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SigNoz (YC W21), the Open-Source Datadog Alternative, Announces Hiring Across Various Roles

SigNoz, an open-source observability platform and Y Combinator Winter 2021 alumnus, has announced that it is actively hiring for multiple positions. The company, often described as an open-source alternative to Datadog, is expanding its team. Further details regarding the specific roles and application process are available on their careers page. This move indicates growth and a continued commitment to developing its open-source solution in the observability space.

Hacker News

SigNoz, a company that emerged from the Y Combinator Winter 2021 batch and is recognized for its open-source observability platform, has made an announcement regarding its current hiring initiatives. The company, which positions itself as an open-source alternative to established platforms like Datadog, is actively seeking to fill various roles across its organization. This recruitment drive suggests a period of expansion for SigNoz as it continues to develop and enhance its offerings in the observability market. Interested candidates are encouraged to visit the official SigNoz careers page for comprehensive information on available positions and the application procedure. The announcement, originating from Hacker News and dated March 7, 2026, highlights SigNoz's ongoing growth and its commitment to building a robust team to support its open-source mission.

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