AI Insights
Artificial Intelligence in Drug Discovery Market Future
The latest Artificial Intelligence in Drug Discovery Market research report offers crucial insights into how the industry is evolving, highlighting key drivers of growth and the main revenue streams expected between 2025 and 2032. It analyzes market size, revenue, production, and CAGR using validated methodologies to ensure precision. The Industry compass guiding business through the complexities of the market, presenting not only the current landscape but also the latest innovations shaping its future. This report highlights becomes a strategically for companies, stakeholders, and industry players, offering a comprehensive understanding of where the market stands and where it’s headed.
Request a Sample Copy of this Report at: https://www.coherentmarketinsights.com/insight/request-sample/6125
Focused on growth and future opportunities, this report is a go-to resource for industry leaders, investors, and decision-makers. With visuals, charts, and data-driven insights, the Artificial Intelligence in Drug Discovery Market has experienced rapid growth fueled by rising demand and innovation. This analysis gives you the competitive edge with actionable strategies backed by real data.
Market Scope:
This report segments the Artificial Intelligence in Drug Discovery Market comprehensively. The regional market sizes, concerning products by type, by application, and by players, are also provided. For a more in-depth understanding of the market, the report provides profiles of the competitive landscape, key competitors, and their respective market ranks. The report also discusses technological trends and new product developments. The financial performance of key players is assessed, including gross profits, sales volumes, and manufacturing costs. Analytical tools like SWOT analysis and Porter’s Five Forces are used to evaluate market
Market Dynamics:
Artificial Intelligence in Drug Discovery Market reports examine current and historical data to analyze market trends. It offers information on the factors that will influence the market’s growth between 2025 and 2032, both qualitatively and quantitatively. This study paper discusses the market capacity and consumption potential of significant businesses.
An extensive examination of the market’s size, share, growth, opportunity, competitive environment, manufacturers, players, and vendors, as well as its segments and sub-segments, is provided by this intelligence research. The market drivers, difficulties (past and present), revenue growth, roadmap for the future, standards, deployment models, and forecast analysis are all highlighted in the report.
Top Companies Covered In This Artificial Intelligence in Drug Discovery Market Report:
IBM Corporation (IBM Watson Health), Exscientia, GNS Healthcare, Alphabet, Inc. (DEEPMIND), Benevolent AI, Biosymetrics, Euretos, Berg LLC., Atomwise, Inc., Insitro, and among others.
The Artificial Intelligence in Drug Discovery Market Insights is projected to experience substantial growth during the forecast. The market is expected to expand steadily, with major players increasingly adopting strategic initiatives to drive growth beyond initial forecasts. The competitive analysis highlights key industry players, their innovations, and business strategies. Additionally, the report identifies the most promising long-term growth opportunities and explores the latest advancements in processes and product development.
The research enables marketers to be abreast of emerging trends and Industry segments in which they may experience a sharp decline in market share. Learn about your true competitors in the market, as well as the market position, market share percentage, and segmented revenue of the keyword market.
Get Full Report: https://www.coherentmarketinsights.com/market-insight/artificial-intelligence-in-drug-discovery-market-6125?utm_source=openpr.com&utm_medium=referral&utm
⏩ Comprehensive segmentation and classification of the report:
By Therapeutic Space: Oncology, Neurodegenerative Diseases, Cardiovascular Diseases, Metabolic Diseases, Infectious Diseases, and Others
By Application: Drug Optimization & Repurposing, Preclinical Testing, and Others
Geographical Landscape of the Artificial Intelligence in Drug Discovery Market:
◘ North America (U.S., Canada, Mexico)
◘ Europe (Germany, U.K., France, Russia, Italy, Spain)
◘ Asia-Pacific (China, India, Japan, Australia, Singapore, NZ)
◘ South America (Argentina, Brazil)
◘ Middle East & Africa (Saudi Arabia, Turkey, UAE, Africa)
Report Drivers and Trends Analysis:
The report also discusses the factors driving and restraining market growth, as well as their specific impact on demand over the forecast period. Also highlighted in this report are growth factors, developments, trends, challenges, limitations, and growth opportunities. This section highlights emerging Artificial Intelligence in Drug Discovery Market trends and changing dynamics. Furthermore, the study provides a forward-looking perspective on various factors that are expected to boost the market’s overall growth.
✅ Key Benefits:
✦ Quantitative analysis of market segments, trends, estimations, and dynamics (2025-2032).
✦ Insights into key drivers, restraints, and opportunities.
✦ Porter’s Five Forces analysis for strategic decision-making.
✦ Segmentation analysis to identify market opportunities.
✦ Revenue mapping of major countries by region.
✦ Benchmarking and positioning of market players.
✦ Analysis of regional and global trends, key players, and growth strategies.
Why You Should Buy This Report:
■ The impact of technological advancements and emerging industry trends
■ Regulatory and policy shifts and their implications for stakeholders
■ Competitive landscape analysis, including key player profiles and growth strategies
■ Major market challenges like supply chain issues and evolving consumer behavior
■ Opportunities in new products, applications, and potential investment areas
This report delivers actionable insights via secondary research, direct stakeholder interviews, and expert validation through Coherent Market Insights’ extensive regional database.
📌 Get Instant Access! Purchase Research Report and Receive a 25% Discount! https://www.coherentmarketinsights.com/insight/buy-now/6125
💬 FAQ’s
Q.1 What are the main factors influencing the Artificial Intelligence in Drug Discovery Market?
Q.2 Which companies are the major sources in this industry?
Q.3 What are the market’s opportunities, risks, and general structure?
Q.4 Which of the top Artificial Intelligence in Drug Discovery Market companies compare in terms of sales, revenue, and prices?
Q.5 How are market types and applications and deals, revenue, and value explored?
Q.6 What does a business area’s assessment of agreements, income, and value implicate?
✍️ PR Authored By:
Alice Mutum is a seasoned senior content editor at Coherent Market Insights, leveraging extensive expertise gained from her previous role as a content writer. With seven years in content development, Alice masterfully employs SEO best practices and cutting-edge digital marketing strategies to craft high-ranking, impactful content. As an editor, she meticulously ensures flawless grammar and punctuation, precise data accuracy, and perfect alignment with audience needs in every research report.
About Us:
With a proven excellence in market research, Coherent Market Insights leads into data and analytics, audience measurement, consumer behaviors, and market trend analysis. From shorter dispatch to in-depth insights, CMI has exceled in offering research, analytics, and consumer-focused shifts for nearly a decade. With cutting-edge syndicated tools and custom-made research services, we empower businesses to move in the direction of growth. We are multifunctional in our work scope and have 450+ seasoned consultants, analysts, and researchers across 26+ industries spread out in 32+ countries.
☎️ Contact Us:
533 Airport Boulevard, Suite 400, Burlingame, CA 94010, United States
United States of America: + 12524771362
United Kingdom: UK Number: +442039578553
Australia: +61-2-4786-0457
India: +91-848-285-0837
Email: sales@coherentmarketinsights.com
This release was published on openPR.
AI Insights
Lotlinx wins “LLM Innovation Award” in 2025 Artificial Intelligence Breakthrough Awards Program
DETROIT, July 09, 2025 (GLOBE NEWSWIRE) — Lotlinx, the auto industry’s leading VIN-specific data company for dealership inventory management, today announced that its advanced generative AI inventory and pricing management solution has been selected as winner of the “LLM Innovation Award” in the 8th annual AI Breakthrough Awards program conducted by AI Breakthrough, a leading market intelligence organization that recognizes the top companies, technologies and products in the global Artificial Intelligence (AI) market today.
As the auto retail industry faces increasing challenges in inventory management, pricing optimization, and market adaptability—particularly in light of automotive tariffs that directly impact vehicle costs and dealership profitability—dealers are seeking new ways to navigate complex pricing environments. Tariffs and economic pressures are driving up the price of imported vehicles and parts, squeezing profit margins, shifting consumer demand, and requiring real-time recalibration of inventory strategies.
While many dealerships strive to enhance profitability through data-driven decision-making, traditional inventory and pricing management solutions often rely on static reports and historical data, leaving dealers reactive rather than proactive. These outdated tools fail to capture and analyze the dynamic factors affecting vehicle pricing, such as tariffs, economic conditions, competitor activity, and regional demand fluctuations. As a result, dealers risk overpricing or underpricing vehicles, leading to lost revenue opportunities, inventory stagnation, and eroded margins.
Lotlinx’s advanced Vertical AI solution addresses these challenges by leveraging Large Language Models (LLMs) and Agentic AI to analyze millions of data points per vehicle in real time, delivering region-specific, data-backed recommendations tailored to the dealer’s unique market conditions.
At its core is the Agentic AI-powered virtual assistant, designed as a Virtual Internet Sales Manager that understands complex inventory and pricing scenarios and provides intelligent, automated guidance. After analyzing vehicle performance within the local market, the assistant suggests proactive actions, including strategic pricing adjustments, competitive positioning, follow-up reminders, and demand-based inventory alerts. The intelligent system continuously monitors sales velocity, market conditions, and pricing trends down to the zip code level.
By seamlessly integrating into dealership workflows, the solution ensures that data-backed insights are immediately actionable, eliminating guesswork and enabling dealers to proactively optimize inventory and pricing strategies. In addition, the solution also delivers real-time interpretation and automated recommendations for active, strategic decision-making.
“We’re thrilled to accept this award from AI Breakthrough. The strength of our AI technology is that it gives control back to dealers through an automated, proactive approach that helps them maintain profitability in an era where external economic forces add layers of complexity to pricing and inventory strategies,” said Len Short, Executive Chairman of Lotlinx. “By equipping dealers with a powerful, AI-driven inventory and pricing management system, we are modernizing the auto retail industry with predictive decision-making capabilities that drive efficiency, profitability, and strategic agility in an increasingly volatile market.”
The AI Breakthrough Awards shine a spotlight on the boldest innovators and most impactful technologies leading the charge in AI across a comprehensive set of categories, including Generative AI, Computer Vision, AIOps, Agentic AI, Robotics, Natural Language Processing, industry-specific AI applications and many more. This year’s program attracted more than 5,000 nominations from over 20 different countries throughout the world, underscoring the explosive growth and global importance of AI as a defining technology of the 21st century.
“Lotlinx’s solution provides forward-looking, AI-driven insights that help dealers adapt to the always changing economic and regulatory landscape. Traditional inventory and pricing solutions don’t capture and analyze dynamic factors like tariffs, economic conditions, competitor activity, and fluctuating regional demand, leaving dealers to struggle with pricing vehicles competitively, inventory strategy, and adjusting to rapid market changes,” said Steve Johansson, managing director, AI Breakthrough. “This technology ensures that dealerships are no longer constrained by outdated, reactive management strategies but instead gain access to an intelligent, automated partner that enhances decision-making, boosts profitability, and streamlines operations. We’re pleased to recognize Lotlinx with the ‘LLM Innovation Award!’”
About Lotlinx
Founded in 2012 and based out of Peterborough, New Hampshire, Lotlinx is the automotive industry leader in VIN-specific data solutions for inventory risk management. The Lotlinx platform provides automobile dealers and manufacturers with enhanced operational control over their retail business. Leveraging state-of-the-art real-time data and machine learning technology, Lotlinx provides a precision retailing solution that enables dealers to automatically adapt to market dynamics, mitigating inventory risk through VIN-specific strategies. To learn more about Lotlinx, please visit www.lotlinx.com.
About AI Breakthrough
Part of Tech Breakthrough, a leading market intelligence and recognition platform for global technology innovation and leadership, the AI Breakthrough Awards program is devoted to honoring excellence in Artificial Intelligence technologies, services, companies, and products. The AI Breakthrough Awards provide public recognition for the achievements of AI companies and products in categories including Generative AI, Machine Learning, AI Platforms, Robotics, Business Intelligence, AI Hardware, Computer Vision and more. For more information visit AIBreakthroughAwards.com
Tech Breakthrough LLC does not endorse any vendor, product or service depicted in our recognition programs, and does not advise technology users to select only those vendors with award designations. Tech Breakthrough LLC recognition consists of the opinions of the Tech Breakthrough LLC organization and should not be construed as statements of fact. Tech Breakthrough LLC disclaims all warranties, expressed or implied, with respect to this recognition program, including any warranties of merchantability or fitness for a particular purpose.
AI Insights
AI-using managers rely on the tool to decide who gets promoted or fired, survey shows
Among the 6 in 10 managers who use artificial intelligence tools at work, nearly all — 94% — use them to make decisions about their direct reports, according to a June 30 report from Resume Builder.
When making personnel decisions, managers use AI to determine raises (78%), promotions (77%), layoffs (66%) and terminations (64%). More than 7 in 10 of the leaders who said they use AI to help manage their teams expressed confidence in the technology making fair and unbiased decisions about employees.
However, only 32% of those using AI to manage said they’ve received formal training on how to do so ethically, and 43% said they’ve received informal guidance. About a quarter said they haven’t received any training.
Of the managers turning to AI, 46% said they were told to evaluate whether AI could replace a direct report’s position. Among those, 57% said they decided AI could replace the position, and 43% decided to replace the human position with AI.
“It’s essential not to lose the ‘people’ in people management. While AI can support data-driven insights, it lacks context, empathy and judgment,” said Stacie Haller, chief career advisor at Resume Builder.
“AI outcomes reflect the data it’s given, which can be flawed, biased or manipulated,” Haller said. “Organizations have a responsibility to implement AI ethically to avoid legal liability, protect their culture and maintain trust among employees.”
In the survey of more than 1,300 U.S. managers with direct reports, more than 1 in 5 using AI to lead said they frequently let AI make final decisions without human input. Even so, nearly all managers said they’re willing to step in if they disagree with an AI-based recommendation.
Those who integrate AI at work also say they use it for training materials (97%), employee development plans (94%), performance assessments (91%) and performance improvement plans (88%).
Using AI for employment decisions could introduce bias into the algorithm, depending on how the AI model is trained and previous human decisions. At the same time, AI tools could potentially aid diversity, equity and inclusion efforts if hiring managers objectively analyze their people data to find patterns of exclusion or lack of promotion.
For instance, GoDaddy uses promotion flagging to identify potential eligible employees who should be reviewed for promotion consideration, said GoDaddy’s vice president of diversity, inclusion and belonging. Instead of relying on subjective data, HR pros can mitigate bias through structured processes.
AI Insights
The ‘productivity paradox’ of AI adoption in manufacturing firms
Organizations have long viewed artificial intelligence as a way to achieve productivity gains. But recent research about AI adoption at U.S. manufacturing firms reveals a more nuanced reality: AI introduction frequently leads to a measurable but temporary decline in performance followed by stronger growth output, revenue, and employment.
This phenomenon, which follows a “J-curve” trajectory, helps explain why the economic impact of AI has been underwhelming at times despite its transformative potential.
“AI isn’t plug-and-play,” said University of Toronto professor Kristina McElheran, a digital fellow at the MIT Initiative on the Digital Economy and one of the lead authors of the new paper “The Rise of Industrial AI in America: Microfoundations of the Productivity J-Curve(s).” “It requires systemic change, and that process introduces friction, particularly for established firms.”
University of Colorado Boulder professor Mu-Jeung Yang; Zachary Kroff, formerly with the U.S. Census Bureau and currently an analytics specialist at Analysis Group; and Stanford University professor Erik Brynjolfsson, PhD ’91, co-authored the report.
Working with data from two U.S. Census Bureau surveys covering tens of thousands of manufacturing companies in 2017 and 2021, the researchers found that the AI adoption J-curve varied among businesses that had adopted AI technologies with industrial applications. Short-term losses were greater in older, more established companies. Evidence on young firms showed that losses can be mitigated by certain business strategies. And despite early losses, early AI adopters showed stronger growth over time.
Here’s a look at what the study indicates about the adoption and application of AI, and the types of firms that outperform others in using new technology.
1. AI adoption initially reduces productivity.
The study shows that AI adoption tends to hinder productivity in the short term, with firms experiencing a measurable decline in productivity after they begin using AI technologies.
Even after controlling for size, age, capital stock, IT infrastructure, and other factors, the researchers found that organizations that adopted AI for business functions saw a drop in productivity of 1.33 percentage points. When correcting for selection bias — organizations that expect higher returns are more likely to be early AI adopters — the short-run negative impact was significantly larger, at around 60 percentage points, the researchers write.
This decline isn’t only a matter of growing pains; it points to a deeper misalignment between new digital tools and legacy operational processes, the researchers found. AI systems used for predictive maintenance, quality control, or demand forecasting often also require investments in data infrastructure, staff training, and workflow redesign. Without those complementary pieces in place, even the most advanced technologies can underdeliver or create new bottlenecks.
“Once firms work through the adjustment costs, they tend to experience stronger growth,” McElheran said. “But that initial dip — the downward slope of the J-curve — is very real.”
Leading the AI-Driven Organization
In person at MIT Sloan
Register Now
2. Short-term losses precede long-term gains.
Despite companies’ early losses, the study found a clear pattern of recovery and eventual improvement. Over a longer period of time — there was a four-year gap in the study data — manufacturing firms that adopted AI tended to outperform their non-adopting peers in both productivity and market share. This recovery followed an initial period of adjustment during which companies fine-tuned processes, scaled digital tools, and capitalized on the data generated by AI systems.
That upswing wasn’t distributed evenly, though. The firms seeing the strongest gains tended to be those that were already digitally mature before adopting AI.
“Firms that have already done the digital transformation or were digital from the get-go have a much easier ride because past data can be a good predictor of future outcomes,” McElheran said. Size helps too. “Once you solve those adjustment costs, if you can scale the benefits across more output, more markets, and more customers, you’re going to get on the upswing of the J-curve a lot faster,” she said.
Better integration of the technology and strategic reallocation of resources is important to this recovery as firms gradually shift toward more AI-compatible operations, often investing in automation technologies like industrial robots, the researchers found.
3. Older firms see greater short-term losses.
Short-term losses aren’t felt equally across all firms, the study found. The negative impact of AI adoption was most pronounced among established firms. Such organizations typically have long-standing routines, layered hierarchies, and legacy systems that can be difficult to unwind.
These firms often have trouble adapting, partly due to institutional inertia and the complexity of their operations. “We find that older firms, in particular, struggle to maintain vital production management practices such as monitoring key performance indicators and production targets,” the researchers write.
“Old firms actually saw declines in the use of structured management practices after adopting AI,” McElheran said. “And that alone accounted for nearly one-third of their productivity losses.”
In contrast, younger, more flexible companies appear better equipped to integrate AI technologies quickly and with less disruption. They may also have less to unlearn, making the transition to AI-enabled workflows more seamless.
“Taken together, our findings highlight AI’s dual role as a transformative technology and catalyst for short-run organizational disruption, echoing patterns familiar to scholars of technological change,” the researchers write. They note that the results also show the importance of complementary practices and strategies that mitigate adjustment causes and boost long-term returns to “flatten the J-curve dip and realize AI’s longer-term productivity at scale.”
-
Funding & Business1 week ago
Kayak and Expedia race to build AI travel agents that turn social posts into itineraries
-
Jobs & Careers1 week ago
Mumbai-based Perplexity Alternative Has 60k+ Users Without Funding
-
Mergers & Acquisitions1 week ago
Donald Trump suggests US government review subsidies to Elon Musk’s companies
-
Funding & Business1 week ago
Rethinking Venture Capital’s Talent Pipeline
-
Jobs & Careers1 week ago
Why Agentic AI Isn’t Pure Hype (And What Skeptics Aren’t Seeing Yet)
-
Education2 days ago
9 AI Ethics Scenarios (and What School Librarians Would Do)
-
Education2 days ago
Teachers see online learning as critical for workforce readiness in 2025
-
Education3 days ago
Nursery teachers to get £4,500 to work in disadvantaged areas
-
Education4 days ago
How ChatGPT is breaking higher education, explained
-
Jobs & Careers1 week ago
Astrophel Aerospace Raises ₹6.84 Crore to Build Reusable Launch Vehicle