Summarization: An emerging challenge in modern distributed querying is to effi- ciently process multiple continuous aggregation queries simultaneously. Processing each query independently may be infeasible, so multi-query optimizations are critical for sharing work across queries. The challenge is to identify overlapping computations that may not be obvious in the queries themselves. In this paper, we reveal new opportunities for sharing work in the context of distributed aggregation queries that vary in their selection predicates. We identify settings in which a large set of q such queries can be answered by executing k ≪ q different queries. The k queries are revealed by analyzing a boolean matrix capturing the connection between data and...