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Senior AI Developer
Boc India Limited
India₹35,000–₹100,000/mo≈ AED 1.5K-4.4K/moToday
IndiaPythonGitGITHUBdata WranglingFlaskDockerperformance Analysiscomputer VisionREST APIsAIML FrameworksRAG ConceptLLMsEmbeddingsAPI Orchestrationworkflow Automation ToolsPowerAutomaten8nGenAI Foundation Modelsvector Databasesautomotive StandardsASPICE PAM Modelmachine Learning Algorithmsmodel Training Workflowsdeep Learning Architecturespreprocessingfeature EngineeringFastAPImodel Evaluation Metricshyperparameter Tuningcollaborative Code Development WorkflowsLarge Language Models LLMsGenerative AIcloud AI PlatformsMLOps PracticesCICD For MLmodel Monitoringretraining PipelinesNLPbased AI SystemsFull Time
Skills Required
PythonDockerGitMachine LearningErpSafety
Job Description
Job Description Role Overview:
You will be responsible for the implementation and validation of AI-powered solutions using Python, REST APIs, and in-house developed AI frameworks. Your role will involve contributing to the development of AI pipelines, collaborating across domains to integrate AI/LLM capabilities, and optimizing agent behavior for safety, efficiency, and explainability.
Key Responsibilities:
- Implement and validate AI-powered solutions with modular, reusable components
- Contribute to the development of AI pipelines for data ingestion, model deployment, and monitoring
- Collaborate across domains to integrate AI/LLM capabilities for various use cases
- Optimize agent behavior for safety, efficiency, and explainability
Qualifications:
- Any Bachelors or Masters degree
- 3-4 years of hands-on experience in AI model development, deployment, and optimization
- Strong command of Python and libraries
- Deep understanding of machine learning algorithms, model training workflows, and deep learning architectures (CNN, RNN, Transformers)
- Experience with data wrangling, preprocessing, and feature engineering
- Skilled in developing and integrating models via APIs (Flask, FastAPI) and containerization using Docker
- Proficiency in model evaluation metrics, hyperparameter tuning, and performance analysis
- Experience with Git and collaborative code development workflows
- Strong analytical mindset and ability to troubleshoot complex model behaviors
Additional Information:
The company prefers candidates with experience working with Large Language Models (LLMs), Generative AI, or prompt engineering. Familiarity with cloud AI platforms, knowledge of MLOps practices (CI/CD for ML, model monitoring, and retraining pipelines), exposure to computer vision, or NLP-based AI systems would be advantageous. Role Overview:
You will be responsible for the implementation and validation of AI-powered solutions using Python, REST APIs, and in-house developed AI frameworks. Your role will involve contributing to the development of AI pipelines, collaborating across domains to integrate AI/LLM capabilities, and optimizing agent behavior for safety, efficiency, and explainability.
Key Responsibilities:
- Implement and validate AI-powered solutions with modular, reusable components
- Contribute to the development of AI pipelines for data ingestion, model deployment, and monitoring
- Collaborate across domains to integrate AI/LLM capabilities for various use cases
- Optimize agent behavior for safety, efficiency, and explainability
Qualifications:
- Any Bachelors or Masters degree
- 3-4 years of hands-on experience in AI model development, deployment, and optimization
- Strong command of Python and libraries
- Deep understanding of machine learning algorithms, model training workflows, and deep learning architectures (CNN, RNN, Transformers)
- Experience with data wrangling, preprocessing, and feature engineering
- Skilled in developing and integrating models via APIs (Flask, FastAPI) and containerization using Docker
- Proficiency in model evaluation metrics, hyperparameter tuning, and performance analysis
- Experience with Git and collaborative code development workflows
- Strong analytical mindset and ability to troubleshoot complex model behaviors
Additional Information:
The company prefers candidates with experience working with Large Language Models (LLMs), Generative AI, or prompt engineering. Familiarity with cloud AI platforms, knowledge of MLOps practices (CI/CD for ML, model monitoring, and retraining pipelines), exposure to computer vision, or NLP-based AI systems would be advantageous.