招聘
Bloomberg Law, Tax & Government (BLAW/BTAX/BGOV) delivers AI-powered solutions that integrate trusted editorial content with billions of documents and data points to support legal, tax, accounting, and government professionals.
The Product AI Enablement Team builds ML and AI solutions to solve concrete business problems, embedding them directly into user workflows and iterating rapidly using early customer feedback.
What you’ll work on
An example of a current project involves building agentic AI workflows for corporate tax compliance. Agents will analyze complex tax spreadsheets, identify relevant tax topics, retrieve recent statutory and regulatory changes from Bloomberg datasets, generate grounded analysis with citations, and guide users through impacted calculations using a conversational interface. Agents then suggest changes to spreadsheet cells by reasoning over tables, formulas, dependencies, layout, and user-specific spreadsheet styling.
Technical focus
We apply a wide range of ML and NLP techniques, including:
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Agentic AI: tool-calling, MCP configuration, context engineering, prompt tuning, deep research, agent routing, conversational frameworks
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Information Enrichment: NER/disambiguation, classification, topic modeling
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Content Generation: summarization, document drafting, legal insight generation, recommendation systems
We leverage internal platforms for Information Retrieval, Agent Factory, Conversational AI, Knowledge Graphs, Reasoning Models, and Guardrails to deliver end-to-end solutions.
How we work
You’ll work in a forward-deployed, agile environment with software engineers, product managers, subject matter experts, and annotators. We prioritize iterative development, early customer engagement, and rapid feedback-driven improvement. ML ambiguity is expected; success requires ownership, adaptability, and strong collaboration.
Responsibilities
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Lead ML projects end-to-end as the primary technical owner
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Translate business problems into well-scoped ML problems
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Design and develop domain-specific ML, NLP, and LLM-based solutions
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Define evaluation metrics and make data-driven decisions
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Write and maintain production-quality ML code
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Collaborate with AI platform, data, and frontend engineers for deployment and lifecycle management
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Manage stakeholder expectations throughout development and release
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Stay current with ML/NLP research and apply relevant advances
Requirements
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4+ years of experience in ML/AI, preferably NLP
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Proven experience delivering production NLP systems
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Strong intuition for problem formulation and model selection
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Proven delivery of production NLP systems and integration in user workflows
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Experience with GenAI evaluations, grounding, AI safety & compliance
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MS or PhD in Computer Science, Mathematics, or equivalent practical experience
Nice to have
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Familiarity with weak supervision, reinforcement learning, semantic search, and knowledge graphs
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Systems thinking for Agentic design & tool-using for multi-step agentic workflows
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Experience across the full ML lifecycle: scoping, data collection, training, evaluation, optimization, and deployment
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Research publications, ML competitions, or demonstrable projects
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Interest in legal, tax, or government domains (prior experience not required)
Salary Range = 165000 - 260000 USD Annually + Benefits + Bonus
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About Bloomberg

Bloomberg
PublicBloomberg provides financial software, data, and media services to financial professionals and institutions worldwide. The company operates Bloomberg Terminal, a computer software system that enables professionals to access real-time financial market data and trading tools.
10,001+
Employees
Midtown Manhattan
Headquarters
Reviews
4.0
15 reviews
Work Life Balance
4.2
Compensation
4.5
Culture
3.2
Career
3.0
Management
2.8
65%
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Pros
High compensation and competitive total compensation
Good work-life balance
Company stability and job security
Cons
Slow career progression and promotion speed
Management issues and micromanagement
Limited remote work flexibility
Salary Ranges
9,877 data points
Junior/L3
L2
L3
L4
L5
L6
M3
M4
M5
M6
Mid/L4
Senior/L5
Junior/L3 · Data Scientist
0 reports
$202,310
total / year
Base
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Stock
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Bonus
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$171,963
$232,657
Interview Experience
14 interviews
Difficulty
2.9
/ 5
Duration
14-28 weeks
Offer Rate
21%
Experience
Positive 50%
Neutral 29%
Negative 21%
Interview Process
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Technical Rounds/Superday
5
Virtual/Onsite Interviews
6
Final Decision
Common Questions
Coding/Algorithm
Technical Knowledge
Behavioral/STAR
System Design
Past Experience
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