EET EDMS Cognitive Linguist
Job Description:
At Bank of America, we are guided by a common purpose to help make financial lives better through the power of every connection. We do this by driving Responsible Growth and delivering for our clients, teammates, communities and shareholders every day.
Being a Great Place to Work is core to how we drive Responsible Growth. This includes our commitment to being an inclusive workplace, attracting and developing exceptional talent, supporting our teammates’ physical, emotional, and financial wellness, recognizing and rewarding performance, and how we make an impact in the communities we serve.
Bank of America is committed to an in-office culture with specific requirements for office-based attendance and which allows for an appropriate level of flexibility for our teammates and businesses based on role-specific considerations.
At Bank of America, you can build a successful career with opportunities to learn, grow, and make an impact. Join us!
Role Summary
The Senior Technology Manager for Conversational AI & Language Engineering is a senior leadership role responsible for setting the technical vision, managing teams, and ensuring the long‑term health and performance of the machine learning capabilities powering Bank of America’s employee‑facing Virtual Assistant.
This role is leadership‑first: accountable for strategy, governance, prioritization, and outcomes across natural language understanding (NLU), speech recognition, and LLM‑based capabilities.
Key Responsibilities
Technology Leadership & Ownership
- Own the end‑to‑end technical strategy for language engineering, NLU, and conversational AI across web, mobile, and voice channels.
- Define and evolve the intent portfolio and domain coverage (e.g., technology, human resources), ensuring alignment between conversation design, business needs, and ML capabilities.
- Establish standards and best practices for model quality, evaluation, telemetry, and lifecycle management.
- Provide senior‑level technical oversight for model design, training approaches, performance tradeoffs, and production readiness.
- Serve as the accountable owner for model governance, including current and future registered models.
- Help transition a mature deterministic solution with over 650 capabilities to leverage Generative and Agentic AI.
People Management & Team Development
- Lead and develop a specialized, medium‑sized team of language engineers and ML practitioners.
- Set clear priorities, expectations, and success metrics for the team, balancing delivery, quality, and innovation.
- Coach and mentor senior and mid‑level engineers, raising the overall technical bar and creating clear growth paths.
- Ensure sustainable operating models that support scale, reliability, and continuous improvement.
Strategy, Roadmap & Stakeholder Partnership
- Define the conversational AI roadmap, integrating traditional NLU techniques with LLM and GenAI capabilities where appropriate.
- Partner with product owners, UX researchers, data scientists, and engineering leaders to shape the “brain” of the virtual assistant.
- Translate complex technical topics into clear, executive‑level communication for stakeholders and leadership.
- Identify systemic gaps or underperforming areas through analytics and conversation monitoring, and drive multi‑quarter improvement plans.
Required Skills & Experience
- Proven experience leading teams delivering conversational AI, NLP, or language‑driven ML solutions.
- Strong background in natural language processing, intent classification, and speech recognition, with the ability to guide others rather than execute all work personally.
- Experience shaping and executing technical strategy across multiple domains and channels.
- Familiarity with LLMs and GenAI, including their application, limitations, and governance considerations in enterprise environments.
- Working knowledge of Python, ML workflows, and evaluation techniques sufficient to provide technical leadership and oversight.
- Experience with Agile and DevOps operating models.
- Strong analytical thinking, decision‑making, and executive communication skills.
What Defines Success in This Role
- Teams deliver high‑quality, scalable conversational intelligence with clear ownership and governance.
- Model performance, reliability, and user experience improve consistently over time.
- Stakeholders trust the function as a strategic partner, not just an implementation team.
- The organization has a clear, coherent vision for how NLU and LLMs power employee experiences.
Required Qualifications:
- Experience with conversational interfaces and natural language processing.
Experience training machine learning algorithms for data classification and/or speech recognition.
Experience improving intent recognition of a data classification model.
Experience with python.
Unique skillset in computational linguistics and technical experience.
Familiarity with LLMs.
Familiarity with using version control technologies such as git, svn, or JIRA.
Experience in DevOps and Agile methodology.
Strong analytical and troubleshooting skills.
Skills:
Automation
Influence
Result Orientation
Stakeholder Management
Technical Strategy Development
Application Development
Architecture
Business Acumen
Risk Management
Solution Design
Agile Practices
Analytical Thinking
Collaboration
Data Management
Solution Delivery Process
Shift:
1st shift (United States of America)Hours Per Week:
40Learn more about this role
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On screen copy:
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Software Engineer
Software Engineer: At Bank of America, the code I write every day helps keep our systems running for millions of people.
[Software Engineer writing code at his desk]
As a Software Engineer, I feel like I’m on the front lines of creating what the enterprise needs to compete in the digital space – from trading apps to market systems to backend services.
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That means writing code, working with the team and solving problems together.
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I'm part of Strategic Data Initiatives, using modern development practices, state-of-the-art frameworks, and cloud-native services to build what the business needs. The key is collaboration; whether I’m working with product managers, quality assurance, or teaming up with other designers.
[Software Engineer moving sticky notes on a kanban board]
From legacy systems to performance tuning, it’s like our team is tackling a jigsaw puzzle, and I can take real ownership of my pieces, even when there’s more than one way forward. I’ve got full support from mentors and leadership, which helps me develop as an engineer while gaining expertise in new tech.
On screen copy:
Skill Growth
Career Mobility
Best of all, as my skills grow, so do the opportunities to move to new teams and take on bigger responsibilities.
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And through our day-to-day practices and retrospectives, I have a chance to be part of a group that becomes more collaborative and impactful with each shared win. Plus, I’m given what I need to feel valued, with flexible work schedules, learning stipends, and programs that let me prioritize my health and wellness.
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Pursue yours at Bank of America.
I’m proud to be part of a team that’s building the future of banking – one line of code at a time. We all have goals. Pursue yours at Bank of America.
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What would you like the power to do?®
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Learn more at careers.bankofamerica.com
On screen disclosure:
EOE disability/veteran. ©2025 Bank of America Corporation. All rights reserved.
MAP 8651837 Expiration Date: 06/05/2027
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