Staff Software Engineer AI
Intuit
Staff Software Engineer AI
Company Overview
Intuit is the global financial technology platform that powers prosperity for the people and communities we serve. With approximately 100 million customers worldwide using products such as TurboTax, Credit Karma, QuickBooks, and Mailchimp, we believe that everyone should have the opportunity to prosper. We never stop working to find new, innovative ways to make that possible.
Job Overview
Customer Growth and Engagement team at Intuit is looking for AI/ML Engineers to transform Intuit’s Marketing Platforms with AI by automating/assisting in key workflows. In this role, you will partner to build ML models/pipelines for insights, recommendations, entity recognition from various data sources. You'll take a lead at designing/building architecture for AI native apps that can automate marketing workflows, data retrieval to possibly fine tuning LLMs for marketing needs/data. You will partner with AI/data teams at Intuit and work closely with the platform engineers to identify/build durable frameworks/components that enable platform engineers to build AI based assists, integrate model based automations in their tools.
We are looking for
- Leads who can drive architecture/design, implementation and deployment of models, LLM apps.
- Passionate engineers and applied scientists with experience in understanding
Responsibilities
- Responsible for design of common components/frameworks/models that assist in building AI native apps, Fullstack LLM apps.
- Own end to end development of frameworks/models/ ML pipelines that fit use cases by working with the consuming teams and dependencies.
- Being able to navigate through ambiguity, lead with clarity and PoC
- Rapid prototyping, experimentation and iterations to build/own high accuracy/performant frameworks/models.
- Self organized, explore new shifts in GenAI/AI and look at possible application/improvements in the existing use cases.
- Being a team player to build the team and strengthen building with AI across the organization.
- Being opinionated on data/data security to make it ready for training and inferences.
Qualifications
- BS, MS, or PhD degree in Computer Science or related field, or equivalent practical experience with 8+ years of experience in building/designing AI/ML applications. Atleast 1 year of experience working as a lead for a team with AI/ML engineers.
- Well versed in building with Python, PyTorch, Numpy, Pandas, TensorFlow
- Machine learning fundamentals for supervised, unsupervised & reinforcement learning (i.e. classification, regression, clustering, neural networks) and experience in building production grade models with precision/recall.
- Understand and apply machine learning principles (training, weights, validation, testing, error, cost) optimizing for accuracy/feedback. Should establish and own metrics/optimization.
- Computer science fundamentals: data structures, algorithms, performance complexity, and implications of computer architecture on software performance (e.g., I/O and memory tuning).
- Experience with integrating applications and platforms with cloud technologies (e.g: AWS Sagemaker)
- Understanding of LLM, LangChain, CustomGPTs, Prompt Management, and ability to fine-tune base models to build efficient production-grade LLM apps, In-depth knowledge of Transformer, Encoder, Embedding Models at scale.
- Nice to have: Knowledge of data cleaning, streaming, transformations at scale,storage and ingestion pipelines.