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Outcome · Better qualification

Know who to call, before they pick up.

Score every lead by real buying intent — not self-reported form data, not 10-year-old BANT checklists. Swiftex blends transformer-based conversation analysis with 40+ enrichment signals, so your reps spend their day on deals that will actually close.

40+
Intent & enrichment signals · scored per turn
What is AI lead qualification?

Rules miss signal. LLMs read the room.

AI lead qualification is the use of machine learning — typically a transformer model — to infer a prospect’s buying intent, budget, timeline and fit from conversation data and enrichment signals, rather than relying on self-reported form fields. Unlike rule-based lead scoring, AI qualification updates in real time as the conversation evolves.

Swiftex runs a 7B-parameter dialogue model fine-tuned on 40M+ Indian sales conversations. Scores come with reason codes — not just a number. Your reps see “budget confirmed, urgency high, objection = delivery timeline” instead of a black-box 78/100.

01 Signals

40+ signals. Not 5 form fields.

Every inference combines what the buyer says, what they do, who they are, and what they did last time. The four pillars:

Conversation
Intent phrases
Conversation
Urgency markers
Conversation
Objection type
Conversation
Sentiment curve
Conversation
Competitor mention
Profile
Phone validation
Profile
Location & PIN
Profile
KYC class (BFSI)
Profile
Age band
Profile
Demographic proxy
Intent
Budget band
Intent
Timeline stated
Intent
Product fit
Intent
Variant shortlist
Intent
Research depth
Behaviour
Channel preference
Behaviour
Time-of-day
Behaviour
Response latency
Behaviour
Ad source depth
Behaviour
Past interactions
02 Live score

How a real WhatsApp conversation escalates from cold to hot — in 4 turns.

23
T1 · BUYER
“Hi, interested in Swift”
54
T2 · BUYER
“VXI variant. Bangalore delivery. Need on-road.”
81
T3 · BUYER
“Test drive kab ho sakti hai? Cash down payment ready hai.”
93
T4 · BUYER
“Saturday 11am book kar do. Exchange hai Alto 2018.”
03 Old vs new

Why form-field scoring is obsolete.

Dimension Swiftex AI qualification Rule-based lead scoring BANT checklist
Inputs Conversation + enrichment + behaviour Form fields + simple events Manual notes
Refresh rate Every turn On form submit / event Manual, rarely updated
Explainability Reason codes per signal Opaque point totals Qualitative
Handles code-switching Yes, natively No Agent-dependent
Detects objections 40+ categories No Manual log
Next-best-action Automated No No
Effort to maintain Self-learning Ops team tunes rules Rep discipline
04 Impact

What changes when qualification gets smarter.

3.1×
Lift in lead-to-booked conversion
62%
Fewer cold calls made by reps
2.7×
More meetings per rep per week
89%
Reason-code accuracy (human-audited)
FAQ

Lead qualification, answered.

What is AI lead qualification? +

AI lead qualification uses machine learning — typically a transformer model — to infer a prospect’s buying intent, budget, timeline and fit from conversation data and enrichment signals, rather than self-reported form fields. Unlike rule-based scoring, AI qualification updates in real time as the conversation evolves.

How does Swiftex score lead intent? +

Swiftex runs a transformer fine-tuned on 40M+ Indian sales dialogues. Inputs include source, enrichment data, conversation sentiment, objection type, stated timeline, budget signals and past behaviour. Scores refresh every turn with explainable reason codes.

What signals does Swiftex use? +

40+ signals: phone/email validation, location, vehicle or property history, CIBIL/KYC hooks (BFSI), intent phrases, urgency markers, sentiment, objection type, competitor mentions, demographic proxies, device & channel, time-of-day behaviour, past interaction history and more.

How is this different from BANT or MQL scoring? +

BANT is a static framework filled in manually. MQL scoring is typically rule-based points on form-field matches. Swiftex uses both conversational and enrichment signals, updated live, with per-turn intent scores and explainable output.

Can Swiftex integrate qualification with my CRM? +

Yes. Score, stage, reason codes and next-best-action are written back to Salesforce, HubSpot, Zoho, LeadSquared, Freshsales and Kylas in real time. Custom CRMs via webhook/API.

Stop calling dead leads. Start closing live ones.

30-minute walkthrough of Swiftex qualification on your actual lead data.