1960s-1970s
1960s: Expansion and Optimism
-
Early 1960s
- Advances in Machine Learning: Researchers began exploring the possibilities of machines learning from data, leading to the early development of algorithms that could adjust and improve over time.
- Development of AI Languages: Further development and refinement of AI-specific programming languages, including LISP and Prolog, which became standard tools for AI research.
-
1965
- Joseph Weizenbaum's ELIZA: Creation of ELIZA, an early natural language processing computer program that demonstrated the superficiality of communication between humans and machines, notably with its "DOCTOR" script, simulating a psychotherapist.
-
1966
- SHRDLU by Terry Winograd: Development began on SHRDLU, an early natural language understanding program capable of manipulating blocks of various shapes and sizes.
-
1969
- Minsky and Papert's Critique: Marvin Minsky and Seymour Papert published "Perceptrons," highlighting the limitations of simple neural networks, which led to a significant reduction in funding and interest in neural network research.
1970s: Challenges and the Onset of the First AI Winter
-
Early 1970s
- Expansion into Various Domains: AI research expanded into understanding visual inputs, manipulating robotics, and language processing.
- Development of Expert Systems: Systems that mimicked the decision-making ability of a human expert in specific fields began to emerge, signaling a shift in AI research towards applied AI.
-
Mid-1970s
- Financial Cuts and Criticism: AI research faced financial cuts from major funding sources like DARPA, mainly due to high expectations not being met and the limitations of existing technology becoming apparent.
- Rise of Expert Systems: Despite the broader challenges in AI, expert systems like DENDRAL, a system designed to analyze chemical mass spectrometry data, showed the practical applications of AI.
-
Late 1970s
- Onset of the First AI Winter: The term "AI Winter" refers to a period of reduced funding and interest in AI research. This period began in the late 1970s due to disillusionment with AI's ability to fulfill its grand promises.
- Shift in Research Focus: The challenges faced by AI led to a shift in focus towards more theoretically grounded and practical applications, setting the stage for future advancements in the field.
This era was marked by a mix of significant achievements and notable setbacks, which ultimately shaped the direction of AI research for the following decades.