Machine Learning Analyst

Firstsource · New Jersey, United States New
LinkedIn

Posted

Jul 14, 2026 (Yesterday)

Seniority

Not Specified

Work Model

Not Specified

Type

Not Specified

Category

Data & ML

Salary

Not specified

Skills

Artificial Intelligence AWS Azure CI/CD Data Science Databricks Deep Learning GCP Generative AI Google Cloud Hadoop Kubeflow LLM Machine Learning MLflow MLOps NLP Power BI Python PyTorch Scikit-learn Spark SQL Tableau TensorFlow

Description

Artificial Intelligence & Machine Learning Analyst Overview The AI/ML Analyst is responsible for designing, developing, and implementing data-driven AI/Gen AI solutions using machine learning models, LLMs and artificial intelligence techniques. This role bridges applied AI, data science, business strategy, and technical implementation—transforming complex datasets into actionable insights and intelligent systems that support organizational decision-making and automation. Key Responsibilities 1. ML/AI Model Development Build, train, implement and optimize AI solutions adopting machine learning and deep learning and LLM models for business Automation, Insights, prediction, classification, clustering, NLP, or recommendation tasks. Agentic AI frameworks and implementation Implement model validation, performance tuning, and continuous improvement using best-practice ML pipelines. Use frameworks such as TensorFlow, PyTorch, Scikit-learn, XGBoost , or similar. 2. AI Solutions & Deployment Translate business requirements into scalable AI solutions. Deploy models into production (APIs, cloud services, Agentic AI, automation pipelines). Collaborate with engineering teams to implement MLOps processes. 3. Data Analysis & Feature Engineering Collect, clean, and preprocess structured and unstructured data from multiple sources. Perform exploratory data analysis (EDA) to identify trends, patterns, and relationships. Engineer features that enhance model accuracy and relevance. 4. Reporting & Insights Visualize complex data and model outcomes using dashboards (Power BI, Tableau, Looker, etc.). Communicate analytical findings to technical and non-technical stakeholders. Prepare documentation, reports, and presentations outlining methodologies and results. 5. Research & Innovation Stay informed of emerging AI/ML trends, tools, and methodologies. Evaluate and implement new technologies such as LLMs, generative AI, vector databases, and reinforcement learning. Required Qualifications Bachelor’s or Master’s degree in Computer Science, Data Science, Statistics, Engineering , or related field. Proven experience in GenAI, machine learning, data analytics, and AI model development . Strong proficiency in Python , SQL, and ML libraries. Experience with cloud platforms ( AWS, Azure, GCP ) and ML lifecycle tools (MLflow, Kubeflow, SageMaker). Solid understanding of statistics, probability, and algorithmic concepts. Preferred Qualifications Experience working with large language models (LLMs) and generative AI tools. Knowledge of big data technologies (Spark, Databricks, Hadoop). Familiarity with deep learning architectures (CNNs, RNNs, Transformers). Background in MLOps practices and CI/CD pipelines. Industry-specific experience (finance, healthcare, e-commerce and CMT). Key Competencies Analytical and critical-thinking skills. Strong problem-solving abilities. Excellent communication and data-storytelling skills. Ability to work collaboratively in cross-functional teams. Attention to detail and a mindset for continuous learning. … more Requirements added by the job poster • 2+ years of work experience with any hyper scalers like Amazon Web Services (AWS), Azure, Google Cloud • Bachelor's Degree • Authorized to work in the United States • 2+ years of work experience with Large Language Models (LLM) • 2+ years of work experience with Machine Tools • No need for visa sponsorship/No Visa Processing