Accelerating insights. https://www.cint.com/
Staff MLOps Engineer – AI/ML Platform
Location
Mali
Posted
14 days ago
Salary
0
Seniority
Lead
Job Description
Staff MLOps Engineer – AI/ML Platform
Cint
• Assess and decide on the current pipeline • Build the shared AI/ML platform • Oversee the full ML lifecycle • Own training infrastructure on Databricks and Unity Catalog • Model serving • Monitoring and drift • Cost and performance • Mentor and multiply • Drive AI tooling adoption
Job Requirements
- Deep ML Platform Expertise
- Mature Engineering
- Systems Architect
- Technical leader
- Pragmatic about buy-vs-build
- Commercially literate
Benefits
- Health insurance
- Remote work options
Related Guides
Related Job Pages
More Machine Learning Engineer Jobs
Master's Fellow – AI, Machine Learning, Statistical Models
Sistema FibraPelo Futuro da Indústria | Pelo Futuro do Trabalho
• Report with implementation recommendations to improve vehicle prevention and recovery metrics; • Statistical, machine learning and AI models for implementation by Toyota; • Deep expertise in statistical models for probabilistic calculations; • Knowledge of machine learning and AI models for developing predictive models; • Experience using AWS and AWS tools for data analysis.
Senior Staff Machine Learning Engineer, Infrastructure
AirbnbAirbnb is a community based on connection and belonging.
• Work with large scale structured and unstructured data, build and continuously improve cutting edge Machine Learning (ML) models for Airbnb product, business and operational use cases • Work collaboratively with cross-functional partners including software engineers, product managers, operations and data scientists, identify opportunities for business impact, understand, refine, and prioritize requirements for machine learning models, drive engineering decisions, and quantify impact • Hands-on develop, productionize, and operate ML/AI models and pipelines at scale, including both batch and real-time use cases • Leverage third-party and in-house ML/AI tools & infrastructure to develop reusable, highly differentiating and high-performing Machine Learning systems, enable fast model development, low-latency serving and ease of model quality upkeep • Example projects include: feature platform, model interpretability, hyperparameter optimization, concept drift detection
• Utilize advanced AI, physics simulation, and computer graphics to reduce costs. • Improve engineering productivity across design and manufacturing processes.
Role Description We're hiring a Staff MLOps Engineer to own the AI/ML platform at Cint. The immediate focus is supporting the Synthetic Data Platform — models for survey augmentation and respondent profiling — but the role's longer-term remit is broader: Trust Score (our respondent quality and fraud detection model) and other AI/ML initiatives need the same platform capabilities. You'll start by reviewing the current setup and deciding whether to extend it or rebuild parts of it, then build out the shared AI/ML platform from there. You'll report into our Infrastructure and Data Engineering organisation, working in close partnership with the AI/ML team in Prague. This is deliberately a platform-with-feature-focus role: your day-to-day delivery serves the Synthetic Data team's needs, but your architectural remit covers all of Cint's AI/ML workloads. Qualifications - Assess and decide on the current pipeline: - Audit the existing AI/ML training and serving setup. - Decide what's worth building on and what needs to be rebuilt. - Make the call and own the rationale. - Build the shared AI/ML platform: - Training infrastructure, experiment tracking, model registry, serving, monitoring. - Built once, used by Synthetic, Trust Score, and whatever comes next. - Oversee the full ML lifecycle: - From data ingestion and feature processing to annotation workflows. - Ensure the platform facilitates frictionless, rapid model iteration for Data Scientists. - Own training infrastructure on Databricks and Unity Catalog: - Make training fast, reproducible, and traceable. - Lineage matters; reproducibility matters more. - Model serving: - Build the serving layer — low-latency APIs, batch scoring jobs, appropriate caching. - Integrate with our Java/Spring services. - Monitoring and drift: - Build the observability our models need — data drift, model drift, accuracy regression, business metrics. - Grafana dashboards, Prometheus metrics, clear alerts. - Cost and performance: - Set the patterns for cost-effective training and serving. - Represent ML infrastructure spend and ROI credibly to finance stakeholders. - Mentor and multiply: - Act as a force multiplier by coaching AI/ML and Infrastructure engineers on engineering best practices. - You don’t just "do" the work; you set the bar for what "good" looks like. - Drive AI tooling adoption: - Model how AI-native development works for platform teams. - Claude Code, agentic workflows, AI-assisted incident response. - Databricks / Spark Native: - Comfortable in Databricks. - Unity Catalog experience is a strong plus. - Kubernetes & Cloud: - You've deployed ML workloads on Kubernetes. - AWS (EKS) is our environment; familiarity is a plus. - Be a Polyglot: - Python, Scala or Java (for Spark), Kubernetes manifests, Terraform. - AWS or GCP. You move between layers without friction. Requirements - Deep ML Platform Expertise: You've led ML platform work at a serious scale. - Mature Engineering: You’re someone with both a wide and deep background of engineering excellence in a number of disciplines. - Systems Architect: You think about the platform as a product with real users (your ML team). - Technical leader: You lead through standards, RFCs, and credibility — not meetings. - Pragmatic about buy-vs-build: You know when to adopt a managed service and when to build. - Commercially literate: You can justify platform investment to VP / C-suite and translate business priorities into a roadmap. Benefits - Prague-First, Europe-Friendly: Our preferred base is Prague, alongside our existing AI/ML team. - AI-Native Engineering: We're rolling out Claude Code and modern agentic tooling across engineering. - High Autonomy: We trust our engineers to make sound decisions and own their work end-to-end. - Global Impact: Your work powers a marketplace used by millions of people worldwide. Company Description Cint is a pioneer in research technology (ResTech). Our customers use the Cint platform to post questions and get answers from real people to build business strategies, confidently publish research, accurately measure the impact of digital advertising, and more. The Cint platform is built on a programmatic marketplace, which is the world's largest, with nearly 300 million respondents in over 150 countries who consent to sharing their opinions, motivations, and behaviours.



