Data Engineer
cisco
Job Description
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Deep understanding and maintenance of data pipelines: Architect and stabilize transactional data pipelines for the Cisco IT Data team using a unified ingestion framework.
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Data consumption pipelines: Build and optimize pipelines for analytical reporting, self-service reporting, and data virtualization models tailored to consumer needs.
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Technical proof-of-concept: Lead POCs with emerging technologies to enhance analytics platforms, ensuring efficiency and alignment with business metrics and canonical data models.
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AI-driven insights: Define and implement AI/ML use cases (e.g., NLP to SQL conversational agents) to deliver actionable insights and accelerate business growth.
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Platform enablement: Empower and support multiple Corporate Functional portals (Customer Portal, Partner Portal, etc.) through scalable data analytics platforms.
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Data quality & governance: Ensure high data quality, consistency, and adherence to governance and security best practices.
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Collaboration: Work cross-functionally with analytics, engineering, and business teams to deliver end-to-end solutions.
Minimum Qualifications
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Bachelor’s degree in engineering, Technology, or a related field.
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5-8 years of demonstrated ability in Data Warehousing (DWH) with solid understanding of ETL processes and tools.
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Expertise in cloud data platforms and database technologies: Snowflake etc.
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Solid experience with ETL tools: Informatica, DBT.
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Proficiency with any data quality & observability tools: Snowflake DMF
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Experience with data streaming technologies: Kafka
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Hands-on scripting and programming skills: Unix shell Script, Python, SQL
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Experience in Enterprise AI integrations: MCP Server, RAG
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Experience in data modeling, designing database structures, and enabling varied data consumption models (virtualization, reporting, etc.).
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Shown ability to build, optimize, and maintain efficient, reusable, and reliable data pipelines.
Preferred Qualifications
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Experience with real-time data and stream processing systems.
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Familiarity with data visualization tools and techniques.
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Solid knowledge of data governance, security, and compliance practices.
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Exposure to AI/ML frameworks and technologies in the data domain (LLMs, predictive/prescriptive analytics, etc.).
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Experience working in agile teams; SAFe Agilist certification is a plus.
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Great teammate, Good communication skills and ability to lead technical initiatives.
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