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Artificial Intelligence Engineer - NLP/LLM Models

CareerXperts Consulting
Others
5 - 10 Years

Posted on: 25/08/2025

Job Description

Job Description :

We are seeking a highly skilled and motivated AI Engineer with expertise in large language models (LLMs), AI workflows, and machine learning.

This role combines deep technical knowledge in ML/AI with hands-on experience building intelligent, production-ready systems that enhance cybersecurity investigation, prioritization, and response.

You will work at the intersection of LLM-driven automation, workflow orchestration, and classical ML models to improve how alerts are prioritized, classified, and contextualized reducing fatigue and enabling faster, more effective decision-making.

Your work will directly influence the development of agentic AI systems, workflow automation, and recommendation engines within cloud security platform.


Key Responsibilities :


LLM Integration & Workflows :


- Build, fine-tune, and integrate large language models (LLMs) into existing systems.

- Develop agentic workflows for investigation, classification, and automated response in cybersecurity.

- Apply techniques like retrieval-augmented generation (RAG), prompt engineering, and fine-tuning for domain-specific tasks.

Machine Learning Development :

- Design, implement, and optimize ML models for prioritization, ranking, clustering, anomaly detection, and classification.

- Apply both classical forecasting models (AR, ARIMA, SARIMA, ES) and modern architectures (XGBoost, LSTM, DeepAR, N-BEATS, Temporal Fusion Transformer).

Data Preparation & Feature Engineering :

- Collect, preprocess, and transform structured and unstructured data (including logs, text, and access patterns).

- Engineer features to maximize model interpretability and performance.

Model Training, Evaluation, and Deployment :

- Train and evaluate models using rigorous metrics (precision, recall, AUC, F1, etc.

- Optimize hyperparameters and fine-tune LLMs for task-specific improvements.

- Deploy ML/LLM models into production at scale with strong monitoring, drift detection, and observability.

Collaboration & Documentation :

- Work closely with data scientists, ML engineers, security researchers, and software teams to build end-to-end solutions.

- Document models, workflows, and pipelines for clarity, reproducibility, and knowledge sharing.


Requirements :


- Bachelors/Masters degree in Computer Science, AI/ML, Data Science, or a related field.


- 5+ years of experience in ML/AI, including 3+ years deploying production-grade systems.

- Experience contributing to publications (patents, libraries, or peer-reviewed papers) is a plus.

- Strong knowledge of machine learning algorithms for classification, clustering, ranking, and anomaly detection.

- Proficiency with LLM frameworks and APIs (OpenAI, Hugging Face Transformers, LangChain, LlamaIndex).

- Hands-on experience building workflow automation with LLMs and integrating them into applications.

- Solid programming skills in Python (experience with PyTorch, TensorFlow, scikit-learn).

- Knowledge of NLP tasks (text classification, summarization, embeddings, semantic search).

- Experience with recommendation systems or reinforcement learning is a strong plus.

- Proven track record of deploying ML/AI models into production environments with scalability in mind.

- Familiarity with cloud platforms (AWS, GCP, Azure), containerization (Docker, Kubernetes).

- Understanding of MLOps best practices (CI/CD for ML, monitoring, retraining strategies).

- Strong problem-solving and analytical mindset.

- Excellent communication and teamwork skills.

- Ability to work in a fast-paced, evolving startup environment.


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