Pideya Learning Academy

Voice and Text Sentiment AI in Customer Support

Upcoming Schedules

  • Live Online Training
  • Classroom Training

Date Venue Duration Fee (USD)
27 Jan - 31 Jan 2025 Live Online 5 Day 3250
17 Feb - 21 Feb 2025 Live Online 5 Day 3250
07 Apr - 11 Apr 2025 Live Online 5 Day 3250
23 Jun - 27 Jun 2025 Live Online 5 Day 3250
04 Aug - 08 Aug 2025 Live Online 5 Day 3250
11 Aug - 15 Aug 2025 Live Online 5 Day 3250
03 Nov - 07 Nov 2025 Live Online 5 Day 3250
15 Dec - 19 Dec 2025 Live Online 5 Day 3250

Course Overview

In today’s hyper-connected world, where every customer interaction can shape a brand’s reputation, understanding sentiment across voice and text channels is no longer optional—it’s essential. The “Voice and Text Sentiment AI in Customer Support” course by Pideya Learning Academy is designed to empower professionals with the knowledge to harness artificial intelligence and natural language processing (NLP) to uncover the underlying emotions, intents, and satisfaction levels embedded within customer communications. By translating tone, word patterns, and acoustic features into actionable insights, sentiment AI enables organizations to proactively respond to customer needs, personalize interactions, and minimize escalations.
Modern customer support ecosystems are evolving rapidly. Businesses today are challenged with managing a growing volume of customer queries across email, live chat, social platforms, and voice calls—all of which are rich with emotional signals that can significantly influence customer satisfaction and loyalty. This training explores how AI-driven sentiment detection tools can decode those signals and support real-time decision-making, helping organizations build trust, improve retention, and elevate their service delivery models.
According to MarketsandMarkets, the global NLP and sentiment analysis market is forecasted to expand from USD 10.1 billion in 2023 to USD 32.3 billion by 2028, representing a compound annual growth rate of over 25%. This growth underscores the increasing reliance on AI to interpret unstructured customer feedback. In fact, Gartner projects that by 2026, over 75% of customer service organizations will implement sentiment analytics to drive more emotionally intelligent support. Furthermore, companies integrating these solutions report a 20–30% reduction in customer churn and up to 40% improvement in first-call resolution times, highlighting the operational impact of emotional intelligence automation.
This course offered by Pideya Learning Academy provides a comprehensive foundation in both the theoretical and applied aspects of sentiment analysis. It equips participants with the tools to interpret customer tone from text, voice, and chat-based interactions, and align sentiment AI strategies with customer service operations.
Throughout the program, participants will benefit from the following key highlights:
Deep dive into NLP models for text and voice-based emotion detection
AI integration strategies for omnichannel customer support environments
Case-based learning using real-world enterprise sentiment use cases
Performance metrics to evaluate and refine sentiment AI tools
Multilingual and multicultural frameworks for emotion recognition
Acoustic feature analysis and prosodic marker interpretation in voice calls
Guidance on custom model tuning for industry-specific service datasets
Each of these elements is thoughtfully interwoven into the learning experience, ensuring that participants gain actionable insights they can immediately apply in their organizations. A special emphasis is placed on the ethical implications of deploying sentiment AI, such as respecting privacy, ensuring unbiased data processing, and accommodating linguistic diversity.
Delivered by seasoned experts at Pideya Learning Academy, this course offers a unique opportunity to explore the intersection of AI, emotional intelligence, and customer service excellence. By the end of the program, attendees will possess the strategic acumen to implement sentiment-driven insights that enhance customer interactions, reduce churn, and contribute to long-term brand loyalty.
Whether you’re a CX strategist, AI product lead, or service transformation consultant, the Voice and Text Sentiment AI in Customer Support training will elevate your ability to drive emotionally intelligent, data-informed engagement across all customer touchpoints.

Key Takeaways:

  • Deep dive into NLP models for text and voice-based emotion detection
  • AI integration strategies for omnichannel customer support environments
  • Case-based learning using real-world enterprise sentiment use cases
  • Performance metrics to evaluate and refine sentiment AI tools
  • Multilingual and multicultural frameworks for emotion recognition
  • Acoustic feature analysis and prosodic marker interpretation in voice calls
  • Guidance on custom model tuning for industry-specific service datasets
  • Deep dive into NLP models for text and voice-based emotion detection
  • AI integration strategies for omnichannel customer support environments
  • Case-based learning using real-world enterprise sentiment use cases
  • Performance metrics to evaluate and refine sentiment AI tools
  • Multilingual and multicultural frameworks for emotion recognition
  • Acoustic feature analysis and prosodic marker interpretation in voice calls
  • Guidance on custom model tuning for industry-specific service datasets

Course Objectives

After completing this Pideya Learning Academy training, the participants will learn to:
Understand the foundations of voice and text-based sentiment analysis
Evaluate various AI models used for sentiment detection and intent classification
Analyze real-time voice calls and text chats for emotional and linguistic cues
Build workflows that integrate AI sentiment tools into CRM and ticketing systems
Interpret sentiment scores to trigger automated service adjustments
Recognize cultural and language nuances in emotional detection models
Ensure ethical and unbiased use of sentiment AI in customer-facing operations

Personal Benefits

Participants will:
Gain advanced skills in sentiment modeling using voice and text analytics
Learn to interpret emotional tone from calls and messages
Develop AI readiness for cross-functional customer support strategies
Understand market-leading tools and APIs in sentiment analysis
Acquire competitive capabilities in emotion-driven service transformation
Build ethical reasoning around data privacy and emotional detection

Organisational Benefits

Organizations enrolling their teams in this course will:
Strengthen customer relationship management with emotion-aware AI tools
Increase service quality through predictive sentiment scoring
Reduce escalation rates and service failures using real-time emotional insights
Enable multilingual and multichannel support with AI-enhanced accuracy
Accelerate innovation through AI-driven customer intelligence
Align support operations with emotional intelligence goals

Who Should Attend

This course is ideal for:
Customer Experience Managers
AI Product Managers
Call Center Supervisors
CX and CRM Strategists
Technical Leads in AI & NLP
Service Transformation Consultants
Customer Analytics Specialists
Data Scientists in support-focused roles
Detailed Training

Course Outline

Module 1: Introduction to Sentiment AI in Customer Support
Evolution of sentiment analysis in service domains Role of NLP and voice recognition Key drivers and business impact Overview of customer touchpoints AI-powered sentiment engines Emotional AI vs sentiment analytics Data sources for modeling emotions
Module 2: Fundamentals of Text-Based Sentiment Analysis
Preprocessing customer chat logs Lexicon-based vs machine learning models Sentiment scoring techniques Handling sarcasm, negation, and modifiers Sentiment polarity detection Entity-level sentiment mapping Text classification and tagging
Module 3: Voice Sentiment Analysis and Emotion Detection
Acoustic and prosodic features in speech Speech-to-text preprocessing techniques Emotion classification models (anger, joy, frustration, etc.) Deep learning for voice emotion detection Call transcription sentiment layering Handling audio noise and dialect variations Phoneme-level emotional shifts
Module 4: Sentiment Detection in Multilingual Environments
Challenges in cross-language emotional inference Translation impacts on sentiment interpretation NLP toolkits for multilingual analysis Custom model adaptation Language-specific lexicons and syntax rules Speech markers in diverse cultures Use cases in global support teams
Module 5: Integrating Sentiment AI into Support Systems
APIs and AI toolkits for CRM platforms Integration with chatbots and virtual agents Mapping customer journeys using sentiment Escalation triggers based on sentiment thresholds Workflow automation using emotional cues Visualizing sentiment insights in dashboards Feedback loops for AI model retraining
Module 6: Evaluating and Tuning Sentiment AI Models
Accuracy, precision, and recall metrics Model validation strategies Dealing with class imbalance A/B testing for AI performance Drift detection and continuous learning Custom tuning for support-specific data Tools for comparative model assessment
Module 7: Sentiment AI for Social and Messaging Channels
Emotional tracking on social platforms Handling emojis, hashtags, and short forms API-based collection from social media Public sentiment monitoring Brand reputation management Real-time escalation via sentiment tags Unified view across channels
Module 8: Ethical Considerations and Bias in Sentiment AI
Data privacy and emotional surveillance Consent and transparency in sentiment usage Bias mitigation strategies Cultural sensitivity in emotional modeling Regulatory frameworks Annotator subjectivity and model fairness Avoiding over-automation
Module 9: Building Sentiment-Aware CX Strategies
Personalization based on emotional history Customer journey optimization Emotion-driven escalation paths Sentiment-informed agent performance feedback CX metrics enhanced with emotional context Long-term retention strategies Emotional loyalty drivers
Module 10: Future Trends and Innovations in Sentiment AI
Generative AI and emotion detection Sentiment-aware AI agents Multimodal sentiment detection (text, video, voice) Emotion-synthesizing response models Predictive service personalization Autonomous emotional resolution systems Roadmap for AI evolution in support

Have Any Question?

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