Infrastructure Engineer Visa Sponsorship Jobs in New York
Infrastructure engineer visa sponsorship jobs in New York are concentrated in New York City, where major employers like JPMorgan Chase, IBM, and Verizon maintain large engineering teams across finance, telecommunications, and cloud infrastructure. The Hudson Valley and Albany corridor also attract state government and defense-adjacent infrastructure work, giving candidates meaningful options beyond Manhattan.
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INTRODUCTION
In the face of rising threats like severe storms and wildfires, increasing pressure on affordability, and unprecedented demands for system expansion, Treeswift empowers energy companies to modernize their field work to meet the growth and challenges ahead. To accomplish our mission, we deploy our sensors into our customers' field operations, typically on backpacks or vehicles. The resulting trove of LiDAR and imagery data is processed through our AI models to deliver actionable analytics through our web platform. To date, our technology has enabled utilities to reduce wildfire, regulatory and outage risk from vegetation, avoid delays and cost overruns in new construction, and accelerate recovery from severe storms. Since our first utility pilot in June 2024, we have rapidly expanded and now work with three of the five largest utilities in the United States and are expanding across new customers and use cases. To tackle this challenge, we are bringing together a team of mission-driven experts with deep industry experience in robotics (Penn, Caltech, CMU) and enterprise software development (Palantir, Stripe, Oracle, MongoDB). We have raised funding from leading investors including Penny Pritzker’s Inspired Capital. Treeswift is headquartered in lower Manhattan, and maintains an office in Philadelphia. We also have some customer-facing team members based closer to our customer sites (i.e. Bay Area). We strongly support our employees (including software engineers) to visit customer sites — ask us about this! We hope you’ll join us on this journey.
ABOUT THE ROLE
Help us scale and harden the platform that schedules our pipelines, runs machine learning training, and hosts our web app. We run Apache Airflow on Astronomer with DAGs that orchestrate high-volume processing across AWS and Kubernetes, including machine learning inference inside pipeline tasks. You will build the observability and reliability foundations that let us run this system confidently as customer data volume grows: monitoring, alerting, performance/cost visibility, and clear operational practices.
Stay curious, collaborative, and cross-functional while also taking ownership of problems. We translate complex, real-world requirements from a critical industry into high-quality data products, so understanding the business holistically is key. We take pride in managing complexity and providing high-fidelity data that our customers can use to make better-informed decisions.
* You’ll be our first full-time SRE/infrastructure engineer, so we’ll look to you for leadership on how to improve and scale our infrastructure to support each part of the platform. Our data pipeline, machine learning training platform, and web app could all benefit from further productionization.
Responsibilities
Partner with the data platform and engineering teams to understand how changes propagate across pipeline execution (Astronomer-hosted Airflow DAGs), containerized workers (Kubernetes), and AWS services (S3, SQS, Lambda, Step Functions, ECS).
Design and implement reliability and observability for high-volume pipeline operations, including:
- actionable monitoring/alerting for DAG/task failures and reruns
- visibility into operational workflows like flight orchestration (including DLQ/failed-message alerting and notification pathways)
- dashboards and SLO/SLI definitions focused on correctness, throughput, and pipeline health
Own CI/CD guardrails for production changes: build/deploy validation and safe rollout mechanics for Astronomer deployments (image builds pushed to ECR, and Airflow configuration updates via Astronomer CLI variable updates)
Make machine learning inference operations more reliable and observable:
- instrument inference runs executed inside pipeline runners (model checkpoint resolution, S3 sync behavior, thresholds and fallback behavior, and output correctness)
- add operational visibility for inference outcomes (e.g., unknown classification rates, fallback usage, and failure modes)
* Create operational tooling and continuously improve systems (‘leave it better than you found it’), including:
- runbooks, incident learnings, and engineering standards for debugging at scale
- automate away toil in deployment and operations workflows as we learn what hurts most
ON-CALL / INCIDENT RESPONSE
There is not currently an established on-call rotation for this platform, and the pipelines do not require real-time processing. That said, you’ll still help lead reliability improvements and operational readiness—so the team has faster diagnosis, better alerts, and safer releases when issues do occur.
WHAT WE’RE LOOKING FOR
You are an experienced software engineer where the last 7-10 years required significant time on observability, systems/infrastructure engineering, SRE, or DevOps (ideally in a cloud environment).
Ability to reason about architecture end-to-end and articulate your thoughts with product impact in mind (data movement, execution, failure handling, and operational visibility).
Hands-on experience with infrastructure-as-code (Terraform and similar) and using it to deliver reliable environments.
Experience with container orchestration and debugging in practice (Kubernetes and/or ECS/container-based deployments).
Strong Linux debugging skills and demonstrated ability to investigate production issues with logs/metrics and clear hypotheses.
Empathy and communication: you can collaborate effectively with engineers across teams (especially the data platform team) and explain tradeoffs clearly.
NICE-TO-HAVES
Experience working in early-stage or fast-moving environments where ownership and processes evolve quickly.
Experience with Apache Airflow and/or Astronomer.
Experience with AWS, although other cloud providers are fine. (DuploCloud experience is also helpful.)
Experience with geospatial/imagery/lidar/point-cloud style domains.
* ML Ops skills (model deployment/inference reliability, packaging, CI/CD for model artifacts, and operational observability for inference pipelines).
WORK LOCATION
This is a full-time, hybrid role based out of our Lower Manhattan, NYC office (2 days per week in person, currently pinned to Tuesdays and Wednesdays).
SALARY
The estimated salary range for this position is $160,000 - 215,000 USD. Total compensation for this position is determined by skills, qualifications, relevant work experience, location, and other factors. This salary estimate excludes the value of any potential bonuses; the value of any benefits offered; and the potential future value of any long-term incentives. This information is provided per the New York City Human Rights Law. Please note that the range provided is applicable only to New York City-based applicants. Base compensation may vary if the work location is outside of New York City.
Treeswift is proud to be an equal opportunity employer. We provide employment opportunities without regard to age, race, color, ancestry, national origin, religion, disability, sex, gender identity or expression, sexual orientation, veteran status, or any other protected status in accordance with applicable law. If you require any accommodations during the recruitment process, whether it be alternate forms of material, accessible meeting rooms, etc., please let us know and we will work with you to meet your needs.

INTRODUCTION
In the face of rising threats like severe storms and wildfires, increasing pressure on affordability, and unprecedented demands for system expansion, Treeswift empowers energy companies to modernize their field work to meet the growth and challenges ahead. To accomplish our mission, we deploy our sensors into our customers' field operations, typically on backpacks or vehicles. The resulting trove of LiDAR and imagery data is processed through our AI models to deliver actionable analytics through our web platform. To date, our technology has enabled utilities to reduce wildfire, regulatory and outage risk from vegetation, avoid delays and cost overruns in new construction, and accelerate recovery from severe storms. Since our first utility pilot in June 2024, we have rapidly expanded and now work with three of the five largest utilities in the United States and are expanding across new customers and use cases. To tackle this challenge, we are bringing together a team of mission-driven experts with deep industry experience in robotics (Penn, Caltech, CMU) and enterprise software development (Palantir, Stripe, Oracle, MongoDB). We have raised funding from leading investors including Penny Pritzker’s Inspired Capital. Treeswift is headquartered in lower Manhattan, and maintains an office in Philadelphia. We also have some customer-facing team members based closer to our customer sites (i.e. Bay Area). We strongly support our employees (including software engineers) to visit customer sites — ask us about this! We hope you’ll join us on this journey.
ABOUT THE ROLE
Help us scale and harden the platform that schedules our pipelines, runs machine learning training, and hosts our web app. We run Apache Airflow on Astronomer with DAGs that orchestrate high-volume processing across AWS and Kubernetes, including machine learning inference inside pipeline tasks. You will build the observability and reliability foundations that let us run this system confidently as customer data volume grows: monitoring, alerting, performance/cost visibility, and clear operational practices.
Stay curious, collaborative, and cross-functional while also taking ownership of problems. We translate complex, real-world requirements from a critical industry into high-quality data products, so understanding the business holistically is key. We take pride in managing complexity and providing high-fidelity data that our customers can use to make better-informed decisions.
* You’ll be our first full-time SRE/infrastructure engineer, so we’ll look to you for leadership on how to improve and scale our infrastructure to support each part of the platform. Our data pipeline, machine learning training platform, and web app could all benefit from further productionization.
Responsibilities
Partner with the data platform and engineering teams to understand how changes propagate across pipeline execution (Astronomer-hosted Airflow DAGs), containerized workers (Kubernetes), and AWS services (S3, SQS, Lambda, Step Functions, ECS).
Design and implement reliability and observability for high-volume pipeline operations, including:
- actionable monitoring/alerting for DAG/task failures and reruns
- visibility into operational workflows like flight orchestration (including DLQ/failed-message alerting and notification pathways)
- dashboards and SLO/SLI definitions focused on correctness, throughput, and pipeline health
Own CI/CD guardrails for production changes: build/deploy validation and safe rollout mechanics for Astronomer deployments (image builds pushed to ECR, and Airflow configuration updates via Astronomer CLI variable updates)
Make machine learning inference operations more reliable and observable:
- instrument inference runs executed inside pipeline runners (model checkpoint resolution, S3 sync behavior, thresholds and fallback behavior, and output correctness)
- add operational visibility for inference outcomes (e.g., unknown classification rates, fallback usage, and failure modes)
* Create operational tooling and continuously improve systems (‘leave it better than you found it’), including:
- runbooks, incident learnings, and engineering standards for debugging at scale
- automate away toil in deployment and operations workflows as we learn what hurts most
ON-CALL / INCIDENT RESPONSE
There is not currently an established on-call rotation for this platform, and the pipelines do not require real-time processing. That said, you’ll still help lead reliability improvements and operational readiness—so the team has faster diagnosis, better alerts, and safer releases when issues do occur.
WHAT WE’RE LOOKING FOR
You are an experienced software engineer where the last 7-10 years required significant time on observability, systems/infrastructure engineering, SRE, or DevOps (ideally in a cloud environment).
Ability to reason about architecture end-to-end and articulate your thoughts with product impact in mind (data movement, execution, failure handling, and operational visibility).
Hands-on experience with infrastructure-as-code (Terraform and similar) and using it to deliver reliable environments.
Experience with container orchestration and debugging in practice (Kubernetes and/or ECS/container-based deployments).
Strong Linux debugging skills and demonstrated ability to investigate production issues with logs/metrics and clear hypotheses.
Empathy and communication: you can collaborate effectively with engineers across teams (especially the data platform team) and explain tradeoffs clearly.
NICE-TO-HAVES
Experience working in early-stage or fast-moving environments where ownership and processes evolve quickly.
Experience with Apache Airflow and/or Astronomer.
Experience with AWS, although other cloud providers are fine. (DuploCloud experience is also helpful.)
Experience with geospatial/imagery/lidar/point-cloud style domains.
* ML Ops skills (model deployment/inference reliability, packaging, CI/CD for model artifacts, and operational observability for inference pipelines).
WORK LOCATION
This is a full-time, hybrid role based out of our Lower Manhattan, NYC office (2 days per week in person, currently pinned to Tuesdays and Wednesdays).
SALARY
The estimated salary range for this position is $160,000 - 215,000 USD. Total compensation for this position is determined by skills, qualifications, relevant work experience, location, and other factors. This salary estimate excludes the value of any potential bonuses; the value of any benefits offered; and the potential future value of any long-term incentives. This information is provided per the New York City Human Rights Law. Please note that the range provided is applicable only to New York City-based applicants. Base compensation may vary if the work location is outside of New York City.
Treeswift is proud to be an equal opportunity employer. We provide employment opportunities without regard to age, race, color, ancestry, national origin, religion, disability, sex, gender identity or expression, sexual orientation, veteran status, or any other protected status in accordance with applicable law. If you require any accommodations during the recruitment process, whether it be alternate forms of material, accessible meeting rooms, etc., please let us know and we will work with you to meet your needs.
Infrastructure Engineer Job Roles in New York
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Search Infrastructure Engineer Jobs in New YorkInfrastructure Engineer Jobs in New York: Frequently Asked Questions
Which companies sponsor visas for infrastructure engineers in New York?
Large technology and financial services firms are the most consistent sponsors for infrastructure engineers in New York. JPMorgan Chase, Citigroup, IBM, Verizon, and Goldman Sachs have sustained histories of H-1B sponsorship for infrastructure and systems engineering roles. Cloud-focused teams at major consulting firms such as Deloitte and Accenture also file regularly from their New York offices. Mid-size managed service providers and data center operators sponsor as well, though less predictably.
Which visa types are most common for infrastructure engineer roles in New York?
The H-1B is the most common visa category for infrastructure engineers in New York, given that roles requiring a bachelor's degree in computer science, electrical engineering, or a related field generally qualify as specialty occupations. L-1B visas appear frequently in large multinational firms transferring engineers from overseas offices into New York. Candidates with Canadian or Mexican citizenship may also qualify under the TN visa for specific engineering classifications without entering the H-1B lottery.
Which cities in New York have the most infrastructure engineer sponsorship jobs?
New York City accounts for the significant majority of infrastructure engineer sponsorship activity in the state, particularly in Midtown Manhattan and Lower Manhattan where financial institutions and large tech firms cluster. Buffalo is a secondary market with growing data center investment and some state-funded infrastructure initiatives. Albany sees sponsorship activity tied to state government IT projects and nearby university research partnerships. Remote-eligible roles posted to New York City addresses also expand the practical reach of these listings.
How to find infrastructure engineer visa sponsorship jobs in New York?
Migrate Mate is built specifically for international candidates seeking visa sponsorship and lets you filter infrastructure engineer roles by state, so New York listings are immediately surfaced without sorting through positions that don't sponsor. Beyond browsing Migrate Mate, focusing your search on employers with documented H-1B filings in New York's finance and cloud infrastructure sectors will save significant time. Targeting companies with dedicated international hiring programs improves your chances of a streamlined sponsorship process.
Are there state-specific considerations for infrastructure engineer visa sponsorship in New York?
New York City's prevailing wage requirements under Department of Labor guidelines are among the higher benchmarks in the country due to the city's cost of living, which affects what sponsoring employers must certify on Labor Condition Applications. Infrastructure engineers working in finance-adjacent roles may also encounter additional employer compliance requirements around security clearances or background checks that can affect hiring timelines. New York's strong university pipeline from Columbia, Cornell Tech, and NYU Tandon produces competitive local candidates, so international applicants benefit from highlighting specialized infrastructure skills.
What is the prevailing wage for sponsored infrastructure engineer jobs in New York?
U.S. employers sponsoring a visa must pay at least the prevailing wage, which is what workers in the same role, area, and experience level typically earn. The Department of Labor sets this rate to make sure companies aren't hiring foreign workers simply because they'd accept lower pay than a U.S. worker. It varies by job title, location, and experience. You can look up current prevailing wage rates for any occupation and location using the OFLC Wage Search page.
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