Machine Learning Jobs at Tiger Analytics with Visa Sponsorship
Machine Learning jobs at Tiger Analytics involve hiring engineers and data scientists into client-facing analytics roles across industries like financial services, retail, and healthcare. The company has a consistent track record of sponsoring work visas for Machine Learning talent, supporting candidates from F-1 OPT through H-1B visa and permanent residence pathways.
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INTRODUCTION
Tiger Analytics is an advanced analytics consulting firm. We are the trusted analytics partner for several Fortune 100 companies, enabling them to generate business value from data. Our consultants bring deep expertise in Data Science, Machine Learning, and AI. Our business value and leadership have been recognized by various market research firms, including Forrester and Gartner. We are looking for a motivated and passionate Machine Learning Engineers for our team.
ROLE AND RESPONSIBILITIES
As a Senior ML OPS Engineer, you will be joining a team of experienced Machine Learning Engineers that support, build, and enable Machine capabilities across the organization. You will work closely with internal customers and infrastructure teams to build our next generation data science workbench and ML platform and products. You will be able to further expand your knowledge and develop your expertise in modern Machine Learning frameworks, libraries and technologies while working closely with internal stakeholders to understand the evolving business needs. If you have a penchant for creative solutions and enjoy working in a hands-on, collaborative environment, then this role is for you.
What you'll do in the role:
- Implement scalable and reliable systems leveraging cloud-based architectures, technologies and platforms to handle model inference at scale
- Deploy and manage machine learning & data pipelines in production environments
- Work on containerization and orchestration solutions for model deployment
- Participate in fast iteration cycles, adapting to evolving project requirements
- Collaborate as part of a cross-functional Agile team to create and enhance software that enables state-of-the-art big data and ML applications
- Leverage CICD best practices, including test automation and monitoring, to ensure successful deployment of ML models and application code
- Ensure all code is well-managed to reduce vulnerabilities, models are well-governed from a risk perspective, and the ML follows best practices in Responsible and Explainable AI
- Collaborate with Data scientists, software engineers, data engineers, and other stakeholders to develop and implement best practices for MLOps, including CI/CD pipelines, version control, model versioning, monitoring, alerting and automated model deployment
- Manage and monitor machine learning infrastructure, ensuring high availability and performance
- Implement robust monitoring and logging solutions for tracking model performance and system health
- Monitor real-time performance of deployed models, analyze performance data, and proactively identify and address performance issues to ensure optimal model performance
- Troubleshoot and resolve production issues related to ML model deployment, performance, and scalability in a timely and efficient manner
- Implement security best practices for machine learning systems and ensure compliance with data protection and privacy regulations
- Collaborate with platform engineers to effectively manage cloud compute resources for ML model deployment, monitoring, and performance optimization
- Develop and maintain documentation, standard operating procedures, and guidelines related to MLOps processes, tools, and best practices
BASIC QUALIFICATIONS
- Master's or doctoral degree in computer science, electrical engineering, mathematics, or a similar field
- Typically requires 7+ years of hands-on work experience developing and applying advanced analytics solutions in a corporate environment with at least 4 years of experience programming with Python
- At least 3 years of experience designing and building data-intensive solutions using distributed computing
- At least 3 years of experience productionizing, monitoring, and maintaining models
MUST HAVE SKILLS
- Understanding of Azure stack like Azure Machine Learning, Azure Data Factory, Azure Databricks, Azure Kubernetes Service, Azure Monitor, etc
- Demonstrated expertise in building and deploying AI/Machine Learning solutions at scale leveraging cloud such as AWS, Azure, or Google Cloud Platform
- Experience in developing and maintaining APIs (e.g.: REST)
- Experience specifying infrastructure and Infrastructure as a code (e.g.: Ansible, Terraform)
- Experience in designing, developing & scaling complex data & feature pipelines feeding ML models and evaluating their performance
- Ability to work across the full stack and move fluidly between programming languages and MLOps technologies (e.g.: Python, Spark, DataBricks, Github, MLFlow, Airflow)
- Expertise in Unix Shell scripting and dependency-driven job schedulers
- Understanding of security and compliance requirements in ML infrastructure
- Experience with visualization technologies (e.g.: RShiny, Streamlit, Python DASH, Tableau, PowerBI)
- Familiarity with data privacy standards, methodologies, and best practices
BENEFITS
Significant career development opportunities exist as the company grows. The position offers a unique opportunity to be part of a small, fast-growing, challenging and entrepreneurial environment, with a high degree of individual responsibility.
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Get Access To All JobsTips for Finding Machine Learning Jobs at Tiger Analytics
Align your portfolio to client verticals
Tiger Analytics deploys ML talent on client engagements in retail, CPG, and financial services. Projects demonstrating applied ML in these verticals, not just academic benchmarks, signal immediate billability and strengthen your case during technical screening.
Confirm OPT STEM extension eligibility early
Tiger Analytics is an E-Verify employer, which is required for the 24-month STEM OPT extension. Verify your degree program is on the STEM Designated Degree Program List before applying so there's no delay coordinating the extension with your DSO.
Target roles specifying applied ML over research
Postings for senior ML engineers and staff data scientists at Tiger Analytics emphasize production model deployment and feature engineering over pure research. Framing your resume around business impact and model operationalization improves your fit signal for these client-delivery roles.
Understand how H-1B timing affects your start date
If you need cap-subject H-1B sponsorship, the USCIS lottery opens in March with an October 1 start date at the earliest. Factor this into your offer negotiation so both you and Tiger Analytics have aligned expectations on when work can begin.
Ask about EB sponsorship during offer negotiation
Tiger Analytics sponsors EB-2 and EB-3 green cards, but PERM labor certification timelines vary by role classification. Clarify during the offer stage whether your position qualifies for EB-2 or EB-3 so you can assess the realistic green card timeline before accepting.
Use Migrate Mate to surface open ML roles
Machine Learning openings at Tiger Analytics span multiple seniority levels and practice areas. Use Migrate Mate to filter specifically for Tiger Analytics ML roles by visa type so you're applying to positions where your sponsorship situation is already a known fit.
Frequently Asked Questions
Does Tiger Analytics sponsor H-1B visas for Machine Learning roles?
Yes, Tiger Analytics sponsors H-1B visas for Machine Learning positions. If you're on F-1 OPT, the company can employ you through your OPT period and then file an H-1B petition during the USCIS annual lottery. Cap-subject petitions must be submitted in March for an October 1 start, so timing your job search around that window matters.
How do I apply for Machine Learning jobs at Tiger Analytics?
You can browse and apply for Machine Learning roles at Tiger Analytics through Migrate Mate, which filters open positions by visa sponsorship type so you can identify roles suited to your situation. Tiger Analytics' hiring process for ML roles typically involves a recruiter screen, technical assessment covering modeling and coding, and panel interviews focused on applied problem-solving and client communication.
Which visa types does Tiger Analytics commonly sponsor for Machine Learning positions?
Tiger Analytics sponsors H-1B, TN visa, F-1 OPT, and F-1 CPT for Machine Learning roles, and also supports EB-2 and EB-3 immigrant visa pathways for longer-term permanent residence. TN visa is available to Canadian and Mexican nationals in qualifying occupations. F-1 CPT is typically used for internship placements rather than full-time ML engineering roles.
What qualifications does Tiger Analytics expect for Machine Learning roles?
Most Machine Learning roles at Tiger Analytics require a bachelor's or master's degree in computer science, statistics, or a closely related quantitative field, along with hands-on experience building and deploying models in Python or R. Familiarity with cloud ML platforms such as AWS SageMaker or Azure ML and experience in client-facing or consulting environments strengthens your candidacy significantly.
How long does the visa sponsorship process take for a Machine Learning hire at Tiger Analytics?
Timeline depends on your current status. F-1 OPT hires can start work immediately if OPT is authorized. H-1B cap-subject petitions take six to nine months from lottery registration to work authorization, though USCIS premium processing can reduce the adjudication period to roughly 15 business days once the petition is filed. EB-based green card processing through PERM typically spans one to three years or more depending on your country of birth.