Implement data assets for serving data – Semantic Layer. Perform internal testing and system integration testing (SIT) on developed data assets.…
The ideal candidate will have a strong background in data engineering, cloud-based architectures, and proficiency in implementing data pipelines to transform……
Aptitude for producing clear, structured data specifications for the data engineering team. No less than 5 years of hands-on professional experience in data……
Implement data assets for serving data – Semantic Layer. Perform internal testing and system integration testing (SIT) on developed data assets.…
Foster effective internal communication with Reservation agents to validate post-booking changes. Planning and managing a 5-star vacation from scratch requires……
Collaborate with data scientists, agent engineers, BI developers, and infrastructure teams to translate data requirements into reliable, production-grade……
Understanding of APIs and general system design. Students with at least 18 months remaining until graduation (graduating in December 2027 or later).…
Proven history of creating AI agents that leverage function calling to interact with external systems and databases. Paid time off and sick leave.…
Understanding data, creating custom reports. Be in control of the data related to current bench and their potential opportunities, making sure data is accurate……
Implement and optimize multi-agent systems, leveraging standards and protocols such as Model Context Protocol (MCP) and emerging frameworks for agent……
Build and maintain an MCP (Model Context Protocol) server—a standardized adapter that connects AI applications (e.g., LLMs/agents) to external tools, APIs, and……
At least 5 years of data engineering background, including direct work with AI/ML data infrastructure. This position centers on developing and maintaining data……
Contribute to the evolution of autonomous agent architectures and RAG systems. Experience orchestrating data and AI pipelines with Data Factory or Event Hub.…
Build multi-agent systems where specialized agents collaborate, hand off work, and maintain context across workflow stages. What will you be doing?…
Build multi-agent systems where specialized agents collaborate, hand off work, and maintain context across workflow stages. Competitive monthly rate in USD.…
Experience with data quality frameworks and observability tools for data pipelines. Collaborate with data scientists and security researchers to understand data……
This role focuses on building and supporting data infrastructure that powers AI-driven products and intelligent agent systems. Paid time off and sick leave.…
Experience integrating AI with enterprise systems (APIs, data platforms, event-driven systems). Work at the intersection of AI, data, and distributed systems.…
Design integrated data and AI architectures connecting marketing platforms to data warehouses and LLM services. Client-Facing Technical Leadership (50%).…
Experience debugging or improving existing systems. Work on real systems used by operating businesses. Prototype quickly — but also improve and harden systems……
Lead the learning and reasoning capabilities of the platform: RAG architectures, agentic data systems, knowledge graphs, and the patterns that let Stratus's……
Build operational AI feedback loops that continuously improve AI systems using live interaction data. Design agent-trigger systems enabling autonomous AI……
Ideal candidates bring professional experience in geospatial analysis, GIS systems, or spatial modeling within industries such as crisis management, logistics,……
As a Data Analytics Intern, you will be expected to perform the following activities in alignment with your experience level:
Gather, understand, and document functional and non-functional requirements from stakeholders to support analytical solutions
Write or collaborate on the creation of business requirements documents (BRDs) detailing solution characteristics, business expectations, and anticipated value.
Create diagrams that illustrate high-level data domains and key concepts involved in solution design.
Document required measures and KPIs to support business objectives, including clear definitions and calculation logic.
Explore and understand data assets to be leveraged as sources for analytical solutions
Build and maintain detailed inventories of data assets required to deliver analytical solutions.
Profile data assets to understand their granularity, domain context, business meaning, definitions, data quality characteristics, and interrelationships.
Design solution architecture to consume, transform, and deliver data for analytical solutions – Data Marts / Data Lake
Design scalable and reusable logical data models for analytical repositories using relational and dimensional modeling techniques, integrating and conforming data from multiple sources.
Document entities, attributes, and relationships using logical data model diagrams.
Define detailed data movement requirements to populate modeled entities, including column mappings, joins, load strategies, and load dependencies.
Perform internal testing and system integration testing (SIT) on developed data assets.
Collaborate with cross-functional teams to deliver end-to-end analytical solutions, including:
Data Governance teams for integration of master and reference data
Data Services / Engineering teams for ETL development
Business stakeholders for user acceptance testing (UAT)
Data Quality teams to support periodic data quality assessments
Report and dashboard developers, acting as a subject-matter expert (SME) on the designed data assets
Production Support teams for troubleshooting and issue resolution
Implement data assets for serving data – Semantic Layer
Design and implement semantic-layer data assets to support reports, dashboards, self-service analytics, and other downstream consumption scenarios.
Create and maintain data dictionaries and documentation to enable and empower data consumers.
Demonstrate a solution‑owner mindset
Collaborate in backlog refinement, maintenance, and prioritization activities.
Actively participate in agile ceremonies, contributing to discussions on current work, next steps, dependencies, and risks.
Provide work breakdowns, effort estimates, and expected delivery timelines for assigned tasks.
Build and support diverse, high‑performing teams
Work effectively with a high degree of independence in a remote or hybrid environment.
Continuously expand professional value by learning emerging technologies and concepts and applying them to improve existing products, processes, and outcomes.
Required Qualifications – Experience, Skills, and Knowledge
Completion of at least the 2nd year and current enrollment in the 3rd or 4th year of an undergraduate program in Mathematics, Computer Science, Statistics, Business Management, Information Systems, or a related field
English proficiency at an advanced level (C1 or equivalent)
SQL: basic data querying (DQL) skills
Power BI: basic experience with report development or semantic model creation
Preferred Qualifications
Familiarity with Data Warehouses, Data Lakes, or Data Lakehouse architectures
Knowledge of relational and dimensional data modeling techniques
Exposure to agile methodologies such as SCRUM and tools like Azure DevOps
Awareness of cloud computing platforms such as Azure, Google Cloud, or Amazon Web Services, including Databricks
Interest or foundational knowledge in AI concepts, including prompting techniques or agent development
Exposure to Microsoft Fabric
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