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Artificial Intelligence In Pharmaceutical Market Report by Technology, Offering, Application, Deployment Mode, Countries and Company Analysis, 2025-2033

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    Report

  • 200 Pages
  • August 2025
  • Region: Global
  • Renub Research
  • ID: 6169758
Artificial Intelligence In Pharmaceutical Market Analysis (2025-2033)
Artificial Intelligence in the pharmaceutical industry is expected to reach USD 3.24 billion by the year 2024, growing sizably US$ 65.83 billion by the year 2033. The pharmaceutical industry is to experience a compound annual growth rate (CAGR) of more than 39.74 % in the forecasting period from 2025 to 2033. Merging AI technologies has the potential to revolutionize drug discovery, improve patient outcomes, and drive the efficiency of operations in the pharmaceutical sector.

Artificial Intelligence In Pharmaceutical Market Report by Technology (Machine Learning, Deep Learning, Natural Language Processing, Computer Vision, Generative AI, Other AI Techniques), Offering (Software Platforms, Services (AI-aaS, Custom Projects)), Application (Drug Discovery & Pre-clinical Development, Clinical-Trial Design & Patient Recruitment, Manufacturing & Quality Control, Pharmacovigilance & Safety Monitoring, Sales, Marketing & Commercial Analytics, Laboratory Automation, Other Applications), Deployment Mode (Cloud-based, On-premise / Hybrid), Countries and Company Analysis, 2025-2033.

Artificial Intelligence In Pharmaceutical Market Outlook

Artificial Intelligence (AI) in pharmaceuticals is defined as the application of sophisticated computing techniques to improve drug development, discovery, and patient care. By applying methodologies like machine learning, natural language processing, and data analytics, AI supports researchers in forecasting drug interactions, streamlining clinical trials, and tailoring treatment regimens.

One of the key uses of AI in this field is in drug discovery, where it accelerates the identification of promising drug candidates by analyzing vast datasets and biological information, significantly reducing the time and cost involved. AI also plays a crucial role in clinical trial management, helping to identify suitable patient populations and optimize trial designs, which enhances the likelihood of success.

The use of AI in the pharma space is gaining popularity at a fast rate with pressure for innovation in healthcare and enhanced data availability. With pharma companies adopting the technology, they stand to enhance therapeutic results, increase efficiency, and eventually revolutionize patient care.

Drivers of Growth in Artificial Intelligence in Pharmaceutical Market

Faster Drug Discovery and Development

AI is revolutionizing drug discovery by cutting time and expenditures involved in the identification of prospective drug candidates. Machine learning algorithms are able to process massive datasets, make predictions on molecular interactions, and refine drug design with increased accuracy. This speeds up pre-clinical research and allows for quicker movement to clinical trials. With increased R&D spending and demands for compressing timelines, AI-based platforms are becoming ubiquitous. Large drug companies are collaborating with AI companies to optimize discovery pipelines. The speed, predictive power, and cost reduction of AI are powerful stimulants for its use, making it an essential tool for future pharma innovation. Jan 2025, Genentech, a Roche Group member, has arrived at an inflection point where artificial intelligence (AI) and machine learning (ML) are utilized to transform the process of drug discovery. 'Lab in a loop' is an apparatus through which you introduce generative AI to drug R&D.

Advances in Personalized Medicine

Increased interest in personalized medicine is driving AI uptake in pharma. AI facilitates the combination and interpretation of genetic, clinical, and lifestyle information to determine appropriate personalized treatment.". By anticipating patient reactions to medications, AI enables the creation of targeted therapies with improved efficacy and less toxicity. It is especially useful in oncology, orphan diseases, and chronic illnesses. As patients and regulators focus on treatments tailored to an individual, AI enables pharma companies to create precision medicines and companion diagnostics. The drive toward personalized healthcare solutions guarantees AI as the force behind pharmaceutical innovations worldwide. October 2024, BioNTech and its artificial intelligence affiliate InstaDeep revealed its AI plan at an event hosted under the title "AI Day." BioNTech and the companies will employ fresh models and supercomputers to speed up the creation of vaccines and cancer treatments. With InstaDeep as its in-house AI expert, BioNTech seeks to expand the application of AI in crafting customized vaccines and precision treatments. Of particular emphasis is the DeepChain platform, which leverages diverse omics data in drug design.

Increasing Collaboration and Investments

Pharmaceutical firms, AI start-ups, and technology vendors are collaborating strategically to drive business growth and innovation. Pharmaceutical majors around the world are investing heavily in AI platforms to improve the efficiency of clinical trials, biomarker identification, and data handling. Venture capital and government-supported programs are also enhancing the development of AI-based solutions in life sciences. For example, partnerships are directed towards utilizing AI for the management of large amounts of genomic sequencing and clinical research-generated data. The investments not only enhance AI adoption but also speed up commercialization of new drugs. The robust ecosystem of partnership and funding is a critical growth engine for the AI pharmaceutical market. March 2022, Insilico Medicine strategically partnered with EQRx with the aim of integrating their respective expertise in de novo small molecule design and commercialization.

Challenges in Artificial Intelligence in Pharmaceutical Market

Data Privacy and Regulatory Compliance

One of the primary challenges in the use of AI in pharmaceuticals is guaranteeing data privacy and compliance with high regulatory standards. Pharmaceutical research depends on sensitive patient health information and genomic information, which needs to meet regulation like HIPAA and GDPR. Any unauthorized access or misuse of data can lead to major legal and ethical issues. In addition, regulatory agencies are still formulating clear guidelines for AI use in drug development, resulting in uncertainty for the stakeholders. Maintaining transparency, explainability, and good AI practices is imperative to surmounting these challenges and earning the trust of regulators, healthcare providers, and patients alike.

High Implementation Costs and Complexity

AI adoption in the pharmaceutical industry is, however, slowed down by high initial costs, infrastructure demands, and technical complexity. Creating and integrating AI platforms involves massive investment in computing capabilities, technical expertise, and data management systems. Small and medium-sized pharma firms may be challenged in implementation from a financial and technical perspective. Further, it can be difficult to integrate AI into established workflows because of legacy systems and non-standardized processes.

These issues hinder mass adoption, especially in the developing world. Resolving cost issues and ease of integration will be important to realizing the full potential of AI in pharma.

Artificial Intelligence in the Pharmaceutical Market

AI in the pharmaceutical industry is growing fast as firms are adopting sophisticated technologies to make drug discovery, clinical trials, and production processes more efficient. AI provides sophisticated means to process large sets of data, forecast drug interactions, and enhance patient outcomes. Pharmaceutical companies are investing in AI collaborations to speed up time-to-market for new medicines while keeping costs low. Uses vary from identification of biomarkers to recruitment of patients for clinical trials, and AI enhances efficiency throughout the value chain. In spite of hurdles like data protection and the cost of implementation, robust regulatory and investment support are boosting adoption and making AI a key pillar of pharma innovation.

Generative AI in Pharmaceutical Market

Generative AI is proving to be a revolutionary weapon in the pharma industry, especially in drug discovery and molecular modeling. Through the emulation of millions of possible molecular shapes, generative AI allows scientists to screen new compounds faster than ever before using conventional methods. This technology reduces discovery timelines and maximizes the chances of discovering successful drug candidates. Generative AI is also being used in protein folding, formulation design, and clinical trial design. More and more pharmaceutical firms are partnering with AI companies to take advantage of these developments. As generative AI grows, its capabilities to transform innovation and lower R&D expenses will propel substantial market growth.

Deep Learning Pharmaceutical Market

Deep learning plays a transformative role in pharmaceutical research by supporting detailed data examination and pattern detection. It is extensively used in genomics, drug repurposing, and image-based analysis of trial data. Deep learning algorithms have the ability to process unstructured data like medical images, electronic health records, and research publications to yield insights for drug development. In oncology and orphan diseases, these algorithms are advancing early diagnosis and treatment individualization. Pharmaceutical companies increasingly utilize deep learning for predictive analytics in drug efficacy and safety. As data continue to expand, deep learning will continue to be an essential driver of pharmaceutical innovation.

Artificial Intelligence in Pharmaceutical Software Platforms Market

Artificial intelligence-powered software platforms form the nucleus of the pharmaceutical sector's digitalization. With extensive integration of drug discovery, clinical trial management, and regulatory compliance tools, software platforms provide end-to-end coverage of the R&D pipeline. By bringing big data analytics and machine learning models under one umbrella, they optimize processes, eliminate redundancies, and enhance decision-making. Pharmaceutical firms widely embrace these platforms for scalable and customized solutions in particular therapeutic domains. With increasing requests for cloud integration, interoperability, and real-time intelligence, AI software platforms are unavoidable. Their contribution to accelerating the efficiency of research and lowering costs secures robust adoption among pharmaceutical companies worldwide.

Artificial Intelligence in Pharmaceutical Laboratory Automation Market

AI is transforming laboratory automation by improving accuracy, efficiency, and scalability in pharmaceutical research. AI-powered automated labs are able to perform high-throughput screening, interpret complex data sets, and optimize experimental workflow. This minimizes manpower, accelerates drug discovery, and decreases errors. Robotic platforms with AI algorithms are becoming more common in repetitive tasks like pipetting, sample processing, and data gathering. AI-powered lab automation increases productivity and facilitates real-time decision-making. As pharmaceutical companies prioritize efficiency and reproducibility, AI-driven lab automation is becoming a key investment area, transforming how research and development is conducted globally.

Cloud-based Artificial Intelligence in Pharmaceutical Market

Cloud-based AI solutions are gaining traction in the pharmaceutical sector due to their scalability, flexibility, and cost-effectiveness. By leveraging cloud infrastructure, pharmaceutical companies can store and analyze vast datasets without investing heavily in local IT infrastructure. Cloud platforms facilitate in real-time collaboration between global research teams, speeding up drug discovery and clinical trial cycles. They also provide effortless integration with sophisticated AI tools, enhancing availability for large companies as well as smaller biotechnology firms. Improved cybersecurity and compliance capabilities are yet another driver of growth. With the industry moving towards digital transformation, cloud-based AI platforms are poised to become a requirement for pharmaceutical efficiency and innovation.

United States Artificial Intelligence in Pharmaceutical Market

United States dominates the world AI in pharma market, fueled by high R&D spends, sophisticated healthcare infrastructure, and a thriving AI startup ecosystem. Large pharma firms are collaborating with AI companies to speed up drug discovery and clinical trials. The U.S. regulatory framework is shaping up to facilitate AI use, further cementing its position in the industry. Staggering demand for customized medicine and the huge population of patients in the country create a fertile bed for AI-based solutions. With ongoing innovation, government encouragement, and robust venture capital backing, the U.S. is a leader in pushing AI deployment within the pharma sector.

Germany Artificial Intelligence in Pharmaceutical Market

Germany is a major European hub for AI in the pharma industry, aided by its robust healthcare system, research-intensive institutions, and government programs encouraging digitalization. Pharmaceutical firms in Germany are increasingly embracing AI to streamline drug discovery, clinical studies, and production. The country's emphasis on precision medicine and biotechnology further enhances AI applications. Parnerships among universities, AI firms, and pharma titans are driving innovation in genomics and targeted therapies. Regulatory systems in sync with EU norms guarantee humane AI practices. With its technological and research leadership, Germany is at the forefront of developing the European AI pharma marketplace.

India Artificial Intelligence in Pharmaceutical Market

India's AI in the pharma market is expanding fast, fueled by its huge healthcare sector, burgeoning pharma industry, and government endorsement of digital healthcare programs. Indian pharma companies are using AI for drug repurposing, generics, and managing clinical trials. Cost competitiveness and an increasing number of AI professionals render India a good destination for AI-powered pharmaceutical research. Startups and multinational corporations are increasingly investing in partnerships for increasing data analytics and drug discovery. Despite infrastructural issues, growing attention on cost-effective healthcare solutions and digital transformations makes India a high-growth market for AI in pharmaceuticals.

Saudi Arabia Artificial Intelligence in Pharmaceutical Market

Saudi Arabia is becoming an exciting market for AI in pharmaceuticals, as part of its Vision 2030 economic diversification and healthcare system strengthening. The government is making significant investments in digital health infrastructure and AI-enabled research programs. Pharmaceutical corporations are embracing AI to boost clinical trials, improve drug safety, and facilitate precision medicine. Partnerships with foreign AI companies are moving technology transfer and knowledge transfer into high gear. While the market is yet to grow, the rising investment, conducive policies, and enhanced need for cutting-edge health solutions make Saudi Arabia a forthcoming leader in the global AI pharmaceutical market.

Market Segmentation

Technology

  • Machine Learning
  • Deep Learning
  • Natural Language Processing
  • Computer Vision
  • Generative AI
  • Other AI Techniques

Offering

  • Software Platforms
  • Services (AI-aaS, Custom Projects)

Application

  • Drug Discovery & Pre-clinical Development
  • Clinical-Trial Design & Patient Recruitment
  • Manufacturing & Quality Control
  • Pharmacovigilance & Safety Monitoring
  • Sales, Marketing & Commercial Analytics
  • Laboratory Automation
  • Other Applications

Deployment Mode

  • Cloud-based
  • On-premise / Hybrid

Country

North America

  • United States
  • Canada

Europe

  • France
  • Germany
  • Italy
  • Spain
  • United Kingdom
  • Belgium
  • Netherlands
  • Turkey

Asia Pacific

  • China
  • Japan
  • India
  • South Korea
  • Thailand
  • Malaysia
  • Indonesia
  • Australia
  • New Zealand

Latin America

  • Brazil
  • Mexico
  • Argentina

Middle East & Africa

  • Saudi Arabia
  • UAE
  • South Africa

All companies have been covered with 5 Viewpoints

  • Overviews
  • Key Person
  • Recent Developments
  • SWOT Analysis
  • Revenue Analysis

Key Players Analysis

1. Alphabet Inc. (Isomorphic Labs)
2. Exscientia PLC
3. Recursion Pharmaceuticals
4. Insilico Medicine
5. BenevolentAI
6. Atomwise Inc.
7. XtalPi Inc.
8. Deep Genomics
9. Cloud Pharmaceuticals Inc.
10. Cyclica Inc.

Table of Contents

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. Global Artificial Intelligence (AI) In Pharmaceutical Market
5.1 Historical Market Trends
5.2 Market Forecast
6. Market Share Analysis
6.1 By Technology
6.2 By Offering
6.3 By Application
6.4 By Deployment Mode
6.5 By Countries
7. Technology
7.1 Machine Learning
7.1.1 Market Analysis
7.1.2 Market Size & Forecast
7.2 Deep Learning
7.2.1 Market Analysis
7.2.2 Market Size & Forecast
7.3 Natural Language Processing
7.3.1 Market Analysis
7.3.2 Market Size & Forecast
7.4 Computer Vision
7.4.1 Market Analysis
7.4.2 Market Size & Forecast
7.5 Generative AI
7.5.1 Market Analysis
7.5.2 Market Size & Forecast
7.6 Other AI Techniques
7.6.1 Market Analysis
7.6.2 Market Size & Forecast
8. Offering
8.1 Software Platforms
8.1.1 Market Analysis
8.1.2 Market Size & Forecast
8.2 Services (AI-aaS, Custom Projects)
8.2.1 Market Analysis
8.2.2 Market Size & Forecast
9. Application
9.1 Drug Discovery & Pre-clinical Development
9.1.1 Market Analysis
9.1.2 Market Size & Forecast
9.2 Clinical-Trial Design & Patient Recruitment
9.2.1 Market Analysis
9.2.2 Market Size & Forecast
9.3 Manufacturing & Quality Control
9.3.1 Market Analysis
9.3.2 Market Size & Forecast
9.4 Pharmacovigilance & Safety Monitoring
9.4.1 Market Analysis
9.4.2 Market Size & Forecast
9.5 Sales, Marketing & Commercial Analytics
9.5.1 Market Analysis
9.5.2 Market Size & Forecast
9.6 Laboratory Automation
9.6.1 Market Analysis
9.6.2 Market Size & Forecast
9.7 Other Applications
9.7.1 Market Analysis
9.7.2 Market Size & Forecast
10. Deployment Mode
10.1 Cloud-based
10.1.1 Market Analysis
10.1.2 Market Size & Forecast
10.2 On-premise / Hybrid
10.2.1 Market Analysis
10.2.2 Market Size & Forecast
11. Countries
11.1 North America
11.1.1 United States
11.1.1.1 Market Analysis
11.1.1.2 Market Size & Forecast
11.1.2 Canada
11.1.2.1 Market Analysis
11.1.2.2 Market Size & Forecast
11.2 Europe
11.2.1 France
11.2.1.1 Market Analysis
11.2.1.2 Market Size & Forecast
11.2.2 Germany
11.2.2.1 Market Analysis
11.2.2.2 Market Size & Forecast
11.2.3 Italy
11.2.3.1 Market Analysis
11.2.3.2 Market Size & Forecast
11.2.4 Spain
11.2.4.1 Market Analysis
11.2.4.2 Market Size & Forecast
11.2.5 United Kingdom
11.2.5.1 Market Analysis
11.2.5.2 Market Size & Forecast
11.2.6 Belgium
11.2.6.1 Market Analysis
11.2.6.2 Market Size & Forecast
11.2.7 Netherlands
11.2.7.1 Market Analysis
11.2.7.2 Market Size & Forecast
11.2.8 Turkey
11.2.8.1 Market Analysis
11.2.8.2 Market Size & Forecast
11.3 Asia Pacific
11.3.1 China
11.3.1.1 Market Analysis
11.3.1.2 Market Size & Forecast
11.3.2 Japan
11.3.2.1 Market Analysis
11.3.2.2 Market Size & Forecast
11.3.3 India
11.3.3.1 Market Analysis
11.3.3.2 Market Size & Forecast
11.3.4 South Korea
11.3.4.1 Market Analysis
11.3.4.2 Market Size & Forecast
11.3.5 Thailand
11.3.5.1 Market Analysis
11.3.5.2 Market Size & Forecast
11.3.6 Malaysia
11.3.6.1 Market Analysis
11.3.6.2 Market Size & Forecast
11.3.7 Indonesia
11.3.7.1 Market Analysis
11.3.7.2 Market Size & Forecast
11.3.8 Australia
11.3.8.1 Market Analysis
11.3.8.2 Market Size & Forecast
11.3.9 New Zealand
11.3.9.1 Market Analysis
11.3.9.2 Market Size & Forecast
11.4 Latin America
11.4.1 Brazil
11.4.1.1 Market Analysis
11.4.1.2 Market Size & Forecast
11.4.2 Mexico
11.4.2.1 Market Analysis
11.4.2.2 Market Size & Forecast
11.4.3 Argentina
11.4.3.1 Market Analysis
11.4.3.2 Market Size & Forecast
11.5 Middle East & Africa
11.5.1 Saudi Arabia
11.5.1.1 Market Analysis
11.5.1.2 Market Size & Forecast
11.5.2 UAE
11.5.2.1 Market Analysis
11.5.2.2 Market Size & Forecast
11.5.3 South Africa
11.5.3.1 Market Analysis
11.5.3.2 Market Size & Forecast
12. Value Chain Analysis
13. Porter's Five Forces Analysis
13.1 Bargaining Power of Buyers
13.2 Bargaining Power of Suppliers
13.3 Degree of Competition
13.4 Threat of New Entrants
13.5 Threat of Substitutes
14. SWOT Analysis
14.1 Strength
14.2 Weakness
14.3 Opportunity
14.4 Threats
15. Pricing Benchmark Analysis
15.1 Alphabet Inc. (Isomorphic Labs)
15.2 Exscientia PLC
15.3 Recursion Pharmaceuticals
15.4 Insilico Medicine
15.5 BenevolentAI
15.6 Atomwise Inc.
15.7 XtalPi Inc.
15.8 Deep Genomics
15.9 Cloud Pharmaceuticals Inc.
15.10 Cyclica Inc.
16. Key Players Analysis
16.1 Alphabet Inc. (Isomorphic Labs)
16.1.1 Overviews
16.1.2 Key Person
16.1.3 Recent Developments
16.1.4 SWOT Analysis
16.1.5 Revenue Analysis
16.2 Exscientia PLC
16.2.1 Overviews
16.2.2 Key Person
16.2.3 Recent Developments
16.2.4 SWOT Analysis
16.2.5 Revenue Analysis
16.3 Recursion Pharmaceuticals
16.3.1 Overviews
16.3.2 Key Person
16.3.3 Recent Developments
16.3.4 SWOT Analysis
16.3.5 Revenue Analysis
16.4 Insilico Medicine
16.4.1 Overviews
16.4.2 Key Person
16.4.3 Recent Developments
16.4.4 SWOT Analysis
16.4.5 Revenue Analysis
16.5 BenevolentAI
16.5.1 Overviews
16.5.2 Key Person
16.5.3 Recent Developments
16.5.4 SWOT Analysis
16.5.5 Revenue Analysis
16.6 Atomwise Inc.
16.6.1 Overviews
16.6.2 Key Person
16.6.3 Recent Developments
16.6.4 SWOT Analysis
16.6.5 Revenue Analysis
16.7 XtalPi Inc.
16.7.1 Overviews
16.7.2 Key Person
16.7.3 Recent Developments
16.7.4 SWOT Analysis
16.7.5 Revenue Analysis
16.8 Deep Genomics
16.8.1 Overviews
16.8.2 Key Person
16.8.3 Recent Developments
16.8.4 SWOT Analysis
16.8.5 Revenue Analysis
16.9 Cloud Pharmaceuticals Inc.
16.9.1 Overviews
16.9.2 Key Person
16.9.3 Recent Developments
16.9.4 SWOT Analysis
16.9.5 Revenue Analysis
16.10 Cyclica Inc.
16.10.1 Overviews
16.10.2 Key Person
16.10.3 Recent Developments
16.10.4 SWOT Analysis
16.10.5 Revenue Analysis

Companies Mentioned

  • Alphabet Inc. (Isomorphic Labs)
  • Exscientia PLC
  • Recursion Pharmaceuticals
  • Insilico Medicine
  • BenevolentAI
  • Atomwise Inc.
  • XtalPi Inc.
  • Deep Genomics
  • Cloud Pharmaceuticals Inc.
  • Cyclica Inc.

Methodology

In this report, for analyzing the future trends for the studied market during the forecast period, the publisher has incorporated rigorous statistical and econometric methods, further scrutinized by secondary, primary sources and by in-house experts, supported through their extensive data intelligence repository. The market is studied holistically from both demand and supply-side perspectives. This is carried out to analyze both end-user and producer behavior patterns, in the review period, which affects price, demand and consumption trends. As the study demands to analyze the long-term nature of the market, the identification of factors influencing the market is based on the fundamentality of the study market.

Through secondary and primary researches, which largely include interviews with industry participants, reliable statistics, and regional intelligence, are identified and are transformed to quantitative data through data extraction, and further applied for inferential purposes. The publisher's in-house industry experts play an instrumental role in designing analytic tools and models, tailored to the requirements of a particular industry segment. These analytical tools and models sanitize the data & statistics and enhance the accuracy of their recommendations and advice.

Primary Research

The primary purpose of this phase is to extract qualitative information regarding the market from the key industry leaders. The primary research efforts include reaching out to participants through mail, tele-conversations, referrals, professional networks, and face-to-face interactions. The publisher also established professional corporate relations with various companies that allow us greater flexibility for reaching out to industry participants and commentators for interviews and discussions, fulfilling the following functions:

  • Validates and improves the data quality and strengthens research proceeds
  • Further develop the analyst team’s market understanding and expertise
  • Supplies authentic information about market size, share, growth, and forecast

The researcher's primary research interview and discussion panels are typically composed of the most experienced industry members. These participants include, however, are not limited to:

  • Chief executives and VPs of leading corporations specific to the industry
  • Product and sales managers or country heads; channel partners and top level distributors; banking, investment, and valuation experts
  • Key opinion leaders (KOLs)

Secondary Research

The publisher refers to a broad array of industry sources for their secondary research, which typically includes, however, is not limited to:

  • Company SEC filings, annual reports, company websites, broker & financial reports, and investor presentations for competitive scenario and shape of the industry
  • Patent and regulatory databases for understanding of technical & legal developments
  • Scientific and technical writings for product information and related preemptions
  • Regional government and statistical databases for macro analysis
  • Authentic new articles, webcasts, and other related releases for market evaluation
  • Internal and external proprietary databases, key market indicators, and relevant press releases for market estimates and forecasts
 

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