This is an active area of research (a recent PhD thesis on a related topic). The short answer is NO. Doing so would likely imply having to implement a strong AI.
Nevertheless, the problem has gained on popularity in recent years. You are probably familiar with Apple's Siri (which is in fact one of the outcomes of one of the biggest AI project in history), and Google's Google Now and you know how limited they are (definitely not for the lack of effort).
There is also the Watson system by IBM which is able to play the game Jeopardy better than any human player. IBM is currently aggressively investing into the technology (billions of dollars, new centers, hiring a lot).
For many years, there even have been attempts at implementing systems focused on exactly the kind of question answering that you described: factual, constrained to a domain, a bit like exercises for highschool kids.
The most prominent examples are:
The ARISTO project originated out of the HALO project (funded by Vulcan, which is Paul Allen's investment company):
Project Halo is a staged, long-range research effort by Vulcan Inc.
towards the development of a "Digital Aristotle"—a reasoning system
capable of answering novel questions and solving advanced problems in
a broad range of scientific disciplines and related human affairs. The
project focuses on creating two primary functions: a tutor capable of
instructing and assessing students in those subjects, and a research
assistant with broad, interdisciplinary skills to help scientists and
others in their work.
To that end, they conducted a competition in 2004 with the following challenge:
Each team was given four months to independently encode 50 pages out
of a chemistry syllabus into their respective KRR technology
platforms. At the end of this time, all the systems were sequestered
and a challenge exam consisting of 100 mostly novel questions was
released to the teams.
The teams had two weeks to translate the questions into their
respective formal logical languages. These translations were run as
batch jobs on the systems, which produced documents containing English
answers and justifications.
The final step was an impartial evaluation conducted by three separate
chemistry professors, who graded the “exams” for accuracy and
There were three competing teams: Cycorp (Austin, Texas), SRI International (Menlo Park, California), and Ontoprise (Karlsruhe, Germany).
The average score on the exam was about 40% to 47% correct. The average cost to translate text into the formal notation was around $10,000 per page (!).
Vulcan's final report.
The Seattle Times - Vulcan project aims to build 'Digital Aristotle'
Granted this was 10 years ago and there was some progress since then (perhaps most notably Watson), but we are still nowhere near even domain-focused factual general question answering.