
Tresata
Founded Year
2011About Tresata
Tresata focuses on data-centric artificial intelligence in the technology sector. The company offers services such as data inventory and cataloging, data enrichment, and augmented intelligence, all aimed at enhancing the usability and understanding of data. The primary market for Tresata's services is the data engineering industry. It was founded in 2011 and is based in Charlotte, North Carolina.
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Latest Tresata News
Nov 28, 2023
Pune, INDIA New York, United States, Nov. 28, 2023 (GLOBE NEWSWIRE) -- Predictive analytics is an advanced analytics technology that determines current trends in organizations and manages their financial risks using historical and current data. Various techniques, including statistics, data mining, data modeling, machine learning, and artificial intelligence, are widely used in predictive analytics to identify financial uncertainty, catastrophes, strategic management errors, and legal liabilities. Analyzing unstructured data collected from customer emails, survey responses, banker notes, and call transcripts, banks and financial institutions frequently employ predictive analytics techniques to monitor customer behavior and identify emergent issues. It assists banks and other financial institutions develop a customer experience strategy to enhance their communications and banking services. Download Free Sample Report PDF @ https://straitsresearch.com/report/predictive-analytics-in-banking-market/request-sample Increasing Adoption of Advanced Technologies for Fraud Detection Drives the Global Market According to Straits Research, “The global predictive analytics in the banking market was valued at USD 2,550.22 million in 2022 and is projected to reach USD 13,760.21 million by 2031, registering a CAGR of 20.6% during the projected period (2023–2031).” In recent years, a significant increase in fraudulent activities has been observed in banking and financial institutions. Customers have begun utilizing banking services via multiple channels, increasing bank forgeries such as money laundering, credit card fraud, and fraudulent loans. However, sophisticated technologies such as predictive analytics and machine learning algorithm-based fraud detection solutions can reduce fraudulent activities. Fraud detection based on machine learning enables banks to detect online fraud and rapidly recommend the necessary actions to decision-makers. Several large institutions have begun utilizing fraud detection software based on predictive analytics to detect fraudulent activities across all channels involved in payment processing. For instance, Danske Bank has implemented Teradata's fraud detection solution, which combines machine learning and AI algorithms. The solution assisted Danske Bank in detecting 50% more real-time deception. Therefore, an increasing number of such implementations of predictive analytics for fraud detection by banking and financial institutions have been driving the expansion of predictive analytics in the banking market. Integration of Artificial Intelligence in Mobile Apps Creates Tremendous Opportunities Incorporating sophisticated technologies such as AI into mobile banking applications has enabled customers to analyze account information and receive personalized financial advice. In addition, these AI-powered mobile banking applications have enhanced the ability of financial institutions to increase customers' financial wealth, gain a more comprehensive view of their finances, and attain financial objectives. Wells Fargo & Company, a community-based financial services provider, has added AI-enhanced mobile applications for analyzing account information, enabling them to provide personalized guidance and facilitate financial decision-making. An increase in such AI applications in mobile banking apps is anticipated to create lucrative opportunities for expanding the market for predictive analytics in banking . Regional Analysis North America is the most significant global predictive analytics in banking market shareholder and is estimated to exhibit a CAGR of 17.81% over the forecast period. Banks and financial institutions are forming alliances with providers of advanced analytics tools that offer innovative payment solutions based on machine learning and predictive analytics. In 2016, Citigroup Inc. announced a partnership with Feedzai, one of the leading Artificial intelligence (AI) companies for real-time risk management across banking and commerce. This collaboration enabled banks to make efficient and secure global payments. Several banks are also employing advanced analytics to analyze customer accounts to provide personalized insights regarding spending patterns, cash flow, and savings, which aids in customer management and retention. In addition, numerous stringent regulatory compliances imposed by the government in North America for data safety and security have increased the demand for predictive analytics software in the financial sector. For example, in 2019, the government of North America imposed on various banks and financial institutions the Gramm Leach Bliley Act (GLBA), which regulates the protection of customers' personal information and notifies customers when data is exposed to an unauthorized party. Europe is estimated to exhibit a CAGR of 21.1% over the forecast period. Various European financial institutions and banks partnered with advanced analytics solution providers to enhance operational management, critical decision-making, and the customer experience. For example, HSBC Holdings plc. partnered with Tresata to better understand our process, people, and product data using their AI software. In the European banking market, more such partnerships are anticipated to generate opportunities for predictive analytics. Moreover, banks and financial institutions have accelerated their digitization adoption, increasing identity theft, cyberattacks, data theft, and other business-related hazards. This region's institutions are increasingly adopting predictive analytics software because of increased crime. In addition, the increasing demand for enhanced financial services, identifying customer purchasing patterns, and managing millions of credit card transactions in the region have been driving market growth. Key Highlights Based on components, the global predictive analytics in the banking market is bifurcated into solutions and services. The solution segment dominates the global market and is estimated to exhibit a CAGR of 19.6% during the forecast period. Based on the deployment model, the global predictive analytics in the banking market is divided into on-premise and cloud. The on-premise segment owns the largest market share and is estimated to exhibit a CAGR of 19.2% during the forecast period. Based on organization size, the global predictive analytics in the banking market is categorized into large and small and medium enterprises. The large enterprise segment dominates the global market and is estimated to grow at a CAGR of 18.9% during the forecast period. Based on application, the global predictive analytics in the banking market is classified into fraud detection and prevention, customer management, sales & marketing, workforce management, and others. The customer management segment is the highest contributor to the market and is estimated to exhibit a CAGR of 17.71% during the forecast period. North America is the most significant global predictive analytics in banking market shareholder and is estimated to exhibit a CAGR of 17.81% over the forecast period. Competitive Players The prominent players in global predictive analytics in banking market analysis are Alteryx, Inc., Fair Isaac Corporation, IBM Corporation, Microsoft Corporation, Oracle Corporation, SAP SE, SAS Institute, Inc., Tableau Software, Inc., Teradata Corporation, TIBCO Software, Inc. Market News In May 2023, Alteryx, Inc., the Analytics Cloud Platform company, announced the launch of the Alteryx Maveryx Community at the annual user conference, Inspire. The Alteryx Maveryx Community encapsulates all customers, community members, and employees that share the maverick's mindset of exploring the unknown and not settling for the status quo. In May 2023, Alteryx, Inc., the Analytics Cloud Platform company, announced expanded cloud-connected platform experiences for its flagship Alteryx Designer product with the Alteryx Analytics Cloud Platform and new, upcoming cloud-based Location Intelligence capabilities to bring spatial analytics to the masses. The unified, self-service and enterprise-ready Alteryx Analytics Cloud Platform now bridges data across all systems with increased governance for faster insights. Global Predictive Analytics in Banking Market: Segmentation By Component
Tresata Frequently Asked Questions (FAQ)
When was Tresata founded?
Tresata was founded in 2011.
Where is Tresata's headquarters?
Tresata's headquarters is located at 1616 Camden Road, Charlotte.
Who are Tresata's competitors?
Competitors of Tresata include Ydata and 4 more.
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Compare Tresata to Competitors
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MOSTLY AI specializes in synthetic data generation for various business sectors, focusing on creating high-fidelity synthetic datasets. The company offers a platform that enables the generation, synthesis, and creation of data, ensuring privacy and compliance with regulations. MOSTLY AI's solutions cater to needs such as AI/ML development, data sharing, testing and QA, and self-service analytics, providing tools for data democratization and insights through a natural language interface. It was founded in 2017 and is based in Vienna, Austria.

Synthesized is a company specializing in API-driven data generation and automation for data-driven organizations. The company offers a platform that enables the creation, validation, and sharing of high-quality data for analysis, model training, and software testing, with a focus on machine learning and quality assurance teams. Synthesized's solutions cater to various sectors, including software development, data analysis, and regulatory compliance. It was founded in 2018 and is based in London, England.

Hazy is a synthetic data company focused on re-engineering enterprise data. The company offers solutions for generating synthetic data that retains the statistical properties of original datasets, enabling businesses to innovate, make data-driven decisions, and comply with privacy regulations without compromising data security. Hazy's services are primarily utilized by sectors that require large volumes of data for artificial intelligence (AI) training, business analytics, and digital transformation initiatives. Hazy was formerly known as Anon AI. It was founded in 2017 and is based in London, United Kingdom.

YData specializes in enhancing data quality for data science and artificial intelligence applications within the technology sector. The company offers a platform for synthetic data generation, data quality profiling, and data-centric AI to improve AI model performance and ensure data privacy. It primarily serves sectors such as financial services, telecommunications, healthcare, and retail. The company was founded in 2019 and is based in Seattle, Washington.

Betterdata provides data privacy solutions. It offers data privacy solutions including product development and testing, data collaborations, data privacy verification, imbalance mitigation, and more. The company was founded in 2021 and is based in Singapore.
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