Artificial Intelligence Languages Interview Preparation Guide
Enhance your Artificial Intelligence Languages interview preparation with our set of 16 carefully chosen questions. Our questions cover a wide range of topics in Artificial Intelligence Languages to ensure youre well-prepared. Whether youre new to the field or have years of experience, these questions are designed to help you succeed. Access the free PDF to get all 16 questions and give yourself the best chance of acing your Artificial Intelligence Languages interview. This resource is perfect for thorough preparation and confidence building.16 Artificial Intelligence Languages Questions and Answers:
1 :: Explain List of programming languages for artificial intelligence?
IPL
Lisp
Prolog
STRIPS
Planner
Lisp
Prolog
STRIPS
Planner
2 :: Explain List of artificial intelligence projects?
1 Specialized projects
1.1 Brain simulation
1.2 Cognitive architectures
1.3 Games
1.4 Knowledge and reasoning
1.5 Motion and manipulation
1.6 Natural language processing
1.7 Planning
1.8 Other
2 Multipurpose projects
2.1 Software libraries
2.2 Cloud services
1.1 Brain simulation
1.2 Cognitive architectures
1.3 Games
1.4 Knowledge and reasoning
1.5 Motion and manipulation
1.6 Natural language processing
1.7 Planning
1.8 Other
2 Multipurpose projects
2.1 Software libraries
2.2 Cloud services
3 :: Explain AI (Artificial intelligence)?
Artificial intelligence ("AI") can mean many things to many people. Much confusion arises that the word 'intelligence' is ill-defined. The phrase is so broad that people have found it useful to divide AI into two classes: strong AI and weak AI.
4 :: Olease explain difference between strong AI and weak AI?
Strong AI makes the bold claim that computers can be made to think on a level (at least) equal to humans. Weak AI simply states that some "thinking-like" features can be added to computers to make them more useful tools... and this has already started to happen (witness expert systems, drive-by-wire cars and speech recognition software). What does 'think' and 'thinking-like' mean? That's a matter of much debate.
5 :: I am a programmer interested in AI. I am writing a game that needs AI. Where do I start?
It depends what the game does. If it's a two-player board game,look into the "Mini-max" search algorithm for games (see [4-1]). In most commercial games, the AI is is a combination of high-level scripts and low-level efficiently-coded, real-time, rule-based systems. Often, commercial games tend to use finite state machines for computer players. Recently, discrete Markov models have been used to simulate unpredictible human players (the buzzword compliant name being "fuzzy" finite state machines).
A recent popular game, "Black and White", used machine learning techniques for the non-human controlled characters. Basic reinforcement learning, perceptrons and decision trees were all parts of the learning system. Is this the begining of academic AI in video games?
A recent popular game, "Black and White", used machine learning techniques for the non-human controlled characters. Basic reinforcement learning, perceptrons and decision trees were all parts of the learning system. Is this the begining of academic AI in video games?
6 :: Explain agent?
A very misused term. Today, an agent seems to mean a stand-alone piece of AI-ish software that scours across the internet doing something "intelligent." Russell and Norvig define it as "anything that can can be viewed a perceiving its environment through sensors and acting upon that environment through effectors." Several papers I've read treat it as 'any program that operates on behalf of a human,' similar to its use in the phrase 'travel agent'. Marvin Minsky has yet another definition in the book "Society of Mind." Minsky's hypothesis is that a large number of seemingly-mindless agents can work together in a society to create an intelligent society of mind. Minsky theorizes that not only will this be the basis of computer intelligence, but it is also an explaination of how human intelligence works. Andrew Moore at Carnegie Mellon University once remarked that "The only proper use of the word 'agent' is when preceded by the words 'travel', 'secret', or 'double'."
7 :: Explain AI accomplished?
Quite a bit, actually. In 'Computing machinery and intelligence.', Alan Turing, one of the founders of computer science, made the claim that by the year 2000, computers would be able to pass the Turing test at a reasonably sophisticated level, in particular, that the average interrogator would not be able to identify the computer correctly more than 70 per cent of the time after a five minute conversation. AI hasn't quite lived upto Turing's claims, but quite a bit of progress has been made, including:
- Deployed speech dialog systems by firms like IBM, Dragon and Lernout&Hauspie
- Financial software, which is used by banks to scan credit card transactions for unusual patterns that might signal fraud. One piece of software is estimated to save banks $500 million annually.
- Applications of expert systems/case-based reasoning: a computerized Leukemia diagnosis system did a better job checking for blood disorders than human experts.
- Machine translation for Environment Canada: software developed in the 1970s translated natural language weather forcasts between English and French. Purportedly stil in use.
- Deployed speech dialog systems by firms like IBM, Dragon and Lernout&Hauspie
- Financial software, which is used by banks to scan credit card transactions for unusual patterns that might signal fraud. One piece of software is estimated to save banks $500 million annually.
- Applications of expert systems/case-based reasoning: a computerized Leukemia diagnosis system did a better job checking for blood disorders than human experts.
- Machine translation for Environment Canada: software developed in the 1970s translated natural language weather forcasts between English and French. Purportedly stil in use.
8 :: Explain branches of AI?
There are many, some are 'problems' and some are 'techniques'.
Automatic Programming - The task of describing what a program should do and having the AI system 'write' the program.
Bayesian Networks - A technique of structuring and inferencing with probabilistic information. (Part of the "machine learning" problem).
Constraint Statisfaction - solving NP-complete problems, using a variety of techniques.
Knowledge Engineering/Representation - turning what we know about particular domain into a form in which a computer can understand it.
Machine Learning - Programs that learn from experience or data.
Natural Language Processing(NLP) - Processing and (perhaps) understanding human ("natural") language. Also known as computational linguistics.
Neural Networks(NN) - The study of programs that function in a manner similar to how animal brains do.
Planning - given a set of actions, a goal state, and a present state, decide which actions must be taken so that the present state is turned into the goal state
Robotics - The intersection of AI and robotics, this field tries to get (usually mobile) robots to act intelligently.
Speech Recogntion - Conversion of speech into text.
Automatic Programming - The task of describing what a program should do and having the AI system 'write' the program.
Bayesian Networks - A technique of structuring and inferencing with probabilistic information. (Part of the "machine learning" problem).
Constraint Statisfaction - solving NP-complete problems, using a variety of techniques.
Knowledge Engineering/Representation - turning what we know about particular domain into a form in which a computer can understand it.
Machine Learning - Programs that learn from experience or data.
Natural Language Processing(NLP) - Processing and (perhaps) understanding human ("natural") language. Also known as computational linguistics.
Neural Networks(NN) - The study of programs that function in a manner similar to how animal brains do.
Planning - given a set of actions, a goal state, and a present state, decide which actions must be taken so that the present state is turned into the goal state
Robotics - The intersection of AI and robotics, this field tries to get (usually mobile) robots to act intelligently.
Speech Recogntion - Conversion of speech into text.
9 :: What are good programming languages for AI?
This topic can be somewhat sensitive, so I'll probably tread on a few toes, please forgive me. There is no authoritative answer for this question, as it really depends on what languages you like programming in. AI programs have been written in just about every language ever created. The most common seem to be Lisp, Prolog, C/C++, recently Java, and even more recently, Python.
LISP- For many years, AI was done as research in universities and laboratories, thus fast prototyping was favored over fast execution. This is one reason why AI has favored high-level langauges such as Lisp. This tradition means that current AI Lisp programmers can draw on many resources from the community. Features of the language that are good for AI programming include: garbage collection, dynamic typing, functions as data, uniform syntax, interactive environment, and extensibility. Read Paul Graham's essay, "Beating the Averages" for a discussion of some serious advantages:
PROLOG- This language wins 'cool idea' competition. It wasn't until the 70s that people began to realize that a set of logical statements plus a general theorem prover could make up a program. Prolog combines the high-level and traditional advantages of Lisp with a built-in unifier, which is particularly useful in AI. Prolog seems to be good for problems in which logic is intimately involved, or whose solutions have a succinct logical characterization. Its major drawback (IMHO)
LISP- For many years, AI was done as research in universities and laboratories, thus fast prototyping was favored over fast execution. This is one reason why AI has favored high-level langauges such as Lisp. This tradition means that current AI Lisp programmers can draw on many resources from the community. Features of the language that are good for AI programming include: garbage collection, dynamic typing, functions as data, uniform syntax, interactive environment, and extensibility. Read Paul Graham's essay, "Beating the Averages" for a discussion of some serious advantages:
PROLOG- This language wins 'cool idea' competition. It wasn't until the 70s that people began to realize that a set of logical statements plus a general theorem prover could make up a program. Prolog combines the high-level and traditional advantages of Lisp with a built-in unifier, which is particularly useful in AI. Prolog seems to be good for problems in which logic is intimately involved, or whose solutions have a succinct logical characterization. Its major drawback (IMHO)
10 :: Please explain the difference between classical AI and statistical AI?
Statistical AI, arising from machine learning, tends to be more concerned with "inductive" thought: given a set of patterns, induce the trend. Classical AI, on the other hand, is more concerned with "deductive" thought: given a set of constraints, deduce a conclusion. Another difference, as mentioned in the previous question, is that C++ tends to be a favourite language for statistical AI while LISP dominates in classical AI.
A system can't be truely intelligent without displaying properties of both inductive and deductive thought. This lends many to beleive that in the end, there will be some kind of synthesis of statistical and classical AI.
A system can't be truely intelligent without displaying properties of both inductive and deductive thought. This lends many to beleive that in the end, there will be some kind of synthesis of statistical and classical AI.