Job Closed
This listing is no longer active.
Offshoring as a service. Hire the top 1% of flexible, global talent. $0 fees to get started.
Principal Solutions Engineer – AI Readiness, Unstructured Data Platforms
Location
Honduras
Posted
6 days ago
Salary
$2K - $3K / month
Seniority
Lead
Job Description
Principal Solutions Engineer – AI Readiness, Unstructured Data Platforms
Hire Hangar Global
• Translate customer AI, compliance, and data governance goals into scalable technical architectures • Design phased deployment strategies across on-prem and cloud ecosystems • Execute and manage proof-of-value engagements with defined success metrics • Lead technical workshops and stakeholder alignment sessions • Optimize system performance, validate throughput, and ensure production readiness • Develop technical documentation and best practices for enterprise rollout • Provide structured customer insights to influence product roadmap decisions
Job Requirements
- Extensive experience in enterprise pre-sales or customer-facing engineering roles within SaaS, AI, or infrastructure sectors
- Deep knowledge of hybrid infrastructure, storage systems, and cloud platforms (AWS, Azure, GCP)
- Strong grounding in security architecture, IAM, and governance frameworks
- Experience working with large-scale unstructured data and compliance-sensitive environments
- Ability to present technical and business value clearly to C-level stakeholders
- Practical understanding of AI data pipelines, readiness assessments, and governance controls
- Must have prior remote work experience with collaboration tools
- Experience in highly regulated sectors (healthcare, financial services, insurance) preferred
- Background in automation, scripting, or Infrastructure as Code preferred
Benefits
- Competitive pay
- Remote work opportunities
- Growth opportunities
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
• Develop data pipelines: develop code for data ingestion interfaces to meet specifications required by analytics teams, following best practices, company standards, and adhering to data models outlined by data architects – making design recommendations as appropriate. • Work alongside our business consultants and product managers in engaging and partnering with client stakeholders in order to create effective and strategic solutions. • Stay abreast of emerging technologies and industry trends, identifying new tools and practices that can help the company achieve its strategic goals. • Establish close communication with team members to align best practices, exchange information effectively, and collaborate for continuous improvement. • Quickly triage and diagnose system or performance issues and support the business during critical downtimes and releases. • Act as the technical expert, proposing solutions to roadblocks, outlining dependencies/constraints, and escalating problems as appropriate. • Establish consistent communication mechanisms with project delivery teams. • Establish relationships across the organization to build networks and leverage experts.
• Design, develop, test and deploy data integration solutions using IICS (Cloud Data Integration, Application Integration, Data Quality, Data Synchronization). • Build ETL/ELT pipelines to ingest, transform, and deliver data between cloud and onprem systems (SaaS, databases, data lakes, data warehouses). • Implement secure and performant integration patterns using IICS mapping tasks, mappings, tasks, and parameterization. • Develop and maintain reusable templates, mappings, and components to accelerate delivery. • Collaborate with architects, data engineers, analytics teams, and business stakeholders to define integration requirements and data contracts. • Troubleshoot and resolve production incidents; perform root cause analysis and implement fixes. • Automate deployments and CI/CD for IICS artifacts (Dev → Test → Prod), including versioning, changelogs, and release notes. • Implement monitoring, alerting, and operational runbooks for integrations. • Enforce data quality rules and profiling; work with business to remediate data quality issues. • Prepare technical documentation: design documents, runbooks, data flow diagrams, and support guides. • Support platform governance: connectivity, security, access controls, best practices, and cost optimization.
• Azure Data Engineering: Design and maintain data pipelines and solutions using Azure Data Factory, Azure Synapse Analytics, Azure Databricks, and Azure Data Lake, ensuring end-to-end reliability, scalability, and performance. • Analytics & Visualization: Build dashboards and analytical reports in Power BI and Tableau, translating infrastructure metrics, application performance data, and business KPIs into concrete, actionable recommendations. • Data Modeling & Integration: Develop data modeling, data mining, and integration processes across on-premises and cloud sources, creating reliable datasets to support analytical models and dashboards. • Queries & Large-Scale Processing: Write complex SQL and Kusto queries, as well as scripts and REST API calls for large-scale data collection and processing. • Cloud Cost Management: Operate with cost awareness in managing cloud compute and storage resources, proposing optimizations that balance performance and efficiency. • Technical Reference: Guide application and business teams on data usage and interpretation, proactively promoting best practices in data engineering, modeling, and BI tooling. • Agile Collaboration: Work within Agile/Scrum methodologies using project management tools such as Jira, with the ability to prioritize deliverables and manage tasks autonomously across onsite and offshore teams.
Data and Analytics Specialist, I
Grupo BoticárioCriamos oportunidades para a beleza transformar a vida das pessoas, e assim transformar o mundo ao nosso redor.
• Lead the migration and structuring of data from the Credit, Collections and Fraud Prevention areas to Google Cloud Platform (GCP) • Build refined tables and automate processes using the various tools available in GCP • Oversee system integration projects focused on process automation and data structuring • Generate new insights from data analysis and communicate findings clearly to business stakeholders • Monitor the performance of Collections & Fraud (C&F) ML models through automated data processes • Create innovative processes using GenAI and Predictive AI within the Directorate




