Citi Analytics & Information Management (AIM) team is a global community
that objectively connects and analyzes information, to create actionable
intelligence for our business leaders. The Anti Money Laundering (AML) Data
Science & Model Management (DSMM) analyst will be a part of AIM, based in
Bangalore and reporting into the VP leading the team.
The scope of work includes all aspects of analysis performed by the team
within different projects: Threshold Tuning, Segmentation and data
modeling/validation efforts depending on current needs and project
plans. A primary area of focus for this position will be working on
threshold tuning for Optimization, developing Logistic Regression Model to
predict customer behavior, identifying anomalies in transaction and Customer
behavior, Outlier detection, ATL threshold tuning, Segment customers into
homogenous groups using clustering, Logistic Regression Model Performance
Review while maintaining flexibility to switch amongst work streams based on
business needs.
The DSMM statistician will follow the globally consistent methodology but is
expected to have a high level of initiative and creativity and suggest
enhancements to the current methodologies. The role requires working closely
with business partners based in other geographies that Citi operates in (e.g.,
NAM, APAC, and LATAM).
Requirements include a background in analysis using databases, warehouses,
data processing, experience with statistics and data mining. Experience and
knowledge in banking and finance, especially in the AML area will be a plus.
In addition, the ability to read and create formal documentation is highly
desirable.
Responsibilities:
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A primary area of focus for this position will be working on threshold
tuning for Optimization, developing Logistic Regression Model to predict
customer behavior, identifying anomalies in transaction and Customer
behavior, Outlier detection, ATL threshold tuning, Segment customers into
homogenous groups using clustering, Logistic Regression Model Performance
Review etc. while maintaining the flexibility to switch amongst work streams
based on business needs. Apply quantitative and qualitative data analysis
methods; prepare statistical and non-statistical data exploration and
advanced statistical analysis to support the threshold tuning or
segmentation work streams.
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Validate data, identify data quality issues (if any), and work with
Technology to address them. Analyze and interpret data reports, draw
conclusions and make recommendations answering specific business needs.
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Automate data extraction and data preprocessing tasks. Perform adhoc data
analysis. Design and maintain complex data manipulation processes. Provide
consistent documentation and presentations.
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Develop new transaction monitoring scenarios based on emerging Financial
Crime Risk
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Document solutions and present results in a simple comprehensive way to
non-technical audience, as well as write more formal documentation using
statistical vocabulary.
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Generate new ideas, concepts and models to improve methods of obtaining and
evaluating quantitative and qualitative data. Identify relationships and
trends in data, as well as any factors that could affect the results of
research. Question and validate assumptions. Escalate identified risks and
sensitive areas in terms of methodology and processes.
Qualifications:
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2-4 years of experience in Financial Services / Analytics Industry
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Masters in a numerate subject such as Mathematics, Operational Research,
Business Administration, Economics etc. from Premier Institute or a track
record of performance that demonstrates this ability.
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Previous experience with financial services companies (retail banking, small
business banking, commercial, institutional, private banking)
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Experience in threshold tuning for Optimization, developing Logistic
Regression Model to predict customer behavior, identifying anomalies in
transaction and Customer behavior, Outlier detection, ATL threshold
tuning, Segment customers into homogenous groups using clustering,
Logistic Regression Model Performance Review while maintaining the
flexibility to switch amongst work streams based on business needs
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Good Knowledge in Python, SQL, Hive
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Experience in prompt Engineering & Generative AI.
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Strong statistics and data analytics academic background and knowledge of
quantitative methods
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Highly skilled and good knowledge of MS Excel. VBA experience is a plus
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Experience in reporting the results of analysis in clear written form, and
in presenting the findings during meetings and conference calls
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Team working experience (demonstrated team player ability required)
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Understanding technical requirements, ability to communicate with Technical
Support
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Very good written and verbal communication ability in an educational style.
Ability to express thoughts and concepts clearly.
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Ability to work well with a variety of people and to show team-player
attitude regardless of the scope of responsibilities.
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Provide input into the innovation of new and enhanced approaches. Having
initiative and a proactive attitude is desirable