Over the next three months, our work on releasing drone video sensing analytics framework can resume with a sequence that begins with re‑establishing customer contact, stabilizing the technical core, and preparing for the upcoming industry events.
The first month focuses on restarting the structured conversations with early adopters in construction, utilities, and public‑safety programs. These conversations are necessary to validate the spatio‑temporal cataloging approach and to rebuild the cost‑effectiveness narrative. This period also includes bringing the ezbenchmark extension back to a stable point, ensuring the TPC‑H‑inspired queries, agentic retrieval components, and reasoning‑model evaluation behave consistently. As this stabilizes, the paper submissions can resume, organized around the same three themes described in the earlier plan: real‑time drone‑to‑cloud feedback loops, temporal and spatial cataloging for scene understanding, and the economics of reasoning‑augmented pipelines. With this foundation in place, I will produce a short technical article or vision deck to reintroduce the benchmarking philosophy and the importance of reproducibility in drone analytics. This aligns with the original intent that the first month should “ground the work in real user needs and enhance the solution proposed”
The second month shifts toward outward‑facing activity because several relevant events occur in this window. Early March includes the Japan UAS and C‑UAS Defense Industry Day, followed by the New England Next Generation Aviation Summit on March 19. AUVSI XPONENTIAL Europe takes place March 24–26, offering the first major venue for re‑engaging with the broader autonomy and drone‑analytics community. These events provide opportunities to submit abstracts, attend sessions, or request poster or panel slots. They also create a natural lead‑in to XPONENTIAL 2026 in Detroit in mid‑May, which is the most strategically important event on the horizon. During this same month, one or two small pilot engagements can be restarted with friendly customers. These pilots should demonstrate long‑path object tracking, temporal queries over cataloged scenes, and the efficiency gains of structured prompting. The data collected will strengthen both the publication narrative and the release announcement. By the end of this month, the framework should again be approaching a clean public‑facing shape, with a stable API surface, reproducible scripts, and documentation that makes ingestion, cataloging, and querying straightforward.
The third month becomes the release window. With the technical core stable and the narrative complete, the framework can be published on GitHub with a polished README, example workflows, and benchmark results, just as the original plan envisioned. A companion website and whitepaper can summarize the cost‑model analysis and explain the value of agentic retrieval in a way that is accessible to both researchers and practitioners. This period aligns with XPONENTIAL Detroit, which becomes the anchor for a coordinated announcement across LinkedIn, ResearchGate, and the drone‑analytics communities you follow. A virtual workshop can accompany the release, demonstrating real‑time ingestion, temporal and spatial cataloging, LLM‑as‑a‑judge evaluation, and cost‑optimized reasoning workflows. If early adopters are willing to share their pilot experience, even informally, their participation adds credibility. After the release, attention can shift back to the research community through paper submissions and guest talks to university labs or robotics groups. Engagement with open‑source UAV dataset communities can begin, positioning the benchmark as a complementary tool and helping build the ecosystem around the framework.