AI

Why it’s so hard to market enterprise AI/ML products and what to do about it

Comment

Maze brain graphic on computer screen; AI/ML marketing difficulty
Image Credits: SEAN GLADWELL (opens in a new window) / Getty Images

Mike Tong

Contributor

Mike Tong has over a decade of experience leading GTM strategy and operations for tech and data companies as part of McKinsey TMT, AtSpoke, Splunk and the VC firm B Capital.

More posts from Mike Tong

In 2019, I led the sales team and growth strategy for a venture-backed AI company called atSpoke. The company, which Okta ultimately acquired, used AI to augment traditional IT services management and internal company communication.

At a very early stage, our conversion rate was high. As long as our sales team could talk to a prospect — and that prospect spent time with the product — they would more often than not become a customer. The problem was getting enough strong prospects to connect with the sales team.

The traditional SaaS playbook for demand generation didn’t work. Buying ads and building communities focused on “AI” were both expensive and drew in enthusiasts who lacked buying power. Buying search terms for our specific value propositions — e.g., “auto-routing requests” — didn’t work because the concepts were new and no one was searching for those terms. Finally, terms like “workflows” and “ticketing,” which were more common, brought us into direct competition with whales like ServiceNow and Zendesk.

In my role advising growth-stage enterprise tech companies as part of B Capital Group’s platform team, I observe similar dynamics across nearly every AI, ML and advanced predictive analytics companies I speak with. Healthy pipeline generation is the bugbear of this industry, yet there is very little content on how to address it.

There are four key challenges that stand in the way of demand generation for AI and ML companies and tactics for addressing those challenges. While there is no silver bullet, no secret AI buyer conference in Santa Barbara or ML enthusiast Reddit thread, these tips should help you structure your approach to marketing.

Challenge 1: AI and ML categories are still being defined

If you’re reading this, you likely know the story of Salesforce and “SaaS” as a category, but the brilliance bears repeating. When the company started in 1999, software as a service didn’t exist. In the early days, no one was thinking, “I need to find a SaaS CRM solution.” The business press called the company an “online software service” or a “web service.”

Salesforce’s early marketing focused on the problems of traditional sales software. The company memorably staged an “end of software” protest in 2000. (Salesforce still uses that messaging.) CEO Marc Benioff also made a point of repeating the term “software as a service” until it caught on. Salesforce created the category they dominated.

AI and ML companies face a similar dynamic. While terms like machine learning are not new, specific solutions areas like “decision intelligence” don’t fall within a clear category. In fact, even grouping “AI/ML” companies is awkward, as there is so much crossover with business intelligence (BI), data, predictive analytics and automation. Companies in even newer categories can map to terms like continuous integration or container management.

Tactically, this means AI and ML solutions can’t rely on prospects typing specific solutions like “label quality” into, for example, Google.

To succeed, these companies need to stay in “category creation” mode. Practically, staying in this mode means being hyperfocused on the problem statement versus the solution in copy and assets.

For Hypersonix, a B Cap portfolio company, that might look like posing the question, “How much money are you losing by having a traditional analytics team determine your promotional strategy?” Buyers may not know the specific solution exists, but they certainly feel the pain.

Another tactic is language diligence. Be deliberate in the new terms you create and repeat those terms across your material. Examples of companies doing this well include Segment, with its self-created category of “Customer Development Platform;” Clari, with “Revenue Intelligence;” and — of course — Salesforce, with “SaaS.”

Finally, maintain a link to categories that are well known in early messaging, even if the category is not the core of your value proposition or why people will eventually sign a contract. For atSpoke, that was “filing tickets from Slack,” even though later sales pitches focused on automated answers and workflows.

Challenge 2: It’s a product, but it’s really a pipeline

AI or ML solutions are rarely — if ever — standalone. They are part of a pipeline of data tooling that moves from source to insight or action. For example, a company that intelligently forecasts revenue might actually provide data visualization, model training and application, but require alternative tooling for data preparation and transformation.

Compounding the issue is that no two data pipelines are exactly the same. Datasources can vary from Hadoop and Snowflake to marketing automation software; architectures can change from batch and streaming to Lambda; targets or outputs can be bespoke dashboards or common BI tools. This complexity and need for customization drives the high “services” revenue for AI and ML companies (but that is a separate topic).

Allen Chen, who leads product and engineering for BCG’s data science platform, summarizes these issues well:

In the software development lifecycle, the lines are extremely clear — developers move from Github to CircleCI, for example; in AI/ML those lines are not as defined. So then you end up having a conversation about the entire lifecycle around your tool — even if your product is only 10% of the full solution.

This is a problem for marketing. It is very hard to have a simple value proposition that resonates with customers or adheres to the tech marketing mantra, KISS (keep it simple, stupid). Ads risk being a mouthful of “ifs,” “thens” and clarifications; this is never a recipe for success, even with a technical product or target.

One way to address this is to avoid the complexity altogether. C3.ai, a publicly traded AI company, has billboards over the San Francisco area that read, “This Is Enterprise AI.” I like to think this is a nod to the complexity of the company’s offering. By keeping it so radically simple, C3.ai can increase brand recognition and drive interested people to marketing websites or content that more accurately reflect the breadth and depth of the company’s solutions.

It is worth mentioning that C3.ai likely faces the same pipeline challenge as smaller AI startups. Per their 2021 annual report, the company spent $53 million on sales and marketing expenses and had 40 new customers.

Another approach is to take the pipeline out of the early GTM process to focus on the solution. For example, Google makes Tensorflow tutorials interactive — you can just open up a notebook and try the APIs. For other AI/ML companies, similar strategies work, like creating sandbox environments that allow data scientists to simply drop python code into a Jupyter Notebook.

Challenge 3: The space is both new and crowded

There are more than 9,000 machine learning startups and companies, per Crunchbase. Firstmark Capital’s Machine Learning, Artificial Intelligence and Data (MAD) landscape provides a glimpse into the Cambrian explosion of companies in the space. To illustrate, the landscape outlines 19 ML platforms, 14 data science notebooks and 13 AI synthetic media companies — and these are all at scale.

Further, open source libraries like Facebook’s PyTorch and Google’s Tensorflow can directly compete with a lot of solutions. So AI and ML companies face competition from free tools that are already part of developers’ tech stacks (and backed by real heavies).

To address that, you need to get specific — terms like AI and ML have practically zero weight with buyers anymore. Choosing a highly specific vertical and problem statement and tailoring your messaging around that industry is table stakes. At Splunk, we had hundreds of industry specific campaigns and articles around, for example, logs for outages.

Finally, while your messaging needs to be industry-specific, don’t try to go head-to-head with the open source options in early marketing material. As Chen explains, “You need to have a value proposition that is higher up the stack; don’t look to pry [data scientists’] tools out of their hands … you will not convince a data scientist that your thing is better than PyTorch.”

Challenge 4: Many stakeholders, many priorities

The final headwind is that AI and ML companies need to market to multiple, very different stakeholders all at once. Unlike, say, a human resources information system that is primarily purchased by an HR department, an analytics solution will have to satisfy a business owner, a data science team and developers without including function-specific roles (like head of pricing) or procurement.

All these sets of buyers are growing savvier. Business owners will demand to see a tight connection between product and value. About 85% of AI projects failed to deliver impact, according to two recent Gartner reports. Analysts and engineers will want to see fast implementation timelines and credible promises of smooth integration.

To meet these varied demands, take a multipronged approach. Target business buyers with meaningful value propositions based on the problem statement.  For more technical stakeholders like developers, offer free tooling and documentation. DataRobot, for example, not only divides its marketing website by solution and industry (quite common across B2B SaaS) but also by roles such as “Business Analysts” and “Software Engineers.”

Final thoughts

Marketing in this field will likely follow a course similar to more established categories like DevOps, IT services management and CRM. In these spaces there are clearer categories to anchor to but far more competition for eyeballs and checkbooks. Buyers tend to be more educated. Tactically, this calls for niche marketing messaging, investment in branding and focus on optimization.

While the current environment is complex, in many ways, it can be freeing for your marketing strategy. Your company can play a role in defining the space it will one day win.

Disclaimer: B Capital, where Mike is employed, holds a financial stake in DataRobot, Hypersonix, Clari and Labelbox. Mike personally holds stock in Splunk.

More TechCrunch

The families of victims of the shooting at Robb Elementary School in Uvalde, Texas are suing Activision and Meta, as well as gun manufacturer Daniel Defense. The families bringing the…

Families of Uvalde shooting victims sue Activision and Meta

Like most Silicon Valley VCs, what Garry Tan sees is opportunities for new, huge, lucrative businesses.

Y Combinator’s Garry Tan supports some AI regulation but warns against AI monopolies

Everything in society can feel geared toward optimization – whether that’s standardized testing or artificial intelligence algorithms. We’re taught to know what outcome you want to achieve, and find the…

How Maven’s AI-run ‘serendipity network’ can make social media interesting again

Miriam Vogel, profiled as part of TechCrunch’s Women in AI series, is the CEO of the nonprofit responsible AI advocacy organization EqualAI.

Women in AI: Miriam Vogel stresses the need for responsible AI

Google has been taking heat for some of the inaccurate, funny, and downright weird answers that it’s been providing via AI Overviews in search. AI Overviews are the AI-generated search…

What are Google’s AI Overviews good for?

When it comes to the world of venture-backed startups, some issues are universal, and some are very dependent on where the startups and its backers are located. It’s something we…

The ups and downs of investing in Europe, with VCs Saul Klein and Raluca Ragab

Welcome back to TechCrunch’s Week in Review — TechCrunch’s newsletter recapping the week’s biggest news. Want it in your inbox every Saturday? Sign up here. OpenAI announced this week that…

Scarlett Johansson brought receipts to the OpenAI controversy

Accurate weather forecasts are critical to industries like agriculture, and they’re also important to help prevent and mitigate harm from inclement weather events or natural disasters. But getting forecasts right…

Deal Dive: Can blockchain make weather forecasts better? WeatherXM thinks so

pcTattletale’s website was briefly defaced and contained links containing files from the spyware maker’s servers, before going offline.

Spyware app pcTattletale was hacked and its website defaced

Featured Article

Synapse, backed by a16z, has collapsed, and 10 million consumers could be hurt

Synapse’s bankruptcy shows just how treacherous things are for the often-interdependent fintech world when one key player hits trouble. 

1 day ago
Synapse, backed by a16z, has collapsed, and 10 million consumers could be hurt

Sarah Myers West, profiled as part of TechCrunch’s Women in AI series, is managing director at the AI Now institute.

Women in AI: Sarah Myers West says we should ask, ‘Why build AI at all?’

Keeping up with an industry as fast-moving as AI is a tall order. So until an AI can do it for you, here’s a handy roundup of recent stories in the world…

This Week in AI: OpenAI and publishers are partners of convenience

Evan, a high school sophomore from Houston, was stuck on a calculus problem. He pulled up Answer AI on his iPhone, snapped a photo of the problem from his Advanced…

AI tutors are quietly changing how kids in the US study, and the leading apps are from China

Welcome to Startups Weekly — Haje‘s weekly recap of everything you can’t miss from the world of startups. Sign up here to get it in your inbox every Friday. Well,…

Startups Weekly: Drama at Techstars. Drama in AI. Drama everywhere.

Last year’s investor dreams of a strong 2024 IPO pipeline have faded, if not fully disappeared, as we approach the halfway point of the year. 2024 delivered four venture-backed tech…

From Plaid to Figma, here are the startups that are likely — or definitely — not having IPOs this year

Federal safety regulators have discovered nine more incidents that raise questions about the safety of Waymo’s self-driving vehicles operating in Phoenix and San Francisco.  The National Highway Traffic Safety Administration…

Feds add nine more incidents to Waymo robotaxi investigation

Terra One’s pitch deck has a few wins, but also a few misses. Here’s how to fix that.

Pitch Deck Teardown: Terra One’s $7.5M Seed deck

Chinasa T. Okolo researches AI policy and governance in the Global South.

Women in AI: Chinasa T. Okolo researches AI’s impact on the Global South

TechCrunch Disrupt takes place on October 28–30 in San Francisco. While the event is a few months away, the deadline to secure your early-bird tickets and save up to $800…

Disrupt 2024 early-bird tickets fly away next Friday

Another week, and another round of crazy cash injections and valuations emerged from the AI realm. DeepL, an AI language translation startup, raised $300 million on a $2 billion valuation;…

Big tech companies are plowing money into AI startups, which could help them dodge antitrust concerns

If raised, this new fund, the firm’s third, would be its largest to date.

Harlem Capital is raising a $150 million fund

About half a million patients have been notified so far, but the number of affected individuals is likely far higher.

US pharma giant Cencora says Americans’ health information stolen in data breach

Attention, tech enthusiasts and startup supporters! The final countdown is here: Today is the last day to cast your vote for the TechCrunch Disrupt 2024 Audience Choice program. Voting closes…

Last day to vote for TC Disrupt 2024 Audience Choice program

Featured Article

Signal’s Meredith Whittaker on the Telegram security clash and the ‘edge lords’ at OpenAI 

Among other things, Whittaker is concerned about the concentration of power in the five main social media platforms.

2 days ago
Signal’s Meredith Whittaker on the Telegram security clash and the ‘edge lords’ at OpenAI 

Lucid Motors is laying off about 400 employees, or roughly 6% of its workforce, as part of a restructuring ahead of the launch of its first electric SUV later this…

Lucid Motors slashes 400 jobs ahead of crucial SUV launch

Google is investing nearly $350 million in Flipkart, becoming the latest high-profile name to back the Walmart-owned Indian e-commerce startup. The Android-maker will also provide Flipkart with cloud offerings as…

Google invests $350 million in Indian e-commerce giant Flipkart

A Jio Financial unit plans to purchase customer premises equipment and telecom gear worth $4.32 billion from Reliance Retail.

Jio Financial unit to buy $4.32B of telecom gear from Reliance Retail

Foursquare, the location-focused outfit that in 2020 merged with Factual, another location-focused outfit, is joining the parade of companies to make cuts to one of its biggest cost centers –…

Foursquare just laid off 105 employees

“Running with scissors is a cardio exercise that can increase your heart rate and require concentration and focus,” says Google’s new AI search feature. “Some say it can also improve…

Using memes, social media users have become red teams for half-baked AI features

The European Space Agency selected two companies on Wednesday to advance designs of a cargo spacecraft that could establish the continent’s first sovereign access to space.  The two awardees, major…

ESA prepares for the post-ISS era, selects The Exploration Company, Thales Alenia to develop cargo spacecraft