Data Science & AI/ML Lead (EDA Experience)
Level: SM
Role Overview
A hands-on Data Science and AI/ML Lead responsible for owning the end-to-end model training lifecycle, starting from EDA and feature engineering through training, evaluation, and deployment readiness. The role focuses on building reproducible, production-grade ML pipelines and ensuring data and models are optimized for performance, scalability, and reliability.
Key Responsibilities
1. Exploratory Data Analysis & Model Development
· Translate business problems and Use cases into model-ready ML formulations.
· Perform deep EDA and data profiling to understand patterns, data quality, and feature relevance
· Define feature engineering strategy aligned to model performance objectives
· Ensure reproducibility through dataset versioning and experiment tracking
· Define pipeline strategy for continuous retraining and validation.
· Train and optimize models for classification, regression, clustering, and anomaly detection, LLM/SLM Pretraining and Finetuning, etc.
· Perform hyperparameter tuning and model selection for optimal performance
· Drive trade-offs across accuracy, latency, cost, and interpretability
3. Scoring, Evaluation & Benchmarking
· Define evaluation and scoring frameworks for Datasets and certify for AI Readiness (Model Training)
· Conduct error analysis and benchmarking across datasets and model versions
· Establish acceptance thresholds and quality gates for production readiness.
4. Scalable ML & MLOps Enablement
· Enable ML lifecycle practices including model versioning, tracking, and monitoring
· Work with cloud platforms (Azure/AWS/GCP) for scalable training and deployment
· Collaborate with engineering teams to ensure production-grade integration
· Optimize platform performance, reliability, and scalability.
Required Capabilities / Skills / Experience
· 12+ years in Data Science / Machine Learning with strong hands-on experience
· Strong expertise in Python and ML/DL frameworks (scikit-learn, PyTorch, TensorFlow)
· Deep experience in EDA, feature engineering, and model training pipelines
· Experience building production-grade ML pipelines and evaluation frameworks
· Exposure to cloud ML platforms (Azure/Vertex/SageMaker)
· Experience with large-scale data processing and distributed training
· Hands-on experience with classical ML algorithms (Decision Trees, Random Forest, XGBoost, Gradient Boosting etc.)
· Exposure to LLM/SLM training or fine-tuning techniques (PEFT, LoRA, fine-tuning workflows)
· Exposure to LLM / GenAI workflows as integration points
· Familiarity with data quality, labelling, and dataset curation at scale
· Strong problem-solving and system thinking skills.
私たちについて:
コグニザント(NASDAQ: CTSH)は、AI builderおよびテクノロジーサービスプロバイダとして、AI投資を企業価値へとつなげるフルスタックのAIソリューションを提供しています。業界、業務プロセス、エンジニアリングに関する深い専門性を強みに、各企業固有のコンテキストをテクノロジーシステムに組み込み、人の力を最大限に引き出すとともに、具体的な成果の創出と、急速に変化する世界におけるグローバル企業の競争力維持を支援します。詳しくは、当社ウェブサイト www.cognizant.com をご覧ください。
雇用に関する追加情報
本募集に記載されている報酬情報は、掲載日時点で正確なものです。Cognizantは、適用される法令に従い、いつでも本情報を変更する権利を留保します。
応募者は、対面またはビデオ会議による面接への参加を求められる場合があります。また、各面接の際に、現在有効な州政府または政府発行の身分証明書の提示を求められる場合があります。
Cognizantは機会均等雇用主です。応募および選考において、人種、肌の色、性別、宗教、信条、性的指向、性自認、国籍、障がい、遺伝情報、妊娠、退役軍人の地位、その他連邦法・州法・地方自治体の法律により保護されるいかなる特性に基づく差別も行いません。







