We initiate the complexity theoretic study of the problem of computing the
bits of (real) algebraic numbers. This extends the work of Yap on computing the
bits of transcendental numbers like \pi, in Logspace.
Our main result is that computing a bit of a fixed real algebraic number is
in C=NC1\subseteq Logspace when the bit position has a verbose (unary)
representation and in the counting hierarchy when it has a succinct (binary)
representation.
Our tools are drawn from elementary analysis and numerical analysis, and
include the Newton-Raphson method. The proof of our main result is entirely
elementary, preferring to use the elementary Liouville's theorem over the much
deeper Roth's theorem for algebraic numbers.
We leave the possibility of proving non-trivial lower bounds for the problem
of computing the bits of an algebraic number given the bit position in binary,
as our main open question. In this direction we show very limited progress by
proving a lower bound for rationals