Skip to Content
ContentCallsAI Call Analysis

AI Call Analysis

After every call, Akol’s AI analyzes the conversation and generates a detailed summary. This helps you understand what happened without listening to the full recording.

Where to Find It

  1. Go to Dashboard > Calls
  2. Click on any completed call
  3. The AI analysis appears in the call detail page

Call Summary

Every call gets a natural language summary — a 1–2 paragraph overview of what happened during the conversation. It covers:

  • What the caller wanted
  • What information was provided
  • What actions were taken (appointments booked, messages sent, etc.)
  • How the call ended

Outcome Classification

Each call is classified into one of six outcomes:

OutcomeDescription
SuccessfulThe call achieved its goal — appointment booked, question answered, issue resolved
PartialSome goals were met but not all (e.g., question answered but caller didn’t book)
Callback NeededThe caller requested a callback or needs follow-up from your team
FailedThe call didn’t achieve its goal — caller was dissatisfied or the AI couldn’t help
SpamThe call was identified as spam or an unwanted call
DroppedThe call was disconnected unexpectedly

Customer Intent

The AI identifies the caller’s primary reason for calling. Examples:

  • “Schedule a dental cleaning”
  • “Ask about pricing for a consultation”
  • “Reschedule an existing appointment”
  • “File a complaint about service”

Sentiment Analysis

Each call receives a sentiment classification:

SentimentDescription
PositiveCaller was satisfied, friendly, or enthusiastic
NeutralCaller was matter-of-fact, neither positive nor negative
NegativeCaller was frustrated, upset, or dissatisfied

The sentiment also includes a score (a numeric value) for more granular tracking.

Emotion Tags

Beyond overall sentiment, specific emotions detected during the call are tagged. Examples:

  • Satisfied, grateful, enthusiastic (positive)
  • Confused, uncertain (neutral)
  • Frustrated, angry, impatient (negative)

Actions Taken

The analysis lists every action your AI agent performed during the call:

  • Booked an appointment
  • Sent an SMS confirmation
  • Looked up customer information
  • Transferred the call
  • Took a message

Follow-Up Recommendations

If the AI determines follow-up is needed, you’ll see:

  • Follow-up needed flag
  • Reason — Why follow-up is recommended
  • Suggested deadline — When the follow-up should happen

Use the follow-up recommendations to prioritize your callback list. Calls marked as “Callback Needed” with a follow-up deadline should be handled first.

Using AI Analysis

Prioritize Your Day

Sort calls by outcome to quickly find:

  • Callback Needed calls that require your attention
  • Failed calls to understand what went wrong
  • Negative sentiment calls that might need damage control

Improve Your Agent

Look at patterns in your call analysis:

  • Are certain questions consistently resulting in Partial outcomes? Update your agent’s knowledge
  • Are callers frequently Frustrated? Adjust your agent’s tone or responses
  • Are many calls being Dropped? Check your connection quality

Over time, the AI analysis helps you spot trends:

  • Is customer satisfaction improving or declining?
  • Which types of calls have the highest success rate?
  • What are the most common reasons people call?
Last updated on