OpenAI offers ChatGPT, an advanced general intelligence (AGI) chatbot which interacts in a conversational way. The dialogue format makes it possible for ChatGPT to answer followup questions, admit its mistakes, challenge incorrect premises, and reject inappropriate requests. ChatGPT is a sibling model to InstructGPT, which is trained to follow an instruction in a prompt and provide a detailed response.
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TensorFlow
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TensorFlow is an open-source machine learning software library for numerical computation using data flow graphs. It was originally developed by Google.
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ChatGPT
TensorFlow
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Chose ChatGPT
Most tailored for multi-functional use across departments, a business version where data resides in your own workspace and is not used for training. Safest feel overall.
ChatGPT is often seen as the default and the leader and first and most widely adopted generative AI engine. However, I tend to find that Google Gemini can more accurately cite sources and offers more disclaimers. ChatGPT is prone to answering everything, at the risk of …
I tried and bought multiple tools like Perplexity, Jasper, and Copy.ai, but no one is comparable with ChatGPT. Most of the tools are built for a specific niche, but ChatGPT is built for everything.
they all work very similar, and since answers are probabilistic, sometimes you get better answers from other similar apps. ChatGPT was a pioneer and its several iterations have made many improvements in usability. It's as a wide set of knowledge and you can pretty much ask it …
For breaking news and very up to date data, Grok and Perplexity are better. They have access to very recent or proprietary data that's relevant to any topic you want to research. Gemini is great for large prompt context needs. I would use Claude for more coding related stuff. …
ChatGPT is simply the most complete, well-rounded AI tool in existence right now. It can do everything the others can, often better, and often in a way that's more intuitive and easier to iterate. It takes prompts far better than most, and incorporates direction better than …
In my experience ChatGPT does great job than any other LLM model at this moment. However, in terms of web search, perplexity scores high compared to ChatGPT because ChatGPT misses critical news while doing web crawling
We've used other programs, including ones integrated into current products that we use, and we've found that ChatGPT delivers better in the sense of content learning and creation. Other programs do offer some research ability, but we're found ChatGPT is more diverse and …
ChatGPT is an excellent writing, ideating, and editing assistant with an American attitude. This LLM learns from human input and can give very sound results in unexpected situations. 'Memory' feature is especially useful, because it saves a lot of time and effort, so the LLM …
Where ChatGPT is better: ChatGPT has significantly more use cases - it's much more versatile. Some aspects of ChatGPT's user experience are better than Claude's. I prefer ChatGPT's results presentation compared to Claude's. Where Claude excels: Claude is a more skilled …
In my experience, Claude won't say things it feels is offensive or callous (for instance I asked for themed slogans for a bachelor party where I was the best man), and only provided G and PG related content. ChatGPT was quick to get naughty with puns and slogans, especially …
I find the images generator much better in getting what you asked for using ChatGPT. When using FireFly or Midjourney I tend to take the prompt that was generated in ChatGPT in order for me to get something more visually stunning. So the visuals could be much better, room for …
We also use Adobe Firefly as an AI assistant. Maybe this should be expected, as Adobe are experts in visual design software, but Adobe Firefly handles AI image generation a lot better than ChatGPT seems to. ChatGPT's images appear to be very loose and untidy, but in comparison, …
I find most of the pop AI's annoying. When I did a comparison between Chat, and Bard for example, Bard seems more clinical. It's difficult to shut it down thereafter. (I believe I successfully disable it) META is like that too. If you're on Facebook and want to look up …
I prefer Pytorch overall, recent models are often only available with pytorch PyTorch is also easier to use and it is often easier to find support for PyTorch code nowadays than TensorFlow Also it seems like lots of Google internal resource uses Jax. I mostly uses TensorFlow to …
Can't seem to choose any deep learning platform in the above, so I'll list it here: 1. Apache MXNet: this has been used for one of our main algorithms for search as an end-to-end pipeline. We chose this because of the Scala bindings, which makes it easier to integrate with out …
TensorFlow provides a wide range of algorithms with more detail and customization options compared to others. Also, the library is advanced and updates regularly for optimization and new functions.
Most of the machine learning platforms these days support integration with R and Python libraries. So, the use of reusable libraries is not an issue. TensorFlow performs well in cloud hosting and support for GPU/TPU. However, where it lacks compared to Azure is a graphical …
Thought about alternatives like scikit-learn, xgboost, pytorch, caffe2, fastai exist, but they don't offer as many tools and functionality as TensorFlow does. It is better to inanest in a eco-system which is very active and well maintained by giants. Being open source, one can …
Keras is built on top of TensorFlow, but it is much simpler to use and more Python style friendly, so if you don't want to focus on too many details or control and not focus on some advanced features, Keras is one of the best options, but as far as if you want to dig into more, …
Theano is a Python library and is good for making algorithms from scratch. It is an alternative to Tensor flow. We used tensor flow because it is open source Java source and easy to learn and use.
TensorFlow is developed and maintained by Google. It's the engine behind a lot of …
There are lots of competitors with this library, but I think TensorFlow is the best thing for deep learning. Although it has a sharp learning curve, it's worth learning. It easy to deploy its model on Android. Keras is very good option too it, easy. In Keras, writing the neural …
I have used keras and matlab along with this. Also used Caffe and pyTorch sometimes, but all of them are not as powerful as TensorFlow. Keras is in good competition with TensorFlow but Keras won't allow you a lot of customization in your algorithms. And TensorFlow gives you the …
One major advantage of TensorFlow over Keras and other deep learning libraries is that it is the most powerful. It gives you power to write your own full customised algorithm that is not available in Keras. And it is fast too as compared to another tool as it can perform better …
I have used Theano to develop machine learning models, like writing the neural network. TensorFlow has reinforcement learning support and lot more algorithms while Theano does come with lots of prebuilt tools. TensorFlow provides data visualisation tools and it is possible to …
I’d definitely recommend ChatGPT to anyone as a great introduction to generative AI and as a starting point in research, writing, brainstorming, or general questions or judgement questions. It can be a great tool to use when you don’t necessarily need an accurate answer. For example, I wouldn’t let it calculate my taxes, but I’d use it to ask some general tax questions, then ask for sources and then verify by checking those sources. I also love ChatGPT for writing and questions - it’s great for emails, creating templates and outlines, and for generating spreadsheet formulas.
Whenever the problem has the demand for a neural networks based solution, Tensorflow (TF) is a great fit.
The tf.dataset API makes it really simple to create complex data pipelines in a few lines of code.
tf.estimators API abstracts all the complex computation graph creation logic making it very simple to get started.
Eager execution makes it simple to develop a TF graph as debugging the code would be like any other imperative Python program.
TF abstracts all the complexities of scaling it to multiple machines. It has various code and data distribution algorithms ready to use.
Projects like TensorBoard make monitoring the training process really easy. It also gives the ability to view embeddings without any extra code. Their What-If is extremely useful for poking and understanding a black box model. It also has tools to visualize data to quickly check for anomalies.
TF Autograph aims to covert any normal Python code into a distributed program which is quite handy to scale an existing code base.
Saves time by generating content about a specific topic very quickly
Allows us to quickly learn information online (from various sources or even a single lengthy article) into more summed up digestible paragraphs (and even bullet points)
Can autogenerate content on a vast amount of topics
Data pipeline implementation is quite good, loading large amounts of data and pre-process it in an efficient way is no more issue for us
It supports all major DL algorithms and network layouts such as ConvNets, RNN, LSTMs, Word2Vec, and even the latest transformer architecture
The abstraction for the device is perfectly done and its support seamlessly for multiple GPU and even TPU will bring a lot of performance gain for enterprise scoped solution while still keep the flexibility
The TensorBoard is amazing. I haven't seen a similar thing in other frameworks on the market. It allows us to quickly understand and debug the model with the info visualization which makes understanding much better
A very supportive community, which is the key for sharing the ideas and find the quick and best solutions
Wish it had support for better slides generation. Sometimes we found ourselves using chatgpt to outline a presentation but build it ourselves or use a tool like Gamma
Maybe a chepear $10 plan. In some countries the US dollar can be expensive and $20 goes a long way.
I wish you could make projects with more files. They limit it. Or make the limit based on the content, not the number of files per se
It would be much better if they could provide good documentation and easy ways to understand concepts.
It is difficult to understand the concept behind for example, Tensor Graph, which takes a lot of time.
As you have to write everything, it is time consuming to write the implementation of whole neural network. It would be better if they can provide some wrapper library to make things easier.
ChatGPT is a powerful assistant. As long as you understand what it is you're looking for in its results, it can save you a lot of time due to its ability to do the heavy lifting for you. This frees your time up to enable you to concentrate on other tasks.
Most of the time is up. Seldom do you find a down service. It also has improved in token generation (the speed at which it prints answers) so it's usability is pretty much great all the time. Images do take a bit to generate but nothing that breaks anything. New additions like Projects, custom prompts, and some privacy settings improve experience
Community support for TensorFlow is great. There's a huge community that truly loves the platform and there are many examples of development in TensorFlow. Often, when a new good technique is published, there will be a TensorFlow implementation not long after. This makes it quick to ally the latest techniques from academia straight to production-grade systems. Tooling around TensorFlow is also good. TensorBoard has been such a useful tool, I can't imagine how hard it would be to debug a deep neural network gone wrong without TensorBoard.
Where ChatGPT is better: ChatGPT has significantly more use cases - it's much more versatile. Some aspects of ChatGPT's user experience are better than Claude's. I prefer ChatGPT's results presentation compared to Claude's. Where Claude excels: Claude is a more skilled writer than ChatGPT. Some aspects of Claude's user experience are better than ChatGPT's. Its image, audio, and video translations are better than ChatGPT's.
Can't seem to choose any deep learning platform in the above, so I'll list it here: 1. Apache MXNet: this has been used for one of our main algorithms for search as an end-to-end pipeline. We chose this because of the Scala bindings, which makes it easier to integrate with out JVM backend. MXNet seems comparable to TensorFlow, although community support is not as good as TensorFlow, and there are issues with memory leaks that are being worked on. TensorFlow in general is easier to use, but MXNet isn't too far behind. 2. Keras: still a favorite. Often I use this when paired with TensorFlow. TensorFlow 2.0 will make it even easier. 3. PyTorch: only used it a little, so it's hard to provide a good opinion. 4. DL4J: used it initially in an early days project because it has good JVM support. Harder to used not because of poor API design, but because community support is lacking and features don't come out as fast as TensorFlow.
Positive Impact- As I mentioned before its open source. Very easy to learn for average programmer/ developer. We were able to design a POC model for understanding the patient appointment cancellation snd reasons behind it in 3 week time frame.
Negative Impact- If you are using tensor flow for small project it works fine. If you are trying to build a model for face recognition it will be hard to program and train the system. It needs data to be processed before hand cannot learn on the go.