AI

Here’s where MLOps is accelerating enterprise AI adoption

Comment

A modern ships telegraph isolated on white background - all settings from full astern to full speed ahead
Image Credits: donvictorio (opens in a new window) / Getty Images

Ashish Kakran

Contributor
Ashish Kakran, principal at Thomvest Ventures, is a product manager/engineer turned investor who enjoys supporting founders with a balance of technical know-how, customer insights, empathy with challenges and market knowledge.

More posts from Ashish Kakran

In the early 2000s, most business-critical software was hosted on privately run data centers. But with time, enterprises overcame their skepticism and moved critical applications to the cloud.

DevOps fueled this shift to the cloud, as it gave decision-makers a sense of control over business-critical applications hosted outside their own data centers.

Today, enterprises are in a similar phase of trying out and accepting machine learning (ML) in their production environments, and one of the accelerating factors behind this change is MLOps.

Similar to cloud-native startups, many startups today are ML native and offer differentiated products to their customers. But a vast majority of large and midsize enterprises are either only now just trying out ML applications or just struggling to bring functioning models to production.

Here are some key challenges that MLOps can help with:

It’s hard to get cross-team ML collaboration to work

An ML model may be as simple as one that predicts churn, or as complex as the one determining Uber or Lyft pricing between San Jose and San Francisco. Creating a model and enabling teams to benefit from it is an incredibly complex endeavor.

In addition to requiring a large amount of labeled historic data to train these models, multiple teams need to coordinate to continuously monitor the models for performance degradation.

There are three core roles involved in ML modeling, but each one has different motivations and incentives:

Data engineers: Trained engineers excel at gleaning data from multiple sources, cleaning it and storing it in the right formats so that analysis can be performed. Data engineers play with tools like ETL/ELT, data warehouses and data lakes, and are well versed in handling static and streaming data sets. A high-level data pipeline created by a data engineer might look like this:

data pipeline
Image Credits: Ashish Kakran, Thomvest Ventures

Data scientists: These are the experts who can run complex regressions in their sleep. Using common tools like the Python language, Jupyter Notebooks and Tensorflow, data scientists take the data provided by data engineers and analyze it, which results in a highly accurate model. Data scientists love trying different algorithms and comparing these models for accuracy, but after that someone needs to do the work to bring the models to production.

AI engineers/DevOps engineers: These are specialists who understand infrastructure, can take models to production and if something goes wrong, can quickly detect the issue and kickstart the resolution process.

MLOps enables these three critical personas to continuously collaborate to deliver successful AI implementations.

The proliferation of ML tools

In the new developer-led, bottom-up world, teams can choose from a plethora of tools to solve their problems.

In the diagram below outlining critical steps to do AI correctly, MLOps tools integrate with some or all of the standalone tools that excel at these tasks. Without such tools, it becomes a complex challenge to build, maintain and update ML pipelines that can automatically extract intelligence from vast repositories of data.

AI-ML operationalization
Image Credits: Ashish Kakran, Thomvest Ventures

Model lifecycle management is a big pain point

ML models are the core entity that data scientists try to create, optimize, monitor and upgrade. An ML model can be thought of as a black-box software that generates predictions with a high degree of confidence when it is provided with a question and some data. The more accurate the predictions, the more differentiated the experience a company can deliver to its customers.

But unlike software applications, models in production can decay over time, leading to poorer accuracy. Monitoring the performance of models for accuracy, setting fine-tuned alerts and getting the right teams to take corrective action is a tough problem that many MLOps tools are trying to solve today.

The journey from the ML lab to production environments is a hard one

From our conversations with thought leaders in ML infrastructure, we’ve learned that in a large organization, it can take six to nine months for a simple model to move from prototype to production. According to Gartner, only 53% of ML models make it to production today.

MLOps is the missing piece here, and in its absence, simple problems can become a barrier to the successful implementation of ML models. Even a simple question like “What is the definition of a customer?” can be hard to answer precisely. And if this definition changes, ensuring that the update flows through the entire system is a pain point today.

Regulation and compliance

In regulated industries, some parameters just can’t be used for model training. For example, The Federal Reserve Bank’s Regulation B prohibits discrimination against credit applicants on any prohibited basis, such as race, national origin, age, marital status or gender.

Without intelligent alerting and enforcement of policies on model training, organizations may unknowingly violate some industry-specific regulation.

Accelerating adoption of AI in the enterprise

MLOps is similar to DevOps, as it’s also a combination of people, process and technology. The software tools that fall into the MLOps category automate a part of the process required to operationalize AI.

The MLOps space is in its early days today, but it has massive potential because it allows organizations to bring AI to production environments in a fraction of the time it takes today.

What are we excited about?

We are witnessing the data volume explosion in real time — it comes in multiple varieties (structured, unstructured), varying frequency (streaming, real time, static) and large volumes (we’re talking petabytes, not gigabytes anymore). According to Cisco, more network traffic will be created in 2022 than in the first 32 years since the internet started.

The evolution of data
Image Credits: Ashish Kakran, Thomvest Ventures

Technology has had to evolve to keep up with the pace of data creation. Each such change in technology creates a massive opportunity for visionary founders to build something interesting. We are excited about the innovation within the data and ML infrastructure space to enable real-time AI and analytics.

More TechCrunch

Featured Article

Bangladeshi police agents accused of selling citizens’ personal information on Telegram

Two senior police officials in Bangladesh are accused of collecting and selling citizens’ personal information to criminals on Telegram.

3 hours ago
Bangladeshi police agents accused of selling citizens’ personal information on Telegram

Carta, a once-high-flying Silicon Valley startup that loudly backed away from one of its businesses earlier this year, is working on a secondary sale that would value the company at…

Carta’s valuation will be cut by billions in an upcoming secondary sale

Boeing’s Starliner spacecraft has successfully delivered two astronauts to the International Space Station, a key milestone in the aerospace giant’s quest to certify the capsule for regular crewed missions.  Starliner…

Boeing’s Starliner overcomes leaks and engine trouble to dock with ‘the big city in the sky’

Rivian needs to sell its new revamped vehicles at a profit in order to sustain itself long enough to get to the cheaper mass market R2 SUV on the road.

Rivian’s path to survival is now remarkably clear

Featured Article

What to expect from WWDC 2024: iOS 18, macOS 15 and so much AI

Apple is hoping to make WWDC 2024 memorable as it finally spells out its generative AI plans.

9 hours ago
What to expect from WWDC 2024: iOS 18, macOS 15 and so much AI

In a research note, HSBC estimates that the Indian edtech giant Byju’s, once valued at $22 billion, is now worth nothing.

HSBC believes that $22 billion Byju’s is now worth zero

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

Apple’s annual list of what it considers the best and most innovative software available on its platform is turning its attention to the little guy.

Apple’s Design Awards highlight indies and startups

Meta launched its Meta Verified program today along with other features, such as the ability to call large businesses and custom messages.

Meta rolls out Meta Verified for WhatsApp Business users in Brazil, India, Indonesia and Colombia

Last year, during the Q3 2023 earnings call, Mark Zuckerberg talked about leveraging AI to have business accounts respond to customers for purchase and support queries. Today, Meta announced AI-powered…

Meta adds AI-powered features to WhatsApp Business app

TikTok is testing streaks that are similar to Snapchat’s in order to boost engagement, including how long people stay on the app.

TikTok is testing Snapchat-like streaks

Welcome back to TechCrunch Mobility — your central hub for news and insights on the future of transportation. Sign up here for free — just click TechCrunch Mobility! Your usual…

Inside Fisker’s collapse and robotaxis come to more US cities

New York-based Revel has made a lot of pivots since initially launching in 2018 as a dockless e-moped sharing service. The BlackRock-backed startup briefly stepped into the e-bike subscription business.…

Revel to lay off 1,000 staff ride-hail drivers, saying they’d rather be contractors anyway

Google says apps offering AI features will have to prevent the generation of restricted content.

Google Play cracks down on AI apps after circulation of apps for making deepfake nudes

The British retailers association also takes aim at Amazon’s “Buy Box,” claiming that Amazon manipulated which retailers were selected for the coveted placement.

UK retailers file a £1.1B collective action against Amazon over claims of data misuse

Featured Article

Rivian overhauled the R1S and R1T to entice new buyers ahead of cheaper R2 launch

Rivian has changed 600 parts on its R1S SUV and R1T pickup truck in a bid to drive down manufacturing costs, while improving performance of its flagship vehicles.  The end goal, which will play out over the coming year, is an existential one. Rivian lost about $38,784 on every vehicle…

13 hours ago
Rivian overhauled the R1S and R1T to entice new buyers ahead of cheaper R2 launch

Twitch has come up with a solution for the ongoing copyright issues that DJs encounter on the platform. The company announced Thursday a new program that enables DJs to stream…

Twitch DJs will now have to pay music labels to play songs in livestreams

Google said today it is partnering with RapidSOS, a platform for emergency first responders, to enable users to contact 911 through RCS (Rich Messaging Service).

Google partners with RapidSOS to enable 911 contact through RCS

Long before product-led growth became a buzzword, Atlassian offered free tiers for virtually all of its productivity and developer tools. Today, that mostly means free access for up to 10…

Atlassian now gives startups a year of free access

Featured Article

A social app for creatives, Cara grew from 40k to 650k users in a week because artists are fed up with Meta’s AI policies

Artists have finally had enough with Meta’s predatory AI policies, but Meta’s loss is Cara’s gain. An artist-run, anti-AI social platform, Cara has grown from 40,000 to 650,000 users within the last week, catapulting it to the top of the App Store charts. Instagram is a necessity for many artists,…

13 hours ago
A social app for creatives, Cara grew from 40k to 650k users in a week because artists are fed up with Meta’s AI policies

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