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SR. AI Engineer

Salary undisclosed

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Top 5 Technical Skills
1. ARTIFICIAL INTELLIGENCE
2. AWS Sagemaker
3.Generative AI
4.NLP Natural Learning Processing (NLP)
5. NLG Natural Language Generators
6.Machine Learning
7. LLM Large Language Models
8. Python
9. SQL
Top 3 Soft Skills:

  1. Strong Communications
  2. Ability to work under pressure
  3. Ability to teach, guide or mentor

Complete List of Technical Skills:

1. ARTIFICIAL INTELLIGENCE
2. AWS Sagemaker
3.Generative AI
4.NLP Natural Learning Processing (NLP)
5. NLG Natural Language Generators
6.Machine Learning
7. LLM Large Language Models
8. Python
9. SQL


Minimum Required Experiences:

  • 2 years of relevant experience in building large scale machine learning or deep learning models and/or systems
  • Bachelors degree in Business Analytics, Computer Science, Data Science, Engineering Finance, Math, Physics, Statistics, or a related field
  • Work or educational background in one or more of the following areas: machine learning, computational linguistics, deep learning, ratification intelligence, data science and/or data analytic, generative AI, symbolic AI, causal AI, operations research, computer science, Mathematics, business analytics, or knowledge management
  • Demonstrated experience programming with R / Python, Linux, and Spark in AWS cloud environment, or knowledge and algorithmic design experience in Python (3+ years)
  • Proficient with Amazon AWS Sagemaker, Jupyter Notebook and Python Scikit, Deep Learning, Machine Learning tools such as TensorFlow
  • Experience with image processing models such as Coco, CLIP, ResNet or comparable models
  • Demonstrated experience with machine learning techniques including natural language processing, and Large language Models (GPTv4-o1, o3, OpenAI APIs, Llama, Claude, etc).
  • Experience developing AI agents and development proficiency using agentic programming
  • Proficient in Natural language processing (NLP) and Natural language generation (NLG) including prior projects in any of the following categories: top modeling of text, sentiment analysis of text, part of speech tagging, Name Entity Recognition (NER), Bag of Words, text extraction
  • Experience building and working with any of these components: Vector DB, BERT, RoBERTa (or comparable tools), Spacy, LLM and GenAI tools
  • Experience with LoRA, LangChain, RAG, LLM Fine Tuning and PEFT, Knowledge Graphs.
  • Strong skills in developing GraphRAG, Chain of Thought (CoT), Tree of Thought (ToT), Reinforcement learning and AI development architectures with Human-in-the-Loop (HITL)
  • Demonstrated experience with SQL and any relational database technologies, such as Oracle, PostgreSQL, MySQL, RDS, Redshift, Hadoop EMR, Hive, etc.
  • Demonstrated experience processing structured and unstructured data sources, data cleansing, data normalization and prep for analysis
  • Demonstrated experience with code repositories and build/deployment pipelines, specifically Jenkins and/or Git/GitHub/GitLab.
  • Demonstrated experience using Tableau, or Kibana, Quicksights or other similar data visualizations tools.
  • Very comfortable working with ambiguity (e.g. imperfect data, loosely defined concepts, ideas, or goals)

Desired Experiences:

  • Education: MS in Computer Science, Statistics, Math, Engineering, or related field, PhD preferred
  • 3+ years of relevant experience in building large scale machine learning or deep learning models and/or systems
  • 1+ year of experience specifically with deep learning (e.g., CNN, RNN, LSTM)
  • 1+ year of experience building NLP and NLG tools.
  • Experience with wide range of LLMs (Llama, Claude, OpenAI, Cohere, etc.), LoRA, LangChain, RAG, LLM Fine Tuning and PEFT are preferred.
  • Demonstrated skills with Jupyter Notebook, AWS Sagemaker, or Domino Datalab or comparable environments
  • Passion for solving complex data problems and generating cross-functional solutions in a fast-paced environment
  • Knowledge in Python and SQL, object oriented programming, service oriented architectures
  • Strong scripting skills with Shell script and SQL
  • Strong coding skills and experience with Python (including SciPy, NumPy, and/or PySpark) and/or Scala.
  • Knowledge and implementation experience with NLP techniques (topic modeling, bag of words, text classification, TF/IDF, Sentiment analysis) and NLP technologies such as Python NLTK, or Spacy or comparable technologies
  • Knowledge and implementation experience with statistical and machine learning models (regression, classification, clustering, graph models, etc.)
  • Hands on experience building models with deep learning frameworks like Tensorflow, Keras, Caffe, PyTorch, Theano, H2O, or similar
  • Experience with LLM Agents, Agentic programming
  • Experience with search architecture (for instance: Solr, ElasticSearch, AWS OpenSearch)
  • Experience with building querying ontologies such as Zeno, OWL, RDF, SparQL or comparable are preferred
  • Knowledge & experience with microservices, service mesh, API development and test automation are preferred
  • Demonstrated experience using Docker, Kubernetes, and/or other similar container frameworks are preferred
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
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