Requirements:
- Bachelors degree in Computer Science Data Science Artificial Intelligence Statistics or a related field.
- 12 years of hands-on experience in machine learning or AI development.
- Experience working on at least 12 end-to-end machine learning projects in academic or professional environments.
- Exposure to NLP computer vision or LLM-based applications is preferred.
- Proficiency in Python.
- Familiarity with machine learning libraries and frameworks such as Scikit-learn TensorFlow or PyTorch.
- Basic understanding of machine learning neural networks deep learning NLP fundamentals and transformer-based models.
Basic understanding of REST APIs and backend integration. - Experience using Git for version control.
- Basic knowledge of Docker cloud platforms (AWS GCP or Azure) Linux environments and MLOps fundamentals is a plus.
- Understanding of evaluation metrics such as accuracy precision recall and F1-score.
- Exposure to LangChain RAG pipelines LLM application development model optimization techniques or participation in Kaggle or similar competitions is a plus.
Responsibilities:
- Assist in designing developing testing and implementing machine learning and deep learning models for structured and unstructured data under senior guidance.
- Support NLP tasks including text classification basic named entity recognition (NER) chatbot features and fine-tuning pre-trained and transformer-based models.
- Assist in building and maintaining Retrieval-Augmented Generation (RAG) pipelines and support LoRA-based fine-tuning when required.
- Perform data cleaning preprocessing feature engineering and exploratory data analysis (EDA) to prepare datasets for training and evaluation.
- Conduct experiments evaluate model performance using standard metrics optimize basic hyperparameters and document results.
- Assist in integrating large language model (LLM) APIs into applications and support prompt engineering and testing using frameworks such as LangChain or similar tools.
- Assist in deploying machine learning models using REST APIs (FastAPI or Flask) support Docker-based containerization and contribute to CI/CD pipelines and version control using Git.
- Monitor model performance in staging and production and support dataset and model versioning.
- Assist in developing and evaluating computer vision models including image classification object detection and segmentation and support image preprocessing.
- Document code models and workflows and collaborate with data engineers backend developers and product teams.
- Stay updated with machine learning LLM and AI advancements and continuously improve technical skills.
Requirements: Bachelors degree in Computer Science Data Science Artificial Intelligence Statistics or a related field.12 years of hands-on experience in machine learning or AI development.Experience working on at least 12 end-to-end machine learning projects in academic or professional environments....
Requirements:
- Bachelors degree in Computer Science Data Science Artificial Intelligence Statistics or a related field.
- 12 years of hands-on experience in machine learning or AI development.
- Experience working on at least 12 end-to-end machine learning projects in academic or professional environments.
- Exposure to NLP computer vision or LLM-based applications is preferred.
- Proficiency in Python.
- Familiarity with machine learning libraries and frameworks such as Scikit-learn TensorFlow or PyTorch.
- Basic understanding of machine learning neural networks deep learning NLP fundamentals and transformer-based models.
Basic understanding of REST APIs and backend integration. - Experience using Git for version control.
- Basic knowledge of Docker cloud platforms (AWS GCP or Azure) Linux environments and MLOps fundamentals is a plus.
- Understanding of evaluation metrics such as accuracy precision recall and F1-score.
- Exposure to LangChain RAG pipelines LLM application development model optimization techniques or participation in Kaggle or similar competitions is a plus.
Responsibilities:
- Assist in designing developing testing and implementing machine learning and deep learning models for structured and unstructured data under senior guidance.
- Support NLP tasks including text classification basic named entity recognition (NER) chatbot features and fine-tuning pre-trained and transformer-based models.
- Assist in building and maintaining Retrieval-Augmented Generation (RAG) pipelines and support LoRA-based fine-tuning when required.
- Perform data cleaning preprocessing feature engineering and exploratory data analysis (EDA) to prepare datasets for training and evaluation.
- Conduct experiments evaluate model performance using standard metrics optimize basic hyperparameters and document results.
- Assist in integrating large language model (LLM) APIs into applications and support prompt engineering and testing using frameworks such as LangChain or similar tools.
- Assist in deploying machine learning models using REST APIs (FastAPI or Flask) support Docker-based containerization and contribute to CI/CD pipelines and version control using Git.
- Monitor model performance in staging and production and support dataset and model versioning.
- Assist in developing and evaluating computer vision models including image classification object detection and segmentation and support image preprocessing.
- Document code models and workflows and collaborate with data engineers backend developers and product teams.
- Stay updated with machine learning LLM and AI advancements and continuously improve technical skills.
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