Qodea · Remote, Argentina, AR · 3 months ago
We are a global technology group built for what's next, offering high calibre professionals the platform for high stakes work, the kind of work that defines an entire career. When you join us, you're not just taking on projects, you're solving problems that don't even have answers yet.
You will join an exclusive roster of talent that global leaders, including Google, Snap, Diageo, PayPal, and Jaguar Land Rover call when deadlines seem impossible, when others have already tried and failed, and when the solution absolutely has to work.
Forget routine consultancy. You will operate where technology, design, and human behaviour meet to deliver tangible outcomes, fast. This is work that leaves a mark, work you’ll be proud to tell your friends about.
Innovation to solve the hardest problems.
Accountability for every result.
Integrity always.
We are looking for an accomplished professional to bridge the gap between machine learning and reliable production operations. You will be responsible for the deployment, monitoring, and lifecycle management of ML models, with a strong focus on generative AI and LLM-based agents. You will ensure that our intelligent systems are scalable, observable, and continuously improving.
Deploy and maintain efficient, error-free ML model pipelines using Vertex AI or Sage Maker.
Establish and optimise CI/CD for the training, testing, and deployment of models.
Design and deploy observability frameworks to track model accuracy, bias, drift, and latency.
Manage model versioning and registry, ensuring the ability to roll back when necessary.
Automate application deployment using Docker and Kubernetes within cloud environments.
Collaborate with data engineers to build robust data and model pipelines.
Implement infrastructure as code using Terraform or CloudFormation to manage ML environments.
Proven expertise in MLOps practices and model lifecycle management on GCP or AWS.
Experience designing monitoring systems using Prometheus, Grafana, and the ELK stack.
Proficient in Python and libraries like Pandas, NumPy, and Seaborn for data preprocessing.
Strong background in containerisation and orchestration using Docker and Kubernetes.
Ability to automate complex workflows to save manual effort and improve productivity.
GCP Professional ML Engineer or AWS Certified Solutions Architect.
Experience with big data tools like Spark, Hadoop, and Dataflow.
Familiarity with frameworks like LangChain for LLM operations.
We are building a world-class delivery centre in Buenos Aires and want the best engineering talent in the region. We believe the best work happens when we collaborate in person. We expect a genuine effort to be present in the office one to two days a week when not on project work to help build our culture and engage in spontaneous problem-solving. Your energy and presence will be vital in making our studio a hub of creativity and innovation.
10 days PTO + 17 days paid public holidays
Family allowance
Birthday leave
10 paid learning days per year
Bonusly 100 points per month to recognise colleagues
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We are a global technology group, headquartered in London.
We deploy experts and frontier technology, like AI, to help organisations thrive through change.
We have over 600 professionals (>75% hands-on technical talent) spread across Europe, North America and Asia, and are backed by Marlin Equity Partners.
High stakes work for high calibre people.
Our customers call us when deadlines seem impossible.
When others have already tried and failed.
When it absolutely has to work.
This is work that leaves a mark.
Work you'll want to tell your friends about.
Work that matters.
We often solve problems that don't have answers yet.
And we're looking for people who want to do the same.
Headquarters
Remote, Argentina
Work Location
remote
Job Category
Data / Analytics
Application Deadline
Not specified
Job Type
full-time
Experience Level
senior-level
Application Method
Apply via Website
Salary
Not specified
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