecom companies can implement targeted retention strategies and personalized offerings to reduce customer attrition.

Fraud Detection and Security:

Telecommunications companies face various fraud risks, including subscription fraud and call detail record manipulation. Machine learning models can detect anomalies in usage patterns, network traffic, and subscriber behaviour to identify potential fraud, enhancing security measures.

Service Quality and Customer Experience:

Machine learning helps in monitoring and improving service quality by analyzing network performance metrics, call data records, and customer feedback. This enables telecom providers to identify and resolve issues proactively, leading to better customer experiences.

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HOW CAN YOU USE DATA ALALYTICS IN

Real Estate

Property Valuation:

Predicting accurate property prices is a significant challenge. Machine learning models, particularly regression algorithms, can analyze historical data on property sales, location attributes, market trends, and property features to predict property values more accurately.

Demand Prediction:

Understanding future demand for specific types of properties in certain locations is crucial for developers and investors. Machine learning models can analyze demographic data, economic indicators, and historical sales data to forecast demand in different areas, aiding in strategic decision-making.

Property Recommendation:

Matching properties with potential buyers or renters can be challenging due to diverse preferences. Machine learning recommendation systems, employing collaborative filtering or content-based approaches, can suggest properties to users based on their past interactions, preferences, and behaviour.

Risk Assessment and Fraud Detection:

Machine learning can assist in assessing the risk associated with real estate investments and loans. Models can analyze financial data, market trends, and historical patterns to identify potential risks and anomalies, thereby aiding in fraud detection and risk mitigation.

Portfolio Management and Investment Strategy:

Real estate investors often face challenges in optimizing their portfolios and devising effective investment strategies. Machine learning algorithms can analyze market trends, historical performance data, and risk profiles to provide insights for portfolio optimization and decision-making.

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HOW CAN YOU USE DATA ALALYTICS IN

Tourism and Hospitality

Personalized Recommendations and Customer Experience:

Machine learning algorithms can analyze customer preferences, behavior, and historical data to offer personalized recommendations for travel destinations, accommodations, activities, and experiences. Recommendation systems powered by collaborative filtering or content-based approaches can enhance customer satisfaction.

Demand Forecasting and Pricing Optimization:

Understanding future demand for specific types of properties in certain locations is crucial for developers and investors. Machine learning models can analyze demographic data, economic indicators, and historical sales data to forecast demand in different areas, aiding in strategic decision-making.

Reputation Management:

Monitoring and understanding customer behavior and reviews across various platforms are vital for reputation management in the hospitality industry. Natural Language Processing (NLP) models can analyze reviews, social media content, and feedback to gauge customer satisfaction levels and identify areas for improvement.

Operational Efficiency and Resource Management:

Machine learning can optimize various operational aspects in hospitality, such as staff scheduling, inventory management, energy consumption, and maintenance schedules. Predictive analytics and optimization algorithms can help streamline operations, reduce costs, and enhance efficiency.

Tourism Destination Management and Planning:

Machine learning can assist in analyzing tourist behavior, traffic patterns, and preferences to aid in destination management and planning. Predictive models can forecast visitor arrivals, identify peak times, and optimize tourist flows, contributing to better infrastructure planning and resource allocation.

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HOW CAN YOU USE DATA ALALYTICS IN

eCommerce

Personalized Shopping Experience:

Machine learning algorithms can analyze customer behavior, browsing history, purchase patterns, and demographics to provide personalized product recommendations. Recommendation systems can use collaborative filtering or content-based approaches to suggest products, improving customer engagement and sales.

Inventory Management and Demand Forecasting:

Predicting demand for products and managing inventory efficiently are critical for eCommerce businesses. Machine learning models can analyze historical sales data, seasonality, trends, and external factors to forecast demand accurately. This helps in optimizing inventory levels and reducing stockouts or overstock situations.

Fraud Detection and Prevention:

eCommerce platforms are susceptible to fraudulent activities. Machine learning models can detect anomalies in transaction patterns, user behavior, and payment information to flag potentially fraudulent activities. Techniques like anomaly detection, supervised learning, and network analysis aid in fraud prevention.

Dynamic Pricing and Revenue Optimization:

Machine learning algorithms can optimize pricing strategies by analyzing competitor pricing, market demand, customer behavior, and other variables in real time. Dynamic pricing models can adjust prices dynamically to maximize revenue while staying competitive.

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