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Main Authors: Kamarthi, Harshavardhan, Shah, Harshil, Milner, Henry, Sinha, Sayan, Li, Yan, Prakash, B. Aditya, Sekar, Vyas
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.04432
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author Kamarthi, Harshavardhan
Shah, Harshil
Milner, Henry
Sinha, Sayan
Li, Yan
Prakash, B. Aditya
Sekar, Vyas
author_facet Kamarthi, Harshavardhan
Shah, Harshil
Milner, Henry
Sinha, Sayan
Li, Yan
Prakash, B. Aditya
Sekar, Vyas
contents Many operational systems collect high-dimensional timeseries data about users/systems on key performance metrics. For instance, ISPs, content distribution networks, and video delivery services collect quality of experience metrics for user sessions associated with metadata (e.g., location, device, ISP). Over such historical data, operators and data analysts often need to run retrospective analysis; e.g., analyze anomaly detection algorithms, experiment with different configurations for alerts, evaluate new algorithms, and so on. We refer to this class of workloads as alternative history analysis for operational datasets. We show that in such settings, traditional data processing solutions (e.g., data warehouses, sampling, sketching, big-data systems) either pose high operational costs or do not guarantee accurate replay. We design and implement a system, called AHA (Alternative History Analytics), that overcomes both challenges to provide cost efficiency and fidelity for high-dimensional data. The design of AHA is based on analytical and empirical insights about such workloads: 1) the decomposability of underlying statistics; 2) sparsity in terms of active number of subpopulations over attribute-value combinations; and 3) efficiency structure of aggregation operations in modern analytics databases. Using multiple real-world datasets and as well as case-studies on production pipelines at a large video analytics company, we show that AHA provides 100% accuracy for a broad range of downstream tasks and up to 85x lower total cost of ownership (i.e., compute + storage) compared to conventional methods.
format Preprint
id arxiv_https___arxiv_org_abs_2601_04432
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AHA: Scalable Alternative History Analysis for Operational Timeseries Applications
Kamarthi, Harshavardhan
Shah, Harshil
Milner, Henry
Sinha, Sayan
Li, Yan
Prakash, B. Aditya
Sekar, Vyas
Databases
Many operational systems collect high-dimensional timeseries data about users/systems on key performance metrics. For instance, ISPs, content distribution networks, and video delivery services collect quality of experience metrics for user sessions associated with metadata (e.g., location, device, ISP). Over such historical data, operators and data analysts often need to run retrospective analysis; e.g., analyze anomaly detection algorithms, experiment with different configurations for alerts, evaluate new algorithms, and so on. We refer to this class of workloads as alternative history analysis for operational datasets. We show that in such settings, traditional data processing solutions (e.g., data warehouses, sampling, sketching, big-data systems) either pose high operational costs or do not guarantee accurate replay. We design and implement a system, called AHA (Alternative History Analytics), that overcomes both challenges to provide cost efficiency and fidelity for high-dimensional data. The design of AHA is based on analytical and empirical insights about such workloads: 1) the decomposability of underlying statistics; 2) sparsity in terms of active number of subpopulations over attribute-value combinations; and 3) efficiency structure of aggregation operations in modern analytics databases. Using multiple real-world datasets and as well as case-studies on production pipelines at a large video analytics company, we show that AHA provides 100% accuracy for a broad range of downstream tasks and up to 85x lower total cost of ownership (i.e., compute + storage) compared to conventional methods.
title AHA: Scalable Alternative History Analysis for Operational Timeseries Applications
topic Databases
url https://arxiv.org/abs/2601.04432