What is MLaaS?

Machine learning as a service (MLaaS) refers to a cloud service model where machine learning algorithms and services are delivered to end users on demand via web APIs without the end user having to develop their own machine learning models or algorithms. This gives non-data scientists access to AI capabilities without having deep machine learning expertise or dedicated hardware infrastructure. MLaaS providers handle everything related to data engineering, model building, training, tuning and deployment through simple web APIs and graphical interfaces.

Key Benefits of MLaaS


MLaaS offers numerous benefits to businesses compared to developing machine learning capabilities in-house. Some of the major advantages include:

Reduced costs and resources

MLaaS significantly reduces the upfront investment required for expensive hardware, software licenses, hiring data scientists and machine learning engineers. With MLaaS, businesses can pay for only the machine learning services they use without having to over-provision capacity. This makes machine learning adoption economical even for small and mid-sized businesses.

Scalable infrastructure

MLaaS providers are expertly equipped to handle large volumes of data, complex models and high computation requirements using on-demand scalable cloud infrastructure. This avoids the need for businesses to make heavy capital investments in setting up their own data centers and manage infrastructure at scale.

Access to latest algorithms and techniques

MLaaS enables businesses to benefit from advanced machine learning techniques, latest algorithms and research breakthroughs without needing to constantly upgrade in-house capabilities. Machine Learning As A Service (Mlaas)  providers ensure models are continuously updated to deliver the highest prediction accuracy.

Speed to insight

MLaaS accelerates the overall machine learning workflow by automating repetitive tasks of data preprocessing, model training, evaluation and deployment. This allows businesses to derive insights from data in days or weeks instead of months. MLaaS eliminates many development bottlenecks for non-technical teams.

Specialized expertise on demand

MLaaS provides on-tap access to a global pool of machine learning experts for tasks like data annotation, model training oversight, productionization, model monitoring etc. Businesses can leverage deep expertise on an as-needed basis instead of hiring full-time professionals.

Get more insights on - Machine Learning As A Service (Mlaas)