CONTEXT: In 2023, the impact of artificial intelligence (AI) on social and economic relations was significant, attributed to the success of large language models (LLMs), such as ChatGPT, in solving complex tasks. Concerns about the dangers of LLMs and publicly deployed AI systems started to be voiced by both industry and state actors, highlighting potential perils that were previously ignored by the industry.
Recent advancements:
Challenges of such advancements:
Issues with AI regulations:
Guidelines for Ethical and Responsible AI:
Ethical Deployment: Prioritize ethical, transparent, and accountable development and deployment of AI systems. Address biases, ensure privacy and data protection, and establish clear regulations and guidelines.
Research and Innovation: Continue investing in fundamental research for developing new algorithms and models in the rapidly evolving field of AI. Ongoing innovation is crucial for advancing capabilities and achieving breakthroughs.
Data Quality and Accessibility: Focus on improving data collection, cleaning, and labeling processes for effective AI model training. Promote data sharing and accessibility to encourage collaboration across different domains.
Human-AI Collaboration: Design AI systems to augment human capabilities rather than replace them entirely. Emphasize collaboration between humans and AI for more effective solutions, including user-centered design.
Domain-Specific Applications: Identify and prioritize specific domains, such as healthcare, transportation, finance, and education, where AI can have a significant positive impact. Tailor AI solutions to address challenges in these specific fields.
Education and Workforce Development: Prepare the workforce for an AI-driven future through education and upskilling programs. Foster interdisciplinary collaboration and partnerships between academia, industry, and government.
International Collaboration and Standards: Collaborate internationally to share knowledge and best practices in AI development. Establish global standards and frameworks to ensure interoperability, fairness, and security in AI systems' development and deployment.
Advantages of AI:
Artificial Intelligence
AI refers to the capability of a computer or a computer-controlled robot to perform tasks typically carried out by humans, requiring human-like intelligence and discernment. While no AI system can replicate the broad range of tasks performed by a human, certain AI technologies can excel in specific activities.
Key Characteristics & Components: AI's fundamental characteristic is its capacity to reason and make decisions that optimize the likelihood of achieving a particular objective. Machine Learning (ML) is a subset of AI, focusing on systems that can learn and improve from experience. Deep Learning (DL) techniques facilitate automatic learning by processing large volumes of unstructured data, including text, images, or video.
Large Language Models (LLMs):
LLMs are a specific category of generative AI models designed to comprehend and produce human-like text. Constructed using deep learning techniques, especially neural networks, these models can generate coherent and contextually relevant text based on a given prompt or input. A prominent example of LLMs is OpenAI's GPT (Generative Pre-trained Transformer).
Generative AI:
Generative AI is a subset of artificial intelligence focused on developing systems capable of creating content resembling human-produced output.These systems learn from patterns in existing data and utilize that knowledge to generate new, original content in various forms, including text, images, music, and
Global governance of AI
India:
NITI Aayog has issued guiding documents on AI, including the National Strategy for AI and the Responsible AI for All report. The focus is on social and economic inclusion, innovation, and trustworthiness.
United Kingdom:
Advocates a light-touch approach, urging regulators in various sectors to apply existing regulations to AI. Outlined five principles for companies: safety, security, and robustness; transparency and explainability; fairness; accountability and governance; and contestability and redress.
US:
Introduced a Blueprint for an AI Bill of Rights (AIBoR), addressing the economic and civil rights harms of AI. Recommends a sectorally specific approach to AI governance, with policies tailored for sectors like health, labor, and education.
China:
In 2022, China implemented nationally binding regulations targeting specific types of algorithms and AI.
Enacted a law to regulate recommendation algorithms, particularly focusing on information dissemination. As of the end of 2023, challenges in AI policy persist, with a lack of democratic voices and a tendency to surrender the policy process to a few tech companies, which exploit anxieties about AI to distract from concrete interventions.The hope for 2024 is an increased socialization of AI policy, with people taking more control over its imagination and implementation.
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We provide offline, online and recorded lectures in the same amount.
Every aspirant is unique and the mentoring is customised according to the strengths and weaknesses of the aspirant.
In every Lecture. Director Sir will provide conceptual understanding with around 800 Mindmaps.
We provide you the best and Comprehensive content which comes directly or indirectly in UPSC Exam.