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Onshore Oil and Gas Pipeline Market Projected to Surpass $6 Billion in 2024 with Continued Expansion Through 2034

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The “Onshore Oil & Gas Pipelines Market Report 2024-2034” has been added to  ResearchAndMarkets.com’s offering.
World revenue for the Onshore Oil and Gas Pipeline Market is forecast to surpass US$6.04 billion in 2024, with strong revenue growth through to 2034. Governments and Energy Companies Are Actively Investing in Expanding Onshore Pipeline Networks to Meet The Surging DemandThe market is propelled by several key drivers that contribute to its sustained growth. Firstly, the rising global demand for energy, driven by industrialization, urbanization, and population growth, is a primary driver. Governments and energy companies are actively investing in expanding onshore pipeline networks to meet this surging demand.
Additionally, advancements in pipeline materials, construction techniques, and coating technologies contribute to enhanced pipeline integrity, reliability, and lifespan. The integration of digital technologies, such as Supervisory Control and Data Acquisition (SCADA) systems and smart pigging technology, is further driving operational efficiency, reducing maintenance costs, and enhancing overall safety in onshore pipeline operations.Amidst the challenges faced by the industry, numerous opportunities arise. The growing focus on sustainable and environmentally friendly practices presents an avenue for innovation in pipeline materials and coatings. Moreover, the exploration and development of unconventional oil and gas resources offer opportunities for expanding onshore pipeline networks.
Strategic partnerships and collaborations among key industry players, coupled with government initiatives supporting energy infrastructure development, create a favourable environment for market expansion. The integration of advanced technologies, such as artificial intelligence and machine learning, also opens doors for optimizing pipeline operations and predictive maintenance.
Key Market Dynamics
Market Driving Factors

Increasing Energy Demand Driving the Market Growth
Rapid Urbanization and Industrialization in Developing Regions Drive the Demand for Energy Resources driving the Market Growth
Strategic Resilience Planning Driving the Market Growth

Market Restraining Factors

Regulatory Challenges Pose Significant Obstacles to the Onshore Oil and Gas Pipeline Market
Heightened Environmental Awareness and Concerns about the Ecological Impact of Pipeline Projects Present challenges to Industry Stakeholders.
The Volatility of Oil and Gas Prices Poses Financial Challenges for Onshore Pipeline Operators

Market Opportunities

The Rising Investment in the Energy and Power Sector by Various Government Bodies Opportunities for the Market Growth
Collaborative Efforts Between Industry Stakeholders Contribute to the Growth of Cross-Border Onshore Pipeline Projects
Global Energy Trade Expansion Opportunities for the Market Growth

Segments Covered in the Report
Market Segment by Application:

Oil Transportation
Gas Transportation

Market Segment by Material:

Steel Pipes
Polyethylene Pipes
Composite Pipes

Market Segment by Coating:

Fusion Bonded Epoxy (FBE) Coating
Three-Layer Polyethylene (3LPE) Coating
Coal Tar Enamel (CTE) Coating
Other Coating

Market Segment by Systems:

Supervisory Control and Data Acquisition (SCADA) Systems
Smart Pigging Technology
Leak Detection Systems
Corrosion Monitoring Systems
Other Systems

Market Segment by Type:

Electric Resistance Welded (ERW) Pipe
Spiral Seam Welded (SSAW) Pipe
Longitudinal Seam Welded (LSAW) Pipe
Double Submerged Arc Welded (DSAW) Pipe
Electric Fusion Welded (EFW) Pipe
Other Type

Forecasts to 2034 and other analyses reveal commercial prospects:

In addition to revenue forecasting to 2034, the new study provides you with recent results, growth rates, and market shares.
You will find original analyses, with business outlooks and developments.
Discover qualitative analyses (including market dynamics, drivers, opportunities, restraints and challenges), cost structure, impact of rising onshore oil and gas pipeline prices and recent developments.

In addition to the revenue predictions for the overall world market and segments, you will also find revenue forecasts for four regional and 20 leading national markets.
Leading companies and the potential for market growth:

BP
Chevron Corporation
China National Petroleum Corporation (CNPC)
ConocoPhillips Company
Enbridge Inc.
Eni S.p.A.
Enterprise Products Partners L.P
Exxon Mobil Corporation
Kinder Morgan, Inc.
PetroChina Company Limited
Plains All American Pipeline, L.P.
Royal Dutch Shell Plc
TC Energy Corporation
The Williams Companies, Inc.
TotalEnergies SE

The report provides you with the following knowledge:-

Revenue forecasts to 2034 for Onshore Oil and Gas Pipeline Market, 2024 to 2034 Market, with forecasts for application, material, coating, systems, and type, each forecast at a global and regional level – discover the industry’s prospects, finding the most lucrative places for investments and revenues.
Revenue forecasts to 2034 for four regional and 20 key national markets – See forecasts for the Onshore Oil and Gas Pipeline Market, 2024 to 2034 market in North America, Europe, Asia-Pacific, Latin America and Middle East & Africa. Also forecasted is the market in the US, Canada, Brazil, Germany, France, UK, Italy, China, India, Japan, and Australia among other prominent economies.
Prospects for established firms and those seeking to enter the market – including company profiles for 15 of the major companies involved in the Onshore Oil and Gas Pipeline Market, 2024 to 2034.

The post Onshore Oil and Gas Pipeline Market Projected to Surpass $6 Billion in 2024 with Continued Expansion Through 2034 appeared first on HIPTHER Alerts.

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Demystifying the EU AI Act for IT Leaders

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As the EU AI Act approaches its final passage, organizations involved in both developing and deploying AI technologies will face new transparency and risk assessment requirements, although the exact rules are yet to be finalized.
The European Parliament’s mid-March vote to approve the EU AI Act marks a significant milestone as the world’s first major legislation aimed at regulating the use and implementation of artificial intelligence applications.
While the vote does not signify the law’s definitive enactment, it does signal forthcoming regulatory changes that will impact many Chief Information Officers (CIOs) overseeing AI tool usage within their organizations. The legislation will not only affect entities directly engaged in AI development but also those simply utilizing AI technologies. Furthermore, these regulations will extend beyond the EU’s borders, impacting any organization interacting with EU residents.
The journey toward AI legislation has been years in the making, with the EU initially proposing the legislation in April 2021. Despite some advocacy for AI regulation from prominent figures like Elon Musk and Sam Altman, the EU AI Act also faces criticism.
The legislation will impose new obligations on organizations to validate, monitor, and audit the entire AI lifecycle. Kjell Carlsson, head of AI strategy at Domino Data Lab, expresses concern about the potential chilling effect of the law on AI research and adoption due to hefty fines and unclear definitions. However, ignoring the AI revolution to evade regulations is not a viable option, Carlsson emphasizes, as AI adoption is essential for organizational survival and growth.
The EU AI Act covers three main areas:

Banned uses of AI: Prohibitions include AI applications threatening human rights, such as biometric categorization systems based on sensitive physical features. Monitoring of employee or student emotions, social scoring, predictive policing based on personal profiles, and manipulation of human behavior are also banned.
Obligations for high-risk AI systems: Organizations utilizing high-risk AI tools must conduct risk assessments, mitigate risks, maintain use logs, ensure transparency, and provide human oversight. Examples of high-risk systems include those used in critical infrastructure, education, employment decisions, healthcare, and banking.
Transparency requirements: General-purpose AI systems must comply with transparency standards, including publishing detailed training data summaries. Additionally, deepfakes must be clearly labeled.

However, some challenges lie ahead, particularly regarding compliance with transparency rules and the impending regulations’ details. Organizations may struggle to meet transparency requirements, especially if they lack extensive documentation or robust data management practices. While the law isn’t retroactive, it will apply to existing AI systems, necessitating documentation of processes and data use.
EU regulators have up to 18 months from the law’s final passage to finalize specific definitions and rules, presenting additional uncertainties and challenges for compliance. The legislation’s focus on AI system effects rather than the systems themselves could pose difficulties given AI’s rapid evolution and unpredictability. As such, continued regulatory input and guidance will be essential for navigating the complexities of AI governance effectively.
Source: cio.com

 
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How AI can drive career growth for mortgage professionals

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Artificial Intelligence Reshapes Mortgage Industry Dynamics
The mortgage industry is undergoing a profound transformation driven by the adoption of artificial intelligence (AI). While some employees express concerns about potential job displacement, executives are assuring them that AI will primarily automate routine tasks, allowing for more focus on other areas of their roles.
Generative AI has emerged as a valuable tool for lenders, aiding in tasks such as content creation, marketing material development, and email responses. However, there’s recognition that AI’s output requires human oversight and refinement, especially in critical areas like marketing copy.
Companies are cautious about deploying AI in customer-facing roles due to regulatory uncertainties, but some are exploring compliant AI chatbot solutions. Despite regulatory challenges, some lenders have begun experimenting with AI chatbots, while others are still evaluating their potential applications.
Katherine Campbell, founder of consulting firm Leopard Job, believes AI can enhance employee satisfaction by automating mundane tasks, allowing humans to focus on higher-value activities. She emphasizes that AI’s role is to complement human expertise, not replace it.
For example, Mr. Cooper has integrated AI into fulfillment and due diligence roles but takes a cautious approach in front-office functions. Underwriters at Mr. Cooper work alongside AI in a co-pilot mode, reviewing AI-generated decisions before proceeding.
Executives see AI as an opportunity to enhance productivity rather than replace jobs. For instance, Mr. Cooper has significantly increased its mortgage servicing portfolio while maintaining a similar headcount, leveraging technology to handle a larger volume of loans.
Despite uncertainties, AI is expected to continue its growth trajectory in the mortgage industry. Companies are increasingly leveraging AI for internal functions like staff education and customer interactions. Tools powered by generative and machine learning models are already in use at companies like Blend and Rocket Mortgage, streamlining workflows and providing assistance to loan officers.
Source: nationalmortgagenews.com

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Could a better understanding of how infants acquire language help us build smarter A.I. models?

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From Baby Talk to Baby A.I.: Exploring the Connection Between Infant Language Acquisition and Artificial Intelligence
The journey from babbling babies to sophisticated artificial intelligence (A.I.) systems may seem worlds apart, but researchers are increasingly finding intriguing parallels between these seemingly disparate domains. Could a deeper understanding of how infants learn language pave the way for more intelligent A.I. models? Let’s delve into this fascinating intersection of neuroscience and machine learning.
Infant language acquisition is a remarkable process that unfolds rapidly during the first few years of life. Babies are born with an innate capacity for language, but they must learn to understand and produce speech through exposure to linguistic input from their caregivers and environment. This process involves complex cognitive abilities, such as pattern recognition, statistical learning, and social interaction.
Similarly, A.I. systems learn from data, albeit in a vastly different manner. Machine learning algorithms process vast amounts of information to identify patterns and make predictions, much like the way infants learn from exposure to language input. However, while A.I. models excel at tasks like language translation and speech recognition, they often struggle with understanding context, ambiguity, and nuance—areas where human language learners excel.
By studying the mechanisms underlying infant language acquisition, researchers hope to uncover insights that could inform the development of more intelligent A.I. systems. One key area of focus is statistical learning, the ability to extract regularities and patterns from the input data. Infants demonstrate remarkable statistical learning abilities, enabling them to discern the structure of their native language from the stream of auditory input.
Researchers believe that incorporating principles of statistical learning into A.I. algorithms could improve their ability to understand and generate natural language. By analyzing large datasets of text and speech, A.I. systems could learn to identify linguistic patterns and relationships, leading to more accurate language processing and generation.
Social interaction also plays a crucial role in infant language development, as babies learn from their caregivers through joint attention, imitation, and feedback. Similarly, A.I. systems could benefit from interactive learning paradigms that involve human interaction and feedback. By engaging in dialogue with users, A.I. agents could refine their language skills and adapt to individual preferences and contexts.
Moreover, insights from cognitive neuroscience could inspire novel architectures and algorithms for A.I. models. For example, neuroscientists have identified specialized brain regions involved in language processing, such as Broca’s area and Wernicke’s area. Mimicking these neural circuits in artificial neural networks could lead to more biologically inspired A.I. systems capable of robust language understanding and production.
In summary, the study of infant language acquisition offers valuable insights that could inform the development of more intelligent A.I. models. By understanding the cognitive mechanisms underlying language learning in infants, researchers hope to design A.I. systems that exhibit human-like language abilities, unlocking new possibilities for natural language understanding, communication, and interaction. As we continue to unravel the mysteries of the human mind, we may find that the key to smarter A.I. lies in the babbling of babies.
Source: nytimes.com

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