The global synthetic data generation market is projected to expand from USD 0.3 billion in 2023 to USD 2.1 billion by 2028, achieving a Compound Annual Growth Rate (CAGR) of 45.7% during the forecast period.
Download PDF Brochure@ https://www.marketsandmarkets.com/pdfdownloadNew.asp?id=176419553
The global synthetic data generation market has various applications such as data democratization, AI/ML training and development, data anonymization, test data management, enterprise data sharing, data analytics and visualization, data monetization, and others. The major end-users of the Synthetic Data Generation market include BFSI, Healthcare & Life sciences, Retail & E-commerce, Automotive & Transportation, Government & Defense, IT and ITeS, Energy and Utilities, Manufacturing, and Other Verticals.
Stricter regulations, and limitations on the use of real-world data due to increasing concerns about data privacy and security have created a demand for synthetic data as a viable alternative. Synthetic data generation enables organizations to generate and utilize data without compromising sensitive information, addressing real-world data privacy and security challenges. Businesses are increasingly relying on data-driven decision-making to gain a competitive edge.
Among vertical, the BFSI segment is expected to dominate the market during the forecast period
Based on vertical, the BFSI segment of the synthetic data generation market is projected to hold a larger market size during the forecast period. The adoption of synthetic data generation drives the BFSI (Banking, Financial Services, and Insurance) vertical due to increasing concerns about data privacy and compliance regulations. Synthetic data provides a solution for generating realistic datasets without compromising sensitive information, allowing organizations in the BFSI sector to meet regulatory requirements. It enables improved risk management, fraud detection, model development, and customer analytics, facilitating more accurate predictions.
By data type, image and video segment to record the highest market share during the forecast period
Image and video data represent visual information in the form of images and videos. Synthetic data generation for image and video data involves creating artificial visual content that simulates real-world scenarios. This process is driven by the need for training computer vision models, object detection, image recognition, and video analysis. Synthetic image and video data enable organizations to generate diverse datasets that cover a wide range of scenarios, lighting conditions, and object variations. It supports the development and validation of algorithms for autonomous vehicles, surveillance systems, medical imaging, and virtual reality applications.
Asia Pacific to record the highest growth during the forecast period.
The synthetic data generation market in the Asia Pacific region is experiencing significant growth driven by rapid digital transformation, increasing data privacy regulations, growing adoption of AI and ML technologies, rising cybersecurity concerns, and a thriving startup ecosystem. Organizations in the region are leveraging synthetic data generation to address data-driven challenges, comply with regulations, enhance AI and ML model performance, strengthen cybersecurity measures, and drive innovation. With the region’s focus on digitalization and the emerging need for data-driven solutions, Asia Pacific’s synthetic data generation market is poised for continued expansion and opportunities.
Request Sample Pages@ https://www.marketsandmarkets.com/requestsampleNew.asp?id=176419553
Unique Features in the Synthetic Data Generation Market
Synthetic data generation plays a crucial role in maintaining data privacy and security. By creating artificial datasets that mimic real-world data without exposing sensitive information, it helps organizations adhere to privacy regulations such as GDPR and HIPAA, mitigating the risk of data breaches.
Synthetic data provides a cost-effective alternative to acquiring large volumes of real-world data. It allows businesses to generate vast datasets that are crucial for training AI and machine learning models, without the associated costs and complexities of collecting and annotating real data.
Synthetic data generation is highly adaptable and can be applied across various industries, including healthcare, finance, automotive, and retail. Its versatility allows for the creation of datasets tailored to specific industry needs, from medical imaging to financial transactions and autonomous vehicle simulations.
One of the key benefits of synthetic data is its ability to produce high-quality, labeled data for training and testing AI models. This ensures that machine learning algorithms can be trained on diverse, accurate datasets, improving their performance and generalization capabilities.
Synthetic data enables data augmentation, which helps to enhance the diversity and quantity of training datasets, particularly in cases where real-world data is scarce or imbalanced. It also assists in mitigating biases by generating balanced datasets that ensure more equitable AI model outcomes.
Major Highlights of the Synthetic Data Generation Market
Synthetic data is becoming an essential tool for AI and machine learning applications, as it provides vast, high-quality datasets for model training and testing. The demand for AI-driven solutions in sectors like healthcare, finance, and automotive is driving the market’s expansion.
With increasing concerns about data privacy and security, synthetic data generation offers a viable solution to meet regulatory requirements such as GDPR. By producing data that mimics real-world information without revealing sensitive details, it allows companies to use and share data without compromising privacy.
The synthetic data generation market serves a wide range of industries, from healthcare (for medical imaging and patient data simulations) to automotive (for autonomous vehicle testing). Its adaptability to diverse applications positions it as a key enabler of innovation in multiple fields.
In many industries, obtaining large, diverse datasets is challenging due to data scarcity, particularly for rare events or sensitive topics. Synthetic data generation addresses this gap by creating custom datasets that simulate rare conditions, offering valuable data where it would otherwise be limited or inaccessible.
Synthetic data generation reduces the need for costly and time-consuming data collection processes. By generating large-scale datasets quickly, organizations can accelerate the development and testing of AI models and applications, significantly reducing both time-to-market and development costs.
Inquire Before Buying@ https://www.marketsandmarkets.com/Enquiry_Before_BuyingNew.asp?id=176419553
Top Companies in the Synthetic Data Generation Market
The key and emerging market players in the Synthetic Data Generation market include Microsoft (US), Google (US), IBM (US), AWS (US), NVIDIA (US), OpenAI (US), Informatica (US), Broadcom (US), Sogeti (France), Mphasis (India), Databricks (US), MOSTLY AI (Austria), Tonic (US), MDClone (Israel) TCS (India), Hazy (UK), Synthesia (UK), Synthesized (UK), Facteus (US), Anyverse (Spain), Neurolabs (Scotland), Rendered.ai (US), Gretel (US), OneView (Israel), GenRocket (US), YData (US), CVEDIA (UK), Syntheticus (Switzerland), AnyLogic (US), Bifrost AI (US), Anonos (US). These players have adopted various strategies to grow in the global Synthetic Data Generation market.
IBM is a multinational technology and consulting corporation offering infrastructure, hosting, and consulting services. The company operates through five major business divisions: Cloud and Cognitive Software, Global Business Services, Global Technology Services, Systems, and Global Financing. IBM Cloud has emerged as a platform of choice for all business applications, as it is AI-compatible. It is a unifying platform that integrates IBM’s capabilities with a single architecture and spans public and private cloud platforms. With this powerful cloud platform, the company can cater to the requirements of different businesses worldwide. IBM caters to various verticals, including aerospace and defense, education, healthcare, oil & gas, automotive, electronics, insurance, retail and consumer products, banking and finance, energy and utilities, life sciences, telecommunications, media and entertainment, chemical, government, manufacturing, travel and transportation, construction, and metal and mining. The company has a strong presence in the Americas, Europe, the Middle East and Africa, and Asia Pacific, with clients in more than 175 countries. In the synthetic data generation market, IBM offers IBM InfoSphere Optim Test Data Fabrication solutions. InfoSphere Optim Test Data Fabrication help organization address the challenges of creating high-quality test data. The solution quickly and efficiently creates high-quality test data while minimizing the risks of using sensitive production data.
Amazon Web Services (AWS) is a subsidiary of Amazon and primarily offers cloud computing services in the form of web services. It offers a wide range of products and services to customers present in 190 countries. AWS’ product portfolio comprises segments such as computer, storage, database, migration, network, content delivery, developer tools, management tools, media services, ML, and analytics. The solutions segment offers websites, web apps, mobile services, back-up, storage and archive, financial services, and digital media. The company caters to various industry verticals, including media and entertainment, automotive, education, BFSI, game tech, government, healthcare and life sciences, manufacturing, retail, telecommunications, oil & gas, and power utilities. It is currently operating in North America, Europe, Asia Pacific, the Middle East, and Latin America. In the synthetic data generation market the company offers, Amazon SageMaker Ground Truth synthetic data a turnkey data generation and labeling service that makes it quicker and more cost-effective for machine learning (ML) scientists to acquire images used to train computer vision (CV) models.
Microsoft (US) : Microsoft Corporation, headquartered in Redmond, Washington, is a global technology company renowned for its software products, including the Windows operating system and Office suite. Founded in 1975 by Bill Gates and Paul Allen, Microsoft has grown into one of the world’s largest corporations, with a focus on cloud computing (Azure), hardware (Surface devices), and professional networking (LinkedIn). Microsoft’s mission is to empower every person and every organization on the planet to achieve more, emphasizing innovation, accessibility, and sustainability in its products and operations.
Media Contact
Company Name: MarketsandMarkets™ Research Private Ltd.
Contact Person: Mr. Rohan Salgarkar
Email: Send Email
Phone: 18886006441
Address:1615 South Congress Ave. Suite 103, Delray Beach, FL 33445
City: Florida
State: Florida
Country: United States
Website: https://www.marketsandmarkets.com/Market-Reports/synthetic-data-generation-market-176419553.html