Article
|
2
 minutes
The 2024 ELG Index: Charting the global progress of Ecosystem-Led Growth in tech
Article
|
9
 minutes
Nearbound Weekend 03/23: Our Response to Chris Walker's Provocative LinkedIn Post
Article
|
4
 minutes
Nearbound Daily #545: 2024, The Year of Partnerships
Article
|
4
 minutes
Nearbound Daily #544: 🤐 6 Top Revenue Leaders Told Us What They Really Think About Partnerships
Article
|
5
 minutes
Measure and prove: How PartnerOps drives SaaS success
Article
|
14
 minutes
Key Trends Discussed at the Summit
Article
|
12
 minutes
What top revenue leaders really think of partnerships
Article
|
4
 minutes
Nearbound Daily #541: 😱 Renewals Aren't Automatic...Here's What To Do About It
Article
|
2
 minutes
Nearbound Weekend 03/16: Find Your Pot of Gold ☘️
Article
|
11
 minutes
How to Win Hearts and Minds in Partnerships
Article
|
6
 minutes
Nearbound Daily #537: The Rise of Nearbound Revenue Platforms with Canalys Experts
Article
|
8
 minutes
How Kolleno reduced their time to close by 50% with Ecosystem-Led Growth
Article
|
4
 minutes
Nearbound Daily #535: Every Partner Has Favorites, Become One
Video
|
62
 minutes
Friends with Benefits #34: The Power of Direct Mail and Building Genuine Relationships with Katie Penner
Article
|
4
 minutes
Nearbound Daily #534: From Lack of Buy-In to All-In
Article
|
2
 minutes
The Book that GTM Needs
Article
|
4
 minutes
Nearbound Daily #533: Inside Story: HubSpot Wasn't Always Partner-Centric
Video
|
40
 minutes
Nearbound Podcast #155: How Integrated and Partner Marketing Strategies Achieve Win-Win Scenarios with Calen Holbrooks
Video
|
41
 minutes
Nearbound Podcast #154: The Nearbound Book Launch with Jared Fuller and Isaac Morehouse
Article
|
4
 minutes
Nearbound Daily #532: Partner Emails Done Right
Article
|
5
 minutes
Realize the Full Value of Your Software and Service Partner Marketplace with Integrated Ecosystem Clusters
Article
|
5
 minutes
Nearbound Daily #531: Let’s Get to Know Your Buyer
Article
|
3
 minutes
Nearbound Weekend 03/02: Standing on the Shoulders of Giants
Article
|
4
 minutes
Nearbound Daily #529: How Versus Who
Article
|
5
 minutes
Nearbound Daily #528: Stop trying to force the market
Article
|
5
 minutes
Nearbound Daily #527: The Nearbound Book is LIVE!
Article
|
6
 minutes
Nearbound Daily #526: You're the Guide to Your Customer's Promised Land
Article
|
3
 minutes
How Hatch boosted its close rate by 24% by incentivizing its partner’s account managers
Article
|
3
 minutes
Nearbound Weekend 02/24: When Reality Strikes
Article
|
4
 minutes
Nearbound Daily #525: What is my strategy?
Video
|
24
 minutes
Nearbound Podcast #153: The Evolution of Business in the Decade of Ecosystems with Jay McBain
Video
|
33
 minutes
Howdy Partners #66: Pipeline Paradigms: Unveiling Event Marketing Mastery - Justin Zimmerman
Video
|
3
 minutes
Good, Great, & Goals: Redesigning Ecosystem-Led Companies for Today and Tomorrow
Video
|
6
 minutes
How Do Partnerships Impact Higher Win Rates
Video
|
47
 minutes
Friends with Benefits #32: Building a Partnership Program from Scratch with Rasheité Calhoun
Article
|
2
 minutes
Nearbound Daily #524: The Psychology of Partnering
Article
|
5
 minutes
Nearbound Daily #523: How to Layer Partners Into Co-Marketing
Article
|
7
 minutes
How Services Partners Make Ecosystem Clusters Super Sticky
Video
|
42
 minutes
Nearbound Podcast #151: Sales Shift - Navigating the Evolving Playbook with Mark Bedard
Article
|
3
 minutes
How Gong x Chili Piper’s pipeline-acceleration partnership fuels their customers’ sales — and their own
Article
|
3
 minutes
How Gong Wins by Surrounding Customers with Partners
Article
|
5
 minutes
The Nearbound Book is live!
Article
|
4
 minutes
Nearbound Daily #518: How Jared Fuller Won a Sumo Alliance with HubSpot
Article
|
6
 minutes
How to Engage Your Partners: The Critical Step Between Recruiting & Revenue
Article
|
4
 minutes
Nearbound Daily #517: Use This Framework to Disqualify Partners
Article
|
4
 minutes
Nearbound Daily #516: How Dan O'Leary and the Box Team Use Nearbound Daily
Article
|
3
 minutes
Nearbound Weekend 02/10: Relationships and Revenue
Article
|
1
 minutes
Speed up deals with this warm intro email template
Article
|
4
 minutes
Nearbound Daily #515: Help Your Sellers Tap Into Nearbound Revenue
Video
|
53
 minutes
Friends with Benefits #31: Mark Kilens on the Power of People-First Go-to-Market Strategies
Article
|
5
 minutes
Nearbound Daily #514: Step-By-Step Play for Running Multi-Partner Webinars
Article
|
3
 minutes
How To Win Budget For Partner Tech
Article
|
4
 minutes
How Amir Karmali Resurrected 40 Partners to Rebuild Marketcircle’s Partnerships Program
Video
|
29
 minutes
Howdy Partners #65: Founder-Led Partnering: Using Video, for Video Partnerships - Bethany Stachenfeld
Article
|
2
 minutes
Nearbound Daily #513: How Agencies Want You To Partner With Them
Article
|
3
 minutes
Nearbound Daily #512: 3 Nearbound Plays for Personalized Gifting
Article
|
3
 minutes
A sneak peek at the state of the partner ecosystem in 2023
Video
|
44
 minutes
Nearbound Podcast #150: Navigating the Post-SaaS Landscape - Insights with Nate Roybal
Article
|
2
 minutes
Solving the biggest challenge: Starting with the right partners
Article
|
3
 minutes
Nearbound Daily #511: How Negar Nikaeein Manages Partnership Chaos
Video
|
50
 minutes
Nearbound Podcast #148: Unpacking the Challenges and Strategies of Partner Programs: Insights from Industry Experts
Video
|
0
 minutes
Blake Williams: How to Start Co-Selling Faster: Minimum Viable Partnerships (MVP) | Supernode 2023
Article
|
3
 minutes
Nearbound Weekend 02/03: A Partner Person's Most Detrimental BlindSpot
Article
|
3
 minutes
Nearbound Daily #510: Matt Dornfeld's Step-by-Step Guide for Building Partnership Executive Summaries
Video
|
45
 minutes
Friends with Benefits #30: Passionate about Partnership Enablement
Article
|
3
 minutes
Nearbound Daily #509: Jessie Shipman's Partner Enablement Advice
Article
|
3
 minutes
Nearbound Daily #508: The Simplest Success Equation + A New Partnerships Job Oppty
Article
|
3
 minutes
Nearbound Daily #507: Unlocking Intelligence With Partners & AI
Article
|
1
 minutes
Integrations as a Growth Lever
Article
|
3
 minutes
Nearbound Daily #506: Good Partner Managers Don't Do These Things
Article
|
4
 minutes
Nearbound Daily #505: Use this Checklist When You Roll Out Partnerships to Your Sales Teams
Video
|
59
 minutes
Friends with Benefits #29: Jay Baer on the Importance of Creativity and Innovation in B2B Marketing
Article
|
4
 minutes
Nearbound Daily #504: Use the Value Chain To Determine Your IPP
Article
|
4
 minutes
Giving-to-Give vs Waiting-to-Get: the DNA of Partner Ecosystems and the Future of Business
Article
|
3
 minutes
Nearbound Daily #503: How to Earn a Partnerships Mentor
Article
|
1
 minutes
The partner recruitment deck you can use today
Article
|
3
 minutes
Nearbound Daily #502: 6 Questions That'll Make Stakeholder Alignment Easier
Article
|
3
 minutes
Nearbound Daily #501: Steal this Marketo Play: Simplify, Focus, Repeat
Article
|
4
 minutes
Nearbound Weekend 01/20: How to Apply "Atomic Habits" to Your Partner Strategy
Video
|
43
 minutes
Crossbeam Product Drop: How to turn your ecosystem data into dollars
Article
|
3
 minutes
Nearbound Daily #500: How to Avoid Legal Hold-ups With Partner Contracts
Article
|
4
 minutes
Nearbound Daily #499: Takeover with Nelson Wang from Partner Principles
Article
|
2
 minutes
Nearbound Daily #498: Simon Bouchez's Open Letter to Partnerships from Sales
Article
|
3
 minutes
How Sendoso Empowers its Sales Team to Close Deals 28 Days Faster
Article
|
4
 minutes
Nearbound Daily #497: Use These Questions To Uncover Nearbound Marketing Opportunities
Article
|
3
 minutes
Nearbound Daily #496: Avoid 2 Common Buy-In Pitfalls
Article
|
9
 minutes
An open letter to partnerships, from sales
Article
|
4
 minutes
How a sales leader and a head of partnerships get buy-in and drive results across Netskope’s revenue org
Article
|
5
 minutes
An Outside-In GoToMarket = GoToEco
Article
|
4
 minutes
Nearbound Daily #495: How To Take Ecosystem Partners Out of A Channel Hole
Video
|
31
 minutes
Howdy Partners #64 - Unlocking Success in Channel Partnerships - Rob Sale
Video
|
59
 minutes
Friends with Benefits #28 - Creating the Life You Want: Morgan J. Ingram's Guide to Breaking Through the Noise
Article
|
4
 minutes
Nearbound Daily #494: How to Bridge the Gap With Your Sellers
Article
|
5
 minutes
Nearbound Daily #493: Step-By-Step Guide to Winning Budget for Partner Tech
Video
|
5
 minutes
Barbara Treviño: Empower Your Go-To-Market Teams With Partner Data | Supernode 2022
Article
|
2
 minutes
Nearbound Weekend 01/06: 3 Trends I'm Watching in 2024
Article
|
3
 minutes
Nearbound Daily #488: Your 2024 Guide to Nearbound Marketing
Video
|
50
 minutes
Nearbound Podcast #146 - From the Vault: Navigating the Partner Ecosystem - Norma Watenpaugh
Article
|
3
 minutes
Nearbound Daily #487: Complete Guide to Nearbound Product in 2024
Article
|
5
 minutes
Nearbound Daily #486: Nearbound GTM — Everything You Need To Know For 2024
Ecosystem Operations and Alignment
How to Use Partner Data In Your Sales and Marketing Dashboards (Part 2 of 2)
by
Bob Moore
SHARE THIS

With a partner ecosystem platform (and some SQL, dbt, and BI tools) you can use partner data to enable other parts of the business.

by
Bob Moore
SHARE THIS

In this article

Join the movement

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

By Bob Moore

May 13, 2021

Earlier this month, I wrote about the importance of getting data from your partner ecosystem (namely account mapping data) into your company’s data warehouse. We’ve seen this subject resonate with partnership leaders and data professionals alike, so I wanted to expand on the topic and share more ways you can put that data into action — including the code required to do it. 

In this post, we’ll explore: 

  • The data schemas you can expect coming out of Crossbeam APIs and our ETL partners
  • How best to join that data against your existing CRM data and other data sources in your warehouse
  • Sample SQL code for querying the data to create different charts and analyses
  • Sample charts and dashboards from numerous BI platforms to show what’s possible once this work is done

The end result is that we actually get to see why we’re doing all this data work in the first place. We’ll leave you with a set of dashboards and charts that can inspire your data team and partner organization to measure partner impact and uncover more revenue from your ecosystem. 

The Crossbeam Data Tables

This section contains a summary of the most commonly used tables and fields from the Crossbeam REST API. Our actual API endpoints often provide even more information, and there are also several tables not represented here. For the most current and comprehensive data about our APIs, you can always rely on our Crossbeam Developer Documentation

We also maintain partnerships with leading ETL providers like Fivetran, Matillion, and Stitch Data, each of whom can save you the trouble of writing code and instead pipe Crossbeam data into your data warehouse directly. The tables and columns you receive from these tools may vary slightly from what you see here, but the structures shown below will be a very close match. 

 

partners

The “partners” table contains a list of each of your company’s partners within Crossbeam. There is one record for each active user at each partner, so you will find multiple records per partner in this table based on how many users they have. 

Field

Datatype

Description

id

INTEGER

Crossbeam-assigned unique ID number used to reference partners in other tables

uuid

STRING

A larger, universally unique ID. Rarely used.

name

STRING

Partner company name

url

STRING

Partner company primary URL

domain

STRING

Partner company primary URL (cleansed version)

clearbit_domain

STRING

Domain used to source logo via Clearbit API (where applicable)

logo_url

STRING

Hard-coded logo URL (where applicable)

 

users

The “users” table contains one record for each user at each of your partners. You need to know the users at partner companies in order to initiate Threads and send cross-company communication. 

Note that some ETL tools will embed the users records as sub-records within the partners tables. If you can’t find this table, look for extra fields in the “partners” table related to users. 

Field

Datatype

Description

id

INTEGER

Crossbeam-assigned unique ID number

organization_id

INTEGER

The ID of the partner this user belongs to (foreign key reference to partners.id)

first_name

STRING

User first name

last_name

STRING

User last name

gravatar_url

STRING

URL of user’s Gravatar profile image

 

populations

The “populations” table contains a list of your company’s populations. Depending on your ETL provider and how this data is extracted, this table may also contain detailed sub-records about the actual population definition (the data filtering applied to create the population). Past versions and version history may also be available.

Field

Datatype

Description

id

INTEGER

Crossbeam-assigned unique ID number for this population

base_schema

STRING

The data source name that this population’s data is based on (e.g. “salesforce”)

base_table

STRING

The table within that data source that this population’s data is based on

name

STRING

The population name

population_type

STRING

The type of data in the population (e.g. “companies” or “people”)

source_id

INTEGER

The ID of the data source used to pull this data

 

partner_populations

This table is similar to the “populations” table, except that it contains all of your partners’ populations instead of your own. 

Field

Datatype

Description

id

INTEGER

Crossbeam-assigned unique ID number for this population

name

STRING

The population name

organization_id

INTEGER

The ID number of the partner that owns this population (foreign key reference to partners.id)

population_type

STRING

The type of data in the population (e.g. “companies” or “people”)

 

accounts

This table is a listing of the various “accounts” (i.e. companies) that exist within your Crossbeam data. Typically this is directly pulled from a CRM system, so it should exactly mirror the fields from your CRM. The columns included can expand based on what data you have imported into Crossbeam. Only a small subset relevant for our analyses is included here. 

Field

Datatype

Description

account_created_at

STRING

Timestamp of original account creation date

account_name

STRING

Company name as stored in your CRM

account_type

STRING

Usually indicates a relationship type (“Free Trial”, “Customer”, “Churned”, etc.)

account_website

STRING

Company website as stored in your CRM

id

STRING

A Crossbeam-generated unique ID for this record

industry

STRING

One of what might be many firmographic or other property fields about this account 

master_id

STRING

The ID of this field in its native data source, typically your CRM (i.e. Salesforce ID)

owner_account_executive_email

STRING

The email of the Account Executive who owns this account

owner_account_executive_name

STRING

The name of the Account Executive who owns this account

owner_account_executive_phone

STRING

The phone number of the Account Executive who owns this account

 

partner_accounts

This table is structurally identical to the “accounts” table above, except that it includes partner account information instead of your account information. The only additional field is a “partner_population_id” field that contains the ID or IDs of partner populations where this record appears. 

Flattening the Data with dbt

Rather than write countless JOIN statements to link up all the data tables above every time we want to conduct an analysis, we can use a popular open source tool called dbt (short for “data build tool”) to convert these tables into one flat, singular view containing all the data. We plan to publish universal DBT models via our ETL partners in the future, so check back for code samples and other resources to make this easier.

The output of this model is a very wide, very tall view called “crossbeam_overlaps”. This new view contains one entry for every “overlap” between your data and the data of a partner. It also includes metadata about your data and your partners’ data, such as the account executive who owns the account on each side. 

Combining Crossbeam Data with Existing Data

At this point, we have our large, flexible “crossbeam_overlaps” view that contains all of the data in the center of the Venn diagram between you and your partners. There are quite a few analyses you could do with this data, but the real value comes from combining it with other data sources. 

Doing this requires JOIN keys that you can use to link your data back to other data sets. Two examples of this practice are shown below.

Joining with Salesforce

If you want to link your “crossbeam_overlaps” data with your Salesforce data, the “master_id” field in your crossbeam_overlaps is the key. This field holds the unique Salesforce account_id value associated with that record, allowing you to combine those fields with a simple join. 

SELECT * FROM
crossbeam_overlaps
JOIN
salesforce.accounts
ON
crossbeam_overlaps.master_id = salesforce.accounts.id

Appending to Marketing Events

Your data warehouse may contain a marketing events table that tracks things like ad clicks, email opens, website visits, content downloads and more. These tables are very useful for attribution models and identifying the highest-ROI channels for your company. They can be as simple as three columns: account_id, event_type, and timestamp.

Adding partner overlap data into this event list can be quite compelling here because these are also a form of “touch” that may be influential to a deal, particularly in a multitouch attribution model where multiple factors are being considered. You can append this data to your marketing events view with a UNION statement

CREATE VIEW all_events
AS
SELECT account_id, event_type, timestamp
FROM marketing_events
UNION
SELECT master_id AS account_id, “partner_overlap” AS event_type, created_at AS timestamp
FROM crossbeam_overlaps

It should also be noted that you can use dbt to do some of this work in a scalable, codified way. Joining your existing data tables about sales activities, marketing attribution, and user events can unlock countless new analyses.

Actionable Partner Data Dashboards

At this point, we’ve been able to do the following:

  • Push all of our Crossbeam data into our data warehouse using an ETL tool
  • Simplify the data structure of our Crossbeam overlaps into a single table that is rich with data attributes
  • Join that data table with numerous other data sources, including our CRM data and our Marketing events data, creating new views

Now the real fun begins! Let’s write some queries against our new, rich data views that can tell us new things about our business and how to make the most of our partner relationships.

The screenshots below are for a dashboard generated with Redash, but the same dashboards could just as easily be built in leading tools like Looker and Tableau


Ecosystem Sales Impact Dashboard

This dashboard illustrates the impact that your partner ecosystem has on the deals happening in your business. 

First, it examines the impact on your recent deals. The dashboard compares deal size, time to close, and close rate for deals where the prospect was a pre-existing customer of one of your partners and those where the prospect was not. As it turns out, deals with “in ecosystem” prospects have a higher close rate, close faster, and are larger in size. 

The SQL for charts like these is quite simple with the benefit of our crossbeam_overlaps table. We simply join it to our salesforce accounts table using master_id as the JOIN key. It looks something like this for the ACV chart (this syntax is Amazon Redshift compatible):

SELECT 
CASE WHEN ppf.customer_overlaps > 0 
THEN ’Partner Customer’ 
ELSE ’Standard Deal’ 
END as opp_type, 
AVG(o.amount) as average_deal_size
FROM salesforce.opportunity o
LEFT JOIN salesforce.account a ON a.id = o.accountid
LEFT JOIN 
(select master_id, sum(customer) as customer_overlaps 
FROM crossbeam_overlaps by 1) ppf 
ON a.id = ppf.master_id
WHERE o.amount > 0
AND o.stagename = ’Closed Won’
AND ppf.population_type = ‘Customers’
GROUP BY 1

Our Sales Impact Dashboard then digs into your highest-performing reps and partners based on your current pipeline. The first chart shows the percentage of each sales rep’s current pipeline that comes from companies who are already customers of a partner. Then, it shows a list of your partners ranked by the total dollars of your pipeline made up of their existing customers. 

Finally, the dashboard provides a table of all your current open opportunities where a partner relationship exists, allowing you to sort the data by sales rep, partner, deal size, and more. 


Sales Rep Dashboard

This dashboard is designed for use by any individual sales rep, and can be filtered to reflect the sales pipeline data for any given rep. 

First, it looks at advancing deals where an opportunity is already open. It shows the total dollar value of that rep’s open opportunities (along with the percent of their pipeline that represents) where the prospect is already a partner’s customer. It then lists out all the deals that make up that number along with the information about which partners overlap and who owns the relationships on the partner side. 

Next, it looks at helping source new opportunities. It analyzes all of the rep’s current owned accounts where there is not yet an opportunity, and looks for cases where the account is already the customer of a partner. For those accounts, it provides information about the partner, the nature of the partner’s relationship, and the person at the partner company who owns that account. This can be an excellent starting point for reps who want to source new leads via partners but don’t know where to start. 


Product/CS Dashboard

Partner data can also be used inside the Product and Customer Success organizations to determine how to use partners to prioritize features, case studies, and expansion opportunities.

This dashboard shows you the customer overlap count with each partner. It also highlights which partners are working with your largest (“tier score”) and most engaged (“PQL score”) clients. 

Lastly, it shows a list of existing customers who are also using partner products but are not yet using the integration between your products — an excellent engagement opportunity and a way to boost feature usage. 


Multitouch Attribution with Partner Data

This analysis shows what it might look like when you start infusing partner data into your marketing attribution model. Here, we can see “partner overlaps” included in a multitouch model alongside things like content touches and ad impressions. This helps complete the story of how partner relationships play a role in the journey from stranger to lead to opportunity. 


Rep Matchmaking Analysis

Some partner teams like to get as much mileage out of each partner connection as possible. With this view, you can study every permutation between one of your Account Executives and the Account Executive at each of your partners. By sorting for the highest number of shared accounts (or dollar values of opportunities on those accounts), you can figure out the highest-value collaborator for each of your reps at any given time. 

What’s Next

We’ll continue to invest in making Crossbeam data rich, extensible, and portable so that analyses like these can be a part of every organization. If you’re not on Crossbeam, you can sign up here to get started for free today. 

You’ll also be interested in these

Article
|
12
 minutes
Article
|
12
 minutes
Quick Tips for Crossbeam Account Management and Data Hygiene | Connector Summit 2022
Article
|
12
 minutes