Call Center Analytics: What They are and How to Use Them Effectively

Richard James

Richard James

Director of CX, Web | AmplifAI

Updated On:

November 24, 2025

Call Center Analytics: What They are and How to Use Them Effectively
Call Center Analytics: What They are and How to Use Them Effectively

Call center analytics should be your competitive advantage. Every day your contact center generates massive amounts of data through voice calls, chats, emails, surveys, and CRM updates, but you're only catching maybe 10% of the insights buried in that data while the other 90% gets lost in the noise.

Without a unified system connecting these sources, managers spend half their day jumping between disconnected reports trying to understand what's happening.

While you're reconciling spreadsheets quality issues develop, compliance risks build, your best agents are burning out, and the customer insights you need to make decisions are buried in a sea of disconnected data that doesn't talk to each other.

call center analytics data overload
reviewing call center analytics takes up 30-40% of a team leaders day

Your current call center analytics software might show you what already happened, but can it effectively prevent problems from occurring based on the data it's gathered?

Manual QA tools catch 1-2% of calls while random sampling misses 98% of coaching opportunities, by the time your analytics and reporting software flags problems, you're doing damage control instead of prevention.

Extracting the full value from your call center analytics data starts with recognizing where your data comes from, what types of analytics matter, and which software can actually turn that data into results.

While some vendors offer true AI-powered call center analytics software through unified data, most sell disconnected point solutions that add to your dashboard burden.

In this guide we're breaking down the core call center analytics data sources, types of call center analytics, and reviewing the top AI-powered call center analytics software to help you maximize the ROI of your analytics data.

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Looking for AI-powered software to maximize the value of your call center analytics data?

Don't miss our review of the top 5 call center analytics software.


What are Call Center Analytics?

Call center analytics is the practice of interpreting data from customer interactions to uncover insights into agent performance, customer satisfaction, call trends, and service adherence.

Call center analytics unveil actionable insights from agent interactions that drive better decision-making, deeper comprehension of customer needs, and improved business processes through data-driven problem-solving.


Call Center Analytics Data Sources

Your contact center generates analytics data from eight primary sources that reveal different aspects of performance, customer experience, and operational efficiency.

Data Source What It Captures Key Insights
Voice Call Transcriptions Complete transcriptions of voice calls capturing every spoken word in agent-customer interactions, including speech patterns, tone, pace, and conversation flow Speech analytics, sentiment analysis, compliance monitoring, agent coaching opportunities, customer satisfaction trends
Video Recordings Screen recordings and video interactions that provide visual context to customer service sessions and agent workflows Visual process optimization, screen sharing analysis, agent workflow improvement, customer experience enhancement
Chat Histories Digital channel communications including chat logs, email threads, and messaging that reveal tone, speed, and resolution trends Text analytics, response quality assessment, channel optimization, agent workload distribution, resolution trend analysis
Event Logs Backend system usage data showing behavioral triggers, application interactions, and system navigation patterns during customer interactions Process bottleneck identification, system optimization, user behavior analysis, workflow efficiency improvements
CRM Integration Customer Relationship Management software data connecting customer profiles, interaction history, account details, previous interactions, and purchase behavior Personalized service delivery, cross-sell opportunities, customer lifetime value analysis, interaction context, relationship mapping
IVR Interactions Interactive Voice Response data capturing call routing patterns, menu selections, hold times, transfer rates, and automated self-service flow navigation Self-service optimization, call flow improvements, capacity planning, customer effort measurement, friction point identification
Customer Surveys Post-call sentiment data, NPS trends, customer feedback scores, comments, and satisfaction ratings immediately following interactions Customer satisfaction trends, service quality measurement, agent performance correlation, improvement opportunities, sentiment tracking
Custom Applications & Flat Files Home-grown apps and flat file data that fill gaps left by commercial platforms, including proprietary systems and legacy data sources Comprehensive data coverage, custom metric tracking, legacy system integration, unique business process analysis

What's the Difference Between Call Center Analytics and Call Center Metrics (KPIs)?

It’s a common misconception that call center analytics and KPIs are the same. In reality, they serve distinct roles in performance management.

Call center analytics are data inputs, the raw signals from interactions, behaviors, and all of the systems connected to the contact center. In contrast, call center productivity KPIs represent outputs, the measurable results that are trackable like average handle time (AHT), call volume, NPS, or customer satisfaction scores.

Think of your call center analytics as the engine that interprets behavior, while KPIs are the dashboard dials that reflect what’s happening. Metrics like average hold time, first call resolution, and net promoter score (NPS) are derived from analytics, but don’t explain why those results occur.

Without robust call center analytics, productivity KPIs lack the context needed to drive action. The data sources behind call center analytics are the foundation for any accurate, meaningful performance metric.


Types of Call Center Analytics

types of call center analytics data
types of call center analytics data

Your call center generates seven types of analytics data: speech, text, predictive, interaction, desktop/mobile, cross-channel, and self-service analytics.

Each type of call center analytics data captures different operational signals that, when analyzed properly, reveal patterns in agent performance, customer behavior, and system efficiency.

Here's a quick summary of the 7 types of call center analytics data (click any type to jump to the full breakdown):

# Call Center Analytics Type Description
1 Speech Analytics Uses AI to analyze call recordings for insights on words, audio patterns, emotions, and performance.
2 Text Analytics Analyzes written communications to extract insights and improve call center operations.
3 Predictive Analytics Forecasts future trends and outcomes using historical data to enhance operational efficiency.
4 Interaction Analytics Analyzes customer and agent interactions to extract insights and improve operations.
5 Desktop & Mobile Analytics Monitors performance and movement on desktop and mobile devices to identify inefficiencies and opportunities.
6 Cross-Channel Analytics Integrates data from multiple channels to give a comprehensive view and enhance personalized service.
7 Self-Service Analytics Analyzes customer use of self-service channels to optimize usability and reduce call volumes.

1. Speech Analytics

Speech analytics is the data captured from voice conversations—not just the words spoken, but how they're spoken. This includes tone patterns, speaking pace, silence duration, emotional indicators, and vocal stress signals that reveal what customers and agents actually experience during calls.

According to McKinsey, organizations that effectively analyze speech analytics data achieve 20-30% cost savings and 10% improvement in customer satisfaction scores.

Speech analytics data captures three distinct layers of information from every call: the words themselves, how those words are delivered, and the interaction patterns between agent and customer.

What Speech Analytics Data Contains:

  • Keyword patterns: Specific phrases that signal compliance risks, dissatisfaction triggers, or successful resolution language—showing which words correlate with positive or negative outcomes
  • Emotional indicators: Voice pitch, speed, and tone changes that reveal frustration, confusion, or satisfaction levels beyond what words alone communicate
  • Conversation dynamics: Talk-over rates, silence gaps, and speaking ratios that indicate whether agents are listening effectively or customers are engaged
  • Acoustic markers: Stress patterns and voice quality changes that signal when customers are about to escalate or when agents are struggling with difficult calls
  • Interaction sequences: Call flow patterns showing which topics lead to transfers, which responses trigger callbacks, and which approaches achieve first-call resolution

When speech analytics data is properly processed, contact center leaders can identify exactly which conversations need review, which agents need specific coaching, and which processes cause customer friction, essentially transforming thousands of hours of recordings from storage burden into high value operational intelligence.

If you're evaluating software, compare vendors in our 9 Best Call Center Speech Analytics Software guide for 2025.


2. Text Analytics

Text analytics is the data extracted from all written customer communications including emails, chats, surveys, activity in your interactive catalog, social media, and support tickets. Text analytics data reveals language patterns, sentiment signals, and communication trends that help contact centers understand how customers express problems, satisfaction, and needs through written channels.

Unlike voice analytics that captures tone and speech patterns, text analytics captures the specific words customers choose, how they structure complaints, and the topics they repeatedly mention across channels.

What Text Analytics Data Reveals:

  • Sentiment patterns: The emotional language in customer messages shows satisfaction levels, frustration points, and escalation risks before they become formal complaints
  • Topic clustering: Common phrases and repeated issues naturally group into categories like billing problems, technical issues, or service complaints, showing where customers struggle most
  • Language effectiveness: Agent response patterns show which phrases resolve issues quickly versus those that trigger escalations or negative surveys
  • Emerging issues: New terminology or suddenly frequent keywords signal product problems, service gaps, or market changes before they hit critical mass
  • Channel preferences: Writing styles and query types across email, chat, and social reveal which customers prefer which channels for specific issues
  • Resolution indicators: Specific word patterns correlate with successful resolutions versus repeat contacts, showing what actually satisfies customers
  • Analyzing customer feedback: Examines survey responses, reviews, and social media comments to identify common themes, sentiment trends, and improvement areas to enhance customer experience. Tools like Quillbot's QR Code Generator, and Uniqode's QR Code Generator help streamline feedback collection by letting customers scan a code and instantly share their input across channels.

When analytics software processes text data effectively, you stop guessing why customers are frustrated and start knowing exactly which phrases, policies, and responses drive satisfaction or complaints.


3. Predictive Analytics

Predictive analytics is the historical patterns and trends within your call center data including seasonal call volumes, customer behavior cycles, resolution time patterns, and interaction sequences that repeat over time. Predictive analytics data reveals the relationships between past events and future outcomes.

Unlike real-time analytics that show what's happening now, predictive analytics data shows what typically happens next based on what happened before, the patterns hiding in months or years of operational data that indicate probable future states.

What Predictive Analytics Data Reveals:

  • Volume patterns: Historical call data shows daily, weekly, and seasonal trends including when volumes spike, which products drive contacts at different times, and how marketing campaigns affect inbound traffic
  • Behavior sequences: Customer interaction histories reveal common paths including which issues lead to escalations, which responses trigger callbacks, and which service failures predict churn
  • Performance cycles: Agent productivity patterns show when burnout typically occurs, which metrics predict quality decline, and how tenure affects different performance indicators
  • Resolution correlations: Historical outcome data reveals which factors actually drive first-call resolution, which combinations of issues extend handle time, and which agent behaviors correlate with satisfaction
  • Staffing relationships: Past coverage data shows the actual impact of understaffing on service levels, the true cost of overstaffing by channel, and optimal skill mix for different volume scenarios
  • Risk indicators: Patterns in compliance violations, customer complaints, and quality scores that consistently precede larger problems

When analytics software processes predictive data effectively, contact centers move from reacting to historical reports to anticipating future needs including adjusting staffing before volumes spike, intervening before customers churn, and coaching agents before performance declines.


4. Interaction Analytics

Interaction analytics is the data that captures the complete back-and-forth dynamic between agents and customers, not just what was said, but how the conversation flowed, where it stalled, and what triggered resolution or escalation.

Interaction analytics data combines elements from speech and text analytics but focuses on the interaction patterns themselves: who spoke when, how topics shifted, where confusion occurred, and which exchanges led to success or failure.

What Interaction Analytics Data Reveals:

  • Conversation flow patterns: The sequence of topics, questions, and responses that show where interactions go smoothly versus where they break down, revealing process gaps and confusion points
  • Resolution pathways: The specific combinations of agent actions, responses, and techniques that successfully resolve issues versus those that trigger callbacks or escalations
  • Effort indicators: Hold times, transfer patterns, and repetition frequency that show how hard customers work to get answers and where agents struggle to provide them
  • Engagement signals: Response timing, acknowledgment patterns, and active listening indicators that correlate with customer satisfaction and successful outcomes
  • Knowledge gaps: Points where agents fumble for answers, provide incorrect information, or transfer unnecessarily, indicating training needs or process issues
  • Friction points: Specific moments where conversations stall—verification processes, policy explanations, system delays—that consistently frustrate customers

When interaction analytics data is properly analyzed, contact center leaders see beyond individual metrics to understand the complete customer journey, identifying not just that first-call resolution is low, but exactly which interaction patterns cause customers to call back.


5. Dekstop and Mobile Analytics

Desktop and mobile analytics is the data captured from agent devices and system usage including which applications agents access, how they navigate between tools, where they spend time, and what their actual workflow looks like during customer interactions.

Desktop and mobile analytics data reveals the hidden inefficiencies in your tech stack: agents toggling between seven screens to find an answer, copying data manually between systems, or waiting for applications to load while customers sit on hold.

What Desktop and Mobile Analytics Data Reveals:

  • Application usage patterns: Which tools agents actually use versus ignore, how long they spend in each system, and where they get stuck searching for information
  • Workflow inefficiencies: Screen switching frequency, manual data entry points, and system response times that add seconds or minutes to every interaction
  • Process adherence: Whether agents follow prescribed workflows, which steps they skip, where they create workarounds, and what shortcuts they've developed
  • Technical barriers: System crashes, slow load times, timeout errors, and connectivity issues that force agents to apologize while customers wait
  • Knowledge access patterns: How agents search for answers, which resources they reference most, where they give up looking, and when they transfer rather than dig deeper
  • Security and compliance gaps: Unauthorized application usage, data handling violations, and authentication issues that create risk

When desktop and mobile analytics data is properly analyzed, contact center leaders discover things like the handle time reduction wasn't about the agents speed, it was actually a system efficiency. You will see exactly which technical friction points add minutes to calls and frustrate both agents and customers.


6. Cross Channel Analytics

Cross-channel analytics is the data that tracks customer journeys across all communication channels including showing how the same customer moves from chat to phone to email, what triggers channel switches, and where disconnects happen between touch-points.

Cross-channel analytics data reveals the true customer experience: someone starting in self-service, failing to find answers, jumping to chat, getting frustrated, then calling in angry, all appearing as separate "successful" interactions in channel-specific reports.

What Cross-Channel Analytics Data Reveals:

  • Journey patterns: The actual paths customers take across channels, which combinations indicate frustration versus preference, and where customers get stuck bouncing between touch-points
  • Channel switching triggers: What causes customers to abandon chat for phone, why they follow up emails with calls, and which issues force multi-channel contact
  • Context gaps: Where information gets lost between channels, forcing customers to repeat themselves and agents to start fresh without history
  • Channel effectiveness: Which issues resolve best in which channels, where customers waste effort in wrong channels, and which channel combinations drive satisfaction
  • Preference indicators: Not just which channel customers use, but when and why they choose each one, revealing true preferences versus forced behavior
  • Resolution paths: Whether issues that start in one channel actually resolve there, or consistently require escalation to another channel to complete

When cross-channel analytics data is properly analyzed, contact centers stop optimizing individual channels in isolation and start seeing the complete customer journey including understanding that your 90% chat satisfaction score means nothing if those customers immediately call in frustrated.


7. Self Service Analytics

Self-service analytics is the data generated when customers interact with automated systems including IVR menu selections, knowledge base searches, FAQ clicks, and chatbot conversations that reveal what customers try to accomplish without agent assistance.

Self-service analytics data shows the gap between what customers want to do themselves and what your self-service options actually enable, revealing where automation succeeds versus where it forces customers to call anyway.

What Self-Service Analytics Data Reveals:

  • Abandonment points: Where customers give up in IVR menus, which knowledge articles they read but still call about, and when they choose "speak to agent" rather than continue
  • Search patterns: What customers actually search for versus what you've documented, which terms they use that return no results, and how many attempts before they give up
  • Success indicators: Which tasks customers complete independently, what percentage actually reach resolution, and which self-service options genuinely deflect calls
  • Failure loops: Where customers get stuck repeating IVR options, which authentication processes block progress, and what error messages drive immediate agent contact
  • Intent mismatches: The difference between why customers enter self-service and what options you provide, showing missed automation opportunities
  • Effort metrics: How many steps customers take to find answers, how long they spend in self-service before calling, and which paths create more work than direct agent contact

When self-service analytics data is properly analyzed, CX leaders and QA teams discover that forcing self-service isn't the same as enabling it, and that customers happily serve themselves when systems actually work, but quickly abandon broken processes for human help.

How to Maximize ROI from Your Call Center Analytics with AI

Your contact center generates all seven types of analytics data every day, but without AI-powered software to connect and process them, you're only extracting a fraction of their value. The difference between basic analytics tools and AI-powered platforms is the ability to transform isolated data points into unified intelligence that drives action.

Fragmented Analytics Data to Unified Intelligence

Traditional call center analytics software processes each data type in isolation. Your speech analytics tool identifies sentiment problems, your QA platform flags compliance issues, your performance dashboard shows declining metrics, but nothing connects these signals to reveal root causes or prescribe solutions.

The right use of AI powered by ALL of your data changes this by processing every single interaction from every system in your contact center simultaneously, identifying patterns humans can't see. When speech analytics detect frustration patterns, AI correlates them with desktop analytics showing system delays, predictive analytics revealing seasonal spikes, and interaction analytics exposing workflow breakdowns. You get complete context, not fragments.

From Historical Reports to Real-Time Action

Manual analytics review means problems get addressed days or weeks after they occur. AI processes your call centers analytics data in real-time, surfacing issues as they emerge and triggering immediate responses. Compliance risks get flagged during calls, not in weekly audits. Coaching opportunities surface immediately, and corrective actions prescribed, not waiting for monthly reviews.

From Random Sampling to Complete Coverage

When QA teams manually review 1-2% of interactions, they miss 98% of coaching opportunities and compliance risks. AI-powered call center analytics software will analyze 100% of your data - continuously, ensuring nothing critical slips through. Every conversation contributes to customer intelligence, not just the random sample.

From Insights to Outcomes

The real ROI comes when your call center analytics data automatically triggers workflows. AI doesn't just identify that an agent needs coaching, it will prescribe which specific behaviors to address, schedules the session, and track the effectiveness of the coaching sessions on agent performance. AI doesn't just flag quality issues, it also connects them to training gaps and creates targeted development plans.

This transformation from passive reporting to active management is where contact centers see measurable ROI: reduced handle times, improved satisfaction scores, lower compliance risk, and decreased agent turnover.

The call center analytics data you already generate becomes the intelligence that improves every aspect of your operation.


How to AmplifAI Your Call Center Analytics

While most call center analytics platforms stop at reporting insights, AmplifAI transforms all of your raw data into measurable performance outcomes. AmplifAI's AI-ready data foundation doesn't just analyze interactions, it turns those insights into real-time coaching, automated quality assurance, and actionable intelligence that improves agent performance and customer satisfaction at scale.

Here's how AmplifAI operationalizes your call center analytics into business results:

1. AI-Ready Data Unification

AmplifAI's patented AI-ready data integration process connects across cloud, hybrid, or on-prem environments, ingesting and continuously updating all your call center analytics data from CRMs, call recordings, IVRs, surveys, and custom systems into one operational intelligence engine. Unlike basic analytics tools that require manual data preparation, AmplifAI automatically structures disparate data sources into a real-time AI-ready foundation that powers all performance workflows.

2. Real-Time Speech Analytics & AI

AmplifAI transform every customer interaction into actionable intelligence through AI-powered speech analytics that goes beyond basic transcription. AmplifAI analyzes sentiment, identifies coaching opportunities, detects compliance risks, and surfaces performance patterns in real-time. AmplifAI's "Ask Your Transcripts" feature enables unscripted Q&A across your entire conversation database, turning historical interactions into strategic insights that drive immediate coaching actions.

See how AmplifAI compares to the top 9 call center speech analytics software.

3. Automated Performance Management

AmplifAI replaces static reporting and KPI dashboards with dynamic performance intelligence that identifies trends, predicts outcomes, and recommends next-best actions. AmplifAI's role-based performance management dashboards deliver personalized insights to supervisors, QA teams, CX leaders, Executives, and agents, enabling data-driven decisions that improve individual and team performance.

See how AmplifAI compares to the top 10 call center performance management software.

4. Intelligent Quality Assurance & Automation

AmplifAI scales QA beyond manual sampling with AI-powered auto QA (AQA) that scores 100% of interactions while maintaining human oversight and compliance calibration. AmplifAI is a full suite AQM (automated quality management) platform that fully connects QA data into coaching workflows, and CX teams. Quality becomes a real-time performance driver rather than a post-interaction audit, enabling immediate feedback loops and continuous improvement.

See how AmplifAI compares to the top 11 call center quality assurance (QA) software.

5. AI-Driven Coaching & Development

AmplifAI turns performance data into targeted coaching actions through AI-enabled workflows that identify skill gaps, surface top-performer behaviors, and deliver personalized development recommendations. AmplifAI's coaching effectiveness measurement tracks improvement outcomes, ensuring coaching investments generate measurable performance gains. Next-best coaching actions eliminate guesswork and enable supervisors to coach strategically at scale.

See how AmplifAI compares to the top 10 call center coaching osftware platforms.

6. Unified Contact Center AI Platform

AmplifAI integrates human performance management with AI agent oversight through a single platform that manages people, chatbots, and AI agents. AmplifAI provides unified performance intelligence across all interaction channels and agent types, enabling consistent service delivery and seamless performance optimization. AmplifAI's comprehensive contact center AI platform ensures every customer interaction whether handled by humans or AI meets quality and performance standards.

In the next section we evaluate the top 5 call center analytics software platforms based on these operational capabilities.


Call Center Analytics Software

Call center analytics software ranges from specialized point solutions to unified platforms. While some vendors focus on specific capabilities like speech analytics or QA automation, others unify all of your call center analytics data sources while adding performance management, coaching workflows, and AI-powered insights.

Below we evaluate seven core call center analytics capabilities and which vendors deliver them.

Call Center Analytics Software Categories What It Does Example Vendors
Data Unification & Integration Connects and unifies data from multiple contact center systems (CRM, voice recordings, chat logs, surveys, IVR) into an AI-ready foundation that enables cross-platform analytics and real-time performance intelligence. AmplifAI, CallMiner, Calabrio
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, detect compliance risks, surface coaching opportunities, and enable searchable conversation intelligence across all customer communications. AmplifAI, CallMiner, Observe.AI
Performance Management Tracks KPIs, trends, and metrics in real-time while providing role-based dashboards that deliver actionable insights to supervisors, QA teams, and agents for data-driven performance optimization and coaching prioritization. AmplifAI, Calabrio, Verint
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring, compliance monitoring, and risk detection while connecting QA insights to coaching workflows for continuous improvement and regulatory adherence. AmplifAI, Calabrio, Observe.AI
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows that identify skill gaps, measure coaching effectiveness, and deliver personalized development recommendations at scale. AmplifAI, CallMiner, Verint
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, workforce management, and telephony services that serve as the foundation for contact center operations. Genesys, Calabrio, Verint
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents while enabling consistent service delivery and measurable performance optimization across all interaction types. AmplifAI, Genesys, Observe.AI

1. AmplifAI

AmplifAI is the leading call center analytics software that unifies data from any contact center system into an AI-ready foundation powering real-time coaching, automated QA (AQA), and performance management. AmplifAI delivers more than insights and dashboards, AmplifAI drives measurable outcomes through integrated workflows that leverage AI to connect analytics to deliver insights and next best actions directly to each role in the org.

AmplifAI Call Center Analytics Software Categories

Category What It Does Capability
Data Unification & Integration Connects and unifies data from multiple contact center systems into an AI-ready foundation for cross-platform analytics
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, and detect compliance risks
Performance Management Tracks KPIs and metrics in real-time through role-based dashboards that enable data-driven coaching decisions
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring and connects QA insights to coaching workflows
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows and skill gap analysis
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, and telephony services
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents

AmplifAI transforms call center analytics from passive reporting into active performance management. With 6 out of the 7 core capabilities, a 4.8-star customer rating, recognition as a leading automated QA and QM software vendor and recognition as a Gartner Cool Vendor, AmplifAI delivers the unified call center analytics platform modern contact centers need to turn their data into results.


2. CallMiner

CallMiner call center analytics software is a leading conversation intelligence platform that transforms customer interactions into actionable insights through advanced AI and machine learning. While CallMiner excels at speech analytics and automated quality evaluations, it focuses primarily on conversation analysis rather than comprehensive performance management or AI-enabled coaching workflows.

CallMiner Call Center Analytics Software Categories

Category What It Does Capability
Data Unification & Integration Connects and unifies data from multiple contact center systems into an AI-ready foundation for cross-platform analytics ⚠️
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, and detect compliance risks
Performance Management Tracks KPIs and metrics in real-time through role-based dashboards that enable data-driven coaching decisions ⚠️
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring and connects QA insights to coaching workflows
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows and skill gap analysis ⚠️
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, and telephony services
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents ⚠️

CallMiner delivers powerful analytics for understanding customer conversations at scale, earning recognition as a Forrester Wave Leader in Conversation Intelligence. However, organizations seeking integrated coaching workflows and unified performance management may need additional platforms to complete their analytics-to-action strategy.


3. Genesys

Genesys call center analytics software provides comprehensive contact center infrastructure with built-in analytics capabilities as part of their cloud-native CCaaS platform. While Genesys excels at speech analytics, quality automation, and platform infrastructure, their analytics tools are designed primarily to support contact center operations rather than drive advanced coaching and performance intelligence workflows.

Genesys Call Center Analytics Software Categories

Category What It Does Capability
Data Unification & Integration Connects and unifies data from multiple contact center systems into an AI-ready foundation for cross-platform analytics ⚠️
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, and detect compliance risks
Performance Management Tracks KPIs and metrics in real-time through role-based dashboards that enable data-driven coaching decisions ⚠️
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring and connects QA insights to coaching workflows
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows and skill gap analysis
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, and telephony services
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents ⚠️

Genesys delivers robust analytics within their comprehensive contact center ecosystem, making them a strong choice for organizations already invested in their CCaaS platform. However, contact centers seeking specialized AI-enabled coaching and performance optimization may require dedicated analytics platforms to maximize agent development outcomes.


4. Verint

Verint call center analytics software delivers comprehensive workforce optimization capabilities with AI-powered analytics, automated quality management, and speech intelligence. As an enterprise WFO platform, Verint provides strong analytics and quality automation tools but lacks the AI-enabled coaching workflows and next-best-action capabilities needed for advanced agent development and performance intelligence.

Verint Call Center Analytics Software Categories

Category What It Does Capability
Data Unification & Integration Connects and unifies data from multiple contact center systems into an AI-ready foundation for cross-platform analytics ⚠️
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, and detect compliance risks
Performance Management Tracks KPIs and metrics in real-time through role-based dashboards that enable data-driven coaching decisions ⚠️
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring and connects QA insights to coaching workflows
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows and skill gap analysis
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, and telephony services ⚠️
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents ⚠️

Verint offers a solid workforce optimization platform with proven analytics capabilities across enterprise contact centers. While their Quality Bot and speech analytics provide valuable insights, organizations focused on AI-driven coaching effectiveness and unified performance intelligence may need specialized platforms to complete their agent development strategy.


5. Calabrio

Calabrio call center analytics software combines workforce optimization with AI-powered interaction analytics through their unified ONE platform. While Calabrio delivers strong speech analytics and quality automation capabilities, their platform focuses primarily on workforce management and operational efficiency rather than AI-enabled coaching workflows and performance intelligence optimization.

Calabrio Call Center Analytics Software Categories

Category What It Does Capability
Data Unification & Integration Connects and unifies data from multiple contact center systems into an AI-ready foundation for cross-platform analytics ⚠️
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, and detect compliance risks
Performance Management Tracks KPIs and metrics in real-time through role-based dashboards that enable data-driven coaching decisions ⚠️
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring and connects QA insights to coaching workflows
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows and skill gap analysis
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, and telephony services ⚠️
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents ⚠️

Calabrio provides a comprehensive WFO suite with solid analytics foundations for contact center operations. However, organizations seeking advanced AI-driven coaching effectiveness, next-best-action workflows, and unified performance intelligence may require specialized platforms to maximize agent development and measurable coaching outcomes.


6. Observe.AI

Observe.AI call center analytics software specializes in conversation intelligence and automated quality assurance using advanced AI and natural language processing. While Observe.AI excels at speech analytics and interaction scoring, their platform focuses primarily on conversation analysis and compliance monitoring rather than comprehensive performance management or AI-enabled coaching development workflows.

Observe.AI Call Center Analytics Software Categories

Category What It Does Capability
Data Unification & Integration Connects and unifies data from multiple contact center systems into an AI-ready foundation for cross-platform analytics ⚠️
Speech Analytics & AI Analyzes voice interactions using AI to extract insights, identify sentiment, and detect compliance risks
Performance Management Tracks KPIs and metrics in real-time through role-based dashboards that enable data-driven coaching decisions ⚠️
Quality Assurance & Automation Automates quality evaluations through AI-powered scoring and connects QA insights to coaching workflows
Coaching & Development Transforms performance data into targeted coaching actions through AI-enabled workflows and skill gap analysis
CCaaS Infrastructure & Platform Provides cloud-native contact center infrastructure including voice routing, omnichannel orchestration, and telephony services
Contact Center AI Platform Provides unified management and performance intelligence across human agents, chatbots, and AI agents ⚠️

Observe.AI delivers sophisticated conversation intelligence with strong automation capabilities for quality assurance and compliance monitoring. However, organizations seeking integrated coaching workflows, unified performance dashboards, and comprehensive contact center infrastructure may need additional platforms to build a complete analytics-to-action strategy.


AmplifAI Named Leading Automated QA & Quality Management Software of 2025

AmplifAI named a Leading Automated QA & Quality Management software provider in the 2025 CMP Research Prism report.
AmplifAI named a Leading AQA (Automated Quality Assurance)  & AQM (Automated Quality Management) software platform in the 2025 CMP Research Prism report.

AmplifAI was named a Leading Automated QA and Quality Management Software provider in the 2025 CMP Research Prism an independent evaluation of 17 contact center platforms based on innovation, implementation, and customer impact.

The report highlights key investment criteria across automation, coaching integration, and real-time performance outcomes. AmplifAI’s inclusion reinforces its position as a unified platform for QA, analytics, and coaching, delivering measurable improvements across compliance, quality, and agent performance.


Explore More Call Center Software Guides

If you’re ready to operationalize your call center analytics, these expert-reviewed guides will help you implement the right tools for the job.

👉 Check out the Best Call Center Speech Analytics Software for 2025

👉 Explore the Best Call Center Performance Management Software (AmplifAI unifies metrics, coaching, and QA into actionable dashboards).

👉 See the Top Call Center Coaching Software Platforms (AmplifAI ranks #1 for coaching effectiveness and next-best action workflows).

👉 Discover the Best Call Center Quality Assurance Software (AmplifAI automates QA scoring and links feedback to coaching in real time).

👉 Read the Best Call Center Gamification Software Guide (AmplifAI uses analytics data to boosts agent engagement through real-time recognition + performance rewards).


Call Center Analytics FAQs

How does AmplifAI leverage call center analytics data?

AmplifAI transforms raw data into real-time insights, predicts outcomes, automates analysis, and personalizes agent coaching at scale. Learn more how AI transforms raw data into real-time coaching signals. Read more about how AmplifAI improves call center analytics.

What does call center analytics measure?

Call center analytics measure everything from agent behavior, customer sentiment, call trends, channel usage, and self-service effectiveness using voice, text, and interaction data. Read more on the 7 types of call center analytics.

What types of call center analytics data are collected?

Call center analytics pulls data from sources like voice transcriptions, CRM systems, chat logs, surveys, and IVR interactions, each offering different insights into customer behavior and agent performance.

View the full list of call center analytics data sources

What makes AmplifAI Call Center Analytics Software different?

AmplifAI's call center data integration process ingests and manages all types of call center analytics into an AI-ready continuously updating layer that transforms analytics into actions. Compare call center analytics software.

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Richard James

Richard James

Director of CX, Web | AmplifAI

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Richard is an AI technologies expert with over 15 years of experience in guiding brands to find the right software, AI, and UX solutions to solve their problems. Richard has a deep understanding of customer experience (CX) technologies that positively impact both customers and support agents. With a passion for research and continuous learning, Richard is an advocate for technology that augments, not replaces what makes us human. When not immersed in research, you might find him blazing new trails with his wife Tara and their dogs, or crafting culinary masterpieces in the kitchen.

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