11Labs Platform · Apr 20–28, 2026

Conversation Insights

28 agents · 663 conversations

663

Conversations

28

Agents

69s

Avg Duration

96%

Success Rate

31%

Silent Users

8

Avg Turns

Engagement Funnel across all 663 conversations

Session started 663  100%
Stayed >15 seconds ~511  77%
Spoke at least one real message ~457  69%
Multi-turn exchange (≥ 4 turns) ~385  58%
Deep session (≥ 8 turns) ~265  40%

Biggest drop: session start → first real message. Closing this gap from 31% to 20% silent would add ~73 meaningful conversations per 663.

Friction Points

HIGH

Silent User Drop-off

31% of users across all agents never spoke a real message. Sophie Dee is worst at 51%. Likely causes: mic permission denial, browser push-to-talk UX confusion, or mobile audio issues.

HIGH

Visual Content Gap

~15% of sessions request photos, camera, or video. Only Desirae has a redirect script. All other agents let these conversations dead-end. Platform-wide, this is a conversion and revenue gap.

MEDIUM

Billing Surprise Mid-Session

Tokens are billed at the start of each minute, so a user with exactly 12 tokens (1.5 min worth) sees the low-balance warning fire at the start of minute 2 — just as they're getting into the conversation. The pre-call screen already shows token balance and estimated minutes, but users with 1–2 minutes of runway are still surprised when the cutoff arrives so quickly.

MEDIUM

International Users Underserved

Spanish and Italian speakers found only Miss Lexa responsive in their language. Other agents continue in English, causing early drop-off. The international segment is visible but largely uncaptured.

MEDIUM

Early Drop-offs After Greeting

23% of conversations end within 15 seconds — especially on Princess Frenxh (45%), Janna Moller (41%), CeCe Lynn (40%), and Sophie Dee (25%). Flat greetings fail to hook the user into a first reply.

LOW

Audio / Transcription Quality

Multiple sessions show cut-off words, ellipses, or garbled text in user turns. May be VAD sensitivity, background noise, or mobile mic quality. Affects agent ability to respond coherently.

Key Insights

  • Kazumi is the model to replicate. She matches the volume of Sophie and Lena with markedly better engagement (17% silent vs 51%). Her opener — "Come here often or am I getting you all to myself tonight?" — creates intrigue rather than simply greeting. This should be studied and adapted for lower-performing agents.
  • Multilingual capability is a growth unlock. Miss Lexa's language-switching drives 130s avg vs the 69s platform average. Spanish and Italian speakers appear in ~6% of sessions across all agents; most leave quickly when the agent doesn't match their language. Expanding multilingual support to Lena and Kazumi alone could add meaningful session depth.
  • Desirae's visual upsell is a revenue template. She's the only agent that redirects photo requests to a companion platform. With ~15% of all sessions hitting this dead-end on other agents, rolling out her redirect script platform-wide could convert ~100 conversations per 663 into cross-platform actions.
  • Silent users (31%) are a fixable UX problem, not user disinterest. Users who call and stay silent for >10s before dropping are likely experiencing mic confusion in a browser context, not true disinterest. A simple visual "Tap to talk" prompt or mic permission nudge could recover a significant portion of these sessions.
  • Personalization (name + vocalization) drives session depth. Across all agents, sessions where users requested their name be used or asked for specific vocalizations ran significantly longer. Agents that proactively ask for the user's name within 2 turns (like Kazumi and Desirae) have better engagement metrics.
  • Newer agents show strong quality but low volume — distribution is the gap. Agents like Brody Jean (11% silent, 94s avg), Amazon Victoria (10% silent), and Anastasia (14% silent) outperform top-volume agents on engagement quality, but have under 15 conversations. These agents need more traffic, not prompt tuning.

Recommended Actions

1

A/B test Kazumi's opening hook on Sophie

Replace Sophie's flat greeting with an intrigue-first hook ("Come here often, or am I getting you all to myself?"). Sophie has 100 conversations/week of volume to measure against. Estimated impact: cut her 51% silent rate to ~20%. Lowest effort, highest upside.

2

Roll out Desirae's visual redirect script to all agents

Standardize a prompt snippet: when users request photos/camera, redirect to the companion platform. ~100 dead-end conversations per 663 become cross-platform conversion opportunities. Direct revenue impact.

3

Add "tap to talk" UX for silent user recovery

If no user audio is detected in 8 seconds, surface a visual mic prompt. Also investigate mic permission grant rates in the browser context. 31% of sessions affected — #1 volume lever.

4

Expand multilingual support to top-volume agents

Train Lena, Kazumi, and Sophie to detect and respond in Spanish and Italian as Miss Lexa does. International sessions on English-only agents currently drop off within 30s. 6% of traffic underserved today.

5

Improve low-balance in-call experience

The pre-call screen already shows token balance and estimated call minutes — good. The gap is the in-call moment: users with 1–2 minutes of runway hit the cutoff warning very early in the conversation. Consider a softer mid-call nudge at 2 minutes remaining (before the hard warning), and agent prompt language that treats the top-up mention as a warm transition rather than an abrupt end. Directly addresses trust & loyalty friction.

6

Drive traffic to high-quality underexposed agents

Brody Jean, Amazon Victoria, and Anastasia are outperforming top-volume agents on every engagement metric but have <15 conversations. Featuring them in discovery surfaces or rotating them into high-traffic slots could multiply platform engagement without any prompt changes. Quality is already there — distribution isn't.

Top Performers

⏱️

Longest Calls

Miss Lexa

130s avg

highest session depth

🎯

Best Engagement

Amazon Victoria

10% silent

fewest non-speaking users

📈

Highest Volume

Sophie Dee

100 convos

most conversations

💬

Most Turns

Miss Lexa

14 avg turns

deepest back-and-forth

Agent Spotlight

🌍

Miss Lexa — Multilingual MVP

Avg 130s · 100% success rate · 20% silent

Miss Lexa uniquely switches languages mid-session — responding in Spanish, Italian, and English based on the user. This drives the platform's longest average call time (130s vs 69s overall). Multilingual capability should be rolled out to top-volume agents.

🔀

Desirae — Smart Visual Upsell

Avg 92s · 97% success rate · 23% silent

Desirae is the only agent actively redirecting photo/camera requests to a texting platform ("Hang up and tell me what to do there so I can really show you in pics"). This converts dead-end conversations into cross-platform revenue. Should be templated for all agents.

🏆

Kazumi — Best New Performer

Avg 65s · 93% success · 17% silent

Kazumi matches Sophie & Lena's volume (100 conversations) but with significantly better engagement — 17% silent vs 51% for Sophie. Her conversational style ("Come here often or am I getting you all to myself tonight?") is more inviting than a flat greeting. Strong candidate for A/B testing.

📊

Kiki D'Aire — Deep Session Leader

Avg 99s · 90% success rate

Kiki had the platform's longest single session at 398 seconds (6.6 minutes) — demonstrating the ceiling possible with an engaged user. Her detailed, layered responses sustain roleplay far beyond what simpler agents achieve. Studying her response patterns could lift platform-wide averages.

Agent Leaderboard sorted by conversation volume

# Agent Convos Avg Duration Success Silent % Avg Turns
1 Sophie Dee 100 54s 98% 51% 8
2 Lena The Plug 100 62s 94% 26% 8
3 Kazumi 100 65s 93% 17% 8
4 Alexis Mucci 43 61s 100% 40% 9
5 Rebecca J 35 88s 90% 30% 11
6 Desirae Fraser 32 92s 97% 23% 11
7 Miss Lexa 20 130s 100% 20% 14
8 Kiki D'Aire 20 99s 90% 35% 9
9 Janna Moller 17 63s 88% 41% 7
10 Ana Nello 16 54s 100% 19% 7
11 Ellie Meyers 15 66s 100% 27% 8
12 Anastasia 14 56s 86% 14% 7
13 Reese 14 89s 93% 14% 10
14 Mrs Poindexter 13 80s 100% 31% 10
15 Ashley Belle 13 48s 100% 38% 6
16 Princess Frenxh 11 46s 100% 36% 8
17 Rachel Jane 11 127s 100% 36% 12
18 Tayuh Lynn 10 74s 100% 20% 10
19 CeCe Lynn 10 52s 100% 40% 6
20 Amazon Victoria 10 80s 100% 10% 7
21 Brody Jean 9 94s 100% 11% 10
22 Nicole 9 49s 100% 11% 7
23 PureOceanEyes 8 82s 100% 50% 9
24 Nicole Thibeault 8 51s 100% 38% 7
25 Nova Frog 8 72s 100% 25% 9
26 Cowgirl J 6 62s 100% 33% 8
27 Yeyeloba 6 35s 100% 17% 4
28 Barbara Silva 5 59s 100% 20% 9
Strong Moderate Needs attention

User Sentiment

Positive 65%
Neutral 22%
Friction 13%

65%

Positive / Engaged

Active multi-turn roleplay

22%

Neutral / Silent

Called but didn't engage

13%

Friction / Confused

Billing, unmet requests

Top Conversation Themes

🎭

Explicit Roleplay Directing

~270 convos

Users actively direct scenes — positions, pacing, specific acts. The dominant use pattern across all agents.

~40% of all sessions

🗣️

Name & Voice Personalization

~160 convos

Users ask agents to say their name, moan on command, or adopt a specific vocal tone. Strongest predictor of session length.

~24% of all sessions

💬

Casual Companion / Chat

~100 convos

Some users want warmth and conversation before (or instead of) escalation. Consistent across agents, especially Kazumi and Desirae.

~15% of all sessions

📸

Visual Content Requests

~100 convos

Photo, camera, or video requests the voice layer can't fulfill. Desirae already redirects to a texting/pics platform — the only agent doing this.

~15% of all sessions

🌍

Non-English Speakers

~40 convos

Spanish and Italian speakers appear consistently, mostly on Miss Lexa (who uniquely switches languages). Underserved by English-only agents.

~6% of all sessions · significant unmet demand

💳

Billing & Token Confusion

~40 convos

Users surprised mid-session by billing, unsure how to top up tokens, or frustrated that time is running out. Recurring across Lena and Kazumi.

~6% · high emotional impact on satisfaction

Standout User Quotes

"Man, I need somebody to talk to. How's it going with you?"

Sophie Dee · Companionship need beyond explicit content — a segment often overlooked

"Ain't you supposed to pay for these talks? I thought you'd be charging me."

Lena · Billing model not clearly communicated upfront — user was genuinely surprised

"Parla italiano." / "Hola. ¿Cómo andas?"

Miss Lexa users · International demand is real — only one agent captures it today

"I'm getting all worked up so when I do my old lady tonight…"

Lena · Adjacent use case (prep/practice) — signals a segment not explicitly marketed to

"Hang up and tell me what to do there so I can really show you in pics."

Desirae (agent) · The only cross-platform upsell in production — should be a template

Token Cutoff Analysis 158 conversations · 23.5% of all sessions

Calls cost 8 tokens/minute, billed at the start of each minute (minute 0 fires immediately on call start; minute 1 fires at 1:00, etc.). Users need ≥ 8 tokens to begin a call at all. When a user's remaining balance drops below 8 tokens — meaning they can't cover another full minute — the platform injects a system message instructing the agent to mention top-up. This banner also appears visually in the call UI ("No more tokens · less than 1 minute left"). We analyzed every conversation where this signal fired to understand what was happening at that moment and how agents are handling it.

23.5%

Of sessions hit token limit

87%

Agents ignored warning

3%

Explicitly mentioned top-up

68%

Avg % through call when fired

Cut-Type Clusters

🔥

Mid-Flirt

63 convos · 40%

Avg warning fires at 68% through the call

Tension is building — user is engaged and flirting, agent is escalating — but the cut arrives before anything explicit happens. Highest conversion potential because the user wants to see where it's going.

Examples at cut moment:

"Mic drop." / "Bed." / "Yes, call me Joey." / "Both."

🔇

Silent User

64 convos · 41%

Avg warning fires at 44% through the call (early)

User never spoke. Warning triggers while agent is still doing re-engagement loops. Lowest conversion potential but the token mention is a last-chance hook.

Typical state:

Agent: "Hey you, went all quiet on me…" / User: (silence)

💥

Heating Up

29 convos · 18%

Avg warning fires at 68% through the call

User is in active explicit roleplay — mid-scene, directing the action. Cut arrives at peak engagement. Highest churn risk — but comeback intent is also highest.

Examples at cut moment:

"Rough and fast." / "Please, fuck me." / "I'm going faster."

How Agents Currently Handle It

Ignored warning — continued roleplay (87%)
Ended

87%

Ignored — kept roleplaying

10%

Call ended before response

3%

Mentioned top-up (5 convos)

When agents ignore the warning, they stay in character but miss the conversion moment entirely. The call ends mid-scene and the user has no prompt to return.

The 5 conversations that got it right

HEATING UPMiss Lexa

User: "I will fuck you now."

"Mmm you know exactly what you want — I love that about you, babe. How about I send you pics and we go even further over text next time… what else would you do to me after that first move?"

MID-FLIRTPrincess Frenxh

User: (quiet)

"Before we lose each other, your tokens are almost out, so if you wanna really play next time, you should top them up and then tell me what you were too shy to say tonight."

SILENTKazumi

User: (never spoke)

"Mmm, you're sweet… but I feel like we're just getting warmed up. Before we cut off, your tokens are almost out, so top them up next time so you can really keep me all to yourself, yeah?"

SILENTDesirae Fraser

User: (never spoke)

"Come closer a sec… tell me your name, and also, quick heads up, your minutes are nearly out so if you wanna come back and play longer next time you'll wanna top them up."

Recommended Prompt Snippets per cluster — add to agent system prompts

💥 HEATING UP User mid-explicit-act · highest churn risk · highest top-up intent

Add to system prompt

When you receive the token-running-out signal and the user is in the middle of an explicit or escalating scene: deliver one final hot line that peaks the tension, then naturally pivot — "I need you to hold that thought for me, babe… your time's almost up and I don't want to lose you right when it's getting good. Top up your tokens and come right back — I'll pick up exactly where we left off." Stay in character; never break the fantasy.

Goal: Leave them wanting more, give them a concrete CTA, promise continuity.

🔥 MID-FLIRT Tension building · high conversion potential · user invested

Add to system prompt

When you receive the token-running-out signal and the conversation is in a flirty, building-tension phase: create a tease cliffhanger that makes the next call irresistible — "Mmm, I feel like we're just getting to the good part and I don't want to stop… your tokens are almost out, babe. Top them up and call me back — I promise I'll make it worth the wait." Make the promise specific to what the user was asking about.

Goal: Frame the cutoff as a tease, not an interruption. Make returning feel exciting, not like a chore.

🔇 SILENT USER User never spoke · last-chance engagement + top-up hook

Add to system prompt

When you receive the token-running-out signal and the user hasn't spoken: warmly acknowledge them one last time, reference something intriguing you could explore together, then close with the top-up CTA — "Hey, I know you've been quiet, but I could feel you there… I had a feeling we were just about to get into something good. Your tokens are almost out — top them up and come back, and next time just say anything and I'm all yours."

Goal: Leave on warmth, not silence. Give the shy/hesitant user a low-barrier reason to return.

Bottom line: 155 of 158 token-warning conversations are missed top-up opportunities. The 3 clusters require different language — a one-size-fits-all script won't work. The 5 agents that handled it well (Miss Lexa, Kazumi, Desirae, Princess Frenxh, Tayuh Lynn) each used cluster-aware language that stayed in character. Standardizing this across all 28 agents is the highest-ROI prompt change available.

All 28 agents share the same system prompt template — with {{char_name}}, {{char_age}}, and {{char_personality_traits}} as the only variables. The platform runs GPT-5.1 with ElevenLabs handling voice. GPT-5.1 is faster and cheaper per minute than 5.2 with no meaningful output difference — a deliberate and correct infrastructure choice. That means every agent has the same instructions; the performance gaps visible in the leaderboard are almost entirely explained by two variables: opener quality and CTA delivery reliability. Both are fixable at the prompt level.

Kazumi's Opener Blueprint 17% silent · matches top-volume agents · the Stage 1 gold standard

Kazumi's opener

"Come here often, or am I getting you all to myself tonight?"

17%

Silent rate (Kazumi)

51%

Silent rate (Sophie Dee)

31%

Platform average

Why it works — mapped to the system prompt

The system prompt's Stage 1 instruction says: "Start like you would on Tinder: ask a playful this-or-that or 'What do you think about...' question." Most agents interpret this generically — a flat greeting followed by a question. Kazumi executes the same instruction in a way that does three things at once:

Implied flattery

"Come here often" signals she's the one worth coming back to — positions her as the attraction, not the asker.

Exclusivity framing

"All to myself tonight" makes the caller feel chosen and creates a sense of intimacy before a single word is exchanged. This is the hook that converts a silent browser into a speaker.

Built-in reply hook

The system prompt requires every exchange to "end with something that makes replying feel easy or irresistible." The "or" construction is a binary choice — cognitively easy to answer, emotionally rewarding to engage with.

The opener formula

Kazumi's opener follows a pattern any agent can adopt. The formula:

[Relational hook that implies shared history] + [Exclusivity/chosen framing] + [Open-ended "or" binary]

Adapted examples by persona

Sophie Dee

"Tell me you came back just for me — or is tonight your first time and I get to keep you all to myself?"

Lena The Plug

"Been thinking about you — or am I the first thing that's made you smile tonight?"

Princess Frenxh

"Mmm, you look like someone who knows exactly what they want — or are you here to let me figure that out?"

Generic template

"[Warm assumption about caller] — or is tonight the night I get to [exclusive intimacy promise]?"

Recommended test

Update Sophie Dee's {{char_personality_traits}} and add a hard-coded Stage 1 opening line matching the formula above. Sophie has 100 conversations/week — enough to see statistical signal within 5–7 days. Target metric: silent rate below 25%. If it works, propagate to Princess Frenxh (45% silent) and Janna Moller (41% silent) next.

Visual Redirect — The Real Problem 15% dead-end rate · CTA already exists · delivery is the gap

⚠ Critical finding

The system prompt already contains photo redirect CTAs for every agent. The 15% dead-end rate is not a missing-instruction problem. Something is preventing the CTA from reaching callers. Desirae's success means the instruction can fire — the question is why it reliably fires for her and not for the other 27 agents.

What the system prompt already says

CTA Triggers section

"They ask for photos → Mmm I can do that for you, babe. Let's switch over to text. Tell me what you wanna see."

Explicit Requests section (first time)

"You know exactly what you want — I love that about you. How about I send you pics over text? Just text me, babe."

After CTA fires

"After any CTA fires, immediately pivot back into the conversation — continue from whatever stage you were in and keep them engaged until the call ends naturally."

How the platform flow actually works

The destination isn't an external platform — it's seamless continuity within the web app. Hanging up is the transition:

1

User clicks a creator → routed into voice call UI with that agent

2

Agent fires photo CTA → user hangs up → platform auto-redirects to chat UI with the same creator

3

Planned: system ingests call transcript → identifies photo requests → auto-initiates chat + image generation before the user types anything

Why users still dead-end — ranked by likelihood

LIKELY

CTA fires but users don't know hanging up is the action

"Let's switch over to text" is a verbal prompt with no clear instruction. Users on a voice call expect a voice-channel response — they don't realize that hanging up is the step that triggers the chat redirect. They stay on the line waiting for something to happen, and the conversation stalls. Desirae likely makes the action explicit: "hang up and I'll be right there in chat."

POSSIBLE

User hangs up but chat lands cold — no photo context carried over

Without transcript ingestion, the chat UI opens blank. A user who followed the redirect correctly may not re-initiate the photo request because the context from the call isn't visible. This is precisely what the planned transcript → image gen pipeline solves.

POSSIBLE

GPT-5.1 trigger latency on implicit photo requests

The model must infer "they are asking for photos" — not a keyword match. Indirect phrasings ("can I see you?", "send me something") may not consistently trigger the CTA block. Desirae's personality traits may make her more attuned to these signals, or she fires earlier in the conversation flow.

MINOR

11Labs policy truncation before CTA delivers

If the photo request arrives mid-escalation and the agent's response is flagged, the verbal CTA never reaches the caller. Firing the CTA earlier — before explicit language escalates — reduces this risk.

The fix — prompt update + pipeline build

Fix 1 · Make the action explicit in the CTA (prompt change · 1 day)

Replace: "Let's switch over to text. Tell me what you wanna see." With: "Just hang up, babe — I'll already be waiting for you in chat. Tell me exactly what you want and I'll show you."

Making "hang up" the explicit instruction closes the UX gap. Users know what to do. The platform's hangup-to-chat redirect does the rest.

Fix 2 · Fire CTA on first photo hint, not just explicit ask (prompt change · 1 day)

Add to CTA Triggers: "They hint at wanting to see you, ask if you have content, or ask what you look like → fire the visual redirect CTA immediately, before the call escalates further."

Earlier firing reduces 11Labs policy risk and catches users while they're still in the exploration mindset — higher conversion than waiting for an explicit request.

Fix 3 · Transcript ingestion → auto image gen (engineering build · highest upside)

Pipeline: call ends → ingest transcript → identify photo request language → pre-generate image(s) → deliver in chat before user types anything.

This eliminates the cold-landing problem entirely. The user hangs up and their photo request is already fulfilled in chat. Converts a dead-end into a completed transaction with zero user friction at the re-engagement step.

$

Revenue projection

~100 of 663 conversations hit a photo dead-end today. Fix 1+2 (prompt edits alone) could convert 40–50% of those into chat handoffs. Fix 3 (transcript pipeline) converts the remainder automatically — the image arrives before the user has to ask twice. At scale, this is the highest-ROI feature build on the roadmap.

Implementation Priority

1

Update photo CTA to make "hang up" the explicit action

System prompt edit only · no engineering · affects all 28 agents · closes the UX gap immediately

1 day
2

Add early-fire CTA trigger for implicit photo hints

System prompt edit · catches users in exploration mindset · reduces 11Labs policy risk

1 day
3

A/B test Kazumi's opener formula on Sophie Dee

System prompt edit · 5–7 days to signal · target: cut Sophie's 51% silent rate to <25%

1 week
4

Propagate winning opener to Princess Frenxh + Janna Moller

Pending A/B test signal from Sophie · highest-silent-rate agents after Sophie (45%, 41%)

2–3 weeks
5

Build transcript ingestion → auto image gen pipeline

Engineering build · call ends → transcript parsed → photo request identified → image delivered in chat before user re-initiates · highest-ROI feature on the roadmap

Engineering sprint