AI Product Management
Amazon launched its Nova line of AI models, offering competitive performance in text, image, and video generation at lower prices. OpenAI introduced its o1 model with enhanced performance at a higher cost.
Read original articleAmazon has launched its Nova line of AI models, which includes vision-language models, a language model, and generators for images and videos, all designed to offer competitive performance at lower prices compared to rivals. The Nova models, available on Amazon's Bedrock platform, include Nova Premier, Nova Pro, Nova Lite, Nova Micro, Nova Canvas, and Nova Reel. Nova Pro is noted for its ability to follow complex instructions and summarize long texts, while Nova Lite excels in processing speed and efficiency. Nova Micro, a text-only model, outperforms several competitors in various tasks. The image generator, Nova Canvas, produces high-resolution images and performs well in human preference tests, while Nova Reel generates short video clips with consistent imagery.
In contrast, OpenAI has introduced its o1 model and o1 pro mode, which enhance performance but come at a higher subscription cost of $200 monthly. The o1 models are designed to process more tokens for improved accuracy and are focused on technical and structured datasets. This launch reflects the growing demand for AI applications and the need for effective product management practices in the rapidly evolving AI landscape.
- Amazon's Nova models offer competitive performance at lower prices than competitors.
- Nova models include capabilities for text, images, and video generation.
- OpenAI's o1 model and pro mode provide enhanced performance at a premium subscription cost.
- The AI product management landscape is evolving with new best practices for defining and developing AI applications.
- The demand for AI applications is increasing, necessitating skilled AI product managers.
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Curious what others think about forgoing design thinking in AI product development in favor of this more direct, concrete approach.
[1] https://www.deeplearning.ai/the-batch/concrete-ideas-make-st...
I think the more interesting question for the PM is how are you going to make a differentiated product in the market if everything you're planning to build is trivial? If it's not trivial, maybe talk to an engineer or two.
Table stakes for any product manager, not just AI related.
Currently the generated prototype usually needs tweaks and that’s if it even works. But when it does work, it’s like the model is reading your mind.
In the future as models improve at coding, they will anticipate the tweaks that make sense, less of the prompt will need to be specified & there’ll be less polish work after you get the generated artifact, and you can work at an even higher level of abstraction and thought. Domain experts can create even bigger, cooler things without spending’s years getting software engineering skills.
Assemblers and compilers came along very early in our industry’s history. If you run the thought experiment that that’s where we are at with prompted software creation, it will be a wild and exciting future. More people creating more stuff means a tremendous amount of amazing creations to enjoy.
* Specify the product as concretely as possible
* Use existing applications to test feasibility
* Get non-engineer user feedback on early prototypes
These all obviously apply to product management more generally, but Andrew gives some examples/ways in which they apply specifically to AI products. Still, I feel like they're talking more generally about complex/abstract software engineering rather than simply AI.
Nothing new - we heard the same message with Figma, containerisation… you name it.
Having a good sense what problem solve, building rapport and trust with early customer and being a fantastic leader and communicatore has always been the most important skills. Thanks, nothing to see here…
And this is an example I feel of the form evolving.
The point that AI could not learn from a vague mission statement (whereas most people today would think wow that’s a good start to a two year project) suggests that AI companies as Ng suggests are “just” well thought out companies.
Sorry not making a lot of sense - what I think I mean is that one can write down a human sentence and the phase space of possible meanings is very large - the behaviours that meet the specification can be huge and most projects are attempts to find a working output that meets that and has everyone understanding it.
But a *working* piece of software has a much more constrained phase space of possible behaviours - just to get it working (or even get a set of tests it must pass) drastically reduces the possible behaviours and so makes clearer intentions and makes the discussion more focused.
Given an epic with keywords organize tasks into that epic and estimate the time and then track if it’s on track or not.
Yeah not a lot to PM work.
Ooh also a 50/50 coin flipper to saying no to adhoc things
There that’s an AI PM
Related
OpenAI slashes the cost of using its AI with a "mini" model
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Notes on OpenAI's new o1 chain-of-thought models
OpenAI has launched two new models, o1-preview and o1-mini, enhancing reasoning through a chain-of-thought approach, utilizing hidden reasoning tokens, with increased output limits but lacking support for multimedia inputs.
OpenAI's Lead over Other AI Companies Has Largely Vanished
OpenAI's competitive edge in AI has diminished as models like Anthropic's Claude 3.5 and Google's Gemini 1.5 match or surpass GPT-4o, while inference costs decline significantly due to competition.
Amazon Nova
Amazon has launched Amazon Nova, a suite of foundation models for generative AI, featuring understanding and creative models, customization options, and safety controls to enhance productivity and reduce costs.
The GPT era is already ending
OpenAI launched its generative AI model, o1, claiming it advances AI reasoning beyond word prediction. Critics question its understanding, while the industry faces pressure to innovate amid stagnation.