Global Self-supervised Learning Market Size, Share & Industry Trends Analysis Report By End-use (BFSI, Advertising & Media, Software Development (IT), Automotive & Transportation, Healthcare), By Technology, By Regional Outlook and Forecast, 2022 – 2028

Global Self-supervised Learning Market Size, Share & Industry Trends Analysis Report By End-use (BFSI, Advertising & Media, Software Development (IT), Automotive & Transportation, Healthcare), By Technology, By Regional Outlook and Forecast, 2022 – 2028

The Global Self-Supervised Learning Market size is expected to reach $51.7 billion by 2028, rising at a market growth of 33.3% CAGR during the forecast period.

Self-supervised learning is a Machine Learning (ML) technique used in speech processing, computer vision, and natural language processing (NLP), among other AI applications. Face recognition, text classification, and colorization are some examples of self-supervised learning applications. It also has uses in a number of different sectors, including automotive and transportation, BFSI, healthcare, software development (IT), media, and advertising, among others.

Self-supervised learning is in a stage of development that calls for a skilled workforce. The demand for self-supervised learning applications among industries is being driven by factors like the expanding applications of technologies like voice recognition and face detection and the growing need to streamline workflow across industries. Additionally, the market is likely to expand due to the growing digitalization of society.

Companies like Apple and Microsoft, both based in the United States, are investing more money in R&D projects. Additionally, these businesses are investigating cutting-edge technologies like AI and ML. Self-supervised learning is being studied and experimented with by market participants like the American company Meta, creating significant growth possibilities for the industry.

The development of AI systems that can learn from vast amounts of meticulously labeled data has advanced significantly in recent years. This supervised learning paradigm has a track record of producing expert models that excel at the task for which they were developed. Building more intelligent generalist models that can perform multiple tasks and learn new skills without vast amounts of labeled data is hampered by supervised learning.

COVID-19 Impact Analysis

In response to the COVID-19 pandemic, most IT professionals said they had accelerated the roll-out of AI (artificial intelligence). Additionally, chatbots were created using machine learning (ML) during the pandemic to screen COVID-19 symptoms and respond to public inquiries. In order to combat the COVID-19 pandemic, machine learning and artificial intelligence technologies are being used in research fields. Healthcare & agriculture are currently two of the most crucial sectors in these unprecedented times. Since ML allows computers to work the same as human intelligence & ingest massive amounts of data in order to find patterns and insights, it has received a lot of media attention. This has further supported the growth of the self-supervised learning market during the pandemic period.

Market Growth Factors

Growing Application Of Ml In The Healthcare Sector

ML technology is already helping in a number of healthcare-related situations. This technology is used in the healthcare industry to evaluate millions of different data points, forecast outcomes, provide quick risk scores, and allocate resources precisely, among many other things. Disease Recognition and Diagnosis Finding and diagnosing illnesses & conditions that can occasionally be challenging to identify are one of the most significant applications of this technology in healthcare.

Increasing Usage Of The Cloud Computing Technology Across The World

The market is expanding as a result of the rising use of cloud computing technology and usage of social media platforms. All businesses now largely use cloud computing, which offers enterprise storage solutions. With the adoption of cloud storage, data analysis is carried out online, giving the benefit of analyzing the real-time data generated on the cloud. Data analysis is possible at any time and from any location due to cloud computing.

Market Restraining Factors

Lack Of Accuracy & Technical Restrictions

A wide range of advantages provided by the ML platform contributes to the market's expansion. However, the platform is missing some essential elements that are anticipated to impede market expansion. The market is significantly hampered by the presence of inaccurate algorithms, which are occasionally underdeveloped. Precision is crucial for manufacturing companies using big data and machine learning. The algorithm's slightest error could lead to the creation of inaccurate items.

End-Use Outlook

Based on end-use, the self-supervised learning market is segmented into healthcare, BFSI, automotive & transportation, software development (IT), advertising & media and others. In 2021, the BFSI segment dominated the self-supervised learning market by generating maximum revenue share. The BFSI sector is expanding across the globe and the digitalization in the sector is also rising. The way that individuals frequently communicate as well as conduct business has changed as a result of the COVID-19 pandemic.

Technology Outlook

On the basis of technology, the self-supervised learning market is fragmented into natural language processing (NLP), computer vision, and speech processing. The computer vision segment covered a significant revenue share in the self-supervised learning market in 2021. The fundamental concept behind self-supervised learning in computer vision is to build a model that can handle any basic computer vision task using the input data or image data, and while the model is resolving the issue, it can learn from the structure of the objects shown in the image.

Regional Outlook

Region wise, the self-supervised learning market is analyzed across North America, Europe, Asia Pacific and LAMEA. In 2021, the North America region led the self-supervised learning market with the largest revenue share. The United States-based businesses place a high priority on digital transformation, and they are frequently recognized as early adopters of cutting-edge technologies such as big data analytics, Internet of Things (IoT), additive manufacturing, AI, augmented reality (AR), connected industries, machine learning (ML), and virtual reality (VR), and the newest telecommunications technologies such as 4G, 5G, and LTE.

The major strategies followed by the market participants are Product Launches. Based on the Analysis presented in the Cardinal matrix; Apple, Inc. and Microsoft Corporation are the forerunners in the Self-supervised Learning Market. Companies such as Meta Platforms, Inc., Amazon Web Services, Inc. (Amazon.com, Inc.) and IBM Corporation are some of the key innovators in Self-supervised Learning Market.

The market research report covers the analysis of key stake holders of the market. Key companies profiled in the report include Baidu, Inc., Apple, Inc., Tesla, Inc., IBM Corporation, Microsoft Corporation, Amazon Web Services, Inc. (Amazon.com, Inc.), Meta Platforms, Inc., SAS Institute, Inc., The MathWorks, Inc., and DataRobot, Inc.

Recent strategies deployed in Self-supervised Learning Market

Product Launches & Product Expansion:

Aug-2022: Meta AI launched PEER, a collaborative language model trained to mimic the writing process. PEER has been developed to enhance the model’s ability to write texts in different domains. With PEER, one can perform edits in many domains, which makes it better at following instructions and enhances its ability to cite and quote from relevant documents.

Jul-2022: Meta AI released an open-sourced model in order to make Wikipedia entries more appropriate. This launch would help in scaling the work of volunteers by efficiently recommending citations & accurate sources. It would highlight questionable citations, enabling human editors to assess the cases that are most likely to be flawed without having to sift through thousands of properly cited statements.

Jun-2022: DataRobot expanded its DataRobot AIX 2022 by making it available on Google Cloud. The expansion would enable consumers to accelerate and scale their business with AI. Also, consumers would be able to leverage the Google Cloud marketplace to streamline their procurement & deployment processes and generate intelligent business solutions on Google Cloud.

Jun-2022: Meta unveiled Visual-Acoustic Matching, Visually-Informed Dereverberation, and VisualVoice, three new artificial intelligence (AI) models. This product focused on making the sound more realistic in mixed & virtual reality experiences.

May-2022: Microsoft Azure released i-Code, a general framework that allows flexible multimodal representation learning. This product would allow the flexible integration of speech, vision, and language modalities & learn their vector representations in a unified manner.

Jan-2022: Meta launched data2vec, the first high-performance self-supervised algorithm that learns in the same way for speech, vision, and text. By the introduction of data2vec, Meta aimed at building machines that learn about different aspects of the world around them without having to rely on labeled data.

Sep-2021: DataRobot introduced DataRobot 7.2. This product would have features like Composable ML & code-centric data pipelines for data science experts, Continuous AI and bias monitoring for ML operators, and Decision Intelligence Flows & Pathfinder solution accelerators for the front-line decision-makers.

Sep-2021: Tesla launched Tesla D1, a new chip designed specifically for artificial intelligence. Tesla D1 adds a total of 354 training nodes that form a network of functional units, that are interconnected to create a massive chip. Each functional unit comes with a quad-core, 64-bit ISA CPU which uses a specialized, custom design for compilations, transpositions, broadcasts, and link traversal.

Aug-2021: Baidu introduced Kunlun 2, its second-generation AI chip. This launch focused on diversifying its business beyond advertising to AI and driverless cars.

Aug-2021: IBM introduced IBM Telum Processor. The launch focused on bringing deep learning inference to enterprise workloads to help address fraud in real time. Telum would enable IBM to leverage deep learning inferencing on high-value transactions, designed to greatly enhance the ability to intercept fraud, among other use cases.

Oct-2020: Microsoft introduced a machine learning cyber-attack threat matrix. This launch would empower security analysts in their battle to protect AI-powered technology.

May-2020: MathWorks launched Release 2020a. This product would serve with new capabilities specifically for automotive & wireless engineers in addition to hundreds of new & updated features for all users of MATLAB and Simulink. By this launch, the engineers would train neural networks in the updated Deep Network Designer app, manage multiple deep learning experiments in a new Experiment Manager app, and choose from more network options to generate deep learning code.

Mergers & Acquisitions:

Jul-2022: IBM completed the acquisition of Databand, an Israel-based data observability software provider. The acquisition would IBM offers the most comprehensive set of observability capabilities for IT across application, data, and machine learning.

May-2022: Microsoft took over Nuance Communications, a leader in conversational AI and ambient intelligence across industries. This acquisition would bring together Nuance's best-in-class conversational AI and ambient intelligence with Microsoft's secure and trusted industry cloud offerings.

Dec-2021: IBM closed on the acquisition of Instana, a leading enterprise observability and application performance monitoring platform. With the acquisition of Instana, IBM would offer industry-leading, AI-powered automation capabilities to manage the complexity of modern applications that span hybrid cloud landscapes.

Jul-2021: DataRobot signed an agreement to acquire Algorithmia, a machine learning operations platform. The acquisition would stabilize DataRobot’s position as the preeminent provider of comprehensive solutions in the MLOps space, focused on bringing machine learning models into production.

May-2021: DataRobot entered an agreement to acquire Zepl, a cloud data science, and analytics platform. The acquisition would unlock new capabilities within DataRobot’s enterprise AI platform for the world’s most advanced data scientists. Also, the acquisition of Zepl would help in providing advanced data scientists more flexibility to use the company's enterprise AI platform within their present workflows, including the ability to use their code.

Jul-2020: IBM announced the acquisition of WDG Automation, the Brazilian software provider of robotic process automation. The acquisition aimed to advance IBM's comprehensive AI-infused automation capabilities, spanning business processes to IT operations. This acquisition would enhance IBM's comprehensive AI-infused automation capabilities, spanning business processes to IT operations

May-2020: Apple took over Inductiv, a Canada-based machine learning startup. This acquisition aimed at enhancing data used in Siri.

Apr-2020: Tesla acquired DeepScale, an American technology company. This acquisition aimed at accelerating Tesla's machine learning development. Under this acquisition, Tesla would design its computer chip to power its self-driving software with DeepScale's specialization in computing power-efficient deep learning systems.

Partnerships, Collaborations & Agreements:

May-2021: Microsoft came into a partnership with Darktrace, a leading autonomous cyber security AI company. Under this partnership, Microsoft & Darktrace would provide improved security across multi-platform & multi-cloud environments, automate threat investigations and allow teams to prioritize strategic tasks that matter.

Jan-2021: Baidu entered into a partnership with BlackBerry, a former brand of smartphones, tablets, and services. This partnership aimed at helping car manufacturers quickly produce safe autonomous vehicles & promote the development collaboratively of the intelligent networked automobile industry.

Geographical Expansions:

Feb-2022: Microsoft expanded its geographical footprint in India. This expansion aimed at providing support for consumers building & operating applications and workloads. Microsoft Cloud would manage end-to-end business needs across public, private & hybrid scenarios while helping businesses leverage digital capabilities and technologies like ML, AI, IoT, and analytics.

Jan-2021: AWS expanded its geographical footprints by providing AWS CCI Solutions to its partners all over the world. AWS CCI solution would allow leveraging AWS's ML capabilities with the current contact center provider to gain greater efficiencies & deliver increasingly tailored consumer experiences.

Scope of the Study

Market Segments covered in the Report:

By End-use

  • BFSI
  • Advertising & Media
  • Software Development (IT)
  • Automotive & Transportation
  • Healthcare
  • Others
By Technology
  • Natural Language Processing (NLP)
  • Computer Vision
  • Speech Processing
By Geography
  • North America
  • US
  • Canada
  • Mexico
  • Rest of North America
  • Europe
  • Germany
  • UK
  • France
  • Russia
  • Spain
  • Italy
  • Rest of Europe
  • Asia Pacific
  • China
  • Japan
  • India
  • South Korea
  • Singapore
  • Malaysia
  • Rest of Asia Pacific
  • LAMEA
  • Brazil
  • Argentina
  • UAE
  • Saudi Arabia
  • South Africa
  • Nigeria
  • Rest of LAMEA
Companies Profiled
  • Baidu, Inc.
  • Apple, Inc.
  • Tesla, Inc.
  • IBM Corporation
  • Microsoft Corporation
  • Amazon Web Services, Inc. (Amazon.com, Inc.)
  • Meta Platforms, Inc.
  • SAS Institute, Inc.
  • The MathWorks, Inc.
  • DataRobot, Inc.
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Chapter 1. Market Scope & Methodology
1.1 Market Definition
1.2 Objectives
1.3 Market Scope
1.4 Segmentation
1.4.1 Global Self-supervised Learning Market, by End-use
1.4.2 Global Self-supervised Learning Market, by Technology
1.4.3 Global Self-supervised Learning Market, by Geography
1.5 Methodology for the research
Chapter 2. Market Overview
2.1 Introduction
2.1.1 Overview
2.1.1.1 Market Composition & Scenario
2.2 Key Factors Impacting the Market
2.2.1 Market Drivers
2.2.2 Market Restraints
Chapter 3. Competition Analysis - Global
3.1 KBV Cardinal Matrix
3.2 Recent Industry Wide Strategic Developments
3.2.1 Partnerships, Collaborations and Agreements
3.2.2 Product Launches and Product Expansions
3.2.3 Acquisition and Mergers
3.2.4 Geographical Expansion
3.3 Top Winning Strategies
3.3.1 Key Leading Strategies: Percentage Distribution (2018-2022)
3.3.2 Key Strategic Move: (Product Launches and Product Expansion: 2018, Sep – 2022, Aug) Leading Players
3.3.3 Key Strategic Move: (Mergers & Acquisition: 2019, Jun – 2022, Jul) Leading Players
Chapter 4. Global Self-supervised Learning Market by End-use
4.1 Global BFSI Market by Region
4.2 Global Advertising & Media Market by Region
4.3 Global Software Development (IT) Market by Region
4.4 Global Automotive & Transportation Market by Region
4.5 Global Healthcare Market by Region
4.6 Global Others Market by Region
Chapter 5. Global Self-supervised Learning Market by Technology
5.1 Global Natural Language Processing (NLP) Market by Region
5.2 Global Computer Vision Market by Region
5.3 Global Speech Processing Market by Region
Chapter 6. Global Self-supervised Learning Market by Region
6.1 North America Self-supervised Learning Market
6.1.1 North America Self-supervised Learning Market by End-use
6.1.1.1 North America BFSI Market by Country
6.1.1.2 North America Advertising & Media Market by Country
6.1.1.3 North America Software Development (IT) Market by Country
6.1.1.4 North America Automotive & Transportation Market by Country
6.1.1.5 North America Healthcare Market by Country
6.1.1.6 North America Others Market by Country
6.1.2 North America Self-supervised Learning Market by Technology
6.1.2.1 North America Natural Language Processing (NLP) Market by Country
6.1.2.2 North America Computer Vision Market by Country
6.1.2.3 North America Speech Processing Market by Country
6.1.3 North America Self-supervised Learning Market by Country
6.1.3.1 US Self-supervised Learning Market
6.1.3.1.1 US Self-supervised Learning Market by End-use
6.1.3.1.2 US Self-supervised Learning Market by Technology
6.1.3.2 Canada Self-supervised Learning Market
6.1.3.2.1 Canada Self-supervised Learning Market by End-use
6.1.3.2.2 Canada Self-supervised Learning Market by Technology
6.1.3.3 Mexico Self-supervised Learning Market
6.1.3.3.1 Mexico Self-supervised Learning Market by End-use
6.1.3.3.2 Mexico Self-supervised Learning Market by Technology
6.1.3.4 Rest of North America Self-supervised Learning Market
6.1.3.4.1 Rest of North America Self-supervised Learning Market by End-use
6.1.3.4.2 Rest of North America Self-supervised Learning Market by Technology
6.2 Europe Self-supervised Learning Market
6.2.1 Europe Self-supervised Learning Market by End-use
6.2.1.1 Europe BFSI Market by Country
6.2.1.2 Europe Advertising & Media Market by Country
6.2.1.3 Europe Software Development (IT) Market by Country
6.2.1.4 Europe Automotive & Transportation Market by Country
6.2.1.5 Europe Healthcare Market by Country
6.2.1.6 Europe Others Market by Country
6.2.2 Europe Self-supervised Learning Market by Technology
6.2.2.1 Europe Natural Language Processing (NLP) Market by Country
6.2.2.2 Europe Computer Vision Market by Country
6.2.2.3 Europe Speech Processing Market by Country
6.2.3 Europe Self-supervised Learning Market by Country
6.2.3.1 Germany Self-supervised Learning Market
6.2.3.1.1 Germany Self-supervised Learning Market by End-use
6.2.3.1.2 Germany Self-supervised Learning Market by Technology
6.2.3.2 UK Self-supervised Learning Market
6.2.3.2.1 UK Self-supervised Learning Market by End-use
6.2.3.2.2 UK Self-supervised Learning Market by Technology
6.2.3.3 France Self-supervised Learning Market
6.2.3.3.1 France Self-supervised Learning Market by End-use
6.2.3.3.2 France Self-supervised Learning Market by Technology
6.2.3.4 Russia Self-supervised Learning Market
6.2.3.4.1 Russia Self-supervised Learning Market by End-use
6.2.3.4.2 Russia Self-supervised Learning Market by Technology
6.2.3.5 Spain Self-supervised Learning Market
6.2.3.5.1 Spain Self-supervised Learning Market by End-use
6.2.3.5.2 Spain Self-supervised Learning Market by Technology
6.2.3.6 Italy Self-supervised Learning Market
6.2.3.6.1 Italy Self-supervised Learning Market by End-use
6.2.3.6.2 Italy Self-supervised Learning Market by Technology
6.2.3.7 Rest of Europe Self-supervised Learning Market
6.2.3.7.1 Rest of Europe Self-supervised Learning Market by End-use
6.2.3.7.2 Rest of Europe Self-supervised Learning Market by Technology
6.3 Asia Pacific Self-supervised Learning Market
6.3.1 Asia Pacific Self-supervised Learning Market by End-use
6.3.1.1 Asia Pacific BFSI Market by Country
6.3.1.2 Asia Pacific Advertising & Media Market by Country
6.3.1.3 Asia Pacific Software Development (IT) Market by Country
6.3.1.4 Asia Pacific Automotive & Transportation Market by Country
6.3.1.5 Asia Pacific Healthcare Market by Country
6.3.1.6 Asia Pacific Others Market by Country
6.3.2 Asia Pacific Self-supervised Learning Market by Technology
6.3.2.1 Asia Pacific Natural Language Processing (NLP) Market by Country
6.3.2.2 Asia Pacific Computer Vision Market by Country
6.3.2.3 Asia Pacific Speech Processing Market by Country
6.3.3 Asia Pacific Self-supervised Learning Market by Country
6.3.3.1 China Self-supervised Learning Market
6.3.3.1.1 China Self-supervised Learning Market by End-use
6.3.3.1.2 China Self-supervised Learning Market by Technology
6.3.3.2 Japan Self-supervised Learning Market
6.3.3.2.1 Japan Self-supervised Learning Market by End-use
6.3.3.2.2 Japan Self-supervised Learning Market by Technology
6.3.3.3 India Self-supervised Learning Market
6.3.3.3.1 India Self-supervised Learning Market by End-use
6.3.3.3.2 India Self-supervised Learning Market by Technology
6.3.3.4 South Korea Self-supervised Learning Market
6.3.3.4.1 South Korea Self-supervised Learning Market by End-use
6.3.3.4.2 South Korea Self-supervised Learning Market by Technology
6.3.3.5 Singapore Self-supervised Learning Market
6.3.3.5.1 Singapore Self-supervised Learning Market by End-use
6.3.3.5.2 Singapore Self-supervised Learning Market by Technology
6.3.3.6 Malaysia Self-supervised Learning Market
6.3.3.6.1 Malaysia Self-supervised Learning Market by End-use
6.3.3.6.2 Malaysia Self-supervised Learning Market by Technology
6.3.3.7 Rest of Asia Pacific Self-supervised Learning Market
6.3.3.7.1 Rest of Asia Pacific Self-supervised Learning Market by End-use
6.3.3.7.2 Rest of Asia Pacific Self-supervised Learning Market by Technology
6.4 LAMEA Self-supervised Learning Market
6.4.1 LAMEA Self-supervised Learning Market by End-use
6.4.1.1 LAMEA BFSI Market by Country
6.4.1.2 LAMEA Advertising & Media Market by Country
6.4.1.3 LAMEA Software Development (IT) Market by Country
6.4.1.4 LAMEA Automotive & Transportation Market by Country
6.4.1.5 LAMEA Healthcare Market by Country
6.4.1.6 LAMEA Others Market by Country
6.4.2 LAMEA Self-supervised Learning Market by Technology
6.4.2.1 LAMEA Natural Language Processing (NLP) Market by Country
6.4.2.2 LAMEA Computer Vision Market by Country
6.4.2.3 LAMEA Speech Processing Market by Country
6.4.3 LAMEA Self-supervised Learning Market by Country
6.4.3.1 Brazil Self-supervised Learning Market
6.4.3.1.1 Brazil Self-supervised Learning Market by End-use
6.4.3.1.2 Brazil Self-supervised Learning Market by Technology
6.4.3.2 Argentina Self-supervised Learning Market
6.4.3.2.1 Argentina Self-supervised Learning Market by End-use
6.4.3.2.2 Argentina Self-supervised Learning Market by Technology
6.4.3.3 UAE Self-supervised Learning Market
6.4.3.3.1 UAE Self-supervised Learning Market by End-use
6.4.3.3.2 UAE Self-supervised Learning Market by Technology
6.4.3.4 Saudi Arabia Self-supervised Learning Market
6.4.3.4.1 Saudi Arabia Self-supervised Learning Market by End-use
6.4.3.4.2 Saudi Arabia Self-supervised Learning Market by Technology
6.4.3.5 South Africa Self-supervised Learning Market
6.4.3.5.1 South Africa Self-supervised Learning Market by End-use
6.4.3.5.2 South Africa Self-supervised Learning Market by Technology
6.4.3.6 Nigeria Self-supervised Learning Market
6.4.3.6.1 Nigeria Self-supervised Learning Market by End-use
6.4.3.6.2 Nigeria Self-supervised Learning Market by Technology
6.4.3.7 Rest of LAMEA Self-supervised Learning Market
6.4.3.7.1 Rest of LAMEA Self-supervised Learning Market by End-use
6.4.3.7.2 Rest of LAMEA Self-supervised Learning Market by Technology
Chapter 7. Company Profiles
7.1 Baidu, Inc.
7.1.1 Company Overview
7.1.2 Financial Analysis
7.1.3 Segmental Analysis
7.1.4 Research & Development Expenses
7.1.5 Recent strategies and developments:
7.1.5.1 Product Launches and Product Expansions:
7.1.5.2 Partnerships, Collaborations, and Agreements:
7.1.6 SWOT Analysis
7.2 Apple, Inc.
7.2.1 Company Overview
7.2.2 Financial Analysis
7.2.3 Regional Analysis
7.2.4 Research & Development Expense
7.2.5 Recent strategies and developments:
7.2.5.1 Acquisition and Mergers:
7.2.6 SWOT Analysis
7.3 Tesla, Inc.
7.3.1 Company Overview
7.3.2 Financial Analysis
7.3.3 Segmental and Regional Analysis
7.3.4 Research & Development Expense
7.3.5 Recent strategies and developments:
7.3.5.1 Acquisition and Mergers:
7.3.5.2 Product Launches and Product Expansions:
7.3.6 SWOT Analysis
7.4 IBM Corporation
7.4.1 Company Overview
7.4.2 Financial Analysis
7.4.3 Regional & Segmental Analysis
7.4.4 Research & Development Expenses
7.4.5 Recent strategies and developments:
7.4.5.1 Partnerships, Collaborations & Agreements:
7.4.5.2 Mergers & Acquisition:
7.4.5.3 Product Launches and Product Expansions:
7.4.6 SWOT Analysis
7.5 Microsoft Corporation
7.5.1 Company Overview
7.5.2 Financial Analysis
7.5.3 Segmental and Regional Analysis
7.5.4 Research & Development Expenses
7.5.5 Recent strategies and developments:
7.5.5.1 Partnerships, Collaborations & Agreements:
7.5.5.2 Mergers & Acquisition:
7.5.5.3 Product Launches and Product Expansions:
7.5.5.4 Geographical Expansion:
7.5.6 SWOT Analysis
7.6 Amazon Web Services, Inc. (Amazon.com, Inc.)
7.6.1 Company Overview
7.6.2 Financial Analysis
7.6.3 Segmental Analysis
7.6.4 Recent strategies and developments:
7.6.4.1 Product Launches and Product Expansions:
7.6.4.2 Geographical Expansion:
7.6.5 SWOT Analysis
7.7 Meta Platforms, Inc.
7.7.1 Company Overview
7.7.2 Financial Analysis
7.7.3 Segmental and Regional Analysis
7.7.4 Research & Development Expenses
7.7.5 Recent strategies and developments:
7.7.5.1 Product Launches and Product Expansions:
7.8 SAS Institute, Inc.
7.8.1 Company Overview
7.9 The MathWorks, Inc.
7.9.1 Company Overview
7.9.2 Recent strategies and developments:
7.9.2.1 Product Launches and Product Expansions:
7.10. DataRobot, Inc.
7.10.1 Company Overview
7.10.2 Recent strategies and developments:
7.10.2.1 Product Launches and Product Expansions:
7.10.2.2 Acquisition and Mergers:

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