Pwc
IN_Senior Associate_Python_Data and Analytics_ Advisory_Bangalore
Company
Role
IN_Senior Associate_Python_Data and Analytics_ Advisory_Bangalore
Location
India
Job type
Full-time
Found on Mokaru
16 hours ago
Salary
Job description
Line of Service
AdvisoryIndustry/Sector
Not ApplicableSpecialism
OperationsManagement Level
Senior AssociateJob Description & Summary
At PwC, our people in data and analytics focus on leveraging data to drive insights and make informed business decisions. They utilise advanced analytics techniques to help clients optimise their operations and achieve their strategic goals.In data analysis at PwC, you will focus on utilising advanced analytical techniques to extract insights from large datasets and drive data-driven decision-making. You will leverage skills in data manipulation, visualisation, and statistical modelling to support clients in solving complex business problems.
*Why PWC
At PwC, you will be part of a vibrant community of solvers that leads with trust and creates distinctive outcomes for our clients and communities. This purpose-led and values-driven work, powered by technology in an environment that drives innovation, will enable you to make a tangible impact in the real world. We reward your contributions, support your wellbeing, and offer inclusive benefits, flexibility programmes and mentorship that will help you thrive in work and life. Together, we grow, learn, care, collaborate, and create a future of infinite experiences for each other. Learn more about us.
At PwC, we believe in providing equal employment opportunities, without any discrimination on the grounds of gender, ethnic background, age, disability, marital status, sexual orientation, pregnancy, gender identity or expression, religion or other beliefs, perceived differences and status protected by law. We strive to create an environment where each one of our people can bring their true selves and contribute to their personal growth and the firm’s growth. To enable this, we have zero tolerance for any discrimination and harassment based on the above considerations. "
About the Role
We're looking for a Senior AI/ML Engineer who can design, build, and deploy scalable ML, GenAI, and Agentic AI systems across cloud environments (GCP preferred) with strong focus on productionization, automation, and business impact. You'll work across demand forecasting, RAG-based intelligent applications, autonomous multi-agent systems, and enterprise AI integration.
Responsibilities
Build end-to-end ML/AI pipelines (data → model → deployment → monitoring)
Develop and deploy ML, Deep Learning, NLP, and GenAI models in production
Design and implement RAG systems — retrieval, chunking, embeddings, vector search, and prompt engineering
Build Agentic AI solutions — autonomous agents, multi-agent workflows, tool-calling, planning, and memory
Build and optimize time series forecasting models (demand forecasting, inventory planning)
Implement MLOps pipelines — CI/CD, model monitoring, drift detection, governance
Optimize models for performance, cost, and latency
Integrate AI systems with enterprise APIs, data platforms, and customer-facing applications
Design scalable LLM inference architectures for efficient deployment
Collaborate with data scientists, product managers, engineers, and business stakeholders in Agile teams
Debug, optimize, and enhance ML models for quality and performance improvements
Mentor team members and present technical findings to diverse audiences
Stay current with AI/GenAI trends and evaluate emerging tools and frameworks
Mandatory Skills
1. Programming & Core
Python — strong, production-grade coding
SQL — proficient
Data Structures & Algorithms
Git
2. Machine Learning & Deep Learning
Regression, Classification, Clustering, Dimensionality Reduction
Ensemble Models (Random Forest, XGBoost, LightGBM)
CNN, RNN, LSTM, Transformers
Frameworks: Scikit-learn, XGBoost, LightGBM, TensorFlow, Keras, PyTorch
3. Statistics & Mathematics
Probability (Bayesian, Frequentist), Hypothesis Testing, A/B Testing
Regression (Linear, Logistic, GLM), Time Series Analysis
Optimization (convex/non-convex)
Libraries: NumPy, SciPy, Statsmodels
4. ML Pipelines & MLOps
Building end-to-end ML pipelines in production (training, serving, monitoring)
MLOps tools: MLflow, Kubeflow, Vertex AI Pipelines
Model monitoring, drift detection, and governance
5. Cloud — GCP (Primary)
Vertex AI (model training, pipelines, endpoints)
BigQuery, Cloud Storage, Dataproc (PySpark)
Cloud Composer (Airflow), Cloud Run
6. Generative AI & LLMs
LLMs, advanced prompt engineering
RAG pipelines — retrieval, chunking, embeddings, vector search
VectorDBs: FAISS, Pinecone, Weaviate, ChromaDB, pgvector
Frameworks: LangChain, LlamaIndex, Hugging Face Transformers
7. Agentic AI
Autonomous agents, multi-agent systems
Tool calling, planning, memory, workflow orchestration
Frameworks: LangGraph, CrewAI, AutoGen
Protocols: MCP (Model Context Protocol), A2A (Agent-to-Agent)
8. Time Series / Demand Forecasting
Experience building forecasting models for business prediction
Time series techniques and retail/supply chain forecasting
9. NLP
Text preprocessing, embeddings, NER, classification, sentiment analysis
Semantic search
Frameworks: Hugging Face Transformers, spaCy, NLTK
10. Soft Skills
Strong communication — can present technical concepts to non-technical audiences
Mentoring ability — can guide and uplift junior team members
Analytical thinking with ability to translate business problems into AI solutions
Comfortable working in Agile, cross-functional teams
Good to Have
LLM fine-tuning (LoRA, PEFT, or full fine-tune on Vertex AI)
LLM serving & inference optimization (vLLM, GPU memory optimization, model quantization)
Spark / PySpark for large-scale data processing
Computer Vision (image classification, object detection, OCR/Document AI, YOLO, Detectron2)
Recommendation Systems (collaborative filtering, content-based)
Microservices architecture and cloud-based deployments
FastAPI / Flask for API development
MongoDB for data handling and persistence
Multi-cloud exposure (AWS SageMaker, S3, Lambda, ECS/EKS, Step Functions)
Reinforcement Learning
Graph ML / Knowledge Graphs
Distributed computing (Spark, Ray)
ONNX / TensorRT for model optimization
Responsible AI / Explainability
Enterprise Agent Frameworks (Google ADK, AWS Bedrock Agents, Semantic Kernel)
Retail / E-commerce domain experience
What Makes You Stand Out
Built autonomous agents that reason, use tools, and act independently in production
Deployed RAG systems at scale with real users
Experience with multi-agent orchestration (planner-executor patterns)
Built GPU-optimized LLM serving infrastructure
Worked on retail use cases — demand forecasting, recommendations, dynamic pricing, customer segmentation
Built microservices-based AI applications at enterprise scale
Measurable business impact from your AI deployments
Success Criteria
Production-grade AI systems running reliably at scale
Scalable, automated ML/GenAI pipelines
Effective GenAI & Agentic AI deployments solving real business problems
Measurable business impact and stakeholder satisfaction
Mandatory Skill Sets:
Python (strong coding ability) SQL (proficient) Machine Learning & Deep Learning ML Frameworks (Scikit-learn + TensorFlow/PyTorch) Building end-to-end ML Pipelines MLOps (MLflow / Kubeflow / Vertex AI) GCP Cloud (BigQuery, Cloud Composer, Airflow) GenAI / LLM hands-on — RAG pipelinesm Fine-Tuning, prompt engineering (LangChain, LlamaIndex), VectorDB Agentic AI (LangGraph, CrewAI)
Preferred Skill Sets:
Spark / PySpark Working exp with Fast API/Flask NLP / Computer Vision / Recommendation Systems
Years of Experience required:
4-8 yrs
Education Qualification:
B.E, B.Tech, MCA, M.E, M.Tech
Education (if blank, degree and/or field of study not specified)
Degrees/Field of Study required: Bachelor of EngineeringDegrees/Field of Study preferred:Certifications (if blank, certifications not specified)
Required Skills
Python Software DevelopmentOptional Skills
Accepting Feedback, Accepting Feedback, Active Listening, Algorithm Development, Alteryx (Automation Platform), Analytical Thinking, Analytic Research, Big Data, Business Data Analytics, Communication, Complex Data Analysis, Conducting Research, Creativity, Customer Analysis, Customer Needs Analysis, Dashboard Creation, Data Analysis, Data Analysis Software, Data Collection, Data-Driven Insights, Data Integration, Data Integrity, Data Mining, Data Modeling, Data Pipeline {+ 38 more}Desired Languages (If blank, desired languages not specified)
Travel Requirements
Not SpecifiedAvailable for Work Visa Sponsorship?
NoGovernment Clearance Required?
NoJob Posting End Date
July 8, 2026

