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28
Februariruary 2026

AI Winter and Machine Learning Revolution: Cyclical Patterns in Technological Progress

  • 53 tayangan
  • 28 Februari 2026
AI Winter and Machine Learning Revolution: Cyclical Patterns in Technological Progress AI research has experienced cyclical patterns of enthusiasm and disillusionment known as AI winters. Following periods where proponents exaggerated possibilities, funding decreased when expectations weren't met. Today's machine learning revolution represents a new hype phase enabled by powerful computers and big data.

Understanding AI Winter Phenomena and Funding Cycles

Cycles of Exaggeration, Criticism, and Reduced Investment

Cyclical patterns of enthusiasm and disillusionment have characterized AI research. The term AI winter refers to periods of decreasing funding in AI development, following cycles where proponents exaggerated possibilities, criticized when AI failed to meet expectations, and funding was reduced1. These cycles repeated throughout the field's history.

The pattern became predictable. Researchers announced breakthrough capabilities. Media amplified claims. Investors poured money in. Then reality intruded. The technology couldn't deliver. Disillusionment followed. Funding evaporated. Progress slowed until the next wave began.

Contemporary observers note how the history of AI shows how setting evaluation standards fueled progress, yet modern systems face different challenges2. Today's LLMs operate where clear benchmarks remain elusive, potentially setting up future disappointment similar to previous AI winters.

The Current Resurgence: Machine Learning as Paradigm Shift

The current resurgence stems from technological paradigm shifts. AI is currently in a new hype phase because of machine learning, a technology that helps computers learn from data without relying on human programmers to set operations1. This approach fundamentally differs from earlier rule-based expert systems. Instead of encoding knowledge explicitly, machine learning systems extract patterns from data.

This landscape comprises diverse research communities. Five tribes of scientists working on machine learning algorithms, each from different perspectives: symbolic, connectionist, evolutionary, Bayesian, and analogical1. Each tribe brings distinct philosophical assumptions about how intelligence emerges and should be modeled computationally.

Questions about AI's impact on historical understanding have emerged alongside technical progress. Scholars debate what AI will do to the future while also considering what it will do to our understanding of the past3. The technology's ability to generate convincing but potentially inaccurate historical content raises epistemological challenges for how societies maintain collective memory.

Deep Learning Dominance and Contemporary Applications

Imitating the Human Brain with Modern Infrastructure

Deep learning has emerged as the dominant methodology. The most successful current solution is deep learning, which seeks to imitate the human brain and is enabled by powerful computers, smarter algorithms, and big data1. Neural networks with multiple layers can now tackle problems that stymied previous approaches. Image recognition, natural language processing, and game playing all yielded to deep learning techniques.

The convergence of three factors enabled this success. Powerful computers provide necessary processing capacity. Smarter algorithms improve training efficiency. Big data supplies the examples neural networks need for learning. Remove any single factor and the revolution stalls.

Literary explorations contextualize these developments. Toby Walsh's book review of The Shortest History of AI traces how Ada Lovelace mused that the first mechanical computer could compose elaborate pieces of music if instructed properly4. She planted the seed of a question that has obsessed generations: can machines truly think? Deep learning provides one compelling answer, though debate continues about whether pattern recognition constitutes genuine understanding.

Economic Consequences and Market Disruption

Market dynamics reflect AI's transformative potential and risks. Technology companies experienced dramatic valuation swings. Nvidia suffered its biggest loss in history due to the impact of DeepSeek AI5. The leading company reported significant stock market losses. In one day, market capitalization dropped substantially as competitors demonstrated alternative approaches.

This volatility underscores how rapidly the competitive landscape shifts. New architectures can upend established positions overnight. Investors struggle to evaluate which companies capture long-term value versus temporary hype.

Beyond corporate fortunes, the technology reaches individual users through sophisticated interfaces. Historical examples include a woman becoming the first person in history to marry an AI hologram6. While exceptional cases generate headlines, they illustrate how AI integration extends beyond professional contexts into personal identity. The machine learning revolution touches virtually every domain of human experience. Whether this breadth indicates genuine transformation or another bubble preceding an AI winter remains an open question.

Daftar Pustaka

  1. Santoso, J. T., Sholikan, M., & Caroline, M. (2021). Kecerdasan buatan (Artificial intelligence). Universitas Sains & Teknologi Komputer, p. 8.
  2. MSN Money. (2025, December 23). The AI History That Explains Fears of a Bubble. Retrieved from https://www.msn.com/en-us/money/markets/the-history-that-suggests-an-ai-bubble/ar-AA1SQckc
  3. Forbes. (2025, September 8). Will AI Rewrite History? Retrieved from https://www.forbes.com/sites/johnwerner/2025/09/09/will-ai-rewrite-history/
  4. Financial Express. (2025, November 22). Book review: The shortest history of AI by Toby Walsh. Retrieved from https://www.financialexpress.com/life/lifestyle/book-review-the-shortest-history-of-ai-by-toby-walsh/4052951/
  5. Merdeka. (2025, January 28). NVIDIA Alami Kerugian Terbesar Sepanjang Sejarah Akibat Dampak DeepSeek AI. Retrieved from https://www.merdeka.com/trending/nvidia-alami-kerugian-terbesar-sepanjang-sejarah-akibat-dampak-deepseek-ai-293310-mvk.html
  6. Merdeka. (2024, February 23). Wanita ini Jadi Orang Pertama dalam Sejarah Menikah dengan Hologram AI. Retrieved from https://www.merdeka.com/teknologi/wanita-ini-jadi-orang-pertama-dalam-sejarah-menikah-dengan-hologram-ai-92531-mvk.html
PROFIL PENULIS
Swante Adi Krisna
Penggemar musik Ska, Reggae dan Rocksteady sejak 2004. Gooner sejak 1998. Blogger dan SEO spesialis paruh waktu sejak 2014. Perancang Grafis otodidak sejak 2001. Pemrogram Website otodidak sejak 2003. Tukang Kayu otodidak sejak 2024. Sarjana Hukum Pidana dari Universitas Negeri di Surakarta, Jawa Tengah, Indonesia. Magister Hukum Pidana dalam bidang kejahatan dunia maya dari Universitas Swasta di Surakarta, Jawa Tengah, Indonesia. Magister Kenotariatan dalam bidang hukum teknologi, khususnya cybernotary dari Universitas Negeri di Surakarta, Jawa Tengah, Indonesia. Bagian dari Keluarga Kementerian Pertahanan Republik Indonesia.