Advantages of Using Extractive AI
Extractive models enhance operational efficiency by summarising and extracting key information from large datasets, saving time in decision-making processes.
Following are the advantages of using extractive AI:
Efficiently organises and summarises information from diverse sources, improving accessibility for teams.
It provides transparent reasoning and facilitates auditing. This is critical for industries with regulatory requirements.
Minimises risks of exposing sensitive customer data. This ensures better data security and compliance with privacy regulations.
It enables better decision-making by extracting relevant insights from large datasets, supporting informed and data-driven choices.
Helps maintain brand alignment by summarising information from approved knowledge bases, reducing the risk of generating off-brand content.
contribute to innovation and creativity by generating new content, supporting tasks such as creative writing, idea generation, and product innovation.
Use Cases for Extractive AI
Analysing Financial Data
Extractive AI can analyse lengthy financial reports, earning statements, and regulatory filings. It identifies and summarises key information, such as financial performance, risks, and strategic initiatives, allowing analysts to quickly grasp essential insights. Additionally, it can review large datasets of financial transactions, summarising patterns and identifying anomalies that may indicate fraudulent activities. This aids in real-time fraud detection and prevention.
Customer Service in Banking
Customers who visit the bank often have queries regarding their personal bank account, money transacted on a specific date, or other finance related information. Extractive AI supports customers’ needs by extracting key details for efficient issue resolution. This enhances the overall customer experience in the financial sector.
Analysing Customers’ Feedback
Extractive models can process customer reviews and feedback, summarising sentiments and extracting key insights. This helps retailers quickly identify areas for improvement and make data-driven decisions to enhance customer satisfaction. It can also summarise information from competitor reports, industry analyses, and market research. This enables retailers to stay informed about competitors' strategies, pricing, and product offerings for better positioning in the market.
Price Monitoring and Adjustment
Extractive models can summarise pricing data from competitors and market trends. Retailers can use this information to make informed decisions on pricing adjustments, ensuring competitiveness and maximising profit margins. Additionally, it can process product descriptions, user manuals, and specifications, summarising essential information. This facilitates quicker product onboarding, simplifies training for sales associates, and enhances the overall product knowledge within the organisation.
Trend Analysis in the Market
Trends and customer preferences in the market never remain; the same. They are dynamic. Thus, with the help of extractive AI, you can process fashion trends, consumer preferences, and industry reports, by summarising key insights. This aids retailers in making informed decisions about merchandising, inventory selection, and marketing strategies.
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