newsmode MarketNews
arrow_back К списку
rss_feedClay Blog ·07.05.2026 open_in_newОригинал

AI Lead Scoring: Definition, Benefits & How It Works 2026 - The GTM with Clay Blog

Claygent Builder: The easiest way to build, test, and deploy GTM Agents

Build production-ready Claygents in natural language with Sculptor. Test on real data for free, track versions, and deploy once across every workflow. All inside Clay.

How Clay Uses Clay Ads: From $250 to $25 CPL

See how Clay uses its own Ads feature to cut LinkedIn CPL from $250 to $25 and unlock Meta with enriched CRM audiences. No manual uploads needed.

HG Insights Corporate Hierarchy: GTM Precision in Clay

Use HG Insights corporate hierarchy data in Clay to clean CRMs, map parent-child accounts, and trigger expansion plays. See how it works.

Sales GTM Engineering: How Clay Built the Role From Scratch

Learn what sales GTM engineering is, how it collapses SDR, AE, and SE roles into one, and how Clay built and hires for this high-leverage function. See how it works.

How to Automate Inbound Lead Outreach: The Clay Playbook

Learn how to automate inbound lead outreach with enrichment, scoring, and personalized sequences. See the exact Clay workflow that runs without manual work.

demandDrive Joins Clay’s Partner Ecosystem as an Official Clay Studio Partner

demandDrive joins Clay’s partner ecosystem to help B2B teams turn account intelligence into pipeline and revenue with GTM engineering and automation.

B2B Sales Prospecting: 15 Strategies to Drive More Conversions

Master B2B sales prospecting with 15 proven strategies covering ICP building, multi-channel outreach, and list hygiene. Build a pipeline that converts.

AI Sales Assistants: 11 Ways to Accelerate Your Outbound

Discover 11 ways AI sales assistants automate lead research, enrichment, and email personalization. See how top B2B teams use them to accelerate outbound.

The Three Laws of GTM: How to Win in the AI Era

The three laws of GTM explain why uniqueness, saturation, and iteration speed determine who wins. Learn how AI changes the rules and what to do about it.

Best Work Email Finders by Segment: SMB vs. Enterprise

We tested 12 email finders across 4,700+ contacts to find the best work emails by segment. See accuracy, cost, and coverage winners for SMB and enterprise.

How Clay Converts Trial Users Into Customers With Automated Outreach

See how Clay uses automated outreach to convert trial users into customers, with enrichment, lead scoring, and personalized HubSpot campaigns. Learn how.

Best Mobile Phone Data Providers for B2B Sales Teams

We tested 9,806 numbers across 10 B2B mobile phone data providers. See which wins on accuracy, coverage, and cost for NAMER, EMEA, and APAC.

How to Build a Complete AI Outbound Sales Funnel

Learn how to build a complete AI outbound sales funnel—from account scoring to personalized outreach—using Clay waterfalls and automation. See how it works.

How to Get More Customers Using Outbound Sales: A Complete Guide

Learn how outbound sales works, who it's right for, and how to build a strategy from prospecting to closing. Covers cold calling, email, and more.

How to Automate 6 Cold Email Campaigns in One Clay Workflow

Learn how to automate 6 cold email campaigns from a single Clay table — with enrichment, AI classification, and deduplication built in. See how it works.

How Clay Identifies Tier 1 Accounts: A Three-Score System

See how Clay identifies tier 1 accounts using a three-score system: fit, engagement, and contract value. Learn how sales and marketing align on the same priorities.

Lead Scoring in Clay: A Step-by-Step Formula Guide

Learn how to build lead scoring formulas in Clay to prioritize your ICP leads by employee count, job postings, and more. See how it works.

How to Validate Cold Outbound Offers and Find Message-Market Fit

Learn how to validate cold outbound offers by finding message-market fit — from breaking down your value prop to testing with a phased email approach. See how it works.

Troubleshooting Outbound Sales and Prospecting: A Comprehensive Guide

Fix broken outbound sales campaigns with this guide. Diagnose open and reply rates, reduce no-shows, qualify prospects with MEDDIC, and optimize what's working.

Bulk Enrichment: Enrich Millions of CRM Records in Clay

Bulk enrichment lets Enterprise teams enrich millions of Salesforce records with firmographics, tech stack, and AI research — then write results back automatically.

Clay Templates: Automate, Customize, and Replicate Any GTM Workflow

Clay Templates let you replicate full GTM workflows in hours, not days. Automate prospecting from data scraping to AI messaging, free and fully customizable.

How to Optimize Your Credit Usage in Clay

Learn how to optimize your credit usage in Clay with conditional formulas, Clearbit waterfall lookups, and smarter enrichment workflows. Save credits fast.

AI for sales prospecting

Learn about how to use AI for sales prospecting in this comprehensive guide, including framework for creating AI prompts and examples of cold email templates using AI that real sales teams have used successfully to land clients. AI sales prospecting can save your team thousands of hours—and double or triple your positive response rates.

The Reverse Demo: How Clay Replaced Traditional B2B Sales Demos

A reverse demo lets prospects solve real problems live, guided by your rep. Learn how Clay used 100+ sessions to boost conversion, retention, and product quality.

Data Waterfalls: How to Maximize Contact Coverage with Clay

Data waterfalls query multiple providers in sequence so you only pay for matches. See how Clay pushes coverage from 30% to 80%+ without annual contracts.

How Clay Runs ABM Campaigns: A Step-by-Step Playbook

See how Clay runs ABM campaigns — scoring 300 accounts, personalizing mailers and landing pages, and automating SDR follow-up. Learn how.

How We Built Clay's GTM Engineering Function

See how Clay built its GTM engineering function with sprint-based delivery, founder-level reporting, and full sales automation. A practical inside look.

Best Personal Email Finder Tools: Tested and Ranked

We tested 5 personal email finder tools across 2,354 prospects. See accuracy, coverage, and pricing data — plus the waterfall order that hit 79% coverage.

How to Use OpenAI to Write Cold Emails from Scratch with Clay

Learn how to use OpenAI to write personalized cold emails at scale with Clay. Set up the integration, craft better prompts, and boost deliverability.

How to Run a Personalized Demo Play at Scale with Clay

Learn how to automate a personalized demo play using Clay, Claygent, and AI enrichment to build custom mockups at scale. See how it works.

Automated Slide Deck Creation: How Clay Builds QBRs from Your Data

Clay's automated slide deck creation pulls from Snowflake, Salesforce, and Gong to build QBRs in minutes. Save 90+ hours per quarter. See how it works.

HG Insights + Clay: B2B Technographic and Firmographic Data

HG Insights surfaces deep technographic and firmographic data from billions of documents. Use it in Clay workflows to enrich accounts and power GTM. See how it works.

B2B Cold Email Deliverability: 21 Best Practices

Master B2B cold email deliverability with 21 proven best practices: domain setup, inbox warmup, authentication, and copy tips that keep you out of spam. Learn how.

Basics of Google Search Operators: A Practical Guide

Learn the basics of Google Search Operators and how to use them in Clay for prospecting, list building, and company research. See how it works.

AI Lead Generation: The Complete B2B Guide

Learn how AI lead generation automates list building, enrichment, and personalized outreach for B2B teams. Scale your pipeline without scaling headcount. See how it works.

Clay MCP: Ops-built workflows, consumable by reps

Clay MCP: Ops-built workflows, consumable by reps

How to Manage and Enrich Inbound Leads Automatically

Learn how to manage and enrich inbound leads automatically using a four-phase workflow that scores, segments, and triggers outreach from one email. See how it works.

GTM Alpha: How Winning Teams Build a Competitive Edge

GTM alpha is the edge winning teams build with unique data and signal-based plays. Learn how to find hidden signals, run better plays, and outpace competitors.

Why Good CRM Data Matters and How Clay Helps

Poor CRM data kills outreach. Learn why CRM data coverage fails and how Clay's waterfall enrichment lifts coverage rates from 20% to 80%. See how it works.

How to Use Formulas in Clay: AI Generator and Manual Entry

Learn how to use formulas in Clay with the AI Formula Generator or manual entry. Transform and clean your data faster. See how it works.

GTM Engineering: What It Is, How It Works, and How to Hire

GTM engineering turns ops teams into revenue builders using AI and automation. Learn what GTM engineers do, how to structure the role, and how to hire one.

Formulas in Clay: A Beginner's Intro for Non-Engineers

Learn how to use formulas in Clay without coding. This intro covers conditional statements, combining columns, and auto-qualifying leads. Start in 30 minutes.

How Clay Uses Clay for SEO and AEO: 3 Systems That Scale

See how Clay uses Clay for SEO and AEO: automated content refresh, video-to-page conversion, and a custom AI visibility dashboard. Learn how.

Turn Web Visitors into Leads: A Warm Outbound Play for B2B Sales

Learn how to turn web visitors into leads using a warm outbound play for B2B sales — with RB2B, Clay, and Lemlist. See how it works.

How to Use Web Scraping to Enrich Your Data with Clay

Learn how to use web scraping to enrich your data without code. Clay's Claygent answers deep GTM research questions at scale. See how it works.

How to Create a Sales Prospect List in Minutes

Learn how to create your own sales prospect list in minutes using Clay. Pull from 40+ sources, enrich with ICP data, and export to your CRM. See how it works.

Best B2B Email List Providers: Tested and Ranked (2026)

We tested 8 B2B email list providers head-to-head. See accuracy results, per-email pricing, and how to waterfall providers for maximum coverage.

Outbound Sales Automation: How to 10x Pipeline Without More SDRs

Learn how outbound sales automation replaces manual SDR work, cuts cost per email by 100x, and scales pipeline without growing headcount. See how it works.

The Wake the Dead Play: Reactivate Closed-Lost Deals with Clay

The wake the dead play uses Clay + ChatGPT to send automated, personalized emails to closed-lost prospects. Restart stalled deals in a few steps. Learn how.

Three Tips to Guarantee Email Deliverability for Cold Outbound

Split volume, verify contacts, and personalize copy to guarantee email deliverability for cold outbound. Three actionable tips that keep you out of spam.

How Clay Uses Clay for Customer Support: 3 Real Workflows

See how Clay's customer support team uses Clay to enrich Intercom tickets, automate QA, and draft help articles. Real workflows, real results.

B2B Cold Email Copywriting: The Complete Guide

Master B2B cold email copywriting with proven templates, a research framework, and a checklist used to send 800k+ emails a month. Start writing emails that get replies.

Introducing Clay Functions

Build Your GTM Logic Once, Apply It Everywhere

Clay and Apollo Integration: Enrichment, Sequencing, and More

The Clay and Apollo integration unlocks 5X faster enrichment and direct sequencer API access. See how joint customers go from data to booked meetings.

The Many Lives of Spreadsheets: A History and What Comes Next

Explore the many lives of spreadsheets — from VisiCalc in 1979 to self-filling automation tools today. See how the no-code vision keeps evolving.

AI recruiting strategies

Learn our top AI recruiting workflows to help you identify, research, and reach out to qualified candidates for open roles. AI can eliminate manual work and help you reach out to—and land—better employees for your clients.

How to Hire a GTM Engineer: The Complete Guide

Learn how to hire a GTM engineer: when to make the hire, what skills to screen for, red flags to avoid, and where to find the best candidates. See how it works.

Inside Clay's GTM Engineering Lab: Plays, Principles, and Automation

See how Clay's GTM engineering lab turns internal problems into revenue plays using AI, automation, and data-driven principles. Learn how it works.

How to Build the Most Targeted Account Lists Possible

Generic tools leave bad-fit companies in your account list. Learn how to build targeted account lists using AI enrichment and real workflow examples in Clay.

Personalized Direct Mail at Scale: The Gifting Play with Clay

Learn how to run personalized direct mail campaigns using Clay — validate contacts, generate AI gift copy, and export to email. See how it works.

How to Set Up Your Full Inbound Sales Process on Clay

Learn how to set up your full inbound sales process on Clay — enrich leads, tag MQLs, and automate email campaigns from form to demo. See how it works.

AI-Enabled GTM for Private Equity: The Value Creation Playbook

Learn how AI-enabled GTM for private equity drives value creation across portfolios—from data quality to agentic workflows. See how it works.

Do More With Your Data: Clay's Post-Data-Provider Approach

Clay's post-data-provider approach combines 150+ providers, waterfall enrichment, and AI scraping to maximize data coverage. See how it works.

Google Maps Lead Generation for Niche Local Businesses

Learn how to use Google Maps lead generation to find niche local businesses, enrich owner contacts, and send personalized outreach at scale with Clay.

24 AI Email Personalization Examples for Cold Outreach (With Prompts)

Get 24 AI email personalization examples for cold outreach, with ChatGPT prompts you can run at scale in Clay. Learn how to write emails that actually convert.

How to Ace Your Follow-Ups: A Practical Sales Guide

Learn how to ace your follow-ups with value-driven outreach, personalization tips, multi-channel tactics, and automation tools that keep deals moving. See how it works.

How to Prioritize Your Waitlist with Lead Enrichment

Learn how to prioritize your waitlist using lead enrichment. Turn raw signups into qualified leads by company, title, and role — no long forms needed. See how.

B2B Cold Email Templates: Frameworks That Get Replies

Learn how to write B2B cold email templates that convert with a proven 5-part framework, follow-up strategy, and real examples. See how it works.

Audiences: now in Enterprise beta

Clay Audiences unifies your CRM, product data, and intent signals into one layer — so reps and agents can run precise, personalized GTM plays at scale.

The thinking behind our new pricing: our internal memo

Clay pricing memo: INTERNAL

Introducing Clay’s new pricing

Today, we’re launching a pricing update that reduces data costs, and simplifies and improves the value of our plans. Our goal is to have Clay be your default tool for GTM Engineering.

Clay partners with Lusha and Beauhurst to expand European data coverage

Lusha adds lookalike prospecting, contact enrichment, and signals in EMEA. Beauhurst adds private funding and corporate structure data in the UK and Germany.

Source your precise TAM from lookalikes you can trust with Ocean.io and Clay

Clay + Ocean now enable preview-based B2B lookalike discovery. Preview leads before committing credits and expand your TAM with greater precision.

Clay doubles down on supporting European GTM teams

Clay's waterfall enrichment delivers 2–3x more mobile phone coverage than leading solo providers across Europe. Plus new data partnerships, a London office, and timezone-aligned support.

In Nigeria, she built a life where money wouldn’t decide

Clay blog | In Nigeria, she built a life where money wouldn’t decide

Sculptor Analyst Mode: Turning Context-Rich Data Into Actionable GTM Insights

Gather business intelligence and share documents of this analysis directly from Sculptor

In a place where girls often choose between career or marriage, she carved her own path 

Javeria Shah won the Clay Cup 2025 despite being denied a US visa and competing remotely from Pakistan. Learn how she transitioned from electronics engineering into GTM engineering and built her own business.

How we designed Sculpt

Our first conference, Sculpt, is where the analog soul of Clay met the digital mind of Clay.

Clay announces second employee tender offer in nine months at a $5B valuation

A rare repeat employee liquidity event, designed to give builders flexibility as Clay accelerates

Clay is now available as a connector in Claude

Bring Clay's contact databases, enrichment providers, and AI agents into your Claude workflow.

Sellers have a new AI edge: Clay in ChatGPT

Use Clay directly in ChatGPT to find the right buyers, research people and companies, and draft personalized outbound. One conversation, powered by live GTM data.

Clay reaches $100M ARR

Clay has crossed $100M ARR, growing from $1M to $100M in two years after six years of foundational product work. The milestone reflects durable customer adoption, efficient growth, and an ecosystem of GTM builders using Clay to power their business.

Clay Certifications: Turning mastery into credentials that matter

The Clay education team has built a certification program that runs entirely on Clay and gives users credentials that actually matter

Mobile Phone Verification Methodology

Clay has partnered with The Kiln to setup a series of large-scale data test across mobile phone, work email, personal email, email verification, and more. Below, we explain the approach to these tests.

Work Email Verification Methodology

Clay has partnered with The Kiln to setup a series of large-scale data test across mobile phone, work email, personal email, email verification, and more. Below, we explain the approach to these tests.

Stop Guessing, Start Analyzing: How Sculptor Turns Your GTM Data Into Your Competitive Advantage

Analyze your GTM data with Sculptor to turn fragmented information into actionable insight.

Find and outreach local businesses with Openmart and Clay Sequencer

Get the right contacts for local businesses without stitching together multiple tools or wasting valuable time on setup instead of selling.

Announcing Web Intent

Use Website Intent in Clay to see which companies visit your site, track engagement, and trigger personalized GTM plays. Turn website traffic into real buyer intent data.

How Clay Uses Clay: Conversational Data

How we use Clay to mine millions of pages of call transcripts to generate revenue, and how you can use it too.

Sculpting GTM’s future with six major launches

Today at Sculpt, we're launching six major features that will help teams turn any growth idea into reality faster.

Introducing Claygent Navigator

A new Claygent model that can use a browser to take actions and extract information from webpages.

Announcing the Clay Partner Program

The Clay Partner Program is to a partner, what a toolbox is to an artist. It keeps essential resources within reach and grows more sophisticated as your expertise develops. We've designed everything around one simple principle: helping you grow your business as Clay grows.

Introducing GPT-5 in Claygent: sharper research, stronger formulas, better outbound

GPT-5 is now a model option across Clay, bringing the best research and conversational writing we've ever shipped to your GTM workflows.

Clay Series C announcement. The GTM engineering era begins now

We raised a $100M Series C at a $3.1B valuation to power GTM engineering!

Claygent surpasses 1 billion runs

The world's most loved AI research agent in GTM has passes a huge milestone at 1 billion runs.

Announcing Sculpt: Clay’s first annual user conference

Join us for Sculpt, Clay’s first annual user conference on Sept 17 in San Francisco where GTM leaders build AI workflows, share creative tactics, and get early access to new features.

Announcing custom signals at Clay

Clay's new custom signals platform helps sales teams track unique data changes that indicate buying opportunities. Turn any data point into a sales signal, enrich with context, and automate personalized outreach to find GTM alpha your competitors miss.

Clay announces employee tender offer led by Sequoia at $1.5B valuation

Clay allows employees to sell vested shares for immediate liquidity through a $20M tender offer at a $1.5B valuation. With 10x revenue growth in 2022-2023 and serving 8,000+ customers including OpenAI and Hubspot, Clay continues to change how businesses approach go-to-market strategies with their AI agent Claygent.

Create personalized presentations at scale with Clay and Google Slides

Automate personalized sales decks with Clay’s Google Slides integration. Instantly generate tailored presentations for leads, customers, QBRs, and internal updates. Use one template to create hundreds of presentations at scale.

Turn Gong conversations into automated GTM workflows

Clay now integrates with Gong—turn messy call transcripts into powerful automations in Salesforce, HubSpot, Notion, Slack, Google Sheets, and 100+ other integrations.

Product

Use Cases

Solutions

Resources

Company

Pricing

Features

Additional

How Clay uses Clay

LinkedIn + Meta Ads on Autopilot

CRM enrichment

Keep your CRM clean with the highest quality data

BY TEAM

BY STAGE

BY CUSTOMERS

Pump

Pump

Link long form description will go in this slot here.

Recharge

Recharge

Link long form description will go in this slot here.

Regency Supply

Regency Supply

Link long form description will go in this slot here.

A-LIGN

A-LIGN

Link long form description will go in this slot here.

Figma

Figma

Link long form description will go in this slot here.

Intercom

Grew their outbound-sourced pipeline by +140%

START GROWING

DISCOVER

Community

PARTNER WITH US

Clay Commnity

In Nigeria, she built a life where money wouldn’t decide

OUR COMPANY

GET IN TOUCH

SOCIALS

Article – NY Times

Clay allows employees to sell shares at a $5b valuation.

AI Lead Scoring: Definition, Benefits, and How It Works

Effective lead scoring is essential to adequate resource use. If your SDRs can't prioritize leads, they might waste time on unqualified prospects instead of getting quick wins by focusing on those ready to buy.

While you can rank leads manually, doing so can be time-consuming and laborious. With the rise of machine learning and predictive analytics, we got a far superior option: AI lead scoring.

Successful implementation of AI in lead scoring and other processes throughout the sales cycle is an excellent way to tighten your workflow. Take our sales process as an example. Using AI, we fully automated a 4-step campaign for our outbound sequences, getting a 5.1% positive response rate. 🤩

In this guide, though, we won't focus on the entire campaign but only on lead scoring. We'll go through the following:

  • What AI lead scoring is and how it works
  • Why you should implement AI in lead scoring
  • How to leverage AI lead scoring in your sales process
  • TL;DR

    • AI lead scoring uses predictive analytics and machine learning to rank leads by conversion potential, replacing manual if-this-then-that rules with dynamic, data-driven criteria.
    • The process runs in four stages: data collection, data analysis, predictive model creation, and scoring. Most of it happens without your direct involvement.
    • Before adopting any platform, nail down your ICP, ensure you have robust data, and evaluate tools on scoring options, transparency, and ease of use.
    • Clay combines data enrichment and AI lead scoring in one workflow, letting you score leads based on virtually any criteria and immediately act on results with personalized outreach.

    What Is AI Lead Scoring?

    AI lead scoring involves using an AI-enabled tool to analyze prospect data and rank leads according to their conversion potential. It differs from traditional automated lead scoring in three aspects:

  • Underlying mechanism
  • Scoring criteria
  • Customization
  • The following table outlines these differences:

    In a nutshell, the primary way AI enhances lead scoring is by removing the need for manual input. The most demanding and time-consuming scoring tasks are fully automated, leaving more time for executive decisions and campaign development.

    While the exact process is complicated, the good news is that you don't need to fully understand it to reap the benefits. That's why we'll go over the basics to give you a general idea behind AI-powered lead scoring.

    How Does AI Lead Scoring Work?

    On a high level, AI lead scoring happens in four stages:

  • Data collection: The platform gathers data from numerous sources (like your CRM and connected third-party data providers)
  • Data analysis: The collected data is analyzed to identify common patterns and highlight correlations between specific data points and successful conversions
  • Predictive model creation: The AI tool develops a predictive model based on the identified patterns to understand which leads have the highest conversion potential according to historical data
  • Scoring: Prospects are assigned scores according to their individual characteristics and connection to the discovered patterns
  • Much of this process happens without your direct involvement. All you need to do is provide your platform with relevant, comprehensive data, and it will crunch it to score leads automatically.

    Thanks to advanced features and functionalities, your lead scoring solution can perform various additional tasks. See some of the most notable ones in the table below:

    💡Bonus read: If you want to learn about the use cases of AI beyond lead scoring, check out our guides on using AI for sales enablement, AI-guided selling, and cold calling.

    Key Benefits of AI Lead Scoring

    Besides the obvious time savings you can enjoy after implementing an AI lead scoring solution, you can reap plenty of benefits, most notably:

  • Increased decision confidence: While AI tools aren't foolproof, their advanced algorithms support decision-making by seamlessly analyzing comprehensive datasets to provide actionable insights. You can make decisions based on cold data instead of relying on guesswork
  • Improved campaign effectiveness: If you need a quick win and want to focus on low-hanging fruit in your pipeline, AI lead scoring helps you identify the warmest leads effortlessly. You can prioritize and target them more efficiently so that your SDRs hit their quotas faster
  • Precise personalization: By understanding the key patterns and correlations between prospect data and conversions, you can tweak your outreach strategy to tailor its elements accordingly. Doing so further improves your campaigns' chances of maximizing conversions
  • Cost-effectiveness and increased ROI: AI lead scoring removes inefficiencies, preventing resource waste and manual labor. Combine this with its ability to help you develop more solid campaigns, and you'll see how the right platform can do wonders for your bottom line
  • While these advantages are compelling, you can't reap them overnight. You need to take a methodical approach to AI implementation to ensure success. 💯

    Best Practices for Adopting AI Lead Scoring Effectively

    To make AI lead scoring an integral part of your sales workflows, you should:

  • Understand your target audience
  • Ensure you have robust data
  • Choose the right AI lead-scoring platform
  • Understand Your Target Audience

    Before you consider adopting any AI solution to streamline your processes (including lead scoring) you must nail down your target audience. Many lead-scoring solutions are geared toward specific audiences, so figuring out your customer persona will help you find the right option.

    For example, AI platforms suited for B2B sales are focused on analyzing company data more effectively than individual information. You need to make sure your preferred platform can take into account all the necessary data points to enable effective scoring.

    To achieve this, get clear on the following:

  • Your target industry (or industries)
  • Ideal customer profile (ICP)
  • Relevant qualification factors (e.g., number of employees, budget, etc.)
  • By understanding the above elements, you can ensure your AI lead scoring model accurately qualifies prospects and lets you prioritize them successfully.

    Ensure You Have Robust Data

    Comprehensive data is the essence of lead scoring, whether you use an AI solution or not. You need numerous data points to analyze buying signals effectively so that you can qualify leads. More importantly, data is essential to campaign personalization, which can make or break your conversions.

    If you're targeting individuals, the data points you need include contact information, demographics, and online behavior data. Similarly, targeting companies means you need to gather the prospective business's information like:

  • Technographics
  • Funding
  • Personnel
  • Industry
  • In some cases, you might need a mix of company and people data. For example, you may be targeting specific executives of companies, in which case you'll want to understand them on a personal level instead of only focusing on firmographics.

    In any case, you should have a solid data collection and enrichment solution in place before searching for a lead-scoring solution. Even the most capable platforms can't perform effectively without comprehensive datasets, so prioritize prospect enrichment.

    As you'll see a bit later in this guide, some platforms let you combine effective data enrichment with lead scoring. Such solutions are few and far between, though, especially if you're looking for a cost-effective one.

    Choose the Right AI Lead-Scoring Platform

    Since the rise of AI, plenty of lead-scoring platforms leveraging this technology have surfaced. That doesn't mean they're all equally effective. When browsing different solutions, use the following criteria to zero in on the best option:

  • 🤖 Scoring options: Some platforms offer AI-assisted lead scoring, while others fully automate the process. Depending on your tech stack and workflows, you can choose the option that best supports your current processes
  • 🔢 Training data: AI platforms can be trained on external customer data or the specific data you feed it. There's no right or wrong here. It all comes down to whether you have sufficient data to opt for the latter option or want to augment the results with external data
  • ❓ Transparency: You should know precisely how your scoring solution qualifies leads. This way, you can understand the specific criteria to know whether it includes your deal-breakers
  • 📈 Data preparation: Some platforms automatically clean up data before leveraging it to score leads. Unless you already have a data cleansing platform, choosing such solutions might be beneficial for removing manual work and ensuring accuracy
  • ⚡ Ease of use: While AI solutions typically increase efficiency, some may do the opposite through a complex and hard-to-navigate interface. Avoid such solutions so that you don't expose your SDRs to unnecessary work
  • 💸 Cost: Despite advanced algorithms and many use cases, AI lead-scoring platforms shouldn't break the bank. If you research your options thoroughly, you can find a solution that fits your budget
  • Potential Pitfalls of AI Lead Scoring

    Before you adopt an AI lead-scoring solution, you should keep in mind a few potential pitfalls. The main issues are explained in the following table:

    If you need an AI-enabled solution that can help you avoid these issues and score leads more effortlessly, Clay can be an excellent option. 🚀

    Score Leads and Turn Them Into Buyers With Clay

    Clay is an AI-powered data enrichment and sales automation solution that streamlines various sales processes, including lead scoring. It lets you create custom scoring formulas based on virtually any criteria, from a prospect's role to a company's headcount.

    To help you avoid manual scoring, Clay is equipped with various AI features that handle the heavy lifting. 🦾

    The first one is Claygent, an advanced AI researcher and assistant that can uncover virtually any information about prospects based on simple prompts. For example, you can set up automated scoring based on a prospect's previously used software solutions and tell Claygent to scour prospects' LinkedIn profiles for relevant information and assign a score accordingly. 

    To further simplify data collection and scoring, Clay integrates with OpenAI, letting you harness the power of ChatGPT. You can use the integration to complete numerous tasks, such as:

  • Using AI to ask ChatGPT questions about your prospects
  • Completing ChatGPT prompts for more effective research and scoring
  • Analyzing images to obtain relevant information that isn't in the text format
  • Combining Clay's OpenAI integration with Claygent is a powerful way to obtain plenty of data you can use for lead scoring. If you don't want to set up scoring workflows from scratch, you can leverage Clay templates to automatically score leads based on several criteria, such as their work history and other professional data. 🤓

    Want to see Clay's automated lead scoring in action? Check out this quick tutorial:

    Enrich Prospect Data and Act On It Without Hassle

    To enable lead scoring with outstanding accuracy, Clay lets you find out everything you need to know about your prospects without any manual work. It integrates with over 50 data providers, letting you explore their databases directly from Clay without juggling additional accounts and contracts.

    Clay also uses waterfall enrichment, a hands-off approach to data collection that lets the platform scour your preferred databases one by one until it finds the info you need. You can enrich people and companies with plenty of data points, such as:

  • Contact information
  • Firmographics
  • Technographics
  • Social media updates
  • All this data is automatically added to your Clay table, from which you can run scoring formulas in no more than a few clicks. ⚡

    If you want a more hands-on way of getting the data you need, you can use Clay's Chrome extension. It lets you pull data from pages as you visit them either automatically with pre-built recipes or manually through custom recipes for enhanced flexibility.

    After collecting the data you need and scoring leads, Clay can target each prospect with a hyper-personalized email at scale, thanks to its AI message writer. It automatically pulls data from the Clay table to write custom emails in seconds, letting you instantly automate email sequences.

    Thanks to Clay's robust integrations, you can push data to your CRM or send emails to your sequencer seamlessly and execute effective campaigns without bottlenecks.

    Full-Circle Sales Support for Everyone's Budget

    Clay lets you find, enrich, and score leads, after which it crafts custom messages for each prospect to streamline and automate all resource-intensive tasks. You can do all of this at no cost thanks to Clay's robust free plan.

    The free plan doesn't expire, and you get 100 monthly data credits to see Clay's features in action. If you need more data credits and want to unlock advanced features, you can choose between four affordable paid tiers:

    With each plan, you can choose between several data credit amounts to ensure minimal waste and get the most out of your investment.

    Judging by users' experiences with Clay, the platform is an excellent long-term investment in your sales cycle. Here's what one customer had to say:

    Source: Clay Wall of Love

    Create Your Free Clay Account

    To unlock the full potential of AI in lead scoring and plenty of other sales processes, you can get started with Clay in three quick steps:

  • Go to the signup page ✒️
  • Enter your name, email, and password 📧
  • Browse Clay's comprehensive features 💪
  • You can explore Clay University for more tutorials and tips on getting the most out of the platform. Feel free to also join the platform's Slack community to see how other sales teams are using Clay in their workflow. For relevant updates and actionable outreach tips, sign up for Clay's newsletter.

    Frequently Asked Questions

    What is the difference between traditional lead scoring and AI lead scoring?

    Traditional lead scoring uses static, manually defined rules (if-this-then-that logic) to assign scores based on preset criteria. AI lead scoring uses predictive analytics and machine learning to build dynamic scoring models from your actual data, identifying patterns between prospect characteristics and successful conversions without requiring manual rule-setting.

    What data do I need before implementing AI lead scoring?

    The data you need depends on who you're targeting. For individuals, you'll want contact information, demographics, and online behavior data. For companies, you'll need firmographics, technographics, funding data, personnel information, and industry details. In either case, having a solid data enrichment solution in place before adopting a scoring platform is essential, since even the most capable AI tools can't perform effectively without comprehensive datasets.

    Does AI lead scoring replace SDR judgment entirely?

    No. Over-reliance on AI is one of the main pitfalls called out in this guide. AI solutions are imperfect, and your lead-scoring model needs human oversight. SDRs should still make the final call on how to act on scored leads, using the AI output as a data-backed input rather than a definitive verdict.

    Which plan do I need to use Clay for lead scoring?

    You can start on Clay's free plan, which includes 100 monthly data credits and access to core features including Claygent and multi-provider waterfalls. Paid plans start at $185/month (Launch) and scale up to Growth at $495/month and Enterprise at custom pricing, each unlocking additional data credits, integrations, and automation capabilities.

    💡 Keep reading: Want to learn more about leveraging AI throughout the sales cycle? Have a look at these articles:

    Effective lead scoring is essential to adequate resource use. If your SDRs can't prioritize leads, they might waste time on unqualified prospects instead of getting quick wins by focusing on those ready to buy.

    While you can rank leads manually, doing so can be time-consuming and laborious. With the rise of machine learning and predictive analytics, we got a far superior option: AI lead scoring.

    Successful implementation of AI in lead scoring and other processes throughout the sales cycle is an excellent way to tighten your workflow. Take our sales process as an example. Using AI, we fully automated a 4-step campaign for our outbound sequences, getting a 5.1% positive response rate. 🤩

    In this guide, though, we won't focus on the entire campaign but only on lead scoring. We'll go through the following:

  • What AI lead scoring is and how it works
  • Why you should implement AI in lead scoring
  • How to leverage AI lead scoring in your sales process
  • TL;DR

    • AI lead scoring uses predictive analytics and machine learning to rank leads by conversion potential, replacing manual if-this-then-that rules with dynamic, data-driven criteria.
    • The process runs in four stages: data collection, data analysis, predictive model creation, and scoring. Most of it happens without your direct involvement.
    • Before adopting any platform, nail down your ICP, ensure you have robust data, and evaluate tools on scoring options, transparency, and ease of use.
    • Clay combines data enrichment and AI lead scoring in one workflow, letting you score leads based on virtually any criteria and immediately act on results with personalized outreach.

    What Is AI Lead Scoring?

    AI lead scoring involves using an AI-enabled tool to analyze prospect data and rank leads according to their conversion potential. It differs from traditional automated lead scoring in three aspects:

  • Underlying mechanism
  • Scoring criteria
  • Customization
  • The following table outlines these differences:

    In a nutshell, the primary way AI enhances lead scoring is by removing the need for manual input. The most demanding and time-consuming scoring tasks are fully automated, leaving more time for executive decisions and campaign development.

    While the exact process is complicated, the good news is that you don't need to fully understand it to reap the benefits. That's why we'll go over the basics to give you a general idea behind AI-powered lead scoring.

    How Does AI Lead Scoring Work?

    On a high level, AI lead scoring happens in four stages:

  • Data collection: The platform gathers data from numerous sources (like your CRM and connected third-party data providers)
  • Data analysis: The collected data is analyzed to identify common patterns and highlight correlations between specific data points and successful conversions
  • Predictive model creation: The AI tool develops a predictive model based on the identified patterns to understand which leads have the highest conversion potential according to historical data
  • Scoring: Prospects are assigned scores according to their individual characteristics and connection to the discovered patterns
  • Much of this process happens without your direct involvement. All you need to do is provide your platform with relevant, comprehensive data, and it will crunch it to score leads automatically.

    Thanks to advanced features and functionalities, your lead scoring solution can perform various additional tasks. See some of the most notable ones in the table below:

    💡Bonus read: If you want to learn about the use cases of AI beyond lead scoring, check out our guides on using AI for sales enablement, AI-guided selling, and cold calling.

    Key Benefits of AI Lead Scoring

    Besides the obvious time savings you can enjoy after implementing an AI lead scoring solution, you can reap plenty of benefits, most notably:

  • Increased decision confidence: While AI tools aren't foolproof, their advanced algorithms support decision-making by seamlessly analyzing comprehensive datasets to provide actionable insights. You can make decisions based on cold data instead of relying on guesswork
  • Improved campaign effectiveness: If you need a quick win and want to focus on low-hanging fruit in your pipeline, AI lead scoring helps you identify the warmest leads effortlessly. You can prioritize and target them more efficiently so that your SDRs hit their quotas faster
  • Precise personalization: By understanding the key patterns and correlations between prospect data and conversions, you can tweak your outreach strategy to tailor its elements accordingly. Doing so further improves your campaigns' chances of maximizing conversions
  • Cost-effectiveness and increased ROI: AI lead scoring removes inefficiencies, preventing resource waste and manual labor. Combine this with its ability to help you develop more solid campaigns, and you'll see how the right platform can do wonders for your bottom line
  • While these advantages are compelling, you can't reap them overnight. You need to take a methodical approach to AI implementation to ensure success. 💯

    Best Practices for Adopting AI Lead Scoring Effectively

    To make AI lead scoring an integral part of your sales workflows, you should:

  • Understand your target audience
  • Ensure you have robust data
  • Choose the right AI lead-scoring platform
  • Understand Your Target Audience

    Before you consider adopting any AI solution to streamline your processes (including lead scoring) you must nail down your target audience. Many lead-scoring solutions are geared toward specific audiences, so figuring out your customer persona will help you find the right option.

    For example, AI platforms suited for B2B sales are focused on analyzing company data more effectively than individual information. You need to make sure your preferred platform can take into account all the necessary data points to enable effective scoring.

    To achieve this, get clear on the following:

  • Your target industry (or industries)
  • Ideal customer profile (ICP)
  • Relevant qualification factors (e.g., number of employees, budget, etc.)
  • By understanding the above elements, you can ensure your AI lead scoring model accurately qualifies prospects and lets you prioritize them successfully.

    Ensure You Have Robust Data

    Comprehensive data is the essence of lead scoring, whether you use an AI solution or not. You need numerous data points to analyze buying signals effectively so that you can qualify leads. More importantly, data is essential to campaign personalization, which can make or break your conversions.

    If you're targeting individuals, the data points you need include contact information, demographics, and online behavior data. Similarly, targeting companies means you need to gather the prospective business's information like:

  • Technographics
  • Funding
  • Personnel
  • Industry
  • In some cases, you might need a mix of company and people data. For example, you may be targeting specific executives of companies, in which case you'll want to understand them on a personal level instead of only focusing on firmographics.

    In any case, you should have a solid data collection and enrichment solution in place before searching for a lead-scoring solution. Even the most capable platforms can't perform effectively without comprehensive datasets, so prioritize prospect enrichment.

    As you'll see a bit later in this guide, some platforms let you combine effective data enrichment with lead scoring. Such solutions are few and far between, though, especially if you're looking for a cost-effective one.

    Choose the Right AI Lead-Scoring Platform

    Since the rise of AI, plenty of lead-scoring platforms leveraging this technology have surfaced. That doesn't mean they're all equally effective. When browsing different solutions, use the following criteria to zero in on the best option:

  • 🤖 Scoring options: Some platforms offer AI-assisted lead scoring, while others fully automate the process. Depending on your tech stack and workflows, you can choose the option that best supports your current processes
  • 🔢 Training data: AI platforms can be trained on external customer data or the specific data you feed it. There's no right or wrong here. It all comes down to whether you have sufficient data to opt for the latter option or want to augment the results with external data
  • ❓ Transparency: You should know precisely how your scoring solution qualifies leads. This way, you can understand the specific criteria to know whether it includes your deal-breakers
  • 📈 Data preparation: Some platforms automatically clean up data before leveraging it to score leads. Unless you already have a data cleansing platform, choosing such solutions might be beneficial for removing manual work and ensuring accuracy
  • ⚡ Ease of use: While AI solutions typically increase efficiency, some may do the opposite through a complex and hard-to-navigate interface. Avoid such solutions so that you don't expose your SDRs to unnecessary work
  • 💸 Cost: Despite advanced algorithms and many use cases, AI lead-scoring platforms shouldn't break the bank. If you research your options thoroughly, you can find a solution that fits your budget
  • Potential Pitfalls of AI Lead Scoring

    Before you adopt an AI lead-scoring solution, you should keep in mind a few potential pitfalls. The main issues are explained in the following table:

    If you need an AI-enabled solution that can help you avoid these issues and score leads more effortlessly, Clay can be an excellent option. 🚀

    Score Leads and Turn Them Into Buyers With Clay

    Clay is an AI-powered data enrichment and sales automation solution that streamlines various sales processes, including lead scoring. It lets you create custom scoring formulas based on virtually any criteria, from a prospect's role to a company's headcount.

    To help you avoid manual scoring, Clay is equipped with various AI features that handle the heavy lifting. 🦾

    The first one is Claygent, an advanced AI researcher and assistant that can uncover virtually any information about prospects based on simple prompts. For example, you can set up automated scoring based on a prospect's previously used software solutions and tell Claygent to scour prospects' LinkedIn profiles for relevant information and assign a score accordingly. 

    To further simplify data collection and scoring, Clay integrates with OpenAI, letting you harness the power of ChatGPT. You can use the integration to complete numerous tasks, such as:

  • Using AI to ask ChatGPT questions about your prospects
  • Completing ChatGPT prompts for more effective research and scoring
  • Analyzing images to obtain relevant information that isn't in the text format
  • Combining Clay's OpenAI integration with Claygent is a powerful way to obtain plenty of data you can use for lead scoring. If you don't want to set up scoring workflows from scratch, you can leverage Clay templates to automatically score leads based on several criteria, such as their work history and other professional data. 🤓

    Want to see Clay's automated lead scoring in action? Check out this quick tutorial:

    Enrich Prospect Data and Act On It Without Hassle

    To enable lead scoring with outstanding accuracy, Clay lets you find out everything you need to know about your prospects without any manual work. It integrates with over 50 data providers, letting you explore their databases directly from Clay without juggling additional accounts and contracts.

    Clay also uses waterfall enrichment, a hands-off approach to data collection that lets the platform scour your preferred databases one by one until it finds the info you need. You can enrich people and companies with plenty of data points, such as:

  • Contact information
  • Firmographics
  • Technographics
  • Social media updates
  • All this data is automatically added to your Clay table, from which you can run scoring formulas in no more than a few clicks. ⚡

    If you want a more hands-on way of getting the data you need, you can use Clay's Chrome extension. It lets you pull data from pages as you visit them either automatically with pre-built recipes or manually through custom recipes for enhanced flexibility.

    After collecting the data you need and scoring leads, Clay can target each prospect with a hyper-personalized email at scale, thanks to its AI message writer. It automatically pulls data from the Clay table to write custom emails in seconds, letting you instantly automate email sequences.

    Thanks to Clay's robust integrations, you can push data to your CRM or send emails to your sequencer seamlessly and execute effective campaigns without bottlenecks.

    Full-Circle Sales Support for Everyone's Budget

    Clay lets you find, enrich, and score leads, after which it crafts custom messages for each prospect to streamline and automate all resource-intensive tasks. You can do all of this at no cost thanks to Clay's robust free plan.

    The free plan doesn't expire, and you get 100 monthly data credits to see Clay's features in action. If you need more data credits and want to unlock advanced features, you can choose between four affordable paid tiers:

    With each plan, you can choose between several data credit amounts to ensure minimal waste and get the most out of your investment.

    Judging by users' experiences with Clay, the platform is an excellent long-term investment in your sales cycle. Here's what one customer had to say:

    Source: Clay Wall of Love

    Create Your Free Clay Account

    To unlock the full potential of AI in lead scoring and plenty of other sales processes, you can get started with Clay in three quick steps:

  • Go to the signup page ✒️
  • Enter your name, email, and password 📧
  • Browse Clay's comprehensive features 💪
  • You can explore Clay University for more tutorials and tips on getting the most out of the platform. Feel free to also join the platform's Slack community to see how other sales teams are using Clay in their workflow. For relevant updates and actionable outreach tips, sign up for Clay's newsletter.

    Frequently Asked Questions

    What is the difference between traditional lead scoring and AI lead scoring?

    Traditional lead scoring uses static, manually defined rules (if-this-then-that logic) to assign scores based on preset criteria. AI lead scoring uses predictive analytics and machine learning to build dynamic scoring models from your actual data, identifying patterns between prospect characteristics and successful conversions without requiring manual rule-setting.

    What data do I need before implementing AI lead scoring?

    The data you need depends on who you're targeting. For individuals, you'll want contact information, demographics, and online behavior data. For companies, you'll need firmographics, technographics, funding data, personnel information, and industry details. In either case, having a solid data enrichment solution in place before adopting a scoring platform is essential, since even the most capable AI tools can't perform effectively without comprehensive datasets.

    Does AI lead scoring replace SDR judgment entirely?

    No. Over-reliance on AI is one of the main pitfalls called out in this guide. AI solutions are imperfect, and your lead-scoring model needs human oversight. SDRs should still make the final call on how to act on scored leads, using the AI output as a data-backed input rather than a definitive verdict.

    Which plan do I need to use Clay for lead scoring?

    You can start on Clay's free plan, which includes 100 monthly data credits and access to core features including Claygent and multi-provider waterfalls. Paid plans start at $185/month (Launch) and scale up to Growth at $495/month and Enterprise at custom pricing, each unlocking additional data credits, integrations, and automation capabilities.

    💡 Keep reading: Want to learn more about leveraging AI throughout the sales cycle? Have a look at these articles:

    More Articles

    Claygent Builder: The easiest way to build, test, and deploy GTM Agents

    How Clay Uses Clay Ads: From $250 to $25 CPL

    HG Insights Corporate Hierarchy: GTM Precision in Clay

    Sales GTM Engineering: How Clay Built the Role From Scratch

    How to Automate Inbound Lead Outreach: The Clay Playbook

    demandDrive Joins Clay’s Partner Ecosystem as an Official Clay Studio Partner

    B2B Sales Prospecting: 15 Strategies to Drive More Conversions

    AI Sales Assistants: 11 Ways to Accelerate Your Outbound

    The Three Laws of GTM: How to Win in the AI Era

    Best Work Email Finders by Segment: SMB vs. Enterprise

    How Clay Converts Trial Users Into Customers With Automated Outreach

    Best Mobile Phone Data Providers for B2B Sales Teams

    How to Build a Complete AI Outbound Sales Funnel

    How to Get More Customers Using Outbound Sales: A Complete Guide

    How to Automate 6 Cold Email Campaigns in One Clay Workflow

    How Clay Identifies Tier 1 Accounts: A Three-Score System

    Lead Scoring in Clay: A Step-by-Step Formula Guide

    How to Validate Cold Outbound Offers and Find Message-Market Fit

    Troubleshooting Outbound Sales and Prospecting: A Comprehensive Guide

    Bulk Enrichment: Enrich Millions of CRM Records in Clay

    Clay Templates: Automate, Customize, and Replicate Any GTM Workflow

    How to Optimize Your Credit Usage in Clay

    AI for sales prospecting

    The Reverse Demo: How Clay Replaced Traditional B2B Sales Demos

    Data Waterfalls: How to Maximize Contact Coverage with Clay

    How Clay Runs ABM Campaigns: A Step-by-Step Playbook

    How We Built Clay's GTM Engineering Function

    Best Personal Email Finder Tools: Tested and Ranked

    How to Use OpenAI to Write Cold Emails from Scratch with Clay

    How to Run a Personalized Demo Play at Scale with Clay

    Automated Slide Deck Creation: How Clay Builds QBRs from Your Data

    HG Insights + Clay: B2B Technographic and Firmographic Data

    B2B Cold Email Deliverability: 21 Best Practices

    Basics of Google Search Operators: A Practical Guide

    AI Lead Generation: The Complete B2B Guide

    Clay MCP: Ops-built workflows, consumable by reps

    How to Manage and Enrich Inbound Leads Automatically

    GTM Alpha: How Winning Teams Build a Competitive Edge

    Why Good CRM Data Matters and How Clay Helps

    How to Use Formulas in Clay: AI Generator and Manual Entry

    GTM Engineering: What It Is, How It Works, and How to Hire

    Formulas in Clay: A Beginner's Intro for Non-Engineers

    How Clay Uses Clay for SEO and AEO: 3 Systems That Scale

    Turn Web Visitors into Leads: A Warm Outbound Play for B2B Sales

    How to Use Web Scraping to Enrich Your Data with Clay

    How to Create a Sales Prospect List in Minutes

    Best B2B Email List Providers: Tested and Ranked (2026)

    Outbound Sales Automation: How to 10x Pipeline Without More SDRs

    The Wake the Dead Play: Reactivate Closed-Lost Deals with Clay

    Three Tips to Guarantee Email Deliverability for Cold Outbound

    How Clay Uses Clay for Customer Support: 3 Real Workflows

    B2B Cold Email Copywriting: The Complete Guide

    Introducing Clay Functions

    Clay and Apollo Integration: Enrichment, Sequencing, and More

    The Many Lives of Spreadsheets: A History and What Comes Next

    AI recruiting strategies

    How to Hire a GTM Engineer: The Complete Guide

    Inside Clay's GTM Engineering Lab: Plays, Principles, and Automation

    How to Build the Most Targeted Account Lists Possible

    Personalized Direct Mail at Scale: The Gifting Play with Clay

    How to Set Up Your Full Inbound Sales Process on Clay

    AI-Enabled GTM for Private Equity: The Value Creation Playbook

    Do More With Your Data: Clay's Post-Data-Provider Approach

    Google Maps Lead Generation for Niche Local Businesses

    24 AI Email Personalization Examples for Cold Outreach (With Prompts)

    How to Ace Your Follow-Ups: A Practical Sales Guide

    How to Prioritize Your Waitlist with Lead Enrichment

    B2B Cold Email Templates: Frameworks That Get Replies

    Audiences: now in Enterprise beta

    The thinking behind our new pricing: our internal memo

    Introducing Clay’s new pricing

    Clay partners with Lusha and Beauhurst to expand European data coverage

    Source your precise TAM from lookalikes you can trust with Ocean.io and Clay

    Clay doubles down on supporting European GTM teams

    In Nigeria, she built a life where money wouldn’t decide

    Sculptor Analyst Mode: Turning Context-Rich Data Into Actionable GTM Insights

    In a place where girls often choose between career or marriage, she carved her own path 

    How we designed Sculpt

    Clay announces second employee tender offer in nine months at a $5B valuation

    Clay is now available as a connector in Claude

    Sellers have a new AI edge: Clay in ChatGPT

    Clay reaches $100M ARR

    Clay Certifications: Turning mastery into credentials that matter

    Mobile Phone Verification Methodology

    Work Email Verification Methodology

    Stop Guessing, Start Analyzing: How Sculptor Turns Your GTM Data Into Your Competitive Advantage

    Find and outreach local businesses with Openmart and Clay Sequencer

    Announcing Web Intent

    How Clay Uses Clay: Conversational Data

    Sculpting GTM’s future with six major launches

    Introducing Claygent Navigator

    Announcing the Clay Partner Program

    Introducing GPT-5 in Claygent: sharper research, stronger formulas, better outbound

    Clay Series C announcement. The GTM engineering era begins now

    Claygent surpasses 1 billion runs

    Announcing Sculpt: Clay’s first annual user conference

    Announcing custom signals at Clay

    Clay announces employee tender offer led by Sequoia at $1.5B valuation

    Create personalized presentations at scale with Clay and Google Slides

    Turn Gong conversations into automated GTM workflows