The key players operating in the Automated Machine Learning (AutoML) Market are Automated Machine Learning (AutoML) Market size was worth approximately $1.0 billion in 2023 and is expected to generate revenue around $6.4 billion by the end of 2028 growing at a CAGR of around 44.6% between 2023 to 2028. , Transfer learning is an important aspect of AutoML that leverages pre-trained models to improve the performance of new models. By transferring the knowledge learned from one task to another, businesses create more accurate models with less training data and reduce the time and cost required to build high-performing models. , Driver: Rising need to transform businesses with Intelligent automation using AutoML , As businesses increasingly rely on data to drive decision-making and improve operational efficiency, a growing demand for intelligent business processes has been growing. These processes leverage machine learning algorithms to automate decision-making and optimize business operations, leading to improved performance and increased profitability. By leveraging AutoML, businesses can streamline operations, reduce costs, and improve performance, ultimately resulting in a competitive advantage. According to a report by industry experts, it is found that AI-driven automation can improve productivity by up to 40%. Automated Machine Learning Market can help businesses achieve these kinds of results by automating the development and deployment of machine learning models. By using AutoML, businesses can quickly and efficiently develop predictive models that can be integrated into existing business processes. These models can then be used to automate decision-making, optimize processes, and improve performance. Additionally, AutoML can help businesses identify new opportunities for optimization and improvement that were previously difficult to detect. By analyzing large volumes of data, AutoML can identify patterns and trends, enabling businesses to make data-driven decisions to improve performance and drive growth. , Restraint: Machine learning tools are being slowly adopted , The slow adoption of automated machine learning (AutoML) tools is a significant restraint hindering the growth of the AutoML market. Despite the numerous benefits AutoML offers, including increased efficiency, accuracy, and scalability, many organizations hesitate to adopt this technology. One of the primary reasons for this slow adoption is a lack of awareness about Automated Machine Learning (AutoML) Market and its capabilities. A survey by O’Reilly found that only 20% of respondents reported using automated machine learning tools, while 48% had never heard of the technology. This lack of awareness is a significant barrier to its adoption, as many business leaders and decision-makers may not be familiar with the benefits of AutoML and the impact it can have on their business. , Another factor contributing to this slow adoption is a shortage of skilled data scientists and machine learning experts. According to a report by an industry expert, there will be a shortage of up to 250,000 data scientists by 2024. This shortage of skilled experts can make it challenging for organizations to develop and deploy machine learning models, leading to slower adoption rates. Concerns about the transparency and interpretability of machine learning models are also holding back adoption. This lack of transparency can be a barrier to adoption in industries such as healthcare and finance, where decisions based on machine learning models can have significant consequences. , Opportunity: Seizing opportunities for faster decision-making and cost savings , The increased accessibility of machine learning presents a significant opportunity for the AutoML market. Historically, machine learning has been highly specialized, requiring extensive statistics, programming, and data analysis expertise. However, with the development of AutoML tools, businesses no longer need to have a team of data scientists and machine learning experts to build and deploy AI solutions. Instead, AutoML tools enable businesses to democratize the use of machine learning, making it more accessible to a broader range of users and use cases. By using AutoML tools, businesses can quickly build and deploy predictive models that can analyze large amounts of data and identify patterns, anomalies, and insights that may not be apparent to the human eye. For instance, AutoML models can help businesses to predict customer behavior, optimize pricing strategies, and identify opportunities for process improvement. , Moreover, the increased accessibility of machine learning can also lead to significant cost savings for businesses. By using AutoML tools, businesses can reduce the costs associated with hiring specialized talent and investing in expensive infrastructure. Additionally, the faster development and deployment of AI solutions can result in cost savings by increasing operational efficiency and improving decision-making. Furthermore, the increased accessibility of machine learning can also lead to new business innovations and opportunities. As more businesses adopt AutoML tools, there is likely to be a proliferation of new use cases and applications, leading to increased innovation and growth in the market. Additionally, the democratization of machine learning can enable businesses to tap into new markets and expand their offerings, leading to increased revenue and market share. , Challenge: Increasing shortage of skilled talent , One of the biggest challenges facing the AutoML market is the shortage of skilled talent. AutoML platforms require individuals with a strong machine learning, data science, and programming background. However, the demand for these skills has far outpaced the supply, leading to a significant talent shortage in the industry. As a result, organizations struggle to find the right talent to build, deploy, and maintain AutoML models. According to a report by LinkedIn, data scientists and machine learning engineers are among the top emerging jobs in the technology sector. However, the shortage of skilled talent has led to fierce competition among organizations for a limited pool of candidates. The LinkedIn report found that data scientist positions take an average of 42 days to fill, highlighting the challenges of finding qualified candidates. , The rapid pace of technological advancements further compounds the shortage of skilled talent. As new algorithms and techniques are developed, it is essential for individuals working with AutoML platforms to continually upskill and stay up to date with the latest advancements in the field. This requires ongoing training and professional development, which can be costly and time-consuming. Furthermore, the shortage of skilled talent is not limited to data scientists and machine learning engineers. AutoML platforms also require individuals with expertise in areas such as data management, data visualization, and cloud computing. The talent shortage in these areas can also impact the successful implementation and adoption of AutoML solutions. , By application, data processing to account for the largest market size during the forecast period , AutoML can be applied to automate various aspects of data processing, including data cleaning, data normalization, and data transformation. Automated Machine Learning (AutoML) Market can automate the process of detecting and correcting errors in the data. This includes identifying missing values, correcting data formatting errors, and removing outliers that could affect the accuracy of machine learning models. AutoML involves techniques such as standardization and normalization, which can be automatically applied to the data. In transformation, data can be transformed to a more appropriate format, reducing the risk of errors and inconsistencies with the help of AutoML. AutoML can also integrate data from multiple sources, which is often a time-consuming and complex task. This includes techniques such as data merging and joining. By automating the tasks, AutoML can reduce the time and effort required for manual data processing, improving the quality and accuracy of the resulting data. , By deployment, cloud to account for the largest market size during the forecast period , The adoption of cloud computing has increased over the past few years, with internet connections becoming more reliable and remote work becoming the norm. Cloud-based AutoML solutions offer greater flexibility and scalability than on-premises solutions, as they can be easily scaled up or down as needed to accommodate changes in workload or data volume. Cloud-based solutions also typically offer a pay-as-you-go pricing model, which can be more cost-effective for organizations with variable workloads. Installing and supporting traditional software can be very challenging for a decentralized team. However, with cloud-based software, anyone can access the solution remotely. For SMEs, cloud is particularly useful as it provides full functionality at a reasonable rate and requires no upfront investment. Due to its commercial benefits and the world of possibilities, cloud technology has become a popular model for modern automation businesses. , By offering, solutions to account for the largest market size during the forecast period , AutoML solutions are designed to automate the tasks involved in developing and deploying machine learning models. This makes it easier for organizations to leverage the power of machine learning without requiring significant expertise in data science or machine learning. AutoML solutions are becoming an increasingly important tool for organizations looking to leverage the power of machine learning to gain insights from their data and make better decisions. By automating many tedious and time-consuming tasks involved in model development and deployment, AutoML platforms can help organizations accelerate their digital transformation and unlock new opportunities for growth and innovation. AutoML solutions are available in different types and deployment options. By type, AutoML solutions can be classified into AutoML platforms and AutoML software. By deployment, AutoML solutions can be deployed on-premises or on cloud. , North America to account for the largest market size during the forecast period , North America is expected to have the largest market share in Automated Machine Learning. North America has been a major contributor to the development and growth of the Automated Machine Learning market. The US is one of the most developed countries in the region. AutoML is a rapidly growing market in the US, with several key players offering solutions that range from fully automated platforms to ones that assist data scientists in building machine learning models. The market is being driven by the need for faster and more efficient ways to build and deploy machine learning models, as well as the increasing demand for artificial intelligence solutions in various industries. In recent years, there has been a significant increase in the adoption of AutoML solutions in the US, especially in industries such as healthcare, finance, and retail. Healthcare providers are using AutoML to analyze medical images and identify patterns in patient data, while financial institutions are using it to detect fraudulent transactions and assess credit risk. Retailers are using AutoML to personalize recommendations and improve customer engagement. , Recent Developments: , In February 2023, IBM integrated StepZen's technology into its portfolio, with the aims to provide its clients with an end-to-end solution for building, connecting, and managing APIs and data sources, enabling them to innovate faster and generate more value from their data. , In February 2023, AWS launched new features for Amazon SageMaker Autopilot, a tool for automating the machine learning (ML) model creation process. The new features include the ability to select specific algorithms for the training and experiment stages, allowing data scientists more control over the ML model creation process. , In October 2022, Oracle partnered with NVIDIA, which enabled Oracle to offer its customers access to Nvidia's GPUs for use in machine learning workloads, enhancing the performance and capabilities of Oracle's machine learning tools. , In February 2022, AWS partnered with Maple Leaf Sports & Entertainment, which enables MLSE to assist its teams and lines of business. MLSE also employs AWS's extensive cloud capabilities, including AutoML, advanced analytics, computing, database, and storage services. , In December 2020, Salesforce and Google Cloud announced a collaboration to integrate Google Cloud's automl tools with Salesforce's Customer 360 platform. The collaboration aimed to help businesses build a complete view of their customers and use AI to personalize their experiences. , KEY MARKET SEGMENTS, By Offering: , Solutions , By Type , Platform , Software , By Deployment , Cloud , On-premises , Services , Consulting Services , Deployment & Integration , Training, Support, and Maintenance , By Application: , Data Processing , Feature Engineering , Model Selection , Hyperparameter Optimization & Tuning , Model Ensembling , Other Applications , By Vertical: , Banking, financial services, and insurance , Retail & eCommerce , Healthcare & life sciences , IT & ITeS , Telecommunications , Government & defense , Manufacturing , Automotive, Transportations, and Logistics , Media & Entertainment , Other Verticals , By Region: , North America , US , Canada , Europe , UK , Germany , France , Italy , Spain , Nordic , Rest of Europe , Asia Pacific , China , Japan , India , South Korea , Australia & New Zealand , ASEAN , Rest of Asia Pacific , Middle East & Africa , UAE , Kingdom of Saudi Arabia , Israel , Turkey , South Africa , Rest of the Middle East & Africa , Latin America , Brazil , Mexico , Argentina , Rest of Latin America , KEY MARKET PLAYERS , IBM , Oracle , Microsoft , ServiceNow , Google , Baidu , AWS , Alteryx , Salesforce , Altair , Teradata , H2O.ai , DataRobot , BigML , Databricks , Dataiku , Alibaba Cloud , Appier , Squark , Aible , Datafold , Boost.ai , Tazi.ai , Akkio , Valohai , dotData , Qlik , Mathworks , HPE , SparkCognition.