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North America Automated Machine Learning Market Report by Offering, Enterprise Size, Deployment Mode, Application, End Use, Countries and Company Analysis 2025-2033

Publisher Renub Research
Published Nov 01, 2025
Length 200 Pages
SKU # RNBR20615658

Description

North America Automated Machine Learning Market Size and Forecast 2025-2033
North America Automated Machine Learning Market is expected to reach US$ 13 billion by 2033 from US$ 1.02 billion in 2024, with a CAGR of 32.66% from 2025 to 2033. The North American AutoML market is growing due to rising demand for AI-driven analytics, a shortage of skilled data scientists, increased adoption of cloud-based platforms, enterprise digital transformation, advances in machine learning algorithms, and the need for faster, more cost-effective data insights.

North America Automated Machine Learning Industry Overview
Automated Machine Learning (AutoML) is a technique that automates the entire process of using machine learning to solve real-world problems. Data preparation, feature selection, model selection, hyperparameter tuning, and model evaluation are among the processes that AutoML platforms streamline. AutoML simplifies complex operations, allowing non-experts to create reliable predictive models without extensive programming or data science experience. It also shortens development cycles for data scientists, allowing them to focus on more advanced analysis and planning. AutoML, widely used in industries such as healthcare, finance, retail, and manufacturing, improves operational efficiency, lowers errors, and enables faster, data-driven decision-making by democratizing machine learning adoption.
The North American AutoML market is primarily driven by the increasing deployment of AI and machine learning in industries such as healthcare, banking, and IT. Enterprises confront a shortage of skilled data scientists, making automated ML solutions appealing for simplifying model creation. Cloud-based platforms and enterprise digital transformation programs drive up need for scalable, cost-effective solutions. AutoML speeds up model training, deployment, and predictive analytics, enabling businesses to gain actionable insights faster. Furthermore, advances in algorithms, data preprocessing, and hyperparameter optimization increase AutoML efficiency, which drives adoption. Organizations use these platforms to cut operating expenses, make better decisions, and gain a competitive advantage.

Growth Drivers for the North America Automated Machine Learning Market
Rising AI and ML Adoption
The expanding use of artificial intelligence (AI) and machine learning (ML) in North American sectors is a significant driver of the Automated Machine Learning (AutoML) market. Organizations in healthcare, banking, retail, and IT are rapidly using AI/ML to get actionable insights, improve decision-making, and increase operational efficiency. The scarcity of trained data scientists has fueled AutoML adoption, as these platforms automate complicated activities like model selection, hyperparameter tuning, and deployment. Oracle MySQL HeatWave, which was introduced in March 2022, is a notable example of in-database machine learning. HeatWave ML automates the entire ML lifecycle by storing trained models in the MySQL database, removing the need to transmit data or models to third-party solutions.
This automation makes adoption easier for businesses, shortens development time, and highlights how increased AI/ML usage directly drives demand for AutoML solutions in North America.

Cloud-Based Platform Integration
Cloud-based platform integration is a key driver in the North American AutoML market. Enterprises are increasingly relying on cloud infrastructure to provide scalable, cost-effective data storage and computational resources that support AutoML platforms. Cloud connection provides easy access to massive datasets, real-time analytics, and collaborative model building, allowing enterprises to deploy machine learning solutions more quickly. SaaS-based AutoML solutions reduce the need for costly on-premises infrastructure, decreasing the entry barrier for small and medium-sized businesses. Cloud systems also offer multi-region operations, security compliance, and easy scalability, all of which are crucial in industries like healthcare, banking, and e-commerce. Organizations that integrate AutoML with cloud services can automate data pretreatment, model training, and deployment while minimizing operational complexity. This collaboration between cloud computing and AutoML accelerates adoption, improves efficiency, and fosters market growth throughout North America.

Algorithm and Technology Advancements
The North American AutoML market is being driven by advances in algorithms and machine learning technologies. Continuous progress in feature engineering, hyperparameter optimization, neural architecture search, and model selection enables AutoML platforms to produce extremely accurate and efficient models with minimal human interaction. The incorporation of AI explainability, anomaly detection, and reinforcement learning improves AutoML capabilities. These technical advancements lessen reliance on expert data scientists while speeding up the ML lifecycle from data ingestion to deployment. Companies such as Google, Microsoft, and Oracle are incorporating these breakthroughs into their platforms to provide enterprise-ready solutions that improve predictive accuracy and operational efficiency. The use of cutting-edge algorithms enables new applications in healthcare diagnostics, financial forecasting, and predictive maintenance. As AutoML grows more complex and powerful, it expands its usage across industries, fuelling the expansion of the North American industry.

Challenges in the North America Automated Machine Learning Market
Data Privacy and Security Concerns
Data privacy and security remain significant problems for the North American AutoML business. AutoML platforms require access to enormous amounts of sensitive data, such as medical records, financial transactions, and consumer information. Compliance with requirements like as HIPAA, CCPA, and GDPR is required, but maintaining security across cloud-based or multi-tenant AutoML systems can be challenging. Unauthorized access, data breaches, or exploitation of sensitive datasets can result in legal consequences, reputational damage, and a loss of client trust. To protect data, enterprises must make significant investments in encryption, access controls, and monitoring technologies. These obstacles hamper adoption, especially for small and medium-sized businesses that lack dedicated security infrastructure, even as demand for AutoML solutions grows.

Integration Complexity
The complexity of integration is a major barrier to AutoML adoption in North America. Enterprises frequently deal with old IT systems, various databases, and heterogeneous applications that must work together smoothly with AutoML platforms. Aligning these systems necessitates extensive technical knowledge, modification, and time, as well as compatibility with existing analytics, ERP, and cloud infrastructure. Failure to integrate effectively might result in fragmented data, lower model accuracy, and inefficiencies in predictive analytics workflows. Furthermore, enterprises must verify that AutoML outputs are compatible with organizational decision-making pipelines and operational procedures. These integration barriers can hinder acceptance, raise expenses, and limit the efficient use of AutoML, especially in firms with complicated IT environments or limited in-house technical personnel.

United States Automated Machine Learning Market
The US Automated Machine Learning (AutoML) industry is rapidly expanding due to the increased need for AI-driven automation in industries such as healthcare, finance, and retail. AutoML platforms make it easier for businesses without much data science skills to create and apply machine learning models. Microsoft paid $19.7 billion for Nuance Communications in 2022, significantly increasing its AI and AutoML capabilities. This smart step demonstrates Microsoft's commitment to expanding its AI portfolio while developing speech recognition and conversational AI capabilities, particularly in the healthcare sector. Advances in AI technology and increased acceptance of automated, scalable machine learning solutions are expected to drive the US AutoML market's rapid growth as organizations prioritize efficiency and innovation.

Canada Automated Machine Learning Market
The Canadian AutoML industry is constantly expanding, led by rising AI usage in healthcare, banking, retail, and IT. Enterprises are using AutoML to faster model creation, minimize the need for qualified data scientists, and boost predictive analytics. Cloud-based AutoML platforms are especially popular because of their scalability, flexibility, and ease of interaction with existing IT infrastructure. Regulatory compliance, particularly adherence to PIPEDA, protects data privacy and security, which influences platform selection. Key factors include the increased demand for faster, more cost-effective insights, as well as the requirement for automation in large-scale data processing. Challenges such as integration with legacy systems, high installation costs, and cybersecurity concerns remain, but continuous technology breakthroughs and supported digital transformation programs are projected to drive sustained growth.

Recent Developments in North America Automated Machine Learning Market
• June 2025: Oracle committed USD 40 billion to purchase Nvidia GPUs for the OpenAI-backed Stargate data centre in Texas, scheduled to go live in 2026.
• June 2025: AWS unveiled Project Rainier, deploying hundreds of thousands of Trainium 2 chips across US sites to quintuple available AI-training capacity.

North America Automated Machine Learning Market Segments:
Offering
• Solution
• Service

Enterprise Size
• SMEs
• Large Enterprises

Deployment Mode
• Cloud
• On-Premise

Application
• Data Processing
• Model Ensembling
• Feature Engineering
• Hyperparameter Optimization Tuning
• Model Selection
• Others

End Use
• Healthcare
• Retail
• IT and Telecommunication
• Banking, Financial Services and Insurance
• Automotive & Transportation
• Advertising & Media
• Manufacturing
• Others

Country
• United States
• Canada

All companies have been covered from 5 viewpoints:
• Company Overview
• Key Persons
• Recent Development & Strategies
• SWOT Analysis
• Sales Analysis

Key Players Analysis
• DataRobot Inc.
• Amazon web services Inc.
• dotData Inc.
• IBM Corporation
• Dataiku
• SAS Institute Inc.
• Microsoft Corporation
• Google LLC (Alphabet Inc.)
• H2O.ai
• Aible Inc.

Table of Contents

200 Pages
1. Introduction
2. Research & Methodology
2.1 Data Source
2.1.1 Primary Sources
2.1.2 Secondary Sources
2.2 Research Approach
2.2.1 Top-Down Approach
2.2.2 Bottom-Up Approach
2.3 Forecast Projection Methodology
3. Executive Summary
4. Market Dynamics
4.1 Growth Drivers
4.2 Challenges
5. North America Automated Machine Learning Market
5.1 Historical Market Trends
5.2 Market Forecast
6. Market Share Analysis
6.1 By Offering
6.2 By Deployment Mode
6.3 By Enterprise Size
6.4 By Application
6.5 By End Use
6.6 By Countries
7. Offering
7.1 Solution
7.1.1 Historical Market Analysis
7.1.2 Market Size & Forecast
7.2 Service
7.2.1 Historical Market Analysis
7.2.2 Market Size & Forecast
8. Enterprise Size
8.1 SMEs
8.1.1 Historical Market Analysis
8.1.2 Market Size & Forecast
8.2 Large Enterprises
8.2.1 Historical Market Analysis
8.2.2 Market Size & Forecast
9. Deployment Mode
9.1 Cloud
9.1.1 Historical Market Analysis
9.1.2 Market Size & Forecast
9.2 On-Premise
9.2.1 Historical Market Analysis
9.2.2 Market Size & Forecast
10. Application
10.1 Data Processing
10.1.1 Historical Market Analysis
10.1.2 Market Size & Forecast
10.2 Model Ensembling
10.2.1 Historical Market Analysis
10.2.2 Market Size & Forecast
10.3 Feature Engineering
10.3.1 Historical Market Analysis
10.3.2 Market Size & Forecast
10.4 Hyperparameter Optimization Tuning
10.4.1 Historical Market Analysis
10.4.2 Market Size & Forecast
10.5 Model Selection
10.5.1 Historical Market Analysis
10.5.2 Market Size & Forecast
10.6 Others
10.6.1 Historical Market Analysis
10.6.2 Market Size & Forecast
11. End Use
11.1 Healthcare
11.1.1 Historical Market Analysis
11.1.2 Market Size & Forecast
11.2 Retail
11.2.1 Historical Market Analysis
11.2.2 Market Size & Forecast
11.3 IT and Telecommunication
11.3.1 Historical Market Analysis
11.3.2 Market Size & Forecast
11.4 Banking, Financial Services and Insurance
11.4.1 Historical Market Analysis
11.4.2 Market Size & Forecast
11.5 Automotive & Transportation
11.5.1 Historical Market Analysis
11.5.2 Market Size & Forecast
11.6 Advertising & Media
11.6.1 Historical Market Analysis
11.6.2 Market Size & Forecast
11.7 Manufacturing
11.7.1 Historical Market Analysis
11.7.2 Market Size & Forecast
11.8 Others
11.8.1 Historical Market Analysis
11.8.2 Market Size & Forecast
12. Country
12.1 United States
12.1.1 Historical Market Analysis
12.1.2 Market Breakup by Offering
12.1.3 Market Breakup by Deployment Mode
12.1.4 Market Breakup by Enterprise Size
12.1.5 Market Breakup by Application
12.1.6 Market Breakup by End Use
12.1.7 Market Size & Forecast
12.2 Canada
12.2.1 Historical Market Analysis
12.2.2 Market Breakup by Offering
12.2.3 Market Breakup by Deployment Mode
12.2.4 Market Breakup by Enterprise Size
12.2.5 Market Breakup by Application
12.2.6 Market Breakup by End Use
12.2.7 Market Size & Forecast
13. Value Chain Analysis
14. Porter's Five Forces Analysis
14.1 Bargaining Power of Buyers
14.2 Bargaining Power of Suppliers
14.3 Degree of Competition
14.4 Threat of New Entrants
14.5 Threat of Substitutes
15. SWOT Analysis
15.1 Strength
15.2 Weakness
15.3 Opportunity
15.4 Threats
16. Pricing Benchmark Analysis
16.1 DataRobot Inc.
16.2 Amazon web services Inc.
16.3 dotData Inc.
16.4 IBM Corporation
16.5 Dataiku
16.6 SAS Institute Inc.
16.7 Microsoft Corporation
16.8 Google LLC (Alphabet Inc.)
16.9 H2O.ai
16.10 Aible Inc.
17. Key Players Analysis
17.1 DataRobot Inc.
17.1.1 Overviews
17.1.2 Key Person
17.1.3 Recent Developments
17.1.4 SWOT Analysis
17.1.5 Revenue Analysis
17.2 Amazon web services Inc.
17.2.1 Overviews
17.2.2 Key Person
17.2.3 Recent Developments
17.2.4 SWOT Analysis
17.2.5 Revenue Analysis
17.3 dotData Inc.
17.3.1 Overviews
17.3.2 Key Person
17.3.3 Recent Developments
17.3.4 SWOT Analysis
17.3.5 Revenue Analysis
17.4 IBM Corporation
17.4.1 Overviews
17.4.2 Key Person
17.4.3 Recent Developments
17.4.4 SWOT Analysis
17.4.5 Revenue Analysis
17.5 Dataiku
17.5.1 Overviews
17.5.2 Key Person
17.5.3 Recent Developments
17.5.4 SWOT Analysis
17.5.5 Revenue Analysis
17.6 SAS Institute Inc.
17.6.1 Overviews
17.6.2 Key Person
17.6.3 Recent Developments
17.6.4 SWOT Analysis
17.6.5 Revenue Analysis
17.7 Microsoft Corporation
17.7.1 Overviews
17.7.2 Key Person
17.7.3 Recent Developments
17.7.4 SWOT Analysis
17.7.5 Revenue Analysis
17.8 Google LLC (Alphabet Inc.)
17.8.1 Overviews
17.8.2 Key Person
17.8.3 Recent Developments
17.8.4 SWOT Analysis
17.8.5 Revenue Analysis
17.9 H2O.ai
17.9.1 Overviews
17.9.2 Key Person
17.9.3 Recent Developments
17.9.4 SWOT Analysis
17.9.5 Revenue Analysis
17.10 Aible Inc.
17.10.1 Overviews
17.10.2 Key Person
17.10.3 Recent Developments
17.10.4 SWOT Analysis
17.10.5 Revenue Analysis
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