
As described in our latest weblog publish, an SQL AI Assistant has been built-in into Hue with the aptitude to leverage the ability of enormous language fashions (LLMs) for quite a lot of SQL duties. It might probably show you how to to create, edit, optimize, repair, and succinctly summarize queries utilizing pure language. This can be a actual game-changer for information analysts on all ranges and can make SQL growth sooner, simpler, and fewer error-prone.
This weblog publish goals that can assist you perceive what you are able to do to get began with generative AI assisted SQL utilizing Hue picture model 2023.0.16.0 or larger on the general public cloud. Each Hive and Impala dialects are supported. Please seek advice from the product documentation for extra details about particular releases.
Getting began with the SQL AI Assistant
Later on this weblog we’ll stroll you thru the steps of the right way to configure your Cloudera surroundings to make use of the SQL AI Assistant along with your supported LLM of alternative. However first, let’s discover what the SQL AI Assistant does, and the way folks would use it throughout the SQL editor.
Utilizing the SQL AI Assistant
To launch the SQL AI Assistant, begin the SQL editor in Hue and click on the blue dot as proven within the following picture. It will broaden the SQL AI toolbar with buttons to generate, edit, clarify, optimize and repair SQL statements. The assistant will use the identical database because the editor, which within the picture under is ready to a DB named tpcds_10_text.
The toolbar is context conscious and totally different actions can be enabled relying on what you’re doing within the editor. When the editor is empty, the one possibility obtainable is to generate new SQL from pure language.
Click on “generate” and sort your question in pure language. Within the edit subject, press the down arrow to see a historical past of question prompts. Click on “enter” to generate the SQL question.
The generated SQL is offered in a modal along with the assumptions made by the LLM. This could embrace assumptions in regards to the intent of the pure language used, just like the definition of “prime promoting merchandise,” values of wanted literals, and the way joins could be created. Now, you’ll be able to insert the SQL straight into the editor or copy it to the clipboard.
When there may be an energetic SQL assertion within the editor the SQL AI Assistant will allow the “edit,” “clarify,” and “optimize” buttons. The “repair” button will solely be enabled when the editor finds an error, equivalent to a SQL syntax error or a misspelled identify.
Click on “edit” to switch the energetic SQL assertion. If the assertion is preceded by a NQL-comment then that immediate could be reused by urgent tab. It’s also possible to simply begin typing a brand new instruction.
After utilizing edit, optimize, or repair, a preview reveals the unique question and the modified question variations. If the unique question has a unique formatting or key phrase higher/decrease case than the generated question, you’ll be able to allow “Autoformat SQL” on the prime of the modal for a greater outcome.
Click on “insert” to switch the unique question with the modified one within the editor.
The optimize and the repair performance don’t want person enter. To make use of them merely choose a SQL assertion within the editor, and click on “optimize” or “repair” to generate an improved model displayed as a diff of the unique question, as proven above. “Optimize” will attempt to enhance the construction and efficiency with out impacting the returned results of operating the question. “Repair” will attempt to mechanically repair syntactic errors and misspelling.
In the event you need assistance making sense of complicated SQL then merely choose the assertion, and click on “clarify.” A abstract and rationalization of the SQL in pure language will seem. You may select to insert the textual content as a remark above the SQL assertion within the editor as proven under.
The SQL AI Assistant isn’t bundled with a particular LLM; as a substitute it helps numerous LLMs and internet hosting companies. The mannequin can run regionally, be hosted on CML infra or within the infrastructure of a trusted service supplier. Cloudera has been testing with GPT operating in each Azure and OpenAI, however the next service-model combos are additionally supported:

Be aware: Cloudera recommends utilizing the Hue AI assistant with the Azure OpenAI service.
The supported AI fashions are pre-trained on pure language and SQL however they don’t have any data of your group’s information. To beat this the SQL AI Assistant makes use of a Retrieval Augmented Technology (RAG)-based structure the place the suitable data is retrieved for every particular person SQL process (immediate) and used to reinforce the request to the LLM. In the course of the retrieval course of it makes use of the Python SentenceTransformers framework for semantic search, which by default makes use of the all-MiniLM-L6-v2 mannequin. The SQL AI Assistant could be configured with many pre-trained fashions for higher multi-lingual assist. Beneath are the fashions examined by Cloudera:
It is very important perceive that by utilizing the SQL AI Assistant you’re sending your individual prompts and likewise important further data as enter to the LLM. The SQL AI Assistant will solely share information that the presently logged-in person is allowed to entry, however it’s of utmost significance that you just use a service that you may belief along with your information. The RAG-based structure reduces the variety of tables despatched per request to a brief listing of the almost definitely wanted, however there may be presently no method to explicitly exclude sure tables; consequently, data about all tables that the logged-in person can entry within the database may very well be shared. The listing under particulars precisely what’s shared:
- The whole lot {that a} person inputs within the SQL AI Assistant
- The chosen SQL assertion (if any) within the Hue editor
- SQL dialect in use (Hive, Impala for instance)
- Desk particulars equivalent to desk identify, column names, column information varieties and associated keys, partitions and constraints
- Three pattern rows from the tables (following the perfect practices laid out in Rajkumar et al, 2022)
The administrator should receive clearance out of your group’s infosec staff to ensure it’s secure to make use of the SQL AI Assistant as a result of among the desk metadata and information, as talked about within the earlier part, is shared with the LLM.
Getting began with the SQL AI Assistant is a simple course of. First organize entry to one of many supported companies after which add the service particulars in Hue’s configuration.
Utilizing Microsoft Azure OpenAI service
Microsoft Azure supplies the choice to have devoted deployments of OpenAI GPT fashions. Azure’s OpenAI service is rather more safe than the publicly hosted OpenAI APIs as a result of the information could be processed in your digital non-public cloud (VPC). Contemplating the added safety, Azure’s OpenAI is the really helpful service to make use of for GPT fashions within the SQL AI Assistant. For extra data, see the Azure OpenAI fast begin information.
Step 1. Azure subscription
First, get Azure entry. Contact your IT division to get an Azure subscription. Subscriptions may very well be totally different based mostly in your staff and function. For extra data, see subscription concerns.
2. Azure Open AI entry
At the moment, entry to this service is granted solely by software. You may apply for entry to Azure OpenAI by finishing the shape at https://aka.ms/oai/entry. As soon as permitted, it’s best to obtain a welcome e-mail.
3. Create useful resource
Within the Azure portal, create your Azure OpenAI useful resource: https://portal.azure.com/#residence.
Within the useful resource particulars web page, underneath “Develop”, you may get your useful resource URL and keys. You simply want any one of many two offered keys.
4. Deploy GPT
Go to Azure OpenAI Studio at https://oai.azure.com/portal and create your deployment underneath administration > Deployments. Choose gpt-35-turbo-16k or larger.
5. Configure SQL AI Assistant in Hue
Now that the service is up and operating along with your mannequin, the final step is to allow and configure the SQL AI assistant in Hue.
- Log in to the Cloudera Knowledge Warehouse service as DWAdmin.
- Go to the digital warehouse tab, find the Digital Warehouse on which you wish to allow this characteristic, and click on “edit.”
- Go to “configurations” > Hue and choose “hue-safety-valve” from the configuration information drop-down menu.
Edit the textual content underneath the desktop part by including a subsection referred to as ai_interface. Populate it as proven under by changing the angle bracket values with these from your individual service:
Utilizing OpenAI service
1. Open AI platform join
Request entry to the Open AI platform out of your IT division or go to https://platform.openai.com/ and create an account if allowed by your organization’s insurance policies.
2. Get the API key
Within the left menu bar, navigate to AI keys. It is best to be capable to view present keys or create new ones. The API secret’s the one factor it’s essential combine with the SQL AI Assistant.
3. Configure SQL AI Assistant in Hue
Lastly, allow and configure the SQL AI assistant in Hue.
- Log in to the information warehouse service as DWAdmin.
- Go to the digital warehouse tab, find the Digital Warehouse on which you wish to allow this characteristic, and click on “edit.”
- Go to “configurations” > Hue and choose “hue-safety-valve” from the configuration information drop-down menu.
- Edit the textual content underneath the desktop part by including a subsection referred to as ai_interface. Solely two key worth pairs are wanted as proven under. Substitute the <api-key> worth with the API key from Open AI.
Amazon Bedrock Service
Amazon Bedrock is a totally managed service that makes basis fashions from main AI startups and Amazon obtainable through an API. You need to have an AWS account with Bedrock entry earlier than following these steps.
- Get your entry key and secret
Get the entry key ID and the key entry key for utilizing Bedrock-hosted fashions in Hue Assistant:
- Go to IAM console: https://console.aws.amazon.com/iam
- Click on “customers” within the left menu
- Discover the person who wants entry
- Click on “safety credentials”
- Go to the “entry keys” part and discover your keys there.
2. Get Anthropic Claude entry
Claude from Anthropic is among the finest fashions obtainable in Bedrock for SQL-related duties. Extra particulars can be found at https://aws.amazon.com/bedrock/claude/. After getting entry, it is possible for you to to attempt Claude within the textual content playground underneath the Amazon Bedrock service.
3. Configure SQL AI Assistant in Hue
Lastly, allow and configure the SQL AI assistant in Hue.
- Log in to the information warehouse service as DWAdmin.
- Go to the digital warehouse tab, find the digital warehouse on which you wish to allow this characteristic, and click on “edit.”
- Go to “configurations: > Hue and choose “hue-safety-valve” from the configuration information drop-down menu.
- Edit the textual content to ensure the next sections, subsections and key worth pairs are set. Substitute the <access_key> and the <secret_key> with the values out of your AWS account.
Service- and model-related configurations are underneath ai_interface, and semantic search associated configurations used for RAG are underneath the semantic_search part.
The configurable LLMs are superb at producing and modifying SQL. The RAG structure supplies the correct context. However there is no such thing as a assure solutions from LLMs, or from human specialists, are all the time correct. Please concentrate on the next:
- Non-deterministic: LLMs are non-deterministic. You can’t assure the very same output for a similar enter each time, and totally different responses for very comparable queries can happen.
- Ambiguity: LLMs might battle to deal with ambiguous queries or contexts. SQL queries usually depend on particular and unambiguous language, however LLMs can misread or generate ambiguous SQL queries, resulting in incorrect outcomes.
- Hallucination: Within the context of LLMs, hallucination refers to a phenomenon the place these fashions generate responses which can be incorrect, nonsensical, or fabricated. Sometimes you may see incorrect identifiers or literals, and even desk and column names, if the offered context is incomplete or person enter merely doesn’t match any information.
- Partial context: The RAG structure supplies context to every request however it has limitations and there’s no assure the context despatched to the LLM will all the time be full.
The SQL AI Assistant is now obtainable in tech preview on Cloudera Knowledge Warehouse on Public Cloud. We encourage you to attempt it out and expertise the advantages it might probably present in relation to working with SQL. Moreover, take a look at the overview weblog on SQL AI Assistant to study the way it might help information and enterprise analysts in your group pace up information analytics. Attain out to your Cloudera staff for extra particulars.