Product Hunt logo dark
  • Launches
    Coming soon
    Upcoming launches to watch
    Launch archive
    Most-loved launches by the community
    Launch Guide
    Checklists and pro tips for launching
  • Products
  • News
    Newsletter
    The best of Product Hunt, every day
    Stories
    Tech news, interviews, and tips from makers
    Changelog
    New Product Hunt features and releases
  • Forums
    Forums
    Ask questions, find support, and connect
    Streaks
    The most active community members
    Events
    Meet others online and in-person
  • Advertise
Subscribe
Sign in
Subscribe
Sign in
Steve

Steve

Steve is a second brain for your Linear

5.0
•2 reviews•

101 followers

Steve is a second brain for your Linear

5.0
•2 reviews•

101 followers

Visit website
Steve is an autonomous AI agent that transforms Linear project data into clear, actionable insights for your engineering team. With Steve, you can: - Get real-time updates on project status - Identify potential risks and bottlenecks - Track progress against goals
  • Overview
  • Launches1
  • Reviews2
  • Alternatives
  • Team
  • More
Company Info
steveai.xyz
Steve Info
Launched in 2023View 1 launch
Forum
p/steve-2
  • Blog
  • •
  • Newsletter
  • •
  • Questions
  • •
  • Forums
  • •
  • Product Categories
  • •
  • Apps
  • •
  • About
  • •
  • FAQ
  • •
  • Terms
  • •
  • Privacy and Cookies
  • •
  • X.com
  • •
  • Facebook
  • •
  • Instagram
  • •
  • LinkedIn
  • •
  • YouTube
  • •
  • Advertise
© 2025 Product Hunt
SocialX
Steve gallery image
Steve gallery image
Steve gallery image
Free Options
Launch tags:
Productivity•Artificial Intelligence
Launch Team
Ali HaiderJahanzeb KhanMoeez Azhar

What do you think? …

Anosha Fatima
Anosha Fatima
Steve

Steve

Maker
📌
As the growth lead for Steve AI, my role was to ensure that our product reached and resonated with the right audience. We conducted extensive market research, identified target segments, and crafted compelling messaging to highlight the unique value proposition of Steve. Since we were targeting a very niche audience, it was important to keep in mind the hurdles engineers face in getting clarity on their work. All in all, it was an amazing experience, and very excited for V2
Report
2yr ago
Abubakar Saddique
Abubakar Saddique
Steve

Steve

Maker
Hey guys, Working on Steve was a Steep learning experience. Here is how Steve helps engineering teams that use Linear: Steve is the perfect tool for engineering teams that want to improve their efficiency, productivity, and quality. Sign up for the waitlist today to be the first to try Steve! - Steve is powered by artificial intelligence, so it can learn and adapt to your team's specific needs. - Steve is easy to use and can be integrated with your existing Linear workflows. - Steve is a cost-effective way to improve your engineering team's performance. **Code Overview** The code is designed to automate data collection and processing by using the langchain library. It uses a Linear API to fetch data, transforms it into CSV format for analysis, and interacts with the langchain agent for further operations. **Key Components** 1. API Interaction and Data Fetching: - The Linear API is utilized to retrieve data with the help of an API key. - The API response, which is in JSON format, is converted into CSV for better processing. - The data fetched includes ten specific fields. 2. CSV Data Conversion: - The JSON data fetched from the Linear API is converted into CSV format. - The CSV conversion involves the creation of a CSV file and writing the fetched data into it. - Currently, the data is not being saved into any database, but the CSV file is used for further operations. 3. Langchain Agent Interactions: - The code leverages the 'csv_agent' from the langchain library. - This agent specializes in handling data in the CSV format and is used for the analysis of the collected data. - Other agents, such as the JSON agent, can also be used, or custom agents can be created according to requirements. 4. Data Management: - To manage the responses efficiently, the langchain's 'prompt' feature is employed. - This feature helps in controlling the flow of operations. **Code Execution The following code components facilitate the operations: 1. Import Necessary Libraries:Import langchain and other necessary libraries, also setting up the API keys for langchain and SERPAPI. 2. Initialize Langchain: Initialize langchain with the given parameters. 3. Query Execution: Run the agent to execute a specific query. 4. Function Definitions: Define functions that handle the conversion of JSON data to CSV, and the main function that fetches the data, converts it, saves it, and interacts with the langchain agent. 5. Running the Main Function: The main function is called to execute all the operations sequentially.
Report
2yr ago
Sandra Djajic
Sandra Djajic

Chatbase

Congratulations on the launch, this looks epic! 👏👏
Report
2yr ago
Ali Haider
Ali Haider
Steve

Steve

Maker
@sandradjajic Thank You Sandra. Making sure engineers are focused on building and not just project management and complex CRMs
Report
2yr ago
Intercom
Intercom — Startups get 90% off Intercom + 1 year of Fin AI Agent free
Startups get 90% off Intercom + 1 year of Fin AI Agent free
Promoted

Do you use Steve ?

5.0
Based on 2 reviews
Review Steve ?
Reviews
Helpful
Dimitar Petkov
Dimitar Petkov
•27 reviews
Hey there! 👋 I must say, Steve sounds like an incredible tool for engineering teams using Linear. The potential to enhance efficiency, productivity, and quality is truly valuable. I'm excited to sign up for the waitlist and be among the first to try out Steve! The fact that Steve is powered by artificial intelligence is impressive. With the ability to learn and adapt to a team's specific needs, it can provide tailored solutions and make a significant impact on workflow optimization. The seamless integration of Steve with existing Linear workflows is another standout feature. It's always a plus when a tool is easy to use and seamlessly fits into established processes without disruption. Moreover, the cost-effectiveness of Steve makes it even more appealing. Improving engineering team performance while being mindful of the budget is a win-win situation. Moving on to the code overview, it's great to see the level of detail and thought put into the design. The use of the langchain library for automating data collection and processing is commendable. Leveraging the Linear API and transforming the fetched data into CSV format shows a practical approach to analysis and further operations. The key components outlined in the code, such as API interaction, data conversion, langchain agent interactions, and data management, demonstrate a well-structured and organized approach to handling and analyzing the collected data. The code execution steps provided make it easier for users to understand how to implement and run the code successfully. The inclusion of necessary library imports, initializing langchain, executing queries, defining relevant functions, and running the main function showcase a clear pathway for execution. Overall, I'm impressed by Steve's capabilities and the attention to detail in the code explanation. It's evident that a lot of thought and effort has gone into creating a tool that can truly benefit engineering teams. I can't wait to give it a try and see how it can enhance my team's performance. Kudos to the Steve team for this fantastic product! 👏
Report
2yr ago
M Abdullah Mukhtar
M Abdullah Mukhtar
first1K

first1K

•1 review
Lives up to the promise, surprisingly very easy to set up and use!
Report
2yr ago