DatabasesConnect to any database and analyse your data instantly·FilesUpload CSV or Excel files and explore them with AI·ChatAsk questions in plain language — chat with your data·DashboardsBuild interactive dashboards from your queries in seconds·AILet AI write the SQL so you don't have to·ChartsVisualise trends with auto-generated charts and graphs·No-codeZero SQL knowledge needed — just ask in plain English·ShareShare live dashboards with your team in one click·InsightsSurface hidden patterns and outliers in your data automatically·ExportsDownload results as CSV, Excel, or PNG charts instantly·DatabasesConnect to any database and analyse your data instantly·FilesUpload CSV or Excel files and explore them with AI·ChatAsk questions in plain language — chat with your data·DashboardsBuild interactive dashboards from your queries in seconds·AILet AI write the SQL so you don't have to·ChartsVisualise trends with auto-generated charts and graphs·No-codeZero SQL knowledge needed — just ask in plain English·ShareShare live dashboards with your team in one click·InsightsSurface hidden patterns and outliers in your data automatically·ExportsDownload results as CSV, Excel, or PNG charts instantly·
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Blog›Sales

Stop guessing which leads are worth a sales call

Your marketing automation scores leads on page views and email opens. Your sales team ignores the score and works the leads they trust. AnalityQa AI AI shows you which signals actually predict conversion — by source, segment, and behaviour — so both teams are working from the same data.

Try AnalityQa AI AI free →See live examples
Sales team reviewing pipeline

The problem

  • →MQL volume looks strong in the marketing dashboard, but SQL conversion rate tells a different story that no one in marketing can see without a CRM login.
  • →Lead scoring models in HubSpot or Marketo are configured once during onboarding and rarely revisited — the weights rarely reflect how the market has shifted.
  • →Source attribution for leads is inconsistent: UTM parameters break, direct traffic is a black box, and offline leads from events get logged with no source at all.
  • →Sales ignores low-score leads that later close and chases high-score leads that churn quickly — the model is wrong but no one can prove it without joining marketing and CRM data.

Why the usual approach breaks down

Marketing and CRM data live in separate systems with no automatic join

HubSpot contact records and Salesforce lead records are separate objects with separate IDs. Joining them to trace a lead from first form fill to closed-won deal requires an email address match or a custom integration — neither of which is set up in most marketing stacks without engineering help.

Salesforce and HubSpot native reports cannot cross the marketing-sales boundary cleanly

HubSpot's native reporting shows MQL volume and email engagement. Salesforce shows opportunity stage and close rate. Getting MQL-to-SQL conversion by source requires data from both systems in the same query — which native reports cannot do without a paid connector or a data warehouse.

Excel joins on lead data break on email case, duplicates, and missing values

The practical approach — export contacts from HubSpot and leads from Salesforce, then VLOOKUP on email — fails the moment email casing differs, a lead exists twice, or a contact has no associated deal. The resulting merge is unreliable but teams trust it because there is no better option on hand.

Behavioral signal data is large and hard to aggregate in spreadsheets

Page view counts, email open sequences, and webinar attendance logs can run to hundreds of thousands of rows per quarter. Pivot tables slow down or crash. The analysis that would reveal which behavioral patterns predict SQL conversion is technically straightforward but practically out of reach without a query engine.

How AnalityQa AI AI solves it

Upload your data — or connect it live — and ask in plain English.

01

Upload your CRM and marketing exports in one place

Drop in your Salesforce lead and opportunity exports alongside your HubSpot contact, form submission, or marketing activity export. AnalityQa AI AI detects the schema of each file and proposes a join key — typically email address — for you to confirm before any analysis runs.

02

Calculate MQL-to-SQL conversion rate by source

Ask 'What is my MQL-to-SQL conversion rate by lead source?' and AnalityQa AI AI joins your marketing contacts to your CRM leads on email, groups by source, and calculates the conversion funnel for each channel. No SQL, no data warehouse required.

03

Identify the firmographic segments with the highest close rates

Ask 'Which industries and company sizes close fastest?' and AnalityQa AI AI cross-references your lead firmographic fields with closed-won opportunity data to rank segments by win rate, average deal size, and time to close.

04

Find the behavioral signals that actually predict conversion

Upload your marketing activity log — page views, email opens, event attendance — and ask AnalityQa AI AI which combinations of signals correlate with leads that converted to SQL or closed-won. The output is a ranked table of signal patterns, not a theoretical score model.

05

Pin a lead quality dashboard and share it with both teams

Any lead scoring analysis — source conversion funnel, segment win rates, behavioral signal ranking — can be pinned to a shared dashboard. Marketing and sales see the same numbers from the same data, updated each time you upload a fresh export.

You askedGenerated in 4.2s

"Show me MQL-to-SQL conversion rate by lead source for the last two quarters."

Pipeline

€2.1M+8.7%

Win rate

27%+2pp

Avg deal

€18.4k+€1.2k

Bar chart: MQL-to-SQL conversion rate by source — Q4 2025 and Q1 2026

Last 12 mo
Segment ASegment BSegment CSegment DSegment ESegment F

Table: win rate and average ACV by industry × company size

Stacked bar chart: open pipeline amount by lead grade tier

Segment ASegment BSegment CSegment DSegment ESegment F

A dashboard built in AnalityQa AI — from question to chart, no SQL.

Real examples

Paste your data. Ask. Ship.

You

Show me MQL-to-SQL conversion rate by lead source for the last two quarters.

AI

AnalityQa AI AI joins your HubSpot contact export to your Salesforce lead export on email address, groups by first-touch UTM source, and calculates the fraction that reached SQL status in each period.

Bar chart: MQL-to-SQL conversion rate by source — Q4 2025 and Q1 2026
You

Which company size and industry segments have the highest close rates?

AI

AnalityQa AI AI cross-references firmographic fields on your contact export with closed-won and closed-lost opportunities, then ranks each segment combination by win rate and average deal size.

Table: win rate and average ACV by industry × company size
You

Show me lead grade distribution across our current open pipeline.

AI

AnalityQa AI AI maps lead score or grade fields from your CRM or marketing export to each open opportunity and produces a distribution showing how much pipeline sits in each score tier.

Stacked bar chart: open pipeline amount by lead grade tier
You

Which behavioral signals — page visits, email opens, demo requests — appear most often in leads that closed?

AI

AnalityQa AI AI joins your marketing activity log to closed-won contacts and calculates the frequency of each activity type among closed deals versus non-closed leads, ranking signals by their difference in occurrence rate.

Table: activity frequency — closed-won vs. not converted leads
You

Compare SQL conversion rate from paid search versus content marketing leads this year.

AI

AnalityQa AI AI filters your contact export by UTM medium (cpc vs. organic/content), joins to your CRM lead records, and calculates SQL conversion rate and average time-to-SQL for each group.

Side-by-side bar chart: SQL conversion rate — paid search vs. content

What teams get out of it

✓Marketing and sales align on lead quality because both teams are looking at the same MQL-to-SQL conversion data from the same joined source, not separate dashboard snapshots.
✓Low-volume but high-converting lead sources get budget priority after their actual SQL and close rates become visible for the first time.
✓Lead scoring model weights are revisited with real conversion data rather than gut feel, reducing the gap between MQL volume and pipeline quality.
✓Sales time spent on low-probability leads decreases once firmographic and behavioral segment rankings are available to filter inbound queues.

Frequently asked questions

Can AnalityQa AI AI connect directly to HubSpot or Salesforce instead of CSV exports?+

Direct API connectors for HubSpot and Salesforce are on the roadmap. Today, the recommended path is to export contacts and leads as CSVs from each platform and upload them together. If your team already syncs CRM data to PostgreSQL or Google Sheets, AnalityQa AI AI can connect to those directly.

What if our lead source data is inconsistent — different UTM values for the same channel?+

You can describe the mapping in plain language — for example, 'treat cpc, paid-search, and google-ads as a single Paid Search source' — and AnalityQa AI AI applies the grouping before running any analysis. You do not need to clean the raw data first.

Can this replace the lead scoring model we have built in HubSpot or Marketo?+

AnalityQa AI AI does not replace your marketing automation scoring — it audits it. You can use it to verify whether your current score weights actually correlate with conversion, and to identify which signals should be weighted more heavily. The corrected weights can then be applied back in your marketing automation tool.

Is this useful for RevOps teams managing both marketing and sales data?+

Yes. RevOps teams are the primary users for this analysis because they have access to both marketing and CRM exports. AnalityQa AI AI replaces the manual join process that most RevOps analysts do in Excel or with ad hoc SQL, giving them a faster and more repeatable path to the same insights.

Is our lead data private?+

Your uploaded files — including contact records — are stored in your isolated tenant, encrypted in transit and at rest, and are never used to train models.

Can the lead quality dashboard be shared with marketing stakeholders who do not use AnalityQa AI AI day to day?+

Yes. Dashboards built in AnalityQa AI AI can be shared with read-only viewers. Marketing managers and sales leaders can view the latest conversion and segment data without uploading files or writing queries.

What does it cost?+

Pricing is based on the number of users and data volume, not the number of queries or files. A free trial is available with no credit card required — details are on the pricing page.

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