  # Best Enterprise AI Code Generation Software

  *By [Adam Crivello](https://research.g2.com/insights/author/adam-crivello)*

   Products classified in the overall AI Code Generation category are similar in many regards and help companies of all sizes solve their business problems. However, enterprise business features, pricing, setup, and installation differ from businesses of other sizes, which is why we match buyers to the right Enterprise Business AI Code Generation to fit their needs. Compare product ratings based on reviews from enterprise users or connect with one of G2&#39;s buying advisors to find the right solutions within the Enterprise Business AI Code Generation category.

In addition to qualifying for inclusion in the AI Code Generation Software category, to qualify for inclusion in the Enterprise Business AI Code Generation Software category, a product must have at least 10 reviews left by a reviewer from an enterprise business.




  
## How Many AI Code Generation Software Products Does G2 Track?
**Total Products under this Category:** 110

### Category Stats (May 2026)
- **Average Rating**: 4.42/5 (↓0.06 vs Apr 2026)
- **New Reviews This Quarter**: 334
- **Buyer Segments**: Small-Business 58% │ Mid-Market 28% │ Enterprise 14%
- **Top Trending Product**: Claude (+0.07)
*Last updated: May 18, 2026*

  
## How Does G2 Rank AI Code Generation Software Products?

**Why You Can Trust G2's Software Rankings:**

- 30 Analysts and Data Experts
- 6,100+ Authentic Reviews
- 110+ Products
- Unbiased Rankings

G2's software rankings are built on verified user reviews, rigorous moderation, and a consistent research methodology maintained by a team of analysts and data experts. Each product is measured using the same transparent criteria, with no paid placement or vendor influence. While reviews reflect real user experiences, which can be subjective, they offer valuable insight into how software performs in the hands of professionals. Together, these inputs power the G2 Score, a standardized way to compare tools within every category.

  
## Top AI Code Generation Software at a Glance
| # | Product | Rating | Best For | What Users Say |
|---|---------|--------|----------|----------------|
| 1 | [ChatGPT](https://www.g2.com/products/chatgpt/reviews) | 4.6/5.0 (2,489 reviews) | — | "[A Daily Source of Support for Work, Creativity, and Life](https://www.g2.com/survey_responses/chatgpt-review-12886321)" |
| 2 | [Claude](https://www.g2.com/products/claude-2025-12-11/reviews) | 4.6/5.0 (307 reviews) | — | "[Time-Saving, Versatile, but Memory Needs Improvement](https://www.g2.com/survey_responses/claude-review-12814769)" |
| 3 | [GitHub Copilot](https://www.g2.com/products/github-copilot/reviews) | 4.5/5.0 (293 reviews) | — | "[GitHub Copilot: A Smart Coding Partner That Speeds Up Everyday Development](https://www.g2.com/survey_responses/github-copilot-review-12709375)" |
| 4 | [Gemini](https://www.g2.com/products/google-gemini/reviews) | 4.4/5.0 (347 reviews) | — | "[Versatile Tool with Excellent Video Support, Fast and Easy Setup](https://www.g2.com/survey_responses/gemini-review-12866757)" |
| 5 | [Replit](https://www.g2.com/products/replit/reviews) | 4.5/5.0 (354 reviews) | — | "[Fast, Growing App Builder with Helpful Preview, Hosting, and DNS](https://www.g2.com/survey_responses/replit-review-12443703)" |
| 6 | [Cursor](https://www.g2.com/products/cursor/reviews) | 4.6/5.0 (129 reviews) | — | "[A Natural VS Code Transition with a Seamless Agent Interface](https://www.g2.com/survey_responses/cursor-review-12882984)" |
| 7 | [Gemini Code Assist](https://www.g2.com/products/gemini-code-assist/reviews) | 4.4/5.0 (65 reviews) | — | "[Fast Development Support but Needs Better Accuracy for Complex Tasks](https://www.g2.com/survey_responses/gemini-code-assist-review-12549030)" |
| 8 | [Amazon Q Developer](https://www.g2.com/products/amazon-q-developer/reviews) | 4.6/5.0 (38 reviews) | — | "[Easy-to-Understand Code Guidance That Boosts Confidence](https://www.g2.com/survey_responses/amazon-q-developer-review-12596802)" |
| 9 | [IBM watsonx Code Assistant](https://www.g2.com/products/ibm-watsonx-code-assistant/reviews) | 4.2/5.0 (56 reviews) | — | "[Makes Coding Faster and Less Stressful with Helpful, Time-Saving Suggestions](https://www.g2.com/survey_responses/ibm-watsonx-code-assistant-review-11397975)" |
| 10 | [TESS AI](https://www.g2.com/products/tess-ai/reviews) | 4.7/5.0 (384 reviews) | — | "[Magnificent structure to use multiple AIs together](https://www.g2.com/survey_responses/tess-ai-review-12395241)" |

  
  
## Which Type of AI Code Generation Software Tools Are You Looking For?
  - [AI Code Generation Software](https://www.g2.com/categories/ai-code-generation) *(current)*
  - [AI Coding Assistants Software](https://www.g2.com/categories/ai-coding-assistants)

  
  
## Buyer Guide: Key Questions for Choosing AI Code Generation Software Software
  ### What does AI Code Generation software do?
  I view AI Code Generation software as the development layer that helps teams write, explain, debug, review, and revise code with AI support. Across the G2 feedback I analyzed, users connect this category with inline suggestions, IDE assistants, code completion, bug fixing, boilerplate generation, SQL help, documentation, test creation, codebase context, and repository-aware agents. These tools help developers move from prompt, comment, issue, or existing code to a usable draft more quickly. The category matters most when coding work involves repetitive patterns, unfamiliar syntax, debugging blockers, or context-heavy changes across files.


  ### Why do businesses use AI Code Generation software?
  The strongest pattern I saw in G2 reviews was faster development with fewer context switches. Users want help inside the coding workflow, especially when writing boilerplate, fixing bugs, understanding unfamiliar code, or moving through routine implementation work.

- **Coding speed:** Reviewers describe faster code writing, function generation, and boilerplate creation as common benefits.
- **Debugging support:** Users rely on these tools to explain errors, find bugs, improve SQL queries, and reason through broken code.
- **IDE assistance:** Inline suggestions, autocomplete, editor integrations, and codebase context help developers stay inside their usual tools.
- **Learning and explanation:** Developers use AI to understand unfamiliar frameworks, syntax, libraries, and existing code.

G2 reviewers point to hallucinated answers, wrong code, token limits, pricing, context issues, and the need for human review as areas to check closely.


  ### Who uses AI Code Generation software primarily?
  When I reviewed G2 reviewer profiles, I saw AI Code Generation software serving technical users who write, review, test, or maintain software.

- **Software engineers:** Generate code, refactor functions, debug issues, and speed up implementation work.
- **Developers and programmers:** Use completions, suggestions, and chat-based coding help during daily development.
- **QA and test engineers:** Create test cases, automation scripts, and debugging support for testing workflows.
- **Data analysts and engineers:** Generate SQL queries, scripts, data transformations, and troubleshooting steps.
- **Founders and small technical teams:** Build prototypes, fix issues, and create early product code without a large engineering bench.


  ### What types of AI Code Generation software should I consider?
  From the way G2 reviewers describe their workflows, these tools are distinguished by where the coding help happens and how much control the developer needs over the output:

- **IDE coding assistants:** Suited to inline completions, code suggestions, refactoring, and editor-based help.
- **AI code chat tools:** Built around explaining code, generating snippets, debugging errors, and answering technical questions.
- **Agentic coding tools:** Useful when teams want AI to work across files, run tests, propose changes, and prepare pull requests.
- **Cloud development platforms with AI:** Designed for browser-based coding, quick prototypes, hosted environments, and collaborative builds.
- **Enterprise coding assistants:** A strong match for teams that need SSO, admin controls, codebase context, security settings, and usage visibility.


  ### What are the core features to look for in AI Code Generation software?
  When I assessed this category against G2 review themes, the features that make generated code actually useful inside real development work came down to a few core areas:

- **Context-aware code suggestions:** The tool should understand open files, repositories, comments, patterns, and existing code before suggesting changes.
- **IDE and workflow integration:** Support for VS Code, JetBrains, GitHub, terminals, pull requests, and common developer tools matters.
- **Debugging and code explanation:** Error analysis, stack trace help, code walkthroughs, and logic explanations should be clear and practical.
- **Testing and review support:** Unit test generation, code review help, linting, refactoring, and PR suggestions should improve code confidence.
- **Governance and usage controls:** Admin settings, privacy controls, model choice, token limits, auditability, and security guardrails need close review.


  ### What trends are shaping AI Code Generation software right now?
  From the market signals and G2 patterns I reviewed, several shifts are moving this category well past basic autocomplete:

- **Agentic coding is moving beyond autocomplete:** Coding tools are starting to take assigned issues, modify files, run tests, and propose pull requests.
- **Developer adoption is becoming mainstream:** AI coding tools are now part of regular development work for a large share of software professionals.
- **Trust is becoming the buying constraint:** Developers are using AI more often, but accuracy concerns and required review still shape adoption.
- **Coding assistants are becoming multi-surface tools:** AI coding support is moving across IDEs, terminals, repositories, cloud agents, Slack, and SDKs.
- **Governance is moving into developer AI:** Admin controls, monitoring, analytics, sandboxing, and code security are becoming part of enterprise rollout.


  ### How should I choose AI Code Generation software?
  After reviewing G2 feedback, I suggest starting with the coding workflow where your team loses the most time. Engineering teams that write high volumes of application code should prioritize IDE integration, context-aware completions, repository understanding, and test support. Teams using AI for debugging need stronger error explanation, code reasoning, documentation help, and model accuracy. When agents are part of the plan, I advise checking pull request behavior, sandboxing, test execution, permissions, and admin visibility. Pricing, token limits, hallucinated output, security controls, and code review expectations also deserve close review because G2 reviewers often connect those details with long-term trust and adoption.



---

  ## What Are the Top-Rated AI Code Generation Software Products in 2026?
### 1. [ChatGPT](https://www.g2.com/products/chatgpt/reviews)
  **Average Rating:** 4.6/5.0
  **Total Reviews:** 2,489
  **Product Description:** ChatGPT is an advanced AI language model developed by OpenAI, designed to assist users in generating human-like text based on the input it receives. It serves as a versatile tool for a wide range of applications, including drafting emails, writing code, creating content, and providing detailed explanations on various topics. ChatGPT is continually evolving to enhance user experience and meet diverse needs. Key Features and Functionality: - Natural Language Understanding: ChatGPT can comprehend and generate text that closely resembles human conversation, making interactions intuitive and engaging. - Versatile Applications: It supports tasks such as content creation, coding assistance, learning new concepts, and more, catering to both personal and professional use cases. - Continuous Improvement: OpenAI regularly updates ChatGPT to improve its performance, accuracy, and safety, ensuring it remains a reliable tool for users. Primary Value and User Solutions: ChatGPT addresses the need for efficient and accessible assistance in various domains. By leveraging its advanced language processing capabilities, it helps users save time, enhance productivity, and access information seamlessly. Whether it&#39;s drafting documents, learning new subjects, or automating routine tasks, ChatGPT provides a valuable resource that adapts to individual requirements, making it an indispensable tool in today&#39;s digital landscape.



### What Do G2 Reviewers Say About ChatGPT?
*AI-generated summary from verified user reviews*

**Pros:**

- Users praise the **ease of use** of ChatGPT, finding it invaluable for quick answers and brainstorming support.
- Users find ChatGPT to be a **quick and reliable support** for clarifying concepts and solving complex problems anytime.
- Users value the **quick and conversational responses** from ChatGPT, enhancing understanding and resolving queries efficiently.
- Users value ChatGPT for its **time-saving capabilities** , offering instant answers and simplifying daily tasks efficiently.
- Users appreciate the **time-saving capabilities** of ChatGPT, streamlining tasks like content creation and scheduling efficiently.

**Cons:**

- Users report that ChatGPT frequently delivers **incorrect answers confidently** , leading to confusion and a lack of reliability.
- Users express frustration over ChatGPT&#39;s **inconsistent context understanding** , leading to unexpected or generic responses that require revisions.
- Users note the **usage limitations** of ChatGPT, citing accuracy issues and inconsistencies in responses and formats.
- Users note the need for **greater accuracy** in ChatGPT&#39;s responses, emphasizing the importance of fact-checking its information.
- Users experience **inaccurate responses** from ChatGPT, leading to frustration and the need for repeated prompts for clarity.
  #### What Are Recent G2 Reviews of ChatGPT?

**"[A Daily Source of Support for Work, Creativity, and Life](https://www.g2.com/survey_responses/chatgpt-review-12886321)"**

**Rating:** 5.0/5.0 stars
*— Heera S.*

[Read full review](https://www.g2.com/survey_responses/chatgpt-review-12886321)

---

**"[Excellent for SOPs, Quality Documentation, and Productivity](https://www.g2.com/survey_responses/chatgpt-review-12888647)"**

**Rating:** 5.0/5.0 stars
*— Jigar V.*

[Read full review](https://www.g2.com/survey_responses/chatgpt-review-12888647)

---

  #### What Are G2 Users Discussing About ChatGPT?

- [GPT-4.5 What is your opinion?](https://www.g2.com/discussions/gpt-4-5-what-is-your-opinion) - 6 comments, 2 upvotes
### 2. [GitHub Copilot](https://www.g2.com/products/github-copilot/reviews)
  **Average Rating:** 4.5/5.0
  **Total Reviews:** 293
  **Product Description:** GitHub Copilot helps more than 1 million developers and over 20,000 businesses push what’s possible in software development. Based on powerful LLMs, including OpenAI’s GPT models, this AI pair programmer helps developers write code faster and with less work by drawing context from comments and code to suggest individual lines and whole functions instantly. All languages are supported, however the more common a language, the better represented it will be in the training data and the more robust suggestions will be.



### What Do G2 Reviewers Say About GitHub Copilot?
*AI-generated summary from verified user reviews*

**Pros:**

- Users find GitHub Copilot&#39;s **ease of use** invaluable, enhancing productivity with context-aware suggestions and streamlined coding.
- Users appreciate the **efficient coding assistance** of GitHub Copilot, drastically reducing development time and enhancing productivity.
- Users find that GitHub Copilot significantly boosts their **coding productivity** with intelligent suggestions and task automation.
- Users value the **problem-solving capabilities** of GitHub Copilot, enhancing efficiency and understanding in coding tasks.
- Users appreciate the **efficiency** of GitHub Copilot, noting its quick suggestions and valuable context-aware assistance.

**Cons:**

- Users find GitHub Copilot occasionally produces **poor coding** practices, leading to inefficiencies and errors in their projects.
- Users experience **poor suggestions** from Copilot, requiring frequent adjustments and facing interruptions during coding sessions.
- Users find the **licensing fees of GitHub Copilot to be a barrier** , especially for small or new developers.
- Users experience **inaccuracy** in suggestions, particularly for niche coding, necessitating caution and verification during development.
- Users find that GitHub Copilot has **context understanding limitations** , resulting in occasional inaccuracies and missed intentions.
  #### What Are Recent G2 Reviews of GitHub Copilot?

**"[GitHub Copilot: A Smart Coding Partner That Speeds Up Everyday Development](https://www.g2.com/survey_responses/github-copilot-review-12709375)"**

**Rating:** 5.0/5.0 stars
*— Pradip G.*

[Read full review](https://www.g2.com/survey_responses/github-copilot-review-12709375)

---

**"[GitHub Copilot Keeps Me in the Zone for DevOps and Automation](https://www.g2.com/survey_responses/github-copilot-review-12594492)"**

**Rating:** 5.0/5.0 stars
*— Sonti P.*

[Read full review](https://www.g2.com/survey_responses/github-copilot-review-12594492)

---

### 3. [Gemini](https://www.g2.com/products/google-gemini/reviews)
  **Average Rating:** 4.4/5.0
  **Total Reviews:** 347
  **Product Description:** Gemini is a family of multimodal, generative AI models. These models were developed by Google DeepMind and Google Research. They are designed to understand, operate across, and combine different types of information. This includes text, images, audio, video, and code. Gemini serves as a versatile, everyday AI assistant and powers a conversational chatbot. Key Product Features &amp; Capabilities Multimodal Understanding: Gemini understands and combines text, images, audio, video, and code. It can analyze complex documents, code repositories, and long videos. Conversational AI: Gemini allows for natural conversations. It functions as an intelligent assistant that can brainstorm, plan, and discuss topics. Deep Research &amp; Analysis: Gemini can analyze websites and user files to generate reports. It can also create audio overviews of the information. Agentic Capabilities: Users can create custom &quot;Gems&quot; (specialized AI experts). The models can act as agents to take actions in tools like Chrome. Integrated Productivity: Gemini is integrated into Gmail, Google Docs, Drive, and Meet. This helps summarize, write, edit, and organize information. Creative Tools: Features include image generation and video creation, enabling the generation of 8-second videos with sound. Long Context Window: High-end models feature up to a 1 million-token context window. This is capable of analyzing large amounts of data.



### What Do G2 Reviewers Say About Gemini?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **ease of use** of Gemini, which enhances their experience and streamlines tasks effectively.
- Users find Gemini particularly **useful for brainstorming and summarizing notes** , providing quick and creative solutions for technical issues.
- Users find Gemini to be incredibly **helpful** for quick responses and versatile assistance with various tasks.
- Users appreciate the **speed and ease of content creation** in Gemini, making it a go-to tool for efficiency.
- Users appreciate the **fast searching and intuitive design** of Gemini, enhancing productivity and creativity effortlessly.

**Cons:**

- Users note the **limited customization** and inconsistent accuracy of Gemini compared to other AI like GPT and Claude.
- Users often face **inaccuracy** in Gemini&#39;s responses, leading to unreliable information for technical tasks.
- Users experience **limitations in response depth and inconsistencies** , making Gemini less reliable for complex tasks.
- Users often experience **technical issues** with Gemini, including bugs in video assessment and limitations in conversational abilities.
- Users note that Gemini&#39;s **context understanding** can be inconsistent, especially with complex topics and video files.
  #### What Are Recent G2 Reviews of Gemini?

**"[Versatile Tool with Excellent Video Support, Fast and Easy Setup](https://www.g2.com/survey_responses/gemini-review-12866757)"**

**Rating:** 4.0/5.0 stars
*— ved S.*

[Read full review](https://www.g2.com/survey_responses/gemini-review-12866757)

---

**"[Fast, Clear Explanations That Streamline Engineering Project Research](https://www.g2.com/survey_responses/gemini-review-12863187)"**

**Rating:** 5.0/5.0 stars
*— Diya S.*

[Read full review](https://www.g2.com/survey_responses/gemini-review-12863187)

---

### 4. [Claude](https://www.g2.com/products/claude-2025-12-11/reviews)
  **Average Rating:** 4.6/5.0
  **Total Reviews:** 307
  **Product Description:** Claude is a state-of-the-art large language model (LLM) developed by Anthropic, designed to serve as a helpful, honest, and harmless AI assistant. With its advanced reasoning capabilities and conversational tone, Claude excels in tasks ranging from complex coding to in-depth financial analysis, making it a versatile tool for developers, enterprises, and financial professionals. Key Features and Functionality: - Advanced Coding Capabilities: Claude Opus 4 leads in coding performance, achieving top scores on benchmarks like SWE-bench and Terminal-bench. It supports sustained, long-running tasks, enabling continuous work for several hours, which is ideal for complex software development projects. - Financial Analysis Tools: Claude integrates seamlessly with financial data platforms such as Databricks and Snowflake, providing a unified interface for market analysis, research, and investment decision-making. It offers direct hyperlinks to source materials for instant verification, enhancing the efficiency of financial workflows. - Extended Context Windows: With an enhanced 500k context window available in Claude Sonnet 4, users can upload extensive documents, including hundreds of sales transcripts or large codebases, facilitating comprehensive analysis and collaboration. - Tool Use and Integration: Claude&#39;s extended thinking capabilities allow it to utilize tools like web search during reasoning processes, improving response accuracy. It also supports background tasks via GitHub Actions and integrates natively with development environments like VS Code and JetBrains for seamless pair programming. - Enterprise-Grade Security: The Claude Enterprise plan offers advanced security features, including Single Sign-On (SSO), Just-in-Time Provisioning (JIT), role-based permissions, audit logs, and custom data retention controls, ensuring data safety and compliance for organizations. Primary Value and User Solutions: Claude addresses the need for a reliable and intelligent AI assistant capable of handling complex tasks across various domains. For developers, it enhances productivity through advanced coding support and integration with development tools. Financial professionals benefit from its ability to unify and analyze diverse data sources, streamlining research and decision-making processes. Enterprises gain from its scalable solutions and robust security features, enabling efficient and secure deployment of AI capabilities within their operations. Overall, Claude empowers users to achieve higher efficiency, accuracy, and innovation in their respective fields.



### What Do G2 Reviewers Say About Claude?
*AI-generated summary from verified user reviews*

**Pros:**

- Users find Claude to be **extremely easy to use** , streamlining development and enhancing overall productivity effortlessly.
- Users appreciate the **simplified coding process** with Claude, enhancing productivity and natural language generation.
- Users find Claude to be a **highly helpful AI companion** , greatly simplifying web programming and enhancing user experience.
- Users highlight the **exceptional accuracy** of Claude, consistently providing clear and precise responses to prompts.
- Users appreciate the **effective communication style** of Claude, enhancing understanding and collaboration in various tasks.

**Cons:**

- Users express frustration with **usage limitations** that hinder their experience and restrict content input capabilities.
- Users find Claude to be **overly cautious and slow** , often leading to frustrations and limitations in usage.
- Users find Claude&#39;s **limited functionality** frustrating, especially with slow responses and vague solutions to specific problems.
- Users find Claude&#39;s **overly cautious responses** frustrating, as they prefer clear and concise answers.
- Users experience **resource limitations** even in paid plans, leading to confusion over usage caps and dissatisfaction with quality.
  #### What Are Recent G2 Reviews of Claude?

**"[Time-Saving, Versatile, but Memory Needs Improvement](https://www.g2.com/survey_responses/claude-review-12814769)"**

**Rating:** 4.5/5.0 stars
*— pankaj r.*

[Read full review](https://www.g2.com/survey_responses/claude-review-12814769)

---

**"[Best-in-Class LLM for ETL Code, Documentation, and Jira/Confluence Connectors](https://www.g2.com/survey_responses/claude-review-12843658)"**

**Rating:** 5.0/5.0 stars
*— mani s.*

[Read full review](https://www.g2.com/survey_responses/claude-review-12843658)

---

### 5. [Cursor](https://www.g2.com/products/cursor/reviews)
  **Average Rating:** 4.6/5.0
  **Total Reviews:** 129
  **Product Description:** Cursor is an agentic coding platform for enterprises building ambitious software. With access to frontier models, developers can focus on higher-level direction, while agents drive implementation and code review. Used by 64% of Fortune 500 companies, Cursor accelerates software development without compromising quality, control, or security. Key Features and Functionality: - Agentic development workflows: Cursor helps developers delegate coding tasks to agents while staying in control of direction, review, and iteration. Teams can use Cursor across desktop, CLI, web, and mobile for a consistent workflow wherever they work. - Cloud Agents: Cursor supports cloud-based agents for longer-running and more scalable development tasks. Recent Cloud Agents API updates added durable agents, run-scoped follow-ups, streaming, cancellation, and clearer lifecycle controls for managing agent work in the cloud. - Code review and parallel execution: Recent releases introduced a new PR review experience with inline review threads, commit history, and a file-tree changes picker, along with support for building in parallel and splitting work into reviewable PRs automatically. - Next-action prediction: Cursor Tab provides fast, context-aware code completion that predicts the next action, suggests multi-line edits, and helps developers move through routine coding tasks with less manual effort. - Context visibility and control: Context Usage Breakdown gives developers visibility into how agent context is spent across rules, skills, MCPs, and subagents, making it easier to diagnose issues and improve setup quality. - Enterprise admin controls and analytics: Cursor includes more granular model access controls, updated spend management with soft limits and intelligent alerts, and usage analytics that can be filtered by user and broken down by product surface. - Security Review: Cursor Security Review adds always-on security agents for PR review and codebase scanning. These agents can identify vulnerabilities, auth regressions, privacy and data-handling risks, outdated dependencies, and configuration issues, while integrating with existing security tooling. - Custom extensions and team distribution: Team Marketplace makes it easier for organizations to distribute and manage plugins that bundle MCP servers, skills, subagents, rules, and hooks, helping standardize how teams extend Cursor. - Programmable automation with the Cursor SDK: Cursor SDK enables teams to build programmatic agents with the same runtime, harness, and models that power Cursor, extending agent workflows beyond the IDE into custom automations and internal tools. Primary Value and User Solutions: Cursor helps engineering organizations accelerate software development without compromising quality, control, or security. It gives developers a faster way to write, review, and improve code, while giving platform and engineering leaders the visibility and governance they need to manage usage at scale. By combining agentic development, cloud execution, enterprise controls, extensibility, and built-in security capabilities, Cursor supports teams that want to ship ambitious software more efficiently and with greater confidence.



### What Do G2 Reviewers Say About Cursor?
*AI-generated summary from verified user reviews*

**Pros:**

- Users appreciate the **easy navigation** of Cursor&#39;s clean UI, enhancing their workflow and overall productivity.
- Users love the **coding assistance** features of Cursor, enhancing productivity through intelligent, context-aware code support.
- Users love the **context-aware AI autocomplete** of Cursor, significantly enhancing productivity and making coding much faster.
- Users rave about the **impressive performance speed** of Cursor, enhancing coding efficiency and productivity for developers.
- Users appreciate Cursor&#39;s **intelligent problem-solving capabilities** , facilitating efficient coding with context-aware suggestions and insights.

**Cons:**

- Users experience **poor coding** issues with Cursor, struggling with AI-generated errors and needing frequent manual corrections.
- Users find the **pricing steep** for Cursor at $20/month, raising concerns about potential surprise costs on heavy usage.
- Users experience **inaccuracies** in suggestions from Cursor, particularly in complex scenarios, impacting overall effectiveness.
- Users often face **slow performance** with Cursor on larger projects, impacting their workflow and productivity.
- Users find that Cursor offers **poor suggestions** that can disrupt workflow, particularly with complex or specific code.
  #### What Are Recent G2 Reviews of Cursor?

**"[A Natural VS Code Transition with a Seamless Agent Interface](https://www.g2.com/survey_responses/cursor-review-12882984)"**

**Rating:** 5.0/5.0 stars
*— Lutz S.*

[Read full review](https://www.g2.com/survey_responses/cursor-review-12882984)

---


**Rating:** 5.0/5.0 stars
*— Vinícius Gabriel T.*

[Read full review](https://www.g2.com/survey_responses/cursor-review-12885581)

---

### 6. [IBM watsonx Code Assistant](https://www.g2.com/products/ibm-watsonx-code-assistant/reviews)
  **Average Rating:** 4.2/5.0
  **Total Reviews:** 56
  **Product Description:** IBM watsonx Code Assistant is a solution that leverages generative AI to accelerate code generation and increase developer productivity. Purpose-built for targeted use cases, watsonx Code Assistant uses AI to support Application Modernization and IT Automation. Out-of-the-box, watsonx Code Assistant provides pre-trained models based on specific programming languages to ensure trust and efficiency for accurate code generation. IBM watsonx Code Assistant allows you to customize the underlying model(s) to ensure output is grounded in your organization&#39;s best practices, while providing visibility into the potential origin of generated code.



### What Do G2 Reviewers Say About IBM watsonx Code Assistant?
*AI-generated summary from verified user reviews*

**Pros:**

- Users praise the **ease of use** of IBM Watsonx Code Assistant, facilitating smooth integration for new developers.
- Users appreciate the **robust and efficient coding assistance** , finding it invaluable for both personal projects and modernization efforts.
- Users appreciate the **ease of installation and helpfulness** of IBM watsonx Code Assistant in coding and overall work.
- Users value the **contextual problem-solving** capabilities of IBM watsonx Code Assistant, enhancing code understanding and modernization.
- Users appreciate the **advanced AI capabilities** of IBM Watsonx Code Assistant, delivering accurate solutions and enhancing user experience.

**Cons:**

- Users often face **inaccuracy issues** with IBM Watsonx Code Assistant, making it less reliable for development tasks.
- Users struggle with the **complexity of IBM watsonx Code Assistant** , making modifications and customization difficult for developers.
- Users experience **poor coding** quality from Watsonx Code Assistant, leading to wasted time and frustration with generated recommendations.
- Users report **poor reasoning skills** with IBM watsonx Code Assistant, leading to ineffective code suggestions and confusion.
- Users find the **high cost** of IBM watsonx Code Assistant challenging, especially for smaller businesses and users.
  #### What Are Recent G2 Reviews of IBM watsonx Code Assistant?

**"[Makes Coding Faster and Less Stressful with Helpful, Time-Saving Suggestions](https://www.g2.com/survey_responses/ibm-watsonx-code-assistant-review-11397975)"**

**Rating:** 4.0/5.0 stars
*— Harsh S.*

[Read full review](https://www.g2.com/survey_responses/ibm-watsonx-code-assistant-review-11397975)

---

**"[Boosts Development Efficiency with Intelligent Code Automation](https://www.g2.com/survey_responses/ibm-watsonx-code-assistant-review-12860775)"**

**Rating:** 4.0/5.0 stars
*— Verified User*

[Read full review](https://www.g2.com/survey_responses/ibm-watsonx-code-assistant-review-12860775)

---

### 7. [SoftSpell](https://www.g2.com/products/softspell/reviews)
  **Average Rating:** 4.5/5.0
  **Total Reviews:** 35
  **Product Description:** SoftSpell is an AI-powered platform that accelerates software delivery and simplifies legacy modernization. It transforms unstructured requirements and existing codebases into structured outputs, enabling faster development with clarity and control. By combining intelligent requirement analysis, context-aware code generation, and automated testing, it ensures end-to-end traceability while reducing manual effort and rework. SoftSpell integrates seamlessly into existing workflows, helping teams deliver high-quality software faster.



### What Do G2 Reviewers Say About SoftSpell?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **time-saving** benefits, enabling quicker and more efficient coding without the hassle of microservices.
- Users value the **coding assistance** from CodeSpell, enhancing code quality and significantly speeding up development.
- Users love the **automation capabilities** of SoftSpell, enhancing productivity with real-time code suggestions and error catching.
- Users appreciate the **quality improvement** in coding efficiency and ease of use with SoftSpell&#39;s features.
- Users enjoy the **ease of use** of SoftSpell, enhancing coding efficiency and simplifying complex tasks.

**Cons:**

- Users experience **slow performance** with SoftSpell, reporting delays and unresponsiveness during use.
- Users experience **prompt issues** with delays and clutter, making the editing process frustrating and error-prone.
- Users find the **limited multimedia support** frustrating, wishing for better compatibility with tech stacks in future updates.
- Users find the **cluttered inline editor** frustrating, leading to accidental clicks and unwanted prompts during coding.
- Users are frustrated with the **limitations in tech stack compatibility** , hoping for improvements in future updates.
  #### What Are Recent G2 Reviews of SoftSpell?

**"[SoftSpell Supercharges Coding with AI Automation, Debugging Help, and Smooth VS Code Integration](https://www.g2.com/survey_responses/softspell-review-12770083)"**

**Rating:** 4.5/5.0 stars
*— Rinalon E.*

[Read full review](https://www.g2.com/survey_responses/softspell-review-12770083)

---

**"[SoftSpell Speeds Development with Versatile AI Coding and Robust IDE Integration](https://www.g2.com/survey_responses/softspell-review-12844001)"**

**Rating:** 4.5/5.0 stars
*— Luciana S.*

[Read full review](https://www.g2.com/survey_responses/softspell-review-12844001)

---

### 8. [Replit](https://www.g2.com/products/replit/reviews)
  **Average Rating:** 4.5/5.0
  **Total Reviews:** 354
  **Product Description:** Replit turns your ideas into apps, fast. With Replit, anyone—technical or non-technical—can build and deploy fully-functional, full-stack apps directly from their browser, without any installation, setup, or configuration. Replit&#39;s Agent and Assistant enables you to create entire applications from natural language, turning bullet points into working apps in minutes. Its built-in tools, including databases and deployment features, allow you to launch with a single click. Replit bridges the gap between non-technical and technical users, driving collaboration for everything from product roadmaps and prototypes to custom APIs and internal tools. Replit empowers everyone to not just consume software but to create it, transforming app development into an accessible, instant, and impactful process. Go from &#39;why doesn&#39;t this app exist?&#39; to building it for&amp;nbsp;yourself.



### What Do G2 Reviewers Say About Replit?
*AI-generated summary from verified user reviews*

**Pros:**

- Users enjoy the **ease of use** of Replit, finding it intuitive and efficient for rapid development.
- Users admire the **intuitive user experience** of Replit, appreciating its ease of use and context-driven functionality.
- Users find the **implementation ease** of Replit remarkable, enjoying straightforward setups and seamless integration for building applications.
- Users appreciate the **time-saving features** of Replit, enabling rapid development and deployment of applications.
- Users appreciate the **coding assistance** from Replit, enhancing efficiency and simplifying the development process for various applications.

**Cons:**

- Users find Replit **expensive** due to unclear pricing and credit usage, complicating budgeting for projects and changes.
- Users are frustrated with the **rapid depletion of credits** , making it challenging to explore and fix features on Replit.
- Users experience **poor coding** with slow responses and persistent bugs, complicating their project development on Replit.
- Users experience **system unreliability** , facing bugs and setbacks that hinder progress and complicate app development.
- Users experience **slow performance** with Replit, especially when handling large datasets or complex tasks, causing frustrations.
  #### What Are Recent G2 Reviews of Replit?

**"[Fast, Growing App Builder with Helpful Preview, Hosting, and DNS](https://www.g2.com/survey_responses/replit-review-12443703)"**

**Rating:** 4.5/5.0 stars
*— Adam E.*

[Read full review](https://www.g2.com/survey_responses/replit-review-12443703)

---

**"[Simple Browser-Based Coding with AI Chat and Stable Small-Scale App Performance](https://www.g2.com/survey_responses/replit-review-12788620)"**

**Rating:** 4.5/5.0 stars
*— Divyarajsinh  C.*

[Read full review](https://www.g2.com/survey_responses/replit-review-12788620)

---

  #### What Are G2 Users Discussing About Replit?

- [Does Repl.it have GUI?](https://www.g2.com/discussions/does-repl-it-have-gui) - 1 comment, 1 upvote
- [What is REPL software?](https://www.g2.com/discussions/what-is-repl-software) - 2 comments
- [What is Repl.it good for?](https://www.g2.com/discussions/what-is-repl-it-good-for) - 1 comment
### 9. [Amp](https://www.g2.com/products/amp-code-amp/reviews)
  **Average Rating:** 4.5/5.0
  **Total Reviews:** 89
  **Product Description:** Sourcegraph’s AI code assistant goes beyond individual dev productivity, helping enterprises achieve consistency and quality at scale with AI. Sourcegraph accelerates the entire workflow for developers by providing them a more natural and intuitive way to work. Searching code, chatting with AI, invoking prompts, and using agents can now all be performed in one place with the best models available. Features: 🤖 Agentic chat: Designed to simplify and accelerate developer workflows, Sourcegraph uses a combination of search, AI chat, and prompts in a single interface to streamline how you explore, understand, and generate code. ✨ Auto-edit: Autocompletes single lines, or whole functions, in any programming language, configuration file, or documentation. It’s powered by the latest instant LLM models, for accuracy and performance. 📚 Prompt Library: Streamline your development process by using prompts to understand, improve, fix, document, and generate unit tests for your code. You can also create your own prompts and save them in the Prompt Library to tailor Sourcegraph to your workflow. Cody works with major code hosts like GitHub, GitLab, and Bitbucket, and offers industry-leading LLM flexibility with support for the most powerful models from OpenAI, Anthropic, and more. 🧠 The Best Context: When tools focus solely on individual productivity, teams face inconsistent and poor-quality results. Sourcegraph focuses on team productivity using whole codebase context and shared prompts to ensure quality and consistency across your enterprise.



### What Do G2 Reviewers Say About Amp?
*AI-generated summary from verified user reviews*

**Pros:**

- Users value the **ease of use** of Amp, facilitating quick implementation and enhancing overall user experience.
- Users appreciate the **coding assistance** of Amp, as it speeds up the coding process with helpful suggestions and explanations.
- Users appreciate the **blazing fast speed** of Amp, enhancing user experience with seamless, mobile-optimized pages.
- Users value the **easy integrations** of Amp, enhancing workflow and simplifying the development of websites and applications.
- Users rave about the **blazing fast speed** of AMP, enhancing user experience and boosting SEO performance.

**Cons:**

- Users note the **limited customization options** of Amp, which may restrict tailored solutions for unique needs.
- Users report **poor coding** with slow performance and lag issues, impacting their overall experience with Amp.
- Users find **context understanding challenging** as Amp struggles with state retention and misses the latest code versions.
- Users report **slow performance** with Amp, noting lag in web chat and issues with AI responsiveness.
- Users experience **system unreliability** with Amp, often needing to restart for proper functionality and facing bugs.
  #### What Are Recent G2 Reviews of Amp?

**"[Efficient and Fast Platform with Strong Integration Capabilities](https://www.g2.com/survey_responses/amp-review-11804012)"**

**Rating:** 5.0/5.0 stars
*— andré P.*

[Read full review](https://www.g2.com/survey_responses/amp-review-11804012)

---

**"[AMP threads has Gamified our Vibe Coding in our Organization](https://www.g2.com/survey_responses/amp-review-11789629)"**

**Rating:** 4.5/5.0 stars
*— Verified User in Media Production*

[Read full review](https://www.g2.com/survey_responses/amp-review-11789629)

---

  #### What Are G2 Users Discussing About Amp?

- [What is Sourcegraph used for?](https://www.g2.com/discussions/what-is-sourcegraph-used-for)

    ## What Is AI Code Generation Software?
  [Generative AI Software](https://www.g2.com/categories/generative-ai)
  ## What Software Categories Are Similar to AI Code Generation Software?
    - [AI Coding Assistants Software](https://www.g2.com/categories/ai-coding-assistants)

  
---

## How Do You Choose the Right AI Code Generation Software?

### What You Should Know About AI Code Generators

AI code generation software encompasses tools that utilize artificial intelligence (AI) and machine learning (ML) to create and write code based on a user&#39;s prompt. This code is written based on the best practices for that particular coding language and a natural language description of the expected code.

In short, instead of manually typing out each line of code, the user gives the AI code generation tool a description of what they want the code to do. The software then uses ML and AI to write the code automatically based on user input.

Most tools are generalized, but some AI code generation tools are created for specific use cases, like game or web development.

Developers use AI code generation software to reduce the time and effort spent on repetitive coding tasks. By incorporating these tools into their workflow, developers at all skill levels can improve code consistency and increase productivity. Additionally, this type of software makes coding more accessible to everyone, regardless of skill level or knowledge of programming languages.&amp;nbsp;

Plus, code generation tools can write code faster and in real time than a human programmer. They’re also more efficient because they can learn any technology or framework represented in their training dataset.&amp;nbsp;

### What are the common features of AI code generation software?

The following are some features of AI code generation software that companies can use to write lines of code on their behalf.

Note that specific features may vary between different products.

- **Automatic code generation:** This allows the software to generate code snippets automatically, based on various parameters and details, which can reduce repetitive coding tasks and increase developer productivity.
- **Machine learning capabilities:** [Machine learning](https://www.g2.com/articles/machine-learning) algorithms are used to improve code suggestions and generate more sophisticated and high-quality code snippets based on the context given by the user.
- **Natural language processing (**[NLP](https://www.g2.com/articles/natural-language-processing)**) integration:** This feature allows the software to understand and process human language to generate code based on verbal or written descriptions.
- **Support for multiple programming languages:** This enables the software to support various programming languages, such as [Python](https://www.g2.com/glossary/python-definition), Javascript, Ruby, HTML, and [PHP](https://www.g2.com/articles/what-is-php), making it versatile for different development scenarios.
- **Advanced debugging tools:** AI-powered code generators often come with advanced debugging tools, which provide detailed insights into the performance of the generated programs. The code editor can also quickly detect errors and vulnerabilities in source code to help programmers identify potential problems before they become significant issues.
- **Code suggestions and autocompletion:** This feature offers code completion suggestions to enhance existing code to help developers write more efficiently and learn syntax and functions of languages quickly.

### Types of AI code generation tools

There are three types of AI code generation tools a company can choose.

- **Rule-based code generators:** These tools generate code based on predefined rules or patterns. These rules can cover syntax, logic, or design patterns.&amp;nbsp;
- **Machine learning-based code generators:** These tools use algorithms and models to generate code. Typically, a user provides the tool with a large dataset of example code snippets or specific programming tasks. From there, the software trains machine learning models, such as neural networks or [decision trees](https://www.g2.com/articles/data-mining-techniques#decision-tree), to learn patterns and relationships between input code and output solutions to generate code.
- **NLP-based code generators:** This type of AI code generation software enables developers to program computers by speaking natural language commands instead of manually writing lines of code. This allows non-technical users to communicate directly with computers without knowledge of coding languages.

### What are the benefits of AI code generation software?

Whether you’re an experienced developer or a user new to the world of writing code, using AI code generation software has numerous benefits.

- **Faster development:** These AI tools can drastically reduce the time and effort needed to write code, complete projects, and work on other repetitive tasks. Since AI coding tools speed up the process of writing code, this also means faster project turnovers.&amp;nbsp;
- **Less task switching:** AI code generators reduce the jumping back and forth between writing lines of code and free developers of the smaller tasks on their plate.
- **Boosts productivity:** AI code generators streamline the development process for users, as developers can work faster and more efficiently. This saves time, resources, and money, and projects are completed sooner.
- **Frees up developers to work on larger, more complex projects:** Since these coding assistants make the most of algorithms that can write code quickly and accurately, the developer is not required to do as much. This reduces the need for smaller, more minute tasks dedicated to writing code and allows developers to focus on more complex projects.

### Who uses AI code generation tools?

Several different types of users and teams within organizations can benefit from using AI code generators.&amp;nbsp;

#### Individuals:

- **Software developers:** Software developers use AI code generators to write the code for software and various applications quickly and with minimal effort.
- **IT administrators:** An IT administrator uses this software to automate tasks, manage infrastructure, enhance security, develop custom solutions, and optimize performance. This can streamline workflows, strengthen [cybersecurity](https://www.g2.com/glossary/cybersecurity-definition), and enable efficient problem-solving.&amp;nbsp;
- **Data scientists:** Since these AI models can process large amounts of data efficiently and quickly, data scientists use these tools to produce advanced models without having to write lengthy programs every time a new experiment is in the works.

#### Teams:

- **IT teams** turn to AI code generation tools to assist in troubleshooting efforts and optimizing performance so they can focus on innovation efforts and other strategic initiatives.&amp;nbsp;
- **Software development teams** leverage AI code generation software to automate repetitive tasks, speed up the coding processes, and optimize performance. Additionally, these tools can aid in debugging and generating code for complex algorithms.
- **Data science and machine learning teams** use AI code generators to automate tasks like model development, streamlining data processing, and speeding up experimentation.&amp;nbsp;

### AI code generation software pricing

AI code generation software is typically broken into three different pricing models.

- **Subscription model:** Users pay a recurring fee to access all features at regular intervals, such as monthly or annually.
- **Freemium model:** Offers a free basic version of the software with limited features and functionality. Users can upgrade to a paid version to access additional features when needed.
- **Pay-per-use model:** This model allows users to pay for the software based on their usage, data storage, time spent using the tool, seats, or consumption.&amp;nbsp;

Like most software, the price will vary depending on factors such as the complexity of the program and the features it offers. Basic tools can range from free to a few hundred dollars. More robust enterprise-level tools could be upwards of thousands of dollars. Some tools may also have recurring monthly fees and updates to the software with a price attached.

Before investing in an AI code generation tool, companies need to list their specific needs and the features on their must-have list for more clarity.

### Alternatives to AI code generation tools

Before choosing an AI code generation tool, companies can also consider one of the following alternatives for their needs.

- [Low-code development platforms](https://www.g2.com/categories/low-code-development-platforms) **:** Low-code development platforms allow businesses to develop software quickly with minimal coding, reducing the need for extensive coding experience. These tools provide base-level code, scripts, and integrations so users can prototype, build, or scale applications without developing complex infrastructures. Some products are geared more toward developers and require coding for functionality, while others provide element libraries for design.&amp;nbsp;
- [No-code development platforms](https://www.g2.com/categories/no-code-development-platforms): These tools offer drag-and-drop functionality, allowing developers to create applications quickly and efficiently without coding expertise. No-code development solutions offer a range of features, including templates for workflows, libraries of elements, and customizable interfaces.
- **Code libraries** : A code library is a collection of reusable code modules, functions, classes, or snippets that companies can use to speed up software development. These repositories have the functionality to address common programming tasks, such as data manipulation, user interface design, or network communication. Developers can incorporate code from libraries into their own projects to save time and limit errors.

### Software and services related to AI code generation software

There are certain tools related to AI code generation software that have similar features and functionalities and can be useful depending on a business&#39;s needs. Some examples of such tools are:

- Low-code development platforms
- No-code development platforms
- [Integrated development environments (IDEs)](https://www.g2.com/categories/integrated-development-environments-ide)

### Challenges with AI code generation software

Despite the several benefits users can experience from AI code generation software, there are some challenges to remember, too.

- **Code quality:** One of the main challenges of using AI-generated code editors is the code&#39;s quality. Since coding AI assistants use regenerative AI technology and predict how code is written based on specific training material, they may produce low-quality and non-functional source code. It also may not comprehend what it’s writing, leading to more errors or broken code.
- **Maintenance:** All code needs to be maintained, but code written using an AI code generation tool may be more complex than necessary, making it harder to maintain over time. This overly complex code can lead to unnecessary abstractions, excessive layers of code, or overly intricate logic, making debugging and collaboration challenging.&amp;nbsp;
- **Less control:** Some users worry that relying too heavily on AI assistants could diminish their coding skills and expertise. Additionally, there’s the potential loss of control over the development process, as users may have less input into the written code.
- **Learning curve for developers/organizations:** As with using any new software for the first time, there’s a learning curve for both developers and the organization. However, the curve may be steep and take time to master before achieving maximum productivity.

### Which companies should buy AI code generation software?

Any company with a development team could benefit from AI code generation tools, but there are specific types of companies that should consider buying this type of software to add to their tech stack.

- **Financial institutions:** Banks and financial institutions can utilize AI code generation to automate regulatory compliance, enhance security measures, and develop custom financial processes for risk analysis and [fraud detection](https://www.g2.com/categories/fraud-detection).
- **Healthcare organizations:** Healthcare companies can use AI code generation to develop predictive models, automate medical imaging analysis, and optimize patient care processes.
- **Legal firms:** A legal organization can use AI code generation to assist in document automation, legal research and analytics, and compliance monitoring.
- **Government agencies:** Government organizations can use these tools to automate administrative tasks, enhance cybersecurity efforts, and develop [predictive models](https://www.g2.com/categories/predictive-analytics) for resource allocation and policy planning.
- **Educational companies:** Educational institutions and schools can use AI code generation to develop personalized learning platforms, automate administrative tasks like grading and scheduling, and analyze student performance data for insights into how effective the current [curriculum](https://www.g2.com/categories/curriculum-management) is.
- **Retail companies:** Retailers can use this software to optimize pricing strategies, automate customer segmentation for targeted marketing campaigns, and develop recommendations for personalized shopping experiences.

### How to choose the best AI code generation tools?

The following explains the step-by-step process buyers can use to find suitable AI code-generation tools for their business.&amp;nbsp;

#### 1. Identify business needs and priorities

Before choosing an AI code generation tool, businesses should identify their top priorities in a tool and what exactly they’ll be using it for. Clear goals and requirements can make the selection process easier and more efficient. Companies should consider factors like how quickly they need to generate results, how much automation will be required, and what level of accuracy is needed.

#### 2. Choose the necessary technology and features

Next, companies should narrow down the features and functionalities they need most. Some essential technology and features a company may be looking for are:

- **Auto completion of code** : This provides suggestions and completes code snippets based on context.
- **Code refactoring** : With this feature, the tool can restructure existing code to improve performance and readability.
- **Syntax checking** : This feature identifies errors and potential bugs in the code.
- Code analysis: AI code generation tools must identify bottlenecks, security vulnerabilities, and areas for optimization.
- **Machine learning assistants** : These enable AI-powered assistants to help developers write code, suggest improvements, or answer coding-related queries.
- **Cross-platform support:** This is required for multiple programming languages and development environments so that users can work across different platforms seamlessly.

Once companies short-list services based on their requirements and must-have functionalities, it’s easier to determine which options best suit their needs.

#### 3. Review vendor vision, roadmap, viability, and support

In this stage, a buyer should start vetting the selected AI code generation software vendors and conduct demos to determine if a product meets their requirements. For the best outcome, a buyer should share detailed requirements in advance so a vendor knows what features and functionalities to showcase during the demo.&amp;nbsp;

Below are some questions buyers should ask vendors during the demo.

- How does the software handle different programming languages and frameworks?
- What level of customization and flexibility does the software offer for generating code to fit specific project requirements?
- How does your software ensure code quality and compliance with coding standards?
- What support and training options do you provide for users adopting your software?
- What security measures are in place to protect sensitive code and data processed by your software?
- Can the tool integrate with existing development tools and workflows, such as IDEs and version control systems?
- What level of technical support is available, and how responsive is your support team to customer inquiries and issues?

#### 4. Evaluate the deployment and purchasing model

Once a buyer has received answers and is ready to move on to the next stage, they will likely loop in key stakeholders within the organization and at least one employee from each department who will be using the software. For example, with AI code generation, it’s best that the buyer loops in the developers who will be using the software to ensure it covers everything they need for maximum productivity.

#### 5. Put it all together

A buyer makes the final decision after getting buy-in from everyone on the selection committee, including [end users](https://www.g2.com/glossary/end-user-definition). This buy-in is essential for getting everyone on the same page regarding implementation, [onboarding](https://www.g2.com/categories/onboarding), and various use cases.&amp;nbsp;

### AI code generation software trends

Some recent trends that were seen in the field of AI code generation software are:

- **Companies integrating and adopting AI code generation tools for the first time:** AI code generation tools are making the most of recent developments in AI and ML for significant improvements regarding their features and functionality. Many companies are learning how to integrate these tools with their current tech stack for the first time. This trend stems from the demand for efficient code, the want to save money, and companies looking for a competitive advantage.
- **AI will aid rather than** [replace developers](https://www.itpro.com/technology/artificial-intelligence/can-ai-code-generation-really-replace-human-developers) **:** It’s important that developers see AI and AI code generation tools as an aid they can use to speed up the process of writing code, which gives them the opportunity and time to work on other tasks rather than being a replacement. AI can automate repetitive tasks, provide insights, and enhance productivity. Whereas developers and real users will always lean on critical thinking, creativity, and problem-solving skills that AI currently cannot replicate.&amp;nbsp;

Researched and written by [Adam Crivello](https://research.g2.com/insights/author/adam-crivello)

﻿Reviewed and edited by [Supanna Das](https://learn.g2.com/author/supanna-das)



    
