AI

How engineering leaders can use AI to optimize performance

Comment

Circuit board on a dark blue background
Image Credits: Yuichiro Chino / Getty Images

Alex Circei

Contributor

Alex Circei is the CEO and co-founder of Waydev, a development analytics tool that measures engineering teams’ performance.

More posts from Alex Circei

If there’s one area where most engineering teams are not making the most of AI, it’s team management.

Figuring out how to better manage engineers is often approached like more of an art than a science. Over the decades, engineering management has undoubtedly become more agile and data-driven, with automated data gathering improving performance. But in the past few months, the evolution of AI — specifically, predictive AI — has thrown management processes into a new era.

Predictive AI analyzes data to foresee possible future patterns and behaviors. It can automatically set goals based on real-time data, generate recommendations for improving teams’ performance, and process far more information than was possible before.

I want to encourage all other engineering management and intelligence platforms to start using AI, so we can collectively move into a new era. No business wants to lose profits or market share because of bad management.

We now have the data and the technology to turn engineering management from an art into a science. This is how engineering leaders can use AI to manage their teams and achieve more with less.

Pinpoint hidden patterns

Even the most capable engineering leaders have some blind spots when it comes to reviewing performance in certain areas, and may miss concerning behaviors or causal factors. One of the most significant ways engineering managers can apply AI to their workflow is by generating full reports on engineers’ performance. Typically, managers will manually put together reports at the end of the month or quarter, but often that gives a superficial analysis that can easily conceal hidden or incipient problems.

Predictive AI can automate insightful performance reports telling leaders where they should be making improvements. The main advantage here is that AI has a greater ability to identify patterns. It can process all existing data on a team’s performance, as well as internal and external benchmark data, to produce a level of analysis that humans can hardly attain at scale.

For example, AI can better analyze the relationship between cycle time, code review time, and code churn (the frequency with which code is modified). It can determine if longer code review times are actually leading to less code churn — which could imply more stable and well-thought-out code. Or, it may find that longer review times are simply delaying the development process without any significant reduction in churn.

By analyzing multiple metrics simultaneously, AI can help identify patterns and correlations that might not be immediately apparent to managers, enabling organizations to make more informed decisions to optimize their software development processes.

Another advantage is that AI tools can produce simple but analytical reports every day with 0 manual input, allowing managers and leaders to detect any important shifts in real time, not just at the end of every sprint.

Permanent memory bank

AI tools have a permanent memory of the progress of the team and company. Imagine what happens when an engineering manager leaves a business. Yes, the team’s performance data remains, but the wealth of knowledge that the manager has accumulated disappears. (Under what conditions does the team perform best? Were there external factors impacting poor performance? What strategies have been implemented and which worked best?)

For the first time, predictive AI can actually learn exactly what your team’s process has been so far. It can capture all that historical knowledge internally for your company, baking in that level of complex reasoning that can then be used by successive managers and future decision-making.

Maintaining a permanent data store of a company’s progress means key strategic info doesn’t get lost with staff turnover. It allows for a more fair assessment of the team and saves time and resources being spent on tactics that have proven unsuccessful.

Generate goals, targets and advice

Consider how predictive AI tools can act as a co-pilot to leaders. When they capture all the team’s internal data, they can turn it into equally unique goals and milestones.

Predictive AI tools can set goals for a team based on real-time data — for example, by automatically creating targets for the team on a weekly basis based on changes in performance. More importantly, they can come with built-in advice and use cases on reaching those targets. For example, a tool can identify a need to decrease cycle time, then set a target at 20% reduction, and offer a 12-month plan with advice on how to get there, with tips on how to improve handoff during product review, and so on.

These tools won’t just be wiring questions to ChatGPT and spouting unverified recommendations. They can be trained with input from experts that include advice, proven solutions, best practices and case studies. Engineering managers and management platforms have a wealth of internal and industry data to determine which approaches work best in particular conditions.

Of course, there are no cookie-cutter solutions. But anyone who has tinkered with predictive AI knows that it is uniquely capable of providing advice with a granularity that can take an unprecedented number of variables into consideration in every output.

At least to start, these tools will be a work in progress as teams train it to output more accurate and effective recommendations. Managers can focus their efforts on refining the tool’s output, or adjusting when necessary — for example, if it stops providing the desired results, or if internal/external conditions change and warrant a shift in strategy.

Two-factor verification

The subjective nature of managing a team can be hard for engineering leaders. Often, they’ll perceive that something is wrong but can’t find any proof of it. Or they’ll spot changes in performance but won’t be able to pinpoint the reasons behind it.

Predictive AI can be a sort of “two-factor verification” for engineering leaders to validate their intuition based on data. Because the technology is able to process more unstructured data and prompts when analyzing information, it can dig up causal factors that are imperceptible to the human eye.

For example, if an engineering team is having to deal with an unhealthy number of bugs in code, but all their metrics are hitting general benchmarks, a manager may not get much insight from the data as to why. But predictive AI can make a connection between metrics in order to provide solutions and advice. For example, it may connect a high deployment frequency as metric A and the high speed of the review stage of the cycle time as metric B and determine that the team is not spending enough time reviewing code, which is letting bugs through.

Predictive AI can also allow engineering leaders to play out certain scenarios to identify ideal paths forward. They may be contemplating if a team would do better if they hired an extra developer versus another approach, such as redistributing workload. With the right data, AI can run those scenarios in minutes and suggest possible outcomes so that managers can make an informed decision.

It’s important that engineering leaders always keep in mind that the human “variables” are still their responsibility and that some aren’t automatically weighted by AI. Developer experience and well-being may not be tangible in certain metrics, so make sure you always bring that balance to your considerations when using AI tools.

Technology follows the path of least resistance, and engineering leaders always opt for optimization. While some fear they will lose their jobs to AI, I feel like this evolution will instead adapt jobs to today’s world: a world in which tech workers will have to learn to use AI to better achieve goals. That’s why I invite all forward-thinking managers to explore the potential of AI as a complementary resource to elevate their development processes.

More TechCrunch

Google has developed a new AI tool to help marine biologists better understand coral reef ecosystems and their health, which can aid in conversation efforts. The tool, SurfPerch, created with…

Google looks to AI to help save the coral reefs

Only a few years ago, one of the hottest topics in enterprise software was ‘robotic process automation’ (RPA). It doesn’t feel like those services, which tried to automate a lot…

Tektonic AI raises $10M to build GenAI agents for automating business operations

SpaceX achieved a key milestone in its Starship flight test campaign: returning the booster and the upper stage back to Earth.

SpaceX launches mammoth Starship rocket and brings it back for the first time

There’s a lot of buzz about generative AI and what impact it might have on businesses. But look beyond the hype and high-profile deals like the one between OpenAI and…

Sirion, now valued around $1B, acquires Eigen as consolidation comes to enterprise AI tooling

Carlo Kobe and Scott Smith believed so strongly in the need for a debit card product designed specifically for Gen Zers that they dropped out of Harvard and Cornell at…

Kleiner Perkins leads $14.4M seed round into Fizz, a credit-building debit card aimed at Gen Z college students

A new app called MyGlimpact is intended not only to help people understand their environmental footprint, but why they shouldn’t feel guilty about it.

How many Earths does your lifestyle require?

Prolific Machines believes it has a way of transitioning away from molecules to something better: light.

Prolific Machines, with a $55M Series B, shines ‘light’ on a better way to grow lab proteins for food and medicine

It’s been 20 years since Shira Yevin, the lead singer of punk band Shiragirl drove a pink RV into the Vans Warped Tour grounds, the now-defunct punk rock festival notorious…

Punk singer Shira Yevin pushes for fair pay with InPink, a women-focused job marketplace

While the transport industry does use legacy software, many of these platforms are from an earlier era. Qargo hopes its newer technologies can help it leapfrog the competition.

Qargo raises $14M to digitize and decarbonize the trucking industry

When you look at how generative AI is being implemented across developer tools, the focus for the most part has been on generating code, as with Github Copilot. Greptile, an…

Greptile raises $4M to build an AI-fueled code base expert

The models tended to answer questions inconsistently, which reflects biases embedded in the data used to train the models.

Study finds that AI models hold opposing views on controversial topics

A growing number of businesses are embracing data models — abstract models that organize elements of data and standardize how they relate to one another. But as the data analytics…

Cube is building a ‘semantic layer’ for company data

Stock-trading app Robinhood is diving deeper into the cryptocurrency realm with the acquisition of crypto exchange Bitstamp.

Robinhood acquires global crypto exchange Bitstamp for $200M

Torpago’s Powered By product is geared for regional and community banks, with under $20 billion in assets, to launch their own branded cards and spend management programs.

Fintech Torpago has a unique way to compete with Brex and Ramp: turning banks into customers

Over half of Americans wear corrective glasses or contact lenses. While there isn’t a shortage of low-cost and luxury frames available online or in stores, consumers can only buy them…

Eyebot raised $6M for AI-powered kiosks that provide 90-second eye exams without optometrist

Google on Thursday said it is rolling out NotebookLM, its AI-powered note-taking assistant, to over 200 new countries, nearly six months after opening its access in the U.S. The platform,…

Google’s updated AI-powered NotebookLM expands to India, UK and over 200 other countries

Inflation and currency devaluation have always been a growing concern for Africans with bank accounts.

Starting in war-torn Sudan, YC-backed Elevate now provides fintech to freelancers globally

Featured Article

Amazon buys Indian video streaming service MX Player

Amazon has agreed to acquire key assets of Indian video streaming service MX Player from the local media powerhouse Times Internet, the latest step by the e-commerce giant to make its services and brand popular in smaller cities and towns in the key overseas market.  The two firms reached a…

7 hours ago
Amazon buys Indian video streaming service MX Player

Dealt is now building a service platform for retailers instead of end customers.

Dealt turns retailers into service providers and proves that pivots sometimes work

Snowflake is the latest company in a string of high-profile security incidents and sizable data breaches caused by the lack of MFA.

Hundreds of Snowflake customer passwords found online are linked to info-stealing malware

The buy will benefit ChromeOS, Google’s lightweight Linux-based operating system, by giving ChromeOS users greater access to Windows apps “without the hassle of complex installations or updates.”

Google acquires Cameyo to bring Windows apps to ChromeOS

Mistral is no doubt looking to grow revenue as it faces considerable — and growing — competition in the generative AI space.

Mistral launches new services and SDK to let customers fine-tune its models

The warning for the Ai Pin was issued “out of an abundance of caution,” according to Humane.

Humane urges customers to stop using charging case, citing battery fire concerns

The keynote will be focused on Apple’s software offerings and the developers that power them, including the latest versions of iOS, iPadOS, macOS, tvOS, visionOS and watchOS.

Watch Apple kick off WWDC 2024 right here

As WWDC 2024 nears, all sorts of rumors and leaks have emerged about what iOS 18 and its AI-powered apps and features have in store.

What to expect from Apple’s AI-powered iOS 18 at WWDC 2024

Welcome to Elon Musk’s X. The social network formerly known as Twitter where the rules are made up and the check marks don’t matter. Or do they? The Tesla and…

Elon Musk’s X: A complete timeline of what Twitter has become

TechCrunch has kept readers informed regarding Fearless Fund’s courtroom battle to provide business grants to Black women. Today, we are happy to announce that Fearless Fund CEO and co-founder Arian…

Fearless Fund’s Arian Simone coming to Disrupt 2024

Bridgy Fed is one of the efforts aimed at connecting the fediverse with the web, Bluesky and, perhaps later, other networks like Nostr.

Bluesky and Mastodon users can now talk to each other with Bridgy Fed

Zoox, Amazon’s self-driving unit, is bringing its autonomous vehicles to more cities.  The self-driving technology company announced Wednesday plans to begin testing in Austin and Miami this summer. The two…

Zoox to test self-driving cars in Austin and Miami 

Called Stable Audio Open, the generative model takes a text description and outputs a recording up to 47 seconds in length.

Stability AI releases a sound generator