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Analytic Consultant/Data Scientist is a partner-facing role and is responsible for delivering high impact analytic and data science projects by using analytics, in support of operational risk initiatives across Chief Operating Office org. AIM (AI Innovation and Modeling) is the central analytics group tasked with solving high-impact business challenges and standing up cutting-edge analytical capabilities to be shared across Wells Fargo’s analytic community. We are looking for a high performer to join our team and help us solve challenging and interesting business problems through rigorous data analysis and predictive modeling. In this highly consultative and visible role, you will support development analytic projects from multiple business lines using various technology and techniques ranging from but not limited to supervised, unsupervised and semi-supervised machine learning, deep-learning, NLP, optimization algorithms in both edge nodes and in big data environments (like hortonworks, MapR, Aster etc.)
Job Responsibility:
Person would be required to work individually or as part of a team on data science projects and work closely with business partners across the organization.
Person will be leading small group of junior data scientists and work as a technical lead to support enterprise grade Gen AI programs
He/she would be developing statistical/machine learning/GenAI models using various techniques (supervised, unsupervised, semi-supervised) and technologies including but not limited to SAS, R, Python, Spark, H2O, Aster etc.
Work closely with data engineers, BI and UI specialists and deliver top notch analytical solution for the bank.
Define business problem and translate it into analytical problem.
Requirements:
8+ years of experience in the field of data science and analytics
Deep working knowledge of machine learning and deep learning, including model selection, training dynamics, overfitting, and evaluation tradeoffs
Practical mastery of prompt engineering and LLM behavior control, including structured prompting, chain-of-thought, robustness, and security considerations
Ability to design and optimize Retrieval-Augmented Generation (RAG) systems using embeddings, vector databases, chunking, and reranking techniques
Experience with model evaluation, monitoring, and Responsible AI, including bias, hallucination mitigation, governance, and human-in-the-loop validation
Strong MLOps/LLMOps capabilities, covering model lifecycle management, experiment tracking, deployment, cost control, and latency optimization
Proficiency in Python-based data science and software engineering, with experience integrating GenAI into scalable, production-grade systems
Exploratory Data analysis
Provide exploratory data analysis using Python/R/SAS / SQL
Experience with Databases like oracle , Teradata, Sql server
Advance Excel skills
Data integration and clean up data for the usage
Experience with structured data and semi-structured text or Excel files
Business Intelligence
Tableau, Power BI, Shiny, Dash, HTML5
Business Analytics
Data mining and Insights
Trend Analysis , forecasting and pattern recognition
Find opportunities in the data and able to communicate to the partners
Consult with partners to define issues/information needs
Present findings to multiple levels of management
Ensure that analyses are delivered on time, while surpassing partner expectations
Ensure partner transparency throughout the life of the project
Proactively seek opportunities to increase the value of analysis
Strong oral and written communication and consultative skills
Nice to have:
Strong collaboration skills
Output deployment using appropriate technologies (HTML5, Shiny, Django)
Working expertise in Tensorflow, Keras or Pytorch would be added advantage
Ability to translate analytical data into useful business information
Critical thinking and strong problem solving skills
Ability to learn the business aspects quickly
knowledge of banking industry and products in at least one of the LOB such as credit cards, mortgage, deposits, loans or wealth management etc.
Knowledge of functional area such as risk, marketing, operations or supply chain in banking industry.
Ability to multi-task and prioritize between projects
Ability to work independently and as part of a team