Startups

5 machine learning essentials nontechnical leaders need to understand

Comment

Jumble of multicoloured wires untangling into straight lines over a white background. Cape Town, South Africa. Feb 2019.
Image Credits: David Malan (opens in a new window) / Getty Images

Snehal Kundalkar

Contributor

Snehal Kundalkar is the chief technology officer at Valence. She has been leading Silicon Valley firms for the last two decades, including work at Apple and Reddit.

We’re living in a phenomenal moment for machine learning (ML), what Sonali Sambhus, head of developer and ML platform at Square, describes as “the democratization of ML.” It’s become the foundation of business and growth acceleration because of the incredible pace of change and development in this space.

But for engineering and team leaders without an ML background, this can also feel overwhelming and intimidating. I regularly meet smart, successful, highly competent and normally very confident leaders who struggle to navigate a constructive or effective conversation on ML — even though some of them lead teams that engineer it.

I’ve spent more than two decades in the ML space, including work at Apple to build the world’s largest online app and music store. As the senior director of engineering, anti-evil, at Reddit, I used ML to understand and combat the dark side of the web.

For this piece, I interviewed a select group of successful ML leaders including Sambhus; Lior Gavish, co-founder at Monte Carlo; and Yotam Hadass, VP of engineering at Electric.ai, for their insights. I’ve distilled our best practices and must-know components into five practical and easily applicable lessons.

1. ML recruiting strategy

Recruiting for ML comes with several challenges.

The first is that it can be difficult to differentiate machine learning roles from more traditional job profiles (such as data analysts, data engineers and data scientists) because there’s a heavy overlap between descriptions.

Secondly, finding the level of experience required can be challenging. Few people in the industry have substantial experience delivering production-grade ML (for instance, you’ll sometimes notice resumes that specify experience with ML models but then find their models are rule-based engines rather than real ML models).

When it comes to recruiting for ML, hire experts when you can, but also look into how training can help you meet your talent needs. Consider upskilling your current team of software engineers into data/ML engineers or hire promising candidates and provide them with an ML education.

machine learning essentials for leaders
Image Credits: Snehal Kundalkar

The other effective way to overcome these recruiting challenges is to define roles largely around:

  • Product: Look for candidates with a technical curiosity and a strong business/product sense. This framework is often more important than the ability to apply the most sophisticated models.
  • Data: Look for candidates that can help select models, design features, handle data modeling/vectorization and analyze results.
  • Platform/Infrastructure: Look for people who evaluate/integrate/build platforms to significantly accelerate the productivity of data and engineering teams; extract, transform, load (ETLs); warehouse infrastructures; and CI/CD frameworks for ML.

Again, consider the power of training — an engineer with the right curiosity and interest can become the ML expert you need.

Regularly engaging with industry advisors and academics is another way to provide the team with updates on the latest and greatest approaches to ML. Quality bootcamps can be a great way to upskill your teams.

2. Organizational structure

How to best structure the role of the ML team within the larger organization is a significant decision that impacts the efficiency and predictability of the business and should be guided by the stage and size of the company.

Early stage (<25 members): At this size, a shared central team is the safest and quickest way to develop infrastructure and organizational readiness. In the early stage, your ML team should constitute 10%-20% of the entire engineering team.

Midstage (25-500 members): By midstage, it’s best to focus on vertically integrated teams. Gavish is a huge fan of vertical ML teams “because they have a huge advantage in terms of gaining deep understanding of the problem being solved.”

A vertical integration also allows for sustained focus and prioritization, which is needed because midstage ML projects tend to be longer and more uncertain.

Mature (500+ members): At this stage, the business should create a separate ML platform/infra team. For example, Square is a 2,500-plus engineering org with over 100 data scientists and ML engineers and more than 15 ML platform/infra engineers. The ML teams are aligned with individual business units such as chatbots, risk/fraud detection, etc., rather than specific technology. And they have an ML platform/infra team shared across other teams in the company.

However, remember that the size of the team varies depending on how key ML is to the product and services being developed.

3. ML pipeline

Deploying and maintaining ML pipelines is not dramatically different from deploying and maintaining general software. ML knowledge is required around building, tuning, testing, verifying and versioning the model — as well as monitoring it.

The key steps to successfully build, deploy and maintain an ML pipeline are:

  • Define a product problem and determine a fit for ML.
  • Refine datasets.
  • Know and isolate data issues versus model drawbacks.
  • Test, debug and version your models.

Using off-the-shelf software can be an incredibly effective way to reduce the cost and dependency on highly skilled and specialized ML engineers, but be careful of unintentionally creating a disorganized spaghetti solution suite that is difficult to maintain.

While the industry is nascent, tools like Databricks, AWS SageMaker, Tecton, Cortex and others will save time and resources. As far as platforms and libraries, there are many competing solutions in the market: TensorFlow, PyTorch, Keras, Scikit-learn, Pandas, NLTK, etc.

4. Metrics and evaluation

The key challenge around ML is reliability. How can you be sure your model is performing adequately before it’s deployed? How do you monitor production performance and troubleshoot issues? The solution is pretty similar to software engineering: observability.

It’s critical to monitor and track application performance. Hadass recommends “Building Machine Learning Powered Applications” by Emmanuel Ameisen to understand how to do so.

A model that performs better than a baseline (where there is no ML) and is both stable and secure should be good enough to take to production. As a framework, I would vouch for iteration over perfection.

Rolling out models under a feature flag is safe and ensures that you can turn it off quickly before disaster hits. The ability to run multiple versions via A/B testing of the model in production will drastically increase the confidence in the new model and will guarantee an overall higher level of reliability.

A good dataset is a must. It should be one that is meticulously created and reflects production scenarios. Build a system that allows you to backtrack against historical datasets and compare with predictions made by previous versions of the model.

You need metrics and evaluation to address concerns around good models versus bad, such as:

  • Usefulness to end user.
  • Data security.
  • Stability of the model.
  • Practicality of the predictions and recommendations.
  • Ability to explain why a model made the recommendation it did.

5. Common pitfalls

On first read, some of these pitfalls may seem like common sense, but they are worth both reiterating and reflecting on since they can help guide your team to making the best decision during a critical moment.

Don’t:

  • Apply ML to problems that aren’t a good fit for ML, like straightforward sequence of steps.
  • Expect instant results. Impactful ML takes patience and iterations to get solid results.
  • Focus on model success metrics without enough attention to product success metrics.
  • Underestimate the tooling and infrastructure costs leading to slow engineering progress.

Within the last decade, ML has established itself as a technology accelerator. It’s critical in driving automation and bottom-line profitability and growth. This necessitates the need for leaders to know and embrace ML and keep up with the lightning-speed advances in ML technology.

Integrating ML teams effectively into the business starts with an understanding of what makes the right candidate and how to structure the team for maximum velocity and focus.

Leaders should focus on guiding the team to build end-to-end models with integrated observability and monitoring before the models hit production. Evaluate models based on product success, not model success. Avoid common pitfalls under high-stress situations by being intentional about monitoring for them and proactively engaging industry experts and academics to help keep the team up to date on the latest developments.

To solve all the small things, look to everyday Little AI

More TechCrunch

After Apple loosened its App Store guidelines to permit game emulators, the retro game emulator Delta — an app 10 years in the making — hit the top of the…

Adobe comes after indie game emulator Delta for copying its logo

Meta is once again taking on its competitors by developing a feature that borrows concepts from others — in this case, BeReal and Snapchat. The company is developing a feature…

Meta’s latest experiment borrows from BeReal’s and Snapchat’s core ideas

Welcome to Startups Weekly! We’ve been drowning in AI news this week, with Google’s I/O setting the pace. And Elon Musk rages against the machine.

Startups Weekly: It’s the dawning of the age of AI — plus,  Musk is raging against the machine

IndieBio’s Bay Area incubator is about to debut its 15th cohort of biotech startups. We took special note of a few, which were making some major, bordering on ludicrous, claims…

IndieBio’s SF incubator lineup is making some wild biotech promises

YouTube TV has announced that its multiview feature for watching four streams at once is now available on Android phones and tablets. The Android launch comes two months after YouTube…

YouTube TV’s ‘multiview’ feature is now available on Android phones and tablets

Featured Article

Two Santa Cruz students uncover security bug that could let millions do their laundry for free

CSC ServiceWorks provides laundry machines to thousands of residential homes and universities, but the company ignored requests to fix a security bug.

6 hours ago
Two Santa Cruz students uncover security bug that could let millions do their laundry for free

OpenAI’s Superalignment team, responsible for developing ways to govern and steer “superintelligent” AI systems, was promised 20% of the company’s compute resources, according to a person from that team. But…

OpenAI created a team to control ‘superintelligent’ AI — then let it wither, source says

TechCrunch Disrupt 2024 is just around the corner, and the buzz is palpable. But what if we told you there’s a chance for you to not just attend, but also…

Harness the TechCrunch Effect: Host a Side Event at Disrupt 2024

Decks are all about telling a compelling story and Goodcarbon does a good job on that front. But there’s important information missing too.

Pitch Deck Teardown: Goodcarbon’s $5.5M seed deck

Slack is making it difficult for its customers if they want the company to stop using its data for model training.

Slack under attack over sneaky AI training policy

A Texas-based company that provides health insurance and benefit plans disclosed a data breach affecting almost 2.5 million people, some of whom had their Social Security number stolen. WebTPA said…

Healthcare company WebTPA discloses breach affecting 2.5 million people

Featured Article

Microsoft dodges UK antitrust scrutiny over its Mistral AI stake

Microsoft won’t be facing antitrust scrutiny in the U.K. over its recent investment into French AI startup Mistral AI.

8 hours ago
Microsoft dodges UK antitrust scrutiny over its Mistral AI stake

Ember has partnered with HSBC in the U.K. so that the bank’s business customers can access Ember’s services from their online accounts.

Embedded finance is still trendy as accounting automation startup Ember partners with HSBC UK

Kudos uses AI to figure out consumer spending habits so it can then provide more personalized financial advice, like maximizing rewards and utilizing credit effectively.

Kudos lands $10M for an AI smart wallet that picks the best credit card for purchases

The EU’s warning comes after Microsoft failed to respond to a legally binding request for information that focused on its generative AI tools.

EU warns Microsoft it could be fined billions over missing GenAI risk info

The prospects for troubled banking-as-a-service startup Synapse have gone from bad to worse this week after a United States Trustee filed an emergency motion on Wednesday.  The trustee is asking…

A US Trustee wants troubled fintech Synapse to be liquidated via Chapter 7 bankruptcy, cites ‘gross mismanagement’

U.K.-based Seraphim Space is spinning up its 13th accelerator program, with nine participating companies working on a range of tech from propulsion to in-space manufacturing and space situational awareness. The…

Seraphim’s latest space accelerator welcomes nine companies

OpenAI has reached a deal with Reddit to use the social news site’s data for training AI models. In a blog post on OpenAI’s press relations site, the company said…

OpenAI inks deal to train AI on Reddit data

X users will now be able to discover posts from new Communities that are trending directly from an Explore tab within the section.

X pushes more users to Communities

For Mark Zuckerberg’s 40th birthday, his wife got him a photoshoot. Zuckerberg gives the camera a sly smile as he sits amid a carefully crafted re-creation of his childhood bedroom.…

Mark Zuckerberg’s makeover: Midlife crisis or carefully crafted rebrand?

Strava announced a slew of features, including AI to weed out leaderboard cheats, a new ‘family’ subscription plan, dark mode and more.

Strava taps AI to weed out leaderboard cheats, unveils ‘family’ plan, dark mode and more

We all fall down sometimes. Astronauts are no exception. You need to be in peak physical condition for space travel, but bulky space suits and lower gravity levels can be…

Astronauts fall over. Robotic limbs can help them back up.

Microsoft will launch its custom Cobalt 100 chips to customers as a public preview at its Build conference next week, TechCrunch has learned. In an analyst briefing ahead of Build,…

Microsoft’s custom Cobalt chips will come to Azure next week

What a wild week for transportation news! It was a smorgasbord of news that seemed to touch every sector and theme in transportation.

Tesla keeps cutting jobs and the feds probe Waymo

Sony Music Group has sent letters to more than 700 tech companies and music streaming services to warn them not to use its music to train AI without explicit permission.…

Sony Music warns tech companies over ‘unauthorized’ use of its content to train AI

Winston Chi, Butter’s founder and CEO, told TechCrunch that “most parties, including our investors and us, are making money” from the exit.

GrubMarket buys Butter to give its food distribution tech an AI boost

The investor lawsuit is related to Bolt securing a $30 million personal loan to Ryan Breslow, which was later defaulted on.

Bolt founder Ryan Breslow wants to settle an investor lawsuit by returning $37 million worth of shares

Meta, the parent company of Facebook, launched an enterprise version of the prominent social network in 2015. It always seemed like a stretch for a company built on a consumer…

With the end of Workplace, it’s fair to wonder if Meta was ever serious about the enterprise

X, formerly Twitter, turned TweetDeck into X Pro and pushed it behind a paywall. But there is a new column-based social media tool in town, and it’s from Instagram Threads.…

Meta Threads is testing pinned columns on the web, similar to the old TweetDeck

As part of 2024’s Accessibility Awareness Day, Google is showing off some updates to Android that should be useful to folks with mobility or vision impairments. Project Gameface allows gamers…

Google expands hands-free and eyes-free interfaces on Android