Full-Time
Automated certification and compliance platform
$170k - $220k/yr
No H1B Sponsorship
Santa Monica, CA, USA + 1 more
More locations: San Francisco, CA, USA
Hybrid
In-person collaboration twice a week (Mondays and Thursdays); relocation to LA or working from SF office available.
US Citizenship Required
SiftStack provides automated certification and compliance tools tailored for fast-moving engineering teams. Its platform streamlines the certification process by generating automated reports, capturing institutional knowledge, and documenting data and decisions to speed up investigations and reduce software costs. It includes cloud-spending optimization to keep tools responsive and within budget, and supports easy onboarding so engineers can start in an hour or less. The product also enhances collaboration with advanced teamwork features, and uses real-time rules on a streaming event engine to spot anomalies quickly for fast decision-making. Unified visualization and query-optimized storage enable situational awareness across millions of datasets and time-synchronized logs. SiftStack operates on a subscription model, serving engineering teams across industries to improve compliance workflows and overall productivity.
Company Size
51-200
Company Stage
Series B
Total Funding
$67M
Headquarters
El Segundo, California
Founded
2022
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Remote Work Options
Company Equity
Flexible Work Hours
Sift raises $42M to build the missing data layer for Physical AI. Sift has raised a $42 million Series B led by StepStone, with participation from GV, Riot Ventures, Fika Ventures, and CIV, bringing total funding to $67 million. The company is targeting a growing gap in AI infrastructure: the ability to make physical machines understandable to AI systems. As AI moves beyond software into real-world environments, systems like rockets, satellites, and autonomous vehicles generate millions of sensor data points per second across audio, video, logs, and telemetry. But unlike software environments, this data is largely unstructured and difficult to interpret. Sift's platform aims to solve this by transforming raw machine data into structured, queryable formats that both engineers and AI models can use. In effect, it acts as an "observability layer" for hardware, bringing a level of visibility that software systems have developed over the past two decades. Founded by former SpaceX engineers, the company is already working with organizations such as ULA, Astranis, and K2 Space, supporting systems that operate at fleet scale rather than as isolated machines. The shift from managing single assets to operating constellations of hundreds or thousands of systems is driving demand for automation in monitoring, anomaly detection, and performance validation. With the new funding, Sift plans to expand its engineering team and platform capabilities as more industries move toward AI-controlled hardware systems across defense, space, manufacturing, and autonomy. TheMarketAI take. TheMarketAI has written before that physical AI is fundamentally different from software AI. Large language models benefit from abundant, structured data. Physical systems do not. Instead, they produce messy, high-frequency, multi-modal data that is difficult to interpret and even harder to scale. Sift is tackling a less visible but critical layer of that problem: making the physical world legible to AI. Before AI can control machines, it needs to understand them. That requires translating raw sensor output into structured data pipelines - something that, until now, has largely been handled manually or through fragmented tools. This reinforces a broader theme in Physical AI: progress may not come from better models alone, but from infrastructure that bridges the gap between real-world complexity and machine understanding. The physical part of AI remains both the hardest and most interesting frontier. Companies like Sift are betting that whoever builds the data layer wins.
Sift, founded by SpaceX veterans, has raised $42 million in a Series B round led by StepStone, with participation from GV, Riot Ventures, Fika Ventures and CIV. The funding brings total capital raised to $67 million. The company provides an intelligence layer that transforms raw sensor data from mission-critical machines into structured, queryable information for engineers and AI systems. Its platform addresses the infrastructure gap between AI capabilities and physical hardware operation across space, defence, manufacturing and autonomy sectors. Sift's clients include ULA, Astranis, K2 Space and Parallel Systems. The company plans to nearly double its workforce from 70 employees and relocate to larger headquarters in Marina Del Rey. CEO Karthik Gollapudi and co-founder Austin Spiegel previously built monitoring systems for rockets and spacecraft at SpaceX.
/PRNewswire/ -- Sift, the intelligence layer for mission-critical machines, today announced it has closed a $42 million Series B financing round led by...
By integrating Sift's real-time data observability tools with Manufacturo's process and genealogy tracking, manufacturers can now achieve full hardware traceability - from component testing to final assembly.
JetZero partnered with Sift, recognizing the shared values of technical excellence and a mission-critical mindset.