Exploring Natural Language Processing — Communication Redefined

Gauravkhanna
3 min readDec 19, 2023

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Natural Language Processing (NLP), a branch of artificial intelligence (AI), focuses on bridging the communication gap between humans and computers. Its aim is to equip machines with the ability to understand, interpret, and even generate human language in a natural and context-aware way. This versatile field encompasses diverse tasks like text and speech recognition, language translation, sentiment analysis, and even writing. Ultimately, NLP strives for seamless human-computer interaction, making it feel as natural and intuitive as talking to a friend.

Product managers can leverage NLP for strategic analysis of vast text data, including sales win/loss reports, product reviews, social media comments, and support tickets. This data-driven approach unlocks valuable insights into customer needs, helps identify product gaps, and reveals potential new features. Furthermore, NLP empowers personalized experiences for users, addressing aspects like language localization, compliance, and risk assessment.

Case Study: Quantifying the Value of Press Release Distribution with NPL-powered Tracking and Analytics

Challenge: While working at Nasdaq, we faced a dilemma with our press release business. Clients desired comprehensive media coverage for their press releases, but quantifying the incremental value of adding more outlets was difficult. Charging solely based on the number of outlets picked up felt arbitrary and lacked transparency.

Solution: Nasdaq embraced NLP to transform its press release distribution model. Here’s how:

  • Embedded Metadata & Tracking: Each press release received a unique digital fingerprint, allowing it to be tracked across the web. This fingerprint, invisible to the reader, provided irrefutable proof of publication and facilitated impact analysis.
  • AI-powered Web Crawling & Monitoring: A custom-built AI system continuously scanned the web for the embedded metadata. This system identified published press releases, even if rephrased or syndicated, ensuring complete coverage.
  • NLP & Sentiment Analysis: NLP algorithms analyzed the context of mentions, identifying positive, negative, or neutral sentiment towards the client and their press release. This provided invaluable insights into public perception and potential areas for improvement.
  • AI-driven Impact Analysis & Reporting: The system automatically tracked key metrics like mentions, reach (estimated readership of publishing outlets), and engagement (likes, shares, and comments). This data was then used to generate comprehensive reports for clients, showcasing the tangible impact of their press releases.
  • Client Dashboards & Automated Reporting: Interactive dashboards powered by AI and data visualization provided clients with real-time insights into their press release performance. Automated reports generated using NLP summarized key metrics in a clear and concise format, saving clients time and effort.
  • Continuous Improvement & Feedback Loop: The system continuously monitored its own performance and incorporated feedback from clients to refine its algorithms and tracking methods. This ensured constant improvement in accuracy and effectiveness.
  • Predictive Analytics & Personalized Recommendations: In the next phase, ML models can be trained on historical data, enabling the system to predict the potential reach and engagement for different media outlets. This will allow Nasdaq to recommend the most effective distribution strategies for each client, maximizing their return on investment.

Conclusion: By quantifying the value of each media outlet, we were able to foster greater transparency and trust with clients. Clients could now see the direct impact of their investment in press release distribution. Equipped with tangible data and personalized recommendations, clients felt more empowered to make informed decisions about their press release distribution. Lastly, AI-powered insights enabled Nasdaq to move beyond a simple “number of outlets” pricing model. They could now tailor pricing and distribution strategies based on the predicted reach, engagement, and overall value for each client.

“Enjoyed this read? Dive deeper! This article is part of the ‘AI for Product Managers Guide.’ Explore more to unlock AI’s full potential in business and empower your product management journey.

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