Sift serves as a comprehensive observability platform specifically designed for contemporary, mission-critical hardware systems, equipping engineers with the necessary infrastructure and tools to efficiently ingest, store, normalize, and analyze high-frequency, high-cardinality telemetry and event data sourced from design, validation, manufacturing, and operations, all centralized into a single, coherent source of truth instead of relying on disjointed dashboards and scripts. By bringing various data types together, Sift aligns signals from different subsystems and organizes information to facilitate rapid searches, visual assessments, and traceability, thereby enabling teams to identify anomalies, conduct root-cause analysis, automate validation processes, and troubleshoot hardware with precision in real-time. Additionally, it enhances automated data reviews, allows for no-code visualization and querying of extensive datasets, supports ongoing anomaly detection, and integrates seamlessly with engineering workflows, including CI/CD pipelines and tools, thereby fostering telemetry governance, collaboration, and knowledge capture across previously isolated teams. This holistic approach not only improves operational efficiency but also empowers teams to make informed decisions based on rich, actionable insights derived from their telemetry data.