We study almost-sure limiting properties, taken as  0, of the finite horizon sequence of random estimates { 0, 1, 2, . . . , T/ } for the linear stochastic gradient algorithm  n+1 = n +  an+1 - ( n) Xn+1 Xn+1, 0 =  nonrandom, where T  (0, ) is an arbitrary constant,   (0, 1] is a (small) adaptation gain, and {an} and {Xn} are data sequences which drive the algorithm. These limiting properties are expressed in the form of a functional law of the iterated logarithm. Key words. stochastic gradient algorithm, L-mixing processes, functional law of the iterated logarithm AMS subject classifications. 60F15, 60F17, 93E10 PII. S0363012997331007 							
						
							
					 															
					J. A. Joslin, A. J. Heunis