Does anyone know the specific differences and features among the three, Or if one has more features/more flexible to use as a developer?
Update: API.AI is now Dialogflow. Learn more here.
This blogpost has a really good analysis and comparison of Luis, Wit.ai, Api.ai, Amazon Alexa and IBM Watson services. It also has a nice background on why you would want to build a conversational bot in the first place and some of the challenges that come with that. It's written by the people behind YumiBot (a bot that gives you price quotes for app development).
The general gist is that Wit.ai and Luis are great choices if you're experimenting and just want to get something out for free. Api.ai has a great service and user experience but isn't free. Same with IBM Watson, the latter priced more for enterprise work. Alexa's API is great but only works with Alexa (but given that they have a huge userbase, isn't a bad deal).
Their advice is also to not rely too much on one provider:
We would recommend you store all data needed for your model in a structured way in your own code repository. So later you can retrain the model from scratch, or even change the language understanding provider if needed. You just don’t want to be in a situation when a company shuts down their service and you are completely unprepared. Do you remember Parse?
I hope this helped a little! I think the best way to make a choice is to just give these services a try. Given that a lot of them are still heavy under development and adding features/changing pricing models, you should try coming at them with a specific use-case and see which one can get you to where you need the quickest.
We have recently published an evaluation study of seven NLU API-enabled services: API.ai, Amazon Lex, Microsoft LUIS, IBM Watson Conversation, wit.ai, Recast.ai and Snips.ai.
A brief summary of our findings:
- IBM Watson intent detection is the best one, especially on smaller training datasets (although when trained on over 2000 samples the difference is indistinguishable).
- API.AI is free, the performance on big enough training set matches IBM Watson and Microsoft LUIS.
- Microsoft LUIS works significantly faster than others in our tests. wit.ai has somewhat worse performance and response time than the three above, but it’s free and it provides the best language coverage (some 50 languages).
- Amazon Lex has quite strict API limits (the training set size is limited to 200K symbols, which may be insufficient to reach a good intent detection quality for a multi-intent assistant; also it requires all training utterances to be labeled by entities, which complicated preparation of the dataset.
One aspect of this question is how efficient are these tools at understanding natural language. In a recent benchmark we (Snips, a French AI company) just published, we have tested the built-in natural language engines of Alexa (Amazon), SiriKit (Apple), Luis (Microsoft), and API.ai (Google).
We tested their ability to understand natural queries like “Find me a salad bar I can go to for my lunch meeting”, “Order a cab for 6 people”, as well as 326 other queries.
The overall conclusion is that all solutions are imperfect.
More precisely, they all have similar levels of noise in their responses (between 60% and 90% precision), but there are significant differences in the breadth of language they can support. From this perspective, Luis performs the most poorly: on every use case we tested, it understood less than 14% of the queries. API.ai performs better, although not very reliably: it understands between 0 and 80% of the queries we tested, depending on the use cases. The highest levels of recall can be observed for Alexa (42% and 82% recall) and Siri (61% recall).
More details, and the raw data behind these results can be found in our blog post, Benchmarking Natural Language Understanding Systems
In my opinion Luis is more robust and can extract entities in different languages. I've tested in api.ai and dutch did not work for me. If you need english only then any one of them should be fine but if you need to support more languages then better test those languages as well before getting stuck with one service. Bing speech to text is ok but i think to get more robust solution you will need another microsoft service that cleans voice and noise.