ML Engineer
Location: Hyderabad
Experience: 5+ Years
Job Description Summary
At Anblicks, we help enterprises modernize their data ecosystems through Data Engineering, Cloud, and AI-driven solutions. As part of the Anblicks Data Science and Machine Learning team, the ML Engineer will leverage Anblicks platforms and third-party technologies to create scalable AI/ML solutions aligned with defined business requirements.
In this position, you will draw upon strong technical, AI/ML engineering, data engineering, and MLOps experience to solve complex analytics problems across large-scale datasets.
As a Machine Learning (ML) Engineer, you will build and operationalize machine learning pipelines involving terabytes of data. You will help define requirements, create software designs, implement scalable solutions, and support deployment of ML systems into production.
Key Responsibilities
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Work with Applied Scientists, Data Scientists, Product Owners, ML Engineers, and Software Engineers to design and deliver ML solutions in production at scale.
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Develop automated AI and ML workflows and end-to-end pipelines for data preparation, training, deployment, monitoring, and retraining.
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Ensure high-quality architecture and scalable design of ML systems and data infrastructure.
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Develop large-scale model inference solutions using distributed processing frameworks (Spark, EMR, Databricks, etc.).
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Build and maintain robust MLOps pipelines for training, versioning, deployment, and monitoring.
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Leverage AI and Generative AI technologies to develop innovative solutions supporting analytics and product initiatives.
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Support CI/CD integration and automation for ML workflows.
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Collaborate across cross-functional teams to ensure reliable, scalable ML deployment in cloud environments.
Basic Qualifications
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Bachelor’s Degree in Computer Science or related field (or equivalent practical experience).
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3–5 years of professional experience in software development.
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Strong foundation in computer science fundamentals:
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Object-oriented design
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Data structures
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Algorithm design and complexity analysis
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Proficiency in at least one modern programming language such as Python, Java, C++, or similar.
Preferred Qualifications
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3+ years of experience building scalable ML infrastructure and big data systems.
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1+ year of experience in Generative AI technologies (e.g., OpenAI APIs, Bedrock, Vertex AI, LangGraph, or similar frameworks).
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Experience with MLOps and orchestration tools such as Airflow, Kubeflow, MLflow, Optuna, or similar.
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Experience operationalizing and migrating ML models into production environments.
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Experience building large-scale distributed model training and inference pipelines.
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Experience working with Large Language Models (LLMs), fine-tuning, and deployment frameworks (HuggingFace, Bedrock, Vertex AI Model Garden, etc.).
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Familiarity with vector databases such as Pinecone, ChromaDB, or similar.
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Experience with CI/CD and DevOps tools (Jenkins, Terraform, CloudFormation, etc.).
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Proficiency with Apache Spark and cloud-based data platforms (Snowflake, Redshift, EMR, Glue, Lambda, Step Functions, etc.).
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Experience with ML libraries such as H2O, Scikit-learn, PyTorch, TensorFlow, etc.
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Experience with end-to-end ML solution lifecycle management.
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2+ years of SQL and Linux experience.
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3+ years of experience with AWS or equivalent cloud platforms (EC2, S3, RDS, EMR, GCP services, etc.).
What Will Set You Apart
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Databricks and/or Snowflake ML certifications.
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Experience with MLflow, Docker, Kubernetes, and containerized deployments.
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Knowledge of LLM observability platforms.
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Strong understanding of data architecture, ML system design, and scalable data engineering principles.
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Ability to communicate complex technical solutions to both technical and business stakeholders.
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Strong analytical and problem-solving skills with the ability to think creatively.
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Passion for understanding how ML solutions drive broader business outcomes.
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Self-starter mindset with the ability to work independently.
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Adaptability to evolving technologies and diverse technical challenges.