Where Cloud Efficiency Meets Innovation.
Data Engineer – Contract
Location
United States
Posted
57 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Engineer – Contract
Cloudacio
• Design, build, and optimize data pipelines, architectures, and data sets. • Work with big data technologies to solve complex data processing challenges. • Implement ETL processes and data warehousing solutions. • Attend meetings, providing pre-sales support and technical insights. • Collaborate with cross-functional teams to integrate data solutions into broader projects. • Engage in cloud-based data solutions using AWS, Azure, or GCP. • Ensure data integrity, efficiency, and scalability in all solutions.
Job Requirements
- Proficiency in Python
- Experience with SQL and NoSQL databases (e.g., MongoDB, Cassandra, DynamoDB).
- Expertise in ETL processes and tools.
- Proficiency in one or more cloud platforms: AWS, Azure, or GCP.
- Familiarity with big data tools like Hadoop, Spark, or Airflow.
- Experience with Snowflake for cloud data warehousing.
- Strong problem-solving skills and attention to detail.
- Excellent English communication skills for client-facing roles and technical discussions.
- Previous consulting or startup environment experience.
- Ability to independently handle customer interactions and lead projects.
Benefits
- Flexible work arrangements to accommodate project needs and personal preferences.
- Growth potential in a dynamic environment focusing on AI and cloud technologies.
- A culture that values innovation, communication, and proactive problem-solving.
- Opportunity to work on innovative projects with significant real-world impact.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Design and evolve generative AI solutions for real business use, focusing on agents, prompting, RAG and evaluation. • Design agents (agent workflows), tools (tool calling) and prompts for real-world use cases. • Build/evolve RAG pipelines (ingestion, chunking, embeddings, retrieval, reranking, grounding). • Define guardrails and policies: security, privacy, compliance, and hallucination prevention. • Create evaluation strategy: metrics, datasets, automated tests, and acceptance criteria. • Optimize quality and cost (latency, context, error rates, caching, model routing). • Partner with engineering for production readiness (logging, auditing, monitoring, versioning).
• You will lead a multidisciplinary squad (AI + Engineering) to deliver AI solutions in production, focusing on process automation, reliability, governance, and value generation. • Lead a 5-person squad (AI Process Engineers / AI Scientists + Software/Integration Engineer). • Translate business objectives into clear deliverables (scope, success metrics, risks, roadmap). • Own production outcomes: adoption, quality, stability, cost, and impact. • Prioritize the backlog, manage stakeholders and align expectations (business, technology, compliance). • Ensure disciplined execution (rituals, quality, documentation, governance, and audit). • Drive solution architecture and process design decisions (with support from Tech Lead/Science/Governance).
• Own the design, build, and optimization of end-to-end data pipelines that power our vendor universe. • Establish and enforce best practices in data modeling, orchestration, and system reliability. • Collaborate with product, engineering, and business stakeholders to translate requirements into robust, scalable data solutions. • Work extensively with Databricks and Airflow for large-scale data processing and orchestration. • Troubleshoot and resolve complex pipeline issues to ensure reliability and performance. • Contribute to the team’s technical strategy, helping drive improvements in scalability, performance, and efficiency. • Lead, mentor, and support engineers through challenges, code reviews, and project execution.
• Empower businesses to make better decisions using the financial planning & decision-making platform. • Scale and achieve targets predictably. • Collaborate with teams to provide an environment that explores new ideas and learns from customers.



