Enterprise

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

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 the town, and it’s from Instagram…

ThreadsDeck? Threads in testing pinned columns on the web

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’s expands hands-free and eyes-free interfaces on Android

A hacker listed the data allegedly breached from Samco on a known cybercrime forum.

Hacker claims theft of India’s Samco account data

A top European privacy watchdog is investigating following the recent breaches of Dell customers’ personal information, TechCrunch has learned.  Ireland’s Data Protection Commission (DPC) deputy commissioner Graham Doyle confirmed to…

Ireland privacy watchdog confirms Dell data breach investigation

Ampere and Qualcomm aren’t the most obvious of partners. Both, after all, offer Arm-based chips for running data center servers (though Qualcomm’s largest market remains mobile). But as the two…

Ampere teams up with Qualcomm to launch an Arm-based AI server

At Google’s I/O developer conference, the company made its case to developers – and to some extent, consumers –  why its bets on AI are ahead of rivals. At the…

Google I/O was an AI evolution, not a revolution

TechCrunch Disrupt has always been the ultimate convergence point for all things startup and tech. In the bustling world of innovation, it serves as the “big top” tent, where entrepreneurs,…

Meet the Magnificent Six: A tour of the stages at Disrupt 2024

There’s apparently a lot of demand for an on-demand handyperson. Khosla Ventures and Pear VC have just tripled down on their investment in Honey Homes, which offers up a dedicated…

Khosla Ventures, Pear VC triple down on Honey Homes, a smart way to hire a handyman

TikTok is testing the ability for users to upload 60-minute videos, the company confirmed to TechCrunch on Thursday. The feature is available to a limited group of users in select…

TikTok tests 60-minute video uploads as it continues to take on YouTube

Flock Safety is a multibillion-dollar startup that’s got eyes everywhere. As of Wednesday, with the company’s new Solar Condor cameras, those eyes are solar-powered and using wireless 5G networks to…

Flock Safety’s solar-powered cameras could make surveillance more widespread

Since he was very young, Bar Mor knew that he would inevitably do something with real estate. His family was involved in all types of real estate projects, from ground-up…

Agora raises $34M Series B to keep building the Carta for real estate

Poshmark, the social commerce site that lets people buy and sell new and used items to each other, launched a paid marketing tool on Thursday, giving sellers the ability to…

Poshmark’s ‘Promoted Closet’ tool lets sellers boost all their listings at once

Google is launching a Gemini add-on for educational institutes through Google Workspace.

Google adds Gemini to its Education suite

More money for the generative AI boom: Y Combinator-backed developer infrastructure startup Recall.ai announced Thursday it’s raised a $10 million Series A funding round, bringing its total raised to over $12M.…

YC-backed Recall.ai gets $10M Series A to help companies use virtual meeting data

Engineers Adam Keating and Jeremy Andrews were tired of using spreadsheets and screenshots to collab with teammates — so they launched a startup, Colab, to build a better way. The…

Colab’s collaborative tools for engineers line up $21M in new funding

Reddit announced on Wednesday that it is reintroducing its awards system after shutting down the program last year. The company said that most of the mechanisms related to awards will…

Reddit reintroduces its awards system

Sigma Computing, a startup building a range of data analytics and business intelligence tools, has raised $200 million in a fresh VC round.

Sigma is building a suite of collaborative data analytics tools

European Union enforcers of the bloc’s online governance regime, the Digital Services Act (DSA), said Thursday they’re closely monitoring disinformation campaigns on the Elon Musk-owned social network X (formerly Twitter)…

EU ‘closely’ monitoring X in wake of Fico shooting as DSA disinfo probe rumbles on

Wind is the largest source of renewable energy in the U.S., according to the U.S. Energy Information Administration, but wind farms come with an environmental cost as wind turbines can…

Spoor uses AI to save birds from wind turbines

The key to taking on legacy players in the financial technology industry may be to go where they have not gone before. That’s what Chicago-based Aeropay is doing. The provider…

Cannabis industry and gaming payments startup Aeropay is now offering an alternative to Mastercard and Visa

Facebook and Instagram are under formal investigation in the European Union over child protection concerns, the Commission announced Thursday. The proceedings follow a raft of requests for information to parent…

EU opens child safety probes of Facebook and Instagram, citing addictive design concerns

Bedrock Materials is developing a new type of sodium-ion battery, which promises to be dramatically cheaper than lithium-ion.

Forget EVs: Why Bedrock Materials is targeting gas-powered cars for its first sodium-ion batteries

Private equity giant Thoma Bravo has announced that its security information and event management (SIEM) company LogRhythm will be merging with Exabeam, a rival cybersecurity company backed by the likes…

Thoma Bravo’s LogRhythm merges with Exabeam in more cybersecurity consolidation

Consumer protection groups around the European Union have filed coordinated complaints against Temu, accusing the Chinese-owned, ultra low-cost e-commerce platform of a raft of breaches related to the bloc’s Digital…

Temu accused of breaching EU’s DSA in bundle of consumer complaints

Here are quick hits of the biggest news from the keynote as they are announced.

Google I/O 2024: Here’s everything Google just announced

The AI industry moves faster than the rest of the technology sector, which means it outpaces the federal government by several orders of magnitude.

Senate study proposes ‘at least’ $32B yearly for AI programs

The FBI along with a coalition of international law enforcement agencies seized the notorious cybercrime forum BreachForums on Wednesday.  For years, BreachForums has been a popular English-language forum for hackers…

FBI seizes hacking forum BreachForums — again

The announcement signifies a significant shake-up in the streaming giant’s advertising approach.

Netflix to take on Google and Amazon by building its own ad server

It’s tough to say that a $100 billion business finds itself at a critical juncture, but that’s the case with Amazon Web Services, the cloud arm of Amazon, and the…

Matt Garman taking over as CEO with AWS at crossroads

Back in February, Google paused its AI-powered chatbot Gemini’s ability to generate images of people after users complained of historical inaccuracies. Told to depict “a Roman legion,” for example, Gemini would show…

Google still hasn’t fixed Gemini’s biased image generator