CBL Solutions

Cloud Architect

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Cloud Architect in San Jose, CA/Lehi, UT, on a contract basis, requiring 5+ years in data engineering, expertise in Azure, and strong diagramming skills. Must work EST hours and possess a Bachelor's degree in a related field.
🌎 - Country
United States
πŸ’± - Currency
$ USD
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πŸ’° - Day rate
Unknown
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πŸ—“οΈ - Date
December 5, 2025
πŸ•’ - Duration
Unknown
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🏝️ - Location
On-site
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πŸ“„ - Contract
Unknown
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πŸ”’ - Security
Unknown
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πŸ“ - Location detailed
San Jose, CA
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🧠 - Skills detailed
#Automation #Data Science #Visualization #Hadoop #Scala #Batch #Data Lake #Kubernetes #Big Data #Monitoring #Data Security #Documentation #GDPR (General Data Protection Regulation) #Spark (Apache Spark) #Cloud #Azure #SQL (Structured Query Language) #Storage #Strategy #Scripting #Security #Deployment #Data Ingestion #Agile #Databricks #Data Access #Python #AI (Artificial Intelligence) #Data Modeling #"ETL (Extract #Transform #Load)" #Leadership #Compliance #Distributed Computing #Computer Science #ML (Machine Learning) #Database Systems #Data Engineering #Data Architecture
Role description
Title: Cloud Architect Location: San Jose, CA/ Lehi, UT (Onsite) Contract Position Job Description: The Cloud Architect will be a key contributor to designing, evolving, and optimizing our company's cloud-based data architecture. This role requires a strong background in data engineering, hands-on experience building cloud data solutions, and a talent for communicating complex designs through clear diagrams and documentation. Must work EST hours. β€’ Strategy, Planning, and Roadmap Development: Align AI and ML system design with broader business objectives, shaping technology roadmaps and architectural standards for end-to-end cloud-driven analytics and AI adoption. β€’ Designing End-to-End AI/ML Workflows: Architect and oversee all stages of AI/ML pipeline developmentβ€”data ingestion, preprocessing, model training, validation, deployment, monitoring, and lifecycle management within cloud environments. β€’ Selecting Technologies and Services: Evaluate and choose optimal cloud services, AI/ML platforms, infrastructure components (compute, storage, orchestration), frameworks, and tools that fit operational, financial, and security requirements. β€’ Infrastructure Scalability and Optimization: Design and scale distributed cloud solutions capable of supporting real-time and batch processing workloads for AI/ML, leveraging technologies like Kubernetes, managed ML platforms, and hybrid/multi-cloud strategies for optimal performance. β€’ MLOps, Automation, and CI/CD Integration: Implement automated build, test, and deployment pipelines for machine learning models, facilitating continuous delivery, rapid prototyping, and agile transformation for data and AI-driven products. β€’ Security, Compliance, and Governance: Establish robust protocols for data access, privacy, encryption, and regulatory compliance (e.g., GDPR, ethical AI), coordinating with security experts to continuously assess risks and enforce governance. β€’ Business and Technical Collaboration: Serve as the liaison between business stakeholders, development teams, and data scientists, translating company needs into technical solutions, and driving alignment and innovation across departments. β€’ Performance Evaluation & System Monitoring: Monitor infrastructure and AI workloads, optimize resource allocation, troubleshoot bottlenecks, and fine-tune models and platforms for reliability and cost-efficiency at scale. β€’ Documentation and Best Practices: Create and maintain architectural diagrams, policy documentation, and knowledge bases for AI/ML and cloud infrastructure, fostering a culture of transparency, learning, and continuous improvement. β€’ Continuous Innovation: Stay abreast of new technologies, frameworks, trends in AI, ML, and cloud computing, evaluate emerging approaches, and lead strategic pilots or proofs-of-concept for next-generation solutions. β€’ Thisrole blends leadership in technology and systems architecture with hands-on expertise in cloud infrastructure, artificial intelligence, and machine learning, pivotal for driving innovation, scalability, and resilience in a modern enterprise. Required Qualifications β€’ Bachelor's degree in Computer Science, Data Science, Information Systems, or a related field. β€’ Minimum of 5 years of hands-on data engineering experience using distributed computing approaches (Spark, Map Reduce, DataBricks) β€’ Proven track record of successfully designing and implementing cloud-based data solutions in Azure β€’ Deep understanding of data modeling concepts and techniques. β€’ Strong proficiency with database systems (relational and non-relational). β€’ Exceptional diagramming skills with tools like Visio, Lucidchart, or other data visualization software. Preferred Qualifications β€’ Advanced knowledge of cloud-specific data services (e.g., DataBricks, Azure Data Lake). β€’ Expertise in big data technologies (e.g., Hadoop, Spark). β€’ Strong understanding of data security and governance principles. β€’ Experience in scripting languages (Python, SQL). Additional Skills β€’ Communication: Exemplary written and verbal communication skills to collaborate effectively with all teams and stakeholders. β€’ Problem-solving: Outstanding analytical and problem-solving skills for complex data challenges. β€’ Teamwork & Leadership: Ability to work effectively in cross-functional teams and demonstrate potential for technical leadership.