What are the responsibilities and job description for the ML Engineer(W2 contract 12 years Candidate Needed) position at Lorhan Corporation?
Job Details
Lorhan Corp is looking for ML Engineer
Position : ML Engineer
Contract : W2
Location : Remote
Visa Status : and USC
Description:
5 years of experience in computer vision and machine learning including deploying models in production.
Fine-tuning open-source models and deploying them for real-world applications.
Experience with OpenAI models (e.g., GPT-4) vision models.
Expertise in implementing hybrid search and retrieval-augmented generation (RAG) techniques.
Advanced testing and evaluation of different chunking strategies for optimized performance.
Experience with computer libraries such as OpenCV, DLIB or similar.
Proficient in designing and implementing deep learning architectures (e.g, CNNs, RNNs, transformers).
Experience with Azure cloud platforms and containerization tools like Docker and Kubernetes.
Familiarity with ML lifecycle tools (e.g., MLflow, DVC).
Deep knowledge of Azure AI studio.
Understanding LLM, RAG and Gen AI concepts.
Hands-on experience with building and managing large-scale machine learning systems.
Deep knowledge of infrastructure-side challenges, such as scaling models, load testing, and ensuring high availability.
Strong focus on performance optimization, continuous integration, and improving ML systems for deployment at scale.
Extensive experience leading machine learning projects end-to-end, from design and development to deployment and monitoring.
Collaborates closely with stakeholders, ML engineers, data scientists, and DevOps teams to ensure successful project delivery.
Builds out evaluation frameworks that incorporate user feedback from logging and fine-tuning model performance accordingly.
Building robust data pipelines for machine learning models, ensuring that data is clean, properly preprocessed, and available for model training and deployment.
Expertise in automating ML pipelines using Airflow and optimizing workflows in distributed environments.
Experience in integrating and managing large datasets for training complex models, including deep learning frameworks.
Technologies and Tools:
AI/ML Frameworks: OpenAI GPT-4 Vision models, Fine-tuning open-source models, RAG (Retrieval Augmented Generation)
Computer Vision Libraries: Open CV, DLIB, SimpleCV
Cloud Platforms: Azure, AWS
Data and Workflow Tools: Databricks, Apache Airflow
Programming Languages: Python, SQL, C
Model Deployment & Optimization: ONNX, TensorRT, Docker, Kubernates, Fast API
Other Tools: Model performance evaluation frameworks, logging and monitoring tools
Other Soft Skills:
Strong communication and leadership abilities, effectively working with technical and non-technical stakeholders.
Capable of owning projects end-to-end while balancing multiple priorities and ensuring timely delivery.