Nearbound Marketing #13: 5 Steps to Webinars that Don't Suck
Partner Teams Need Better Positioning - Introducing Co-Selling Teams
Looking for GoToEco Hidden Gems
Howdy Partners #32: Measure What Matters: How To Create Alignment Internally
Alessandra Andrenacci: Programmatic Partner Distribution - Leveraging Verticalized Partner Programs | Supernode 2023
Nearbound Sales #13: 10 Years of Driving Growth Through Partnerships
Nearbound Marketing #12: The YouTube Strategy that Actually Works in B2B
Partnerships are Transforming the Auto Industry
Leveraging Ecosystem Clusters to Drive Many:Many Reciprocal Co-Sell
Nearbound Podcast #108: How To Get Fired as a Partner Manager with Jared & Isaac
Getting Dedicated Dev Resources for Integrations is Possible. Here’s How.
Nearbound Daily #046: The partner moment has arrived
Nearbound Marketing #11: How Strategic Advisors Help You Live In Market
Howdy Partners #30: Can ChatGPT Replace Us Partnership Folks?
Nearbound Daily #044: Keep your head up
Harness Your Sales Reps as Channel Managers
Nearbound Sales #11: Want To Stand Out From The Crowd Of Sellers?
How to use Reveal for Co-marketing Events
Nearbound Daily #041: Don't Be Normal
Nearbound Marketing #10: 6 Do's & Don'ts of Partner Marketing You Can't Ignore
Did AI Just Kill SEO?
Brian Jambor: Building a Partner Program From Zero | Supernode 2022
Prove the Value of Your Channel Program Using 7 Critical Metrics
Nearbound Sales #10: Close More Deals With The Secret Partner Sauce
Nearbound Daily #038: Measure What Matters
"The End is Near" For 3rd-Party Data Says Scott Brinker
Weak Economy Equals Nearbound Opportunity says Bain Executive
Nearbound Daily #037: Better Than a Cold Email
Nearbound Daily #036: What Stops Referrals from Scaling?
Nearbound Marketing #9: How to Leverage the Weirdos on Your Partnerships Team
Nearbound Podcast #105: Mastering Partnerships Skills Through AI
The Partnering Reference Architecture: Managing Your CRM
Nearbound Daily #034: Give Value First
Howdy Partners #3: Ideal partner profile (IPP)
Building a Partner-First Mindset in Your Organization
Nearbound Sales #9: How to De-Risk Your Investment In Partnerships
The Big Bet: Why 23% of Companies are All In on Co-Selling
Nearbound Daily #033: 12 Rules for Partner Pros
Nearbound Daily #032: Use Partnerships to Turn On Easy Mode
Nearbound Weekend 04/01: AI Changes Things (or does it?)
Nearbound Marketing #8: The 7-State Jeep Tour That was Partner-Powered
Nearbound Daily #030: The keys to unlock your partner program
Nearbound Daily #029: Build a nearbound motion
Nearbound Sales #8: The Best Analogy In Partnerships
Nearbound Podcast #104: When Sales and Partnerships Partner Up
Nearbound Daily #025: The partner motion never stops
Howdy Partners #27: Engaging Internally with Marketing - How to Help Them Do More With Less and Win Together
A Lack of GTM Support for ELG Could Cost You Millions in Revenue
A Partnership Made in Heaven (well, space anyway)
Nearbound Sales #7: They Win, You Win
Nearbound Daily #024: Partnerships are your greatest resource
Nearbound Podcast #103: Think Customer Outcomes or Die - Raja Nucho on Surrounding the Sale with Partners
You Only Get One Shot At A First Impression: How To Ace Partner Onboarding
Nearbound Daily #023: Don't swim against the current
Howdy Partners #25: What is the 'SaaS Buying River'
What are ecosystem leads and how to find them
Nearbound Sales#6: Sell Together, Sell More
The partner experience weekly: Should partnerops role up to revops?
Nearbound Daily #020: GTM is about to get wild
Nearbound Podcast #102: War Stories with Legends
Nearbound Marketing #20: Creators Are Your Cheat Code
Women in SaaS Partnerships Are (Probably) Underpaid
Nearbound Sales #5: Unlock Unstoppable Momentum and Build a Flywheel
The Partner Experience Weekly: Account Mapping - 9-Box Strategic Plan
Nearbound Podcast #101: From Seller to VP Sales to CEO — How to Partner Pill Your Sales Org
How to earn the respect of your sales team in 60 Days
Building an Ecosystem Cluster Strategic Co-Sell Program
Nearbound Weekend 03/04: How can we save B2B?
Nearbound Marketing #4: Evangelism Leads Where?
The Ecosystem-Led Growth Race Between the US and Europe: Who’s Winning?
Howdy Partners #24: How to Make Partner Enablement Actually Engaging
Nearbound Sales #4: The Dark Side of Working with Partners
The Partner Experience Weekly: Building CRM for Partnerships
Nearbound Podcast #100: From Scorpions and Casinos to Hubspot and PartnerHacker
8 SaaS Leaders You Should Follow: Partnerships Edition
Nearbound Marketing #3: How to Use Events to Drive Your Marketing
Unlocking the Power of Partnerships with Martin Scholz of PartnerXperience
Howdy Partners #22: Developing Your Ideal Partner Profile
Getting Started with Ecosystem-Led Growth: Your First 3 Plays
The Partner Experience Weekly: Salesforce List Views for Partnerships
Nearbound Marketing #2: Building a Brand with Zero Network
Leveraging Nearbound Data in HubSpot
Your 2023 Interview Kit For Landing Your Next Partnerships Role
Filling the Critical Gap: How to Become Every Technology Platform's Favorite Partner
The Partner Experience Weekly: Building a Partnership App in Salesforce CRM
Nearbound Marketing #1: Market Like a Journalist
5 Reasons to Attend Supernode 2023
Howdy Partners #19: Approaching Agency Partnerships
Nearbound Sales #1: 1 + 1 = 1
The Partner Experience Weekly: Partner Recruitment in Salesforce (with screenshots)
The Most Common Partnership KPIs and Quarterly Targets for 2023
7 Ways to Sabotage Your Partner Ecosystem: A Guide for Partner Managers
How to build a B2B affiliate program in seven steps
Top tips for managing a successful B2B partnership
nearbound.com CEO Jared Fuller Wins 2023 SaaSy Sales Leadership Award
A Career in Partnerships Could Help You Make More Money Faster
Howdy Partners #17: Living in the Ecosystem
HubSpot Ecosystem Set to Reach $17.9 Billion in Revenue by 2025
nearbound.com principles: show me you know me — Samantha McKenna
Partnerships 101: What Is Ecosystem-Led Growth?
ELG AI

AI at Crossbeam: Building a Data Team for your AI Agents
by
Matt Nicosia
SHARE THIS

Learn why workflows fall short, how semantic models limit agents, and how Zayer empowers them to deliver on-demand insights, power go-to-market strategies, support product teams, and accelerate revenue growth.

by
Matt Nicosia
SHARE THIS

In this article

Join the movement

Subscribe to ELG Insider to get the latest content delivered to your inbox weekly.

In our last “AI @ Crossbeam” installment, we talked about a few of the ways we started incorporating AI, and specifically ELG within AI, into our internal processes. The impact these workflows and agents have had is substantial, touching every function across the business and being used hundreds, even thousands of times each week.

The challenge: AI agents and data access

When we set out to build our first agent though, we ran into one particularly thorny problem where there wasn’t a clear solution — how do we let our agent get access to any of the data it could need in our data stack (usually stored in a data warehouse, like Snowflake or Databricks)?

The different layers of the data stack and common tools within them.

AI workflows vs. AI agents: Data needs

For AI workflows, this isn’t as much of a problem — you’re putting the AI on much tighter guardrails, and if you’re feeding it data from the stack, you set up exactly where it comes from ahead of time as part of that workflow. This is still powerful, but it’s narrow and predefined, not covering wide possible use cases.

AI agents, by design, need to request a far wider (near infinite) possible range of things to accomplish their tasks. Now this isn’t too difficult with most tools, like a CRM, a product help center, a knowledge store, etc., because the agent is usually able to search via API or MCP for relevant text, and matching text is given back. LLMs are good at parsing text, and it can usually get what it needs through that.

The problem with structured data and SQL

Structured data from analytics (think tables, rows, and columns) is different — it’s why SQL as a language exists, to extract the right data for the right problem. The agent can’t just search via an API.

If your agent can’t get analytics data as one of its tools, it’s going to be totally hamstrung.

And here’s the killer: the data that lives in your data stack is the most powerful, useful data you have at your company. It’s where product usage, marketing interaction, sales engagement, Crossbeam ELG data, and much more coexist. Your data team has likely spent time in tools like dbt ensuring that all this raw data is transformed into something incredibly valuable, powering what you experience in your data visualization tools and much more.

So just tell your agent to write SQL, right? Well, writing the code isn’t too hard — what’s hard is knowing what code to write. What columns should be used? How do you join multiple data sets together? What does a specific term, like “login”, actually mean? (At Crossbeam, it’s the number of unique days a person is intentionally using a part of the product).

This is where things get gnarly for an agent. The more possible things it could ask from this data, the more it needs to know about it to properly extract it. Broadly speaking, this is a semantic model — the way you explain to AI how to convert natural language into a query in a way that makes sense for your data and your business. Semantic model tools do exist but they’re built to help your business intelligence tools, like data visualization, where needs are consistent and predictable. You’ll never be able to cover all the possible ad hoc things your agent will ask of your data using one. So your agent ultimately falls short of what it was supposed to do and fails

Introducing Zayer: The data team for your AI agents

At least, that’s what would happen if we didn’t create Zayer to solve this. It gives any AI agent an entire team of data experts tailored to your data stack, allowing your agent to ask any question and get the answer, data and context it needs to carry out its work — no matter how wide ranging and autonomous it is.

A team of data experts are now on demand for all your AI agents as needed.

How Zayer empowers your AI agents

You add it to your agents just like any other tool through an API or MCP. Your data team maintains the data experts through Zayer, refining logic easily as needed in a way that’s more familiar, more effective, and more scalable than a single semantic model. Spinning up a new data expert takes a minute and is immediately available.

Real-world examples: Zayer in action

What can your agent do now with these superpowers? Provide data on demand for anyone on your team, create complex go to market plans, write tailored emails for your revenue teams, help your product team understand which features are driving conversions, and much more. Here are some examples of how our own AI Assistant was powered by the data Zayer provided:

The CEO asks for an overview of our relationship with a big prospect. Zayer provides all this through the Gong call recordings and product usage data we have in Snowflake:

A product designer wants to know some product usage stats to inform the designs they're making:

A CSM wants to get a list of users for their account and some stats about them for the customer (and Zayer also generates the CSV download link, which was provided in a follow up):

The Head of Marketing asks about top customers:

A sales rep asks about specific feature usage for an account:

We found what Zayer did was so useful, I decided to spin it out into its own product and company. Since then, we’ve signed on new pilot customers who are using it in their own agent builds, and the response has been overwhelming. Our first customers tell us Zayer is dramatically improving their jobs. 

Want to give it a try yourself? Get a completely free AI analyst for Slack at zayer.ai, or reach out to me directly at matt@zayer.ai. I’ll even help you stand up your first AI agent from scratch if you haven’t built one yet.

You’ll also be interested in these

AI at Crossbeam
The 2x2 Matrix of AI Data
AI and Automation for Partnership Success