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We're looking for an experienced ML Operations Engineer to design, scale, and continuously improve our AWS-based ML platform powering a Contract Intelligence solution.
This role goes beyond traditional MLOps—you will actively contribute to model experimentation, evaluation, and optimization for extracting structured insights from large, complex legal documents.
You will work to improve data extraction accuracy, clause identification, and risk detection, while optimizing processing performance at scale.
Key Responsibilities
ML Engineering & MLOps
Document AI & NLP Systems
Model Development & Optimization
Experimentation & Research
Data & Training Strategy
Production & Monitoring
Required Qualifications
Preferred Qualifications
Tech Stack
ML & NLP: PyTorch, Hugging Face, spaCy, LangChain
Models: LLaMA, Mistral, Falcon, BERT variants
AWS: SageMaker, Lambda, ECS/Fargate, Step Functions, Textract
Data & Storage: S3, DynamoDB, Aurora PostgreSQL
Vector Search: OpenSearch, pgvector
MLOps: MLflow, SageMaker Pipelines, Model Registry
Monitoring: CloudWatch, Prometheus, Grafana
IaC: Terraform, CloudFormation
Job ID: 151244371
Skills:
Python, Aws, Ml, Jenkins, Docker
Skills:
Python, ML concepts and evaluation methodologies, ROS2, MLOps tools and practices
Skills:
Prometheus, Grafana, Sql, Tensorflow, Pytorch, MLops, Pandas, Docker, XGBoost, Spark, Kubernetes, Python, Airflow, LightGBM, Argo-Workflows, Scikit-learn, Trino
Skills:
Tensorflow, Machine Learning, Pytorch, Opencv, Ocr, Python, Computer Vision, Deep Learning, GenAI, LLMs, PIL
Skills:
BigQuery, Google Cloud Platform, Kafka, Sql, Tensorflow, Pytorch, Spark, Keras, Python, retraining, CI CD, GitHub Actions, Automated training pipelines, experimentation, model monitoring