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Chatgpt Python Jobs (NOW HIRING)

Accellor is an AI-native services firm purpose-built for the post-ChatGPT era. Free from legacy ... Design, build, train, and evaluate AI/ML models using Python, TensorFlow, PyTorch, or JAX

... such as ChatGPT, GitHub Copilot, LangChain, LangSmith, CrewAI, vector DBs, RAG frameworks ... approach using Python, modern AI SDKs, and model APIs. · Develop experimental features and ...

... such as ChatGPT, GitHub Copilot, LangChain, LangSmith, CrewAI, vector DBs, RAG frameworks ... Python, modern AI SDKs, and model APIs. * experimental features and concepts that validate ...

AI Engineer Developer

Houston, TX · Remote

$40 - $45/hr

Strong backend development experience in Python, TypeScript, Node.js, Java, Go, or similar backend ... Experience with LLM APIs and GenAI platforms such as OpenAI, Claude, ChatGPT Enterprise, Azure ...

Associate DevOps Engineer

Cincinnati, OH · On-site

$51.50 - $70.50/hr

Proficiency in at least one programming language , such as Python, JavaScript, Java, or .NET. * Hands-on experience using Generative AI tools (e.g., GitHub Copilot, ChatGPT, Codex) to write, refactor ...

Big Data Developer

Rockville, MD · On-site

$54 - $70/hr

Strong programming skills in Python or Scala * Advanced SQL (Joins, Window Functions, Aggregations ... Experience with AI-assisted development tools (GitHub Copilot, ChatGPT, Claude, Amazon Q) Preferred ...

Senior Staff Software Engineer, Gov

San Francisco, CA · On-site

$144K - $190K/yr

The role involves owning the development of new customer-facing ChatGPT and OpenAI API features for ... use Python) • Some experience with underlying infrastructure primitives like Kubernetes and ...

Senior Staff Software Engineer, Gov

Seattle, WA · On-site

$139K - $183K/yr

The role involves owning the development of new customer-facing ChatGPT and OpenAI API features for ... use Python) • Some experience with underlying infrastructure primitives like Kubernetes and ...

We are seeking a highly skilled Full Stack Engineer with expertise in Python, React, Next.js, and ... Leverage AI development tools (such as GitHub Copilot, ChatGPT, Claude or similar) to improve ...

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Chatgpt Python information

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$13

$58

$86

How much do chatgpt python jobs pay per hour?

As of Jun 25, 2026, the average hourly pay for chatgpt python in the United States is $58.62, according to ZipRecruiter salary data. Most workers in this role earn between $48.32 and $66.59 per hour, depending on experience, location, and employer.

What is a ChatGPT Python developer?

A ChatGPT Python developer is a professional who specializes in integrating and utilizing OpenAI's ChatGPT language model within Python applications. They use Python programming to build, customize, and deploy conversational AI systems, often for purposes such as customer support, automation, or content generation. Their work may involve using APIs, handling data preprocessing, and fine-tuning AI models to suit specific business needs. This role requires strong knowledge of Python as well as familiarity with natural language processing concepts.

Is Python a high paying job?

A Python developer, including roles like ChatGPT Python specialists, can earn high salaries depending on experience, location, and skill level. Senior Python programmers with expertise in AI, machine learning, or data science tend to have higher earning potential, especially in tech hubs or companies valuing advanced programming skills.

Will AI replace Python coders?

AI tools like ChatGPT can assist Python coders by automating repetitive tasks and generating code snippets, but they are not expected to fully replace human programmers. Python developers will continue to be needed for designing, debugging, and maintaining complex systems that require critical thinking and creativity. Staying updated with new tools and enhancing problem-solving skills remain important for Python professionals in an evolving tech environment.

Which pays more, C++ or Python?

For a ChatGPT Python developer, Python developers generally have higher average salaries due to the language's widespread use in AI, data science, and web development. C++ developers may earn more in specialized fields like systems programming or game development, but overall, Python roles tend to offer higher compensation in the current job market.

What are the key skills and qualifications needed to thrive as a ChatGPT Python Developer, and why are they important?

To thrive as a ChatGPT Python Developer, you need strong programming skills in Python, a solid understanding of machine learning concepts, and experience working with natural language processing (NLP) frameworks. Familiarity with tools such as OpenAI APIs, TensorFlow or PyTorch, and version control systems like Git is typically required. Excellent problem-solving abilities, attention to detail, and effective communication set top performers apart in this field. These skills are crucial for building, maintaining, and optimizing conversational AI systems that deliver accurate and engaging user experiences.

What are some common challenges faced by Python developers working with ChatGPT integration projects?

Python developers integrating ChatGPT often encounter challenges such as managing API rate limits, handling large or complex conversational datasets, and ensuring efficient message formatting for optimal model responses. They may also need to address latency issues when scaling applications for real-time use and implement robust error handling for API exceptions. Collaborating with product managers and UX designers is key to creating seamless user experiences while balancing technical constraints.

Are Python coders still in demand?

Python developers are currently in high demand across various industries due to its versatility in data analysis, machine learning, web development, and automation. The language's popularity continues to grow, and proficiency in frameworks like Django or Flask can enhance job prospects in this field.

What is the difference between Chatgpt Python vs Data Scientist?

AspectChatgpt PythonData Scientist
Required SkillsPython programming, API integration, AI/ML basicsPython, statistics, data analysis, machine learning
Work EnvironmentTech companies, AI startups, software development teamsResearch labs, tech firms, finance, healthcare
CertificationsPython certifications, AI/ML coursesData Science certifications, Python, R
Industry UsageDeveloping AI chatbots, automation toolsData analysis, predictive modeling, research

Chatgpt Python professionals focus on developing AI-powered chatbots and automation using Python, while Data Scientists analyze data and build predictive models. Both roles require Python skills, but Data Scientists typically need a broader understanding of statistics and data analysis. The choice depends on whether you prefer AI development or data analysis tasks within tech environments.

Infographic showing various Chatgpt Python job openings in the United States as of June 2026, with employment types broken down into 93% Full Time, 3% Part Time, and 4% Contract. Highlights an 83% Physical, 5% Hybrid, and 12% Remote job distribution, with an average salary of $121,932 per year, or $58.6 per hour.
AI Engineers

Other

Posted 8 days ago


Job description

Accellor is an AI-native services firm purpose-built for the post-ChatGPT era. Free from legacy constraints, we focus on delivering measurable business outcomes through advanced AI, data, and engineering capabilities. Our mission is to operationalize AI at scale and unlock sustained enterprise value. 

Our offerings span AI solutions, data services, enterprise applications, and product engineering, tailored to industry-specific needs across healthcare, life sciences, telecom, retail, financial services, and technology. By leveraging design thinking and technology-agnostic architectures, we ensure faster time-to-value and seamless interoperability. 

With a proven track record of enabling Fortune 100 enterprises and global innovators, Accellor stands as a trusted partner for organizations seeking to harness the full potential of AI. Our vision is clear: to build intelligent, connected ecosystems that deliver measurable outcomes and redefine the future of enterprise transformation. 

Role Summary:

We are looking for an AI Engineer with strong problem-solving ability, solid Python engineering skills, and hands-on understanding of machine learning, deep learning, GPUs, and CUDA fundamentals. The ideal candidate may be early in their career but must be technically sharp, curious, implementation-driven, and capable of learning complex AI systems quickly.

This role is suited for someone who can build models, debug training issues, optimize GPU workloads, understand tensor operations, and work closely with research, platform, and engineering teams.

Key Responsibilities:

  • Design, build, train, and evaluate AI/ML models using Python, TensorFlow, PyTorch, or JAX.
  • Develop clean training pipelines with data loading, checkpointing, logging, validation, and experiment tracking.
  • Work on deep learning models including CNNs, Transformers, LLMs, embeddings, and attention-based architectures.
  • Debug model issues such as poor convergence, overfitting, unstable loss, NaNs, tensor-shape errors, and GPU memory failures.
  • Run and optimize models on GPUs with awareness of CUDA execution, memory usage, batching, mixed precision, and kernel performance.
  • Profile training and inference workloads to identify bottlenecks in compute, memory, data loading, and communication.
  • Support development of custom operators, fused kernels, CUDA/Triton-based optimizations, or framework-level performance improvements.
  • Build AI inference pipelines with focus on latency, throughput, reliability, cost, and quality.
  • Create evaluation pipelines for model accuracy, robustness, hallucination risk, safety, latency, and regression testing.
  • Read research papers, implement ideas, run experiments, and clearly document findings, trade-offs, and limitations.

Requirements

  • Strong programming experience in Python.
  • Good understanding of data structures, algorithms, numerical programming, and clean code practices.
  • Hands-on experience with TensorFlow, PyTorch, or JAX.
  • Strong fundamentals in:

o  Deep learning

o  Backpropagation

o  Gradient descent

o  Optimizers

o  Loss functions

o  Regularization

o  CNNs

o  Transformers

o  Attention mechanisms

o  Embeddings

o  Model evaluation

  • Experience training and debugging models on CUDA-enabled GPUs.
  • Basic understanding of:

o  GPU memory

o  CUDA kernels

o  Threads, blocks, and warps

o  Memory bandwidth

o  Kernel launch overhead

o  Mixed precision training

o  CUDA out-of-memory debugging

  • Comfortable with Linux, Git, Docker, shell scripting, and experiment management.
  • Ability to reason from first principles and solve ambiguous technical problems.

Preferred Skills:

  • CUDA C/C++ or Triton kernel development.
  • C++ exposure for performance-critical AI systems.
  • Distributed training using PyTorch DDP, TensorFlow Distributed Strategy, JAX, NCCL, MPI, or similar tools.
  • Experience with GPU profiling tools such as:

o  NVIDIA Nsight Systems

o  NVIDIA Nsight Compute

o  PyTorch Profiler

o  TensorFlow Profiler

  • Experience with inference optimization, quantization, TensorRT, ONNX, XLA, or model compilation.
  • Exposure to LLMs, RAG systems, agents, embeddings, multimodal AI, or AI evaluation frameworks.
  • Understanding of FP32, FP16, BF16, INT8, tensor cores, and numerical stability.

What Excellent Looks Like:

  • Can implement a model from a research paper without blindly copying code.
  • Can debug why a model is not learning.
  • Can explain why GPU utilization is low.
  • Can identify whether a workload is compute-bound, memory-bound, or communication-bound.
  • Can write clean, reproducible, and testable Python code.
  • Can profile before optimizing.
  • Can work across model logic, GPU execution, data pipelines, and inference systems.
  • Can communicate technical findings clearly and precisely.

Ideal Candidate Profile:

  • The ideal candidate is an early-career AI engineer who is not limited to using ML libraries as black boxes.
  • They understand how models train, how tensors move, how GPUs execute workloads, and how performance, quality, reliability, and safety come together in real AI systems.
  • The strongest candidates will show hands-on projects in model implementation, GPU acceleration, CUDA/Triton operators, distributed training, LLM evaluation, inference optimization, or research paper reproduction.