Intelliswift - An LTTS Company
AI

Software Engineer (Generative AI LLMs)

Intelliswift - An LTTS Company · Menlo Park, CA

Actively hiring Posted 5 months ago

Job Title: Software Engineer/Machine Learning Engineer

Location: On site Menlo Park, CA

Duration: 6 Months

The main function of a software engineer on Lead generation Ads product team is to apply the principles of computer science and mathematical analysis to the design, development, testing, and evaluation of the software and systems that make computers work. They will be responsible for developing and optimizing AI/ML solutions to enhance lead generation workflows and drive innovation.

Must-Have Skills

Work on products with deep technical challenges in ML, LLMs, and cross-channel optimization.

Experience with LLMs and generative AI

Understanding Data Analysis & Experimentation

Strong communication and collaboration skills

Nice-to-have Skills

Experience owning high-impact projects and driving them from ideation to launch.

Exposure to the latest GenAI and lead optimization strategies

Building the chatbot and AI technology

Understanding of Ads world

Responsibilities:

Experience with AI/ML technologies: Proven track record in designing, building, and deploying machine learning models.

Contribute to AI initiatives: Develop and optimize AI/ML features that enhance lead generation workflows.

Collaborate with cross-functional teams: Work closely with product managers, data scientists, and other engineers to deliver impactful solutions.

Design and implement scalable solutions: Architect and code robust, scalable software systems tailored to business needs.

Stay updated with latest AI technologies: Continually research and apply cutting-edge AI/ML advancements to Lead Gen projects.

Drive innovation within the team: Advocate for novel approaches, tools, and technologies to maintain technical excellence.

Develop standards and guidelines to guide the use and acquisition of software and to protect vulnerable information.

Education/Experience:

Bachelor's degree in computer science, software engineering or relevant field required.

Tags & focus areas

Used for matching and alerts on DevFound
Contract Ai Machine Learning Data Science Generative Ai
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