Mondo

Data Scientist

โญ - Featured Role | Apply direct with Data Freelance Hub
This role is a Data Scientist position for a 12-month contract, remote within Pacific, Mountain, or Central time zones. Pay ranges from $65/hr to $75/hr. Requires 4+ years of data science experience, 3+ years in MLOps, and proficiency in SQL and Python.
๐ŸŒŽ - Country
United States
๐Ÿ’ฑ - Currency
$ USD
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๐Ÿ’ฐ - Day rate
520
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๐Ÿ—“๏ธ - Date
July 18, 2026
๐Ÿ•’ - Duration
More than 6 months
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๐Ÿ๏ธ - Location
Remote
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๐Ÿ“„ - Contract
W2 Contractor
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๐Ÿ”’ - Security
Unknown
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๐Ÿ“ - Location detailed
Phoenix, AZ
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๐Ÿง  - Skills detailed
#Data Science #Data Analysis #AI (Artificial Intelligence) #Scala #GIT #Model Deployment #AWS (Amazon Web Services) #Monitoring #Version Control #Python #MLflow #Azure cloud #Snowflake #Cloud #SQL (Structured Query Language) #Data Quality #SageMaker #ML (Machine Learning) #Deployment #Azure
Role description
Apply now: Data Scientist , Remote. Start date is ASAP for this 12 Month Contract position. Job Title: Data Scientist Location/Type: Remote (Candidate must reside in Pacific, Mountain, or Central time zone. Eastern time zone and international candidates will not be considered.) Start Date: ASAP Duration: Contract, 12 Months Compensation Range: $65/hr to $75/hr W2 Benefits: Eligible for Health, Dental, Vision, and 401K Visa Sponsorship: Not eligible for visa sponsorship Job Description: The client is seeking a Data Scientist with deep expertise in Generative AI, agentic architectures, and MLOps to design, build, and scale end to end AI solutions while embedding Responsible AI practices across the full development lifecycle. This role requires hands on MLOps maturity, not just model building, the candidate will own how models move from experimentation into production and stay reliable once they get there. Job Summary: โ€ข Design and deploy end to end RAG solutions and autonomous AI agents in cloud and enterprise environments โ€ข Build and scale machine learning and AI models on cloud platforms, primarily AWS or Azure โ€ข Develop and maintain MLOps pipelines to support model deployment, monitoring, versioning, and governance โ€ข Own CI/CD for ML workflows, including automated retraining, model registry management, and rollback procedures โ€ข Implement model monitoring for drift, performance degradation, and data quality issues in production โ€ข Apply statistical modeling techniques to solve complex business problems โ€ข Collaborate with stakeholders across the organization to translate requirements into scalable AI solutions โ€ข Embed Responsible AI practices across model development, deployment, and governance workflows โ€ข Contribute across the full development lifecycle, from experimentation through production release Minimum Requirements: โ€ข Location: candidate must be based in Pacific, Mountain, or Central time zone. This is a hard requirement, not a preference. โ€ข Minimum 4 years of experience working specifically as a Data Scientist (title and scope must match, not adjacent titles like Data Analyst or ML Engineer alone) โ€ข Minimum 3 years of hands on MLOps experience, specifically model deployment, monitoring, and lifecycle management in production environments (not just model development or notebooks) โ€ข Direct experience with at least one MLOps tooling stack such as MLflow, Kubeflow, SageMaker Pipelines, or Azure ML Pipelines โ€ข Master's degree in a STEM field โ€ข 4 years of proficiency in SQL โ€ข 4 years of proficiency in Python โ€ข Hands on experience with AWS or Azure cloud platforms โ€ข Proficiency with Git for version control โ€ข Strong communication skills with demonstrated ability to work cross functionally with stakeholders Preferred Qualifications: โ€ข Experience with Snowflake for data warehousing and analytics โ€ข Hands on experience with AWS specifically, in addition to general cloud proficiency โ€ข Startup or fast paced environment mindset with comfort navigating ambiguity โ€ข Active personal use of AI tools and familiarity with the evolving AI landscape