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Job Description
Role Overview: We are looking for a Senior Machine Learning Engineer with 5+ years of experience to design, build, and deploy production-grade ML systems. You will bridge the gap between experimental data science and scalable software engineering, ensuring our models dont just work in a notebook, but thrive in a high-traffic production environment.
Key Responsibilities
- End-to-End Model Development: Design and implement machine learning models (Supervised, Unsupervised, and Deep Learning) to solve complex business problems.
- GenAI & LLM Integration: Fine-tune Large Language Models (LLMs) and implement Retrieval-Augmented Generation (RAG) architectures for enterprise applications.
- MLOps & Deployment: Build and maintain automated CI/CD pipelines for ML (using tools like Kubeflow, MLflow, or SageMaker) to manage model versioning, testing, and deployment.
- Data Engineering: Architect scalable data pipelines to ingest, clean, and preprocess massive datasets using Spark, Flink, or SQL.
- Performance Optimization: Monitor models in production to detect data drift and performance degradation; optimize inference latency for real-time applications.
- Mentorship: Lead technical design reviews and mentor junior engineers on best practices in coding and algorithmic selection.
Candidates Profile:
- BE/B Tech, BCA/MCA with 5+ Years should demonstrate a transition from Model Centric (focusing on accuracy) to Data & System Centric (focusing on reliability and scalability).
- Ready to work in Hyderabad, Bangalore
- Ready to join within 15 days
- Programming: Mastery of Python (clean, modular, and PEP8 compliant) and familiarity with compiled languages like Go or C++ for performance-critical components.
- Frameworks: Deep expertise in PyTorch or TensorFlow, and Scikit-learn for traditional ML.
- Cloud Architecture: 3+ years of experience with AWS, GCP, or Azure AI services (e.g., Vertex AI, Bedrock, or Azure ML).
- Infrastructure: Proficiency with Docker and Kubernetes for containerizing and scaling ML workloads.
Looking to get Placed? Try our Placement Guarantee Plan
- Vector Databases: Experience with Pinecone, Weaviate, or Milvus for managing embeddings in LLM workflows.
2. Soft Skills & Leadership
- Pragmatism: The ability to decide when a simple Linear Regression is better than a complex Transformer.
- Stakeholder Communication: Can explain Precision vs. Recall to a Product Manager without using a single equation.
- Product Mindset: Understanding that a model is only as good as the business value it generates.
3. Education & Certifications
- Education: Masters or PhD in Computer Science, Statistics, or Math (or a Bachelors with a significant portfolio of shipped products).
- Certifications (Bonus): Google Professional ML Engineer, AWS Certified Machine Learning – Specialty, or specialized NLP/Deep Learning certifications.
Skills
PythonData ScienceDeep LearningLinear RegressionMachine LearningLarge Language ModelsMl EngineerAiMlSqlIf an employer asks you to pay any kind of fee, please notify us immediately. Jobaaj does not charge any fee from the applicants and we do not allow other companies also to do so.
About Company
Important dates & deadlines?
Application Deadline
27 Jul 26, 04:29 PM IST
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