Saransh Inc

Lead Machine Learning Engineer - Remote (US) or CA - Only W2

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Nothing Found.
🌎 - Country
United States
💱 - Currency
$ USD
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💰 - Day rate
Unknown
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🗓️ - Date
May 19, 2026
🕒 - Duration
More than 6 months
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🏝️ - Location
Hybrid
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📄 - Contract
W2 Contractor
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🔒 - Security
Unknown
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📍 - Location detailed
United States
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🧠 - Skills detailed
#Monitoring #PyTorch #Cloud #AI (Artificial Intelligence) #ML (Machine Learning) #Signal Processing #GCP (Google Cloud Platform) #Deep Learning #Image Processing #Time Series #Deployment #TensorFlow #Data Pipeline #ML Ops (Machine Learning Operations)
Role description
Role: Lead Machine Learning Engineer Location: Mountain View, CA (3 days a week onsite) (OR) Remote Job Type: W2 Contract Duration: 12 months Experience: Senior/Lead Level Short Overview Of JD Looking for a ML Engineer who will be working on the products related to seismic and well log data, identifying simple geologic characteristics of the data (faults, horizons), and working knowledge of the different subsurface data formats and types. Primary Skills MLOps, Deep learning, GPU training and inference, Image models, GCP, TensorFlow, PyTorch, Agentic coding tools We Are Looking For a Candidate Who • Senior-level experience leading small engineering teams, setting technical goals in a business context, and remaining hands-on. • Familiarity with agentic coding tools (e.g., Claude). • Is well-versed in deep learning, GPU training and inference, and image models. • Has extensive experience in model training and setting up distributed model training pipelines, especially using platforms like Vertex AI and Kubeflow for large-scale image and language model training. • Possesses a strong background in building and deploying machine learning models, with a focus on image processing and time series signal processing. • Has hands-on experience in training and fine-tuning ML models. • Is skilled in building and maintaining data pipelines for image and sensor data. • Is familiar with ML Ops tools and practices, including model monitoring, versioning, and deployment. • Has experience working with data labeling tools. • Is comfortable with cloud platforms, particularly Google Cloud Platform (GCP); experience with edge deployments is a plus. Additional (Nice To Have) Skills • Experience with GCP is highly desirable; if not, the ability and willingness to learn quickly is expected. • Proficiency in TensorFlow and PyTorch. • Familiarity with Protocol Buffers and containerization technologies. • Experience with rapid prototyping to validate hypotheses.