Startups

For successful AI projects, celebrate your graveyard and be prepared to fail fast

Comment

Image of an origami crane and several crumpled pieces of paper to represent success from failure.
Image Credits: Wachiwit (opens in a new window) / Getty Images

AI teams invest a lot of rigor in defining new project guidelines. But the same is not true for killing existing projects. In the absence of clear guidelines, teams let infeasible projects drag on for months.

They put up a dog and pony show during project review meetings for fear of becoming the messengers of bad news. By streamlining the process to fail fast on infeasible projects, teams can significantly increase their overall success with AI initiatives.

AI projects are different from traditional software projects. They have a lot more unknowns: availability of right datasets, model training to meet required accuracy threshold, fairness and robustness of recommendations in production, and many more.

In order to fail fast, AI initiatives should be managed as a conversion funnel analogous to marketing and sales funnels. Projects start at the top of the five-stage funnel and can drop off at any stage, either to be temporarily put on ice or permanently suspended and added to the AI graveyard. Each stage of the AI funnel defines a clear set of unknowns to be validated with a list of time-bound success criteria.

The AI project funnel has five stages:

Image Credits: Sandeep Uttamchandani

1. Problem definition: “If we build it, will they come?”

This is the top of the funnel. AI projects require significant investments not just during initial development but ongoing monitoring and refinement. This makes it important to verify that the problem being solved is truly worth solving with respect to potential business value compared to the effort to build. Even if the problem is worth solving, AI may not be required. There might be easier human-encoded heuristics to solve the problem.

Developing the AI solution is only half the battle. The other half is how the solution will actually be used and integrated. For instance, in developing an AI solution for predicting customer churn, there needs to be a clear understanding of incorporating attrition predictions in the customer support team workflow. A perfectly powerful AI project will fail to deliver business value without this level of integration clarity.

To successfully exit this stage, the following statements need to be true:

  • The AI project will produce tangible business value if delivered successfully.
  • There are no cheaper alternatives that can address the problem with the required accuracy threshold.
  • There is a clear path to incorporate the AI recommendations within the existing flow to make an impact.

In my experience, the early stages of the project have a higher ratio of aspiration compared to ground realities. Killing an ill-formed project can avoid teams from building “solutions in search of problems.”

2. Data availability : “We have the data to build it.”

At this stage of the funnel, we have verified the problem is worth solving. We now need to confirm the data availability to build the perception, learning and reasoning capabilities required in the AI project. Data needs vary based on the type of AI project  —  the requirements for a project building classification intelligence will be different from one providing recommendations or ranking.

Data availability broadly translates to having the right quality, quantity and features. Right quality refers to the fact that the data samples are an accurate reflection of the phenomenon we are trying to model  and meet properties such as independent and identically distributed. Common quality checks involve uncovering data collection errors, inconsistent semantics and errors in labeled samples.

The right quantity refers to the amount of data that needs to be available. A common misconception is that a significant amount of data is required for training machine learning models. This is not always true. Using pre-built transfer learning models, it is possible to get started with very little data. Also, more data does not always mean useful data. For instance, historic data spanning 10 years may not be a true reflection of current customer behavior. Finally, the right features need to be available to build the model. This is typically iterative and involves ML model design.

To successfully exit this stage, the following statements need to be true:

  • The datasets for the required features are available.
  • The corresponding datasets meet the quality requirements.
  • There are enough historic data samples available in those datasets.

In my experience, projects often are put on ice at this stage. The required features are missing and may take several months for the application teams to gather the datasets.

3. Model training :  “The project meets the accuracy thresholds.”

At this stage, we have confirmed the data is available and have iterated on ML model features. Now, it’s time to verify whether a model can actually be built to satisfy the required accuracy threshold.

Training is an iterative process where different combinations of ML algorithms, model configuration, datasets and input features are tried iteratively with the goal to meet the accuracy threshold. Training is resource-intensive, and given large datasets, the infrastructure capacity can become the limiting factor. This stage verifies that it is feasible to build the model using the existing infrastructure resources or within a feasible cloud budget.

5 machine learning essentials nontechnical leaders need to understand

During the training phase, there is the potential for “false alarms,” when the team has achieved significantly high accuracy numbers that are too good to be true. Before getting excited, it is important to double-check for the training and validation datasets to have duplicate samples. Also, there have been times when the initial tests might be promising but may not generalize over the entire dataset. Randomization of the dataset before training helps to avoid the roller coaster of accuracy variations.

To successfully exit this stage, the AI project is able to meet the required accuracy threshold after training.

4. Results fairness : “Generated results are  not garbage in, garbage out.”

We have confirmed the project can meet accuracy thresholds. Now, it’s time to verify that the results generated are actually fair with respect to bias, explainability, and compliance to privacy and data rights regulations.

Ensuring the fairness of AI recommendations is a topic of significant research. Most datasets are inherently biased and may not capture all the available attributes. Understanding the original purpose and assumptions of the dataset are important. Another common form of bias is underrepresentation —  for instance, a loan underwriting application not trained for a certain category of users or income range scenarios. It is important to evaluate model performance not just for overall accuracy but also across various data slices.

It is not just sufficient for the AI solution to be accurate — it needs to be explainable, i.e., how the algorithm arrived at its conclusions. Several regulated industries using automated decision-making tools are required to provide meaningful information about the generated results to their customers. Explainability can be supported in different forms: result visualization, feature correlations, what-if analysis, model cause-effect interpretability, etc.

To successfully exit this stage, the following statements need to be true:

  • Results have the appropriate checks and bounds for bias and are explainable.
  • The data used by the AI project meets user privacy and compliance regulations such as GDPR and CCPA.

5. Operational fitness: “Is it ready for production ?”

The last stage is to confirm operational fitness. Not all projects require the same operational rigor. I divide projects in a 2×2 matrix based on whether the training and inference are online versus offline. Offline training and inference are the easiest, while online training requires robust data pipelines and monitoring.

There are three core dimensions of operational fitness: model complexity, data pipelines robustness and retraining governance. Complex models are difficult to maintain and debug in production. The key is striking the right balance between simplicity and accuracy: A simple model may be less accurate, while a complex model may be more accurate but may not generalize to new data samples due to overfitting. Similarly, data pipelines are complex to manage given changing data schemas, quality issues and nonstandard business metrics. Finally, retraining needs to take into account changing accuracy due to shifts in data distribution as well as the semantics of features, aka concept drift.

To successfully exit this stage, the following statements need to be true:

  • Models have been optimized with the right balance between complexity and accuracy.
  • Data pipelines are robust with the required level of monitoring.
  • The right level of data and concept drift monitoring is implemented for model retraining.

To succeed in AI initiatives, teams need to fail fast. The five-stage conversion funnel provides a vocabulary for AI teams to communicate the status of projects to business teams replacing their black-box perception of these projects with a list of known unknowns. The funnel also helps identify common dropoff stages across projects that are potential areas of improvement. In a fail-fast culture, the AI graveyard is celebrated for the lessons learned that can be applied to future projects.

How we dodged risks and raised millions for our open-source machine learning startup

More TechCrunch

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. Over the past eight years,…

Fisker collapsed under the weight of its founder’s promises

What is AI? We’ve put together this non-technical guide to give anyone a fighting chance to understand how and why today’s AI works.

WTF is AI?

President Joe Biden has vetoed H.J.Res. 109, a congressional resolution that would have overturned the Securities and Exchange Commission’s current approach to banks and crypto. Specifically, the resolution targeted the…

President Biden vetoes crypto custody bill

Featured Article

Industries may be ready for humanoid robots, but are the robots ready for them?

How large a role humanoids will play in that ecosystem is, perhaps, the biggest question on everyone’s mind at the moment.

4 hours ago
Industries may be ready for humanoid robots, but are the robots ready for them?

VCs are clamoring to invest in hot AI companies, willing to pay exorbitant share prices for coveted spots on their cap tables. Even so, most aren’t able to get into…

VCs are selling shares of hot AI companies like Anthropic and xAI to small investors in a wild SPV market

The fashion industry has a huge problem: Despite many returned items being unworn or undamaged, a lot, if not the majority, end up in the trash. An estimated 9.5 billion…

Deal Dive: How (Re)vive grew 10x last year by helping retailers recycle and sell returned items

Tumblr officially shut down “Tips,” an opt-in feature where creators could receive one-time payments from their followers.  As of today, the tipping icon has automatically disappeared from all posts and…

You can no longer use Tumblr’s tipping feature 

Generative AI improvements are increasingly being made through data curation and collection — not architectural — improvements. Big Tech has an advantage.

AI training data has a price tag that only Big Tech can afford

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: Can we (and could we ever) trust OpenAI?

Jasper Health, a cancer care platform startup, laid off a substantial part of its workforce, TechCrunch has learned.

General Catalyst-backed Jasper Health lays off staff

Featured Article

Live Nation confirms Ticketmaster was hacked, says personal information stolen in data breach

Live Nation says its Ticketmaster subsidiary was hacked. A hacker claims to be selling 560 million customer records.

24 hours ago
Live Nation confirms Ticketmaster was hacked, says personal information stolen in data breach

Featured Article

Inside EV startup Fisker’s collapse: how the company crumbled under its founders’ whims

An autonomous pod. A solid-state battery-powered sports car. An electric pickup truck. A convertible grand tourer EV with up to 600 miles of range. A “fully connected mobility device” for young urban innovators to be built by Foxconn and priced under $30,000. The next Popemobile. Over the past eight years, famed vehicle designer Henrik Fisker…

24 hours ago
Inside EV startup Fisker’s collapse: how the company crumbled under its founders’ whims

Late Friday afternoon, a time window companies usually reserve for unflattering disclosures, AI startup Hugging Face said that its security team earlier this week detected “unauthorized access” to Spaces, Hugging…

Hugging Face says it detected ‘unauthorized access’ to its AI model hosting platform

Featured Article

Hacked, leaked, exposed: Why you should never use stalkerware apps

Using stalkerware is creepy, unethical, potentially illegal, and puts your data and that of your loved ones in danger.

1 day ago
Hacked, leaked, exposed: Why you should never use stalkerware apps

The design brief was simple: each grind and dry cycle had to be completed before breakfast. Here’s how Mill made it happen.

Mill’s redesigned food waste bin really is faster and quieter than before

Google is embarrassed about its AI Overviews, too. After a deluge of dunks and memes over the past week, which cracked on the poor quality and outright misinformation that arose…

Google admits its AI Overviews need work, but we’re all helping it beta test

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. In…

Startups Weekly: Musk raises $6B for AI and the fintech dominoes are falling

The product, which ZeroMark calls a “fire control system,” has two components: a small computer that has sensors, like lidar and electro-optical, and a motorized buttstock.

a16z-backed ZeroMark wants to give soldiers guns that don’t miss against drones

The RAW Dating App aims to shake up the dating scheme by shedding the fake, TikTok-ified, heavily filtered photos and replacing them with a more genuine, unvarnished experience. The app…

Pitch Deck Teardown: RAW Dating App’s $3M angel deck

Yes, we’re calling it “ThreadsDeck” now. At least that’s the tag many are using to describe the new user interface for Instagram’s X competitor, Threads, which resembles the column-based format…

‘ThreadsDeck’ arrived just in time for the Trump verdict

Japanese crypto exchange DMM Bitcoin confirmed on Friday that it had been the victim of a hack resulting in the theft of 4,502.9 bitcoin, or about $305 million.  According to…

Hackers steal $305M from DMM Bitcoin crypto exchange

This is not a drill! Today marks the final day to secure your early-bird tickets for TechCrunch Disrupt 2024 at a significantly reduced rate. At midnight tonight, May 31, ticket…

Disrupt 2024 early-bird prices end at midnight

Instagram is testing a way for creators to experiment with reels without committing to having them displayed on their profiles, giving the social network a possible edge over TikTok and…

Instagram tests ‘trial reels’ that don’t display to a creator’s followers

U.S. federal regulators have requested more information from Zoox, Amazon’s self-driving unit, as part of an investigation into rear-end crash risks posed by unexpected braking. The National Highway Traffic Safety…

Feds tell Zoox to send more info about autonomous vehicles suddenly braking

You thought the hottest rap battle of the summer was between Kendrick Lamar and Drake. You were wrong. It’s between Canva and an enterprise CIO. At its Canva Create event…

Canva’s rap battle is part of a long legacy of Silicon Valley cringe

Voice cloning startup ElevenLabs introduced a new tool for users to generate sound effects through prompts today after announcing the project back in February.

ElevenLabs debuts AI-powered tool to generate sound effects

We caught up with Antler founder and CEO Magnus Grimeland about the startup scene in Asia, the current tech startup trends in the region and investment approaches during the rise…

VC firm Antler’s CEO says Asia presents ‘biggest opportunity’ in the world for growth

Temu is to face Europe’s strictest rules after being designated as a “very large online platform” under the Digital Services Act (DSA).

Chinese e-commerce marketplace Temu faces stricter EU rules as a ‘very large online platform’

Meta has been banned from launching features on Facebook and Instagram that would have collected data on voters in Spain using the social networks ahead of next month’s European Elections.…

Spain bans Meta from launching election features on Facebook, Instagram over privacy fears

Stripe, the world’s most valuable fintech startup, said on Friday that it will temporarily move to an invite-only model for new account sign-ups in India, calling the move “a tough…

Stripe curbs its India ambitions over regulatory situation