Celito - Technical Architect
Job Description
Job Title: Technical Architect – Data Platform & Analytics (Life Sciences)
Employment Type: Full-time
\nWorkplace Type: Remote
\nTiming: Upto 11 pm IST (Overlap with PST)
\nThe Celito Team
\nThe Celito Team architects the buildout of simplified, integrated, and compliant technology
\nstacks. With both consulting and products, our expertise can help our customers save time and
\nmoney as they move from strategic Clinical & Quality management all the way to widespread
\nand profitable commercialisation.
\nJob Overview
\nThe Senior Data & Analytics Engineer / Technical Lead will serve as a key technical contributor
\nfor designing, implementing, and supporting scalable enterprise data and analytics solutions
\nacross AWS and/or Azure ecosystems. This role is responsible for leading hands-on engineering
\nactivities across modern cloud-native data platforms, including data ingestion, transformation,
\norchestration, reporting, and production support functions using technologies such as
\nDatabricks, Snowflake, SQL, Python, and PySpark. The individual will collaborate closely with
\narchitects, business stakeholders, analysts, and engineering teams to deliver scalable,
\nmaintainable, and analytics-ready solutions while supporting DevOps, CI/CD, operational
\nexcellence, and AI-enabled data initiatives across enterprise environments.
\nResponsibilities and Duties
\nJob Description
\n• Design and implement scalable enterprise data and analytics solutions across AWS and/or
\nAzure ecosystems
\n• Act as a hands-on technical lead contributing directly to architecture, engineering,
\noptimisation, troubleshooting, deployments, and production support activities
\n• Build and maintain ingestion, transformation, orchestration, integration, API, and reporting
\npipelines using modern cloud-native technologies, including Snowflake and Databricks
\n• Design scalable enterprise data models, semantic/business layers, and analytics-ready data
\nstructures for reporting and analytics platforms
\n• Support analytics and reporting platforms, including Tableau, Power BI, and Spotfire
\n• Support DevOps, CI/CD, deployment automation, release management, operational
\nsupport, and environment management processes
\n• Manage production support activities, including monitoring, incident management, root
\ncause analysis, performance optimisation, and issue resolution
\n• Support implementation of AI/ML and GenAI-enabled analytics solutions, reusable
\nframeworks, and AI-ready data platforms
\n• Collaborate with architects, business stakeholders, analysts, and engineering teams to
\ndeliver scalable and maintainable solutions
\n• Contribute to technical standards, engineering best practices, documentation, governance,
\nand operational excellence initiatives
\nQualifications
\n• Bachelor's degree in computer science/software engineering or equivalent combination of
\neducation and experience
\n• 8+ years of total IT experience
\n• 6+ years of hands-on experience designing and implementing Modern Data Platforms and
\nAnalytics solutions
\n• Experience working in Life Sciences, Pharma or MedTech domains
\n• Strong hands-on expertise in SQL, Python, PySpark, and cloud-native data engineering
\ntechnologies
\nJob Description
\n• Strong experience with Databricks, Snowflake, Redshift, Synapse, or similar modern data
\nplatforms
\n• Experience with AWS and/or Azure cloud services
\n• Strong ETL/ELT, orchestration, pipeline development, API integrations, and performance
\noptimisation experience
\n• Experience with Airflow, Step Functions, ADF, or similar orchestration technologies
\n• Strong understanding of enterprise data modelling, dimensional modelling,
\nsemantic/business layer modelling, and modern data warehousing concepts
\n• Experience supporting enterprise reporting and dashboarding solutions using Tableau,
\nPower BI, Spotfire, or similar platforms
\n• Experience with CI/CD, Git-based workflows, deployment automation, and operational
\nsupport activities
\n• Strong troubleshooting, incident management, debugging, optimisation, and production
\nsupport capabilities
\n• Good communication, collaboration, ownership, and technical leadership skills
\nPreferred Qualifications
\n• Experience with Terraform, DevOps, and automation frameworks
\n• Exposure to AI/ML, GenAI, LLMs, vector databases, or AI-enabled analytics solutions
\n• Familiarity with AI-ready data platforms, RAG architectures, intelligent automation, or cloud
\nAI services